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LLM Story Generator

LLM based web service that generates brief stories using Strava activity data.

Project Summary & Main Purpose

REST API (uses FastAPI under the hood) based web service designed to run on local machines that creates stories using Strava data.

Users are authenticated through Strava. Web service allows users to get their last 3 activities. Available through GET /activities/ endpoint.

An LLM model generates a story around 50 words for a given activity (might be a ride) based on the speed (as max_speed), distance, time (as moving_time) and the elevation (as total_elevation_gain) of each activity. Available through PUT /activities/ endpoint.

Moreover, users can list their processed activities. Available through GET /activities/processed/ endpoint.

The service has 3 endpoints in activities namespace:

img.png

POST /activities/: Creates activities. Gets them from Strava then saves them to DB. By default, it gets last 3 activities of a user. img.png

200 success response looks like this img.png

PUT /activities/: Takes activity_id as a parameter, updates it with LLM-generated title and story. Then, returns the activity details, title and story. If activity is not present in the database then gets the activity from Strava and generates title and story and saves it to DB. img.png

200 success response looks like this img.png

404 not found response looks like this img.png

GET /activities/processed/: Lists all the activities the system has ever processed. Reads all processed activities from DB. A processed activity has a story and title assigned. img.png

200 success response looks like this img.png

404 not found response looks like this img.png

How to Install and Use

In a terminal

Clone the repository and navigate to it

git clone [email protected]:cereniyim/llm-story-generator.git
cd <path-to-your-local-repository>

Create local conda environment

conda create --name llm-story-generator python=3.9.18

Activate environment

conda activate llm-story-generator

Install requirements

pip install -r requirements.txt

Pull Mongo Docker image

docker pull mongo:latest

Create local MongoDB by spawning a container

docker run --name mongo -p 27017:27017 -d mongo:latest

Start the service

uvicorn app.main:app 

You can access it and its documentation on Swagger http://0.0.0.0:8000/docs

My approach on solving the challenge and key architectural decisions

While working on the challenge, I kept my focus on having a reasonably-working-well MVP web service covering all the must-have requirements with a readable, high-quality, well-tested and well-documented code.

Using pre-trained LLM model from Hugging Face

I experimented with several text generation NLP models, and after the experimentation I concluded that OpenChat model yields the most logical results. Also, it is a popular and well-maintained model. Model details can be found here and the paper is available here.

It is a generalist model that is fine-tuned on several open-source language models with mixed-quality data.

I usually prefer to use open source packages/models if they are coming from a trusted source, well-maintained, and they have a widespread use.

Moreover, to be able to experiment with different models, I used Hugging Face Hub and to keep the local environment lightweight.

Implementation can be found in src/generators.py.

Using MongoDB as database solution

I used noSQL DB (MongoDB) as the database solution. It requires less schema pre-planning and design. Also, it allows flexibility through documents. The flexible schema allowed me to do extensive integration testing.

In the context of a production application, mongoDB allows horizontal scaling through sharding. Assuming that there will be terabytes of data for MarvinAI, Mongo DB could be a reasonable choice from that perspective as well.

Also, thinking from the production-scale chatbot application has motivated me to select MongoDB as the database solution.

Implementation can be found in src/gateway.py.

Strava authentication logic

One of the requirements was to authenticate users through Strava. I embedded authentication logic in the web service to be able to share the state of the authentication among different endpoints.

I implemented a StravaClient which is a wrapper around Strava API. It implements authentication (only required for the first use), access token refresh and activity querying functionalities.

I kept necessary environment variables and secrets in a local .env file and loaded them during runtime.

Moreover, the service refreshes the token whenever expires with the wrapping of errors and refresh_token method implementation.

Implementation can be found in src/strava_client.py.

Image generation as bonus points

Please see src/generators.py AIImageGeneration class for the design and pseudocode implementation of image generation feature.

By calling generate method with story.__dict__ on the instance of AIIMageGeneration in PUT /activities/ endpoint, this feature can be integrated into the service. E.g.

@router.put("/{activity_id}/")
def update_activity_with_story(activity_id: int) -> ProcessedActivity:
    """
    Updates the activity with a title and a story. Story and title is generated by an LLM.
    """
    ...
    story_generator = AIStoryGenerator()
    story = story_generator.generate(activity)
    image_generator = AIIMageGenerator()
    story = image_generator.generate(story.__dict__)
    updated_activity = gateway.update(activity, story.__dict__)
    return ProcessedActivity(**updated_activity)

Some Further System Improvements for a Production-Ready Service

Extensive testing of LLM model

The core component of this web service is an LLM model. Whether it is developed in-house or a pre-trained model it should be tested extensively. One example could be testing against edge cases like profanity, AI hallucinations and so on.

Also, some guardrails should be implemented before going into the production E.g. MarvinAI should not answer any questions that disclose employee salaries even though it is asked to provide.

All in all, the service should be well-tested from human-level judgement perspective.

Containerization

Use Docker so that this service is deployable to any environment, for the production case that would be a cloud provider like GCP or AWS.

Store secrets securely in some secret manager

If this had been a production web service, the secrets that are required by classes and components must be stored securely in a Secret Manager tool.

Implement CI/CD pipelines

Implement CI/CD pipelines so that the testing (and deployment) process is automated. GitHub Actions can be a tool for that.

For CI, whenever there is a new build, all unit tests are run. When implemented with high coverage of unit tests, it automates the development cycle and decreases the potential of bugs.

For Developers

Project organization

├── README.md                         <- The top-level README explaining the project
├── src                               <- Core components
│   ├── gateway.py                    <- MongoDBGateway implementation
│   ├── strava_client.py              <- StravaClient implementation
│   ├── generators.py                 <- LLM based inference implementation
├── app                               <- fastAPI app 
│   ├── routers                       <- namesapces
│   │   ├── activities.py             <- GET, PUT, POST endpoint implementations
│   ├── data_models.py                <- Output model class for the endpoints
│   ├── main.py                       <- fastAPI app implementation
├── images                            <- Images used in the README
├── tests                             <- Unit tests
├── .gitignore                        <- Ignored files by git
├── requirements.txt                  <- Required Python packages for the environment creation

Setup local environment & run unit tests

Change directory to your local repository

cd <path-to-your-local-repository>

Create conda environment

conda create --name llm-story-generator python=3.9.18

Activate environment

conda activate llm-story-generator

Install requirements

pip install -r requirements.txt

Add repository path to PYTHONPATH

export PYTHONPATH=<path-to-your-repo-root>

Run unit tests

py.test tests

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