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Tensorflow: Machine Learning and AI Basics in 60 Minutes

Mastering Machine Learning Basics in 60 Minutes: From Data Prep to Model Deployment in TensorFlow

     
  • 4.8
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  • Reviews ( 2 )
₹1299

This Course Includes

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  • icon4.8 (2 reviews )
  • icon1.5 total hours
  • iconenglish
  • iconOnline - Self Paced
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  • iconUdemy

About Tensorflow: Machine Learning and AI Basics in 60 Minutes

In this intensive one-hour course, you’ll dive headfirst into the world of machine learning using TensorFlow and Google Colab. No pit stops—just pure acceleration!

What You’ll Cover:

TensorFlow Basics: Understand the core concepts, from defining layers to training models.

Google Colab Mastery: Leverage Colab’s cloud-based environment for seamless development.

Data Prep Express: Quickly preprocess your data without detours.

Model Construction: Design and build neural networks like a seasoned pro.

Training and Evaluation: Witness your model learn, iterate, and fine-tune for optimal performance.

Why Take This Course?

Speedy Results: Get up to speed in just one hour.

Practical Skills: Apply what you learn to real-world problems.

No Pit Stops: We’re all about efficiency here!

Prerequisites:

Basic Python knowledge (if you can write a for loop, you’re set!)

Curiosity and a dash of determination

Ready to accelerate your ML journey? Buckle up!

Whether you’re a data enthusiast, a developer, or a curious learner, this course is your express ticket to mastering machine learning essentials. Let’s hit the road!

Your course instructor is me Adam Cole, a professional software engineer with 5 years working on enterprise level applications. Feel free to send me any questions on LinkedIn at Adam Cole Adam Cole BSc MBCS.

What You Will Learn?

  • Build a machine learning model.
  • Understand data preprocessing.
  • Understand the architecture of a model.
  • Understand the process behind training a model.