TensorFlow Developer Certificate

A complete exam prep course with hands-on coding practice for the TensorFlow Developer Certificate. This certification requires building and training models in a PyCharm-based Jupyter environment within 5 hours. We cover every exam category — regression, CNNs, NLP, and time series — with practice models that mirror the actual exam format.

7
Lessons
Python & TensorFlow
🕑
Self-Paced
100%
Free

Your Learning Path

Follow these lessons in order for complete TensorFlow Developer Certificate preparation, or jump to any exam category.

What You'll Learn

By the end of this course, you will be able to:

🧠

Build TensorFlow Models

Create dense, convolutional, and recurrent neural networks using tf.keras Sequential and Functional APIs for any exam category.

💻

Train & Evaluate Models

Compile models with appropriate loss functions and optimizers, use callbacks for early stopping, and evaluate with correct metrics.

📈

Handle Real Datasets

Load, preprocess, and augment data for images, text, and time series using tf.data pipelines and built-in TensorFlow datasets.

Pass the Exam

Manage your time across 5 hours, avoid common pitfalls, submit models in the correct format, and score above the passing threshold.