TensorFlow

From Sinfronteras
Revision as of 21:33, 10 April 2023 by Adelo Vieira (talk | contribs)
Jump to: navigation, search



TensorFlow is an open-source software library developed by Google for machine learning and artificial intelligence. It was first released in 2015. TensorFlow is primarily designed for deep learning, and usually referred to as a library for deep learning, but it can also be used for traditional machine learning tasks.

It supports a variety of programming languages, including Python, C++, and Java, and can be used for a range of machine learning tasks, including image and speech recognition, natural language processing, and predictive analytics.



Other learning materials apart from https://www.tensorflow.org/learn include:

https://www.coursera.org/professional-certificates/tensorflow-in-practice
https://github.com/golamSaroar/tensorflow-in-practice-specialization
https://www.udacity.com/course/intro-to-tensorflow-for-deep-learning--ud187
  • Udemy: TensorFlow Developer Certificate in 2023: Zero to Mastery
https://www.udemy.com/course/tensorflow-developer-certificate-machine-learning-zero-to-mastery/


TensorFlow certification:
https://www.tensorflow.org/certificate

Before you take the exam, please review our Candidate Handbook: https://www.tensorflow.org/static/extras/cert/TF_Certificate_Candidate_Handbook.pdf


Google provides a certification program for TensorFlow called the "TensorFlow Developer Certificate". This certification program is designed to test and validate your knowledge and skills in developing and deploying TensorFlow models for real-world applications.

The TensorFlow Developer Certificate exam is a computer-based exam that includes a combination of multiple-choice and coding questions.

To take the exam and earn the certification, you must pay a fee. As of my knowledge cut-off in September 2021, the fee for the exam was $100 USD.



Udemy: TensorFlow Developer Certificate in 2023: Zero to Mastery

https://www.udemy.com/course/tensorflow-developer-certificate-machine-learning-zero-to-mastery/

Private online classroom: https://discord.com/channels/423464391791476747/423466983208779776



All Course Resources + Notebooks

Throughout the course there will be various links to different resources, however, one will be your source of truth.


Inside the GitHub/book will find a "Course materials" table that contains all of the materials you'll need for the course, including:

  • Lessons in code & text: all videos are based on these notebooks, refer to them for code and text-based explanations of different deep learning and TensorFlow concepts.
  • Lessons in code & text (from the videos): notebooks containing the exact code we'll be writing together during the videos.
  • Slides: all slides and images used to explain different concepts throughout the course.
  • Exercises & extra-curriculum: each section comes with a series of challenges and extra resources to help you practice your skills and learn more.


But possibly the most important out of all of the above will be the GitHub Discussions tab: https://github.com/mrdbourke/tensorflow-deep-learning/discussions

If you have any questions, ideas, feedback or concerns, feel free to start a discussion thread, that way Daniel (the one writing this), Andrei and other students can read and offer help.

Daniel (@mrdbourke on Discord)