How to Win Machine Learning Competitions by Kazanova, Former Kaggle #1 | Hackerearth Webinar
Participate in # UNITEDBYHCL Hackathon : https://goo.gl/Z7oSKK To read all the documents, Q & As and slides shared by Marios in the video: http://hck.re/9xgsg3 About us: HackerEarth is the most comprehensive developer assessment software that helps companies to accurately measure the skills of developers during the recruiting process. More than 500 companies across the globe use HackerEarth to improve the quality of their engineering hires and reduce the time spent by recruiters on screening candidates. Over the years, we have also built a thriving community of 2.5M+ developers that come to HackerEarth to participate in hackathons and coding challenges to assess their skills and compete in the community.

▶︎
Anthony Goldbloom — How to Win Kaggle Competitions

▶︎
Winning Data Science Competitions: Jeong-Yoon Lee

▶︎
How to Become a Data Scientist in 2017? | Data Scientist Career | Data Science Future

▶︎
How to Learn Python | Python Programming | Learn Python | Intellipaat

▶︎
Data Analysis with Python: Part 4 of 6 - Analyzing tabular data with Pandas

▶︎
How to Speak

▶︎
Feature Engineering with H2O - Dmitry Larko, Senior Data Scientist, H2O.ai

▶︎
Machine Learning Zero to Hero (Google I/O'19)

▶︎
Kaggle Competitions: A Beginner's Guide to Winning

▶︎
End-To-End Data Science with Kaggle | Competition speed run?

▶︎
Tips and Tricks for Machine Learning | by Stanislav Semenov | Kaggle Days Paris

▶︎
Build a Complete Medical Chatbot with LLMs, LangChain, Pinecone, Flask & AWS 🔥

▶︎
How to Become a Kaggle #1: An introduction to model stacking - Data Science Festival

▶︎
Inside the Mind of Anthropic CEO Dario Amodei | The Circuit | Extended Interview

▶︎
Art of Feature Engineering for Data Science - Nabeel Sarwar

▶︎
Kaggle Grandmaster Panel

▶︎
Lessons Learned from Tens of Thousands of Kaggle Notebooks

▶︎
The FASTEST introduction to Reinforcement Learning on the internet

▶︎
Kaggle Competition - Titanic Dataset | Great Learning

▶︎
