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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


Quickstart

from fastaiagent import Agent, LLMClient

# Create an LLM client
llm = LLMClient(provider="openai", model="gpt-4o")

# Create an agent
agent = Agent(
    name="my-agent",
    system_prompt="You are a helpful assistant.",
    llm=llm,
)

# Run it
result = agent.run("What is the capital of France?")
print(result.output)
print(result.trace_id)  # every run is traced — use this ID for replay/debugging

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)

Peer-to-peer swarms with handoffs

Beyond the central-coordinator Supervisor/Worker pattern, agents can hand off to each other directly:

from fastaiagent import Agent, LLMClient, Swarm

llm = LLMClient(provider="openai", model="gpt-4o-mini")

triage = Agent(name="triage", llm=llm, system_prompt="Hand off to the right specialist.")
coder = Agent(name="coder", llm=llm, system_prompt="Answer Python questions.")
writer = Agent(name="writer", llm=llm, system_prompt="Help with prose.")

swarm = Swarm(
    name="help_desk",
    agents=[triage, coder, writer],
    entrypoint="triage",
    handoffs={"triage": ["coder", "writer"], "coder": [], "writer": []},
)
result = swarm.run("How do I reverse a list in Python?")

The currently active agent decides when to transfer control — no central LLM. See docs/agents/swarm.md for the full guide, and Swarm vs Supervisor for when to pick which.

Long-term memory with composable blocks

Beyond a sliding window, layer static facts, a rolling summary, semantic recall, and fact extraction into one memory object:

from fastaiagent import Agent, LLMClient, ComposableMemory, AgentMemory
from fastaiagent import StaticBlock, SummaryBlock, VectorBlock, FactExtractionBlock
from fastaiagent.kb.backends.faiss import FaissVectorStore

llm = LLMClient(provider="openai", model="gpt-4o-mini")

agent = Agent(
    name="assistant",
    llm=llm,
    memory=ComposableMemory(
        blocks=[
            StaticBlock("User is Upendra. Prefers terse answers."),
            SummaryBlock(llm=llm, keep_last=10, summarize_every=5),
            VectorBlock(store=FaissVectorStore(dimension=384)),
            FactExtractionBlock(llm=llm, max_facts=100),
        ],
        primary=AgentMemory(max_messages=20),
    ),
)

VectorBlock works with any VectorStore (Qdrant / Chroma / custom). Write your own block by subclassing MemoryBlock with two methods. See docs/agents/memory.md.

Swap the KB storage layer

Default LocalKB ships with FAISS + BM25 + SQLite — zero setup. Point at Qdrant, Chroma, or your own backend with one kwarg:

from fastaiagent.kb import LocalKB
from fastaiagent.kb.backends.qdrant import QdrantVectorStore

kb = LocalKB(
    name="product-docs",
    search_type="vector",
    vector_store=QdrantVectorStore(
        url="http://localhost:6333",
        collection="product-docs",
        dimension=1536,
    ),
)
kb.add("docs/")
results = kb.search("refund policy", top_k=5)

Adapters shipped: FAISS, BM25, SQLite (defaults), Qdrant (fastaiagent[qdrant]), Chroma (fastaiagent[chroma]). Write your own against the VectorStore / KeywordStore / MetadataStore protocols — see docs/knowledge-base/backends.md.

Shape agent behavior with middleware

Compose pre/post model hooks and tool wrappers without subclassing Agent:

from fastaiagent import Agent, LLMClient, TrimLongMessages, RedactPII, ToolBudget

agent = Agent(
    name="controlled",
    llm=LLMClient(provider="openai", model="gpt-4o"),
    tools=[search_tool],
    middleware=[
        TrimLongMessages(keep_last=30),   # cap history size
        RedactPII(),                      # scrub emails/phones/SSNs both directions
        ToolBudget(max_calls=5),          # cooperatively stop after 5 tool calls
    ],
)

Write your own by subclassing AgentMiddleware and overriding before_model, after_model, or wrap_tool. See docs/agents/middleware.md for ordering, hook reference, and custom patterns.

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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