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A query language for language models.

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LMQL

A programming language for large language models.
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LMQL is an open source programming language for large language models (LLMs) based on a superset of Python. LMQL goes beyond traditional templating languages by providing full Python support, yet a lightweight programming interface.

LMQL is designed to make working with language models like OpenAI, 🤗 Transformers more efficient and powerful through its advanced functionality, including multi-variable templates, conditional distributions, constraints, datatype constraints and control flow.

Features:

Explore LMQL

A simple example program in LMQL looks like this:

argmax
   "Greet LMQL:[GREETINGS]\n"

   if "Hi there" in GREETINGS:
      "Can you reformulate your greeting in the speech of victorian-era English: [VIC_GREETINGS]\n"

   "Analyse what part of this response makes it typically victorian:\n"

   for i in range(4):
      "-[THOUGHT]\n"

   "To summarize:[SUMMARY]"
from 
   "openai/text-davinci-003" 
where 
   stops_at(GREETINGS, ".") and not "\n" in GREETINGS and 
   stops_at(VIC_GREETINGS, ".") and 
   stops_at(THOUGHT, ".")

Program Output:


The main body of an LMQL program reads like standard Python (with control-flow), where top-level strings are interpreted as model input with template variables like [GREETINGS].

The argmax keyword in the beginning specifies the decoding algorithm used to generate tokens, e.g. argmax, sample or even advanced branching decoders like beam search and best_k.

The from and where clauses specify the model and constraints that are employed during decoding.

Overall, this style of language model programming facilitates guidance of the model's reasoning process, and constraining of intermediate outputs using an expressive constraint language.

Learn more about LMQL by exploring our Example Showcase or by running your own programs in our browser-based Playground IDE.

Getting Started

To install the latest version of LMQL run the following command with Python ==3.10 installed.

pip install lmql

Local GPU Support: If you want to run models on a local GPU, make sure to install LMQL in an environment with a GPU-enabled installation of PyTorch >= 1.11 (cf. https://pytorch.org/get-started/locally/) and install via pip install lmql[hf].

Running LMQL Programs

After installation, you can launch the LMQL playground IDE with the following command:

lmql playground

Using the LMQL playground requires an installation of Node.js. If you are in a conda-managed environment you can install node.js via conda install nodejs=14.20 -c conda-forge. Otherwise, please see the official Node.js website https://nodejs.org/en/download/ for instructions how to install it on your system.

This launches a browser-based playground IDE, including a showcase of many exemplary LMQL programs. If the IDE does not launch automatically, go to http://localhost:3000.

Alternatively, lmql run can be used to execute local .lmql files. Note that when using local HuggingFace Transformers models in the Playground IDE or via lmql run, you have to first launch an instance of the LMQL Inference API for the corresponding model via the command lmql serve-model.

Configuring OpenAI API Credentials

If you want to use OpenAI models, you have to configure your API credentials. To do so, create a file api.env in the active working directory, with the following contents.

openai-org: <org identifier>
openai-secret: <api secret>

For system-wide configuration, you can also create an api.env file at $HOME/.lmql/api.env or at the project root of your LMQL distribution (e.g. src/ in a development copy).

Installing the Latest Development Version

To install the latest (bleeding-edge) version of LMQL, you can also run the following command:

pip install git+https://github.com/eth-sri/lmq

This will install the lmql package directly from the main branch of this repository. We do not continously test the main version, so it may be less stable than the latest PyPI release.

Setting Up a Development Environment

To setup a conda environment for local LMQL development with GPU support, run the following commands:

# prepare conda environment
conda env create -f scripts/conda/requirements.yml -n lmql
conda activate lmql

# registers the `lmql` command in the current shell
source scripts/activate-dev.sh

Operating System: The GPU-enabled version of LMQL was tested to work on Ubuntu 22.04 with CUDA 12.0 and Windows 10 via WSL2 and CUDA 11.7. The no-GPU version (see below) was tested to work on Ubuntu 22.04 and macOS 13.2 Ventura or Windows 10 via WSL2.

Development without GPU

This section outlines how to setup an LMQL development environment without local GPU support. Note that LMQL without local GPU support only supports the use of API-integrated models like openai/text-davinci-003. Please see the OpenAI API documentation (https://platform.openai.com/docs/models/gpt-3-5) to learn more about the set of available models.

To setup a conda environment for LMQL with no GPU support, run the following commands:

# prepare conda environment
conda env create -f scripts/conda/requirements-no-gpu.yml -n lmql-no-gpu
conda activate lmql-no-gpu

# registers the `lmql` command in the current shell
source scripts/activate-dev.sh

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