-
databases
- Databases and SQL for Data Science, IBM, Coursera
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deep_learning
- "TensorFlow for Deep Learning (O'Reilly)", Bharath Ramsundar & Reza Bosagh Zadeh
- "Fundamentals of Deep Learning (O'Reilly)", Nikhil Buduma with contributions by Nicholas Locascio
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interview_questions.
- 109 Commonly Asked Data Science Interview Questions
- The Springboard Data Science Career Track's main units are wrapped up with interview practice questions. I am collecting the answeres in the file springbrd_interview_practice.ipynb. View in jupyter nbviewer:
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linear_algebra. Some introductory concepts and python representations.
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machine_learning.
- CS109 Data Science, Harvard University
- Supervised Learning with scikit-learn, DataCamp
- Advanced Machine Learning with TensorFlow on Google Cloud Platform Specialization, Coursera
- Machine Learning with TensorFlow on Google Cloud Platform Specialization, Coursera
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programming.
- MIT 6.006 Introduction to Algorithms, Fall 2011, https://www.youtube.com/watch?v=HtSuA80QTyo&list=PLUl4u3cNGP61Oq3tWYp6V_F-5jb5L2iHb&index=1
- data_structures_and_algorithms
- "Programming in Python 3, A Complete Introduction to the Python Language", Mark Summerfield
- "Elements of Programming Interview in Python", Adnan Aziz, Tsung-Hsien Lee, Amit Prakash
- Python3 documentation
- Learn to Program: Crafting Quality Code, University of Toronto, Coursera
- interview_practice
- leetcode
- mock interviews
- python_programmer_track_datacamp
- Python Programmer Track, DataCamp
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statistics.
- Random Variables, Sampling Distributions, Confidence Intervals, Khan Academy
- Statistical Thinking in Python (Part 1), DataCamp
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quick_notes.ipynb
- Random notes
prasoon2211/Notes
Notes from different sources such as Harvard CS109 course, Springboard's Data Science Interview questions, Elements of Programming Interview book, etc.
Jupyter Notebook