All Projects → AdicherlaVenkataSai → Ml Workspace

AdicherlaVenkataSai / Ml Workspace

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Machine Learning (Beginners Hub), information(courses, books, cheat sheets, live sessions) related to machine learning, data science and python is available

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One Stop for machine learning

Sections:

  1. Papers
  2. Languages
  3. Platforms
  4. Courses
  5. Live Sessions
  6. Books
  7. Cheat sheets
  8. Interview Questions
  9. DataSets
  10. Blogs and Community
  11. Online Competitions
  12. Other Sources
  13. About CNNs
  14. About GANs

Steps in approaching a Machine learning problem:
Below are the steps that I follow while approaching a ML problem.

  • Defining and understanding the problem statement
  • Gathering the Data
  • Initial Exploration of Data
  • In-depth EDA
  • Building the model
  • Analyzing the results with different models and shortlisting the ones which gives good performance measures
  • Fine-tuning the selected model
  • Document the code
  • Deployment
  • Monitoring the deployed model performance in real time.

Papers | 2020

Languages

Knowing one language couldn't help to work in multidomain,so its good to learn two or more languages like python, c++, java. For machine learning,one should be sound in any of the language with other language basics python, R, matlab, julia.

Platforms

As we know that machine(deep) learning models need high computational power, it might not be possible for an individual for purchase addtional CPUs or GPUs, so we use cloud platforms.

Note: In general we use Jupyter Notebook to run our models. For Jupyter Notebook we need to install the software on local machine, for windows, linux

Note: Google Products like Colab, Kaggle are free and best platform for an individual.

Courses

Most of the courses are available in Python language. kindly re-check before taking the course of you have any language constraints.
Note: No organisation can be seen here, kindly pick the course based on your requirement.

Machine Learning

DataScience

APIs

Artificial Intelligence

Natural Language Processing

Commputer Vision

Matlab

Live Sessions

Note: In the below available sections if the required book/cheatsheet is not present or for more info check the more .
Note: Few google links are getting crashing for few files, in such scenario, can direclty check more (folder) .

EBooks/Books/CookBooks

more...

Cheat Sheets

more...

Exercises

more...

Interview Questions

more...

Note: These Self prepared Interview Questions will be updated weekly.

DataSets

Blogs and Community

Online Competitions

Other Resources

About CNNs

About GANs

Thank You for visiting the repo, hope it helped you! I would like to hear suggestions from you!!

Can reach me at

  • Whatsapp: venkatasaiadicherla
  • Linkedin: venkatasaiadicherla
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