Thank you for sending your enquiry! One of our team members will contact you shortly.
Thank you for sending your booking! One of our team members will contact you shortly.
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