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Claude Skills Agent Designer

作者 Alireza Rezvani · GitHub ↗ · v1.0.0 · MIT-0
cross-platform ✓ 安全检测通过
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在 OpenClaw 中安装
/install claude-skills-agent-designer
功能描述
Use when the user asks to design multi-agent systems, create agent architectures, define agent communication patterns, or build autonomous agent workflows.
使用说明 (SKILL.md)

Agent Designer - Multi-Agent System Architecture

Tier: POWERFUL
Category: Engineering
Tags: AI agents, architecture, system design, orchestration, multi-agent systems

Overview

Agent Designer is a comprehensive toolkit for designing, architecting, and evaluating multi-agent systems. It provides structured approaches to agent architecture patterns, tool design principles, communication strategies, and performance evaluation frameworks for building robust, scalable AI agent systems.

Core Capabilities

1. Agent Architecture Patterns

Single Agent Pattern

  • Use Case: Simple, focused tasks with clear boundaries
  • Pros: Minimal complexity, easy debugging, predictable behavior
  • Cons: Limited scalability, single point of failure
  • Implementation: Direct user-agent interaction with comprehensive tool access

Supervisor Pattern

  • Use Case: Hierarchical task decomposition with centralized control
  • Architecture: One supervisor agent coordinating multiple specialist agents
  • Pros: Clear command structure, centralized decision making
  • Cons: Supervisor bottleneck, complex coordination logic
  • Implementation: Supervisor receives tasks, delegates to specialists, aggregates results

Swarm Pattern

  • Use Case: Distributed problem solving with peer-to-peer collaboration
  • Architecture: Multiple autonomous agents with shared objectives
  • Pros: High parallelism, fault tolerance, emergent intelligence
  • Cons: Complex coordination, potential conflicts, harder to predict
  • Implementation: Agent discovery, consensus mechanisms, distributed task allocation

Hierarchical Pattern

  • Use Case: Complex systems with multiple organizational layers
  • Architecture: Tree structure with managers and workers at different levels
  • Pros: Natural organizational mapping, clear responsibilities
  • Cons: Communication overhead, potential bottlenecks at each level
  • Implementation: Multi-level delegation with feedback loops

Pipeline Pattern

  • Use Case: Sequential processing with specialized stages
  • Architecture: Agents arranged in processing pipeline
  • Pros: Clear data flow, specialized optimization per stage
  • Cons: Sequential bottlenecks, rigid processing order
  • Implementation: Message queues between stages, state handoffs

2. Agent Role Definition

Role Specification Framework

  • Identity: Name, purpose statement, core competencies
  • Responsibilities: Primary tasks, decision boundaries, success criteria
  • Capabilities: Required tools, knowledge domains, processing limits
  • Interfaces: Input/output formats, communication protocols
  • Constraints: Security boundaries, resource limits, operational guidelines

Common Agent Archetypes

Coordinator Agent

  • Orchestrates multi-agent workflows
  • Makes high-level decisions and resource allocation
  • Monitors system health and performance
  • Handles escalations and conflict resolution

Specialist Agent

  • Deep expertise in specific domain (code, data, research)
  • Optimized tools and knowledge for specialized tasks
  • High-quality output within narrow scope
  • Clear handoff protocols for out-of-scope requests

Interface Agent

  • Handles external interactions (users, APIs, systems)
  • Protocol translation and format conversion
  • Authentication and authorization management
  • User experience optimization

Monitor Agent

  • System health monitoring and alerting
  • Performance metrics collection and analysis
  • Anomaly detection and reporting
  • Compliance and audit trail maintenance

3. Tool Design Principles

Schema Design

  • Input Validation: Strong typing, required vs optional parameters
  • Output Consistency: Standardized response formats, error handling
  • Documentation: Clear descriptions, usage examples, edge cases
  • Versioning: Backward compatibility, migration paths

Error Handling Patterns

  • Graceful Degradation: Partial functionality when dependencies fail
  • Retry Logic: Exponential backoff, circuit breakers, max attempts
  • Error Propagation: Structured error responses, error classification
  • Recovery Strategies: Fallback methods, alternative approaches

Idempotency Requirements

  • Safe Operations: Read operations with no side effects
  • Idempotent Writes: Same operation can be safely repeated
  • State Management: Version tracking, conflict resolution
  • Atomicity: All-or-nothing operation completion

4. Communication Patterns

Message Passing

  • Asynchronous Messaging: Decoupled agents, message queues
  • Message Format: Structured payloads with metadata
  • Delivery Guarantees: At-least-once, exactly-once semantics
  • Routing: Direct messaging, publish-subscribe, broadcast

Shared State

  • State Stores: Centralized data repositories
  • Consistency Models: Strong, eventual, weak consistency
  • Access Patterns: Read-heavy, write-heavy, mixed workloads
  • Conflict Resolution: Last-writer-wins, merge strategies

Event-Driven Architecture

  • Event Sourcing: Immutable event logs, state reconstruction
  • Event Types: Domain events, system events, integration events
  • Event Processing: Real-time, batch, stream processing
  • Event Schema: Versioned event formats, backward compatibility

5. Guardrails and Safety

Input Validation

  • Schema Enforcement: Required fields, type checking, format validation
  • Content Filtering: Harmful content detection, PII scrubbing
  • Rate Limiting: Request throttling, resource quotas
  • Authentication: Identity verification, authorization checks

Output Filtering

  • Content Moderation: Harmful content removal, quality checks
  • Consistency Validation: Logic checks, constraint verification
  • Formatting: Standardized output formats, clean presentation
  • Audit Logging: Decision trails, compliance records

Human-in-the-Loop

  • Approval Workflows: Critical decision checkpoints
  • Escalation Triggers: Confidence thresholds, risk assessment
  • Override Mechanisms: Human judgment precedence
  • Feedback Loops: Human corrections improve system behavior

6. Evaluation Frameworks

Task Completion Metrics

  • Success Rate: Percentage of tasks completed successfully
  • Partial Completion: Progress measurement for complex tasks
  • Task Classification: Success criteria by task type
  • Failure Analysis: Root cause identification and categorization

Quality Assessment

  • Output Quality: Accuracy, relevance, completeness measures
  • Consistency: Response variability across similar inputs
  • Coherence: Logical flow and internal consistency
  • User Satisfaction: Feedback scores, usage patterns

Cost Analysis

  • Token Usage: Input/output token consumption per task
  • API Costs: External service usage and charges
  • Compute Resources: CPU, memory, storage utilization
  • Time-to-Value: Cost per successful task completion

Latency Distribution

  • Response Time: End-to-end task completion time
  • Processing Stages: Bottleneck identification per stage
  • Queue Times: Wait times in processing pipelines
  • Resource Contention: Impact of concurrent operations

7. Orchestration Strategies

Centralized Orchestration

  • Workflow Engine: Central coordinator manages all agents
  • State Management: Centralized workflow state tracking
  • Decision Logic: Complex routing and branching rules
  • Monitoring: Comprehensive visibility into all operations

Decentralized Orchestration

  • Peer-to-Peer: Agents coordinate directly with each other
  • Service Discovery: Dynamic agent registration and lookup
  • Consensus Protocols: Distributed decision making
  • Fault Tolerance: No single point of failure

Hybrid Approaches

  • Domain Boundaries: Centralized within domains, federated across
  • Hierarchical Coordination: Multiple orchestration levels
  • Context-Dependent: Strategy selection based on task type
  • Load Balancing: Distribute coordination responsibility

8. Memory Patterns

Short-Term Memory

  • Context Windows: Working memory for current tasks
  • Session State: Temporary data for ongoing interactions
  • Cache Management: Performance optimization strategies
  • Memory Pressure: Handling capacity constraints

Long-Term Memory

  • Persistent Storage: Durable data across sessions
  • Knowledge Base: Accumulated domain knowledge
  • Experience Replay: Learning from past interactions
  • Memory Consolidation: Transferring from short to long-term

Shared Memory

  • Collaborative Knowledge: Shared learning across agents
  • Synchronization: Consistency maintenance strategies
  • Access Control: Permission-based memory access
  • Memory Partitioning: Isolation between agent groups

9. Scaling Considerations

Horizontal Scaling

  • Agent Replication: Multiple instances of same agent type
  • Load Distribution: Request routing across agent instances
  • Resource Pooling: Shared compute and storage resources
  • Geographic Distribution: Multi-region deployments

Vertical Scaling

  • Capability Enhancement: More powerful individual agents
  • Tool Expansion: Broader tool access per agent
  • Context Expansion: Larger working memory capacity
  • Processing Power: Higher throughput per agent

Performance Optimization

  • Caching Strategies: Response caching, tool result caching
  • Parallel Processing: Concurrent task execution
  • Resource Optimization: Efficient resource utilization
  • Bottleneck Elimination: Systematic performance tuning

10. Failure Handling

Retry Mechanisms

  • Exponential Backoff: Increasing delays between retries
  • Jitter: Random delay variation to prevent thundering herd
  • Maximum Attempts: Bounded retry behavior
  • Retry Conditions: Transient vs permanent failure classification

Fallback Strategies

  • Graceful Degradation: Reduced functionality when systems fail
  • Alternative Approaches: Different methods for same goals
  • Default Responses: Safe fallback behaviors
  • User Communication: Clear failure messaging

Circuit Breakers

  • Failure Detection: Monitoring failure rates and response times
  • State Management: Open, closed, half-open circuit states
  • Recovery Testing: Gradual return to normal operation
  • Cascading Failure Prevention: Protecting upstream systems

Implementation Guidelines

Architecture Decision Process

  1. Requirements Analysis: Understand system goals, constraints, scale
  2. Pattern Selection: Choose appropriate architecture pattern
  3. Agent Design: Define roles, responsibilities, interfaces
  4. Tool Architecture: Design tool schemas and error handling
  5. Communication Design: Select message patterns and protocols
  6. Safety Implementation: Build guardrails and validation
  7. Evaluation Planning: Define success metrics and monitoring
  8. Deployment Strategy: Plan scaling and failure handling

Quality Assurance

  • Testing Strategy: Unit, integration, and system testing approaches
  • Monitoring: Real-time system health and performance tracking
  • Documentation: Architecture documentation and runbooks
  • Security Review: Threat modeling and security assessments

Continuous Improvement

  • Performance Monitoring: Ongoing system performance analysis
  • User Feedback: Incorporating user experience improvements
  • A/B Testing: Controlled experiments for system improvements
  • Knowledge Base Updates: Continuous learning and adaptation

This skill provides the foundation for designing robust, scalable multi-agent systems that can handle complex tasks while maintaining safety, reliability, and performance at scale.

安全使用建议
Before installing, understand that this is a local code-and-template toolkit. Review and sanitize any real execution logs before running the evaluator, choose output prefixes that will not overwrite important files, and tighten the sample tool schemas before using them in a live agent, especially any document-processing, notification, scheduling, web, or data-analysis tools.
能力标签
requires-sensitive-credentials
能力评估
Purpose & Capability
The stated purpose is to design multi-agent systems, generate tool schemas, and evaluate agent logs. The included Python scripts match that purpose and operate on user-provided JSON inputs to produce local design, schema, and report files.
Instruction Scope
Some sample tool definitions are broad, including web search, data analysis, document processing, notifications, and scheduling. They are presented as examples for schema generation, not installed runtime tools, but users should narrow any generated schemas before use.
Install Mechanism
No package installation, dependency fetching, background setup, or autorun behavior was found. VirusTotal and static scan telemetry were clean.
Credentials
The scripts use local file reads and writes only, with no network calls, subprocess execution, credential-store access, or environment secret access observed. The evaluator may process sensitive execution logs if the user supplies them.
Persistence & Privilege
The CLIs write predictable local output files and can overwrite files matching the chosen output prefix. There is no background persistence, privilege escalation, or long-running worker behavior.
如何使用
  1. 确保已安装 OpenClaw(本地或 Docker 部署)
  2. 在对话框中输入安装命令:/install claude-skills-agent-designer
  3. 安装完成后,直接呼叫该 Skill 的名称或使用 /claude-skills-agent-designer 触发
  4. 根据 Skill 的参数说明提供必要输入,即可获得结构化输出
版本历史
v1.0.0
Agent Designer 1.0.0 - Initial release of Agent Designer: a toolkit for designing and evaluating multi-agent systems. - Supports popular agent architecture patterns, including Single Agent, Supervisor, Swarm, Hierarchical, and Pipeline patterns. - Provides frameworks for agent role definition, tool design principles, and robust error handling. - Covers agent communication strategies such as message passing, shared state, and event-driven architectures. - Includes security guardrails, human-in-the-loop processes, and evaluation frameworks for quality, cost, and latency. - Offers orchestration strategies for both centralized and decentralized multi-agent system workflows.
元数据
Slug claude-skills-agent-designer
版本 1.0.0
许可证 MIT-0
累计安装 0
当前安装数 0
历史版本数 1
常见问题

Claude Skills Agent Designer 是什么?

Use when the user asks to design multi-agent systems, create agent architectures, define agent communication patterns, or build autonomous agent workflows. 它是一个面向 Claude Code / OpenClaw 的 AI Agent Skill 插件,目前累计下载 39 次。

如何安装 Claude Skills Agent Designer?

在 OpenClaw 或 Claude Code 对话框中运行命令「/install claude-skills-agent-designer」即可一键安装,无需额外配置。

Claude Skills Agent Designer 是免费的吗?

是的,Claude Skills Agent Designer 完全免费,采用 MIT-0 许可证,可自由下载、安装和使用。

Claude Skills Agent Designer 支持哪些平台?

Claude Skills Agent Designer 跨平台运行,可在任意部署了 OpenClaw / Claude Code 的环境中使用(cross-platform)。

谁开发了 Claude Skills Agent Designer?

由 Alireza Rezvani(@alirezarezvani)开发并维护,当前版本 v1.0.0。

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