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improve migration doc
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@ -736,7 +736,7 @@ If you have created your own custom `IFreqaiModel` with a custom `train()`/`pred
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The conversion involves first removing `data_cleaning_train/predict()` and replacing them with a `define_data_pipeline()` and `define_label_pipeline()` function to your `IFreqaiModel` class:
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```python linenums="1" hl_lines="10-13 41-42 48-49"
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```python linenums="1" hl_lines="11-14 43-44 51-52"
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class MyCoolFreqaiModel(BaseRegressionModel):
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"""
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Some cool custom IFreqaiModel you made before Freqtrade version 2023.6
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@ -751,6 +751,7 @@ class MyCoolFreqaiModel(BaseRegressionModel):
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# data_dictionary = dk.make_train_test_datasets(features_filtered, labels_filtered)
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# self.data_cleaning_train(dk)
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# data_dictionary = dk.normalize_data(data_dictionary)
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# (1)
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# Add these lines. Now we control the pipeline fit/transform ourselves
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dd = dk.make_train_test_datasets(features_filtered, labels_filtered)
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@ -780,6 +781,7 @@ class MyCoolFreqaiModel(BaseRegressionModel):
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# Remove these lines:
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# self.data_cleaning_predict(dk)
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# (2)
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# Add these lines:
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dk.data_dictionary["prediction_features"], outliers, _ = dk.feature_pipeline.transform(
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@ -787,6 +789,7 @@ class MyCoolFreqaiModel(BaseRegressionModel):
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# Remove this line
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# pred_df = dk.denormalize_labels_from_metadata(pred_df)
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# (3)
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# Replace with these lines
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pred_df, _, _ = dk.label_pipeline.inverse_transform(pred_df)
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@ -798,7 +801,6 @@ class MyCoolFreqaiModel(BaseRegressionModel):
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```
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1. Features - Move to `feature_engineering_expand_all`
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2. Basic features, not expanded across `include_periods_candles` - move to`feature_engineering_expand_basic()`.
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3. Standard features which should not be expanded - move to `feature_engineering_standard()`.
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4. Targets - Move this part to `set_freqai_targets()`.
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1. Data normalization and cleaning is now homogenized with the new pipeline definition. This is created in the new `define_data_pipeline()` and `define_label_pipeline()` functions. The `data_cleaning_train()` and `data_cleaning_predict()` functions are no longer used. You can override `define_data_pipeline()` to create your own custom pipeline if you wish.
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2. Data normalization and cleaning is now homogenized with the new pipeline definition. This is created in the new `define_data_pipeline()` and `define_label_pipeline()` functions. The `data_cleaning_train()` and `data_cleaning_predict()` functions are no longer used. You can override `define_data_pipeline()` to create your own custom pipeline if you wish.
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3. Data denormalization is done with the new pipeline. Replace this with the lines below.
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