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A lightweight framework for building LLM-powered agents and composable state machines with pluggable backends.

Project description

FlatAgents

Define LLM agents in YAML. Run them anywhere.

For LLM/machine readers: see MACHINES.md for comprehensive reference.

Why?

  • Composition over inheritance — compose stateless agents and checkpointable machines
  • Compact structure — easy for LLMs to read and generate
  • Simple hook interfaces — escape hatches without complexity; webhook ready
  • Inspectable — every agent and machine is readable config
  • Language-agnostic — reduce code in any particular runtime
  • Common TypeScript interface — single schema for agents, single schema for machines
  • Limitations — machine topologies can get complex at scale

Inspired by Kubernetes manifests and character card specifications.

Core Concepts

Use machines to write flatagents and flatmachines, they are designed for LLMs.

Term What it is
FlatAgent A single LLM call: model + prompts + output schema
FlatMachine A state machine that orchestrates multiple agents, actions, and state machines

Use FlatAgent alone for simple tasks. Use FlatMachine when you need multi-step workflows, branching, or error handling.

Examples

Example What it demonstrates
helloworld Minimal setup — single agent, single state machine
writer_critic Multi-agent loop — writer drafts, critic reviews, iterates
story_writer Multi-step creative workflow with chapter generation
human_in_loop Pause execution for human approval via hooks
error_handling Error recovery and retry patterns at state machine level
dynamic_agent On-the-fly agent generation from runtime context
character_card Loading agent config from character card format
mdap MDAP voting execution — multi-sample consensus
gepa_self_optimizer Self-optimizing prompts via reflection and critique
research_paper_analysis Document analysis with structured extraction
multi_paper_synthesizer Cross-document synthesis with dynamic machine launching
support_triage_json JSON input/output with classification pipeline
parallelism Parallel machines, dynamic foreach, fire-and-forget launches

Quick Start

pip install flatagents[all]
from flatagents import FlatAgent

agent = FlatAgent(config_file="reviewer.yml")
result = await agent.call(query="Review this code...")
print(result.output)

Example Agent

reviewer.yml

spec: flatagent
spec_version: "0.0.0"

data:
  name: code-reviewer

  model:
    provider: openai
    name: gpt-4
    temperature: 0.3

  system: |
    You are a senior code reviewer. Analyze code for bugs, 
    style issues, and potential improvements.

  user: |
    Review this code:
    {{ input.code }}

  output:
    issues:
      type: list
      items:
        type: str
      description: "List of issues found"
    rating:
      type: str
      enum: ["good", "needs_work", "critical"]
      description: "Overall code quality"

What the fields mean:

  • spec/spec_version — Format identifier and version
  • data.name — Agent identifier
  • data.model — LLM provider, model name, and parameters
  • data.system — System prompt (sets behavior)
  • data.user — User prompt template (uses Jinja2, {{ input.* }} for runtime values)
  • data.output — Structured output schema (the runtime extracts these fields)

Output Types

output:
  answer:      { type: str }
  count:       { type: int }
  score:       { type: float }
  valid:       { type: bool }
  raw:         { type: json }
  items:       { type: list, items: { type: str } }
  metadata:    { type: object, properties: { key: { type: str } } }

Use enum: [...] to constrain string values.

Multi-Agent Workflows

For orchestration, use FlatMachine (full docs in MACHINES.md):

from flatagents import FlatMachine

machine = FlatMachine(config_file="workflow.yml")
result = await machine.execute(input={"query": "..."})

FlatMachine provides: state transitions, conditional branching, loops, retry with backoff, and error recovery—all in YAML.

Features

  • Checkpoint and restore
  • Python SDK (TypeScript SDK in progress)
  • MACHINES.md — LLM-optimized reference docs
  • Decider agents and machines
  • On-the-fly agent and machine definitions
  • Webhook hooks for remote state machine handling
  • Metrics and logging
  • Error recovery and exception handling at the state machine level
  • Parallel machine execution (machine: [a, b, c])
  • Dynamic parallelism with foreach
  • Fire-and-forget launches for background tasks

Planned

  • Distributed execution — cross-network machine peering, inter-machine strategies
  • SQL persistence backend
  • TypeScript SDK
  • max_depth config to limit machine launch nesting
  • Checkpoint pruning to prevent storage explosion
  • $root/ path prefix — resolve agent/machine refs from workspace root, not config dir
  • Input size validation — warn when prompt exceeds model context window
  • Serialization warnings — flag non-JSON-serializable context values before checkpoint

Specs

TypeScript definitions are the source of truth:

Python SDK

pip install flatagents[litellm]

LLM Backends

from flatagents import LiteLLMBackend, AISuiteBackend

# LiteLLM (default)
agent = FlatAgent(config_file="agent.yml")

# AISuite
backend = AISuiteBackend(model="openai:gpt-4o")
agent = FlatAgent(config_file="agent.yml", backend=backend)

Hooks

Extend machine behavior with Python hooks:

from flatagents import FlatMachine, MachineHooks

class CustomHooks(MachineHooks):
    def on_state_enter(self, state: str, context: dict) -> dict:
        context["entered_at"] = time.time()
        return context

    def on_action(self, action: str, context: dict) -> dict:
        if action == "fetch_data":
            context["data"] = fetch_from_api()
        return context

machine = FlatMachine(config_file="machine.yml", hooks=CustomHooks())

Available hooks: on_machine_start, on_machine_end, on_state_enter, on_state_exit, on_transition, on_error, on_action

Execution Types

execution:
  type: retry              # retry | parallel | mdap_voting
  backoffs: [2, 8, 16, 35] # Seconds between retries
  jitter: 0.1              # ±10% random variation
Type Use Case
default Single call
retry Rate limit handling with backoff
parallel Multiple samples (n_samples)
mdap_voting Consensus voting (k_margin, max_candidates)

Schema Validation

from flatagents import validate_flatagent_config, validate_flatmachine_config

warnings = validate_flatagent_config(config)
warnings = validate_flatmachine_config(config)

Logging & Metrics

from flatagents import setup_logging, get_logger

setup_logging(level="INFO")  # Respects FLATAGENTS_LOG_LEVEL env var
logger = get_logger(__name__)

Env vars: FLATAGENTS_LOG_LEVEL (DEBUG/INFO/WARNING/ERROR), FLATAGENTS_LOG_FORMAT (standard/json/simple)

For OpenTelemetry metrics:

pip install flatagents[metrics]
export FLATAGENTS_METRICS_ENABLED=true

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