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qlib/docs/start/integration.rst
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=========================================
Custom Model Integration
=========================================
Introduction
===================
``Qlib`` provides ``lightGBM`` and ``Dnn`` model as the baseline of ``Interday Model``. In addition to the default model, users can integrate their own custom models into ``Qlib``.
Users can integrate their own custom models according to the following steps.
- Define a custom model class, which should be a subclass of the `qlib.contrib.model.base.Model <../reference/api.html#module-qlib.contrib.model.base>`_.
- Write a configuration file that describes the path and parameters of the custom model.
- Test the custom model.
Custom Model Class
===========================
The Custom models need to inherit `qlib.contrib.model.base.Model <../reference/api.html#module-qlib.contrib.model.base>`_ and override the methods in it.
- Override the `__init__` method
- ``Qlib`` passes the initialized parameters to the \_\_init\_\_ method.
- The parameter must be consistent with the hyperparameters in the configuration file.
- Code Example: In the following example, the hyperparameter filed of the configuration file should contain parameters such as `loss:mse`.
.. code-block:: Python
def __init__(self, loss='mse', **kwargs):
if loss not in {'mse', 'binary'}:
raise NotImplementedError
self._scorer = mean_squared_error if loss == 'mse' else roc_auc_score
self._params.update(objective=loss, **kwargs)
self._model = None
- Override the `fit` method
- ``Qlib`` calls the fit method to train the model
- The parameters must include training feature `x_train`, training label `y_train`, test feature `x_valid`, test label `y_valid` at least.
- The parameters could include some optional parameters with default values, such as train weight `w_train`, test weight `w_valid` and `num_boost_round = 1000`.
- Code Example: In the following example, `num_boost_round = 1000` is an optional parameter.
.. code-block:: Python
def fit(self, x_train:pd.DataFrame, y_train:pd.DataFrame, x_valid:pd.DataFrame, y_valid:pd.DataFrame,
w_train:pd.DataFrame = None, w_valid:pd.DataFrame = None, num_boost_round = 1000, **kwargs):
# Lightgbm need 1D array as its label
if y_train.values.ndim == 2 and y_train.values.shape[1] == 1:
y_train_1d, y_valid_1d = np.squeeze(y_train.values), np.squeeze(y_valid.values)
else:
raise ValueError('LightGBM doesn\'t support multi-label training')
w_train_weight = None if w_train is None else w_train.values
w_valid_weight = None if w_valid is None else w_valid.values
dtrain = lgb.Dataset(x_train.values, label=y_train_1d, weight=w_train_weight)
dvalid = lgb.Dataset(x_valid.values, label=y_valid_1d, weight=w_valid_weight)
self._model = lgb.train(
self._params,
dtrain,
num_boost_round=num_boost_round,
valid_sets=[dtrain, dvalid],
valid_names=['train', 'valid'],
**kwargs
)
- Override the `predict` method
- The parameters include the test features.
- Return the `prediction score`.
- Please refer to `Model API <../reference/api.html#module-qlib.contrib.model.base>`_ for the parameter types of the fit method.
- Code Example: In the following example, users need to use dnn to predict the label(such as `preds`) of test data `x_test` and return it.
.. code-block:: Python
def predict(self, x_test:pd.DataFrame, **kwargs)-> numpy.ndarray:
if self._model is None:
raise ValueError('model is not fitted yet!')
return self._model.predict(x_test.values)
- Override the `save` method & `load` method
- The `save` method parameter includes the a `filename` that represents an absolute path, user need to save model into the path.
- The `load` method parameter includes the a `buffer` read from the `filename` passed in the `save` method, users need to load model from the `buffer`.
- Code Example:
.. code-block:: Python
def save(self, filename):
if self._model is None:
raise ValueError('model is not fitted yet!')
self._model.save_model(filename)
def load(self, buffer):
self._model = lgb.Booster(params={'model_str': buffer.decode('utf-8')})
.. Without tuner, this part will not be used
.. - Override the `score` method(This step is optional)
.. - The parameters include the test features and test labels.
.. - Return the evaluation score of the model. It's recommended to adopt the loss between labels and `prediction score`.
.. - Code Example: In the following example, users need to calculate the weighted loss with test data `x_test`, test label `y_test` and the weight `w_test`.
.. .. code-block:: Python
..
.. def score(self, x_test:pd.Dataframe, y_test:pd.Dataframe, w_test:pd.DataFrame = None) -> float:
.. # Remove rows from x, y and w, which contain Nan in any columns in y_test.
.. x_test, y_test, w_test = drop_nan_by_y_index(x_test, y_test, w_test)
.. preds = self.predict(x_test)
.. w_test_weight = None if w_test is None else w_test.values
.. scorer = mean_squared_error if self.loss_type == 'mse' else roc_auc_score
.. return scorer(y_test.values, preds, sample_weight=w_test_weight)
Configuration File
=======================
The configuration file is described in detail in the `estimator <../component/estimator.html#complete-example>`_ document. In order to integrate the custom model into ``Qlib``, users need to modify the "model" field in the configuration file.
- Example: The following example describes the `model` field of configuration file about the custom lightgbm model mentioned above, where `module_path` is the module path, `class` is the class name, and `args` is the hyperparameter passed into the __init__ method. All parameters in the field is passed to `self._params` by `\*\*kwargs` in `__init__` except `loss = mse`.
.. code-block:: YAML
model:
class: LGBModel
module_path: qlib.contrib.model.gbdt
args:
loss: mse
colsample_bytree: 0.8879
learning_rate: 0.0421
subsample: 0.8789
lambda_l1: 205.6999
lambda_l2: 580.9768
max_depth: 8
num_leaves: 210
num_threads: 20
Users could find configuration file of the baseline of the ``Model`` in ``qlib/examples/estimator/estimator_config.yaml`` and ``qlib/examples/estimator/estimator_config_dnn.yaml``
Model Testing
=====================
Assuming that the configuration file is ``examples/estimator/estimator_config.yaml``, users can run the following command to test the custom model:
.. code-block:: bash
cd examples # Avoid running program under the directory contains `qlib`
estimator -c estimator/estimator_config.yaml
.. note:: ``estimator`` is a built-in command of ``Qlib``.
Also, ``Model`` can also be tested as a single module. An example has been given in ``examples/train_backtest_analyze.ipynb``.
Reference
=====================
To know more about ``Interday Model``, please refer to `Interday Model: Model Training & Prediction <../component/model.html>`_ and `Model API <../reference/api.html#module-qlib.contrib.model.base>`_.