Get in Touch

Course Outline

Introduction

  • Comparing ML Kit with TensorFlow and other machine learning services.
  • Overview of ML Kit features and core components.

Getting Started

  • Setting up the ML Kit SDK.
  • Exploring APIs and sample applications.

Implementing ML Kit Vision APIs

  • Automating data entry through Text Recognition.
  • Detecting faces for selfies and portraits using Face Detection.
  • Interpreting body positions via Pose Detection.
  • Adding background effects with Selfie Segmentation.
  • Integrating Barcode Scanning capabilities.
  • Identifying objects, locations, species, etc., through Image Labeling.
  • Locating prominent objects in images via Object Detection and Tracking.
  • Recognizing handwritten text using Digital Ink Recognition.

Working with Natural Language APIs

  • Identifying languages.
  • Translating texts.
  • Generating smart replies.
  • Utilizing entity extraction.

Optimizing Existing Apps with ML Kit

  • Using custom models with ML Kit.
  • Migrating from Firebase to the latest ML Kit SDK.
  • Migrating from Mobile Vision to the ML Kit SDK.
  • Reducing application size for deployment.
  • Refactoring apps to utilize dynamic feature modules.

Troubleshooting Tips

Summary and Next Steps

Requirements

  • A foundational understanding of machine learning principles.
  • Prior experience in mobile application development.

Target Audience

  • Software Engineers.
  • Mobile Application Developers.
 14 Hours

Related Categories