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Concept Drift vs Data Drift: How AI Can Beat the Change

Viso.ai

Two of the most important concepts underlying this area of study are concept drift vs data drift. In most cases, this necessitates updating the model to account for this “model drift” to preserve accuracy. Find out how Viso Suite can automate your team’s projects by booking a demo.

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Escaping POC Purgatory: Evaluation-Driven Development for AI Systems

O'Reilly Media

Someone hacks together a quick demo with ChatGPT and LlamaIndex. The system is inconsistent, slow, hallucinatingand that amazing demo starts collecting digital dust. Check out the graph belowsee how excitement for traditional software builds steadily while GenAI starts with a flashy demo and then hits a wall of challenges?

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MLOps Helps Mitigate the Unforeseen in AI Projects

DataRobot Blog

You need full visibility and automation to rapidly correct your business course and to reflect on daily changes. Imagine yourself as a pilot operating aircraft through a thunderstorm; you have all the dashboards and automated systems that inform you about any risks. Request a Demo. See DataRobot MLOps in Action.

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3 AI Trends from the Big Data & AI Toronto Conference

DataRobot Blog

Knowing this, we walked through a demo of DataRobot AI Cloud MLOps solution , which can manage the open-source models developed by the retailer and regularly provide metrics such as service health, data drift and changes in accuracy. Request a Demo. Accelerating Value-Realization with Industry Specific Use Cases.

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Deepchecks: Enabling automated testing of your ML models.

Mlearning.ai

Introduction Deepchecks is a groundbreaking open-source Python package that aims to simplify and enhance the process of implementing automated testing for machine learning (ML) models. With Deepchecks, developers can start incorporating automated testing early in their workflow and gradually build up their test suites as they go.

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Create SageMaker Pipelines for training, consuming and monitoring your batch use cases

AWS Machine Learning Blog

If the model performs acceptably according to the evaluation criteria, the pipeline continues with a step to baseline the data using a built-in SageMaker Pipelines step. For the data drift Model Monitor type, the baselining step uses a SageMaker managed container image to generate statistics and constraints based on your training data.

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Bringing More AI to Snowflake, the Data Cloud

DataRobot Blog

The automated deployment pushes trained models as Java UDFs, running scalable inference inside Snowflake, and leveraging Snowpark to score the data for speed and elasticity, while keeping data in place. Learn more about the new monitoring job and automated deployment. launch event on March 16th.