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🍦 Deployment tool for online machine learning models

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online-ml/chantilly

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chantilly is a deployment tool for online machine learning models. It is designed to work hand in hand with river.

⚠️ Chantilly is not being worked on anymore. It's being replaced by Beaver. The codebase is now frozen.

Table of contents

Introduction

There are many tools for deploying machine learning models. However, none of them support online models that can learn on the fly, but chantilly does.

Here are some advantages:

  • Simple: chantilly is essentially just a Flask app.
  • Straightforward: you provide a model, chantilly provides a few API routes to do the rest.
  • Convenient: chantilly rids you of the burden of storing features between prediction and learning steps.
  • Flexible: use any model you wish, as long as it's written in Python and implements a couple of required methods.

Note that chantilly is very young, and is therefore subject to evolve. We're also eager for feedback and are happy to work hand in hand with you if you have specific needs.

Installation

chantilly is intended to work with Python 3.7 or above. You can install it from PyPI:

> pip install chantilly

You can also install the latest development version as so:

> pip install git+https://github.com/online-ml/chantilly

User guide

Running the server

Once you've followed the installation step, you'll get access to the chantilly CLI. You can see the available commands by running chantilly --help. You can start a server with the run command:

> chantilly run

This will start a Flask server with all the necessary routes for uploading a model, training it, making predictions with it, and monitoring it. By default, the server will be accessible at localhost:5000, which is what we will be using in the rest of the examples in the user guide. You can run chantilly routes in order to see all the available routes.

Picking a flavor

The first thing you need to do is pick a flavor. Currently, the available flavors are:

  • regression for regression tasks.
  • binary for binary classification tasks.
  • multiclass for multi-class classification tasks.

You can set the flavor by sending a POST request to @/api/init, as so:

import requests

config = {'flavor': 'regression'}
requests.post('http://localhost:5000/api/init', json=config)

You can also set the flavor via the CLI:

> chantilly init regression

⚠️ Setting the flavor will erase everything and thus provide a clean slate.

You can view the current flavor by sending a GET request to @/api/init:

r = requests.get('http://localhost:5000/api/init')
print(r.json()['flavor'])

Uploading a model

You can upload a model by sending a POST request to the @/api/model route. You need to provide a model which has been serialized with pickle or dill (we recommend the latter). For example:

from river import compose
from river import linear_model
from river import preprocessing
import dill
import requests

model = compose.Pipeline(
    preprocessing.StandardScaler(),
    linear_model.LinearRegression()
)

requests.post('http://localhost:5000/api/model', data=dill.dumps(model))

Likewise, the model can be retrieved by sending a GET request to @/api/model:

r = requests.get('http://localhost:5000/api/model')
model = pickle.loads(r.content)

Note that chantilly will validate the model you provide to make sure it works with the flavor you picked. For instance, if you picked the regression flavor, then the model has to implement fit_one and predict_one.

You can also add a upload by using the CLI. First, you need to serialize a model and dump it to a file:

with open('model.pkl', 'wb') as file:
    dill.dump(model, file)

Then, call the add-model sub-command:

> chantilly add-model model.pkl

Making a prediction

Predictions can be obtained by sending a POST request to @/api/predict. The payload you send has to contain a field named features. The value of this field will be passed to the predict_one method of the model you uploaded earlier on. If the model you provided predict_proba_one then that will be used instead. Here is an example:

import requests

r = requests.post('http://localhost:5000/api/predict', json={
    'id': 42,
    'features': {
        'shop': 'Ikea',
        'item': 'Dombäs',
        'date': '2020-03-22T10:42:29Z'
    }
})

print(r.json()['prediction'])

Note that in the previous snippet we've also provided an id field. This field is optional. If is is provided, then the features will be stored by the chantilly server, along with the prediction. This allows not having to provide the features again when you want to update the model later on.

Updating the model

The model can be updated by sending a POST request to @/api/learn. If you've provided an ID in an earlier call to @/api/predict, then you only have to provide said ID along with the ground truth:

import requests

requests.post('http://localhost:5000/api/learn', json={
    'id': 42,
    'ground_truth': 10.21
})

However, if you haven't passed an ID earlier on, then you have to provide the features yourself:

requests.post('http://localhost:5000/api/learn', json={
    'features': {
        'shop': 'Ikea',
        'item': 'Dombäs',
        'date': '2020-03-22T10:42:29Z'
    },
    'ground_truth': 10.21
})

Note that the id field will have precedence in case both of id and features are provided. We highly recommend you to use the id field. First of all it means that you don't have to take care of storing the features between calls to @/api/predict and @/api/learn. Secondly it makes the metrics more reliable because they will be using the predictions that were made at the time @/api/predict was called.

Monitoring metrics

You can access the current metrics via a GET request to the @/api/metrics route.

Additionally, you can access a stream of metric updates by using the @/api/stream/metrics. This is a streaming route which implements server-sent events (SSE). As such it will notify listeners every time the metrics are updates. For instance, you can use the sseclient, which is a thin layer on top of requests:

import json
import sseclient

messages = sseclient.SSEClient('http://localhost:5000/api/stream/metrics')

for msg in messages:
    metrics = json.loads(msg.data)
    print(metrics)

You can use the following piece of JavaScript to do the same thing in a browser:

var es = new EventSource('http://localhost:5000/api/stream/metrics');
es.onmessage = e => {
    var metrics = JSON.parse(e.data);
    console.log(metrics)
};

Monitoring events

You can also listen to all the prediction and learning events via the @/api/stream/events route. This will yield SSE events with an event name attached, which is either 'predict' or 'learn'. From a Python interpreter, you can do the following:

import json
import sseclient

messages = sseclient.SSEClient('http://localhost:5000/api/stream/events')

for msg in messages:
    data = json.loads(msg.data)
    if msg.event == 'learn':
        print(data['model'], data['features'], data['prediction'], data['ground_truth'])
    else:
        print(data['model'], data['features'], data['prediction'])

In JavaScript, you can you use the addEventListener method:

var es = new EventSource('http://localhost:5000/api/stream/events');

es.addEventListener('learn', e => {
    var data = JSON.parse(e.data);
    console.log(data.model, data.features, data.prediction, data.ground_truth)
};

es.addEventListener('predict', e => {
    var data = JSON.parse(e.data);
    console.log(data.model, data.features, data.prediction)
};

Visual monitoring

A live dashboard is accessible if you navigate to localhost:5000 in your browser.

demo

Under the hood the dashboard is simply listening to the API's streaming routes.

Usage statistics

You can obtain some essential statistics, by querying the @/api/stats routes:

import requests

r = requests.get('http://localhost:5000/api/stats')
print(r.json())

Here is an output example:

{

    "learn": {
        "ewm_duration": 3408682,
        "ewm_duration_human": "3ms408μs682ns",
        "mean_duration": 6541916,
        "mean_duration_human": "6ms541μs916ns",
        "n_calls": 98
    },
    "predict": {
        "ewm_duration": 3190724,
        "ewm_duration_human": "3ms190μs724ns",
        "mean_duration": 5248635,
        "mean_duration_human": "5ms248μs635ns",
        "n_calls": 213
    }

}

The mean_duration fields contain the average duration of each endpoint. The ewm_duration fields contain an exponential moving average of said duration, and therefore gives you an idea of the recent performance, which can allow you to detect arising performance issues. Note that these durations do not include the time it takes to transmit the response over the network. These durations only pertain to the processing time on chantilly's side, including but not limited to calls to the model.

These statistic are voluntarily very plain. Their only purpose is to provide a quick healthcheck. The proper way to monitor a web application's performance, including a Flask app, is to use purpose-built tools. For instance you could use Loki to monitor the application logs and Grafana to visualize and analyze them.

Using multiple models

You can use different models by giving them names. You can provide a name to a model by adding a suffix to @/api/model:

from river import tree
import dill
import requests

model = tree.DecisionTreeClassifier()

requests.post('http://localhost:5000/api/model/barney-stinson', data=dill.dumps(model))

You can also pick a name when you add the model through the CLI:

> chantilly add-model model.pkl --name barney-stinson

You can then choose which model to use when you make a prediction:

r = requests.post('http://localhost:5000/api/predict', json={
    'id': 42,
    'features': {
        'shop': 'Ikea',
        'item': 'Dombäs',
        'date': '2020-03-22T10:42:29Z'
    },
    'model': 'barney-stinson'
})

The model which was provided last will be used by default if the model field is not specified. If you provide an id, then the model which was used for making the prediction will be the one that is updated once the ground truth is made available. You can also specify which model to update directly as so:

requests.post('http://localhost:5000/api/learn', json={
    'id': 42,
    'ground_truth': 10.21,
    'model': 'barney-stinson'
})

Note that the data associated with the given id is deleted once the model has been updated. In other words you can't call the @/api/model with the same id twice.

You can view the available models as well as the default model by sending a GET request to @/api/models:

r = requests.get('http://localhost:5000/api/models')
print(r.json())

You can delete a model by sending a DELETE request to @/api/model:

requests.delete('http://localhost:5000/api/model/barney-stinson')

Configuration handling

chantilly follows Flask's instance folder pattern. This means that you can configure chantilly via a file named instance/config.py. Note that the location is relative to where you are launching the chantilly run command from (more information can be found here). You can also configure chantilly by setting environment variables.

You can set all the builtin variables that Flask provides. You can also set the following variables which are specific to chantilly:

  • STORAGE_BACKEND: determines which storage backend to use.
  • SHELVE_PATH: location of the shelve database file. Only applies if STORAGE_BACKEND is set to shelve.
  • REDIS_HOST: required if STORAGE_BACKEND is set to redis.
  • REDIS_PORT: required if STORAGE_BACKEND is set to redis.
  • REDIS_DB: required if STORAGE_BACKEND is set to redis.

The instance/config.py is a Python file that gets executed before the app starts, therefore this is also where you can configure logging. Here is an example instance/config.py file:

from logging.config import dictConfig

dictConfig({
    'version': 1,
    'formatters': {'default': {
        'format': '[%(asctime)s] %(levelname)s in %(module)s: %(message)s',
    }},
    'handlers': {'wsgi': {
        'class': 'logging.FileHandler',
        'filename': '/var/log/chantilly/error.log',
        'formatter': 'default'
    }},
    'root': {
        'level': 'INFO',
        'handlers': ['wsgi']
    }
})

SECRET_KEY = 'keep_it_secret_keep_it_safe'
SHELVE_PATH = '/usr/local/chantilly'

Using a different storage backend

Currently, the default storage backend is based on the shelve module. It's possible to use a different backend by setting the STORAGE_BACKEND environment variable.

Redis

Add the following to your instance/config.py file:

STORAGE_BACKEND = 'redis'
REDIS_HOST = 'localhost'
REDIS_PORT = 6379
REDIS_DB = 0

Naturally, the values have to be chosen according to your Redis setup.

Importing libraries

It's highly likely that your model will be using external dependencies. A prime example is the datetime module, which you'll probably want to use to parse datetime strings. Instead of specifying which libraries you want chantilly to import, the current practice is to import your requirements within your model. For instance, here is an excerpt taken from the New-York city taxi trips example:

from river import compose
from river import linear_model
from river import preprocessing

def parse(trip):
    import datetime as dt
    trip['pickup_datetime'] = dt.datetime.fromisoformat(trip['pickup_datetime'])
    return trip

def datetime_info(trip):
    import calendar
    day_no = trip['pickup_datetime'].weekday()
    return {
        'hour': trip['pickup_datetime'].hour,
        **{day: i == day_no for i, day in enumerate(calendar.day_name)}
    }

model = compose.FuncTransformer(parse)
model |= compose.FuncTransformer(datetime_info)
model |= preprocessing.StandardScaler()
model |= linear_model.LinearRegression()

Note that you need to make sure that the Python interpreter you're running chantilly with has access to the libraries you want to use.

Deployment

Essentially, chantilly is just a Flask application. Therefore, it allows the same deployment options as any other Flask application.

Examples

Development

git clone https://github.com/online-ml/chantilly
cd chantilly
python3 -m venv env
source env/bin/activate
pip install -e ".[dev]"
python setup.py develop

There are some extra dependencies that can be installed if necessary.

pip install -e ".[dev,redis]"

You can then run tests.

pytest

The default testing environment uses the shelve module; you can also use redis:

pytest --redis

You may also run the app in development mode.

export FLASK_ENV=development
chantilly run

To deploy to PyPI:

  1. Update chantilly/__version__.py
  2. pip install twine
  3. python setup.py sdist
  4. twine check dist/*
  5. twine upload dist/*

Roadmap

  • HTTP long polling: Currently, clients can interact with river over a straightforward HTTP protocol. Therefore the speed bottleneck comes from the web requests, not from the machine learning. We would like to provide a way to interact with chantilly via long-polling. This means that a single connection can be used to process multiple predictions and model updates, which reduces the overall latency.
  • Scaling: At the moment chantilly is designed to be run as a single server. Ideally we want to allow chantilly in a multi-server environment. Predictions are simple to scale because the model can be used concurrently. However, updating the model concurrently leads to reader-write problems. We have some ideas in the pipe, but this is going to need some careful thinking.
  • Grafana dashboard: The current dashboard is a quick-and-dirty proof of concept. In the long term, we would like to provide a straighforward way to connect with a Grafana instance without having to get your hands dirty. Ideally, we would like to use SQLite as a data source for simplicity reasons. However, The Grafana team has not planned to add support for SQLite. Instead, they encourage users to use plugins. We might also look into Prometheus and InfluxDB.
  • Support more paradigms: For the moment we cater to regression and classification models. In the future we also want to support other paradigms, such as time series forecasting and recommender systems.

Technical stack

Similar alternatives

Most machine learning deployment tools only support making predictions with a trained model. They don't cater to online models which can be updated on the fly. Nonetheless, some of them are quite interesting and are very much worth looking into!

License

river is free and open-source software licensed under the 3-clause BSD license.

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🍦 Deployment tool for online machine learning models

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