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picoLLM Inference Engine

Project description

picoLLM Inference Engine Python Binding

Made in Vancouver, Canada by Picovoice

picoLLM Inference Engine

picoLLM Inference Engine is a highly accurate and cross-platform SDK optimized for running compressed large language models. picoLLM Inference Engine is:

  • Accurate; picoLLM Compression improves GPTQ by significant margins
  • Private; LLM inference runs 100% locally.
  • Cross-Platform
  • Runs on CPU and GPU
  • Free for open-weight models

Compatibility

  • Python 3.9+
  • Runs on Linux (x86_64), macOS (arm64, x86_64), Windows (x86_64, arm64), and Raspberry Pi (5 and 4).

Installation

pip3 install picollm

Models

picoLLM Inference Engine supports the following open-weight models. The models are on Picovoice Console.

  • Gemma
    • gemma-2b
    • gemma-2b-it
    • gemma-7b
    • gemma-7b-it
  • Llama-2
    • llama-2-7b
    • llama-2-7b-chat
    • llama-2-13b
    • llama-2-13b-chat
    • llama-2-70b
    • llama-2-70b-chat
  • Llama-3
    • llama-3-8b
    • llama-3-8b-instruct
    • llama-3-70b
    • llama-3-70b-instruct
  • Llama-3.2
    • llama3.2-1b-instruct
    • llama3.2-3b-instruct
  • Mistral
    • mistral-7b-v0.1
    • mistral-7b-instruct-v0.1
    • mistral-7b-instruct-v0.2
  • Mixtral
    • mixtral-8x7b-v0.1
    • mixtral-8x7b-instruct-v0.1
  • Phi-2
    • phi2
  • Phi-3
    • phi3
  • Phi-3.5
    • phi3.5

AccessKey

AccessKey is your authentication and authorization token for deploying Picovoice SDKs, including picoLLM. Anyone who is using Picovoice needs to have a valid AccessKey. You must keep your AccessKey secret. You would need internet connectivity to validate your AccessKey with Picovoice license servers even though the LLM inference is running 100% offline and completely free for open-weight models. Everyone who signs up for Picovoice Console receives a unique AccessKey.

Usage

Create an instance of the engine and generate a prompt completion:

import picollm

pllm = picollm.create(
    access_key='${ACCESS_KEY}',
    model_path='${MODEL_PATH}')

res = pllm.generate(prompt='${PROMPT}')
print(res.completion)

Replace ${ACCESS_KEY} with yours obtained from Picovoice Console, ${MODEL_PATH} with the path to a model file downloaded from Picovoice Console, and ${PROMPT} with a prompt string.

Instruction-tuned models (e.g., llama-3-8b-instruct, llama-2-7b-chat, and gemma-2b-it) have a specific chat template. You can either directly format the prompt or use a dialog helper:

dialog = pllm.get_dialog()
dialog.add_human_request(prompt)

res = pllm.generate(prompt=dialog.prompt())
dialog.add_llm_response(res.completion)
print(res.completion)

To interrupt completion generation before it has finished:

pllm.interrupt()

Finally, when done, be sure to release the resources explicitly:

pllm.release()

Demos

picollmdemo provides command-line utilities for LLM completion and chat using picoLLM.

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