Skip to main content

The client for persisting and deploying models to Xplainable cloud.

Project description

xplainable

Real-time explainable machine learning for business optimisation

Xplainable makes tabular machine learning transparent, fair, and actionable.

Why Was Xplainable Created?

In machine learning, there has long been a trade-off between accuracy and explainability. This drawback has led to the creation of explainable ML libraries such as Shap and Lime which make estimations of model decision processes. These can be incredibly time-expensive and often present steep learning curves making them challenging to implement effectively in production environments.

To solve this problem, we created xplainable. xplainable presents a suite of novel machine learning algorithms specifically designed to match the performance of popular black box models like XGBoost and LightGBM while providing complete transparency, all in real-time.

Xplainable Cloud

This Python package is free and open-source. To add more value to data teams within organisations, we also created Xplainable Cloud that brings your models to a collaborative environment.

Preprocessing with Xplainable Cloud

Before modeling, it's essential to preprocess your data. Xplainable Cloud facilitates this process by allowing you to create and manage preprocessors in the cloud.

import xplainable as xp
import os
from xplainable_client import Client

#Initialising the client
XClient = Client(api_key=os.environ['XP_API_KEY'])

#Creating a Preprocessor ID
preprocessor_id = XClient.create_preprocessor_id(
    preprocessor_name="Preprocessor Name",
    preprocessor_description="Preprocessor Description",
)

#Creating a Preprocessor Version
preprocessor_version = XClient.create_preprocessor_version(
    preprocessor_id, #preprocessor_id,
    pipeline, # <-- Pass the pipeline
    df # <-- Pass the raw dataframe
)

#Loading the Preprocessor Client
pp_cloud = XClient.load_preprocessor(
    preprocessor_id,
    preprocessor_version["version_id"],
    gui_object=False # Set to true to load the GUI object, keep as False for pipeline
    )

Modelling with Xplainable Cloud

After preprocessing, the next step is to create and train your model. Xplainable Cloud supports model versioning and ID creation to streamline this process.

#Creating a Model Id
model_id = XClient.create_model_id(
    model,
    model_name="Model Name",
    model_description='Model Description'
)

#Creating a Model Version
version_id = XClient.create_model_version(
    model,
    model_id,
    X_train,
    y_train
)

Deployments with Xplainable Cloud

Once your model is ready, deploying it is straightforward with Xplainable Cloud. You can deploy, activate, and manage API keys for your model deployment keys within your IDE or environment.

#Creating a Model Deployment
deployment = XClient.deploy(
    hostname="https://inference.xplainable.io", 
    model_id=model_id, 
    version_id=version_id 
)

#Activating the Deployment
XClient.activate_deployment(deployment['deployment_id'])

#Generating an API Key
deploy_key = XClient.generate_deploy_key(
    'API Key Name', 
    deployment['deployment_id'], 
    7 #-> Days until expiration
    )

#Hitting the endpoint
response = requests.post(
    url="https://inference.xplainable.io/v1/predict",
    headers={'api_key': deploy_key['deploy_key']},
    json=body
)

#Obtaining the value response
value = response.json()




Thanks for trying xplainable!

Made with ❤️ in Australia


© copyright xplainable pty ltd

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

xplainable_client-1.2.2.post1.tar.gz (19.9 kB view details)

Uploaded Source

Built Distribution

xplainable_client-1.2.2.post1-py3-none-any.whl (24.1 kB view details)

Uploaded Python 3

File details

Details for the file xplainable_client-1.2.2.post1.tar.gz.

File metadata

File hashes

Hashes for xplainable_client-1.2.2.post1.tar.gz
Algorithm Hash digest
SHA256 057813309e568248439b142ba8d04e40bb0bc7d0fa5264c7c36f59422eadf324
MD5 8252905f2fa3c7d0d8d03cbef6227007
BLAKE2b-256 809ab806c4a8f02bc053d2ae5797d36cee07d1873df6ea96a399a7391026953e

See more details on using hashes here.

File details

Details for the file xplainable_client-1.2.2.post1-py3-none-any.whl.

File metadata

File hashes

Hashes for xplainable_client-1.2.2.post1-py3-none-any.whl
Algorithm Hash digest
SHA256 30c62321aecfd399e479ab60e86b59f9035adc896a9280c301fae32966453af8
MD5 109194286c7e2585e50dac8a63f4ec23
BLAKE2b-256 810535fe0defbd93e6cb3dfac008de86e23c173b3062876a15fe9d06e9a8c837

See more details on using hashes here.

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page