Data@Rensselaer

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All Readings


Session Reading
2 Doing Data Science (Chapter 1)
Data Science for Business (Chapter 1)
Command Line Cheat Sheet
Assignment Process
Running Jupyter locally
4 Principles of Data Wrangling (Chapters 1-3)
6 Introduction to Machine Learning with Python (Chapter 1)
8 Install Tableau (free for students)
Tableau - Data analytics for university students guide
Designing Great Visualizations
Tableau getting Started
TED Talk
10 R for Data Science (Chapters 1-3)
RStudio Cloud
12 Cross Validation
The 10 Algorithms Machine Learning Engineers Need to Know
15 Algorithms Machine Learning Engineers Must Need to Know
A Tour of Machine Learning Algorithms
An Introduction to Machine Learning with Python (Chapter 2-3)
20 The Seven Practice Areas of Text Mining
The Amazing Power of Word Vectors
Bag of Words Tutorial
Word Vectors
23 Introduction to Time Series
7 Ways Time Series Forecasting Differs from Machine Learning
Aggregation Techniques and Cryptocurrencies
〈 Schedule Session 1 〉