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
This is the Docker container based on open source framework XGBoost (https://xgboost.readthedocs.io/en/latest/) to allow customers use their own XGBoost scripts in SageMaker.
A Python package which implements several boosting algorithms with different combinations of base learners, optimization algorithms, and loss functions.
A Machine Learning Approach to Forecasting Remotely Sensed Vegetation Health in Python
Predicting stock prices using Geometric Brownian Motion and the Monte Carlo method
LightGBM + Optuna: Auto train LightGBM directly from CSV files, Auto tune them using Optuna, Auto serve best model using FastAPI. Inspired by Abhishek Thakur's AutoXGB.
Automatic short-term covid-19 spread prediction by countries and Russian regions
Routines to handle GBM geometry and plotting
Comparing gradient and Newton boosting
Utilizing Fermi GBM as a pulsar timing tool
scikit-learn compatible tools to work with GBM models
This my entry for the Titanic competition on Kaggle. May 2019: public score is 0.80382, which is a top 10% ranking on the leader board of around 11.249 participants.
Various async Python tools for market simulations
TQT 2nd GBM: Introducing TQT In House Competition!?; Pipelining Research and Specialist + MINI SEMINAR
A custom Gradient Boosting Machine built entirely from scratch using Python and NumPy to minimize Squared Error loss. Features manual weak learner integration and hyperparameter tuning to predict housing prices without relying on XGBoost or LightGBM.
🧬 Model and optimize CAR-T therapy for glioblastoma using advanced spatial fractional reaction-diffusion techniques and tumor microenvironment insights.
Fine-tuning and calibrating the Chronos (T5) transformer for financial time series forecasting. Achieves up to 15% better accuracy (MASE) and reliable confidence estimates using perturbation-based consistency calibration (C3).
An easy to use Snowflake-based text clustering or LLM, tool/framework
Sistema web para el uso de modelos de riesgo de defunción y severidad hospitalaria asociada a diferentes afecciones médicas en pacientes hospitalizados.
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