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- Book: Good to Great: Why Some Companies Make the Leap...And Others Don't
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- Book: Learn to Earn: A Beginner's Guide to the Basics of Investing and Business
- Book: Rework
- Book: The Airbnb Story
- Facebook: Digital marketing: get started
- Facebook: Digital marketing: go further
- Google Analytics for Beginners
- Google: Fundamentals of Digital Marketing
- Hello, Startup: A Programmer's Guide to Building Products, Technologies, and Teams
- Moz: The Beginner's Guide to SEO
- Smartly: Marketing Fundamentals
- Treehouse: SEO Basics
- The Personal MBA: Master the Art of Business
- Thoughtbot: Analytics for Developers
- Udacity: App Monetization
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- Udacity: Get Your Startup Started
- Udacity: How to Build a Startup
- AWS: Types of Machine Learning Solutions
- Book: AI Superpowers: China, Silicon Valley, and the New World Order
- Book: A Human's Guide to Machine Intelligence
- Book: The Future Computed
- Book: Machine Learning Yearning by Andrew Ng
- Book: Prediction Machines: The Simple Economics of Artificial Intelligence
- Coursera: AI For Everyone
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- Datacamp: Data Science for Everyone
- Datacamp: Customer Segmentation in Python
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- Datacamp: Predicting Customer Churn in Python
- Datacamp: Machine Learning with the Experts: School Budgets
- Datacamp: Machine Learning for Everyone
- Datacamp: Analyzing Police Activity with pandas
- Datacamp: Data Science for Managers
- Facebook: Field Guide to Machine Learning
- Google: Art and Science of Machine Learning
- Google: How Google does Machine Learning
- Google: Introduction to Machine Learning Problem Framing
- Microsoft: Define an AI strategy to create business value
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- Microsoft: Identify guiding principles for responsible AI in your business
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- Pluralsight: How to Think About Machine Learning Algorithms
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- Datacamp: Intro to Python for Data Science
- Pluralsight: Working with Multidimensional Data Using NumPy
- Datacamp: pandas Foundations
- Datacamp: Pandas Joins for Spreadsheet Users
- Datacamp: Manipulating DataFrames with pandas
- Datacamp: Merging DataFrames with pandas
- Datacamp: Data Manipulation with pandas
- Datacamp: Optimizing Python Code with pandas
- Datacamp: Streamlined Data Ingestion with pandas
- Datacamp: Analyzing Marketing Campaigns with pandas
- Datacamp: Spreadsheet basics
- Datacamp: Data Analysis with Spreadsheets
- Datacamp: Intermediate Spreadsheets for Data Science
- Datacamp: Pivot Tables with Spreadsheets
- Datacamp: Data Visualization in Spreadsheets
- Datacamp: Introduction to Statistics in Spreadsheets
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- Datacamp: Marketing Analytics in Spreadsheets
- Datacamp: Error and Uncertainty in Spreadsheets
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- Book: Learn SQL the hard way
- Codecademy: SQL Track
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- Datacamp: Intro to SQL for Data Science
- Datacamp: Introduction to MongoDB in Python
- Datacamp: Intermediate SQL
- Datacamp: Exploratory Data Analysis in SQL
- Datacamp: Joining Data in PostgreSQL
- Datacamp: Querying with TransactSQL
- Datacamp: Introduction to Databases in Python
- Datacamp: Reporting in SQL
- Datacamp: Applying SQL to Real-World Problems
- Datacamp: Analyzing Business Data in SQL
- Datacamp: Data-Driven Decision Making in SQL
- Datacamp: Database Design
- Khan Academy: SQL
- Launch School: Introduction to SQL
- Treehouse: Using Databases in Python
- Udacity: SQL for Data Analysis
- Udacity: Intro to relational database
- Udacity: Database Systems Concepts & Design
- Bash Academy
- Bash Programming
- Codecademy: Learn the Command Line
- CONQUERING THE COMMAND LINE
- Datacamp: Introduction to Shell for Data Science
- Datacamp: Data Processing in Shell
- LaunchSchool: Introduction to Commandline
- Learn Enough Command Line to be dangerous
- Thoughtbot: Mastering the Shell
- Thoughtbot: tmux
- Udacity: Linux Command Line Basics
- Udacity: Linux Web Servers
- Udacity: Shell Workshop
- Udacity: Web Tooling & Automation
- Web Bos: Command Line Power User
- Datacamp: Analyzing Social Media Data in Python
- Datacamp: Dimensionality Reduction in Python
- Datacamp: Preprocessing for Machine Learning in Python
- Datacamp: Data Types for Data Science
- Datacamp: Cleaning Data in Python
- Datacamp: Feature Engineering for Machine Learning in Python
- Datacamp: Importing Data in Python (Part 2)
- Datacamp: Importing & Managing Financial Data in Python
- Datacamp: Manipulating Time Series Data in Python
- Datacamp: Working with Geospatial Data in Python
- Datacamp: Web Scraping in Python
- Datacamp: Analyzing IoT Data in Python
- Datacamp: Dealing with Missing Data in Python
- Datacamp: Exploratory Data Analysis in Python
- edX: Data Science Essentials
- Google: Feature Engineering
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- Datacamp: Introduction to Data Visualization with Python
- Datacamp: Introduction to Seaborn
- Datacamp: Introduction to Matplotlib
- Datacamp: Intermediate Data Visualization with Seaborn
- Datacamp: Visualizing Time Series Data in Python
- Datacamp: Improving Your Data Visualizations in Python
- Datacamp: Visualizing Geospatial Data in Python
- Datacamp: Interactive Data Visualization with Bokeh
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- Paper: A Neural Probabilistic Language Model
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- Paper: Sequence to Sequence Learning with Neural Networks
- Paper: Neural Machine Translation by Jointly Learning to Align and Translate
- Paper: Attention Is All You Need
- Paper: BERT: Pre-training of Deep Bidirectional Transformers for Language Understanding
- Paper: XLNet: Generalized Autoregressive Pretraining for Language Understanding
- Paper: Synonyms Based Term Weighting Scheme: An Extension to TF.IDF
- Paper: RoBERTa: A Robustly Optimized BERT Pretraining Approach
- Paper: GLUE: A Multi-Task Benchmark and Analysis Platform for Natural Language Understanding
- Paper: Amazon.com Recommendations Item-to-Item Collaborative Filtering
- Paper: Collaborative Filtering for Implicit Feedback Datasets
- Paper: BPR: Bayesian Personalized Ranking from Implicit Feedback
- Paper: Factorization Machines
- Paper: Wide & Deep Learning for Recommender Systems
- Paper: Neural Factorization Machines for Sparse Predictive Analytics
- Paper: Multiword Expressions: A Pain in the Neck for NLP
- Paper: PyTorch: An Imperative Style, High-Performance Deep Learning Library
- Paper: ALBERT: A LITE BERT FOR SELF-SUPERVISED LEARNING OF LANGUAGE REPRESENTATIONS
- Paper: Self-supervised Visual Feature Learning with Deep Neural Networks: A Survey
- Paper: A Simple Framework for Contrastive Learning of Visual Representations
- Paper: Self-Supervised Learning of Pretext-Invariant Representations
- Paper: FixMatch: Simplifying Semi-Supervised Learning with Consistency and Confidence
- Paper: Self-Labelling via Simultaneous Clustering and Representation Learning
- Paper: A Survey on Contextual Embeddings
- Paper: A survey on Semi-, Self- and Unsupervised Techniques in Image Classification
- Paper: Shortcut Learning in Deep Neural Networks
- Paper: Multi-document Summarization by using TextRank and Maximal Marginal Relevance for Text in Bahasa Indonesia
- Paper: Train Once, Test Anywhere: Zero-Shot Learning for Text Classification
- Whitepaper: Architecting for the Cloud AWS Best Practices
- Whitepaper: AWS Well-Architected Framework
- Whitepaper: AWS Security Best Practices
- Whitepaper: Blue/Green Deployments on AWS
- Whitepaper: Microservices on AWS
- Whitepaper: Optimizing Enterprise Economics with Serverless Architectures
- Whitepaper: Practicing Continuous Integration and Continuous Delivery on AWS
- Whitepaper: Running Containerized Microservices on AWS
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- Book: Basics of Linear Algebra for Machine Learning
- Book: Doing Math with Python
- Datacamp: Foundations of Probability in Python
- Datacamp: Statistical Thinking in Python (Part 1)
- Datacamp: Statistical Thinking in Python (Part 2)
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- edX: Essential Statistics for Data Analysis using Excel
- Essence of Linear Algebra
- Computational Linear Algebra for Coders
- Khan Academy: Precalculus
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- Khan Academy: Differential Calculus
- Khan Academy: Multivariable Calculus
- Khan Academy: Linear Algebra
- MIT: 18.06 Linear Algebra (Professor Strang): Lec 1,2,3,4,5,6,9,11,14, 15, 16, 17, 21
- Udacity: Algebra Review
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- AWS: Semantic Segmentation Explained
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- Book: Pattern Recognition and Machine Learning
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- CS294-158-SP20 Deep Unsupervised Learning Spring 2020
- Coursera: Neural Networks and Deep Learning
- Datacamp: AI Fundamentals
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- Datacamp: Introduction to PySpark
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- Datacamp: Foundations of Predictive Analytics in Python (Part 1)
- Datacamp: Foundations of Predictive Analytics in Python (Part 2)
- Datacamp: Ensemble Methods in Python
- Elements of AI
- edX: Principles of Machine Learning
- edX: Data Science Essentials
- edX: Principles of Machine Learning
- edX: Implementing Predictive Analytics with Spark in Azure HDInsight
- Google: Launching into Machine Learning
- Grokking Deep Learning
- How Deep Neural Networks work
- How CNN works
- Jason Machine Learning 101 Slides
- Make Your Own Neural Network
- MIT: 6.S191: Introduction to Deep Learning
- Pluralsight: Understanding Algorithms for Recommendation Systems
- Pluralsight: Deep Learning: The Big Picture
- Udacity: A Friendly Introduction to Machine Learning
- Udacity: Intro to Data Analysis
- Udacity: Intro to Data Science
- Udacity: Intro to Machine Learning
- Udacity: Reinforcement Learning
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- Udacity: Classification Models
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- Datacamp: Conda Essentials
- Datacamp: Conda for Building & Distributing Packages
- Datacamp: Creating Robust Python Workflows
- Datacamp: Software Engineering for Data Scientists in Python
- Datacamp: Designing Machine Learning Workflows in Python
- Datacamp: Object-Oriented Programming in Python
- Datacamp: Command Line Automation in Python
- Datacamp: Introduction to Data Engineering
- Datacamp: Experimental Design in Python
- Full Stack Deep Learning Bootcamp: March 2019
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- Coursera: Sequence Models
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- Datacamp: Advanced NLP with spaCy
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- Datacamp: Clustering Methods with SciPy
- Datacamp: Feature Engineering for NLP in Python
- Datacamp: Machine Translation in Python
- Datacamp: Natural Language Processing Fundamentals in Python
- Datacamp: Natural Language Generation in Python
- Datacamp: RNN for Language Modeling
- Datacamp: Regular Expressions in Python
- Datacamp: Sentiment Analysis in Python
- Datacamp: Spoken Language Processing in Python
- fast.ai Code-First Intro to Natural Language Processing
- RNN and LSTM
- Spacy Tutorial
- Stanford CS224U: Natural Language Understanding | Spring 2019
- TextBlob Tutorial Series
- Treehouse: Regular expression
- Youtube: BERT Research Series
- Datacamp: Machine Learning for Finance in Python
- Datacamp: Introduction to Time Series Analysis in Python
- Datacamp: Machine Learning for Time Series Data in Python
- Datacamp: Intro to Portfolio Risk Management in Python
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- Datacamp: Predicting CTR with Machine Learning in Python
- Datacamp: Intro to Financial Concepts using Python
- Datacamp: Fraud Detection in Python
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- Datacamp: Introduction to Linear Modeling in Python
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- Pluralsight: Building Machine Learning Models in Python with scikit-learn
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- Coursera: Getting Started With Tensorflow 2
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- Deeplizard: Keras - Python Deep Learning Neural Network API
- Deep Learning with Python
- Datacamp: Deep Learning in Python
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- Datacamp: Introduction to TensorFlow in Python
- Datacamp: Introduction to Deep Learning with Keras
- Datacamp: Advanced Deep Learning with Keras
- Google: Keras Blog
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- Google: Machine Learning Crash Course
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- AWS: Introduction to Amazon Comprehend
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- AWS: Introduction to Amazon Polly
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- AWS: Introduction to Amazon SageMaker Neo
- AWS: Introduction to Amazon Transcribe
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- Datacamp: Model Validation in Python
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- Google: Testing and Debugging
- Troubleshooting Deep Neural Networks
- Acloudguru: AWS Certified Machine Learning - Specialty
- Acloudguru: AWS Certified Developer - Associate
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- AWS: Exam Readiness: AWS Certified Developer – Associate
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- Datacamp: Parallel Computing with Dask
- Pluralsight: Hands-on Ansible
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- Pluralsight: Docker and Kubernetes: The Big Picture
- Pluralsight: AWS Developer: The Big Picture
- Pluralsight: AWS Networking Deep Dive: Virtual Private Cloud (VPC)
- Pluralsight: AWS VPC Operations
- Pluralsight: Building Applications Using Elastic Beanstalk
- Servers for Hackers Series
- The Hacker's Guide to Scaling Python
- Udacity: HTTP & Web Servers
- Udacity: Intro to DevOps
- Udacity: Deploying Applications with Heroku
- Udacity: Developing Scalable Apps in Python
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- Udemy: AWS Concepts
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- Datacamp: Unit Testing for Data Science in Python
- Pluralsight: Test-driven Development: The Big Picture
- Test Driven Development with Python
- Thoughtbot: Fundamentals of TDD
- Treehouse: Python Testing
- Udacity: Software Analysis & Testing
- Udacity: Software Testing
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- Book: A Byte of Python
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- Book: Dive into Python 3
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- Book: Python 201
- Book: Python Anti-Patterns
- Book: Real Python
- Book: The Python 3 Standard Library By Example
- Codecademy: Learn Python
- Cognitiveclass.ai: Python for Data Science
- Datacamp: Python for R Users
- Datacamp: Python for Spreadsheet Users
- Datacamp: Python for MATLAB Users
- Datacamp: Importing Data in Python (Part 1)
- Datacamp: Intermediate Python for Data Science
- Datacamp: Python Data Science Toolbox (Part 1)
- Datacamp: Python Data Science Toolbox (Part 2)
- Datacamp: Intro to Python for Finance
- Datacamp: Writing Efficient Python Code
- Datacamp: Writing Functions in Python
- Datacamp: Working with Dates and Times in Python
- edX: Introduction to Python for Data Science
- edX: Programming with Python for Data Science
- Google's Python Class
- Treehouse: Python Basics
- Treehouse: Python collections
- Treehouse: Date and Time
- Treehouse: CSV And JSON
- Treehouse: Functional Programming with Python
- Treehouse: Python Decorators
- Treehouse: Write Better Python
- Thoughtbot: Regular Expressions
- TheNewBoston: Python Programming Tutorials
- Udacity: Introduction to Python Programming
- Udacity: Programming Foundations with Python
- Udacity: What is Programming?
- Writing Idiomatic Python 3
- Codecademy: Learn Git
- Code School: Git Real
- Datacamp: Introduction to Git for Data Science
- Learn enough git to be dangerous
- Thoughtbot: Mastering Git
- Treehouse: Git Basics
- Udacity: GitHub & Collaboration
- Udacity: How to Use Git and GitHub
- Udacity: Version Control with Git
- Book: Hello Web App
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- Book: Refactoring UI
- Codecademy: HTML Projects
- Codecademy: Learn HTML
- Codecademy: Learn Color Design
- Codecademy: Learn SASS
- Codecademy: Make a website
- Codecademy: Learn ReactJS: Part I
- Codecademy: Learn ReactJS: Part II
- Codecademy: Learn JavaScript
- Codecademy: Jquery Track
- Codecademy: Learn Ruby
- Code School: Fundamentals of Design
- Code School: Blasting Off with Bootstrap
- Django Best Practices
- (ES6) - Beau teaches JavaScript
- Launch School: Introduction to HTTP
- Pluralsight: UX Fundamentals
- Pluralsight: HTML, CSS, and JavaScript: The Big Picture
- Pluralsight: CSS Positioning
- Pluralsight: Introduction to CSS
- Pluralsight: CSS: Specificity, the Box Model, and Best Practices
- Pluralsight: CSS: Using Flexbox for Layout
- Pluralsight: Using The Chrome Developer Tools
- Thoughtbot: Design for Developers
- Treehouse: Django Basics
- Treehouse: Customizing Django Templates
- Treehouse: HTML
- Treehouse: Javascript Booleans
- Udacity: Authentication & Authorization: OAuth
- Udacity: Designing RESTful APIs
- Udacity: Client-Server Communication
- Udacity: ES6 - JavaScript Improved
- Udacity: Intro to Javascript
- Udacity: Object Oriented JS 1
- Udacity: Object Oriented JS 2
- Udemy: Understanding Typescript
- Codecademy: Big O
- Crashcourse: Computer Science
- Grokking Algorithms
- Khan Academy: Data Structures
- Tech Interview Handbook
- Udacity: Computer Networking
- Udacity: Intro to Algorithms
- Udacity: Intro to Computer Science
- Udacity: Intro to Operating Systems
- Udacity: Intro to Theoretical Computer Science
- Udacity: Programming Languages
- Udacity: Networking for Web Developers
- Launch School: Agile Planning
- Pluralsight: Product Owner Fundamentals
- Pluralsight: Scrum Master Fundamentals - Foundations
- Pluralsight: Security Awareness: Basic Concepts and Terminology
- Pluralsight: Secure Software Development
- Pluralsight: Clean Architecture: Patterns, Practices, and Principles
- Thoughtbot: Software Development Process
- Thoughtbot: Refactoring
- Udacity: Design of Computer Programs
- Udacity: Product Design
- Udacity: Rapid Prototyping
- Udacity: Software Architecture and Design
- Udacity: Software Development Process
- Udacity: Full Stack Foundations
- Datacamp: Preparing for Statistics Interview Questions in Python
- Datacamp: Preparing for Coding Interview Questions in Python
- Udacity: Optimize your GitHub
- Udacity: Strengthen Your LinkedIn Network & Brand
- Udacity: Data Science Interview Prep
- Udacity: Full-Stack Interview Prep
- Udacity: Front-End Interview Prep
- Udacity: Refresh Your Resume
- Udacity: Craft Your Cover Letter
- Udacity: Technical Interview