A curated list of ✨ awesome ✨ resources for learning about data analytics, machine learning, artificial intelligence, and big data.
- Books
 - Podcasts
 - Newsletters
 - Overviews
 - Case Studies, Use Cases, Blogs, Papers
 - Data Analytics Process
 - Algorithms and Techniques
 - APIs, Libraries, Tools
 - Big Data
 - Courses
 - Datasets
 - Misc
 
- Deep Learning - The Straight Dope
 - Reinforcement Learning: An Introduction
 - Data Science for Business
 - Math for Machine Learning: Open Doors to Data Science and Artificial Intelligence
 - Advances in Financial Machine Learning (YouTube overview)
 - Seeing Theory - A visual introduction to probability and statistics
 - Interpretable Machine Learning. A Guide for Making Black Box Models Explainable.
 - Introduction to Data Mining
 - Data Science from Scratch
 - Practical Statistics for Data Scientists
 - Learning to Love Data Science
 - Doing Data Science
 - Data Mining
 
- Rebooting AI: Building Artificial Intelligence We Can Trust. Gary Marcus. 2019. Commentary by Matt Turck.
 - The AI Advantage: How to Put the Artificial Intelligence Revolution to Work (Management on the Cutting Edge). Thomas H. Davenport. 2018.
 - Applied Artificial Intelligence: A Handbook For Business Leaders. Mariya Yao. 2018.
 
- O'Reilly Data Show
 - Storytelling with Data
 - DataSkeptic
 - Linear Digressions
 - DataFramed
 - This Week in ML and AI
 - Machine Learning Guide
 
- Data Elixir
 - KDnuggets News
 - O'Reilly Data & AI Newsletter
 - Data Science Weekly
 - AAAI Alert
 - Medium Weekly Digest
 - TOPBOTS
 
- 44 Noteworthy Big Data Statistics in 2019
 - The 4 Types of Data Analytics
 - What Are Artificial Intelligence, Machine Learning, and Deep Learning?
 - Machine Learning "What I really do" panel
 - The Data Science Industry: Who Does What (Infographic)
 - I have data. I need insights. Where do I start?
 - Machine Learning for Economists: An Introduction
 - A Gentle Guide to Machine Learning
 - A visual introduction to machline learning
 - Machine Learning Mindmap / Cheatsheet
 - Machine Learning for Humans Aug 2017.
 - 4-Steps to Get Started in Machine Learning March 2014.
 - Jason's Machine Learning 101
 - Getting Value from Machine Learning Isn’t About Fancier Algorithms — It’s About Making It Easier to Use
 - ML Resources
 - Over 150 of the Best Machine Learning, NLP, and Python Tutorials I’ve Found
 
- Artificial Intelligence—A Game Changer for Climate Change and the Environment
 - AI, For Real. HBR. July 2017.
 - A list of artificial intelligence tools you can use today — for personal use
 - A list of artificial intelligence tools you can use today — for businesses
 - AI and Deep Learning, Explained Simply
 - The AI Hierarchy of Needs. August 2017.
 - A Survey of 3,000 Executives Reveals How Businesses Succeed with AI. HRB. August 2017.
 - How to Regulate Artificial Intelligence. Sep 2017.
 - Will AI kill us all after taking our jobs? Sep 2017.
 - Is AI Riding a One-Trick Pony?
 - 51 Artificial Intelligence (AI) Predictions For 2018. Forbes, Nov 2017.
 - How Do Machines Learn?. Fun little video.
 - What AI can and can’t do (yet) for your business
 - The Simple Economics of Machine Intelligence HBR, 2017.
 - Tencent says there are only 300,000 AI engineers worldwide, but millions are needed
 - The GANfather: The man who’s given machines the gift of imagination
 - What is AI, Really?
 - Apple and Its Rivals Bet Their Futures on These Men’s Dreams. An oral history of artificial intelligence, as told by its godfathers, gadflies, and Justin Trudeau.
 - Physicist Max Tegmark on the promise and pitfalls of artificial intelligence
 - A 6 minute Intro to AI
 - AI Knowledge Map: How To Classify AI Technologies
 - ARTIFICIAL INTELLIGENCE IN BUSINESS GETS REAL
 
- The limitations of deep learning
 - Structured Deep Learning
 - Using Deep Learning to Solve Real World Problems
 - Deep Learning: A Critical Appraisal Jan 2018.
 - Feature Visualization: How neural networks build up their understanding of images
 - The Building Blocks of Interpretability
 - An Introduction to Deep Learning for Tabular Data. April 2018.
 
- Educational Data Mining and Learning Analytics
 - Learning analytics in higher education.. A review of UK and international practice.
 - The beginner's guide to prediction workforce analytics.
 
- Kaggle: Human Resources Analytics
 - IBM Employee attrition dataset
 - Using Machine Learning to Predict and Explain Employee Attrition
 
- NYC Analytics. NYC Mayor’s Office of Data Analysis describes their data management system and improvements in operations.
 - UK Government, Tax Agent Segmentation.
 - Data.gov, Applications
 
- The NFL’s Brewing Information War
 - TED: The math behind basketball's wildest moves
 - AI in sports
 - NBA Data Analytics: Changing the Game
 
- Optimize Your Operations With Predictive Maintenance: Leverage Real-Time IoT Data to Anticipate Equipment Failure
 - Applied Data Science: Solving a Predictive Maintenance Business Problem
 
- Targeting Disaster Relief From Space July 2017.]
 
- Top 10 Videos on Machine Learning in Finance
 - Impact Of Artificial Intelligence And Machine Learning on Trading And Investing
 - Ghosts in the Machine: AI, risks and regulations in financial markets
 - Introduction to Deep Learning Trading in Hedge Funds
 - Introduction to Learning to Trade with Reinforcement Learning Feb 2018.
 
- CASE STUDY: FERRATUM BANK
 - Machine Learning: Challenges, Lessons, and Opportunities in Credit Risk Modeling. July 2017
 - Consumer Credit Risk Models via Machine-Learning Algorithms. Amir E. Khandani, Adlar J. Kim, and Andrew W. Lo. 2010.
 - How to Build Credit Risk Models Using AI and Machine Learning
 
- How a Japanese cucumber farmer is using deep learning and TensorFlow. Google ML Blog. August 2016.
 
- How Artificial Intelligence Is Raising The Bar On The Science Of Marketing May 2018.
 - Identifying churn drivers with Random Forests. Jan 2018.
 - Deep Learning With Keras To Predict Customer Churn. Jan 2018.
 - A Day in the Life of a Marketing Analytics Professional. Aug 2018.
 
- What is the most important step in a machine learning project?
 - https://machinelearningmastery.com/machine-learning-performance-improvement-cheat-sheet/
 - A Basic Recipe for Machine Learning
 
- Fundamentals of Data Visualization. Great online book by Claus O. Wilke.
 - skimr. Excellent R package for data exploration.
 - Effectively Using Matplotlib. April 2017.
 - What's so hard about histograms?
 - GeoSpatial Data Visualization in R July 2017.
 - The 5 Common Mistakes That Lead to Bad Data Visualization
 - Three Common Mistakes With Company-level Dashboards. Nov 2017.
 - Visualizing Incomplete and Missing Data Jan 2018.
 - Data Visualization Cheat Sheet
 - Data-Driving Storytelling
 - Visual Vocabulary - Vega Edition
 - Common Probability Distributions: The Data Scientist’s Crib Sheet
 
- How to Perform Data Cleaning for Machine Learning with Python. March 2020.
 - The Ultimate Guide to Basic Data Cleaning
 - An introduction to data cleaning with R
 - Reducing Dimensionality from Dimensionality Reduction Techniques. July 2017.
 - Your Data is Being Manipulated
 - Dealing with categorical features in machine learning
 
- How to Handle Imbalanced Classes in Machine Learning. July 2017.
 - 8 Tactics to Combat Imbalanced Classes in Your Machine Learning Dataset
 
- Understanding Feature Engineering (Part 1) — Continuous Numeric Data. Jan 2018.
 - Intro to Feature Engineering with TensorFlow - Machine Learning Recipes #9 Google Developers.
 - Feature Hashing (a.k.a. The Hashing Trick) With R
 - About Feature Scaling and Normalization – and the effect of standardization for machine learning algorithms
 
- What metrics should be used for evaluating a model on an imbalanced data set? (precision + recall or ROC=TPR+FPR)
 - YouTube: The tradeoff between sensitivity and specificity
 - Precision, Recall, AUCs and ROCs Jan 2015
 - YouTube: Boosting
 - YouTube: Bagging
 - YouTube: ROC curves
 - YouTube: ROC Curves explained
 - The Best Metric to Measure Accuracy of Classification Models
 - YouTube: How to evaluate a classifier in scikit-learn
 - Performance Metrics for Classification problems in Machine Learning
 - Choosing the Right Metric for Evaluating Machine Learning Models — Part 2
 - YouTube: Kappa Coefficient
 - Understanding Classification Thresholds Using Isocurves
 
- How to squeeze the most from your training data
 - Visualizing Cross-validation Code Sep 2017.
 - Selecting the best model in scikit-learn using cross-validation June 2015.
 
- Bias-Variance Tradeoff in Machine Learning
 - Part 4 - The Bias-Variance Dilemma July 2017.
 - Visual Intro to Machine Learning - Part 2
 
- Putting ML in Production
 - Machine Learning Engineering
 - Software development best practices in a deep learning environment. April 2019.
 - Software Engineering for Machine Learning: A Case Study. Blog commentary on this paper.
 - Machine Learning Software Engineering: Top Five Best Practices
 - Best Practices in Machine Learning Infrastructure. July 2019.
 - Rules of Machine Learning: Best Practices for ML Engineering
 
- Using Machine Learning to Predict Value of Homes On Airbnb. Airbnb Blog. July 2017.
 - Google Quick, Draw
 - NYTimes: Will you Graduate? Ask Big Data.
 - Analyzing 1.1 billion NYC taxi and uber trips
 - The Next Wave: Predicting the future of coffee in New York City. Medium, Sep 2017.
 - New-Age Machine Learning Algorithms in Retail Lending Sep 2017.
 
- Comparing supervised learning algorithms. Feb 2015.
 - How to choose algorithms for Microsoft Azure Machine Learning
 - An Empirical Comparison of Supervised Learning Algorithms
 - Machine Learning Cheat sheet
 - Machine Learning: Patterns for Predictive Analytics
 - Machine Learning Algorithm Cheat Sheet. Sep 2014.
 - Cheat Sheet – 10 Machine Learning Algorithms & R Commands. Jan 2015.
 - scikit-learn: Choosing the right estimator
 - Video: Hello World - Machine Learning Recipes #1. Mar 2016. Google Developers.
 - Top 10 data mining algorithms in plain English
 - Understanding Machine Learning Algorithms
 
- The 5 Clustering Algorithms Data Scientists Need to Know
 - Hierarchical Clustering in R. April 2017.
 - dendextend: a package for visualizing, adjusting, and comparing dendrograms
 
- A Practical Guide to Tree Based Learning Algorithms. July 2017.
 - Blog Post: Machine Learning Made Easy with Talend – Decision Trees
 - Blog post: Why do decision trees work?
 - Video: Visualizing a Decision Tree - Machine Learning Recipes #2. Mar 2016. Google Developers.
 - Book Chapter: Classification: Basic Concepts, Decision Trees, and Model Evaluation
 - The 
caretpackage - How Decision Trees Work
 - Awesome Decision Tree Research Papers
 - Understanding Decision Trees for Classification in Python
 
- Video: MarI/O - Machine Learning for Video Games. June 2015.
 - Introduction to Neural Networks, Advantages and Applications
 - Summary of Unintuitive Properties of Neural Networks
 - Neuroscience-Inspired Artificial Intelligence
 - 37 Reasons why your Neural Network is not working
 - 7 Steps to Understanding Deep Learning
 - Neural Network Foundations, Explained: Activation Function
 - Neural Network from Scratch
 - But what is a Neural Network? | Deep learning, Part 1
 - Gradient descent, how neural networks learn | Deep learning, part 2
 - Ranking Popular Deep Learning Libraries for Data Science. Oct 2017
 - Exploring Recurrent Neural Networks. Dec 2017.
 - Convolutional Neural Networks in Python with Keras. DataCamp tutorial. Dec 2017.
 - When reinforcement learning should not be used?
 - Hacker's guide to Neural Networks. Andrej Karpathy's blog.
 - Deep Reinforcement Learning: Pong from Pixels. Andrej Karpathy's blog. May 2016.
 - The Unreasonable Effectiveness of Recurrent Neural Networks. Andrej Karpathy's blog. 2015.
 - The Neural Network Zoo. Sep 2016.
 - A Simple Starter Guide to Build a Neural Network
 - Deep Learning: Which Loss and Activation Functions should I use?
 - Creating an Artificial Neural Network from Scratch in R. GitHub tutorial.
 - MIT Deep Learning Basics: Introduction and Overview with TensorFlow Feb 2019.
 
- Bayes’ Rule Applied - Using Bayesian Inference on a real-world problem
 - A practical explanation of a Naive Bayes classifier
 - Nomograms for Visualization of Naive Bayesian Classifier
 
- Support Vector Machines: A Simple Explanation
 - An introduction to Support Vector Machines (SVM)
 - Support Vector Machine (SVM) Tutorial August 2017.
 
- A Gentle Introduction on Market Basket Analysis — Association Rules Sep 2017
 - Association Rules and the Apriori Algorithm: A Tutorial
 - Kaggle: Frequent Itemsets and Association Rules
 - Association Analysis Simplified
 - A Novel Method of Interestingness Measures for Association Rules Mining Based on Profit.
 - The Research on Measure Method of Association Rules Mining
 - Interestingness Measures for Data Mining: A Survey
 
- Recommender Systems 101 – a step by step practical example in R
 - Using R package, recommenderlab, for predicting ratings for MovieLens data
 - Recommender Systems Comparison
 - Building a Movie Recommendation System
 - Building a Music Recommender with Deep Learning. Content-based.
 - Recommendation System Algorithms: An Overview. July 2017.
 - Spotify’s Discover Weekly: How machine learning finds your new music Oct 2017
 - Instacart Market Basket Analysis, Winner's Interview: 2nd place, Kazuki Onodera
 - Machine learning at Spotify: You are what you stream
 - What makes a good recommender system?. Rubikloud blog, March 2017.
 - Exploring Recommendation Systems. Jan 2018.
 - Production Recommendation Systems with Cloudera
 - Listing Embeddings for Similar Listing Recommendations and Real-time Personalization in Search
 - Predicting movie ratings and recommender systems
 - How does Netflix recommend movies? Matrix Factorization
 - A survey of food recommenders
 - Recommenders galore
 - Simulacra And Selection
 
- Video: Ensemble
 - Ensemble Learning to Improve Machine Learning Results Sep 2017.
 - Interpretable Machine Learning with XGBoost
 
- Network Analysis and Visualization with R and igraph
 - Graph-powered Machine Learning at Google. October 2016.
 - Systems Applications of Social Networks. ACM Computing Surveys, Sep 2017.
 - Data Mining for Predictive Social Network Analysis – Brazil Elections Case Study Nov 2015.
 - The Star Wars social networks – who is the central character? Dec 2015.
 - GRAKN.AI: Example Projects
 - Visual network analysis with Gephi
 - Network science reveals the secrets of the world’s best soccer team
 
- 5 Ways to Get Started with Reinforcement Learning
 - Reinforcement Learning and Its Practical Applications
 - Reinforcement Learning - Ep. 30 (Deep Learning SIMPLIFIED)
 - Reinforcement Learning Basics
 - Reinforcement Learning Explained
 - Q Learning Explained
 - A Tutorial on Reinforcement Learning I
 - MIT 6.S191 Lecture 6: Deep Reinforcement Learning
 - Reinforcement Learning FAQ: Frequently Asked Questions about Reinforcement Learning
 - Exclusive: Interview with Rich Sutton, the Father of Reinforcement Learning
 - Simple Reinforcement Learning with Tensorflow Part 0: Q-Learning with Tables and Neural Networks Medium. August 2016. 9-part series.
 - Schooling Flappy Bird: A Reinforcement Learning Tutorial
 
- TensorFlow Tutorial For Beginners July 2017.
 - Square off: Machine learning libraries. Jan 2018.
 - Comparing Machine Learning as a Service: Amazon, Microsoft Azure, Google Cloud AI Jan 2018.
 - Comparing Top Deep Learning Frameworks: Deeplearning4j, PyTorch, TensorFlow, Caffe, Keras, MxNet, Gluon & CNTK
 
- R for Reproducible Scientific Analysis: Reference. A nice set of tutorials from Software Carpentry.
 - R for Data Science. An excellent online book by Garrett Grolemund and Hadley Wickham.
 - Awesome R - A curated list of awesome R packages and tools.
 - swirl: Learn R, in R. swirl teaches you R programming and data science interactively, at your own pace, and right in the R console!
 - FREE COURSE: Introduction to R
 - Data Import Cheat Sheet
 - Data Transformation Cheat Sheet
 - Sparklyr Cheat Sheet
 - R Markdown Cheat Sheet
 - R Markdown Reference Guide
 - RStudio IDE Cheat Sheet
 - Data Visualizaton Cheet Sheet
 - caret package: classification and regression training
 - DataCamp: Cleaning Data in R
 - DataCamp: Joining Data in R with Dplyr
 - DataCamp: Data Manipulation in R with dplyr
 - Tidyverse, an opinionated Data Science Toolbox in R from Hadley Wickham
 - aRrgh: a newcomer’s (angry) guide to R
 - Making R Code Faster : A Case Study
 - TensorFlow for R
 - Introducing ViewPipeSteps: Towards Observable Programming in R
 - FastR
 
- DataCamp: Intro to Python for Data Science Free online course.
 - DataCamp: All Python courses Free and paid online courses.
 - Software Carpentry: Programming with Python. Free online course.
 - The Google Python class. Free online course.
 - Coursera: Python For Everyone. Free online course.
 - Learn Python the Hard Way. Free online book.
 - YouTube: Python Programming
 - YouTube videos of old Khan Academy lectures: Python
 - Data Science from Scratch. Book.
 - Python for Data Analysis. Book.
 - Awesome Python. Free curated list of more Python resources.
 - KDNuggets: 7 Steps to Mastering Machine Learning With Python. Article.
 - A Dramatic Tour through Python’s Data Visualization Landscape (including ggplot and Altair). Blog post.
 - Python Seaborn Cheat Sheet For Statistical Data Visualization Aug 2017.
 - Top 15 Python Libraries for Data Science in 2017
 - 6 Reasons Why Python Is Suddenly Super Popular
 - A Visual Intro to NumPy and Data Representation
 - A landscape diagram for Python data. March 2019.
 
- SQL Murder Mystery
 - DataCamp: Intro to SQL for Data Science
 - DataCamp: Joining Data in PostgreSQL
 - SW Carpentry: Databases and SQL
 - The SQL Tutorial for Data Analysis
 - SQL is 43 years old - here’s 8 reasons we still use it today. April 2017. HN Post.
 - SQL Tutorial: How To Write Better Queries
 - Why SQL is beating NoSQL, and what this means for the future of data
 - Franchise: An open-source notebook for SQL
 - SQL Window Functions to Pass a Data Analytics Interview (Opinionated SQL Series Part 2/N)
 - Select Star SQL. This is an interactive book which aims to be the best place on the internet for learning SQL.
 - SQL Interview Questions: 3 Tech Screening Exercises (For Data Analysts)
 - OLAP queries in SQL: A Refresher
 - 21 of the best free resources to learn SQL
 
- The Weka Workbench
 - Video: Weka Data Mining Tutorial for First Time & Beginner Users
 - Videos: WekaMOOC: Data Mining with Weka
 - FutureLearn: Data Mining with Weka
 
- Learning Spark: Lightning-Fast Big Data Analysis
 - Advanced Analytics with Spark: Patterns for Learning from Data at Scale
 - Databricks WhitePapers
 
- Fast track Apache Spark. Sep 2017.
 - Should Spark have an API for R?
 - Quora: How do I learn Apache Spark?
 - Apache Spark: A Unified Engine for Big Data Processing
 - Using Apache Spark to Analyze Large Neuroimaging Datasets. August 2016.
 - Apache Spark @Scale: A 60 TB+ production use case). August 2016.
 - Big Data Processing with Apache Spark – Part 1: Introduction\
 - Intro to Apache Spark
 - Resilient Distributed Datasets: A Fault-Tolerant Abstraction for In-Memory Cluster Computing
 - A Powerful Big Data Trio: Spark, Parquet and Avro
 - Interactive Analysis
 - The RDD API by example
 - Why Apache Spark is a Crossover Hit for Data Scientists
 - Building a food recommendation engine with Spark / MLlib and Play]
 - Movie Recommendations and More With Spark
 - Blog post: $1.44 per terabyte: setting a new world record with Apache Spark Nov 2016
 - Blog post: How-to: Predict Telco Churn with Apache Spark MLlib
 - KDNuggets: 7 Steps to Mastering Apache Spark 2.0
 - Databricks: Introducing Apache Spark 2.0
 - KDNuggets: Apache Spark Key Terms, Explained
 - Article Spark Streaming: What Is It and Who’s Using It? Nov 2015
 - Apache Spark: A Unified Engine for Big Data Processing
 - Spark Summit 2013 - The State of Spark, and Where We're Going Next - Matei Zaharia
 - Resilient Distributed Datasets: A Fault-Tolerant Abstraction for In-Memory Cluster Computing
 - First Steps with Spark - Screencast #1
 - Spark Documentation Overview – Screencast #2
 - Transformations and Caching - Spark Screencast #3
 - A Standalone Job in Scala - Spark Screencast #4
 - Apache Spark on YouTube
 - Advanced Apache Spark Training
 - Structuring Apache Spark 2.0
 - Apache Spark 2.0: A Deep Dive Into Structured Streaming
 - YouTube: Spark and Spark Streaming at Uber - Meetup talk with Tathagata Das
 - YouTube: Building Realtime Data Pipelines with Kafka Connect and Spark Streaming
 - YouTube: Intro to Spark Streaming
 - RStudio Webinar: Using Spark with Shiny and R Markdown
 
- Big Data Architecture: A Complete and Detailed Overview
 - The Infrastructure Behind Twitter: Scale Jan 2017
 - Study on Big Data in Public Health, Telemedine and Healthcare. Dec 2016.
 - Michael Stonebraker | Big Data is (at least) Four Different Problems
 - Don't use Hadoop - your data isn't that big. 2013. (HN discussion.)
 - Data Lake – the evolution of data processing
 
- Why NoSQL Database?
 - 7 Steps to Understanding NoSQL Databases
 - Types of NoSQL databases and key criteria for choosing them
 - NoSQL Data Modeling Techniques
 - NoSQL Databases: a Survey and Decision Guidance
 - Stack Overflow: What does “Document-oriented” vs. Key-Value mean when talking about MongoDB vs Cassandra?
 - Visual Guide to NoSQL Systems
 - NoSQL for Dummies
 - Video: GOTO 2012 • Introduction to NoSQL • Martin Fowler
 - Video: The Art Of Database Design
 
- Python Course: Lambda, filter, reduce and map
 - HPC MapReduce Exercise: Hands-On Lab
 - Book: Data-Intensive Text Processing with MapReduce
 - Blog: MapReduce Questions and Answers
 
- Every single Machine Learning course on the internet, ranked by your reviews
 - CMU: Statistical Machine Learning
 - CMU: Introduction to Machine Learning
 - Elite Data Science
 - Machine Learning Crash Course
 - Stanford: Data Mining Certificates Online
 - MIT OpenCourseware
 
- UCI
 - Kaggle Datasets
 - r/datasets
 - Awesome public datasets
 - R's 
datasetspackage - Stanford Large Network Dataset Collection
 - Data is Plural
 - FiveThirtyEight's datasets
 - 9 Must-Have Datasets for Investigating Recommender Systems
 - Datasets For recommender system
 - Wikipedia: List of datasets for ML research
 - Google Dataset Search
 - Data Commons
 - Recommender Systems Datasets
 
- The State of Data Science and Machine Learning, 2017 Survery
 - AI and Deep Learning in 2017 – A Year in Review. Dec 31, 2017. WildML.
 - Scaling Analytics at Wish. Jan 8, 2018.
 - 30 Amazing Machine Learning Projects for the Past Year (v.2018). Jan 2018.
 - Ethical Data Practices
 - Big Companies Are Embracing Analytics, But Most Still Don’t Have a Data-Driven Culture
 - Data Science and Machine Learning Interview Questions
 - How to Build Disruptive Data Science Teams: 10 Best Practices
 - NLP Interview Questions
 
- Same Stats, Different Graphs: Generating Datasets with Varied Appearance and Identical Statistics through Simulated Annealing
 - DataCamp: Intro to data.world in Python
 - Data Science Weekly's Data Science Resources
 - 7 command line tools for data science
 - Silicon Valley siphons our data like oil. But the deepest drilling has just begun. Aug 2017
 - Huge Trello List of Great Data Science Resources
 - Fairness in Machine Learning NIPS 2017 tutorial.
 - The Product Possibilities of Interpretability
 - When an AI finally kills someone, who will be responsible?
 - Stop explaining black box machine learning models for high stakes decisions and use interpretable models instead