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Deepchecks Pro Capabilities

Deepchecks Pro is built upon the same foundations as the Open Source package.

It is offered as a comprehensive MLOps solution for continuous validation of ML systems, and is typically deployed on-prem, so that none of your sensitive data will have to leave your premises.

Deepchecks Pro is designed to help not only the data scientists, but also various other stakeholders, including data science leaders, ML engineers, analysts, software engineers, and more.

Observability of ML in production

Deepchecks Pro provides a customizable dashboard, that enables you to view and explore all of the relevant real-time metrics related to your ML systems.

Observability of ML in production

Observability <span>of ML in production</span>

Alerting about various issues in live ML systems

Deepchecks Pro analyzes the inputs and outputs of your ML systems in real-time, and alerts you about various issues related to data drift, data integrity, etc.

Alerting about various issues in live ML systems

Alerting <span>about various issues in live ML systems</span>

Quick Querying of problematic production data

Deepchecks Pro enables you to always be one click away from running code on the relevant production data.

Quick Querying of problematic production data

Quick Querying <span>of problematic production data</span>

Detecting Mismatches between research and production environments

Deepchecks Pro connects both to the training data and the production data, and notifies you about mismatches related to the data scheme, distributions, etc.

Detecting Mismatches between research and production environments

Detecting Mismatches <span>between research and production environments</span>

Validation Of training data and ML model

Deepchecks Pro automatically analyzes the data and the model, detecting potential pitfalls before the model is deployed into production.

Validation Of training data and ML model

Validation <span>Of training data and ML model</span>

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Identifying and Preventing Key ML PitfallsDec 5th, 2022    06:00 PM PST

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