We may earn an affiliate commission when you visit our partners.
Google Cloud

This course covers designing and building a TensorFlow input data pipeline, building ML models with TensorFlow and Keras, improving the accuracy of ML models, writing ML models for scaled use, and writing specialized ML models.

Read more

This course covers designing and building a TensorFlow input data pipeline, building ML models with TensorFlow and Keras, improving the accuracy of ML models, writing ML models for scaled use, and writing specialized ML models.

This course covers designing and building a TensorFlow input data pipeline, building ML models with TensorFlow and Keras, improving the accuracy of ML models, writing ML models for scaled use, and writing specialized ML models.

Enroll now

Here's a deal for you

We found an offer that may be relevant to this course.
Save money when you learn. All coupon codes, vouchers, and discounts are applied automatically unless otherwise noted.

What's inside

Syllabus

Introduction to the Course
Introduction to the TensorFlow Ecosystem
Design and Build an Input Data Pipeline
Building Neural Networks with the TensorFlow and Keras API
Read more
Training at Scale with Vertex AI
Summary

Good to know

Know what's good
, what to watch for
, and possible dealbreakers
Taught by Google Cloud, who are well-known for work in their field
Examines TensorFlow, Keras, and Vertex AI, which are highly relevant in industry
Develops experience with TensorFlow, which is a foundational technology and respected in industry
Covers building TensorFlow input data pipelines, which is a core skill in the field
Develops specialized ML models, which is a valuable skill for many technical roles
Teaches ML model accuracy improvement, which is critical in production use

Save this course

Save TensorFlow on Google Cloud to your list so you can find it easily later:
Save

Activities

Be better prepared before your course. Deepen your understanding during and after it. Supplement your coursework and achieve mastery of the topics covered in TensorFlow on Google Cloud with these activities:
Develop a TensorFlow project
Apply your TensorFlow skills to solve a real-world problem.
Show steps
  • Define a problem statement and identify the relevant dataset.
  • Design and implement a TensorFlow model to address the problem.
  • Train and evaluate the model, iteratively refining its performance.
  • Deploy the model and monitor its effectiveness.
Show all one activities

Career center

Learners who complete TensorFlow on Google Cloud will develop knowledge and skills that may be useful to these careers:
Data Scientist
A Data Scientist builds, trains, and evaluates machine learning models. To be successful, this career requires a strong foundation in designing and building data pipelines and ML models. This course provides the key knowledge for building and evaluating machine learning models with TensorFlow and Keras, which every Data Scientist must know.
Data Engineer
A Data Engineer designs and builds scalable data pipelines to store, process, and analyze large datasets. To be successful, this career requires a deep understanding of data pipelines and how to build them in a scalable manner. This course helps build a foundation in designing and building scalable data pipelines using TensorFlow.
Machine Learning Engineer
A Machine Learning Engineer deploys and maintains ML models in production. To be successful, this career requires a strong foundation in building and deploying ML models. This course helps build a foundation in building, deploying, and maintaining ML models with TensorFlow and Keras.
Software Engineer
A Software Engineer designs, develops, and maintains software systems. To be successful, this career requires knowledge in software development and data science techniques. This course may be helpful in building a foundation in data science techniques and how to apply these techniques in software development.
ML Architect
A ML Architect designs and oversees the implementation of ML systems. To be successful, this career requires a deep understanding of ML models and how to design and implement them in a scalable manner. This course may be helpful in building a foundation in designing and implementing ML systems with TensorFlow.
Data Analyst
A Data Analyst analyzes data to extract insights and make recommendations. To be successful, this career requires knowledge in data analysis techniques, including machine learning. This course may be helpful in building a foundation in machine learning techniques and how these techniques can be used to extract insights and make recommendations from data.
Big Data Engineer
A Big Data Engineer designs and builds data pipelines to store and process large datasets. To be successful, this career requires a deep understanding of data pipelines and how to build them at scale. This course helps build a foundation in designing and building scalable data pipelines using TensorFlow.
Cloud Engineer
A Cloud Engineer designs and manages cloud infrastructure. To be successful, this career requires knowledge in cloud computing and data science techniques. This course may be helpful in building a foundation in data science techniques and how to apply these techniques in cloud computing.
Business Analyst
A Business Analyst analyzes business data to identify opportunities and solve problems. To be successful, this career requires knowledge in data analysis techniques, including machine learning. This course may be helpful in building a foundation in machine learning techniques and how these techniques can be used to analyze business data.
Product Manager
A Product Manager oversees the development and launch of software products. To be successful, this career requires knowledge in software development and data science techniques. This course may be helpful in building a foundation in data science techniques and how to apply these techniques in software product development.
Quant Analyst
A Quant Analyst applies mathematical and statistical techniques to analyze financial data. To be successful, this career requires a deep understanding of mathematical and statistical techniques, including machine learning. This course may be helpful in building a foundation in machine learning techniques and how these techniques can be used to analyze financial data.
Statistician
A Statistician analyzes data to draw conclusions and make predictions. To be successful, this career requires a deep understanding of mathematical and statistical techniques, including machine learning. This course may be helpful in building a foundation in machine learning techniques and how these techniques can be used to analyze data and make predictions.
Data Visualization Engineer
A Data Visualization Engineer designs and develops data visualizations to present data in a clear and concise manner. To be successful, this career requires knowledge in data visualization techniques and data science techniques. This course may be helpful in building a foundation in data science techniques and how to apply these techniques in data visualization.
Data Scientist (NLP)
A Data Scientist (NLP) specializes in applying machine learning techniques to natural language data. To be successful, this career requires a deep understanding of machine learning techniques and natural language processing techniques. This course may be helpful in building a foundation in machine learning techniques and how these techniques can be used to analyze natural language data.
Machine Learning Researcher
A Machine Learning Researcher develops new and improved machine learning algorithms and techniques. To be successful, this career requires a deep understanding of machine learning theory and a strong foundation in mathematics and computer science. This course may be helpful in building a foundation in machine learning theory and how to apply this theory to develop new and improved machine learning algorithms and techniques.

Reading list

We've selected eight books that we think will supplement your learning. Use these to develop background knowledge, enrich your coursework, and gain a deeper understanding of the topics covered in TensorFlow on Google Cloud.
Covers the fundamentals of deep learning and provides practical guidance on building and deploying deep learning models with Keras. A valuable resource for learners interested in applying deep learning to real-world problems.
Presents a coding-first approach to deep learning, leveraging the Fastai and PyTorch libraries. Suitable for learners with some programming experience who want to dive into practical ML model development.
Provides a concise introduction to TensorFlow and its applications in ML. Suitable for learners with limited programming experience or those seeking a quick overview of TensorFlow.
Introduces deep learning concepts through intuitive explanations and visual representations. Helpful for learners seeking a conceptual understanding of deep learning without excessive technical details.
Provides a gentle introduction to TensorFlow for beginners. It covers the basics of TensorFlow and how to use it to build and train simple neural networks.

Share

Help others find this course page by sharing it with your friends and followers:
Our mission

OpenCourser helps millions of learners each year. People visit us to learn workspace skills, ace their exams, and nurture their curiosity.

Our extensive catalog contains over 50,000 courses and twice as many books. Browse by search, by topic, or even by career interests. We'll match you to the right resources quickly.

Find this site helpful? Tell a friend about us.

Affiliate disclosure

We're supported by our community of learners. When you purchase or subscribe to courses and programs or purchase books, we may earn a commission from our partners.

Your purchases help us maintain our catalog and keep our servers humming without ads.

Thank you for supporting OpenCourser.

© 2016 - 2024 OpenCourser