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Build, debug, evaluate, and operate AI agents. The only SDK with fork-and-rerun Agent Replay.

Project description

FastAIAgent SDK

Build, debug, evaluate, and operate AI agents. The only SDK with Agent Replay — fork-and-rerun debugging for AI agents.

Works standalone or connected to the FastAIAgent Platform for visual editing, production monitoring, and team collaboration.

PyPI License Tests Python


Debug a failing agent in 30 seconds

from fastaiagent.trace import Replay

# Load a trace from a production failure
replay = Replay.load("trace_abc123")

# Step through to find the problem
replay.step_through()
# Step 3: LLM hallucinated the refund policy ← found it

# Fork at the failing step, fix, rerun
forked = replay.fork_at(step=3)
forked.modify_prompt("Always cite the exact policy section...")
result = forked.rerun()

No other SDK can do this.

Evaluate agents systematically

from fastaiagent.eval import evaluate

results = evaluate(
    agent_fn=my_agent.run,
    dataset="test_cases.jsonl",
    scorers=["correctness", "relevance"]
)
print(results.summary())
# correctness: 92% | relevance: 88%

Trace any agent — yours or LangChain/CrewAI

import fastaiagent
fastaiagent.integrations.langchain.enable()

# Your existing LangChain agent, now with full tracing
result = langchain_agent.invoke({"input": "..."})
# → Traces stored locally or pushed to FastAIAgent Platform

Build agents with guardrails and cyclic workflows

from fastaiagent import Agent, Chain, LLMClient, Guardrail
from fastaiagent.guardrail import no_pii, json_valid

agent = Agent(
    name="support-bot",
    system_prompt="You are a helpful support agent...",
    llm=LLMClient(provider="openai", model="gpt-4o"),
    tools=[search_tool, refund_tool],
    guardrails=[no_pii(), json_valid()]
)

# Chains with loops (retry until quality is good enough)
chain = Chain("support-pipeline", state_schema=SupportState)
chain.add_node("research", agent=researcher)
chain.add_node("evaluate", agent=evaluator)
chain.add_node("respond", agent=responder)
chain.connect("research", "evaluate")
chain.connect("evaluate", "research", max_iterations=3, exit_condition="quality >= 0.8")
chain.connect("evaluate", "respond", condition="quality >= 0.8")

result = chain.execute({"message": "My order is late"}, trace=True)

Multi-agent teams with context

from fastaiagent import Agent, LLMClient, RunContext, Supervisor, Worker, tool

@tool(name="get_tickets")
def get_tickets(ctx: RunContext[AppState], status: str) -> str:
    """Get support tickets for the current user."""
    return ctx.state.db.query("tickets", user_id=ctx.state.user_id, status=status)

support = Agent(name="support", llm=llm, tools=[get_tickets], system_prompt="Handle tickets.")
billing = Agent(name="billing", llm=llm, tools=[get_billing], system_prompt="Handle billing.")

supervisor = Supervisor(
    name="customer-service",
    llm=LLMClient(provider="openai", model="gpt-4o"),
    workers=[
        Worker(agent=support, role="support", description="Manages tickets"),
        Worker(agent=billing, role="billing", description="Handles billing"),
    ],
    system_prompt=lambda ctx: f"You lead support for {ctx.state.company}. Be helpful.",
)

# Context flows to all workers and their tools
ctx = RunContext(state=AppState(db=db, user_id="u-1", company="Acme"))
result = supervisor.run("Show my open tickets and billing", context=ctx)

# Stream the supervisor's response
async for event in supervisor.astream("Help me", context=ctx):
    if isinstance(event, TextDelta):
        print(event.text, end="")

Connect to FastAIAgent Platform (optional)

import fastaiagent as fa

fa.connect(api_key="fa-...", project="my-project")

# Traces automatically sent to platform dashboard
result = agent.run("Help me")

# Pull versioned prompts from platform
prompt = PromptRegistry().get("support-prompt")

# Publish eval results to platform
results = evaluate(agent, dataset=dataset)
results.publish()

SDK works standalone. Platform adds: production observability, prompt management, evaluation dashboards, team collaboration, HITL approval workflows.

Free tier available →


Install

pip install fastaiagent

With optional integrations:

pip install "fastaiagent[openai]"       # OpenAI auto-tracing
pip install "fastaiagent[langchain]"    # LangChain auto-tracing
pip install "fastaiagent[kb]"           # Local knowledge base
pip install "fastaiagent[all]"          # Everything

Documentation

Contributing

We welcome contributions! See CONTRIBUTING.md for guidelines.

License

Apache 2.0 — see LICENSE.

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