You are reading the article 10 Best Tensorflow Books You Should Read In 2023 updated in September 2023 on the website Speedmintonvn.com. We hope that the information we have shared is helpful to you. If you find the content interesting and meaningful, please share it with your friends and continue to follow and support us for the latest updates. Suggested October 2023 10 Best Tensorflow Books You Should Read In 2023
Best Books To Master TensorflowTensorFlow is one of Google’s most epic inventions, which has reduced the daunting process of implementing machine learning models for testing, training, and dishing out predictions for analysis. Learning about this open-source library will take you to the next level of your programming journey. So without further ado, here are the ten books in no particular order to satisfy your cravings for TensorFlow.
Key Highlights
Includes guidance for natural human language and usage of convents in image classifiers
Hands-on approach with detailed examples and key points about TensorFlow.
Provides a down-to-earth narrative and thorough details about TensorFlow
Covers the fundamental topics of TensorFlow ANN, autoencoder, and linear regression
Provides a fun and practical approach to learning TinyML with TensorFlow Lite
Provides a brilliant take on TensorFlow with concise, precise, and crystal-clear documentation of reading material
10 Must-Read Tensorflow BooksLet us look at the Tensorflow Books and see which one best suits your needs:-
1. Deep Learning with TensorFlow 2 and KerasAuthor: Antonio Gulli, Amita Kapoor, Sujit Pal
Get this book here
Book Review
Enter the world of deep learning with the aid of TensorFlow and Keras with this up-and-coming technical cum introductory guide. This version is easier to follow and implementable with much-improvised context.
Key Takeaways from that Book
It is ideal for Python developers and machine learning experts as it requires prior knowledge.
Further your learnings in neural network foundations with TensorFlow 2.0, word embeddings, and reinforcement learning.
Get the most out of automated Google tools, use convents in image classifiers, get deep learning guidance for natural human language, etc.
2. Learn TensorFlow 2.0: Implement Machine Learning and Deep Learning Models with PythonAuthor: Pramod Singh, Avinash Manure
Get this book here
Book Review
Making the exhaustive list of complex APIs in the ever-changing field of TensorFlow is a tough nut to crack, but this book makes it plausible by doing it just right. Proper implementation of code blocks revolved around developers while giving a brief overview of keras.
Key Takeaways from that Book
A practical, straightforward, and summarized book for learning new features of TensorFlow 2.0
Online documentation of this book’s code scripts is available on GitHub
Revisit the TensorFlow API to find NLP models in production, their use in Computer vision, etc.
3. Tensorflow in 1 DayAuthor: Krishna Rungta
Get this book here
Book Review
Get ready to learn through a hands-on approach, detailed illustrious examples, and critical points about TensorFlow. Unlike the title says, it is near impossible to learn TensorFlow in one day, but the book clears the basic concepts about the topics of AI/ML in a concise and gets to know the topics quickly.
Key Takeaways from that Book
Lays the fundamental topics of TensorFlow ANN, autoencoder with TensorFlow, and linear regression case study in a brief yet understandable way.
Learn TensorFlow basics, graph visualization, and jupyter notebook tutorial simply and effectively to stay fresh in your memory.
4 Machine Learning with TensorFlowAuthor: Nishant Shukla
Get this book here
Book Review
The narrative is very down to earth, easy to follow, and complete details about TensorFlow. Ready yourself with the technical know-how to practice the technical code blocks of TensorFlow. The reader wants pre-requisite Python and basic algebra knowledge for an immersive experience.
Be blown away by the auto-focus for machine learning described in this book, coupled with topics such as autoencoders, recurrent neural networks, and clustering data.
The highlights include seq2seq models, a broad-length introductory lesson on Ml, and utility landscapes, making the book excellent for beginners and budding developers.
5 TinyML: Machine Learning with TensorFlow Lite on Arduino and Ultra-Low-Power MicrocontrollersAuthor: Pete Warden , Daniel Situnayake
Get this book here
Book Review
Have a fun and practical approach to learning this new technology of TinyML with TensorFlow lite with the help of very low-cost equipment such as Arduino, Sparkfun, etc. This book can deliver intriguing examples, from learning simple regression models to creating a sine wave function and audio detection to a fully-fledged image classification model.
Key Takeaways from that Book
Achieve the working of cool and exciting embedded systems with the help of tinyML.
Optimize TensorFlow lite in designing a model architecture, importing dependencies, machine learning technologies, and many more.
6 TensorFlow Machine Learning ProjectsAuthor: Ankit Jain, Armando Fandango, Amita Kapoor
Get this book here
Book Review
A comprehensive guide to all ML enthusiasts looking to get their hands dirty with application-oriented programming in TensorFlow. Considered a lively book by many, the reader won’t regret using this book to get in-depth learnings on logistic regression, capsule networks, and real-life problems.
Key Takeaways from that Book
Find learning guides on object detection at a large scale with TensorFlow, TensorFlowOnSpark, understanding Bayesian deep learning, etc.
Dive deep into content, such as generating book scripts using LSTMs, playing Pacman with deep reinforcement learning, and sentiment analysis in your browser using TensorFlow.js.
7 Pro Deep Learning with TensorFlowAuthors: Santanu Pattanayak
Get this book here
Book Review
The author brings the book, an immersive guide for budding deep-learning enthusiasts. It includes a profound focus on math and the complex types of different learnings, which proves helpful in learning about the complicated maths behind the backpropagation used in DL models.
Key Takeaways from that Book
Provides an excellent section on gradient descent, MLE, recurrent neural networks, etc.
8 Practical Deep Learning for Cloud, Mobile, and EdgeGet this book here
Book Review
Get to know about the inside magic of creating deep learning models that have the power to create the next viral AI app. The book is infused with careful learning about fun and challenging projects to test your skill set and keep you occupied for the joyride it is.
Key Takeaways from that Book
Use 50+ practical tools for enhancing model accuracy, which scales to millions of users.
Develop computer vision models with Keras, core ML, and TensorFlow Lite and produce results on raspberry pi, jetson nano, etc.
9 Deep Learning: A Practitioner’s ApproachAuthor: Josh Patterson, Adam Gibson
Get this book here
Book Review
Key Takeaways from that Book
Helpful in getting to know about neural network fundamentals and mapping specific deep networks to the exact problem.
Walk through the fundamentals with data types like DataVec, and DL4J in Spark and Hadoop.
10 Building Machine Learning Pipelines: Automating Model Life Cycles with TensorFlowAuthor: Hannes Hapke, Catherine Nelson
Get this book here
Book Review
A brilliant take on TensorFlow with equal proportions of conciseness, preciseness, and crystal clear documentation of reading material perfectly blended with the practical know-how of pipelines with the help of TFX. Contains the material for both the development and automation of ML pipelines.
Key Takeaways from that Book
Orchestrate the varied TensorFlow models created using tensorflow serving or develop a pipeline using tensorflow extended.
Cover the concepts of data versioning, data preprocessing, and model serving in a robust and scalable methodology.
Recommended ArticlesOur Top 10 Tensorflow books compilation aims to be helpful to you. For more such Tensorflow books, EDUCBA recommends the following,
You're reading 10 Best Tensorflow Books You Should Read In 2023
Update the detailed information about 10 Best Tensorflow Books You Should Read In 2023 on the Speedmintonvn.com website. We hope the article's content will meet your needs, and we will regularly update the information to provide you with the fastest and most accurate information. Have a great day!