🚀 Big News: Socket Acquires Coana to Bring Reachability Analysis to Every Appsec Team.Learn more
Socket
Sign inDemoInstall
Socket

oracle-ml-insights

Package Overview
Dependencies
Maintainers
6
Alerts
File Explorer

Advanced tools

Socket logo

Install Socket

Detect and block malicious and high-risk dependencies

Install

oracle-ml-insights

ML Observability Insights Library

1.3.1
PyPI
Maintainers
6

Oracle Machine Learning Observability Insights Library (ML Insights)

ML Insights is a python library for data scientists, ML engineers and developers. Insights can be used to ingest data in different formats, apply row based transformations and monitor data and ML Models from validation to production.

ML Insights library also provides many ways to process and evaluate data and ML models. The options include low code alternative for customisation, a pre-built application and and further extensibility through custom applications and custom components.

Installation

ML Insights can be installed in a python 3.8 environment using:

pip install oracle-ml-insights

Several ML Insights dependencies are optional (for eg: Execution Engine) and can be installed with:

pip install oracle-ml-insights[option]

where "option" can be one of:

  • "dask", to run ML Insights on Dask Execution Engine

How it works

ML Insights helps evaluate and monitor data and ML model for entirety of ML Observability lifecycle.

Insights is component based where each component has a specific responsibility with a workflow managing the individual components.

Insights provides components to carry out tasks like data ingestion, row level data transformation, metric calculation and post processing of metric output. More details on these are covered in the Getting Started section.

In very simple terms, one has to provide location to the input data set that needs to be processed, select any additional simple transformation needed on the input data (for example, converting an un-structured column to structured one), and decide which metrics should be calculated for different features (columns of data). The user can also decide to define some post-action to be performed once all the metrics have been calculated.

Insights provides a simple, declarative API, out of box components covering majority of common use cases to choose from. Also, Insights enables users to author json-based configurations that can be used to define and customise all of its core features.

  • Insights currently supports CSV, JSON, and JSONL data types.

  • It also supports major execution engines like Native Pandas, Dask, and Spark.

  • Insights provides metrics in different groups like

    • Data Integrity
    • Data Quality/ Summary
    • Feature and Prediction Drift Detection
    • Model Performance for both classification and Regression Models
  • Insights also supports integration for writing metric data, or connecting to OCI monitoring service.

Contact

ML Insights SDK is offered by the OCI Data Science team. You can reach us through Oracle Support - https://www.oracle.com/support/.

License

Copyright (c) 2023, 2024, Oracle and/or its affiliates. Licensed under the Oracle Free Use Terms and Conditions (FUTC) License.

Keywords

Oracle Cloud Infrastructure

FAQs

Did you know?

Socket

Socket for GitHub automatically highlights issues in each pull request and monitors the health of all your open source dependencies. Discover the contents of your packages and block harmful activity before you install or update your dependencies.

Install

Related posts