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6cma ... v0.9.7

Author SHA1 Message Date
Linlang
da920b7f95 Update version 2025-08-15 16:50:57 +08:00
Linlang
d89fa0184c fix: upgrade the method of installing LightGBM on MacOS (#1980)
* fix: upgrade the method of installing LightGBM on MacOS

* fix: upgrade the method of installing LightGBM on MacOS

* fix: upgrade the method of installing LightGBM on MacOS

* fix: upgrade the method of installing LightGBM on MacOS

* fix: upgrade the method of installing LightGBM on MacOS

* fix: upgrade the method of installing LightGBM on MacOS

* fix: upgrade the method of installing LightGBM on MacOS

* fix: upgrade the method of installing LightGBM on MacOS

* fix: upgrade the method of installing LightGBM on MacOS

* fix: upgrade the method of installing LightGBM on MacOS

* fix: upgrade the method of installing LightGBM on MacOS

* fix: upgrade the method of installing LightGBM on MacOS

* fix: upgrade the method of installing LightGBM on MacOS

* fix: upgrade the method of installing LightGBM on MacOS

* fix: upgrade the method of installing LightGBM on MacOS

* fix: upgrade the method of installing LightGBM on MacOS

* fix: upgrade the method of installing LightGBM on MacOS

* fix: upgrade the method of installing LightGBM on MacOS

* fix: upgrade the method of installing LightGBM on MacOS

* fix: upgrade the method of installing LightGBM on MacOS

* add: comments

* test: build package && check package

* test: build package && check package

* test: build package && check package

* optimize yml
2025-08-15 15:57:55 +08:00
you-n-g
1b426503fc feat: data improve, support parquet (#1966)
* refactor: relocate CLI modules to qlib.cli and update references

* refactor: introduce read_as_df and rename csv_path to data_path

* lint

* refactor: rename csv_path to data_path and use QSettings.provider_uri

* fix pylint error

* fix get_data command

* add comments to CI yaml

* update docs

---------

Co-authored-by: Linlang <Lv.Linlang@hotmail.com>
2025-08-07 15:04:37 +08:00
you-n-g
78b77e302b feat: use pydantic-settings for MLflow config and update dependencies (#1962)
* feat: use pydantic-settings for MLflow config and update dependencies

* docs
2025-07-01 21:32:11 +08:00
Linlang
38f02d25dc disable pylint error (#1960)
* disable pylint error

* try fix build docs error

* try fix build docs error

* optimize code
2025-06-30 18:43:34 +08:00
you-n-g
de86e46ed0 refactor: introduce BaseDataHandler and unify fetch interface (#1958)
* refactor: introduce BaseDataHandler and unify fetch interface

* refactor: include data_key in seg_kwargs and simplify segments loop

* refactor: default data_key to BaseDataHandler.DK_I in _get_df_by_key

* style: fix indentation and remove extra blank lines in data handlers

* refactor: use BaseDataHandler.DK_I as default data_key

* docs: fix BaseDataHandler docstring grammar and formatting

* refactor: remove unused **kwargs from storage fetch methods

* docs: refine BaseDataHandler and DataHandler docstrings

* refactor: rename BaseDataHandler to DataHandlerABC, update type hints

* feat: add flt_col to TSDatasetH and list-to-slice conversion in storage

* lint

* comment
2025-06-29 15:50:59 +08:00
Emre
ba8b6cc30f fix: typo (#1943) 2025-05-29 15:18:12 +08:00
Linlang
3525514704 Fixing Security Vulnerabilities (#1941)
* Fixing Security Vulnerabilities

* Fixing Pylint Error

* Fixing Security Vulnerabilities windows

* format with black

* using returncode to locate problems

* fix pylint error
2025-05-28 20:43:58 +08:00
you-n-g
3e72593b8c Update README.md (#1940) 2025-05-27 21:32:22 +08:00
Linlang
c38e799ce7 Implement geometric accumulation mode for risk_analysis function (#964) (#1938)
Co-authored-by: eabjab <buege.ethan@gmail.com>
2025-05-27 14:24:16 +08:00
Di
14d54aa2a1 Add util function to help automatically get horizon (#1509)
* Add util function to help automatically get horizon

* Reformat for CI

* Leverage horizon change

* Udpate config yaml

* Update for formatting

* Adapt to pickled handler

* Fix CI error

* remove blank

* Fix lint

* Update tests

* Remove redundant check

* modify the code as suggested

* format code with pylint

* fix pytest error

---------

Co-authored-by: Linlang <Lv.Linlang@hotmail.com>
2025-05-26 22:08:43 +08:00
you-n-g
89ae312109 doc: update README.md (#1929)
* Update README.md

* Update README.md
2025-05-22 15:34:19 +08:00
ziphei
3ea30c0290 The plotly figure is empty in the code block "Basic data" (#1902)
* Update detailed_workflow.ipynb

the result figure is empty

* Update detailed_workflow.ipynb

fix issue: the plotly figure is empty

* The error message indicated that my code did not
comply with the code style guidelines.
Specifically, I had used double quotes "notebook"
for the string, whereas the required format was
single quotes 'notebook'.
This has now been corrected.

* comply with the code style guidelines.
Specifically, I had used double quotes "notebook"
for the string, whereas the required format was
single quotes 'notebook'.
This has now been corrected.

* I didn't use nbqa black to reformat my code. Now
is done!

* recover_code

---------

Co-authored-by: Linlang <Lv.Linlang@hotmail.com>
2025-05-21 14:34:40 +08:00
Yuante Li
4b8d70df1b [feat] fix a bug and adapt general_nn for use with rdagent_qlib (#1928)
* update qlib general_nn for rdagent_qlib

* fix install lightgbm error

* fix install lightgbm error & format with black

---------

Co-authored-by: Linlang <Lv.Linlang@hotmail.com>
2025-05-20 17:04:09 +08:00
炼金术师华华
a2996f7046 [Fix]Update data preparation part in README.md (#1924) 2025-05-13 18:40:31 +08:00
Linlang
fbba768006 fixed a problem with multi index caused by the default value of groupkey (#1917)
* fixed a problem with multi index caused by the default value of groupkey

* modify group_key default value

* limit pandas verion

* format with black

* fix docs error

* fix docs error

* fixed bugs caused by pandas upgrade

* remove needless code

* reformat with black

* limit version & add docs
2025-05-13 16:02:49 +08:00
Dred
df557d29d5 [fix] keep group_keys=False in Average Ensemble (#1913) 2025-05-08 15:03:46 +08:00
Linlang
be9cd9fe23 fix ci error (#1921)
* fix ci error

* fix ci error

* add comments

* add comments
2025-05-07 16:35:22 +08:00
Linlang
85cc74846b fix bugs in the documentation (#1918)
* fix bugs in the documentation

* fix docs error
2025-04-29 17:24:06 +08:00
Linlang
950408ef46 Fix issue 1892 (#1916)
* fix: resolve #1892 by retriving the data page by page

* fix: resolve #1892 by retriving the data page by page

* reformat with black

---------

Co-authored-by: shengyuhong <shengyuhong@bytedance.com>
Co-authored-by: fibers <yu8582@126.com>
2025-04-27 13:58:10 +08:00
Linlang
320bd65e19 fix fillna bug (#1914)
* fix fillna bug

* fix flake8 error

* fix pylint error

* update ubuntu version for action

* fix pytest error

* fix pylint error

* fix black error

* fix pylint error

* add Fillna test

* fix black error

* add  instruments

* remove code
2025-04-25 11:18:09 +08:00
Linlang
e7a1b5ea1f fix col name error when fetch data (#1904)
* fix col name error when fetch data

* fix col name error when fetch data

* fix install qlib error

* optimize code

* optimize code

* optimize code
2025-04-02 18:50:52 +08:00
you-n-g
67feeaeb00 docs: fix README.md link 2025-03-24 09:44:11 +08:00
Linlang
4d621bff99 fix pkl file not loading in StaticDataLoader (#1896)
* fix pkl file not loading in StaticDataLoader

* resolve hard code

* resolve hard code
2025-03-18 16:05:24 +08:00
Ben Heckmann
82f1ef2def DRAFT add Data Health Checker (#1574)
* #854 implement first data health checker draft

* #854 added support for qlib's data format, implemented factor check, reformatted summary

* adaptation current dataset

* format with black

* add data health check to docs

* fix sphinx error

* fix pylint error

* update code

* format with black

* format with pylint

---------

Co-authored-by: Linlang <Lv.Linlang@hotmail.com>
2025-01-09 21:35:59 +08:00
Linlang
186512f272 Fix csi300 constituents url (#1883)
* fix_csi300_constituents_url

* Fix issue in readme

* format with black
2025-01-03 16:57:17 +08:00
codecnotsupported
bda374180a Update links to chenditc/investment_data to always point to latest release (#1877)
* Update README.md

Link to latest release.
https://docs.github.com/en/repositories/releasing-projects-on-github/linking-to-releases#linking-to-the-latest-release

* Update README.md

Link to latest release.
https://docs.github.com/en/repositories/releasing-projects-on-github/linking-to-releases#linking-to-the-latest-release

* Update README.md

Link to latest release.
https://docs.github.com/en/repositories/releasing-projects-on-github/linking-to-releases#linking-to-the-latest-release

* Update README.md

Link to latest release.
https://docs.github.com/en/repositories/releasing-projects-on-github/linking-to-releases#linking-to-the-latest-release

* Update README.md

* Update README.md
2025-01-03 13:56:49 +08:00
Linlang
014ff7d3fe Fix broken URL for RL (#1881)
* fix_issue_1878

* fix_issue_1878
2025-01-02 14:41:54 +08:00
Chia-hung Tai
23d9d5a0a9 Fix the empty price_s case and self.instruments in SBBStrategyEMA. (#1677)
* Fix the empty price_s case and self.instruments in SBBStrategyEMA.

* Update qlib/contrib/strategy/rule_strategy.py

* Update qlib/contrib/strategy/rule_strategy.py

---------

Co-authored-by: you-n-g <you-n-g@users.noreply.github.com>
Co-authored-by: Linlang <Lv.Linlang@hotmail.com>
2024-12-26 15:56:41 +08:00
Linlang
7ce97c9da5 Bump version (#1872)
* bump version

* bump version

* Update README.md

* fix_ci_error

* fix_ci_error

* fix_ci_error

* fix_ci_error

---------

Co-authored-by: you-n-g <you-n-g@users.noreply.github.com>
2024-12-26 14:35:37 +08:00
Linlang
5a84aaf1dc Update version 2024-12-23 14:28:09 +08:00
Linlang
afbb178e24 Update publish (#1871)
* update publish

* reformat with black
2024-12-23 13:22:24 +08:00
Linlang
a0cef033cb update python version (#1868)
* update python version

* fix: Correct selector handling and add time filtering in storage.py

* fix: convert index and columns to list in repr methods

* feat: Add Makefile for managing project prerequisites

* feat: Add Cython extensions for rolling and expanding operations

* resolve install error

* fix lint error

* fix lint error

* fix lint error

* fix lint error

* fix lint error

* update build package

* update makefile

* update ci yaml

* fix docs build error

* fix ubuntu install error

* fix docs build error

* fix install error

* fix install error

* fix install error

* fix install error

* fix pylint error

* fix pylint error

* fix pylint error

* fix pylint error

* fix pylint error E1123

* fix pylint error R0917

* fix pytest error

* fix pytest error

* fix pytest error

* update code

* update code

* fix ci error

* fix pylint error

* fix black error

* fix pytest error

* fix CI error

* fix CI error

* add python version to CI

* add python version to CI

* add python version to CI

* fix pylint error

* fix pytest general nn error

* fix CI error

* optimize code

* add coments

* Extended macos version

* remove build package

---------

Co-authored-by: Young <afe.young@gmail.com>
2024-12-17 11:30:06 +08:00
you-n-g
7acb4f3484 Fix Async Call (#1869) 2024-12-16 18:32:46 +08:00
YQ Tsui
431f574967 fix duplicate log (#1661)
* fix duplicate log

* fix unit test

* fix log

* fix_duplicate_log

* fix_duplicate_log

* add comments

---------

Co-authored-by: Linlang <Lv.Linlang@hotmail.com>
2024-12-09 15:45:31 +08:00
you-n-g
b604fe56b3 Update README.md 2024-12-05 10:21:37 +08:00
Linlang
af4b8772d2 Saurabh12571257/main (#1866)
* Update README.md

* test macos ci

* test macos ci

* test macos ci

* fix ci error

* fix ci error

---------

Co-authored-by: saurabh dave <87791567+saurabh12571257@users.noreply.github.com>
2024-12-04 16:23:21 +08:00
Di
18fcdf1521 Update requirements.txt (#1829)
Update urllib3 dependency according to https://github.com/advisories/GHSA-34jh-p97f-mpxf
2024-12-04 12:10:05 +08:00
Linlang
f2caf452e9 add dockerfile (#1817)
* add dockerfile

* add execute script

* add docs

* optimize docs

* optimize dockerfile

* optimize docs

* optimize dockerfile

* update code & update README

* doc build error

* update docs

* update code
2024-11-13 11:41:06 +08:00
Xu Yang
ca9f1861a4 Update README.md to show rdagent in qlib front page (#1848)
* update readme

* Update README.md

add english and chinese link to rdagent

* add the logo of rdagent to readme

add the logo of rdagent to readme

* adjust the height of the logo

* improve some works in readme

* add a line
2024-09-12 23:44:27 +08:00
Another
b45b006ef2 Update README.md (#1839)
Update data example to 20240809
2024-08-30 17:01:55 +08:00
Linlang
82cf438401 fix break img (#1842) 2024-08-14 14:59:28 +08:00
you-n-g
9e635168c0 Update README.md 2024-08-09 20:23:13 +08:00
you-n-g
b7ace1a622 🔥LLM-driven Auto Quant Factory🔥 (#1840)
* Update README.md

* Update README.md
2024-08-09 20:14:58 +08:00
cyncyw
c9ed050ef0 Ptnn4both datatypes and alignment tests (#1827)
* Init model for both dataset

* Remove some deprecated code

* Add model template;

* We must align with previous results

* We choose another mode as the initial version

* Almost success to run GRU

* Successfully run training

* Passed general_nn test

* gru test

* Alignment test passed

* comment

* fix readme & minor errors

* general nn updates & benchmarks

* Update examples/benchmarks/GeneralPtNN/workflow_config_gru2mlp.yaml

---------

Co-authored-by: Young <afe.young@gmail.com>
Co-authored-by: you-n-g <you-n-g@users.noreply.github.com>
2024-07-11 17:59:18 +08:00
Linlang
2c33332dd6 More dataloader example (#1823)
* More dataloader example

* optimize code

* optimeze code

* optimeze code

* optimeze code

* optimeze code

* optimeze code

* fix pylint error

* fix CI error

* fix CI error

* Comments

* fix error type

---------

Co-authored-by: Young <afe.young@gmail.com>
2024-07-10 14:48:44 +08:00
you-n-g
a7d5a9b500 Nested data loader (#1822)
* nested data loader

* Amend

* add data loder test

* fix pylint error

* fix pytest error

* fix pytest error

* delete comments

* Update qlib/contrib/data/handler.py

---------

Co-authored-by: Linlang <Lv.Linlang@hotmail.com>
2024-07-05 15:44:16 +08:00
you-n-g
5190332c7e Add some misc features. (#1816)
* Normal mod

* Black linting

* Linting
2024-06-26 18:34:00 +08:00
cyncyw
cde80206e4 Update index_data.py for datatype conversion and alignment (#1813)
* Update index_data.py for data convertion and alignment

* Update qlib/utils/index_data.py

* Update qlib/utils/index_data.py

* fix linting

---------

Co-authored-by: taozhiwang <taozhiwa@gmail.com>
Co-authored-by: you-n-g <you-n-g@users.noreply.github.com>
2024-06-24 15:34:48 +08:00
cyncyw
a339fc11d1 add a note for code standard (#1814)
* add a note for code standard

* handle both cases

---------

Co-authored-by: taozhiwang <taozhiwa@gmail.com>
2024-06-24 15:33:45 +08:00
Linlang
33482047dc change weight data download url (#1812) 2024-06-21 13:05:53 +08:00
Fivele-Li
47bd13295b Fix Yahoo daily data format inconsistent (#1517)
* Fix FutureWarning: Passing unit-less datetime64 dtype to .astype is deprecated and will raise in a future version. Pass 'datetime64[ns]' instead

* align index format while end date contains current day data

* fix black

* fix black

* optimize code

* optimize code

* optimize code

* fix ci error

* check ci error

* fix ci error

* check ci error

* check ci error

* check ci error

* check ci error

* check ci error

* check ci error

* fix ci error

* fix ci error

* fix ci error

* fix ci error

* fix ci error

---------

Co-authored-by: Cadenza-Li <362237642@qq.com>
Co-authored-by: Linlang <Lv.Linlang@hotmail.com>
2024-06-21 11:22:23 +08:00
陈屹华
ebc0ca893e Fix TSDataSampler Slicing Bug #1716 (#1803)
* Fix TSDataSampler Slicing Bug #1716

* Fix TSDataSampler Slicing Bug #1716

* Fix TSDataSampler Slicing Bug #1716

* Fix TSDataSampler Slicing Bug with simplyer implmentation#1716
 with Simplified Implementation

* Refactor: Fix CI errors by addressing pylint formatting issues

* Refactor: Remove extraneous whitespace for improved code formatting with Black
2024-06-21 09:25:23 +08:00
Lee Yuntong
3a348aec9f Fix typo (#1811)
Co-authored-by: LeeYuntong <nukuihayu@outlook.com>
2024-06-20 18:12:07 +08:00
Lee Yuntong
37b908792b Fix typo (#1809)
Co-authored-by: LeeYuntong <nukuihayu@outlook.com>
2024-06-19 17:31:57 +08:00
raikiriww
73ec0f4003 Add "mse" metric option to ALSTM.metric_fn (#1810) 2024-06-19 17:31:47 +08:00
Linlang
155c17f8ff fix logo display error (#1804) 2024-06-06 13:39:49 +08:00
Yang
41b94059aa fix panic during normalizing the invalid data (#1698)
* fix panic during normalizing the invalid data

* fix yaml load

* change error to warning

* change error code

* optimize code

---------

Co-authored-by: Linlang <Lv.Linlang@hotmail.com>
2024-06-02 06:54:39 +08:00
block-gpt
7db83d84b7 Update utils.py for typo (#1751)
Fix typo

Co-authored-by: Linlang <Lv.Linlang@hotmail.com>
2024-06-01 19:33:23 +08:00
Hao Zhao
35e0fdd1c0 fix the bug that the HS_SYMBOLS_URL is 404 (#1758)
* fix the bug that the HS_SYMBOLS_URL is 404

* fix bug

* format with black

* fix pylint error

* change error code

* fix ci error

* fix ci error

* optimize code

* optimize code

* add comments

---------

Co-authored-by: Linlang <Lv.Linlang@hotmail.com>
2024-06-01 08:07:34 +08:00
you-n-g
598017f634 Update Dev in README.md (#1800) 2024-05-29 17:44:18 +08:00
igeni
907c888c23 changed concat of strings to f-strings and redundant type conversion was removed (#1767)
Co-authored-by: Linlang <Lv.Linlang@hotmail.com>
2024-05-28 12:13:12 +08:00
Linlang
02fe6b6974 bump verison 2024-05-24 16:38:48 +08:00
Linlang
b892b21045 update version 2024-05-24 15:14:49 +08:00
Linlang
155f80323c fix get data error (#1793)
* fix get data error

* fix get v0 data error

* optimize get_data code

* fix pylint error

* add comments
2024-05-24 12:59:50 +08:00
you-n-g
63021018d6 Update README.md's dataset 2024-05-21 08:15:18 +08:00
Linlang
f79a0eeaff fix docs (#1788)
Co-authored-by: Linlang Lv (iSoftStone Information) <v-lvlinlang@microsoft.com>
2024-05-21 04:23:55 +08:00
Linlang
8a087d0db9 fix docs (#1721)
* fix docs

* modify file extension

* modify file extension

---------

Co-authored-by: Linlang Lv (iSoftStone Information) <v-lvlinlang@microsoft.com>
2024-05-17 19:19:45 +08:00
playfund
2ae4be426a Delete redundant copy() code to speed up (#1732)
Delete redundant copy() code to speed up

Co-authored-by: Linlang Lv (iSoftStone Information) <v-lvlinlang@microsoft.com>
2024-05-17 18:45:07 +08:00
fei long
6ed83f7c04 data_collector: cn_index: fix missing dependencies package in requirements.txt (#1770)
add yahooquery and openpyxl in requirements.txt

Signed-off-by: YuLong Yao <feilongphone@gmail.com>
Co-authored-by: Linlang Lv (iSoftStone Information) <v-lvlinlang@microsoft.com>
2024-05-17 18:43:12 +08:00
Ikko Eltociear Ashimine
917e3a725e Update dump_pit.py (#1759)
seperated -> separated

Co-authored-by: Linlang Lv (iSoftStone Information) <v-lvlinlang@microsoft.com>
2024-05-10 14:42:41 +08:00
Chuan Xu
b1e0e77c97 Fix the bug of reading string NA as NaN in the function exists_qlib_data. (#1736)
* Fix the bug of reading NA string as NaN in exists_qlib_data.

* Fix the .gitignore file.

* Update the fix and add some comments.

* format with black

---------

Co-authored-by: Chuan Xu <chuan.xu@sas.com>
Co-authored-by: Linlang Lv (iSoftStone Information) <v-lvlinlang@microsoft.com>
2024-05-10 13:09:39 +08:00
Linlang
ea245f5435 Fix issue 1729 (#1776)
* fix issue 1729

* fix issue 1729

* fix issue 1729

---------

Co-authored-by: Linlang Lv (iSoftStone Information) <v-lvlinlang@microsoft.com>
2024-05-10 11:04:59 +08:00
Linlang
3779b5186a bump version (#1784)
Co-authored-by: Linlang Lv (iSoftStone Information) <v-lvlinlang@microsoft.com>
2024-05-08 13:50:55 +08:00
Young
194284b1ac Update version 2024-05-07 14:15:35 +08:00
Xisen Wang
1bb8f2fa23 Enhance README with LightGBM Installation Guidance for Mac M1 Users (#1766)
* Update README.md

* Update README.md

* Update README.md
2024-03-20 20:48:52 +08:00
Linlang
39f88daaa7 download orderbook data (#1754)
* download orderbook data

* fix CI error

* fix CI error

* test fix CI error

* test fix CI error

* test fix CI error

* test fix CI error

* test fix CI error

* test fix CI error

* test fix CI error

* test fix CI error

* test fix CI error

* test fix CI error

* test fix CI error

* test fix CI error

* test fix CI error

* test fix CI error

* test fix CI error

* test fix CI error

* test fix CI error

* test fix CI error

* test fix CI error

* optimize get_data code

* optimize get_data code

* optimize get_data code

* optimize README

---------

Co-authored-by: Linlang <v-linlanglv@microsoft.com>
2024-03-07 14:41:21 +08:00
Linlang
98f569eed2 add_baostock_collector (#1641)
* add_baostock_collector

* modify_comments

* fix_pylint_error

* solve_duplication_methods

* modified the logic of update_data_to_bin

* modified the logic of update_data_to_bin

* optimize code

* optimize pylint issue

* fix pylint error

* changes suggested by the review

* fix CI faild

* fix CI faild

* fix issue 1121

* format with black

* optimize code logic

* optimize code logic

* fix error code

* drop warning during code runs

* optimize code

* format with black

* fix bug

* format with black

* optimize code

* optimize code

* add comments
2023-11-21 20:31:47 +08:00
JJ
ceff886f49 Update data.rst (#1679)
Fixed a couple of small spelling errors.
2023-11-16 18:11:29 +08:00
Ikko Eltociear Ashimine
15b64768e2 Update README.md (#1637)
an -> a
2023-11-15 17:03:26 +08:00
Andy li
8bf2678676 fix the warning (#1656) 2023-11-03 17:03:11 +08:00
JJ
fb80e318e2 Update quick.rst (#1667)
Fixed small spelling error.
2023-10-20 17:23:34 +08:00
zhuan
ecbeeafdc1 Update requirements.txt (#1521) 2023-09-15 17:18:04 +08:00
Fivele-Li
69e28ceab8 suppress the SettingWithCopyWarning of pandas (#1513)
* df value is set as expected, suppress the warning;

* depress warning with pandas option_context

---------

Co-authored-by: Cadenza-Li <362237642@qq.com>
2023-09-01 18:12:49 +08:00
Fivele-Li
4c30e5827b Troubleshooting pip version issues in CI (#1504)
* CI failed to run on 23.1 and 23.1.1

* add pyproject.toml

* upgrade pip in slow.yml

* upgrade build-system requires

* troubleshooting pytest problem

* troubleshooting pytest problem

* troubleshooting pytest problem

* troubleshooting pytest problem

* add qlib root path to python sys.path

* add qlib root path to $PYTHONPATH

* add qlib root path to $PYTHONPATH

* add qlib root path to $PYTHONPATH

* modify pytest root;

* remove set env

* change_pytest_command_CI

* change_pytest_command_CI

* fix_ci

* fix_ci

* fix_ci

* fix_ci

* fix_ci

* fix_ci

* fix_ci

* remove_toml

* recover_toml

---------

Co-authored-by: lijinhui <362237642@qq.com>
Co-authored-by: linlang <Lv.Linlang@hotmail.com>
2023-08-24 21:24:50 +08:00
Di
5387ea5c1f Add exploration noise to rl training collector (#1481)
* Update vessel.py

Add exploration_noise=True  to training collector

* Update vessel.py

Reformat
2023-08-18 17:41:02 +08:00
Di
05d67b3828 Add multi pass portfolio analysis record (#1546)
* Add multi pass port ana record

* Add list function

* Add documentation and support <MODEL> tag

* Add drop in replacement example

* reformat

* Change according to comments

* update format

* Update record_temp.py

Fix type hint

* Update record_temp.py
2023-08-04 17:41:12 +08:00
Linlang
38edac5069 fix docs (#1618)
Co-authored-by: Linlang <v-linlanglv@microsoft.com>
2023-08-02 20:14:54 +08:00
Fivele-Li
b4b7a2fdd4 depress warning with pandas option_context (#1524)
Co-authored-by: Cadenza-Li <362237642@qq.com>
2023-08-01 19:02:04 +08:00
JJ
480f233e3f Update introduction.rst (#1578) 2023-07-26 16:42:53 +08:00
Gene
953621ac7e Update README.md (#1553) 2023-07-26 16:38:22 +08:00
JJ
87a026fef3 Update introduction.rst (#1579)
Fixed a spelling mistake. I changed deicsions to decisions.
2023-07-26 16:37:59 +08:00
Linlang
8676303077 fix_ci (#1608)
Co-authored-by: Linlang <v-linlanglv@microsoft.com>
2023-07-19 17:33:47 +08:00
you-n-g
1a32ba1806 Bump Version & Fix CI (#1606)
* Bump Version & Fix CI

* Update test_qlib_from_pip.yml
2023-07-18 20:54:15 +08:00
you-n-g
842b8e8563 Update __init__.py 2023-07-18 19:28:17 +08:00
Linlang
7d7e96a655 Fixed pyqlib version issue on macos (#1605)
* change_publish

* Update .github/workflows/python-publish.yml

---------

Co-authored-by: Linlang <v-linlanglv@microsoft.com>
Co-authored-by: you-n-g <you-n-g@users.noreply.github.com>
2023-07-18 19:25:08 +08:00
you-n-g
be4646b4b7 Adjust rolling api (#1594)
* Intermediate version

* Fix yaml template & Successfully run rolling

* Be compatible with benchmark

* Get same results with previous linear model

* Black formatting

* Update black

* Update the placeholder mechanism

* Update CI

* Update CI

* Upgrade Black

* Fix CI and simplify code

* Fix CI

* Move the data processing caching mechanism into utils.

* Adjusting DDG-DA

* Organize import
2023-07-14 12:16:12 +08:00
you-n-g
8d3adf34ac Postpone PR stale. (#1591) 2023-07-12 09:59:09 +08:00
Lewen Wang
b1dfc77ad7 Update qlibrl docs. (#1588)
* Update qlibrl docs.

* Update docs/component/rl/guidance.rst

* Update docs/component/rl/guidance.rst

* Update docs/component/rl/guidance.rst

---------

Co-authored-by: Litzy <litzy0619owned@gmail.com>
Co-authored-by: you-n-g <you-n-g@users.noreply.github.com>
2023-07-07 15:40:03 +08:00
Yang
3e074c8435 fix download token (#1577) 2023-07-06 12:38:52 +08:00
Linlang
b7e5f63a07 fix_pip_ci (#1584)
* fix_pip_ci

* fix_ci_get_data_error

---------

Co-authored-by: Linlang <v-linlanglv@microsoft.com>
2023-07-05 21:23:15 +08:00
you-n-g
4db30b1225 Update README.md for RL (#1573)
* Update README.md

* Update README.md
2023-06-28 10:53:58 +08:00
you-n-g
b1e7b19a3d Update __init__.py 2023-06-27 11:55:40 +08:00
you-n-g
27f476b311 Update __init__.py 2023-06-26 00:00:46 +08:00
you-n-g
0e61cac6a8 Update release-drafter.yml (#1569)
* Update release-drafter.yml

* Update release-drafter.yml
2023-06-25 23:48:37 +08:00
Linlang
21f0b394e7 change get_data url (#1558)
* change_url

* fix_CI

* fix_CI_2

* fix_CI_3

* fix_CI_4

* fix_CI_5

* fix_CI_6

* fix_CI_7

* fix_CI_8

* fix_CI_9

* fix_CI_10

* fix_CI_11

* fix_CI_12

* fix_CI_13

* fix_CI_13

* fix_CI_14

* fix_CI_15

* fix_CI_16

* fix_CI_17

* fix_CI_18

* fix_CI_19

* fix_CI_20

* fix_CI_21

* fix_CI_22

* fix_CI_23

* fix_CI_24

* fix_CI_25

* fix_CI_26

* fix_CI_27

* fix_get_data_error

* fix_get_data_error2

* modify_get_data

* modify_get_data2

* modify_get_data3

* modify_get_data4

* fix_CI_28

* fix_CI_29

* fix_CI_30

---------

Co-authored-by: Linlang <v-linlanglv@microsoft.com>
2023-06-25 23:39:11 +08:00
Wendi Li
cd4ab998fb Update on Dynamic Benchmark (#1539)
* move config file to benchmark_dynamic & switch default sim task model to GBDT

* Update benchmark_dynamic results

* Change the default value of alpha of DDG-DA
2023-06-03 08:42:24 +08:00
you-n-g
0e9ac9dce7 Fix CI (#1529) 2023-05-31 08:39:52 +08:00
yaxuan999
efffb2819a added KRNN and Sandwich models and their example results based on Alpha360 (#1414)
* Update README.md

updated the result of KRNN and Sandwich models based on Alpha360

* Update README.md

* Update README.md

* Add files via upload

* Update README.md

* Update README.md

* Update README.md

* Add files via upload

* Delete pytorch_krnn.py

* Delete pytorch_sandwich.py

* Add files via upload

* Update pytorch_sandwich.py

* Update pytorch_krnn.py

* Update pytorch_sandwich.py

* Update pytorch_krnn.py

* Update README.md

* Update README.md

* Update requirements.txt

* Update requirements.txt

* Update README.md

* Update README.md

* Update pytorch_sandwich.py

* Update link on index

---------

Co-authored-by: Young <afe.young@gmail.com>
2023-05-26 18:42:58 +08:00
Fivele-Li
19a0eb78bc Fix TCN model input dimension mismatch (#1520)
* transpose dimension 1 and 2 to match nn.Conv1d input

* 1.update TCN benchmarks;
2.Emphasize updating the benchmark table;

* replace specific version with main

---------

Co-authored-by: lijinhui <362237642@qq.com>
2023-05-26 14:44:34 +08:00
Fivele-Li
370477288d fix_DDG-DA_workflow_bug (#1516)
* 1.specify group_keys=False to avoid FutureWarning;
2.fix get train_start from dict unexpected problem;

* fix black

* Add comments

* Add make file

---------

Co-authored-by: Young <afe.young@gmail.com>
2023-05-24 15:49:58 +08:00
287 changed files with 6948 additions and 2599 deletions

8
.dockerignore Normal file
View File

@@ -0,0 +1,8 @@
__pycache__
*.pyc
*.pyo
*.pyd
.Python
.env
.git

View File

@@ -14,6 +14,9 @@ categories:
label:
- 'doc'
- 'documentation'
- title: '🧹 Maintenance'
label:
- 'maintenance'
change-template: '- $TITLE @$AUTHOR (#$NUMBER)'
change-title-escapes: '\<*_&' # You can add # and @ to disable mentions, and add ` to disable code blocks.
version-resolver:
@@ -30,4 +33,4 @@ version-resolver:
template: |
## Changes
$CHANGES
$CHANGES

View File

@@ -12,53 +12,54 @@ jobs:
runs-on: ${{ matrix.os }}
strategy:
matrix:
os: [windows-latest, macos-11]
# FIXME: macos-latest will raise error now.
# not supporting 3.6 due to annotations is not supported https://stackoverflow.com/a/52890129
python-version: [3.7, 3.8]
os: [windows-latest, macos-13, macos-latest]
python-version: ["3.8", "3.9", "3.10", "3.11", "3.12"]
exclude:
- os: macos-13
python-version: "3.11"
- os: macos-13
python-version: "3.12"
steps:
- uses: actions/checkout@v2
- name: Set up Python
uses: actions/setup-python@v2
- uses: actions/checkout@v3
- name: Set up Python ${{ matrix.python-version }}
uses: actions/setup-python@v4
with:
python-version: ${{ matrix.python-version }}
- name: Install dependencies
run: |
python -m pip install --upgrade pip
pip install setuptools wheel twine
- name: Build wheel on Windows
make dev
- name: Build wheel on ${{ matrix.os }}
run: |
pip install numpy
pip install cython
python setup.py bdist_wheel
- name: Build and publish
make build
- name: Upload to PyPi
env:
TWINE_USERNAME: ${{ secrets.PYPI_USERNAME }}
TWINE_PASSWORD: ${{ secrets.PYPI_PASSWORD }}
TWINE_USERNAME: __token__
TWINE_PASSWORD: ${{ secrets.PYPI_TOKEN }}
run: |
twine upload dist/*
twine check dist/*.whl
twine upload dist/*.whl --verbose
deploy_with_manylinux:
runs-on: ubuntu-latest
steps:
- uses: actions/checkout@v2
- uses: actions/checkout@v3
- name: Set up Python ${{ matrix.python-version }}
uses: actions/setup-python@v4
with:
python-version: ${{ matrix.python-version }}
- name: Build wheel on Linux
uses: RalfG/python-wheels-manylinux-build@v0.3.1-manylinux2010_x86_64
uses: RalfG/python-wheels-manylinux-build@v0.7.1-manylinux2014_x86_64
with:
# not supporting 3.6 due to annotations is not supported https://stackoverflow.com/a/52890129
python-versions: 'cp37-cp37m cp38-cp38'
python-versions: 'cp38-cp38 cp39-cp39 cp310-cp310 cp311-cp311 cp312-cp312'
build-requirements: 'numpy cython'
- name: Set up Python
uses: actions/setup-python@v2
with:
python-version: 3.7
- name: Install dependencies
run: |
pip install twine
- name: Build and publish
python -m pip install twine
- name: Upload to PyPi
env:
TWINE_USERNAME: ${{ secrets.PYPI_USERNAME }}
TWINE_PASSWORD: ${{ secrets.PYPI_PASSWORD }}
TWINE_USERNAME: __token__
TWINE_PASSWORD: ${{ secrets.PYPI_TOKEN }}
run: |
twine upload dist/pyqlib-*-manylinux*.whl
twine check dist/pyqlib-*-manylinux*.whl
twine upload dist/pyqlib-*-manylinux*.whl --verbose

View File

@@ -6,8 +6,14 @@ on:
branches:
- main
permissions:
contents: read
jobs:
update_release_draft:
permissions:
contents: write
pull-requests: read
runs-on: ubuntu-latest
steps:
# Drafts your next Release notes as Pull Requests are merged into "master"

View File

@@ -18,7 +18,8 @@ jobs:
stale-issue-label: 'stale'
stale-pr-label: 'stale'
days-before-stale: 90
days-before-pr-stale: 365
days-before-close: 5
operations-per-run: 100
exempt-issue-labels: 'bug,enhancement'
remove-stale-when-updated: true
remove-stale-when-updated: true

View File

@@ -13,44 +13,53 @@ jobs:
runs-on: ${{ matrix.os }}
strategy:
matrix:
os: [windows-latest, ubuntu-20.04, ubuntu-22.04, macos-11, macos-latest]
# not supporting 3.6 due to annotations is not supported https://stackoverflow.com/a/52890129
python-version: [3.7, 3.8]
os: [windows-latest, ubuntu-24.04, ubuntu-22.04, macos-14, macos-15]
# In github action, using python 3.7, pip install will not match the latest version of the package.
# Also, python 3.7 is no longer supported from macos-14, and will be phased out from macos-13 in the near future.
# All things considered, we have removed python 3.7.
python-version: ["3.8", "3.9", "3.10", "3.11", "3.12"]
steps:
- name: Test qlib from pip
uses: actions/checkout@v2
uses: actions/checkout@v3
- name: Set up Python ${{ matrix.python-version }}
uses: actions/setup-python@v2
uses: actions/setup-python@v4
with:
python-version: ${{ matrix.python-version }}
- name: Update pip to the latest version
run: |
python -m pip install --upgrade pip
# Will cancel this step when the next qlib version is released. The current qlib version is: 0.9.6
- name: Installing pywinpt for windows
if: ${{ matrix.os == 'windows-latest' }}
run: |
python -m pip install pywinpty --only-binary=:all:
# # joblib was released on 2025-05-04 with version 1.5.0, in which _backend_args was removed and replaced by _backend_kwargs.
# This change caused the application to fail, so the version of joblib is restricted here.
# This restriction will be removed in the next release. The current qlib version is: 0.9.6
- name: Qlib installation test
run: |
python -m pip install pyqlib
# Specify the numpy version because the numpy upgrade caused the CI test to fail,
# and this line of code will be removed when the next version of qlib is released.
python -m pip install "numpy<1.23"
python -m pip install "joblib<=1.4.2"
- name: Install Lightgbm for MacOS
if: ${{ matrix.os == 'macos-11' || matrix.os == 'macos-latest' }}
if: ${{ matrix.os == 'macos-14' || matrix.os == 'macos-15' }}
run: |
/bin/bash -c "$(curl -fsSL https://raw.githubusercontent.com/Microsoft/qlib/main/.github/brew_install.sh)"
HOMEBREW_NO_AUTO_UPDATE=1 brew install lightgbm
# FIX MacOS error: Segmentation fault
# reference: https://github.com/microsoft/LightGBM/issues/4229
wget https://raw.githubusercontent.com/Homebrew/homebrew-core/fb8323f2b170bd4ae97e1bac9bf3e2983af3fdb0/Formula/libomp.rb
brew unlink libomp
brew install libomp.rb
brew update
brew install libomp || brew reinstall libomp
python -m pip install --no-binary=:all: lightgbm
# When the new version is released it should be changed to:
# python -m qlib.cli.data qlib_data --target_dir ~/.qlib/qlib_data/cn_data --region cn
- name: Downloads dependencies data
run: |
python scripts/get_data.py qlib_data --name qlib_data_simple --target_dir ~/.qlib/qlib_data/cn_data --interval 1d --region cn
cd ..
python -m qlib.run.get_data qlib_data --target_dir ~/.qlib/qlib_data/cn_data --region cn
cd qlib
- name: Test workflow by config
run: |

View File

@@ -14,32 +14,32 @@ jobs:
runs-on: ${{ matrix.os }}
strategy:
matrix:
os: [windows-latest, ubuntu-20.04, ubuntu-22.04, macos-11, macos-latest]
# not supporting 3.6 due to annotations is not supported https://stackoverflow.com/a/52890129
python-version: [3.7, 3.8]
os: [windows-latest, ubuntu-24.04, ubuntu-22.04, macos-14, macos-15]
# In github action, using python 3.7, pip install will not match the latest version of the package.
# Also, python 3.7 is no longer supported from macos-14, and will be phased out from macos-13 in the near future.
# All things considered, we have removed python 3.7.
python-version: ["3.8", "3.9", "3.10", "3.11", "3.12"]
steps:
- name: Test qlib from source
uses: actions/checkout@v2
uses: actions/checkout@v3
- name: Set up Python ${{ matrix.python-version }}
uses: actions/setup-python@v2
uses: actions/setup-python@v4
with:
python-version: ${{ matrix.python-version }}
- name: Update pip to the latest version
# pip release version 23.1 on Apr.15 2023, CI failed to run, Please refer to #1495 ofr detailed logs.
# The pip version has been temporarily fixed to 23.0.1
run: |
python -m pip install pip==23.0.1
python -m pip install --upgrade pip
- name: Installing pytorch for macos
if: ${{ matrix.os == 'macos-11' || matrix.os == 'macos-latest' }}
if: ${{ matrix.os == 'macos-14' || matrix.os == 'macos-15' }}
run: |
python -m pip install torch torchvision torchaudio
- name: Installing pytorch for ubuntu
if: ${{ matrix.os == 'ubuntu-20.04' || matrix.os == 'ubuntu-22.04' }}
if: ${{ matrix.os == 'ubuntu-24.04' || matrix.os == 'ubuntu-22.04' }}
run: |
python -m pip install torch torchvision torchaudio --extra-index-url https://download.pytorch.org/whl/cpu
@@ -50,111 +50,73 @@ jobs:
- name: Set up Python tools
run: |
python -m pip install --upgrade cython
python -m pip install -e .[dev]
make dev
- name: Lint with Black
run: |
black . -l 120 --check --diff
make black
- name: Make html with sphinx
# Since read the docs builds on ubuntu 22.04, we only need to test that the build passes on ubuntu 22.04.
if: ${{ matrix.os == 'ubuntu-22.04' }}
run: |
cd docs
sphinx-build -W --keep-going -b html . _build
cd ..
make docs-gen
# Check Qlib with pylint
# TODO: These problems we will solve in the future. Important among them are: W0221, W0223, W0237, E1102
# C0103: invalid-name
# C0209: consider-using-f-string
# R0402: consider-using-from-import
# R1705: no-else-return
# R1710: inconsistent-return-statements
# R1725: super-with-arguments
# R1735: use-dict-literal
# W0102: dangerous-default-value
# W0212: protected-access
# W0221: arguments-differ
# W0223: abstract-method
# W0231: super-init-not-called
# W0237: arguments-renamed
# W0612: unused-variable
# W0621: redefined-outer-name
# W0622: redefined-builtin
# FIXME: specify exception type
# W0703: broad-except
# W1309: f-string-without-interpolation
# E1102: not-callable
# E1136: unsubscriptable-object
# References for parameters: https://github.com/PyCQA/pylint/issues/4577#issuecomment-1000245962
# We use sys.setrecursionlimit(2000) to make the recursion depth larger to ensure that pylint works properly (the default recursion depth is 1000).
- name: Check Qlib with pylint
run: |
pylint --disable=C0104,C0114,C0115,C0116,C0301,C0302,C0411,C0413,C1802,R0401,R0801,R0902,R0903,R0911,R0912,R0913,R0914,R0915,R1720,W0105,W0123,W0201,W0511,W0613,W1113,W1514,E0401,E1121,C0103,C0209,R0402,R1705,R1710,R1725,R1735,W0102,W0212,W0221,W0223,W0231,W0237,W0612,W0621,W0622,W0703,W1309,E1102,E1136 --const-rgx='[a-z_][a-z0-9_]{2,30}$' qlib --init-hook "import astroid; astroid.context.InferenceContext.max_inferred = 500; import sys; sys.setrecursionlimit(2000)"
make pylint
# The following flake8 error codes were ignored:
# E501 line too long
# Description: We have used black to limit the length of each line to 120.
# F541 f-string is missing placeholders
# Description: The same thing is done when using pylint for detection.
# E266 too many leading '#' for block comment
# Description: To make the code more readable, a lot of "#" is used.
# This error code appears centrally in:
# qlib/backtest/executor.py
# qlib/data/ops.py
# qlib/utils/__init__.py
# E402 module level import not at top of file
# Description: There are times when module level import is not available at the top of the file.
# W503 line break before binary operator
# Description: Since black formats the length of each line of code, it has to perform a line break when a line of arithmetic is too long.
# E731 do not assign a lambda expression, use a def
# Description: Restricts the use of lambda expressions, but at some point lambda expressions are required.
# E203 whitespace before ':'
# Description: If there is whitespace before ":", it cannot pass the black check.
- name: Check Qlib with flake8
run: |
flake8 --ignore=E501,F541,E266,E402,W503,E731,E203 --per-file-ignores="__init__.py:F401,F403" qlib
make flake8
# https://github.com/python/mypy/issues/10600
- name: Check Qlib with mypy
run: |
mypy qlib --install-types --non-interactive || true
mypy qlib --verbose
make mypy
- name: Check Qlib ipynb with nbqa
run: |
nbqa black . -l 120 --check --diff
nbqa pylint . --disable=C0104,C0114,C0115,C0116,C0301,C0302,C0411,C0413,C1802,R0401,R0801,R0902,R0903,R0911,R0912,R0913,R0914,R0915,R1720,W0105,W0123,W0201,W0511,W0613,W1113,W1514,E0401,E1121,C0103,C0209,R0402,R1705,R1710,R1725,R1735,W0102,W0212,W0221,W0223,W0231,W0237,W0612,W0621,W0622,W0703,W1309,E1102,E1136,W0719,W0104,W0404,C0412,W0611,C0410 --const-rgx='[a-z_][a-z0-9_]{2,30}$'
make nbqa
- name: Test data downloads
run: |
python scripts/get_data.py qlib_data --name qlib_data_simple --target_dir ~/.qlib/qlib_data/cn_data --interval 1d --region cn
azcopy copy https://qlibpublic.blob.core.windows.net/data/rl /tmp/qlibpublic/data --recursive
mv /tmp/qlibpublic/data tests/.data
python scripts/get_data.py download_data --file_name rl_data.zip --target_dir tests/.data/rl
- name: Install Lightgbm for MacOS
if: ${{ matrix.os == 'macos-11' || matrix.os == 'macos-latest' }}
if: ${{ matrix.os == 'macos-14' || matrix.os == 'macos-15' }}
run: |
/bin/bash -c "$(curl -fsSL https://raw.githubusercontent.com/Microsoft/qlib/main/.github/brew_install.sh)"
HOMEBREW_NO_AUTO_UPDATE=1 brew install lightgbm
# FIX MacOS error: Segmentation fault
# reference: https://github.com/microsoft/LightGBM/issues/4229
wget https://raw.githubusercontent.com/Homebrew/homebrew-core/fb8323f2b170bd4ae97e1bac9bf3e2983af3fdb0/Formula/libomp.rb
brew unlink libomp
brew install libomp.rb
brew update
brew install libomp || brew reinstall libomp
python -m pip install --no-binary=:all: lightgbm
# Run after data downloads
- name: Check Qlib ipynb with nbconvert
run: |
# add more ipynb files in future
jupyter nbconvert --to notebook --execute examples/workflow_by_code.ipynb
make nbconvert
- name: Test workflow by config (install from source)
run: |
python -m pip install numba
python qlib/workflow/cli.py examples/benchmarks/LightGBM/workflow_config_lightgbm_Alpha158.yaml
python qlib/cli/run.py examples/benchmarks/LightGBM/workflow_config_lightgbm_Alpha158.yaml
- name: Unit tests with Pytest
- name: Unit tests with Pytest (MacOS)
if: ${{ matrix.os == 'macos-14' || matrix.os == 'macos-15' }}
uses: nick-fields/retry@v2
with:
timeout_minutes: 60
max_attempts: 3
command: |
# Limit the number of threads in various libraries to prevent Segmentation faults caused by OpenMP multithreading conflicts under macOS.
export OMP_NUM_THREADS=1 # Limit the number of OpenMP threads
export MKL_NUM_THREADS=1 # Limit the number of Intel MKL threads
export NUMEXPR_NUM_THREADS=1 # Limit the number of NumExpr threads
export OPENBLAS_NUM_THREADS=1 # Limit the number of OpenBLAS threads
export VECLIB_MAXIMUM_THREADS=1 # Limit the number of macOS Accelerate/vecLib threads
cd tests
python -m pytest . -m "not slow" --durations=0
- name: Unit tests with Pytest (Ubuntu and Windows)
if: ${{ matrix.os != 'macos-13' && matrix.os != 'macos-14' && matrix.os != 'macos-15' }}
uses: nick-fields/retry@v2
with:
timeout_minutes: 60

View File

@@ -14,41 +14,37 @@ jobs:
runs-on: ${{ matrix.os }}
strategy:
matrix:
os: [windows-latest, ubuntu-20.04, ubuntu-22.04, macos-11, macos-latest]
# not supporting 3.6 due to annotations is not supported https://stackoverflow.com/a/52890129
python-version: [3.7, 3.8]
os: [windows-latest, ubuntu-24.04, ubuntu-22.04, macos-14, macos-15]
# In github action, using python 3.7, pip install will not match the latest version of the package.
# Also, python 3.7 is no longer supported from macos-14, and will be phased out from macos-13 in the near future.
# All things considered, we have removed python 3.7.
python-version: ["3.8", "3.9", "3.10", "3.11", "3.12"]
steps:
- name: Test qlib from source slow
uses: actions/checkout@v2
uses: actions/checkout@v3
- name: Set up Python ${{ matrix.python-version }}
uses: actions/setup-python@v2
uses: actions/setup-python@v4
with:
python-version: ${{ matrix.python-version }}
- name: Set up Python tools
# pip release version 23.1 on Apr.15 2023, CI failed to run, Please refer to #1495 ofr detailed logs.
# The pip version has been temporarily fixed to 23.0.1
run: |
python -m pip install pip==23.0.1
pip install --upgrade cython numpy
pip install -e .[dev]
make dev
- name: Downloads dependencies data
run: |
python scripts/get_data.py qlib_data --name qlib_data_simple --target_dir ~/.qlib/qlib_data/cn_data --interval 1d --region cn
# install.sh file contents from: https://raw.githubusercontent.com/Homebrew/install/HEAD/install.sh
# brew_install.sh file contents from: https://raw.githubusercontent.com/Microsoft/qlib/main/.github/brew_install.sh
- name: Install Lightgbm for MacOS
if: ${{ matrix.os == 'macos-11' || matrix.os == 'macos-latest' }}
if: ${{ matrix.os == 'macos-14' || matrix.os == 'macos-15' }}
run: |
/bin/bash -c "$(curl -fsSL https://raw.githubusercontent.com/Microsoft/qlib/main/.github/brew_install.sh)"
HOMEBREW_NO_AUTO_UPDATE=1 brew install lightgbm
# FIX MacOS error: Segmentation fault
# reference: https://github.com/microsoft/LightGBM/issues/4229
wget https://raw.githubusercontent.com/Homebrew/homebrew-core/fb8323f2b170bd4ae97e1bac9bf3e2983af3fdb0/Formula/libomp.rb
brew unlink libomp
brew install libomp.rb
brew update
brew install libomp || brew reinstall libomp
python -m pip install --no-binary=:all: lightgbm
- name: Unit tests with Pytest
uses: nick-fields/retry@v2

1
.gitignore vendored
View File

@@ -49,3 +49,4 @@ tags
./pretrain
.idea/
.aider*

View File

@@ -1,6 +1,6 @@
repos:
- repo: https://github.com/psf/black
rev: 22.6.0
rev: 23.7.0
hooks:
- id: black
args: ["qlib", "-l 120"]
@@ -9,4 +9,4 @@ repos:
rev: 4.0.1
hooks:
- id: flake8
args: ["--ignore=E501,F541,E266,E402,W503,E731,E203"]
args: ["--ignore=E501,F541,E266,E402,W503,E731,E203"]

View File

@@ -5,6 +5,12 @@
# Required
version: 2
# Set the version of Python and other tools you might need
build:
os: ubuntu-22.04
tools:
python: "3.8"
# Build documentation in the docs/ directory with Sphinx
sphinx:
configuration: docs/conf.py
@@ -14,7 +20,6 @@ formats: all
# Optionally set the version of Python and requirements required to build your docs
python:
version: 3.7
install:
- requirements: docs/requirements.txt
- method: pip

31
Dockerfile Normal file
View File

@@ -0,0 +1,31 @@
FROM continuumio/miniconda3:latest
WORKDIR /qlib
COPY . .
RUN apt-get update && \
apt-get install -y build-essential
RUN conda create --name qlib_env python=3.8 -y
RUN echo "conda activate qlib_env" >> ~/.bashrc
ENV PATH /opt/conda/envs/qlib_env/bin:$PATH
RUN python -m pip install --upgrade pip
RUN python -m pip install numpy==1.23.5
RUN python -m pip install pandas==1.5.3
RUN python -m pip install importlib-metadata==5.2.0
RUN python -m pip install "cloudpickle<3"
RUN python -m pip install scikit-learn==1.3.2
RUN python -m pip install cython packaging tables matplotlib statsmodels
RUN python -m pip install pybind11 cvxpy
ARG IS_STABLE="yes"
RUN if [ "$IS_STABLE" = "yes" ]; then \
python -m pip install pyqlib; \
else \
python setup.py install; \
fi

View File

@@ -1 +1,6 @@
include qlib/VERSION.txt
exclude tests/*
include qlib/*
include qlib/*/*
include qlib/*/*/*
include qlib/*/*/*/*
include qlib/*/*/*/*/*

209
Makefile Normal file
View File

@@ -0,0 +1,209 @@
.PHONY: clean deepclean prerequisite dependencies lightgbm rl develop lint docs package test analysis all install dev black pylint flake8 mypy nbqa nbconvert lint build upload docs-gen
#You can modify it according to your terminal
SHELL := /bin/bash
########################################################################################
# Variables
########################################################################################
# Documentation target directory, will be adapted to specific folder for readthedocs.
PUBLIC_DIR := $(shell [ "$$READTHEDOCS" = "True" ] && echo "$$READTHEDOCS_OUTPUT/html" || echo "public")
SO_DIR := qlib/data/_libs
SO_FILES := $(wildcard $(SO_DIR)/*.so)
ifeq ($(OS),Windows_NT)
IS_WINDOWS = true
else
IS_WINDOWS = false
endif
########################################################################################
# Development Environment Management
########################################################################################
# Remove common intermediate files.
clean:
-rm -rf \
$(PUBLIC_DIR) \
qlib/data/_libs/*.cpp \
qlib/data/_libs/*.so \
mlruns \
public \
build \
.coverage \
.mypy_cache \
.pytest_cache \
.ruff_cache \
Pipfile* \
coverage.xml \
dist \
release-notes.md
find . -name '*.egg-info' -print0 | xargs -0 rm -rf
find . -name '*.pyc' -print0 | xargs -0 rm -f
find . -name '*.swp' -print0 | xargs -0 rm -f
find . -name '.DS_Store' -print0 | xargs -0 rm -f
find . -name '__pycache__' -print0 | xargs -0 rm -rf
# Remove pre-commit hook, virtual environment alongside itermediate files.
deepclean: clean
if command -v pre-commit > /dev/null 2>&1; then pre-commit uninstall --hook-type pre-push; fi
if command -v pipenv >/dev/null 2>&1 && pipenv --venv >/dev/null 2>&1; then pipenv --rm; fi
# Prerequisite section
# What this code does is compile two Cython modules, rolling and expanding, using setuptools and Cython,
# and builds them as binary expansion modules that can be imported directly into Python.
# Since pyproject.toml can't do that, we compile it here.
# pywinpty as a dependency of jupyter on windows, if you use pip install pywinpty installation,
# will first download the tar.gz file, and then locally compiled and installed,
# this will lead to some unnecessary trouble, so we choose to install the compiled whl file, to avoid trouble.
prerequisite:
@if [ -n "$(SO_FILES)" ]; then \
echo "Shared library files exist, skipping build."; \
else \
echo "No shared library files found, building..."; \
pip install --upgrade setuptools wheel; \
python -m pip install cython numpy; \
python -c "from setuptools import setup, Extension; from Cython.Build import cythonize; import numpy; extensions = [Extension('qlib.data._libs.rolling', ['qlib/data/_libs/rolling.pyx'], language='c++', include_dirs=[numpy.get_include()]), Extension('qlib.data._libs.expanding', ['qlib/data/_libs/expanding.pyx'], language='c++', include_dirs=[numpy.get_include()])]; setup(ext_modules=cythonize(extensions, language_level='3'), script_args=['build_ext', '--inplace'])"; \
fi
@if [ "$(IS_WINDOWS)" = "true" ]; then \
python -m pip install pywinpty --only-binary=:all:; \
fi
# Install the package in editable mode.
dependencies:
python -m pip install -e .
lightgbm:
python -m pip install lightgbm --prefer-binary
rl:
python -m pip install -e .[rl]
develop:
python -m pip install -e .[dev]
lint:
python -m pip install -e .[lint]
docs:
python -m pip install -e .[docs]
package:
python -m pip install -e .[package]
test:
python -m pip install -e .[test]
analysis:
python -m pip install -e .[analysis]
all:
python -m pip install -e .[pywinpty,dev,lint,docs,package,test,analysis,rl]
install: prerequisite dependencies
dev: prerequisite all
########################################################################################
# Lint and pre-commit
########################################################################################
# Check lint with black.
black:
black . -l 120 --check --diff
# Check code folder with pylint.
# TODO: These problems we will solve in the future. Important among them are: W0221, W0223, W0237, E1102
# C0103: invalid-name
# C0209: consider-using-f-string
# R0402: consider-using-from-import
# R1705: no-else-return
# R1710: inconsistent-return-statements
# R1725: super-with-arguments
# R1735: use-dict-literal
# W0102: dangerous-default-value
# W0212: protected-access
# W0221: arguments-differ
# W0223: abstract-method
# W0231: super-init-not-called
# W0237: arguments-renamed
# W0612: unused-variable
# W0621: redefined-outer-name
# W0622: redefined-builtin
# FIXME: specify exception type
# W0703: broad-except
# W1309: f-string-without-interpolation
# E1102: not-callable
# E1136: unsubscriptable-object
# W4904: deprecated-class
# R0917: too-many-positional-arguments
# E1123: unexpected-keyword-arg
# References for disable error: https://pylint.pycqa.org/en/latest/user_guide/messages/messages_overview.html
# We use sys.setrecursionlimit(2000) to make the recursion depth larger to ensure that pylint works properly (the default recursion depth is 1000).
# References for parameters: https://github.com/PyCQA/pylint/issues/4577#issuecomment-1000245962
pylint:
pylint --disable=C0104,C0114,C0115,C0116,C0301,C0302,C0411,C0413,C1802,R0401,R0801,R0902,R0903,R0911,R0912,R0913,R0914,R0915,R0917,R1720,W0105,W0123,W0201,W0511,W0613,W1113,W1514,W4904,E0401,E1121,C0103,C0209,R0402,R1705,R1710,R1725,R1730,R1735,W0102,W0212,W0221,W0223,W0231,W0237,W0612,W0621,W0622,W0703,W1309,E1102,E1136 --const-rgx='[a-z_][a-z0-9_]{2,30}' qlib --init-hook="import astroid; astroid.context.InferenceContext.max_inferred = 500; import sys; sys.setrecursionlimit(2000)"
pylint --disable=C0104,C0114,C0115,C0116,C0301,C0302,C0411,C0413,C1802,R0401,R0801,R0902,R0903,R0911,R0912,R0913,R0914,R0915,R0917,R1720,W0105,W0123,W0201,W0511,W0613,W1113,W1514,E0401,E1121,E1123,C0103,C0209,R0402,R1705,R1710,R1725,R1735,W0102,W0212,W0221,W0223,W0231,W0237,W0246,W0612,W0621,W0622,W0703,W1309,E1102,E1136 --const-rgx='[a-z_][a-z0-9_]{2,30}' scripts --init-hook="import astroid; astroid.context.InferenceContext.max_inferred = 500; import sys; sys.setrecursionlimit(2000)"
# Check code with flake8.
# The following flake8 error codes were ignored:
# E501 line too long
# Description: We have used black to limit the length of each line to 120.
# F541 f-string is missing placeholders
# Description: The same thing is done when using pylint for detection.
# E266 too many leading '#' for block comment
# Description: To make the code more readable, a lot of "#" is used.
# This error code appears centrally in:
# qlib/backtest/executor.py
# qlib/data/ops.py
# qlib/utils/__init__.py
# E402 module level import not at top of file
# Description: There are times when module level import is not available at the top of the file.
# W503 line break before binary operator
# Description: Since black formats the length of each line of code, it has to perform a line break when a line of arithmetic is too long.
# E731 do not assign a lambda expression, use a def
# Description: Restricts the use of lambda expressions, but at some point lambda expressions are required.
# E203 whitespace before ':'
# Description: If there is whitespace before ":", it cannot pass the black check.
flake8:
flake8 --ignore=E501,F541,E266,E402,W503,E731,E203 --per-file-ignores="__init__.py:F401,F403" qlib
# Check code with mypy.
# https://github.com/python/mypy/issues/10600
mypy:
mypy qlib --install-types --non-interactive
mypy qlib --verbose
# Check ipynb with nbqa.
nbqa:
nbqa black . -l 120 --check --diff
nbqa pylint . --disable=C0104,C0114,C0115,C0116,C0301,C0302,C0411,C0413,C1802,R0401,R0801,R0902,R0903,R0911,R0912,R0913,R0914,R0915,R1720,W0105,W0123,W0201,W0511,W0613,W1113,W1514,E0401,E1121,C0103,C0209,R0402,R1705,R1710,R1725,R1735,W0102,W0212,W0221,W0223,W0231,W0237,W0612,W0621,W0622,W0703,W1309,E1102,E1136,W0719,W0104,W0404,C0412,W0611,C0410 --const-rgx='[a-z_][a-z0-9_]{2,30}'
# Check ipynb with nbconvert.(Run after data downloads)
# TODO: Add more ipynb files in future
nbconvert:
jupyter nbconvert --to notebook --execute examples/workflow_by_code.ipynb
lint: black pylint flake8 mypy nbqa
########################################################################################
# Package
########################################################################################
# Build the package.
build:
python -m build --wheel
# Upload the package.
upload:
python -m twine upload dist/*
########################################################################################
# Documentation
########################################################################################
docs-gen:
python -m sphinx.cmd.build -W docs $(PUBLIC_DIR)

172
README.md
View File

@@ -8,9 +8,46 @@
[![Join the chat at https://gitter.im/Microsoft/qlib](https://badges.gitter.im/Microsoft/qlib.svg)](https://gitter.im/Microsoft/qlib?utm_source=badge&utm_medium=badge&utm_campaign=pr-badge&utm_content=badge)
## :newspaper: **What's NEW!** &nbsp; :sparkling_heart:
Recent released features
### Introducing <a href="https://github.com/microsoft/RD-Agent"><img src="docs/_static/img/rdagent_logo.png" alt="RD_Agent" style="height: 2em"></a>: LLM-Based Autonomous Evolving Agents for Industrial Data-Driven R&D
We are excited to announce the release of **RD-Agent**📢, a powerful tool that supports automated factor mining and model optimization in quant investment R&D.
RD-Agent is now available on [GitHub](https://github.com/microsoft/RD-Agent), and we welcome your star🌟!
To learn more, please visit our [Demo page](https://rdagent.azurewebsites.net/). Here, you will find demo videos in both English and Chinese to help you better understand the scenario and usage of RD-Agent.
We have prepared several demo videos for you:
| Scenario | Demo video (English) | Demo video (中文) |
| -- | ------ | ------ |
| Quant Factor Mining | [Link](https://rdagent.azurewebsites.net/factor_loop?lang=en) | [Link](https://rdagent.azurewebsites.net/factor_loop?lang=zh) |
| Quant Factor Mining from reports | [Link](https://rdagent.azurewebsites.net/report_factor?lang=en) | [Link](https://rdagent.azurewebsites.net/report_factor?lang=zh) |
| Quant Model Optimization | [Link](https://rdagent.azurewebsites.net/model_loop?lang=en) | [Link](https://rdagent.azurewebsites.net/model_loop?lang=zh) |
- 📃**Paper**: [R&D-Agent-Quant: A Multi-Agent Framework for Data-Centric Factors and Model Joint Optimization](https://arxiv.org/abs/2505.15155)
- 👾**Code**: https://github.com/microsoft/RD-Agent/
```BibTeX
@misc{li2025rdagentquant,
title={R\&D-Agent-Quant: A Multi-Agent Framework for Data-Centric Factors and Model Joint Optimization},
author={Yuante Li and Xu Yang and Xiao Yang and Minrui Xu and Xisen Wang and Weiqing Liu and Jiang Bian},
year={2025},
eprint={2505.15155},
archivePrefix={arXiv},
primaryClass={cs.AI}
}
```
![image](https://github.com/user-attachments/assets/3198bc10-47ba-4ee0-8a8e-46d5ce44f45d)
***
| Feature | Status |
| -- | ------ |
| [R&D-Agent-Quant](https://arxiv.org/abs/2505.15155) Published | Apply R&D-Agent to Qlib for quant trading |
| BPQP for End-to-end learning | 📈Coming soon!([Under review](https://github.com/microsoft/qlib/pull/1863)) |
| 🔥LLM-driven Auto Quant Factory🔥 | 🚀 Released in [RD-Agent](https://github.com/microsoft/RD-Agent) on Aug 8, 2024 |
| KRNN and Sandwich models | :chart_with_upwards_trend: [Released](https://github.com/microsoft/qlib/pull/1414/) on May 26, 2023 |
| Release Qlib v0.9.0 | :octocat: [Released](https://github.com/microsoft/qlib/releases/tag/v0.9.0) on Dec 9, 2022 |
| RL Learning Framework | :hammer: :chart_with_upwards_trend: Released on Nov 10, 2022. [#1332](https://github.com/microsoft/qlib/pull/1332), [#1322](https://github.com/microsoft/qlib/pull/1322), [#1316](https://github.com/microsoft/qlib/pull/1316),[#1299](https://github.com/microsoft/qlib/pull/1299),[#1263](https://github.com/microsoft/qlib/pull/1263), [#1244](https://github.com/microsoft/qlib/pull/1244), [#1169](https://github.com/microsoft/qlib/pull/1169), [#1125](https://github.com/microsoft/qlib/pull/1125), [#1076](https://github.com/microsoft/qlib/pull/1076)|
| HIST and IGMTF models | :chart_with_upwards_trend: [Released](https://github.com/microsoft/qlib/pull/1040) on Apr 10, 2022 |
@@ -39,7 +76,7 @@ Recent released features
Features released before 2021 are not listed here.
<p align="center">
<img src="http://fintech.msra.cn/images_v070/logo/1.png" />
<img src="docs/_static/img/logo/1.png" />
</p>
Qlib is an open-source, AI-oriented quantitative investment platform that aims to realize the potential, empower research, and create value using AI technologies in quantitative investment, from exploring ideas to implementing productions. Qlib supports diverse machine learning modeling paradigms, including supervised learning, market dynamics modeling, and reinforcement learning.
@@ -90,6 +127,7 @@ For more details, please refer to our paper ["Qlib: An AI-oriented Quantitative
</ul>
</li>
<li type="circle"><a href="#adapting-to-market-dynamics">Adapting to Market Dynamics</a></li>
<li type="circle"><a href="#reinforcement-learning-modeling-continuous-decisions">Reinforcement Learning: modeling continuous decisions</a></li>
</ul>
</li>
</td>
@@ -130,17 +168,17 @@ Here is a quick **[demo](https://terminalizer.com/view/3f24561a4470)** shows how
## Installation
This table demonstrates the supported Python version of `Qlib`:
| | install with pip | install from source | plot |
| ------------- |:---------------------:|:--------------------:|:----:|
| Python 3.7 | :heavy_check_mark: | :heavy_check_mark: | :heavy_check_mark: |
| | install with pip | install from source | plot |
| ------------- |:---------------------:|:--------------------:|:------------------:|
| Python 3.8 | :heavy_check_mark: | :heavy_check_mark: | :heavy_check_mark: |
| Python 3.9 | :x: | :heavy_check_mark: | :x: |
| Python 3.9 | :heavy_check_mark: | :heavy_check_mark: | :heavy_check_mark: |
| Python 3.10 | :heavy_check_mark: | :heavy_check_mark: | :heavy_check_mark: |
| Python 3.11 | :heavy_check_mark: | :heavy_check_mark: | :heavy_check_mark: |
| Python 3.12 | :heavy_check_mark: | :heavy_check_mark: | :heavy_check_mark: |
**Note**:
1. **Conda** is suggested for managing your Python environment.
1. Please pay attention that installing cython in Python 3.6 will raise some error when installing ``Qlib`` from source. If users use Python 3.6 on their machines, it is recommended to *upgrade* Python to version 3.7 or use `conda`'s Python to install ``Qlib`` from source.
1. For Python 3.9, `Qlib` supports running workflows such as training models, doing backtest and plot most of the related figures (those included in [notebook](examples/workflow_by_code.ipynb)). However, plotting for the *model performance* is not supported for now and we will fix this when the dependent packages are upgraded in the future.
1. `Qlib`Requires `tables` package, `hdf5` in tables does not support python3.9.
1. **Conda** is suggested for managing your Python environment. In some cases, using Python outside of a `conda` environment may result in missing header files, causing the installation failure of certain packages.
2. Please pay attention that installing cython in Python 3.6 will raise some error when installing ``Qlib`` from source. If users use Python 3.6 on their machines, it is recommended to *upgrade* Python to version 3.8 or higher, or use `conda`'s Python to install ``Qlib`` from source.
### Install with pip
Users can easily install ``Qlib`` by pip according to the following command.
@@ -158,28 +196,43 @@ Also, users can install the latest dev version ``Qlib`` by the source code accor
```bash
pip install numpy
pip install --upgrade cython
pip install --upgrade cython
```
* Clone the repository and install ``Qlib`` as follows.
```bash
git clone https://github.com/microsoft/qlib.git && cd qlib
pip install .
pip install . # `pip install -e .[dev]` is recommended for development. check details in docs/developer/code_standard_and_dev_guide.rst
```
**Note**: You can install Qlib with `python setup.py install` as well. But it is not the recommended approach. It will skip `pip` and cause obscure problems. For example, **only** the command ``pip install .`` **can** overwrite the stable version installed by ``pip install pyqlib``, while the command ``python setup.py install`` **can't**.
**Tips**: If you fail to install `Qlib` or run the examples in your environment, comparing your steps and the [CI workflow](.github/workflows/test_qlib_from_source.yml) may help you find the problem.
**Tips for Mac**: If you are using Mac with M1, you might encounter issues in building the wheel for LightGBM, which is due to missing dependencies from OpenMP. To solve the problem, install openmp first with ``brew install libomp`` and then run ``pip install .`` to build it successfully.
## Data Preparation
❗ Due to more restrict data security policy. The official dataset is disabled temporarily. You can try [this data source](https://github.com/chenditc/investment_data/releases) contributed by the community.
Here is an example to download the latest data.
```bash
wget https://github.com/chenditc/investment_data/releases/latest/download/qlib_bin.tar.gz
mkdir -p ~/.qlib/qlib_data/cn_data
tar -zxvf qlib_bin.tar.gz -C ~/.qlib/qlib_data/cn_data --strip-components=1
rm -f qlib_bin.tar.gz
```
The official dataset below will resume in short future.
----
Load and prepare data by running the following code:
### Get with module
```bash
# get 1d data
python -m qlib.run.get_data qlib_data --target_dir ~/.qlib/qlib_data/cn_data --region cn
python -m qlib.cli.data qlib_data --target_dir ~/.qlib/qlib_data/cn_data --region cn
# get 1min data
python -m qlib.run.get_data qlib_data --target_dir ~/.qlib/qlib_data/cn_data_1min --region cn --interval 1min
python -m qlib.cli.data qlib_data --target_dir ~/.qlib/qlib_data/cn_data_1min --region cn --interval 1min
```
@@ -226,6 +279,16 @@ We recommend users to prepare their own data if they have a high-quality dataset
* *trading_date*: start of trading day
* *end_date*: end of trading day(not included)
### Checking the health of the data
* We provide a script to check the health of the data, you can run the following commands to check whether the data is healthy or not.
```
python scripts/check_data_health.py check_data --qlib_dir ~/.qlib/qlib_data/cn_data
```
* Of course, you can also add some parameters to adjust the test results, such as this.
```
python scripts/check_data_health.py check_data --qlib_dir ~/.qlib/qlib_data/cn_data --missing_data_num 30055 --large_step_threshold_volume 94485 --large_step_threshold_price 20
```
* If you want more information about `check_data_health`, please refer to the [documentation](https://qlib.readthedocs.io/en/latest/component/data.html#checking-the-health-of-the-data).
<!--
- Run the initialization code and get stock data:
@@ -254,6 +317,38 @@ We recommend users to prepare their own data if they have a high-quality dataset
```
-->
## Docker images
1. Pulling a docker image from a docker hub repository
```bash
docker pull pyqlib/qlib_image_stable:stable
```
2. Start a new Docker container
```bash
docker run -it --name <container name> -v <Mounted local directory>:/app qlib_image_stable
```
3. At this point you are in the docker environment and can run the qlib scripts. An example:
```bash
>>> python scripts/get_data.py qlib_data --name qlib_data_simple --target_dir ~/.qlib/qlib_data/cn_data --interval 1d --region cn
>>> python qlib/cli/run.py examples/benchmarks/LightGBM/workflow_config_lightgbm_Alpha158.yaml
```
4. Exit the container
```bash
>>> exit
```
5. Restart the container
```bash
docker start -i -a <container name>
```
6. Stop the container
```bash
docker stop <container name>
```
7. Delete the container
```bash
docker rm <container name>
```
8. If you want to know more information, please refer to the [documentation](https://qlib.readthedocs.io/en/latest/developer/how_to_build_image.html).
## Auto Quant Research Workflow
Qlib provides a tool named `qrun` to run the whole workflow automatically (including building dataset, training models, backtest and evaluation). You can start an auto quant research workflow and have a graphical reports analysis according to the following steps:
@@ -264,9 +359,9 @@ Qlib provides a tool named `qrun` to run the whole workflow automatically (inclu
```
If users want to use `qrun` under debug mode, please use the following command:
```bash
python -m pdb qlib/workflow/cli.py examples/benchmarks/LightGBM/workflow_config_lightgbm_Alpha158.yaml
python -m pdb qlib/cli/run.py examples/benchmarks/LightGBM/workflow_config_lightgbm_Alpha158.yaml
```
The result of `qrun` is as follows, please refer to [Intraday Trading](https://qlib.readthedocs.io/en/latest/component/backtest.html) for more details about the result.
The result of `qrun` is as follows, please refer to [docs](https://qlib.readthedocs.io/en/latest/component/strategy.html#result) for more explanations about the result.
```bash
@@ -287,22 +382,22 @@ Qlib provides a tool named `qrun` to run the whole workflow automatically (inclu
```
Here are detailed documents for `qrun` and [workflow](https://qlib.readthedocs.io/en/latest/component/workflow.html).
2. Graphical Reports Analysis: Run `examples/workflow_by_code.ipynb` with `jupyter notebook` to get graphical reports
2. Graphical Reports Analysis: First, run `python -m pip install .[analysis]` to install the required dependencies. Then run `examples/workflow_by_code.ipynb` with `jupyter notebook` to get graphical reports.
- Forecasting signal (model prediction) analysis
- Cumulative Return of groups
![Cumulative Return](http://fintech.msra.cn/images_v070/analysis/analysis_model_cumulative_return.png?v=0.1)
![Cumulative Return](https://github.com/microsoft/qlib/blob/main/docs/_static/img/analysis/analysis_model_cumulative_return.png)
- Return distribution
![long_short](http://fintech.msra.cn/images_v070/analysis/analysis_model_long_short.png?v=0.1)
![long_short](https://github.com/microsoft/qlib/blob/main/docs/_static/img/analysis/analysis_model_long_short.png)
- Information Coefficient (IC)
![Information Coefficient](http://fintech.msra.cn/images_v070/analysis/analysis_model_IC.png?v=0.1)
![Monthly IC](http://fintech.msra.cn/images_v070/analysis/analysis_model_monthly_IC.png?v=0.1)
![IC](http://fintech.msra.cn/images_v070/analysis/analysis_model_NDQ.png?v=0.1)
![Information Coefficient](https://github.com/microsoft/qlib/blob/main/docs/_static/img/analysis/analysis_model_IC.png)
![Monthly IC](https://github.com/microsoft/qlib/blob/main/docs/_static/img/analysis/analysis_model_monthly_IC.png)
![IC](https://github.com/microsoft/qlib/blob/main/docs/_static/img/analysis/analysis_model_NDQ.png)
- Auto Correlation of forecasting signal (model prediction)
![Auto Correlation](http://fintech.msra.cn/images_v070/analysis/analysis_model_auto_correlation.png?v=0.1)
![Auto Correlation](https://github.com/microsoft/qlib/blob/main/docs/_static/img/analysis/analysis_model_auto_correlation.png)
- Portfolio analysis
- Backtest return
![Report](http://fintech.msra.cn/images_v070/analysis/report.png?v=0.1)
![Report](https://github.com/microsoft/qlib/blob/main/docs/_static/img/analysis/report.png)
<!--
- Score IC
![Score IC](docs/_static/img/score_ic.png)
@@ -319,7 +414,7 @@ Qlib provides a tool named `qrun` to run the whole workflow automatically (inclu
The automatic workflow may not suit the research workflow of all Quant researchers. To support a flexible Quant research workflow, Qlib also provides a modularized interface to allow researchers to build their own workflow by code. [Here](examples/workflow_by_code.ipynb) is a demo for customized Quant research workflow by code.
# Main Challenges & Solutions in Quant Research
Quant investment is an very unique scenario with lots of key challenges to be solved.
Quant investment is a very unique scenario with lots of key challenges to be solved.
Currently, Qlib provides some solutions for several of them.
## Forecasting: Finding Valuable Signals/Patterns
@@ -353,10 +448,12 @@ Here is a list of models built on `Qlib`.
- [ADD based on pytorch (Hongshun Tang, et al.2020)](examples/benchmarks/ADD/)
- [IGMTF based on pytorch (Wentao Xu, et al.2021)](examples/benchmarks/IGMTF/)
- [HIST based on pytorch (Wentao Xu, et al.2021)](examples/benchmarks/HIST/)
- [KRNN based on pytorch](examples/benchmarks/KRNN/)
- [Sandwich based on pytorch](examples/benchmarks/Sandwich/)
Your PR of new Quant models is highly welcomed.
The performance of each model on the `Alpha158` and `Alpha360` dataset can be found [here](examples/benchmarks/README.md).
The performance of each model on the `Alpha158` and `Alpha360` datasets can be found [here](examples/benchmarks/README.md).
### Run a single model
All the models listed above are runnable with ``Qlib``. Users can find the config files we provide and some details about the model through the [benchmarks](examples/benchmarks) folder. More information can be retrieved at the model files listed above.
@@ -380,6 +477,14 @@ python run_all_model.py run 10
It also provides the API to run specific models at once. For more use cases, please refer to the file's [docstrings](examples/run_all_model.py).
### Break change
In `pandas`, `group_key` is one of the parameters of the `groupby` method. From version 1.5 to 2.0 of `pandas`, the default value of `group_key` has been changed from `no default` to `True`, which will cause qlib to report an error during operation. So we set `group_key=False`, but it doesn't guarantee that some programmes will run correctly, including:
* qlib\examples\rl_order_execution\scripts\gen_training_orders.py
* qlib\examples\benchmarks\TRA\src\dataset.MTSDatasetH.py
* qlib\examples\benchmarks\TFT\tft.py
## [Adapting to Market Dynamics](examples/benchmarks_dynamic)
Due to the non-stationary nature of the environment of the financial market, the data distribution may change in different periods, which makes the performance of models build on training data decays in the future test data.
@@ -389,6 +494,17 @@ Here is a list of solutions built on `Qlib`.
- [Rolling Retraining](examples/benchmarks_dynamic/baseline/)
- [DDG-DA on pytorch (Wendi, et al. AAAI 2022)](examples/benchmarks_dynamic/DDG-DA/)
## Reinforcement Learning: modeling continuous decisions
Qlib now supports reinforcement learning, a feature designed to model continuous investment decisions. This functionality assists investors in optimizing their trading strategies by learning from interactions with the environment to maximize some notion of cumulative reward.
Here is a list of solutions built on `Qlib` categorized by scenarios.
### [RL for order execution](examples/rl_order_execution)
[Here](https://qlib.readthedocs.io/en/latest/component/rl/overall.html#order-execution) is the introduction of this scenario. All the methods below are compared [here](examples/rl_order_execution).
- [TWAP](examples/rl_order_execution/exp_configs/backtest_twap.yml)
- [PPO: "An End-to-End Optimal Trade Execution Framework based on Proximal Policy Optimization", IJCAL 2020](examples/rl_order_execution/exp_configs/backtest_ppo.yml)
- [OPDS: "Universal Trading for Order Execution with Oracle Policy Distillation", AAAI 2021](examples/rl_order_execution/exp_configs/backtest_opds.yml)
# Quant Dataset Zoo
Dataset plays a very important role in Quant. Here is a list of the datasets built on `Qlib`:
@@ -468,7 +584,7 @@ Qlib data are stored in a compact format, which is efficient to be combined into
Join IM discussion groups:
|[Gitter](https://gitter.im/Microsoft/qlib)|
|----|
|![image](http://fintech.msra.cn/images_v070/qrcode/gitter_qr.png)|
|![image](https://github.com/microsoft/qlib/blob/main/docs/_static/img/qrcode/gitter_qr.png)|
# Contributing
We appreciate all contributions and thank all the contributors!
@@ -504,7 +620,7 @@ You can find some impefect implementation in Qlib by `rg 'TODO|FIXME' qlib`
If you would like to become one of Qlib's maintainers to contribute more (e.g. help merge PR, triage issues), please contact us by email([qlib@microsoft.com](mailto:qlib@microsoft.com)). We are glad to help to upgrade your permission.
## Licence
## License
Most contributions require you to agree to a
Contributor License Agreement (CLA) declaring that you have the right to, and actually do, grant us
the right to use your contribution. For details, visit https://cla.opensource.microsoft.com.

31
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@@ -0,0 +1,31 @@
#!/bin/bash
docker_user="your_dockerhub_username"
read -p "Do you want to build the nightly version of the qlib image? (default is stable) (yes/no): " answer;
answer=$(echo "$answer" | tr '[:upper:]' '[:lower:]')
if [ "$answer" = "yes" ]; then
# Build the nightly version of the qlib image
docker build --build-arg IS_STABLE=no -t qlib_image -f ./Dockerfile .
image_tag="nightly"
else
# Build the stable version of the qlib image
docker build -t qlib_image -f ./Dockerfile .
image_tag="stable"
fi
read -p "Is it uploaded to docker hub? (default is no) (yes/no): " answer;
answer=$(echo "$answer" | tr '[:upper:]' '[:lower:]')
if [ "$answer" = "yes" ]; then
# Log in to Docker Hub
# If you are a new docker hub user, please verify your email address before proceeding with this step.
docker login
# Tag the Docker image
docker tag qlib_image "$docker_user/qlib_image:$image_tag"
# Push the Docker image to Docker Hub
docker push "$docker_user/qlib_image:$image_tag"
else
echo "Not uploaded to docker hub."
fi

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@@ -52,7 +52,7 @@ Also, ``Qlib`` provides a high-frequency dataset. Users can run a high-frequency
Qlib Format Dataset
-------------------
``Qlib`` has provided an off-the-shelf dataset in `.bin` format, users could use the script ``scripts/get_data.py`` to download the China-Stock dataset as follows. User can also use numpy to load `.bin` file to validate data.
The price volume data look different from the actual dealling price because of they are **adjusted** (`adjusted price <https://www.investopedia.com/terms/a/adjusted_closing_price.asp>`_). And then you may find that the adjusted price may be different from different data sources. This is because different data sources may vary in the way of adjusting prices. Qlib normalize the price on first trading day of each stock to 1 when adjusting them.
The price volume data look different from the actual dealing price because of they are **adjusted** (`adjusted price <https://www.investopedia.com/terms/a/adjusted_closing_price.asp>`_). And then you may find that the adjusted price may be different from different data sources. This is because different data sources may vary in the way of adjusting prices. Qlib normalize the price on first trading day of each stock to 1 when adjusting them.
Users can leverage `$factor` to get the original trading price (e.g. `$close / $factor` to get the original close price).
Here are some discussions about the price adjusting of Qlib.
@@ -108,10 +108,10 @@ Automatic update of daily frequency data
Converting CSV Format into Qlib Format
--------------------------------------
Converting CSV and Parquet Format into Qlib Format
--------------------------------------------------
``Qlib`` has provided the script ``scripts/dump_bin.py`` to convert **any** data in CSV format into `.bin` files (``Qlib`` format) as long as they are in the correct format.
``Qlib`` has provided the script ``scripts/dump_bin.py`` to convert **any** data in CSV or Parquet format into `.bin` files (``Qlib`` format) as long as they are in the correct format.
Besides downloading the prepared demo data, users could download demo data directly from the Collector as follows for reference to the CSV format.
Here are some example:
@@ -119,64 +119,67 @@ Here are some example:
for daily data:
.. code-block:: bash
python scripts/get_data.py csv_data_cn --target_dir ~/.qlib/csv_data/cn_data
python scripts/get_data.py download_data --file_name csv_data_cn.zip --target_dir ~/.qlib/csv_data/cn_data
for 1min data:
.. code-block:: bash
python scripts/data_collector/yahoo/collector.py download_data --source_dir ~/.qlib/stock_data/source/cn_1min --region CN --start 2021-05-20 --end 2021-05-23 --delay 0.1 --interval 1min --limit_nums 10
Users can also provide their own data in CSV format. However, the CSV data **must satisfies** following criterions:
Users can also provide their own data in CSV or Parquet format. However, the data **must satisfies** following criterions:
- CSV file is named after a specific stock *or* the CSV file includes a column of the stock name
- CSV or Parquet file is named after a specific stock *or* the CSV or Parquet file includes a column of the stock name
- Name the CSV file after a stock: `SH600000.csv`, `AAPL.csv` (not case sensitive).
- Name the CSV or Parquet file after a stock: `SH600000.csv`, `AAPL.csv` or `SH600000.parquet`, `AAPL.parquet` (not case sensitive).
- CSV file includes a column of the stock name. User **must** specify the column name when dumping the data. Here is an example:
- CSV or Parquet file includes a column of the stock name. User **must** specify the column name when dumping the data. Here is an example:
.. code-block:: bash
python scripts/dump_bin.py dump_all ... --symbol_field_name symbol
python scripts/dump_bin.py dump_all ... --symbol_field_name symbol --file_suffix <.csv or .parquet>
where the data are in the following format:
.. code-block::
+-----------+-------+
| symbol | close |
+===========+=======+
| SH600000 | 120 |
+-----------+-------+
symbol,close
SH600000,120
- CSV file **must** includes a column for the date, and when dumping the data, user must specify the date column name. Here is an example:
- CSV or Parquet file **must** include a column for the date, and when dumping the data, user must specify the date column name. Here is an example:
.. code-block:: bash
python scripts/dump_bin.py dump_all ... --date_field_name date
python scripts/dump_bin.py dump_all ... --date_field_name date --file_suffix <.csv or .parquet>
where the data are in the following format:
.. code-block::
symbol,date,close,open,volume
SH600000,2020-11-01,120,121,12300000
SH600000,2020-11-02,123,120,12300000
+---------+------------+-------+------+----------+
| symbol | date | close | open | volume |
+=========+============+=======+======+==========+
| SH600000| 2020-11-01 | 120 | 121 | 12300000 |
+---------+------------+-------+------+----------+
| SH600000| 2020-11-02 | 123 | 120 | 12300000 |
+---------+------------+-------+------+----------+
Supposed that users prepare their CSV format data in the directory ``~/.qlib/csv_data/my_data``, they can run the following command to start the conversion.
Supposed that users prepare their CSV or Parquet format data in the directory ``~/.qlib/my_data``, they can run the following command to start the conversion.
.. code-block:: bash
python scripts/dump_bin.py dump_all --csv_path ~/.qlib/csv_data/my_data --qlib_dir ~/.qlib/qlib_data/my_data --include_fields open,close,high,low,volume,factor
python scripts/dump_bin.py dump_all --data_path ~/.qlib/my_data --qlib_dir ~/.qlib/qlib_data/ --include_fields open,close,high,low,volume,factor --file_suffix <.csv or .parquet>
For other supported parameters when dumping the data into `.bin` file, users can refer to the information by running the following commands:
.. code-block:: bash
python dump_bin.py dump_all --help
python scripts/dump_bin.py dump_all --help
After conversion, users can find their Qlib format data in the directory `~/.qlib/qlib_data/my_data`.
After conversion, users can find their Qlib format data in the directory `~/.qlib/qlib_data/`.
.. note::
The arguments of `--include_fields` should correspond with the column names of CSV files. The columns names of dataset provided by ``Qlib`` should include open, close, high, low, volume and factor at least.
The arguments of `--include_fields` should correspond with the column names of CSV or Parquet files. The columns names of dataset provided by ``Qlib`` should include open, close, high, low, volume and factor at least.
- `open`
The adjusted opening price
@@ -192,7 +195,58 @@ After conversion, users can find their Qlib format data in the directory `~/.qli
The Restoration factor. Normally, ``factor = adjusted_price / original_price``, `adjusted price` reference: `split adjusted <https://www.investopedia.com/terms/s/splitadjusted.asp>`_
In the convention of `Qlib` data processing, `open, close, high, low, volume, money and factor` will be set to NaN if the stock is suspended.
If you want to use your own alpha-factor which can't be calculate by OCHLV, like PE, EPS and so on, you could add it to the CSV files with OHCLV together and then dump it to the Qlib format data.
If you want to use your own alpha-factor which can't be calculate by OCHLV, like PE, EPS and so on, you could add it to the CSV or Parquet files with OHCLV together and then dump it to the Qlib format data.
Checking the health of the data
-------------------------------
``Qlib`` provides a script to check the health of the data.
- The main points to check are as follows
- Check if any data is missing in the DataFrame.
- Check if there are any large step changes above the threshold in the OHLCV columns.
- Check if any of the required columns (OLHCV) are missing in the DataFrame.
- Check if the 'factor' column is missing in the DataFrame.
- You can run the following commands to check whether the data is healthy or not.
for daily data:
.. code-block:: bash
python scripts/check_data_health.py check_data --qlib_dir ~/.qlib/qlib_data/cn_data
for 1min data:
.. code-block:: bash
python scripts/check_data_health.py check_data --qlib_dir ~/.qlib/qlib_data/cn_data_1min --freq 1min
- Of course, you can also add some parameters to adjust the test results.
- The available parameters are these.
- freq: Frequency of data.
- large_step_threshold_price: Maximum permitted price change
- large_step_threshold_volume: Maximum permitted volume change.
- missing_data_num: Maximum value for which data is allowed to be null.
- You can run the following commands to check whether the data is healthy or not.
for daily data:
.. code-block:: bash
python scripts/check_data_health.py check_data --qlib_dir ~/.qlib/qlib_data/cn_data --missing_data_num 30055 --large_step_threshold_volume 94485 --large_step_threshold_price 20
for 1min data:
.. code-block:: bash
python scripts/check_data_health.py check_data --qlib_dir ~/.qlib/qlib_data/cn_data --freq 1min --missing_data_num 35806 --large_step_threshold_volume 3205452000000 --large_step_threshold_price 0.91
Stock Pool (Market)
-------------------

View File

@@ -25,7 +25,7 @@ The design of the framework is shown in the yellow part in the middle of the fig
The frequency of the trading algorithm, decision content and execution environment can be customized by users (e.g. intraday trading, daily-frequency trading, weekly-frequency trading), and the execution environment can be nested with finer-grained trading algorithm and execution environment inside (i.e. sub-workflow in the figure, e.g. daily-frequency orders can be turned into finer-grained decisions by splitting orders within the day). The flexibility of the nested decision execution framework makes it easy for users to explore the effects of combining different levels of trading strategies and break down the optimization barriers between different levels of the trading algorithm.
The optimization for the nested decision execution framework can be implemented with the support of `QlibRL <https://qlib.readthedocs.io/en/latest/component/rl.html>`_. To know more about how to use the QlibRL, go to API Reference: `RL API <../reference/api.html#rl>`_.
The optimization for the nested decision execution framework can be implemented with the support of `QlibRL <./rl/overall.html>`_. To know more about how to use the QlibRL, go to API Reference: `RL API <../reference/api.html#rl>`_.
Example
=======

View File

@@ -86,7 +86,7 @@ Example
},
}
# model initiaiton
# model initialization
model = init_instance_by_config(task["model"])
dataset = init_instance_by_config(task["dataset"])

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@@ -0,0 +1,32 @@
========
Guidance
========
.. currentmodule:: qlib
QlibRL can help users quickly get started and conveniently implement quantitative strategies based on reinforcement learning(RL) algorithms. For different user groups, we recommend the following guidance to use QlibRL.
Beginners to Reinforcement Learning Algorithms
==============================================
Whether you are a quantitative researcher who wants to understand what RL can do in trading or a learner who wants to get started with RL algorithms in trading scenarios, if you have limited knowledge of RL and want to shield various detailed settings to quickly get started with RL algorithms, we recommend the following sequence to learn qlibrl:
- Learn the fundamentals of RL in `part1 <https://qlib.readthedocs.io/en/latest/component/rl/overall.html#reinforcement-learning>`_.
- Understand the trading scenarios where RL methods can be applied in `part2 <https://qlib.readthedocs.io/en/latest/component/rl/overall.html#potential-application-scenarios-in-quantitative-trading>`_.
- Run the examples in `part3 <https://qlib.readthedocs.io/en/latest/component/rl/quickstart.html>`_ to solve trading problems using RL.
- If you want to further explore QlibRL and make some customizations, you need to first understand the framework of QlibRL in `part4 <https://qlib.readthedocs.io/en/latest/component/rl/framework.html>`_ and rewrite specific components according to your needs.
Reinforcement Learning Algorithm Researcher
==============================================
If you are already familiar with existing RL algorithms and dedicated to researching RL algorithms but lack domain knowledge in the financial field, and you want to validate the effectiveness of your algorithms in financial trading scenarios, we recommend the following steps to get started with QlibRL:
- Understand the trading scenarios where RL methods can be applied in `part2 <https://qlib.readthedocs.io/en/latest/component/rl/overall.html#potential-application-scenarios-in-quantitative-trading>`_.
- Choose an RL application scenario (currently, QlibRL has implemented two scenario examples: order execution and algorithmic trading). Run the example in `part3 <https://qlib.readthedocs.io/en/latest/component/rl/quickstart.html>`_ to get it working.
- Modify the `policy <https://github.com/microsoft/qlib/blob/main/qlib/rl/order_execution/policy.py>`_ part to incorporate your own RL algorithm.
Quantitative Researcher
=======================
If you have a certain level of financial domain knowledge and coding skills, and you want to explore the application of RL algorithms in the investment field, we recommend the following steps to explore QlibRL:
- Learn the fundamentals of RL in `part1 <https://qlib.readthedocs.io/en/latest/component/rl/overall.html#reinforcement-learning>`_.
- Understand the trading scenarios where RL methods can be applied in `part2 <https://qlib.readthedocs.io/en/latest/component/rl/overall.html#potential-application-scenarios-in-quantitative-trading>`_.
- Run the examples in `part3 <https://qlib.readthedocs.io/en/latest/component/rl/quickstart.html>`_ to solve trading problems using RL.
- Understand the framework of QlibRL in `part4 <https://qlib.readthedocs.io/en/latest/component/rl/framework.html>`_.
- Choose a suitable RL algorithm based on the characteristics of the problem you want to solve (currently, QlibRL supports PPO and DQN algorithms based on tianshou).
- Design the MDP (Markov Decision Process) process based on market trading rules and the problem you want to solve. Refer to the example in order execution and make corresponding modifications to the following modules: `State <https://github.com/microsoft/qlib/blob/main/qlib/rl/order_execution/state.py#L70>`_, `Metrics <https://github.com/microsoft/qlib/blob/main/qlib/rl/order_execution/state.py#L18>`_, `ActionInterpreter <https://github.com/microsoft/qlib/blob/main/qlib/rl/order_execution/interpreter.py#L199>`_, `StateInterpreter <https://github.com/microsoft/qlib/blob/main/qlib/rl/order_execution/interpreter.py#L68>`_, `Reward <https://github.com/microsoft/qlib/blob/main/qlib/rl/order_execution/reward.py>`_, `Observation <https://github.com/microsoft/qlib/blob/main/qlib/rl/order_execution/interpreter.py#L44>`_, `Simulator <https://github.com/microsoft/qlib/blob/main/qlib/rl/order_execution/simulator_simple.py>`_.

View File

@@ -4,7 +4,7 @@ Reinforcement Learning in Quantitative Trading
Reinforcement Learning
======================
Different from supervised learning tasks such as classification tasks and regression tasks. Another important paradigm in machine learning is Reinforcement Learning,
Different from supervised learning tasks such as classification tasks and regression tasks. Another important paradigm in machine learning is Reinforcement Learning(RL),
which attempts to optimize an accumulative numerical reward signal by directly interacting with the environment under a few assumptions such as Markov Decision Process(MDP).
As demonstrated in the following figure, an RL system consists of four elements, 1)the agent 2) the environment the agent interacts with 3) the policy that the agent follows to take actions on the environment and 4)the reward signal from the environment to the agent.
@@ -25,26 +25,46 @@ The Qlib Reinforcement Learning toolkit (QlibRL) is an RL platform for quantitat
Potential Application Scenarios in Quantitative Trading
=======================================================
RL methods have already achieved outstanding achievement in many applications, such as game playing, resource allocating, recommendation, marketing and advertising, etc.
Investment is always a continuous process, taking the stock market as an example, investors need to control their positions and stock holdings by one or more buying and selling behaviors, to maximize the investment returns.
Besides, each buy and sell decision is made by investors after fully considering the overall market information and stock information.
From the view of an investor, the process could be described as a continuous decision-making process generated according to interaction with the market, such problems could be solved by the RL algorithms.
Following are some scenarios where RL can potentially be used in quantitative investment.
Portfolio Construction
----------------------
Portfolio construction is a process of selecting securities optimally by taking a minimum risk to achieve maximum returns. With an RL-based solution, an agent allocates stocks at every time step by obtaining information for each stock and the market. The key is to develop of policy for building a portfolio and make the policy able to pick the optimal portfolio.
RL methods have demonstrated remarkable achievements in various applications, including game playing, resource allocation, recommendation systems, marketing, and advertising.
In the context of investment, which involves continuous decision-making, let's consider the example of the stock market. Investors strive to optimize their investment returns by effectively managing their positions and stock holdings through various buying and selling behaviors.
Furthermore, investors carefully evaluate market conditions and stock-specific information before making each buying or selling decision. From an investor's perspective, this process can be viewed as a continuous decision-making process driven by interactions with the market. RL algorithms offer a promising approach to tackle such challenges.
Here are several scenarios where RL holds potential for application in quantitative investment.
Order Execution
---------------
As a fundamental problem in algorithmic trading, order execution aims at fulfilling a specific trading order, either liquidation or acquirement, for a given instrument. Essentially, the goal of order execution is twofold: it not only requires to fulfill the whole order but also targets a more economical execution with maximizing profit gain (or minimizing capital loss). The order execution with only one order of liquidation or acquirement is called single-asset order execution.
The order execution task is to execute orders efficiently while considering multiple factors, including optimal prices, minimizing trading costs, reducing market impact, maximizing order fullfill rates, and achieving execution within a specified time frame. RL can be applied to such tasks by incorporating these objectives into the reward function and action selection process. Specifically, the RL agent interacts with the market environment, observes the state from market information, and makes decisions on next step execution. The RL algorithm learns an optimal execution strategy through trial and error, aiming to maximize the expected cumulative reward, which incorporates the desired objectives.
Considering stock investment always aim to pursue long-term maximized profits, it usually manifests as a sequential process of continuously adjusting the asset portfolios, execution for multiple orders, including order of liquidation and acquirement, brings more constraints and makes the sequence of execution for different orders should be considered, e.g. before executing an order to buy some stocks, we have to sell at least one stock. The order execution with multiple assets is called multi-asset order execution.
- General Setting
- Environment: The environment represents the financial market where order execution takes place. It encompasses variables such as the order book dynamics, liquidity, price movements, and market conditions.
According to the order executions trait of sequential decision-making, an RL-based solution could be applied to solve the order execution. With an RL-based solution, an agent optimizes execution strategy by interacting with the market environment.
- State: The state refers to the information available to the RL agent at a given time step. It typically includes features such as the current order book state (bid-ask spread, order depth), historical price data, historical trading volume, market volatility, and any other relevant information that can aid in decision-making.
With QlibRL, the RL algorithm in the above scenarios can be easily implemented.
- Action: The action is the decision made by the RL agent based on the observed state. In order execution, actions can include selecting the order size, price, and timing of execution.
Nested Portfolio Construction and Order Executor
------------------------------------------------
QlibRL makes it possible to jointly optimize different levels of strategies/models/agents. Take `Nested Decision Execution Framework <https://github.com/microsoft/qlib/blob/main/examples/nested_decision_execution>`_ as an example, the optimization of order execution strategy and portfolio management strategies can interact with each other to maximize returns.
- Reward: The reward is a scalar signal that indicates the performance of the RL agent's action in the environment. The reward function is designed to encourage actions that lead to efficient and cost-effective order execution. It typically considers multiple objectives, such as maximizing price advantages, minimizing trading costs (including transaction fees and slippage), reducing market impact (the effect of the order on the market price) and maximizing order fullfill rates.
- Scenarios
- Single-asset order execution: Single-asset order execution focuses on the task of executing a single order for a specific asset, such as a stock or a cryptocurrency. The primary objective is to execute the order efficiently while considering factors such as maximizing price advantages, minimizing trading costs, reducing market impact, and achieving a high fullfill rate. The RL agent interacts with the market environment and makes decisions on order size, price, and timing of execution for that particular asset. The goal is to learn an optimal execution strategy for the single asset, maximizing the expected cumulative reward while considering the specific dynamics and characteristics of that asset.
- Multi-asset order execution: Multi-asset order execution expands the order execution task to involve multiple assets or securities. It typically involves executing a portfolio of orders across different assets simultaneously or sequentially. Unlike single-asset order execution, the focus is not only on the execution of individual orders but also on managing the interactions and dependencies between different assets within the portfolio. The RL agent needs to make decisions on the order sizes, prices, and timings for each asset in the portfolio, considering their interdependencies, cash constraints, market conditions, and transaction costs. The goal is to learn an optimal execution strategy that balances the execution efficiency for each asset while considering the overall performance and objectives of the portfolio as a whole.
The choice of settings and RL algorithm depends on the specific requirements of the task, available data, and desired performance objectives.
Portfolio Construction
----------------------
Portfolio construction is a process of selecting and allocating assets in an investment portfolio. RL provides a framework to optimize portfolio management decisions by learning from interactions with the market environment and maximizing long-term returns while considering risk management.
- General Setting
- State: The state represents the current information about the market and the portfolio. It typically includes historical prices and volumes, technical indicators, and other relevant data.
- Action: The action corresponds to the decision of allocating capital to different assets in the portfolio. It determines the weights or proportions of investments in each asset.
- Reward: The reward is a metric that evaluates the performance of the portfolio. It can be defined in various ways, such as total return, risk-adjusted return, or other objectives like maximizing Sharpe ratio or minimizing drawdown.
- Scenarios
- Stock market: RL can be used to construct portfolios of stocks, where the agent learns to allocate capital among different stocks.
- Cryptocurrency market: RL can be applied to construct portfolios of cryptocurrencies, where the agent learns to make allocation decisions.
- Foreign exchange (Forex) market: RL can be used to construct portfolios of currency pairs, where the agent learns to allocate capital across different currencies based on exchange rate data, economic indicators, and other factors.
Similarly, the choice of basic setting and algorithm depends on the specific requirements of the problem and the characteristics of the market.

View File

@@ -5,6 +5,7 @@ Reinforcement Learning in Quantitative Trading
========================================================================
.. toctree::
Guidance <guidance>
Overall <overall>
Quick Start <quickstart>
Framework <framework>

View File

@@ -53,17 +53,18 @@ Below is a typical config file of ``qrun``.
kwargs:
topk: 50
n_drop: 5
signal:
- <MODEL>
- <DATASET>
signal: <PRED>
backtest:
limit_threshold: 0.095
start_time: 2017-01-01
end_time: 2020-08-01
account: 100000000
benchmark: *benchmark
deal_price: close
open_cost: 0.0005
close_cost: 0.0015
min_cost: 5
exchange_kwargs:
limit_threshold: 0.095
deal_price: close
open_cost: 0.0005
close_cost: 0.0015
min_cost: 5
task:
model:
class: LGBModel
@@ -109,7 +110,7 @@ If users want to use ``qrun`` under debug mode, please use the following command
.. code-block:: bash
python -m pdb qlib/workflow/cli.py examples/benchmarks/LightGBM/workflow_config_lightgbm_Alpha158.yaml
python -m pdb qlib/cli/run.py examples/benchmarks/LightGBM/workflow_config_lightgbm_Alpha158.yaml
.. note::
@@ -281,9 +282,7 @@ The following script is the configuration of `backtest` and the `strategy` used
kwargs:
topk: 50
n_drop: 5
signal:
- <MODEL>
- <DATASET>
signal: <PRED>
backtest:
limit_threshold: 0.095
account: 100000000

View File

@@ -123,7 +123,6 @@ html_logo = "_static/img/logo/1.png"
html_theme_options = {
"logo_only": True,
"collapse_navigation": False,
"display_version": False,
"navigation_depth": 4,
}

View File

@@ -60,4 +60,4 @@ The `[dev]` option will help you to install some related packages when developin
.. code-block:: bash
pip install -e .[dev]
pip install -e ".[dev]"

View File

@@ -0,0 +1,81 @@
.. _docker_image:
==================
Build Docker Image
==================
Dockerfile
==========
There is a **Dockerfile** file in the root directory of the project from which you can build the docker image. There are two build methods in Dockerfile to choose from.
When executing the build command, use the ``--build-arg`` parameter to control the image version. The ``--build-arg`` parameter defaults to ``yes``, which builds the ``stable`` version of the qlib image.
1.For the ``stable`` version, use ``pip install pyqlib`` to build the qlib image.
.. code-block:: bash
docker build --build-arg IS_STABLE=yes -t <image name> -f ./Dockerfile .
.. code-block:: bash
docker build -t <image name> -f ./Dockerfile .
2. For the ``nightly`` version, use current source code to build the qlib image.
.. code-block:: bash
docker build --build-arg IS_STABLE=no -t <image name> -f ./Dockerfile .
Auto build of qlib images
=========================
1. There is a **build_docker_image.sh** file in the root directory of your project, which can be used to automatically build docker images and upload them to your docker hub repository(Optional, configuration required).
.. code-block:: bash
sh build_docker_image.sh
>>> Do you want to build the nightly version of the qlib image? (default is stable) (yes/no):
>>> Is it uploaded to docker hub? (default is no) (yes/no):
2. If you want to upload the built image to your docker hub repository, you need to edit your **build_docker_image.sh** file first, fill in ``docker_user`` in the file, and then execute this file.
How to use qlib images
======================
1. Start a new Docker container
.. code-block:: bash
docker run -it --name <container name> -v <Mounted local directory>:/app <image name>
2. At this point you are in the docker environment and can run the qlib scripts. An example:
.. code-block:: bash
>>> python scripts/get_data.py qlib_data --name qlib_data_simple --target_dir ~/.qlib/qlib_data/cn_data --interval 1d --region cn
>>> python qlib/cli/run.py examples/benchmarks/LightGBM/workflow_config_lightgbm_Alpha158.yaml
3. Exit the container
.. code-block:: bash
>>> exit
4. Restart the container
.. code-block:: bash
docker start -i -a <container name>
5. Stop the container
.. code-block:: bash
docker stop -i -a <container name>
6. Delete the container
.. code-block:: bash
docker rm <container name>
7. For more information on using docker see the `docker documentation <https://docs.docker.com/reference/cli/docker/>`_.

View File

@@ -61,6 +61,7 @@ Document Structure
:caption: FOR DEVELOPERS:
Code Standard & Development Guidance <developer/code_standard_and_dev_guide.rst>
How to build image <developer/how_to_build_image.rst>
.. toctree::
:maxdepth: 3

View File

@@ -36,7 +36,7 @@ Name Description
the training process of models which enable algorithms controlling the
training process.
`Learning Framework` layer The `Forecast Model` and `Trading Agent` are learnable. They are learned
`Learning Framework` layer The `Forecast Model` and `Trading Agent` are trainable. They are trained
based on the `Learning Framework` layer and then applied to multiple scenarios
in `Workflow` layer. The supported learning paradigms can be categorized into
reinforcement learning and supervised learning. The learning framework
@@ -51,7 +51,7 @@ Name Description
modules. With these signals `Decision Generator` will generate the target
trading decisions(i.e. portfolio, orders)
If RL-based Strategies are adopted, the `Policy` is learned in a end-to-end way,
the trading deicsions are generated directly.
the trading decisions are generated directly.
Decisions will be executed by `Execution Env`
(i.e. the trading market). There may be multiple levels of `Strategy`
and `Executor` (e.g. an *order executor trading strategy and intraday order executor*

View File

@@ -16,7 +16,7 @@ This ``Quick Start`` guide tries to demonstrate
Installation
============
Users can easily intsall ``Qlib`` according to the following steps:
Users can easily install ``Qlib`` according to the following steps:
- Before installing ``Qlib`` from source, users need to install some dependencies:

View File

@@ -5,3 +5,4 @@ scipy
scikit-learn
pandas
tianshou
sphinx_rtd_theme

View File

@@ -28,8 +28,7 @@ port_analysis_config: &port_analysis_config
class: TopkDropoutStrategy
module_path: qlib.contrib.strategy
kwargs:
model: <MODEL>
dataset: <DATASET>
signal: <PRED>
topk: 50
n_drop: 5
backtest:

View File

@@ -28,9 +28,7 @@ port_analysis_config: &port_analysis_config
class: TopkDropoutStrategy
module_path: qlib.contrib.strategy
kwargs:
signal:
- <MODEL>
- <DATASET>
signal: <PRED>
topk: 50
n_drop: 5
backtest:

View File

@@ -36,9 +36,7 @@ port_analysis_config: &port_analysis_config
class: TopkDropoutStrategy
module_path: qlib.contrib.strategy
kwargs:
signal:
- <MODEL>
- <DATASET>
signal: <PRED>
topk: 50
n_drop: 5
backtest:

View File

@@ -28,9 +28,7 @@ port_analysis_config: &port_analysis_config
class: TopkDropoutStrategy
module_path: qlib.contrib.strategy
kwargs:
signal:
- <MODEL>
- <DATASET>
signal: <PRED>
topk: 50
n_drop: 5
backtest:

View File

@@ -14,9 +14,7 @@ port_analysis_config: &port_analysis_config
class: TopkDropoutStrategy
module_path: qlib.contrib.strategy
kwargs:
signal:
- <MODEL>
- <DATASET>
signal: <PRED>
topk: 50
n_drop: 5
backtest:

View File

@@ -14,9 +14,7 @@ port_analysis_config: &port_analysis_config
class: TopkDropoutStrategy
module_path: qlib.contrib.strategy
kwargs:
signal:
- <MODEL>
- <DATASET>
signal: <PRED>
topk: 50
n_drop: 5
backtest:

View File

@@ -21,9 +21,7 @@ port_analysis_config: &port_analysis_config
class: TopkDropoutStrategy
module_path: qlib.contrib.strategy
kwargs:
signal:
- <MODEL>
- <DATASET>
signal: <PRED>
topk: 50
n_drop: 5
backtest:

View File

@@ -21,9 +21,7 @@ port_analysis_config: &port_analysis_config
class: TopkDropoutStrategy
module_path: qlib.contrib.strategy
kwargs:
signal:
- <MODEL>
- <DATASET>
signal: <PRED>
topk: 50
n_drop: 5
backtest:

View File

@@ -14,9 +14,7 @@ port_analysis_config: &port_analysis_config
class: TopkDropoutStrategy
module_path: qlib.contrib.strategy
kwargs:
signal:
- <MODEL>
- <DATASET>
signal: <PRED>
topk: 50
n_drop: 5
backtest:

View File

@@ -14,9 +14,7 @@ port_analysis_config: &port_analysis_config
class: TopkDropoutStrategy
module_path: qlib.contrib.strategy
kwargs:
signal:
- <MODEL>
- <DATASET>
signal: <PRED>
topk: 50
n_drop: 5
backtest:

View File

@@ -21,9 +21,7 @@ port_analysis_config: &port_analysis_config
class: TopkDropoutStrategy
module_path: qlib.contrib.strategy
kwargs:
signal:
- <MODEL>
- <DATASET>
signal: <PRED>
topk: 50
n_drop: 5
backtest:

View File

@@ -21,9 +21,7 @@ port_analysis_config: &port_analysis_config
class: TopkDropoutStrategy
module_path: qlib.contrib.strategy
kwargs:
signal:
- <MODEL>
- <DATASET>
signal: <PRED>
topk: 50
n_drop: 5
backtest:

View File

@@ -14,9 +14,7 @@ port_analysis_config: &port_analysis_config
class: TopkDropoutStrategy
module_path: qlib.contrib.strategy
kwargs:
signal:
- <MODEL>
- <DATASET>
signal: <PRED>
topk: 50
n_drop: 5
backtest:

View File

@@ -35,9 +35,7 @@ port_analysis_config: &port_analysis_config
class: TopkDropoutStrategy
module_path: qlib.contrib.strategy
kwargs:
signal:
- <MODEL>
- <DATASET>
signal: <PRED>
topk: 50
n_drop: 5
backtest:

View File

@@ -28,9 +28,7 @@ port_analysis_config: &port_analysis_config
class: TopkDropoutStrategy
module_path: qlib.contrib.strategy
kwargs:
signal:
- <MODEL>
- <DATASET>
signal: <PRED>
topk: 50
n_drop: 5
backtest:

View File

@@ -36,9 +36,7 @@ port_analysis_config: &port_analysis_config
class: TopkDropoutStrategy
module_path: qlib.contrib.strategy
kwargs:
signal:
- <MODEL>
- <DATASET>
signal: <PRED>
topk: 50
n_drop: 5
backtest:

View File

@@ -28,9 +28,7 @@ port_analysis_config: &port_analysis_config
class: TopkDropoutStrategy
module_path: qlib.contrib.strategy
kwargs:
signal:
- <MODEL>
- <DATASET>
signal: <PRED>
topk: 50
n_drop: 5
backtest:

View File

@@ -0,0 +1,19 @@
# Introduction
What is GeneralPtNN
- Fix previous design that fail to support both Time-series and tabular data
- Now you can just replace the Pytorch model structure to run a NN model.
We provide an example to demonstrate the effectiveness of the current design.
- `workflow_config_gru.yaml` align with previous results [GRU(Kyunghyun Cho, et al.)](../README.md#Alpha158-dataset)
- `workflow_config_gru2mlp.yaml` to demonstrate we can convert config from time-series to tabular data with minimal changes
- You only have to change the net & dataset class to make the conversion.
- `workflow_config_mlp.yaml` achieved similar functionality with [MLP](../README.md#Alpha158-dataset)
# TODO
- We will align existing models to current design.
- The result of `workflow_config_mlp.yaml` is different with the result of [MLP](../README.md#Alpha158-dataset) since GeneralPtNN has a different stopping method compared to previous implementations. Specificly, GeneralPtNN controls training according to epoches, whereas previous methods controlled by max_steps.

View File

@@ -0,0 +1,100 @@
qlib_init:
provider_uri: "~/.qlib/qlib_data/cn_data"
region: cn
market: &market csi300
benchmark: &benchmark SH000300
data_handler_config: &data_handler_config
start_time: 2008-01-01
end_time: 2020-08-01
fit_start_time: 2008-01-01
fit_end_time: 2014-12-31
instruments: *market
infer_processors:
- class: FilterCol
kwargs:
fields_group: feature
col_list: ["RESI5", "WVMA5", "RSQR5", "KLEN", "RSQR10", "CORR5", "CORD5", "CORR10",
"ROC60", "RESI10", "VSTD5", "RSQR60", "CORR60", "WVMA60", "STD5",
"RSQR20", "CORD60", "CORD10", "CORR20", "KLOW"
]
- class: RobustZScoreNorm
kwargs:
fields_group: feature
clip_outlier: true
- class: Fillna
kwargs:
fields_group: feature
learn_processors:
- class: DropnaLabel
- class: CSRankNorm
kwargs:
fields_group: label
label: ["Ref($close, -2) / Ref($close, -1) - 1"]
port_analysis_config: &port_analysis_config
strategy:
class: TopkDropoutStrategy
module_path: qlib.contrib.strategy
kwargs:
signal: <PRED>
topk: 50
n_drop: 5
backtest:
start_time: 2017-01-01
end_time: 2020-08-01
account: 100000000
benchmark: *benchmark
exchange_kwargs:
limit_threshold: 0.095
deal_price: close
open_cost: 0.0005
close_cost: 0.0015
min_cost: 5
task:
model:
class: GeneralPTNN
module_path: qlib.contrib.model.pytorch_general_nn
kwargs:
n_epochs: 200
lr: 2e-4
early_stop: 10
batch_size: 800
metric: loss
loss: mse
n_jobs: 20
GPU: 0
pt_model_uri: "qlib.contrib.model.pytorch_gru_ts.GRUModel"
pt_model_kwargs: {
"d_feat": 20,
"hidden_size": 64,
"num_layers": 2,
"dropout": 0.,
}
dataset:
class: TSDatasetH
module_path: qlib.data.dataset
kwargs:
handler:
class: Alpha158
module_path: qlib.contrib.data.handler
kwargs: *data_handler_config
segments:
train: [2008-01-01, 2014-12-31]
valid: [2015-01-01, 2016-12-31]
test: [2017-01-01, 2020-08-01]
step_len: 20
record:
- class: SignalRecord
module_path: qlib.workflow.record_temp
kwargs:
model: <MODEL>
dataset: <DATASET>
- class: SigAnaRecord
module_path: qlib.workflow.record_temp
kwargs:
ana_long_short: False
ann_scaler: 252
- class: PortAnaRecord
module_path: qlib.workflow.record_temp
kwargs:
config: *port_analysis_config

View File

@@ -0,0 +1,93 @@
qlib_init:
provider_uri: "~/.qlib/qlib_data/cn_data"
region: cn
market: &market csi300
benchmark: &benchmark SH000300
data_handler_config: &data_handler_config
start_time: 2008-01-01
end_time: 2020-08-01
fit_start_time: 2008-01-01
fit_end_time: 2014-12-31
instruments: *market
infer_processors:
- class: FilterCol
kwargs:
fields_group: feature
col_list: ["RESI5", "WVMA5", "RSQR5", "KLEN", "RSQR10", "CORR5", "CORD5", "CORR10",
"ROC60", "RESI10", "VSTD5", "RSQR60", "CORR60", "WVMA60", "STD5",
"RSQR20", "CORD60", "CORD10", "CORR20", "KLOW"
]
- class: RobustZScoreNorm
kwargs:
fields_group: feature
clip_outlier: true
- class: Fillna
kwargs:
fields_group: feature
learn_processors:
- class: DropnaLabel
- class: CSRankNorm
kwargs:
fields_group: label
label: ["Ref($close, -2) / Ref($close, -1) - 1"]
port_analysis_config: &port_analysis_config
strategy:
class: TopkDropoutStrategy
module_path: qlib.contrib.strategy
kwargs:
signal: <PRED>
topk: 50
n_drop: 5
backtest:
start_time: 2017-01-01
end_time: 2020-08-01
account: 100000000
benchmark: *benchmark
exchange_kwargs:
limit_threshold: 0.095
deal_price: close
open_cost: 0.0005
close_cost: 0.0015
min_cost: 5
task:
model:
class: GeneralPTNN
module_path: qlib.contrib.model.pytorch_general_nn
kwargs:
lr: 1e-3
n_epochs: 1
batch_size: 800
loss: mse
optimizer: adam
pt_model_uri: "qlib.contrib.model.pytorch_nn.Net"
pt_model_kwargs:
input_dim: 20
layers: [20,]
dataset:
class: DatasetH
module_path: qlib.data.dataset
kwargs:
handler:
class: Alpha158
module_path: qlib.contrib.data.handler
kwargs: *data_handler_config
segments:
train: [2008-01-01, 2014-12-31]
valid: [2015-01-01, 2016-12-31]
test: [2017-01-01, 2020-08-01]
record:
- class: SignalRecord
module_path: qlib.workflow.record_temp
kwargs:
model: <MODEL>
dataset: <DATASET>
- class: SigAnaRecord
module_path: qlib.workflow.record_temp
kwargs:
ana_long_short: False
ann_scaler: 252
- class: PortAnaRecord
module_path: qlib.workflow.record_temp
kwargs:
config: *port_analysis_config

View File

@@ -0,0 +1,98 @@
qlib_init:
provider_uri: "~/.qlib/qlib_data/cn_data"
region: cn
market: &market csi300
benchmark: &benchmark SH000300
data_handler_config: &data_handler_config
start_time: 2008-01-01
end_time: 2020-08-01
fit_start_time: 2008-01-01
fit_end_time: 2014-12-31
instruments: *market
infer_processors: [
{
"class" : "DropCol",
"kwargs":{"col_list": ["VWAP0"]}
},
{
"class" : "CSZFillna",
"kwargs":{"fields_group": "feature"}
}
]
learn_processors: [
{
"class" : "DropCol",
"kwargs":{"col_list": ["VWAP0"]}
},
{
"class" : "DropnaProcessor",
"kwargs":{"fields_group": "feature"}
},
"DropnaLabel",
{
"class": "CSZScoreNorm",
"kwargs": {"fields_group": "label"}
}
]
process_type: "independent"
port_analysis_config: &port_analysis_config
strategy:
class: TopkDropoutStrategy
module_path: qlib.contrib.strategy
kwargs:
signal: <PRED>
topk: 50
n_drop: 5
backtest:
start_time: 2017-01-01
end_time: 2020-08-01
account: 100000000
benchmark: *benchmark
exchange_kwargs:
limit_threshold: 0.095
deal_price: close
open_cost: 0.0005
close_cost: 0.0015
min_cost: 5
task:
model:
class: GeneralPTNN
module_path: qlib.contrib.model.pytorch_general_nn
kwargs:
# FIXME: wrong parameters.
lr: 2e-3
batch_size: 8192
loss: mse
weight_decay: 0.0002
optimizer: adam
pt_model_uri: "qlib.contrib.model.pytorch_nn.Net"
pt_model_kwargs:
input_dim: 157
dataset:
class: DatasetH
module_path: qlib.data.dataset
kwargs:
handler:
class: Alpha158
module_path: qlib.contrib.data.handler
kwargs: *data_handler_config
segments:
train: [2008-01-01, 2014-12-31]
valid: [2015-01-01, 2016-12-31]
test: [2017-01-01, 2020-08-01]
record:
- class: SignalRecord
module_path: qlib.workflow.record_temp
kwargs:
model: <MODEL>
dataset: <DATASET>
- class: SigAnaRecord
module_path: qlib.workflow.record_temp
kwargs:
ana_long_short: False
ann_scaler: 252
- class: PortAnaRecord
module_path: qlib.workflow.record_temp
kwargs:
config: *port_analysis_config

View File

@@ -28,9 +28,7 @@ port_analysis_config: &port_analysis_config
class: TopkDropoutStrategy
module_path: qlib.contrib.strategy
kwargs:
signal:
- <MODEL>
- <DATASET>
signal: <PRED>
topk: 50
n_drop: 5
backtest:
@@ -89,4 +87,4 @@ task:
- class: PortAnaRecord
module_path: qlib.workflow.record_temp
kwargs:
config: *port_analysis_config
config: *port_analysis_config

View File

@@ -28,8 +28,7 @@ port_analysis_config: &port_analysis_config
class: TopkDropoutStrategy
module_path: qlib.contrib.strategy
kwargs:
model: <MODEL>
dataset: <DATASET>
signal: <PRED>
topk: 50
n_drop: 5
backtest:

View File

@@ -0,0 +1,8 @@
# KRNN
* Code: [https://github.com/microsoft/FOST/blob/main/fostool/model/krnn.py](https://github.com/microsoft/FOST/blob/main/fostool/model/krnn.py)
# Introductions about the settings/configs.
* Torch_geometric is used in the original model in FOST, but we didn't use it.
* make use your CUDA version matches the torch version to allow the usage of GPU, we use CUDA==10.2 and torch.__version__==1.12.1

View File

@@ -0,0 +1,2 @@
numpy==1.23.4
pandas==1.5.2

View File

@@ -0,0 +1,89 @@
qlib_init:
provider_uri: "~/.qlib/qlib_data/cn_data"
region: cn
market: &market csi300
benchmark: &benchmark SH000300
data_handler_config: &data_handler_config
start_time: 2008-01-01
end_time: 2020-08-01
fit_start_time: 2008-01-01
fit_end_time: 2014-12-31
instruments: *market
infer_processors:
- class: RobustZScoreNorm
kwargs:
fields_group: feature
clip_outlier: true
- class: Fillna
kwargs:
fields_group: feature
learn_processors:
- class: DropnaLabel
- class: CSRankNorm
kwargs:
fields_group: label
label: ["Ref($close, -2) / Ref($close, -1) - 1"]
port_analysis_config: &port_analysis_config
strategy:
class: TopkDropoutStrategy
module_path: qlib.contrib.strategy
kwargs:
signal: <PRED>
topk: 50
n_drop: 5
backtest:
start_time: 2017-01-01
end_time: 2020-08-01
account: 100000000
benchmark: *benchmark
exchange_kwargs:
limit_threshold: 0.095
deal_price: close
open_cost: 0.0005
close_cost: 0.0015
min_cost: 5
task:
model:
class: KRNN
module_path: qlib.contrib.model.pytorch_krnn
kwargs:
fea_dim: 6
cnn_dim: 8
cnn_kernel_size: 3
rnn_dim: 8
rnn_dups: 2
rnn_layers: 2
n_epochs: 200
lr: 0.001
early_stop: 20
batch_size: 2000
metric: loss
GPU: 0
dataset:
class: DatasetH
module_path: qlib.data.dataset
kwargs:
handler:
class: Alpha360
module_path: qlib.contrib.data.handler
kwargs: *data_handler_config
segments:
train: [2008-01-01, 2014-12-31]
valid: [2015-01-01, 2016-12-31]
test: [2017-01-01, 2020-08-01]
record:
- class: SignalRecord
module_path: qlib.workflow.record_temp
kwargs:
model: <MODEL>
dataset: <DATASET>
- class: SigAnaRecord
module_path: qlib.workflow.record_temp
kwargs:
ana_long_short: False
ann_scaler: 252
- class: PortAnaRecord
module_path: qlib.workflow.record_temp
kwargs:
config: *port_analysis_config

View File

@@ -36,9 +36,7 @@ port_analysis_config: &port_analysis_config
class: TopkDropoutStrategy
module_path: qlib.contrib.strategy
kwargs:
signal:
- <MODEL>
- <DATASET>
signal: <PRED>
topk: 50
n_drop: 5
backtest:

View File

@@ -28,9 +28,7 @@ port_analysis_config: &port_analysis_config
class: TopkDropoutStrategy
module_path: qlib.contrib.strategy
kwargs:
signal:
- <MODEL>
- <DATASET>
signal: <PRED>
topk: 50
n_drop: 5
backtest:

View File

@@ -48,7 +48,6 @@ class Avg15minHandler(DataHandlerLP):
)
def loader_config(self):
# Results for dataset: df: pd.DataFrame
# len(df.columns) == 6 + 6 * 16, len(df.index.get_level_values(level="datetime").unique()) == T
# df.columns: close0, close1, ..., close16, open0, ..., open16, ..., vwap16

View File

@@ -14,8 +14,7 @@ port_analysis_config: &port_analysis_config
class: TopkDropoutStrategy
module_path: qlib.contrib.strategy
kwargs:
model: <MODEL>
dataset: <DATASET>
signal: <PRED>
topk: 50
n_drop: 5
backtest:

View File

@@ -14,8 +14,7 @@ port_analysis_config: &port_analysis_config
class: TopkDropoutStrategy
module_path: qlib.contrib.strategy
kwargs:
model: <MODEL>
dataset: <DATASET>
signal: <PRED>
topk: 50
n_drop: 5
backtest:

View File

@@ -33,9 +33,7 @@ port_analysis_config: &port_analysis_config
kwargs:
topk: 50
n_drop: 5
signal:
- <MODEL>
- <DATASET>
signal: <PRED>
backtest:
verbose: False
limit_threshold: 0.095

View File

@@ -21,9 +21,7 @@ port_analysis_config: &port_analysis_config
class: TopkDropoutStrategy
module_path: qlib.contrib.strategy
kwargs:
signal:
- <MODEL>
- <DATASET>
signal: <PRED>
topk: 50
n_drop: 5
backtest:

View File

@@ -21,9 +21,7 @@ port_analysis_config: &port_analysis_config
class: TopkDropoutStrategy
module_path: qlib.contrib.strategy
kwargs:
signal:
- <MODEL>
- <DATASET>
signal: <PRED>
topk: 50
n_drop: 5
backtest:

View File

@@ -29,9 +29,7 @@ port_analysis_config: &port_analysis_config
class: TopkDropoutStrategy
module_path: qlib.contrib.strategy
kwargs:
signal:
- <MODEL>
- <DATASET>
signal: <PRED>
topk: 50
n_drop: 5
backtest:

View File

@@ -31,9 +31,7 @@ port_analysis_config: &port_analysis_config
class: TopkDropoutStrategy
module_path: qlib.contrib.strategy
kwargs:
signal:
- <MODEL>
- <DATASET>
signal: <PRED>
topk: 50
n_drop: 5
backtest:

View File

@@ -27,9 +27,7 @@ port_analysis_config: &port_analysis_config
class: TopkDropoutStrategy
module_path: qlib.contrib.strategy
kwargs:
signal:
- <MODEL>
- <DATASET>
signal: <PRED>
topk: 50
n_drop: 5
backtest:

View File

@@ -27,9 +27,7 @@ port_analysis_config: &port_analysis_config
class: TopkDropoutStrategy
module_path: qlib.contrib.strategy
kwargs:
signal:
- <MODEL>
- <DATASET>
signal: <PRED>
topk: 50
n_drop: 5
backtest:

View File

@@ -0,0 +1,78 @@
qlib_init:
provider_uri: "~/.qlib/qlib_data/cn_data"
region: cn
market: &market csi300
benchmark: &benchmark SH000300
data_handler_config: &data_handler_config
start_time: 2008-01-01
end_time: 2020-08-01
fit_start_time: 2008-01-01
fit_end_time: 2014-12-31
instruments: *market
infer_processors:
- class: RobustZScoreNorm
kwargs:
fields_group: feature
clip_outlier: true
- class: Fillna
kwargs:
fields_group: feature
learn_processors:
- class: DropnaLabel
- class: CSRankNorm
kwargs:
fields_group: label
port_analysis_config: &port_analysis_config
strategy:
class: TopkDropoutStrategy
module_path: qlib.contrib.strategy
kwargs:
signal:
- <MODEL>
- <DATASET>
topk: 50
n_drop: 5
backtest:
start_time: 2017-01-01
end_time: 2020-08-01
account: 100000000
benchmark: *benchmark
exchange_kwargs:
limit_threshold: 0.095
deal_price: close
open_cost: 0.0005
close_cost: 0.0015
min_cost: 5
task:
model:
class: LinearModel
module_path: qlib.contrib.model.linear
kwargs:
estimator: ols
dataset:
class: DatasetH
module_path: qlib.data.dataset
kwargs:
handler:
class: Alpha158
module_path: qlib.contrib.data.handler
kwargs: *data_handler_config
segments:
train: [2008-01-01, 2014-12-31]
valid: [2015-01-01, 2016-12-31]
test: [2017-01-01, 2020-08-01]
record:
- class: SignalRecord
module_path: qlib.workflow.record_temp
kwargs:
model: <MODEL>
dataset: <DATASET>
- class: SigAnaRecord
module_path: qlib.workflow.record_temp
kwargs:
ana_long_short: True
ann_scaler: 252
- class: MultiPassPortAnaRecord
module_path: qlib.workflow.record_temp
kwargs:
config: *port_analysis_config

View File

@@ -36,9 +36,7 @@ port_analysis_config: &port_analysis_config
class: TopkDropoutStrategy
module_path: qlib.contrib.strategy
kwargs:
signal:
- <MODEL>
- <DATASET>
signal: <PRED>
topk: 50
n_drop: 5
backtest:

View File

@@ -28,9 +28,7 @@ port_analysis_config: &port_analysis_config
class: TopkDropoutStrategy
module_path: qlib.contrib.strategy
kwargs:
signal:
- <MODEL>
- <DATASET>
signal: <PRED>
topk: 50
n_drop: 5
backtest:

View File

@@ -41,9 +41,7 @@ port_analysis_config: &port_analysis_config
class: TopkDropoutStrategy
module_path: qlib.contrib.strategy
kwargs:
signal:
- <MODEL>
- <DATASET>
signal: <PRED>
topk: 50
n_drop: 5
backtest:

View File

@@ -41,9 +41,7 @@ port_analysis_config: &port_analysis_config
class: TopkDropoutStrategy
module_path: qlib.contrib.strategy
kwargs:
signal:
- <MODEL>
- <DATASET>
signal: <PRED>
topk: 50
n_drop: 5
backtest:

View File

@@ -29,9 +29,7 @@ port_analysis_config: &port_analysis_config
class: TopkDropoutStrategy
module_path: qlib.contrib.strategy
kwargs:
signal:
- <MODEL>
- <DATASET>
signal: <PRED>
topk: 50
n_drop: 5
backtest:

View File

@@ -29,9 +29,7 @@ port_analysis_config: &port_analysis_config
class: TopkDropoutStrategy
module_path: qlib.contrib.strategy
kwargs:
signal:
- <MODEL>
- <DATASET>
signal: <PRED>
topk: 50
n_drop: 5
backtest:

View File

@@ -26,7 +26,7 @@ The numbers shown below demonstrate the performance of the entire `workflow` of
| Model Name | Dataset | IC | ICIR | Rank IC | Rank ICIR | Annualized Return | Information Ratio | Max Drawdown |
|------------------------------------------|-------------------------------------|-------------|-------------|-------------|-------------|-------------------|-------------------|--------------|
| TCN(Shaojie Bai, et al.) | Alpha158 | 0.0275±0.00 | 0.2157±0.01 | 0.0411±0.00 | 0.3379±0.01 | 0.0190±0.02 | 0.2887±0.27 | -0.1202±0.03 |
| TCN(Shaojie Bai, et al.) | Alpha158 | 0.0279±0.00 | 0.2181±0.01 | 0.0421±0.00 | 0.3429±0.01 | 0.0262±0.02 | 0.4133±0.25 | -0.1090±0.03 |
| TabNet(Sercan O. Arik, et al.) | Alpha158 | 0.0204±0.01 | 0.1554±0.07 | 0.0333±0.00 | 0.2552±0.05 | 0.0227±0.04 | 0.3676±0.54 | -0.1089±0.08 |
| Transformer(Ashish Vaswani, et al.) | Alpha158 | 0.0264±0.00 | 0.2053±0.02 | 0.0407±0.00 | 0.3273±0.02 | 0.0273±0.02 | 0.3970±0.26 | -0.1101±0.02 |
| GRU(Kyunghyun Cho, et al.) | Alpha158(with selected 20 features) | 0.0315±0.00 | 0.2450±0.04 | 0.0428±0.00 | 0.3440±0.03 | 0.0344±0.02 | 0.5160±0.25 | -0.1017±0.02 |
@@ -68,6 +68,8 @@ The numbers shown below demonstrate the performance of the entire `workflow` of
| TRA(Hengxu Lin, et al.) | Alpha360 | 0.0485±0.00 | 0.3787±0.03 | 0.0587±0.00 | 0.4756±0.03 | 0.0920±0.03 | 1.2789±0.42 | -0.0834±0.02 |
| IGMTF(Wentao Xu, et al.) | Alpha360 | 0.0480±0.00 | 0.3589±0.02 | 0.0606±0.00 | 0.4773±0.01 | 0.0946±0.02 | 1.3509±0.25 | -0.0716±0.02 |
| HIST(Wentao Xu, et al.) | Alpha360 | 0.0522±0.00 | 0.3530±0.01 | 0.0667±0.00 | 0.4576±0.01 | 0.0987±0.02 | 1.3726±0.27 | -0.0681±0.01 |
| KRNN | Alpha360 | 0.0173±0.01 | 0.1210±0.06 | 0.0270±0.01 | 0.2018±0.04 | -0.0465±0.05 | -0.5415±0.62 | -0.2919±0.13 |
| Sandwich | Alpha360 | 0.0258±0.00 | 0.1924±0.04 | 0.0337±0.00 | 0.2624±0.03 | 0.0005±0.03 | 0.0001±0.33 | -0.1752±0.05 |
- The selected 20 features are based on the feature importance of a lightgbm-based model.
@@ -134,7 +136,7 @@ If you want to contribute your new models, you can follow the steps below.
- `README.md`: a brief introduction to your models
- `workflow_config_<model name>_<dataset>.yaml`: a configuration which can read by `qrun`. You are encouraged to run your model in all datasets.
3. You can integrate your model as a module [in this folder](https://github.com/microsoft/qlib/tree/main/qlib/contrib/model).
4. Please updated your results in the benchmark tables, e.g. [Alpha360](#alpha158-dataset), [Alpha158](#alpha158-dataset)(the values of each metric are the mean and std calculated based on 20 runs with different random seeds, if you don't have enough computational resource, you can ask for help in the PR).
4. Please update your results in the above **Benchmark Tables**, e.g. [Alpha360](#alpha158-dataset), [Alpha158](#alpha158-dataset)(the values of each metric are the mean and std calculated based on **20 Runs** with different random seeds. You can accomplish the above operations through the automated [script](https://github.com/microsoft/qlib/blob/main/examples/run_all_model.py) provided by Qlib, and get the final result in the .md file. if you don't have enough computational resource, you can ask for help in the PR).
5. Update the info in the index page in the [news list](https://github.com/microsoft/qlib#newspaper-whats-new----sparkling_heart) and [model list](https://github.com/microsoft/qlib#quant-model-paper-zoo).
Finally, you can send PR for review. ([here is an example](https://github.com/microsoft/qlib/pull/1040))

View File

@@ -28,9 +28,7 @@ port_analysis_config: &port_analysis_config
class: TopkDropoutStrategy
module_path: qlib.contrib.strategy
kwargs:
signal:
- <MODEL>
- <DATASET>
signal: <PRED>
topk: 50
n_drop: 5
backtest:

View File

@@ -0,0 +1,8 @@
# Sandwich
* Code: [https://github.com/microsoft/FOST/blob/main/fostool/model/sandwich.py](https://github.com/microsoft/FOST/blob/main/fostool/model/sandwich.py)
# Introductions about the settings/configs.
* Torch_geometric is used in the original model in FOST, but we didn't use it.
make use your CUDA version matches the torch version to allow the usage of GPU, we use CUDA==10.2 and torch.version==1.12.1

View File

@@ -0,0 +1,2 @@
numpy==1.23.4
pandas==1.5.2

View File

@@ -0,0 +1,91 @@
qlib_init:
provider_uri: "~/.qlib/qlib_data/cn_data"
region: cn
market: &market csi300
benchmark: &benchmark SH000300
data_handler_config: &data_handler_config
start_time: 2008-01-01
end_time: 2020-08-01
fit_start_time: 2008-01-01
fit_end_time: 2014-12-31
instruments: *market
infer_processors:
- class: RobustZScoreNorm
kwargs:
fields_group: feature
clip_outlier: true
- class: Fillna
kwargs:
fields_group: feature
learn_processors:
- class: DropnaLabel
- class: CSRankNorm
kwargs:
fields_group: label
label: ["Ref($close, -2) / Ref($close, -1) - 1"]
port_analysis_config: &port_analysis_config
strategy:
class: TopkDropoutStrategy
module_path: qlib.contrib.strategy
kwargs:
signal: <PRED>
topk: 50
n_drop: 5
backtest:
start_time: 2017-01-01
end_time: 2020-08-01
account: 100000000
benchmark: *benchmark
exchange_kwargs:
limit_threshold: 0.095
deal_price: close
open_cost: 0.0005
close_cost: 0.0015
min_cost: 5
task:
model:
class: Sandwich
module_path: qlib.contrib.model.pytorch_sandwich
kwargs:
fea_dim: 6
cnn_dim_1: 16
cnn_dim_2: 16
cnn_kernel_size: 3
rnn_dim_1: 8
rnn_dim_2: 8
rnn_dups: 2
rnn_layers: 2
n_epochs: 200
lr: 0.001
early_stop: 20
batch_size: 2000
metric: loss
GPU: 0
dataset:
class: DatasetH
module_path: qlib.data.dataset
kwargs:
handler:
class: Alpha360
module_path: qlib.contrib.data.handler
kwargs: *data_handler_config
segments:
train: [2008-01-01, 2014-12-31]
valid: [2015-01-01, 2016-12-31]
test: [2017-01-01, 2020-08-01]
record:
- class: SignalRecord
module_path: qlib.workflow.record_temp
kwargs:
model: <MODEL>
dataset: <DATASET>
- class: SigAnaRecord
module_path: qlib.workflow.record_temp
kwargs:
ana_long_short: False
ann_scaler: 252
- class: PortAnaRecord
module_path: qlib.workflow.record_temp
kwargs:
config: *port_analysis_config

View File

@@ -36,8 +36,7 @@ port_analysis_config: &port_analysis_config
class: TopkDropoutStrategy
module_path: qlib.contrib.strategy
kwargs:
model: <MODEL>
dataset: <DATASET>
signal: <PRED>
topk: 50
n_drop: 5
backtest:

View File

@@ -28,8 +28,7 @@ port_analysis_config: &port_analysis_config
class: TopkDropoutStrategy
module_path: qlib.contrib.strategy
kwargs:
model: <MODEL>
dataset: <DATASET>
signal: <PRED>
topk: 50
n_drop: 5
backtest:

View File

@@ -30,9 +30,7 @@ port_analysis_config: &port_analysis_config
class: TopkDropoutStrategy
module_path: qlib.contrib.strategy
kwargs:
signal:
- <MODEL>
- <DATASET>
signal: <PRED>
topk: 50
n_drop: 5
backtest:
@@ -95,4 +93,4 @@ task:
- class: PortAnaRecord
module_path: qlib.workflow.record_temp
kwargs:
config: *port_analysis_config
config: *port_analysis_config

View File

@@ -139,7 +139,6 @@ class GenericDataFormatter(abc.ABC):
# Sanity checks first.
# Ensure only one ID and time column exist
def _check_single_column(input_type):
length = len([tup for tup in column_definition if tup[2] == input_type])
if length != 1:

View File

@@ -78,7 +78,6 @@ class ExperimentConfig:
@property
def hyperparam_iterations(self):
return 240 if self.experiment == "volatility" else 60
def make_data_formatter(self):

View File

@@ -88,7 +88,6 @@ class HyperparamOptManager:
params_file = os.path.join(self.hyperparam_folder, "params.csv")
if os.path.exists(results_file) and os.path.exists(params_file):
self.results = pd.read_csv(results_file, index_col=0)
self.saved_params = pd.read_csv(params_file, index_col=0)
@@ -178,7 +177,6 @@ class HyperparamOptManager:
return parameters
for _ in range(self._max_tries):
parameters = _get_next()
name = self._get_name(parameters)

View File

@@ -475,7 +475,6 @@ class TemporalFusionTransformer:
embeddings = []
for i in range(num_categorical_variables):
embedding = tf.keras.Sequential(
[
tf.keras.layers.InputLayer([time_steps]),
@@ -600,7 +599,7 @@ class TemporalFusionTransformer:
print("Getting valid sampling locations.")
valid_sampling_locations = []
split_data_map = {}
for identifier, df in data.groupby(id_col):
for identifier, df in data.groupby(id_col, group_key=False):
print("Getting locations for {}".format(identifier))
num_entries = len(df)
if num_entries >= self.time_steps:
@@ -679,8 +678,7 @@ class TemporalFusionTransformer:
input_cols = [tup[0] for tup in self.column_definition if tup[2] not in {InputTypes.ID, InputTypes.TIME}]
data_map = {}
for _, sliced in data.groupby(id_col):
for _, sliced in data.groupby(id_col, group_keys=False):
col_mappings = {"identifier": [id_col], "time": [time_col], "outputs": [target_col], "inputs": input_cols}
for k in col_mappings:
@@ -954,7 +952,6 @@ class TemporalFusionTransformer:
"""
with tf.variable_scope(self.name):
transformer_layer, all_inputs, attention_components = self._build_base_graph()
outputs = tf.keras.layers.TimeDistributed(tf.keras.layers.Dense(self.output_size * len(self.quantiles)))(

View File

@@ -78,13 +78,15 @@ DATASET_SETTING = {
def get_shifted_label(data_df, shifts=5, col_shift="LABEL0"):
return data_df[[col_shift]].groupby("instrument").apply(lambda df: df.shift(shifts))
return data_df[[col_shift]].groupby("instrument", group_keys=False).apply(lambda df: df.shift(shifts))
def fill_test_na(test_df):
test_df_res = test_df.copy()
feature_cols = ~test_df_res.columns.str.contains("label", case=False)
test_feature_fna = test_df_res.loc[:, feature_cols].groupby("datetime").apply(lambda df: df.fillna(df.mean()))
test_feature_fna = (
test_df_res.loc[:, feature_cols].groupby("datetime", group_keys=False).apply(lambda df: df.fillna(df.mean()))
)
test_df_res.loc[:, feature_cols] = test_feature_fna
return test_df_res

View File

@@ -16,9 +16,7 @@ port_analysis_config: &port_analysis_config
class: TopkDropoutStrategy
module_path: qlib.contrib.strategy
kwargs:
signal:
- <MODEL>
- <DATASET>
signal: <PRED>
topk: 50
n_drop: 5
backtest:

View File

@@ -1,15 +1,15 @@
import argparse
import qlib
import ruamel.yaml as yaml
from ruamel.yaml import YAML
from qlib.utils import init_instance_by_config
def main(seed, config_file="configs/config_alstm.yaml"):
# set random seed
with open(config_file) as f:
config = yaml.safe_load(f)
yaml = YAML(typ="safe", pure=True)
config = yaml.load(f)
# seed_suffix = "/seed1000" if "init" in config_file else f"/seed{seed}"
seed_suffix = ""
@@ -30,7 +30,6 @@ def main(seed, config_file="configs/config_alstm.yaml"):
if __name__ == "__main__":
# set params from cmd
parser = argparse.ArgumentParser(allow_abbrev=False)
parser.add_argument("--seed", type=int, default=1000, help="random seed")

View File

@@ -29,7 +29,7 @@ def _create_ts_slices(index, seq_len):
assert index.is_lexsorted(), "index should be sorted"
# number of dates for each code
sample_count_by_codes = pd.Series(0, index=index).groupby(level=0).size().values
sample_count_by_codes = pd.Series(0, index=index).groupby(level=0, group_keys=False).size().values
# start_index for each code
start_index_of_codes = np.roll(np.cumsum(sample_count_by_codes), 1)
@@ -96,7 +96,6 @@ class MTSDatasetH(DatasetH):
drop_last=False,
**kwargs,
):
assert horizon > 0, "please specify `horizon` to avoid data leakage"
self.seq_len = seq_len
@@ -111,7 +110,6 @@ class MTSDatasetH(DatasetH):
super().__init__(handler, segments, **kwargs)
def setup_data(self, handler_kwargs: dict = None, **kwargs):
super().setup_data()
# change index to <code, date>

View File

@@ -45,7 +45,6 @@ class TRAModel(Model):
avg_params=True,
**kwargs,
):
np.random.seed(seed)
torch.manual_seed(seed)
@@ -93,7 +92,6 @@ class TRAModel(Model):
self.global_step = -1
def train_epoch(self, data_set):
self.model.train()
self.tra.train()
@@ -146,7 +144,6 @@ class TRAModel(Model):
return total_loss
def test_epoch(self, data_set, return_pred=False):
self.model.eval()
self.tra.eval()
data_set.eval()
@@ -204,7 +201,6 @@ class TRAModel(Model):
return metrics, preds
def fit(self, dataset, evals_result=dict()):
train_set, valid_set, test_set = dataset.prepare(["train", "valid", "test"])
best_score = -1
@@ -328,7 +324,6 @@ class TRAModel(Model):
class LSTM(nn.Module):
"""LSTM Model
Args:
@@ -380,7 +375,6 @@ class LSTM(nn.Module):
self.output_size = hidden_size
def forward(self, x):
x = self.input_drop(x)
if self.training and self.noise_level > 0:
@@ -419,7 +413,6 @@ class PositionalEncoding(nn.Module):
class Transformer(nn.Module):
"""Transformer Model
Args:
@@ -464,7 +457,6 @@ class Transformer(nn.Module):
self.output_size = hidden_size
def forward(self, x):
x = self.input_drop(x)
if self.training and self.noise_level > 0:
@@ -481,7 +473,6 @@ class Transformer(nn.Module):
class TRA(nn.Module):
"""Temporal Routing Adaptor (TRA)
TRA takes historical prediction errors & latent representation as inputs,
@@ -514,7 +505,6 @@ class TRA(nn.Module):
self.predictors = nn.Linear(input_size, num_states)
def forward(self, hidden, hist_loss):
preds = self.predictors(hidden)
if self.num_states == 1:

View File

@@ -57,9 +57,7 @@ port_analysis_config: &port_analysis_config
class: TopkDropoutStrategy
module_path: qlib.contrib.strategy
kwargs:
signal:
- <MODEL>
- <DATASET>
signal: <PRED>
topk: 50
n_drop: 5
backtest:
@@ -112,7 +110,6 @@ task:
valid: [2015-01-01, 2016-12-31]
test: [2017-01-01, 2020-08-01]
seq_len: 60
horizon: 2
input_size:
num_states: *num_states
batch_size: 1024

View File

@@ -51,9 +51,7 @@ port_analysis_config: &port_analysis_config
class: TopkDropoutStrategy
module_path: qlib.contrib.strategy
kwargs:
signal:
- <MODEL>
- <DATASET>
signal: <PRED>
topk: 50
n_drop: 5
backtest:
@@ -106,7 +104,6 @@ task:
valid: [2015-01-01, 2016-12-31]
test: [2017-01-01, 2020-08-01]
seq_len: 60
horizon: 2
input_size:
num_states: *num_states
batch_size: 1024

View File

@@ -51,9 +51,7 @@ port_analysis_config: &port_analysis_config
class: TopkDropoutStrategy
module_path: qlib.contrib.strategy
kwargs:
signal:
- <MODEL>
- <DATASET>
signal: <PRED>
topk: 50
n_drop: 5
backtest:
@@ -106,7 +104,6 @@ task:
valid: [2015-01-01, 2016-12-31]
test: [2017-01-01, 2020-08-01]
seq_len: 60
horizon: 2
input_size: 6
num_states: *num_states
batch_size: 1024

View File

@@ -28,9 +28,7 @@ port_analysis_config: &port_analysis_config
class: TopkDropoutStrategy
module_path: qlib.contrib.strategy
kwargs:
signal:
- <MODEL>
- <DATASET>
signal: <PRED>
topk: 50
n_drop: 5
backtest:

View File

@@ -28,9 +28,7 @@ port_analysis_config: &port_analysis_config
class: TopkDropoutStrategy
module_path: qlib.contrib.strategy
kwargs:
signal:
- <MODEL>
- <DATASET>
signal: <PRED>
topk: 50
n_drop: 5
backtest:

View File

@@ -36,9 +36,7 @@ port_analysis_config: &port_analysis_config
class: TopkDropoutStrategy
module_path: qlib.contrib.strategy
kwargs:
signal:
- <MODEL>
- <DATASET>
signal: <PRED>
topk: 50
n_drop: 5
backtest:

View File

@@ -28,9 +28,7 @@ port_analysis_config: &port_analysis_config
class: TopkDropoutStrategy
module_path: qlib.contrib.strategy
kwargs:
signal:
- <MODEL>
- <DATASET>
signal: <PRED>
topk: 50
n_drop: 5
backtest:

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