TensorFlow Extended (TFX) Training Course
TensorFlow Extended (TFX) serves as a comprehensive platform for deploying end-to-end production machine learning pipelines.
This instructor-led live training, available either online or onsite, is designed for data scientists aiming to transition from training individual ML models to deploying numerous models in a production environment.
Upon completion of this training, participants will be capable of:
- Installing and configuring TFX alongside necessary third-party tools.
- Utilizing TFX to build and oversee a complete machine learning production pipeline.
- Leveraging TFX components to perform modeling, training, inference serving, and deployment management.
- Deploying machine learning features across web applications, mobile apps, IoT devices, and other platforms.
Course Format
- Interactive lectures and discussions.
- Extensive exercises and practical sessions.
- Hands-on implementation within a live laboratory environment.
Customization Options
- For customized training requests, please contact us to arrange accordingly.
Course Outline
Introduction
Setting up TensorFlow Extended (TFX)
Overview of TFX Features and Architecture
Understanding Pipelines and Components
Working with TFX Components
Ingesting Data
Validating Data
Transforming a Data Set
Analyzing a Model
Feature Engineering
Training a Model
Orchestrating a TFX Pipeline
Managing Meta Data for ML Pipelines
Model Versioning with TensorFlow Serving
Deploying a Model to Production
Troubleshooting
Summary and Conclusion
Requirements
- Familiarity with DevOps concepts
- Experience in machine learning development
- Proficiency in Python programming
Audience
- Data scientists
- Machine learning engineers
- Operations engineers
Open Training Courses require 5+ participants.
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Testimonials (1)
Tomasz really know the information well and the course was well paced.
Raju Krishnamurthy - Google
Course - TensorFlow Extended (TFX)
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