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Sybil Attack Address Detection Demo Pipeline

Description

This is a machine learning demo example, convenient for beginners to learn and compete

Specific steps

  • Clone this repo. Install the dependencies from the requirements.txt file. If there are any other missing dependencies, please install them yourself.
  • Create the following folders
    • ./data/
    • ./saved_model/
    • ./data/raw_data/
    • ./data/features/
  • Place all the data files for the competition in the ./data/raw_data/ directory, included:
    • train_dataset.parquet
    • test_dataset.parquet
    • transactions.parquet
    • token_transfers.parquet
    • dex_swaps.parquet
  • Run python feature_process.py to generate the feature file at ./data/features/transactions_feature.parquet.
  • Run python train.py to train and save model.
  • Run python inference.py to generate test dataset prediction result as pred.csv.
  • Submit the pred.csv file to the website to view the accuracy of the test set.