Package for implementing service discovery in a really lite way.
Project description
Lightweight service registry and discovery system for distributed model inference clusters. Built for deployments on HPC environments with load balancing and automatic failover.
Installation
pip install literegistry
Quick Start
Complete workflow for deploying distributed model inference:
1. Start Redis Server
literegistry redis --port 6379
By default this starts Redis inside Apptainer using the official Redis image
redis_7-alpine.sif, pulled from docker://redis:7-alpine. To use a host
Redis binary instead:
literegistry redis --runtime local --port 6379
To keep Redis attached to the current terminal/process, run it in foreground mode:
literegistry redis --runtime local --foreground --port 6379
Redis startup prints a machine-readable registry URL that includes the selected port:
REDIS_URL=redis://hostname:6379
2. Launch vLLM/SGLang Instances (supports all standard vLLM/SGLang arguments)
literegistry vllm \
--model "meta-llama/Llama-3.1-8B-Instruct" \
--registry redis://login-node:6379 \
--tensor-parallel-size 4
To launch vLLM inside Apptainer, choose the Apptainer runtime and provide any
binds or container environment variables. The default vLLM Apptainer image is
vllm-openai_latest-cu129-ubuntu2404.sif, pulled from
docker://vllm/vllm-openai:latest-cu129-ubuntu2404. Apptainer launches also
bind $HOME plus the shell-derived Hugging Face cache paths by default. If
HF_HOME, HF_CACHE, HUGGINGFACE_HUB_CACHE, HF_HUB_CACHE,
TRANSFORMERS_CACHE, or VLLM_CACHE_ROOT are set in the launching shell, those
values are passed into the container; otherwise LiteRegistry falls back to
cache paths under $HOME/.cache.
literegistry vllm \
--runtime apptainer \
--model /mmfs1/gscratch/ark/graf/judges-that-code/thinker/tinker-sft-demo_vllm_model \
--registry redis://login-node:6379 \
--port 7248 \
--tensor-parallel-size 1 \
--dtype float16 \
--max-model-len 4096 \
--trust-remote-code \
--language-model-only \
--safetensors-load-strategy prefetch
For SGLang, the default Apptainer image is sglang_latest.sif, pulled from
the official docker://lmsysorg/sglang:latest image. It uses the same shared
Hugging Face cache defaults.
3. Start Gateway Server
literegistry gateway \
--registry redis://login-node:6379 \
--host 0.0.0.0 \
--port 8080
Start Python Code Executor
LiteRegistry can also register a stateless Python code execution service. The
service registers itself under model_path="python" so the gateway can route
POST /python requests to available executor workers.
literegistry code --registry redis://klone-login01.hyak.local:6379
4. Interact with Gateway
The gateway provides OpenAI-compatible HTTP endpoints that work with existing tools:
# Send completion request
curl -X POST http://localhost:8080/v1/completions \
-H "Content-Type: application/json" \
-d '{"model": "meta-llama/Llama-3.1-8B-Instruct", "prompt": "Hello"}'
# List all available models
curl http://localhost:8080/v1/models
# Check gateway health
curl http://localhost:8080/health
# Execute Python through the gateway
curl -X POST http://localhost:8080/python \
-H "Content-Type: application/json" \
-d '{"code": "print(2 + 2)", "max_runtime": 1.0}'
# Execute Python with a context payload
curl -X POST http://localhost:8080/python \
-H "Content-Type: application/json" \
-d '{"code": "data = json.loads(context)\nprint(data[\"name\"])\nprint(data[\"score\"] + 1)", "context_payload": "{\"name\": \"alice\", \"score\": 41}", "max_runtime": 3}'
The gateway automatically routes requests to the appropriate model server based on the model field.
For code execution, it routes /python requests to services registered as python.
5. Monitor Cluster
# Summary view
literegistry summary --registry redis://login-node:6379
Using the Python API
Writting new servers
from literegistry import RegistryClient, get_kvstore
import asyncio
async def main():
# Auto-detect backend (redis:// or file path)
store = get_kvstore("redis://localhost:6379")
client = RegistryClient(store, service_type="model_path")
# Register a server
await client.register(
port=8000,
metadata={"model_path": "meta-llama/Llama-3.1-8B-Instruct"}
)
# List available models
models = await client.models()
print(models)
asyncio.run(main())
HTTP Client with Automatic Failover
from literegistry import RegistryHTTPClient
async with RegistryHTTPClient(client, "meta-llama/Llama-3.1-8B-Instruct") as http_client:
result, _ = await http_client.request_with_rotation(
"v1/completions",
{"prompt": "Hello"},
timeout=30,
max_retries=3
)
Storage Backends
LiteRegistry supports different backends depending on your deployment:
FileSystem - For single-node or shared filesystem environments
from literegistry import FileSystemKVStore
store = FileSystemKVStore("registry_data")
Use when: Running on a single machine or when all nodes share a filesystem (common in HPC clusters with NFS). Note: Can bottleneck with high concurrency.
Redis - For distributed multi-node clusters
from literegistry import RedisKVStore
store = RedisKVStore("redis://localhost:6379")
Use when: Running across multiple nodes without shared storage, or need high-concurrency access. Recommended for production HPC deployments.
Citation
If you use LiteRegistry in your research, please cite:
@software{literegistry2025,
title={literegistry: Lightweight Service Discovery for Distributed Model Inference},
author={Faria, Gonçalo and Smith, Noah},
year={2025},
url={https://github.com/goncalorafaria/literegistry}
}
Contributing
Contributions welcome! Please submit a Pull Request.
License
MIT License - see LICENSE file for details
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