项目作者: prakhar21

项目描述 :
A day to day plan for this challenge (50 Days of Machine Learning) . Covers both theoretical and practical aspects
高级语言: Jupyter Notebook
项目地址: git://github.com/prakhar21/50-Days-of-ML.git
创建时间: 2018-07-31T02:47:14Z
项目社区:https://github.com/prakhar21/50-Days-of-ML

开源协议:

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50-Days-of-ML

A day to day plan for this challenge. Covers both theoritical and practical aspects.

I have build Docker Image with all the required dependencies till Day 21. Feel free to use it by pulling it using -> docker pull prakhar21/ml-utilities

Please see Deep Work which compliments our challenge and increases productivity. You can follow me on @prakhar.mishra"">@Medium for interesting blog articles.

Day-1 (31st July, 2018)

Day-2 (1st August, 2018)

Day-3 (2nd August, 2018)

Day-4 (3rd August, 2018)

  • Learn about Pandas. See Videos(16-18)
  • Read KNN-1
  • Read @adi.bronshtein/a-quick-introduction-to-k-nearest-neighbors-algorithm-62214cea29c7">KNN-2

Day-5 (4th August, 2018)

Day-6 (5th August, 2018)

Day-7 (6th August, 2018)

Day-8 (7th August, 2018)

Day-9 (8th August, 2018)

Day-10 (9th August, 2018)

Day-11 (10th August, 2018)

Day-12 (11th August, 2018)

Day-13 (12th August, 2018)

Day-14 (13th August, 2018)

Day-15 (14th August, 2018)

Day-16 (15th August, 2018)

Day-17 (16th August, 2018)

Day-18 (20th August, 2018)

  • General read on @ageitgey/natural-language-processing-is-fun-9a0bff37854e">Medium
  • Read about @ageitgey/text-classification-is-your-new-secret-weapon-7ca4fad15788">Text Classification
  • Read about @ageitgey/quick-tip-the-easiest-way-to-grab-data-out-of-a-web-page-in-python-7153cecfca58">scrape method in Pandas
  • Read about FastText

Day-19 (21st August, 2018)

Day-20 (22nd August, 2018)

Day-21 (23rd August, 2018)

  • See all videos under C2W2
  • Implement saving/loading of ML models
  • Write Dockerfile

Day-22 (24th August, 2018)

Day-23 (25th August, 2018)

  • Read Chapter 6 (till 6.1.2) from the book Mining Massive Datasets
  • Read/Practice Day-26

Day-24 (26th August, 2018)

  • Read Chapter 6 (till 6.1) from the book Mining Massive Datasets

Day-25 (27th August, 2018)

Day-26 (28th August, 2018)

Day-27 (29th August, 2018)

  • Read about article on @prakhar.mishra">RL 1, 2, 3, 4
  • Implement randomised cartpole balancer

Day-28 (30th August, 2018)

  • Read paper
  • Implement neural network in PyTorch
  • PyTorch + TensorBoard
  • Update Docker File/Image

Day-29 (31st August, 2018)

Day-30 (1st September, 2018)

Day-31 (3rd September, 2018)

  • Implement Cartpole using Cross Entropy method

Day-32 (4th September, 2018)

Day-33 (5th September, 2018)

Day-34 (6th September, 2018)

Day-35 (7th September, 2018)

  • Implement Q-Learning

Day-36 (10th September, 2018)

Day-37 (11th September, 2018)

Day-38 (12th September, 2018)

Day-39 (13th September, 2018)

  • Read about Agglomerative Clustering

Day-40 (14th September, 2018)

  • Read about Deep-Q-Networks and understand epsilon-greedy, replay buffer and target network in the same context.
  • See 7, 8 from Statistics - Khan Academy

Day-41 (15th September, 2018)

Day-42 (17th September, 2018)

Day-43 (18th September, 2018)

Day-44 (19th September, 2018)

Day-45 (20th Spetember, 2018)

Day-46 (21st September, 2018)

Day-47 (22nd Spetember, 2018)

Day-48 (22nd Spetember, 2018)

Day-49 (23rd September, 2018)

Day-50 (24th Spetember, 2018)