AutoXGB - Automated ML with XGBoost + Optuna + FastAPI - Kaggle Demo
Offered By: 1littlecoder via YouTube
Course Description
Overview
Explore the capabilities of AutoXGB, a Python library for Automated Machine Learning, in this 24-minute tutorial. Learn about the library developed by Kaggle Grandmaster Abhishek Thakur, which simplifies the process of creating XGBoost models, tuning with Optuna, and serving with FastAPI. Dive into a practical demonstration using a Tabular Playground Kaggle Competition dataset. Begin with an introduction to AutoXGB, followed by an explanation of its parameters. Then, apply AutoXGB to build a model on the Kaggle competition dataset. Access additional resources, including the AutoXGB GitHub repository and Kaggle notebook, to further enhance your understanding of this powerful AutoML tool.
Syllabus
AutoXGB - Automated ML with xgboost + optuna + fastapi | Kaggle Demo
Taught by
1littlecoder
Related Courses
Implementar un modelo de aprendizaje automático con FastAPICoursera Project Network via Coursera Build A TodoList with Python, FastAPI and Vue JS
Udemy Build A TodoList with Python, FastAPI and React
Udemy Build A TodoList with Python, FastAPI and Angular
Udemy Web Applications and Command-Line Tools for Data Engineering
Duke University via Coursera