Skip to content

Latest commit

 

History

History
97 lines (89 loc) · 3.57 KB

README.md

File metadata and controls

97 lines (89 loc) · 3.57 KB

llm-eval

This repository contains a reproducible workflow setup using DVC backed by a JASMIN object store. Before working with the repository please contact Matt Coole to request access to the Jasmin object store llm-eval-o. Then follow the instructions below.

Requirements

Getting started

Setup

First create a new virtual environment and install the required dependencies:

python -m venv .venv
source .venv/bin/activate
pip install .

Configuration

Next setup your local DVC configuration with your Jasmin object store access key:

dvc remote modify --local jasmin access_key_id '<ACCES_KEY_ID>'
dvc remote modify --local jasmin secret_access_key '<KEY_SECRET>'

Getting the data

Pull the data from the object store using DVC:

dvc pull

Working with the pipeline

You should now be ready to re-run the pipeline:

dvc repro

This pipeline is defined in dvc.yaml and can be viewed with the command:

dvc dag

or it can be output to mermaid format to display in markdown:

dvc dag -md
flowchart TD
	node1["chunk-data"]
	node2["create-embeddings"]
	node3["evaluate"]
	node4["extract-metadata"]
	node5["fetch-metadata"]
	node6["fetch-supporting-docs"]
	node7["generate-testset"]
	node8["run-rag-pipeline"]
	node9["upload-to-docstore"]
	node1-->node2
	node2-->node9
	node4-->node1
	node5-->node4
	node5-->node6
	node6-->node1
	node7-->node8
	node8-->node3
	node9-->node8
	node10["data/evaluation-sets.dvc"]
	node11["data/synthetic-datasets.dvc"]
Loading

Note: To re-run the fetch-supporting-docs stage of the pipeline you will need to request access to the Legilo service from the EDS dev team and provide your username and password in a .env file.

Running Experiments

The pipeline by default will run using the parameters defind in params.yaml. To experiment with varying these paramaters you can change them directly, or use DVC experiments.

To run an experiment varying a particual parameter:

dvc exp run -S hp.chunk-size=1000

This will re-run the pipeline but override the value of the hp.chunk-size parameter in params.yaml and set it to 1000. Only the necessary stages of the pipeline should be re-run and the result should appear in your workspace.

You can compare the results of your experiment to the results of the baseline run of the pipeline using:

dvc exp diff
Path               Metric              HEAD      workspace    Change
data/metrics.json  answer_correctness  0.049482  0.043685     -0.0057974
data/metrics.json  answer_similarity   0.19793   0.17474      -0.02319
data/metrics.json  context_recall      0.125     0            -0.125
data/metrics.json  faithfulness        0.75      0.69375      -0.05625

Path         Param          HEAD    workspace    Change
params.yaml  hp.chunk-size  300     1000         700

Notes

DVC and CML

Notes on the use of Data Version Control and Continuous Machine Learning:

vLLM

Notes on running models with vLLM: