A full pipeline AutoML tool for tabular data
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Updated
Apr 16, 2025 - Python
A full pipeline AutoML tool for tabular data
A tiny framework to perform adversarial validation of your training and test data.
Use patient health data from MIT's GOSSIS(Global Open Source Severity of Illness Score) to do an experiment, in which we want to evaluate the question of which modeling strategy leads to the most effective predictions.
Distributed Collection, Local Intelligence - Stop LLMs from hallucinating with Kong in the Loop architecture
Train CatBoost & XGBoost on 59K data to predict the probability that an online transaction is fraudulent
Builds a fraud detection system on IEEE-CIS data that explicitly models temporal distribution shift by training adversarial validators to detect when the production distribution diverges from training data, then dynamically reweights ensemble members (LightGBM, CatBoost, XGBoost) based on their robustness to detected drift regimes.
CCCE: Adversarial Validation Framework for Quantum Circuit Optimization
Code for article https://ilias-ant.github.io/blog/adversarial-validation/.
Turn LLM priors into scientific rigor. Zero-drift multi-agent framework for reproducible research code.
Grounded answers, control mapping, and audit-ready exports from bounded source material.
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