Thomas Henson

  • Data Engineering Courses
    • Installing and Configuring Splunk
    • Implementing Neural Networks with TFLearn
    • Hortonworks Getting Started
    • Analyzing Machine Data with Splunk
    • Pig Latin Getting Started Course
    • HDFS Getting Started Course
    • Enterprise Skills in Hortonworks Data Platform
  • Pig Eval Series
  • About
  • Big Data Big Questions

Ultimate List of Tensorflow Resources for Machine Learning Engineers

January 14, 2021 by Thomas Henson Leave a Comment

Post first appeared on the Big Data Beard as Ultimate Lost of Tensorflow Resources for Machine Learning Engineers
Tensorflow is the most popular deep learning/machine learning framework right now. One of the biggest reasons for the popularity of Tensorflow (and my personal favorite) is the portability. A Machine Learning Engineer can create models using Tensorflow on their local machine then deploy those same models to 100s or 1000s of machines. Another reason for the popularity is because the Tensorflow is primarily used with Python. Developers both old and new having been shifting to Python for the last 10 years, which means there is a huge talent pool out there ready to develop in Tensorflow.
The Google Brain team is primarily responsible for releasing the first iterations of Tensorflow (DistBelief prior to release). In 2015 Google released Tensorflow to the open source community and the development has only continued at scale. Considering the importance and popularity of Tensorflow I thought it was a good idea to create a resource list for Tensorflow learning/training/research.

Tensorflow Resources

Course on Tensorflow

Run Tensorflow in 10 Minutes with TFLearn – TFLearn offers machine learning engineers the ability to build Tensorflow neural networks with minimal use of coding. In this course, Implementing Multi-layer Neural Networks with TFLearn, you’ll learn foundational knowledge and gain the ability to build Tensorflow neural networks. First, you’ll explore how deep learning is used to accelerate artificial intelligence. Next, you’ll discover how to build convolutional neural networks. Finally, you’ll learn how to deploy both deep and generative neural networks. When you’re finished with this course, you’ll have the skills and knowledge of deep learning needed to build the next generation of artificial intelligence.

Research Topics on Tensorflow

Tensorflow – Official site for all things Tensorflow including downloading and installing. Read through the documentation and getting started guide. For a 15 hour deep dive into Tensorflow go through the Machine Learning Crash Course. 15 hours sounds like a lot but break it up into 30 minutes a day for 30 days. After 30 days you’ll have more of an understanding of ML/DL with Tensorflow than most of the competition.
Tensorflow Source Code – At some point in your Tensorflow journey you may want to jump directly into the source code. Tensorflow is an open source project and like most popular open source projects it’s on GitHub.
Tensorflow Resources

Hands On Tensorflow Resources

Tensorflow Playground – Interactive Neural Network inside the browser. It allows you to train data from 4 different data sets. You can control features, neurons, learning rate, activation, regularization, etc. One of the easiest things to try is running the same data type through the different activations to see which is faster.
JavaScript Tensorflow? – At first glance I didn’t realize the potential of having a JavaScript Library for Tensorflow. What benefit would come from training models in the browsers? After playing around with some of the demos (Pac-Man) on Tensorflow.js I started to understand how this can open doors to better game develop, human-computer interaction, and more.
Hands-On Machine Learning with Scikit-Learn & Tensorflow – Shamelessly stole this recommendation from a colleague. Should this be on the list for the Big Data Beard Book Club? I think so!
Docker Tensorflow – Super simple way to get started using Tensorflow. Data Engineers can pull Docker tensorflow/tensorflow  then pick CPU or GPU to get started developing with Tensorflow. I’ll say it again….a super simple way to get up and coding with Tensorflow. Go download it right now!!
Tensorflow Resources

Tensorflow Resources Video

Why Tensorflow is Awesome for Machine Learning – Since I created this list I’m definitely going to put my video at the top of the Tensorflow video. In this video I breakdown Tensorflow was a monumental tool for Deep Learning and Machine Learning.
Siraj Raval YouTube – Siraj Raval has a huge following on his YouTube Channel which is all about Machine Learning, Artificial Intelligence, and Deep Learning concepts. Checkout his first video on Tensorflow in 5 minutes for a quick high level overview of Tensorflow. Then watch my favorite Tensorflow video of creating an image classifier for training a model to detect is this picture of Darth Vader or not.
What is missing? Do you have a suggestion for a resource that should be added? Make sure to put those suggestions for Tensorflow resources in the comment section below.

Want More Data Engineering Tips?

Sign up for my newsletter to be sure and never miss a post or YouTube Episode of Big Data Big Question where I answer questions from the community about Data Engineering questions.

Related

Filed Under: Tensorflow Tagged With: Machine Learning, Machine Learning Engineer, Tensorflow

Subscribe to Newsletter

Archives

  • February 2021 (2)
  • January 2021 (5)
  • May 2020 (1)
  • January 2020 (1)
  • November 2019 (1)
  • October 2019 (9)
  • July 2019 (7)
  • June 2019 (8)
  • May 2019 (4)
  • April 2019 (1)
  • February 2019 (1)
  • January 2019 (2)
  • September 2018 (1)
  • August 2018 (1)
  • July 2018 (3)
  • June 2018 (6)
  • May 2018 (5)
  • April 2018 (2)
  • March 2018 (1)
  • February 2018 (4)
  • January 2018 (6)
  • December 2017 (5)
  • November 2017 (5)
  • October 2017 (3)
  • September 2017 (6)
  • August 2017 (2)
  • July 2017 (6)
  • June 2017 (5)
  • May 2017 (6)
  • April 2017 (1)
  • March 2017 (2)
  • February 2017 (1)
  • January 2017 (1)
  • December 2016 (6)
  • November 2016 (6)
  • October 2016 (1)
  • September 2016 (1)
  • August 2016 (1)
  • July 2016 (1)
  • June 2016 (2)
  • March 2016 (1)
  • February 2016 (1)
  • January 2016 (1)
  • December 2015 (1)
  • November 2015 (1)
  • September 2015 (1)
  • August 2015 (1)
  • July 2015 (2)
  • June 2015 (1)
  • May 2015 (4)
  • April 2015 (2)
  • March 2015 (1)
  • February 2015 (5)
  • January 2015 (7)
  • December 2014 (3)
  • November 2014 (4)
  • October 2014 (1)
  • May 2014 (1)
  • March 2014 (3)
  • February 2014 (3)
  • January 2014 (1)
  • September 2013 (3)
  • October 2012 (1)
  • August 2012 (2)
  • May 2012 (1)
  • April 2012 (1)
  • February 2012 (2)
  • December 2011 (1)
  • September 2011 (2)

Tags

Agile AI Apache Pig Apache Pig Latin Apache Pig Tutorial ASP.NET AWS Big Data Big Data Big Questions Book Review Books Data Analytics Data Engineer Data Engineers Data Science Deep Learning DynamoDB Hadoop Hadoop Distributed File System Hadoop Pig HBase HDFS IoT Isilon Isilon Quick Tips Learn Hadoop Machine Learning Machine Learning Engineer Management Motivation MVC NoSQL OneFS Pig Latin Pluralsight Project Management Python Quick Tip quick tips Scrum Splunk Streaming Analytics Tensorflow Tutorial Unstructured Data

Follow me on Twitter

My Tweets

Recent Posts

  • Tips & Tricks for Studying Machine Learning Projects
  • Getting Started as Big Data Product Marketing Manager
  • What is a Chief Data Officer?
  • What is an Industrial IoT Engineer with Derek Morgan
  • Ultimate List of Tensorflow Resources for Machine Learning Engineers

Copyright © 2023 · eleven40 Pro Theme on Genesis Framework · WordPress · Log in

 

Loading Comments...