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Ai Agent Builder

claude-office-skills/skills
2.6k installs182 stars
Summary

Covers the full stack of building AI agents that can use tools, maintain conversation memory, and execute multi-step reasoning tasks. You get concrete patterns for ReAct workflows, different memory strategies (buffer, summary, vector, entity), and integration templates for ChatGPT, Claude, and Gemini. The architecture breakdowns are solid, showing how to handle context window management and when to use reactive versus reasoning agents. Built on n8n's workflow templates, so the Slack and webhook examples are production-ready rather than theoretical. Most useful when you're moving past simple prompt-and-response and need agents that can actually take actions or remember things across conversations.

Install to Claude Code

npx -y skills add claude-office-skills/skills --skill ai-agent-builder --agent claude-code

Installs into .claude/skills of the current project.

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Files
SKILL.mdView on GitHub

AI Agent Builder

Design and build AI agents with tools, memory, and multi-step reasoning capabilities. Covers ChatGPT, Claude, Gemini integration patterns based on n8n's 5,000+ AI workflow templates.

Overview

This skill covers:

  • AI agent architecture design
  • Tool/function calling patterns
  • Memory and context management
  • Multi-step reasoning workflows
  • Platform integrations (Slack, Telegram, Web)

AI Agent Architecture

Core Components

┌─────────────────────────────────────────────────────────────────┐
│                      AI AGENT ARCHITECTURE                       │
├─────────────────────────────────────────────────────────────────┤
│                                                                 │
│  ┌─────────────┐     ┌─────────────┐     ┌─────────────┐       │
│  │   Input     │────▶│   Agent     │────▶│   Output    │       │
│  │  (Query)    │     │   (LLM)     │     │  (Response) │       │
│  └─────────────┘     └──────┬──────┘     └─────────────┘       │
│                             │                                   │
│         ┌───────────────────┼───────────────────┐              │
│         │                   │                   │              │
│         ▼                   ▼                   ▼              │
│  ┌─────────────┐     ┌─────────────┐     ┌─────────────┐       │
│  │   Tools     │     │   Memory    │     │  Knowledge  │       │
│  │ (Functions) │     │  (Context)  │     │   (RAG)     │       │
│  └─────────────┘     └─────────────┘     └─────────────┘       │
│                                                                 │
└─────────────────────────────────────────────────────────────────┘

Agent Types

agent_types:
  reactive_agent:
    description: "Single-turn response, no memory"
    use_case: simple_qa, classification
    complexity: low
    
  conversational_agent:
    description: "Multi-turn with conversation memory"
    use_case: chatbots, support
    complexity: medium
    
  tool_using_agent:
    description: "Can call external tools/APIs"
    use_case: data_lookup, actions
    complexity: medium
    
  reasoning_agent:
    description: "Multi-step planning and execution"
    use_case: complex_tasks, research
    complexity: high
    
  multi_agent:
    description: "Multiple specialized agents collaborating"
    use_case: complex_workflows
    complexity: very_high

Tool Calling Pattern

Tool Definition

tool_definition:
  name: "get_weather"
  description: "Get current weather for a location"
  parameters:
    type: object
    properties:
      location:
        type: string
        description: "City name or coordinates"
      units:
        type: string
        enum: ["celsius", "fahrenheit"]
        default: "celsius"
    required: ["location"]
    
  implementation:
    type: api_call
    endpoint: "https://api.weather.com/v1/current"
    method: GET
    params:
      q: "{location}"
      units: "{units}"

Common Tool Categories

tool_categories:
  data_retrieval:
    - web_search: search the internet
    - database_query: query SQL/NoSQL
    - api_lookup: call external APIs
    - file_read: read documents
    
  actions:
    - send_email: send emails
    - create_calendar: schedule events
    - update_crm: modify CRM records
    - post_slack: send Slack messages
    
  computation:
    - calculator: math operations
    - code_interpreter: run Python
    - data_analysis: analyze datasets
    
  generation:
    - image_generation: create images
    - document_creation: generate docs
    - chart_creation: create visualizations

n8n Tool Integration

n8n_agent_workflow:
  nodes:
    - trigger:
        type: webhook
        path: "/ai-agent"
        
    - ai_agent:
        type: "@n8n/n8n-nodes-langchain.agent"
        model: openai_gpt4
        system_prompt: |
          You are a helpful assistant that can:
          1. Search the web for information
          2. Query our customer database
          3. Send emails on behalf of the user
          
        tools:
          - web_search
          - database_query
          - send_email
          
    - respond:
        type: respond_to_webhook
        data: "{{ $json.output }}"

Memory Patterns

Memory Types

memory_types:
  buffer_memory:
    description: "Store last N messages"
    implementation: |
      messages = []
      def add_message(role, content):
          messages.append({"role": role, "content": content})
          if len(messages) > MAX_MESSAGES:
              messages.pop(0)
    use_case: simple_chatbots
    
  summary_memory:
    description: "Summarize conversation periodically"
    implementation: |
      When messages > threshold:
          summary = llm.summarize(messages[:-5])
          messages = [summary_message] + messages[-5:]
    use_case: long_conversations
    
  vector_memory:
    description: "Store in vector DB for semantic retrieval"
    implementation: |
      # Store
      embedding = embed(message)
      vector_db.insert(embedding, message)
      
      # Retrieve
      relevant = vector_db.search(query_embedding, k=5)
    use_case: knowledge_retrieval
    
  entity_memory:
    description: "Track entities mentioned in conversation"
    implementation: |
      entities = {}
      def update_entities(message):
          extracted = llm.extract_entities(message)
          entities.update(extracted)
    use_case: personalized_assistants

Context Window Management

context_management:
  strategies:
    sliding_window:
      keep: last_n_messages
      n: 10
      
    relevance_based:
      method: embed_and_rank
      keep: top_k_relevant
      k: 5
      
    hierarchical:
      levels:
        - immediate: last_3_messages
        - recent: summary_of_last_10
        - long_term: key_facts_from_all
        
  token_budget:
    total: 8000
    system_prompt: 1000
    tools: 1000
    memory: 4000
    current_query: 1000
    response: 1000

Multi-Step Reasoning

ReAct Pattern

Thought: I need to find information about X
Action: web_search("X")
Observation: [search results]
Thought: Based on the results, I should also check Y
Action: database_query("SELECT * FROM Y")
Observation: [database results]
Thought: Now I have enough information to answer
Action: respond("Final answer based on X and Y")

Planning Agent

planning_workflow:
  step_1_plan:
    prompt: |
      Task: {user_request}
      
      Create a step-by-step plan to complete this task.
      Each step should be specific and actionable.
      
    output: numbered_steps
    
  step_2_execute:
    for_each: step
    actions:
      - execute_step
      - validate_result
      - adjust_if_needed
      
  step_3_synthesize:
    prompt: |
      Steps completed: {executed_steps}
      Results: {results}
      
      Synthesize a final response for the user.

Platform Integrations

Slack Bot Agent

slack_agent:
  trigger: slack_message
  
  workflow:
    1. receive_message:
        extract: [user, channel, text, thread_ts]
        
    2. get_context:
        if: thread_ts
        action: fetch_thread_history
        
    3. process_with_agent:
        model: gpt-4
        system: "You are a helpful Slack assistant"
        tools: [web_search, jira_lookup, calendar_check]
        
    4. respond:
        action: post_to_slack
        channel: "{channel}"
        thread_ts: "{thread_ts}"
        text: "{agent_response}"

Telegram Bot Agent

telegram_agent:
  trigger: telegram_message
  
  handlers:
    text_message:
      - extract_text
      - process_with_ai
      - send_response
      
    voice_message:
      - transcribe_with_whisper
      - process_with_ai
      - send_text_or_voice_response
      
    image:
      - analyze_with_vision
      - process_with_ai
      - send_response
      
    document:
      - extract_content
      - process_with_ai
      - send_response

Web Chat Interface

web_chat_agent:
  frontend:
    type: react_component
    features:
      - message_input
      - message_history
      - typing_indicator
      - file_upload
      
  backend:
    endpoint: "/api/chat"
    method: POST
    streaming: true
    
  session_management:
    method: jwt_token
    storage: redis
    ttl: 24_hours

Agent Templates

Customer Support Agent

support_agent:
  name: "Customer Support AI"
  model: gpt-4
  
  system_prompt: |
    You are a customer support agent for {company}.
    
    Guidelines:
    - Be helpful, professional, and empathetic
    - Use the knowledge base to answer questions
    - Escalate to human if you cannot help
    - Never make up information
    
    Available actions:
    - Search knowledge base
    - Look up customer account
    - Create support ticket
    - Escalate to human agent
    
  tools:
    - knowledge_search:
        description: "Search help articles"
    - customer_lookup:
        description: "Get customer account info"
    - create_ticket:
        description: "Create support ticket"
    - escalate:
        description: "Transfer to human agent"
        
  escalation_triggers:
    - sentiment: very_negative
    - keywords: ["speak to human", "manager", "complaint"]
    - failed_resolution: after_3_attempts

Research Agent

research_agent:
  name: "Research Assistant"
  model: claude-opus
  
  system_prompt: |
    You are a research assistant that helps users find 
    and synthesize information on any topic.
    
    Process:
    1. Understand the research question
    2. Plan search strategy
    3. Execute searches across multiple sources
    4. Synthesize findings
    5. Present with citations
    
  tools:
    - web_search
    - academic_search
    - news_search
    - wikipedia_lookup
    
  output_format:
    - executive_summary
    - key_findings
    - detailed_analysis
    - sources_cited

Output Example

Request: "Design an AI agent for appointment scheduling"

Output:

# Appointment Scheduling Agent Design

## Architecture

```yaml
agent:
  name: "Scheduling Assistant"
  model: gpt-4
  
  capabilities:
    - Check calendar availability
    - Book appointments
    - Send confirmations
    - Handle rescheduling
    - Answer FAQs

Tools Required

  1. calendar_check

    • Input: date_range, duration
    • Output: available_slots[]
  2. book_appointment

    • Input: datetime, customer_info, service_type
    • Output: confirmation_id
  3. send_notification

    • Input: type, recipient, details
    • Output: success/failure
  4. customer_lookup

    • Input: email or phone
    • Output: customer_record

Conversation Flow

User: "I'd like to book an appointment"
Agent: [Thought: Need to know service type and preferred time]
Agent: "I'd be happy to help! What service are you looking for, 
        and do you have a preferred date/time?"

User: "Haircut, next Tuesday afternoon"
Agent: [Action: calendar_check(date="next Tuesday", time="afternoon")]
Agent: "I have availability at 2pm, 3pm, and 4:30pm next Tuesday. 
        Which works best for you?"

User: "3pm please"
Agent: [Action: book_appointment(datetime="Tuesday 3pm", service="haircut")]
Agent: [Action: send_notification(type="confirmation", ...)]
Agent: "You're all set for a haircut at 3pm next Tuesday. 
        I've sent a confirmation to your email. See you then!"

n8n Implementation

workflow:
  - webhook_trigger: /schedule-chat
  - ai_agent:
      tools: [calendar, booking, notification]
  - respond_to_user

---

*AI Agent Builder Skill - Part of Claude Office Skills*
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Categories
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First SeenApr 16, 2026
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