Claude-skill-registry atomic-agents
This skill should be used when the user asks to "create an agent", "configure AtomicAgent", "set up agent", "agent configuration", "AgentConfig", "ChatHistory", or needs guidance on agent initialization, model selection, history management, and agent execution patterns for Atomic Agents applications.
install
source · Clone the upstream repo
git clone https://github.com/majiayu000/claude-skill-registry
Claude Code · Install into ~/.claude/skills/
T=$(mktemp -d) && git clone --depth=1 https://github.com/majiayu000/claude-skill-registry "$T" && mkdir -p ~/.claude/skills && cp -r "$T/skills/data/atomic-agents" ~/.claude/skills/majiayu000-claude-skill-registry-atomic-agents && rm -rf "$T"
manifest:
skills/data/atomic-agents/SKILL.mdsource content
Atomic Agents Agent Configuration
The
AtomicAgent is the core class for LLM interactions in the Atomic Agents framework. It handles structured input/output, conversation history, and system prompt management.
Basic Agent Setup
import instructor import openai from atomic_agents.agents.base_agent import AtomicAgent, AgentConfig from atomic_agents.lib.components.system_prompt_generator import SystemPromptGenerator from atomic_agents.lib.components.chat_history import ChatHistory # 1. Create instructor-wrapped client client = instructor.from_openai(openai.OpenAI()) # 2. Configure the agent config = AgentConfig( client=client, model="gpt-4o-mini", history=ChatHistory(), system_prompt_generator=SystemPromptGenerator( background=["You are an expert assistant."], steps=["1. Analyze the input.", "2. Generate response."], output_instructions=["Be concise and helpful."], ), ) # 3. Create the agent with type parameters agent = AtomicAgent[InputSchema, OutputSchema](config=config)
AgentConfig Parameters
| Parameter | Type | Required | Description |
|---|---|---|---|
| Instructor client | Yes | Instructor-wrapped LLM client |
| str | Yes | Model identifier (e.g., "gpt-4o-mini") |
| ChatHistory | No | Conversation history manager |
| SystemPromptGenerator | No | System prompt configuration |
| BaseIOSchema | No | Override input schema |
| BaseIOSchema | No | Override output schema |
| dict | No | Additional API parameters |
LLM Provider Setup
OpenAI
import instructor import openai client = instructor.from_openai(openai.OpenAI(api_key=os.getenv("OPENAI_API_KEY"))) model = "gpt-4o-mini" # or "gpt-4o", "gpt-4-turbo"
Anthropic
import instructor import anthropic client = instructor.from_anthropic(anthropic.Anthropic(api_key=os.getenv("ANTHROPIC_API_KEY"))) model = "claude-sonnet-4-20250514"
Groq
import instructor from groq import Groq client = instructor.from_groq(Groq(api_key=os.getenv("GROQ_API_KEY")), mode=instructor.Mode.JSON) model = "llama-3.1-70b-versatile"
Ollama (Local)
import instructor import openai client = instructor.from_openai( openai.OpenAI(base_url="http://localhost:11434/v1", api_key="ollama") ) model = "llama3.1"
Agent Execution Methods
Synchronous
output = agent.run(InputSchema(message="Hello"))
Asynchronous
output = await agent.run_async(InputSchema(message="Hello"))
Streaming (Sync)
for partial in agent.run_stream(InputSchema(message="Hello")): print(partial) # Partial responses as they arrive
Streaming (Async)
async for partial in agent.run_async_stream(InputSchema(message="Hello")): print(partial)
ChatHistory Management
from atomic_agents.lib.components.chat_history import ChatHistory # Create history history = ChatHistory() # Use with agent config = AgentConfig(client=client, model=model, history=history) agent = AtomicAgent[InputSchema, OutputSchema](config=config) # Run multiple turns (history accumulates) agent.run(InputSchema(message="Hello")) agent.run(InputSchema(message="Tell me more")) # Reset history agent.reset_history() # Save/load history history_data = history.to_dict() new_history = ChatHistory.from_dict(history_data)
Context Providers
Dynamic context injection into system prompts:
from atomic_agents.lib.components.system_prompt_generator import BaseDynamicContextProvider class UserContextProvider(BaseDynamicContextProvider): def __init__(self): super().__init__(title="User Context") self.user_name = "" def get_info(self) -> str: return f"Current user: {self.user_name}" # Register with agent provider = UserContextProvider() agent.register_context_provider("user", provider) # Update context dynamically provider.user_name = "Alice" agent.run(input_data) # System prompt now includes user context
Token Counting
# Get token usage token_info = agent.get_context_token_count() print(f"Total: {token_info.total}") print(f"System prompt: {token_info.system_prompt}") print(f"History: {token_info.history}") print(f"Utilization: {token_info.utilization:.1%}")
Hooks for Monitoring
def on_response(response): print(f"Got response: {response}") def on_error(error): print(f"Error: {error}") agent.register_hook("completion:response", on_response) agent.register_hook("completion:error", on_error) agent.register_hook("parse:error", on_error)
Hook events:
- Before API callcompletion:kwargs
- After successful responsecompletion:response
- On API errorcompletion:error
- On parsing/validation errorparse:error
Model API Parameters
Pass additional parameters to the LLM:
config = AgentConfig( client=client, model="gpt-4o", model_api_parameters={ "max_tokens": 1000, "temperature": 0.7, "top_p": 0.9, }, )
Best Practices
- Always wrap with instructor - Required for structured outputs
- Use environment variables - Never hardcode API keys
- Initialize history when needed - Only if conversation state matters
- Type your agents -
for type safetyAtomicAgent[Input, Output] - Use streaming for long responses - Better user experience
- Monitor with hooks - Track errors and performance
- Reset history appropriately - Prevent context overflow
References
See
references/ for:
- Detailed provider configurationsmulti-provider.md
- Async and streaming patternsasync-patterns.md
See
examples/ for:
- Minimal agent setupbasic-agent.py
- Streaming implementationstreaming-agent.py