muapi-workflow
muapi-workflow enables users to construct automated AI generation pipelines by chaining image generation, video creation, and editing operations into connected node graphs. The skill translates natural language descriptions into executable workflows, supports discovery of existing pipelines by intent, allows real-time workflow execution with input prompting, and provides full CRUD operations and visualization capabilities through command-line interfaces.
git clone --depth 1 https://github.com/SamurAIGPT/Generative-Media-Skills /tmp/muapi-workflow && cp -r /tmp/muapi-workflow/library/workflow ~/.claude/skills/muapi-workflowSKILL.md
# AI Workflow Builder Chain any combination of muapi.ai generation steps into automated pipelines. The AI architect converts your plain-language description into a runnable node graph. ## Prerequisites Always ensure the `muapi` CLI is up-to-date before running any commands. Reinstall from source at the start of every session: ```bash pip install --upgrade /path/to/muapi-cli ``` Replace `/path/to/muapi-cli` with the actual path to the `muapi-cli` directory in the workspace (the directory containing `pyproject.toml`). ## Core Operations 1. **Generate** (`generate-workflow.sh`) — AI architect creates a workflow from a description 2. **Discover** (`discover-workflow.sh`) — Find a relevant existing workflow by natural language 3. **Edit** (`generate-workflow.sh --workflow-id`) — Modify an existing workflow with a prompt 4. **Interactive Run** (`interactive-run.sh`) — Prompt for inputs and execute a workflow 5. **Run** (`run-workflow.sh`) — Execute a workflow, poll node-by-node, collect outputs 6. **CLI** (`muapi workflow`) — Full CRUD + visualization directly from the terminal --- ## Agent Guided Discovery & Selection As an AI agent, you have the ability to read and understand the purpose of available workflows to select the best one for the user's task (e.g., "create a UGC video"). 1. **Discover**: Fetch the catalog of available workflows and their descriptions in JSON format. ```bash muapi workflow discover --output-json ``` 2. **Match (Internal Reasoning)**: Use your LLM capabilities to analyze the `name`, `category`, and `description` fields of the returned workflows. Find the best match for the user's intent. 3. **Analyze**: If you find a promising candidate, inspect its structure to ensure it has the necessary nodes and parameters. ```bash muapi workflow get <workflow_id> ``` **CRITICAL RULE**: The output of `muapi workflow get` will include an "API Inputs" table. You MUST read this table to understand what inputs are required. 4. **Choose & Confirm & Prompt User**: - If one workflow is a perfect match, you MUST ask the user to provide the exact values for the required API inputs before executing it. **Never invent or guess input values (like prompts, URLs, etc.) on your own.** - If multiple workflows are highly relevant, present the options to the user with their descriptions and ask them to confirm which one to use, and also ask for the required inputs. - If no workflow matches the user's complex request, offer to **architect** a new one using `muapi workflow create`. ### Example Agent Reasoning > "The user wants a product promo video. I fetched the catalog using `discover`. I see two potential workflows: > 1. `wf_123`: 'Product promo with background music' > 2. `wf_456`: 'Simple video gen' > I will analyze `wf_123` with `get`. It has the required nodes. I will suggest `wf_123` or just run it if the match is precise." --- ## Protocol: Building a Workflow ### Step 1 — Describe your pipeline ```bash muapi workflow create "take a text prompt, generate an image with flux-dev, then upscale it to 4K" ``` The architect returns a workflow with a unique ID and a node graph. Save the ID. ### Step 2 — Inspect and visualize ```bash # Rich ASCII node graph in the terminal muapi workflow get <workflow_id> # Or raw JSON muapi workflow get <workflow_id> --output-json ``` ### Step 3 — Run it ```bash # Run with specific inputs muapi workflow execute <workflow_id> \ --input "node1.prompt=a glowing crystal cave at midnight" # Use --download to pull results locally muapi workflow execute <workflow_id> \ --input "node1.prompt=a sunset" \ --download ./outputs ``` ### Step 4 — Discovery (Optional) If you want to reuse an existing workflow instead of creating a new one: ```bash # Search by keywords muapi workflow discover "ugc video" ``` ### Step 5 — Interactive Execution Run a workflow and have the CLI prompt you for each required input: ```bash muapi workflow run-interactive <workflow_id> ``` --- ## Workflow Examples ### Image Pipelines ```bash # Text → Image → Upscale muapi workflow create "take a text prompt, generate with flux-dev, upscale the result" # Text → Image → Background removal → Product shot muapi workflow create "generate a product image with hidream, remove background, create professional product shot" ``` ### Video Pipelines ```bash # Text → Video muapi workflow create "generate a 10-second cinematic video from a text prompt using kling-master" # Image → Video → Lipsync muapi workflow create "animate an input image with seedance, then apply lipsync from an audio file" ``` --- ## Editing an Existing Workflow ```bash # Add a step muapi workflow edit <id> --prompt "add a face-swap step after the image generation" # Swap a model muapi workflow edit <id> --prompt "change the video model from kling to veo3" ``` --- ## CLI Reference ```bash # List all your workflows muapi workflow list # Browse templates muapi workflow templates # Generate new workflow muapi workflow create "text → flux image → upscale → face swap" # Visualize a workflow muapi workflow get <id> # Execute with inputs muapi workflow execute <id> --input "node1.prompt=a sunset" # Monitor a run muapi workflow status <run_id> # Get outputs muapi workflow outputs <run_id> --download ./results # Edit with AI muapi workflow edit <id> --prompt "add lipsync at the end" # Rename / delete muapi workflow rename <id> --name "Product Pipeline v2" muapi workflow delete <id> ``` --- ## MCP Tools (for AI agents) | Tool | Description | |------|-------------| | `muapi_workflow_list` | List user's workflows | | `muapi_workflow_create` | AI architect: prompt → workflow | | `muapi_workflow_get` | Get workflow definition + node graph | | `muapi_workflow_execute` | Run with specific inputs | | `muapi_workflow_status` | Node-by-node run status | | `muapi_workflow_outputs` | Final output URLs | --- ## Constraints - Workflows can contain any combination of muapi.ai no
Edit and enhance images and videos with AI via muapi.ai — prompt-based editing, upscaling, background removal, face swap, lipsync, video effects, and more
Generate AI images, videos, music, and audio from the terminal via muapi.ai — supports 100+ models including Flux, Midjourney v7, Kling 3.0, Veo3, and Suno V5
Setup and utility scripts for muapi.ai — configure API keys, test connectivity, and poll for async generation results
Turn a long video into N viral-ready short clips with a single managed API call. Wraps muapi.ai's `/ai-clipping` endpoint, which handles transcription, highlight ranking through a virality framework (hook / emotional peak / opinion bomb / revelation / conflict / quotable / story peak / practical value), overlap dedupe, and vertical face-tracking auto-crop server-side. No local Whisper, no local LLM, no GPU.
Transform a 2D logo into a premium 3D version and animate it with professional cinematic effects.
Generate a high-cut-density action / fight scene by first composing a 16-cell storyboard image, then driving Seedance 2.0 image-to-video off that storyboard. Stacks GPT-Image-2 (character sheet + storyboard), Nano-Banana-2 (environment concept), and Seedance 2.0 i2v.
Create a hilarious and ultra-realistic video of an anthropomorphic animal acting like a human vlogger in a real-world setting.
Generate a 15-second cinematic awards-ceremony video — a host announces a winner from the stage, a spotlight finds them in the crowd, they walk up to the podium, receive the award, and the LED display reveals their name and "THE BEST ACTOR".