BbgnsurfTech

ai-sdk-agents

@BbgnsurfTech/ai-sdk-agents
BbgnsurfTech
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Updated 1/6/2026
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orchestrating-multi-agent-systems: Orchestrate multi-agent systems with handoffs, routing, and workflows across AI providers. Use when building complex AI systems requiring agent collaboration, task delegation, or workflow coordination. Trigger with phrases like "create multi-agent system", "orchestrate agents", or "coordinate agent workflows".

Installation

$skills install @BbgnsurfTech/ai-sdk-agents
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Details

Pathplugins/claude-code-plugins-plus/plugins/ai-ml/ai-sdk-agents/skills/ai-sdk-agents/SKILL.md
Branchmain
Scoped Name@BbgnsurfTech/ai-sdk-agents

Usage

After installing, this skill will be available to your AI coding assistant.

Verify installation:

skills list

Skill Instructions


name: orchestrating-multi-agent-systems version: 1.0.0 description: | Orchestrate multi-agent systems with handoffs, routing, and workflows across AI providers. Use when building complex AI systems requiring agent collaboration, task delegation, or workflow coordination. Trigger with phrases like "create multi-agent system", "orchestrate agents", or "coordinate agent workflows". allowed-tools: Read, Write, Edit, Grep, Glob, Bash(npm:, node:) license: MIT

Prerequisites

Before using this skill, ensure you have:

  • Node.js 18+ installed for TypeScript agent development
  • AI SDK v5 package installed (npm install ai)
  • API keys for AI providers (OpenAI, Anthropic, Google, etc.)
  • Understanding of agent-based architecture patterns
  • TypeScript knowledge for agent implementation
  • Project directory structure for multi-agent systems

Instructions

Step 1: Initialize Project Structure

Set up the foundation for your multi-agent system:

  1. Create project directory with necessary subdirectories
  2. Initialize npm project with TypeScript configuration
  3. Install AI SDK v5 and provider-specific packages
  4. Set up configuration files for agent orchestration

Step 2: Define Agent Roles

Identify and specify specialized agents needed:

  • Determine agent responsibilities and capabilities
  • Define agent system prompts with clear instructions
  • Specify tools each agent can access
  • Establish agent communication protocols

Step 3: Implement Agents

Create individual agent files with proper configuration:

  1. Write agent initialization code with AI SDK
  2. Configure system prompts for agent behavior
  3. Define tool functions for agent capabilities
  4. Implement handoff rules for inter-agent delegation

Step 4: Configure Orchestration

Set up coordination between agents:

  • Define workflow sequences for task processing
  • Implement routing logic for task distribution
  • Configure handoff mechanisms between agents
  • Set up state management for multi-step workflows

Step 5: Test and Refine

Validate the multi-agent system functionality:

  • Test individual agent responses and behaviors
  • Verify handoff execution between agents
  • Validate routing logic with different input scenarios
  • Monitor coordination and identify bottlenecks

Output

The skill generates a complete multi-agent system including:

Project Structure

{baseDir}/
├── agents/
│   ├── coordinator.ts       # Main orchestration agent
│   ├── specialist-1.ts      # Domain-specific agent
│   ├── specialist-2.ts      # Domain-specific agent
│   └── [additional agents]
├── orchestration/
│   ├── workflow.ts          # Workflow definitions
│   ├── routing.ts           # Routing logic
│   └── handoffs.ts          # Handoff configurations
├── tools/
│   └── [agent tools]        # Shared tool implementations
├── config/
│   └── agents.config.ts     # Agent configurations
└── package.json             # Dependencies

Agent Implementation Files

  • TypeScript files with AI SDK v5 integration
  • System prompts tailored to each agent role
  • Tool definitions and implementations
  • Handoff rules and coordination logic

Orchestration Configuration

  • Workflow definitions for task sequences
  • Routing rules for intelligent task distribution
  • State management for multi-step processes
  • Error handling and fallback mechanisms

Documentation

  • Agent role descriptions and capabilities
  • Workflow diagrams showing agent interactions
  • API documentation for agent endpoints
  • Usage examples for common scenarios

Error Handling

Common issues and solutions:

Agent Initialization Failures

  • Error: AI SDK provider configuration invalid
  • Solution: Verify API keys in environment variables, check provider-specific setup requirements

Handoff Execution Errors

  • Error: Agent handoff fails or creates circular dependencies
  • Solution: Review handoff rules for clarity, implement handoff depth limits, add fallback agents

Routing Logic Failures

  • Error: Tasks routed to incorrect agent or no agent
  • Solution: Refine routing criteria, add default routing rules, implement topic classification improvement

Tool Access Violations

  • Error: Agent attempts to use unauthorized tools
  • Solution: Review tool permissions per agent, implement proper access control, validate tool configurations

Workflow Deadlocks

  • Error: Multi-agent workflow stalls without completion
  • Solution: Implement timeout mechanisms, add workflow monitoring, design escape conditions for stuck states

Resources

AI SDK Documentation

  • AI SDK v5 official documentation for agent creation
  • Provider-specific integration guides (OpenAI, Anthropic, Google)
  • Tool definition and implementation examples
  • Handoff and routing pattern references

Multi-Agent Architecture Patterns

  • Coordinator-worker pattern for task distribution
  • Pipeline pattern for sequential processing
  • Hub-and-spoke pattern for centralized coordination
  • Peer-to-peer pattern for collaborative agents

Agent Design Best Practices

  • Single responsibility principle for agent specialization
  • Clear handoff criteria and routing rules
  • Comprehensive error handling and fallbacks
  • State management for complex workflows
  • Testing strategies for multi-agent systems

Example Use Cases

  • Code generation pipelines with specialized agents
  • Customer support routing systems
  • Research and analysis workflows
  • Content creation and review pipelines
  • Data processing and validation systems

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