harry771 / competitive-data-science-1

How to Win a Data Science Competition: Learn from Top Kagglers

Home Page:https://www.coursera.org/learn/competitive-data-science

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Additional Materials and Links

Week 1

Recap of main ML algorithms

Overview of methods

Additional Tools

Software/Hardware requirements

StandCloud Computing:

AWS spot option:

Stack and packages:

Feature preprocessing and generation with respect to models

Feature preprocessing

Feature generation

Feature extraction from text and images

Feature extraction from text

Bag of words

Word2vec

NLP Libraries

Feature extraction from images

Pretrained models

Finetuning

Week 2

Exploratory data analysis

Visualization tools

Others

Validation

Data leakages

Week 3

Metrics optimization

Classification

Ranking

Clustering

Week 4

Hyperparameter tuning

Tips and tricks

Advanced features II

Matrix Factorization:

t-SNE:

Interactions:

Ensembling

Week 5

Competitions go through

You can often find a solution of the competition you're interested on its forum. Here we put links to collections of such solutions that will prove useful to you.

Past solutions

About

How to Win a Data Science Competition: Learn from Top Kagglers

https://www.coursera.org/learn/competitive-data-science


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