50 of the most profound Kaggle Discussions (tips, tricks, resources) by the top Kaggle Grandmasters

Feature Engineering
- Top six mistakes in feature engineering
- Feature Engineering Techniques
- Tricks for Image Classification / Regression with Neural Networks
- How to score 97%, 98%, 99%, and 100% in MNIST
- How to score over 82% Titanic
- 9 Computer Vision Tricks to Improve Performance
- 7 More Computer Vision Tricks to Improve Score
- Not all the features are useful but some are “golden”
9. All you wanted to know about feature engineering and you were too afraid to ask
Helpful Resources
10 How to Learn Data Science on Kaggle
11. How to Become a Data Scientist at Your Own
12. 40 Interview Questions asked at Startups in Machine Learning / Data Science
13. Get Started with Data Science
14. Data Science Cheat Sheets (all of them in one place !)
15. Statistics Cheat Sheets in a single PDF !
16. Worth Seeing Posts and Notebooks
17. Best Data Science Projects for Beginners (Datasets)
18 Best of Kaggle Notebooks #2 — Time Series
19. Top 10 Starter Online Machine Learning Courses for Beginners! [3rd Update]
20. Compiled list of 600+ Q&As for Data Science interview prep
21. Plotly & Dash => Beginner’s Guide to Dashboards
Tips
23. Some tips to avoid overfitting
24. Is Kaggle on the resume helping?
25. Career advice from someone you probably shouldn’t listen to
26. My Kaggle Lessons Learned in 2021
27. Techniques to improve your leaderboard position
29. How to Win Kaggle Competitions
30. TPS competitions — my lessons learned in 2021
32 What “overfitting the public lb” means
33. Why rounding improves the score
34 Memory Trick — Reduce Memory 8x or 16x!
35. do not average in ensemble, use temperature shaping
36. [Productivity Guide] — How to work faster with notebooks
37. Neural Network Training Tips Sharing
38. What are you working on? A place to share your projects
Tutorial
39. Embeddings, Cosine Distance, and ArcFace Explained.
41. Tutorial on Bayesian Optimization for GBMs (for starters)
44. QDA Explained
46. TensorFlow roBERTa Explained
47. How to Convert Characters, Tokens, and Words
48 How To Display LSTM Feature Importance
49. Choice of number of k in k-fold cross-validation
50. Keras/PyTorch pretrained segmentation models






