Application of machine learning and data science in industry

Habr, hello. I translated a post that goes strictly (!) To bookmarks and is passed on to colleagues. It has a list of notebooks and ML and Data Science libraries for various industries. All codes are in Python, and are hosted on GitHub. They will be useful both for expanding horizons and for launching an interesting startup.

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I’ll note that if there are any readers who want to help and add a suitable project to any of the sub-sectors, please contact me. I will add them to the list. So, let's start exploring the list.

1. Real estate and food


1.1. Nutrition



1.2. Restaurants



1.3. The property



2. Accounting


2.1. Machine learning



2.2. Analytics



2.3. Text analysis



2.4. Data, Parsing and API



2.5. Research and articles



2.6. Web sites



2.7. Courses



3. Agriculture


3.1. Economy



3.2. Development



4. Banking and insurance


4.1. Consumer finance



4.2. Management and operations



4.3. Rating



4.4. Fraud



4.5. Insurance and Risks



4.6. Useful



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5. Biotechnology and science


5.1. Are common



5.2. Sequence



5.3. Chemoinformatics and drug discovery



5.4. Genomic



5.5. The science



6. Construction machinery


6.1. Building



6.2. Engineering



6.3. Materials Science



7. Economics


7.1. General



7.2. Machine learning



7.3. Calculations



8. Education and research


8.1. Students



8.2. School



9. Emergencies


9.1. Prevention



9.2. Crime



9.3. Ambulance



9.4. Disaster management



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10. Finance


10.1. Trade and investment



10.2. Data



11. Health


11.1. General



12. Justice, law and regulation


12.1. Instruments



12.2. Policy and Regulation



12.3. Arbitrage practice



13. Production


13.1. General



13.2. Maintenance



13.3. Mistakes



13.4. Quality



14. Media and publishing


14.1. Marketing



15. Physics


15.1. General



15.2.



16.


16.1. Social politics



16.2. Charity



16.3. Election analysis



16.4. Politics



17. Real estate, rental and leasing


17.1. The property



17.2. Rent and leasing



18. Utilities


18.1. Electric power



18.2. Coal, Oil and Gas



18.3. Water pollution



18.4. Logistics



19. Wholesale and retail trade


19.1. Wholesale



19.2. Retail



On this, our post on the application of ML and DS in industry came to an end. I hope you learned something new for yourself. If you have something that you can share yourself - write in the comments.

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All knowledge!

Source: https://habr.com/ru/post/462769/


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