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

Inference LoRA adapter model
Published on 2024.12.06 by Askar Aitzhan
Inference LoRA adapter model

Understanding LoRA inference

Concepts

  • Base model: The original model that is used as a starting point.
  • LoRA adapter model: A small model that is used to adapt the base model for a specific task.
  • LoRA Rank: The rank of the matrix that is used to adapt the model.

What you need to inference with LoRA adapter model

  1. Supported base model
  2. LoRA adapter model hosted on HuggingFace
  3. HuggingFace token if the LoRA adapter model is private
  4. DeepInfra account

How to inference with LoRA adapter in DeepInfra

  1. Go to the dashboard
  2. Click on the 'New Deployment' button
  3. Click on the 'LoRA Model' tab
  4. Fill the form:
    • LoRA model name: model name used to reference the deployment
    • Hugging Face Model Name: Hugging Face model name
    • Hugging Face Token: (optional) Hugging Face token if the LoRA adapter model is private
  5. Click on the 'Upload' button

Note: The list of supported base models is listed on the same page. If you need a base model that is not listed, please contact us at feedback@deepinfra.com

Rate limits on LoRA adapter model

Rate limit will apply on combined traffic of all LoRA adapter models with the same base model. For example, if you have 2 LoRA adapter models with the same base model, and have rate limit of 200. Those 2 LoRA adapter models combined will have rate limit of 200.

Pricing on LoRA adapter model

Pricing is 50% higher than base model.

How is LoRA adapter model speed compared to base model speed?

LoRA adapter model speed is lower than base model, because there is additional compute and memory overhead to apply the LoRA adapter. From our benchmarks, the LoRA adapter model speed is about 50-60% slower than base model.

How to make LoRA adapter model faster?

You could merge the LoRA adapter with the base model to reduce the overhead. And use custom deployment, the speed will be close to the base model.

Related articles
DeepSeek V4 Pro (Max) API Benchmarks: Latency, Throughput & Cost AnalysisDeepSeek V4 Pro (Max) API Benchmarks: Latency, Throughput & Cost Analysis<p>About DeepSeek V4 Pro DeepSeek V4 Pro is a Mixture-of-Experts (MoE) language model with 1.6 trillion total parameters and 49 billion activated parameters, supporting a 1 million token context window. Designed for advanced reasoning, coding, and long-horizon agent workflows, it represents the fourth generation of DeepSeek&#8217;s flagship open-weight models. The model introduces a hybrid attention [&hellip;]</p>
Best API Providers for DeepSeek V4 in 2026Best API Providers for DeepSeek V4 in 2026<p>DeepSeek V4 is available across a range of hosted API providers, each with different pricing, performance, and deployment trade-offs. The model comes in two variants: V4 Pro, a 1.6 trillion total parameter Mixture-of-Experts model with 49 billion active parameters and a 1M token context window, and V4 Flash, a lighter 284B total parameter variant built [&hellip;]</p>
Kimi K2.6 API Benchmarks: Latency, TPS & Cost Analysis (2026)Kimi K2.6 API Benchmarks: Latency, TPS & Cost Analysis (2026)<p>About Kimi K2.6 Kimi K2.6 is an open-source frontier model from Moonshot AI, released on April 20, 2026. It is a native multimodal agentic model built for long-horizon coding, autonomous execution, and swarm-based task orchestration. The model uses a Mixture-of-Experts (MoE) architecture with 1 trillion total parameters and 32 billion activated parameters per token, using [&hellip;]</p>