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Serverless Posttraining for Agents - Core AI functionality and tracing

Project description

Synth

Python PyPI License Coverage Tests

Serverless Posttraining APIs for Developers

Shows a bar chart comparing prompt optimization performance across Synth GEPA, Synth MIPRO, GEPA (lib), DSPy MIPRO, and DSPy GEPA with baseline vs optimized.

Average accuracy on LangProBe prompt optimization benchmarks.

Highlights

  • 🚀 Train across sft, RL, and prompt opt by standing up a single cloudflared Fastapi wrapper around your code. No production code churn.
  • ⚡️ Parallelize training and achieve 80% GPU util. via PipelineRL
  • 🗂️ Train prompts and models across multiple experiments
  • 🛠️ Spin up experiment queues and datastores locally for dev work
  • 🔩 Run serverless training via cli or programmatically
  • 🏢 Scales gpu-based model training to 64 H100s seemlessly
  • 💾 Use GEPA-calibrated judges for fast, accurate rubric scoring
  • 🖥️ Supports HTTP-based training across all programming languages
  • 🤖 CLI utilities tuned for use with Claude Code, Codex, Opencode

Getting Started

# Use with OpenAI Codex
uvx synth-ai codex
# Use with Opencode
uvx synth-ai opencode

Synth is maintained by devs behind the MIPROv2 prompt optimizer.

Documentation

docs.usesynth.ai

In-Process Runner (SDK)

Run GEPA/MIPRO/RL jobs against a tunneled task app without the CLI:

import asyncio
import os
from synth_ai.sdk.task import run_in_process_job

result = asyncio.run(
    run_in_process_job(
        job_type="prompt_learning",
        config_path="configs/style_matching_gepa.toml",
        task_app_path="task_apps/style_matching_task_app.py",
        overrides={"prompt_learning.gepa.rollout.budget": 4},
        backend_url=os.getenv("TARGET_BACKEND_BASE_URL"),  # resolves envs automatically
    )
)
print(result.job_id, result.status.get("status"))

Project details


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0.3.1

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