We use essential cookies to make our site work. With your consent, we may also use non-essential cookies to improve user experience and analyze website traffic…

DeepInfra raises $107M Series B to scale the inference cloud — read the announcement

Langchain improvements: async and streaming
Published on 2023.10.25 by Iskren Chernev
Langchain improvements: async and streaming

Starting from langchain v0.0.322 you can make efficient async generation and streaming tokens with deepinfra.

Async generation

The deepinfra wrapper now supports native async calls, so you can expect more performance (no more threads per invocation) from your async pipelines.

from langchain.llms.deepinfra import DeepInfra

async def async_predict():
    llm = DeepInfra(model_id="meta-llama/Llama-2-7b-chat-hf")
    output = await llm.apredict("What is 2 + 2?")
    print(output)
copy

Response streaming

Streaming lets you receive each token of the response as it gets generated. This is indispensable in user-facing applications.

def streaming():
    llm = DeepInfra(model_id="meta-llama/Llama-2-7b-chat-hf")
    for chunk in llm.stream("[INST] Hello [/INST] "):
        print(chunk, end='', flush=True)
    print()
copy

You can also use the asynchronous streaming API, natively implemented underneath.

async def async_streaming():
    llm = DeepInfra(model_id="meta-llama/Llama-2-7b-chat-hf")
    async for chunk in llm.astream("[INST] Hello [/INST] "):
        print(chunk, end='', flush=True)
    print()
copy
Related articles
Power the Next Era of Image Generation with FLUX.2 Visual Intelligence on DeepInfraPower the Next Era of Image Generation with FLUX.2 Visual Intelligence on DeepInfraDeepInfra is excited to support FLUX.2 from day zero, bringing the newest visual intelligence model from Black Forest Labs to our platform at launch. We make it straightforward for developers, creators, and enterprises to run the model with high performance, transparent pricing, and an API designed for productivity.
Best API Providers for NVIDIA Nemotron 3 Super 120BBest API Providers for NVIDIA Nemotron 3 Super 120B<p>Nemotron 3 Super 120B is available across a growing number of hosted APIs and deployment platforms. At 120B total parameters with 12B active per inference pass, the right provider matters: latency, throughput, and cost vary significantly depending on where you run it. This guide covers the top options by use case — from fully managed [&hellip;]</p>
Kimi K2 0905 API Benchmarks: Latency, Throughput & CostKimi K2 0905 API Benchmarks: Latency, Throughput & Cost<p>About Kimi K2 0905 Kimi K2 0905 is a state-of-the-art large language model developed by Moonshot AI, representing a significant advancement in open-weight AI capabilities. This Mixture-of-Experts (MoE) model features 1 trillion total parameters with 32 billion activated parameters per forward pass, making it highly efficient while maintaining frontier-level performance. The model supports a 256k [&hellip;]</p>