Maisie | |
Maisie Sphinx Theme | |
Documentation | |
PyPI | |
DockerHub |
Could archiving, storing, managing and organizing machine learning models be done efficiently and with great focus on user experience? Sure, Maisie does just that.
Maisie is a friendly, easy to use assistant that consists of:
- Web Application written in React
- Backend API written in Python, Flask
- Client Application/Package written in Python and hosted on PyPI
It integrates seamlessly with your favorite tools and provides you with all the important data, such as:
- Git revisions for all trained models, as well as information about source branches
- Searchable, filterable hyperparameters, parameters and metrics
- A single identifying dataset name, as well as an optional description
- Permanent URLs for easy sharing and downloading of stored models
You can get the most current package from PyPI
$ pip install Maisie
Using it in your training environment is fairly straightforward:
import maisie
from sklearn.externals import joblib
# Define your model here
model.fit(X, y)
model_filename = "example_model.pkl"
joblib.dump(model, model_filename)
# Define your metrics, fetch parameters and hyperparameters
models = maisie.Models()
models.upload(
name="My first uploaded model",
filename=model_filename,
dataset_name="Singly Identifying Dataset Name",
metrics={"accuracy": accuracy},
hyperparameters=hyperparameters,
parameters=parameters,
)
This repository provides a pre-configured docker-compose.yml
file that contains sensible default options.
Before starting the containers, you should create a local .env
file using the included .env.sample
.
To start up all services, run:
$ docker-compose up
To stop your services, you can press Ctrl+C/Ctrl+D. If you started the services in the background using docker-compose up -d
, the correct way to do this would be:
$ docker-compose stop
You can learn more about Docker Compose by clicking here.
Both frontend and backend images are automatically published to Docker Hub as soon as new stable release is made available.
Links
- Frontend image on Docker Hub
- Backend image on Docker Hub
- ...other services
For reference, you can look at the sample Ansible playbook that deploys all containers to a specified host using the locally configured .env
file.
- Clone the repository from the
develop
branch
$ git clone -b develop git@github.com:nokia-wroclaw/innovativeproject-ml-models-management.git
- Install pre-commit
- Inside the project's root directory install all required githooks:
$ pre-commit install
- To start all required services for local development, run:
$ docker-compose up
- You're all set up!
- Pick one of the open issues or create a new one
- Create a new branch named
issue-[number]-[short description]
derived from thedevelop
branch, for example
$ git checkout -b issue-42-project-removal-permissions develop
- Make sure your implementation fixes the actual problem and is well tested.
When implementing new features, you should start by creating a new branch named feature-[short description]
derived from the develop
branch, for example
$ git checkout -b feature-new-user-profile develop
To run all tests and check whether all required pre-commit githooks are satisfied, run
$ pre-commit run --all-files
Your commit message should briefly summarize the changes (if possible) in plain English. To learn how to write a proper commit message, check out this article.
When ready, create a new pull request compared with the develop
branch set as a base branch.
For the lastest stable release, the documentation can be seen at docs.maisie.dev.