Hunyuan Multimodal Applications: Practical Labs for Image, 3D, and Video Training Course
Hunyuan Multimodal Applications is a hands-on course designed for building enterprise-ready workflows focused on image, 3D, and video generation.
This instructor-led training, available online or onsite, targets intermediate developers, technical product teams, and AI practitioners keen on leveraging Hunyuan models to establish prompt-to-asset workflows, evaluate multimodal outputs, and integrate these capabilities into business applications.
Upon completion of this training, participants will be able to:
- Describe the core capabilities and typical use cases of Hunyuan for image, 3D, and video workflows.
- Construct practical generation pipelines, from prompt design through to output review.
- Deliver multimodal outputs via straightforward applications or APIs.
- Integrate Hunyuan outputs into product, content, and review processes.
Course Format
- Interactive lectures and discussions.
- Guided exercises and practical practice.
- Hands-on implementation within a live lab environment.
Course Customization Options
- To arrange a tailored training session for this course, please contact us.
Course Outline
Hunyuan Multimodal Foundations and Lab Setup
- Understanding Hunyuan's multimodal capabilities for image, 3D, and video use cases.
- Identifying practical business scenarios for creative, product, and content teams.
- Preparing the lab environment, sample assets, and model access.
- Running initial generation tasks and reviewing outputs.
Prompt Design and Workflow Patterns
- Structuring prompts for consistent multimodal results.
- Working with text prompts, reference images, and basic input settings.
- Selecting appropriate workflows for image, video, or 3D generation.
- Iterating prompts based on output quality and business intent.
Image Generation and Review Labs
- Creating marketing, product, and concept images from prompts.
- Refining visual style, composition, and content consistency.
- Reviewing outputs for usefulness, quality, and brand fit.
- Organizing image outputs for approval and downstream use.
Video Generation Labs
- Creating short video outputs from prompts and prepared inputs.
- Controlling style, scene intent, and output variation.
- Reviewing videos for clarity, continuity, and practical use.
- Preparing video outputs for demonstration or content workflows.
3D Asset Creation Labs
- Generating basic 3D assets from text or image inputs.
- Checking geometry, texture quality, and asset usability.
- Exporting assets for visualization, prototyping, or content pipelines.
- Comparing when 3D generation is appropriate versus image or video workflows.
Integration, Governance, and Next Steps
- Delivering generated assets through simple apps, services, or APIs.
- Connecting multimodal outputs to product, content, and review workflows.
- Applying practical checks for quality, brand safety, copyright, and responsible use.
- Planning pilot use cases and next steps for internal adoption.
Requirements
- Fundamental understanding of AI and generative AI concepts.
- Experience using web applications, APIs, or standard developer tools.
- Basic proficiency in Python or scripting.
Audience
- Developers creating AI-enabled product features.
- Technical product managers and solution architects.
- Innovation, media, and digital teams working with image, video, or 3D content.
Open Training Courses require 5+ participants.
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Provisional Upcoming Courses (Require 5+ participants)
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