Udemy

TensorFlow for Deep Learning Bootcamp

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  • 86,230 Students
  • Updated 2/2025
  • Certificate Available
4.7
(12,353 Ratings)
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Course Information

Registration period
Year-round Recruitment
Course Level
Study Mode
Language
English
Taught by
Andrei Neagoie, Daniel Bourke
Certificate
  • Available
  • *The delivery and distribution of the certificate are subject to the policies and arrangements of the course provider.
Rating
4.7
(12,353 Ratings)
1 views

Course Overview

TensorFlow for Deep Learning Bootcamp

Learn TensorFlow by Google. Become an AI, Machine Learning, and Deep Learning expert!

Just launched with all modern best practices for building neural networks with TensorFlow and becoming a TensorFlow & Deep Learning Expert!

Join a live online community of over 900,000+ students and a course taught by a TensorFlow expert. This course will take you from absolute beginner with TensorFlow, to creating state-of-the-art deep learning neural networks.


TensorFlow experts earn up to $204,000 USD a year, with the average salary hovering around $148,000 USD. By taking this course you will be joining the growing Machine Learning industry and becoming a top paid TensorFlow Developer!

Here is a full course breakdown of everything we will teach (yes, it's very comprehensive, but don't be intimidated, as we will teach you everything from scratch!):

The goal of this course is to teach you all the skills necessary for you to become a top 10% TensorFlow Developer.


This course will be very hands on and project based. You won't just be staring at us teach, but you will actually get to experiment, do exercises, and build machine learning models and projects to mimic real life scenarios. By the end of it all, you will develop skillsets needed to develop modern deep learning solutions that big tech companies encounter.


0 — TensorFlow Fundamentals

  • Introduction to tensors (creating tensors)

  • Getting information from tensors (tensor attributes)

  • Manipulating tensors (tensor operations)

  • Tensors and NumPy

  • Using @tf.function (a way to speed up your regular Python functions)

  • Using GPUs with TensorFlow



1 — Neural Network Regression with TensorFlow

  • Build TensorFlow sequential models with multiple layers

  • Prepare data for use with a machine learning model

  • Learn the different components which make up a deep learning model (loss function, architecture, optimization function)

  • Learn how to diagnose a regression problem (predicting a number) and build a neural network for it



2 — Neural Network Classification with TensorFlow

  • Learn how to diagnose a classification problem (predicting whether something is one thing or another)

  • Build, compile & train machine learning classification models using TensorFlow

  • Build and train models for binary and multi-class classification

  • Plot modelling performance metrics against each other

  • Match input (training data shape) and output shapes (prediction data target)



3 — Computer Vision and Convolutional Neural Networks with TensorFlow

  • Build convolutional neural networks with Conv2D and pooling layers

  • Learn how to diagnose different kinds of computer vision problems

  • Learn to how to build computer vision neural networks

  • Learn how to use real-world images with your computer vision models



4 — Transfer Learning with TensorFlow Part 1: Feature Extraction

  • Learn how to use pre-trained models to extract features from your own data

  • Learn how to use TensorFlow Hub for pre-trained models

  • Learn how to use TensorBoard to compare the performance of several different models



5 — Transfer Learning with TensorFlow Part 2: Fine-tuning

  • Learn how to setup and run several machine learning experiments

  • Learn how to use data augmentation to increase the diversity of your training data

  • Learn how to fine-tune a pre-trained model to your own custom problem

  • Learn how to use Callbacks to add functionality to your model during training



6 — Transfer Learning with TensorFlow Part 3: Scaling Up (Food Vision mini)

  • Learn how to scale up an existing model

  • Learn to how evaluate your machine learning models by finding the most wrong predictions

  • Beat the original Food101 paper using only 10% of the data



7 — Milestone Project 1: Food Vision

  • Combine everything you've learned in the previous 6 notebooks to build Food Vision: a computer vision model able to classify 101 different kinds of foods. Our model well and truly beats the original Food101 paper.



8 — NLP Fundamentals in TensorFlow

  • Learn to:

    • Preprocess natural language text to be used with a neural network

    • Create word embeddings (numerical representations of text) with TensorFlow

    • Build neural networks capable of binary and multi-class classification using:

      • RNNs (recurrent neural networks)

      • LSTMs (long short-term memory cells)

      • GRUs (gated recurrent units)

      • CNNs

  • Learn how to evaluate your NLP models



9 — Milestone Project 2: SkimLit

  • Replicate a the model which powers the PubMed 200k paper to classify different sequences in PubMed medical abstracts (which can help researchers read through medical abstracts faster)



10 — Time Series fundamentals in TensorFlow

  • Learn how to diagnose a time series problem (building a model to make predictions based on data across time, e.g. predicting the stock price of AAPL tomorrow)

  • Prepare data for time series neural networks (features and labels)

  • Understanding and using different time series evaluation methods

    • MAE — mean absolute error

  • Build time series forecasting models with TensorFlow

    • RNNs (recurrent neural networks)

    • CNNs (convolutional neural networks)



11 — Milestone Project 3: (Surprise)

  • If you've read this far, you are probably interested in the course. This last project will be good... we promise you, so see you inside the course ;)



TensorFlow is growing in popularity and more and more job openings are appearing for this specialized knowledge. As a matter of fact, TensorFlow is outgrowing other popular ML tools like PyTorch in job market. Google, Airbnb, Uber, DeepMind, Intel, IBM, Twitter, and many others are currently powered by TensorFlow. There is a reason these big tech companies are using this technology and you will find out all about the power that TensorFlow gives developers.


We guarantee you this is the most comprehensive online course on TensorFlow. So why wait? Make yourself stand out by becoming a TensorFlow Expert and advance your career.


See you inside the course!

Course Content

  • 18 section(s)
  • 417 lecture(s)
  • Section 1 Introduction
  • Section 2 Deep Learning and TensorFlow Fundamentals
  • Section 3 Neural network regression with TensorFlow
  • Section 4 Neural network classification in TensorFlow
  • Section 5 Computer Vision and Convolutional Neural Networks in TensorFlow
  • Section 6 Transfer Learning in TensorFlow Part 1: Feature extraction
  • Section 7 Transfer Learning in TensorFlow Part 2: Fine tuning
  • Section 8 Transfer Learning with TensorFlow Part 3: Scaling Up
  • Section 9 Milestone Project 1: Food Vision Big™
  • Section 10 NLP Fundamentals in TensorFlow
  • Section 11 Milestone Project 2: SkimLit
  • Section 12 Time Series fundamentals in TensorFlow + Milestone Project 3: BitPredict
  • Section 13 Where To Go From Here?
  • Section 14 Appendix: Machine Learning Primer
  • Section 15 Appendix: Machine Learning and Data Science Framework
  • Section 16 Appendix: Pandas for Data Analysis
  • Section 17 Appendix: NumPy
  • Section 18 BONUS SECTION

What You’ll Learn

  • Build TensorFlow models using Computer Vision, Convolutional Neural Networks and Natural Language Processing
  • Complete access to ALL interactive notebooks and ALL course slides as downloadable guides
  • Increase your skills in Machine Learning, Artificial Intelligence, and Deep Learning
  • Understand how to integrate Machine Learning into tools and applications
  • Learn to build all types of Machine Learning Models using the latest TensorFlow 2
  • Build image recognition, text recognition algorithms with deep neural networks and convolutional neural networks
  • Using real world images to visualize the journey of an image through convolutions to understand how a computer “sees” information, plot loss and accuracy
  • Applying Deep Learning for Time Series Forecasting
  • Gain the skills you need to become a TensorFlow Developer
  • Be recognized as a top candidate for recruiters seeking TensorFlow developers


Reviews

  • A
    Anurag Chauhan
    5.0

    Just take the course.

  • J
    Jon Alpha
    4.5

    I took this course when Google offered TensorFlow Developer certification (which has since been discontinued), and will say the course was perfect for preparing me for it. I think this is one of the better courses on Udemy for diving into AI because you get hands on experience with building and fine tuning dozens of models. Other courses I tried did not nearly go into as much depth or train as many models as this course. Definitely worth the time.

  • P
    Patryk Głuszek
    4.5

    Part of the materials is outdated without mentioning how it is possible to fix it, make it up to date

  • A
    Alan Reid
    5.0

    Well presented course, with practical hands on projects showing how to use Tensorflow to generate AI models. Whilst a long course, it is worthwhile to persevere with, as will give you a thorough understanding in how to create Tensorflow models.

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