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import pandas as pd |
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import numpy as np |
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import pyarrow as pa |
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import pyarrow.parquet as pq |
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import h2o |
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from h2o.automl import H2OAutoML |
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from h2o.frame import H2OFrame |
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import pickle |
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import os |
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import matplotlib.pyplot as plt |
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target = "MK14" |
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h2o.init() |
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data_train = pq.read_table("intermediate_data/data_train_joined.parquet").to_pandas() |
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data_test = pq.read_table("intermediate_data/data_test_joined.parquet").to_pandas() |
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data_train = data_train[data_train["Target Name"] == target] |
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data_test = data_test[data_test["Target Name"] == target] |
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target_column = " RMSD_Energy" |
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start_idx = list(data_train.columns).index("LF_score") |
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feature_columns = data_train.columns[start_idx:].tolist() |
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feature_columns = [col for col in feature_columns if col != " RMSD_Energy"] |
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train_h2o = H2OFrame(data_train) |
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test_h2o = H2OFrame(data_test) |
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aml = H2OAutoML(max_models=1, seed=42) |
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aml.train(x=feature_columns, y=target_column, training_frame=train_h2o) |
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top_model = aml.leader |
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model_path = h2o.save_model(top_model, path = f"intermediate_data/top_model{target}", force=True) |
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for dataset_name, dataset_h2o, dataset_df in [ |
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("train", train_h2o, data_train), |
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("test", test_h2o, data_test), |
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]: |
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predictions = aml.leader.predict(dataset_h2o).as_data_frame() |
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dataset_df["predictions"] = predictions["predict"] |
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output_path = f"intermediate_data/data_{dataset_name}_{target}_pred.parquet" |
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pq.write_table(pa.Table.from_pandas(dataset_df), output_path) |
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test_h2o_no_smiles = test_h2o.drop("SMILES") |
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top_model.explain(test_h2o_no_smiles) |
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plt.savefig( |
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f"product/model_summary_{target}_{parameters["date_code"]}.pdf", |
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format = "pdf", bbox_inches = "tight") |
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h2o.shutdown(prompt=False) |
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print(f"Completed training and predictions for {target}") |
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