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Home » Why ‘DC-Check’ Highlights the Need for Data-Centric AI Frameworks and Standards
Hyperautomation Minute

Why ‘DC-Check’ Highlights the Need for Data-Centric AI Frameworks and Standards

Aaron BackBy Aaron BackMarch 9, 20233 Mins Read
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In episode 88 of the AI/Hyperautomation Minute, Aaron Back discusses the importance of data-centric artificial intelligence (AI) frameworks after the release of the “DC-Check” framework.

This episode is sponsored by Acceleration Economy’s Digital CIO Summit, taking place April 4-6. Register for the free event here. Tune in to the event to hear from CIO practitioners discuss their modernization and growth strategies.

Highlights

00:44 — UCLA and the University of Cambridge recently released a new data-centric AI framework. With this framework, the researchers have coined a term for “DC-Check.”

00:58 — The goal behind this framework is to address a few things. The first aspect is that the researchers were aiming to shift current AI approaches from making the machine learning (ML) model work to making real-world ML systems

02:00 — The second is focused on three areas:

  1. Serves as a data-centric AI guide, providing an actionable checklist for each stage of the ML pipeline which reduces the risk of missing something
  2. Built for both practitioners and researchers, suggesting data-centric tools, modeling approaches, and research opportunities
  3. Goes beyond being a documentation tool by unlocking greater transparency and accountability regarding ML pipelines, enabling companies to maintain compliance

03:53 — The third is comprised of four components:

  1. Data — the input of data into the AI and ML models as well as the output of data; the framework was built with considerations to improve the quality of data, so it’s proactive in data selection, curation, and cleaning
  2. Training — the models are trained as new parameters are fed into them; new data is always ingested to help the outcomes of these models and improve the training
  3. Testing — the data-centric testing will consider aspects such as data splits, targeted metrics, stress tests, and evaluations on subgroups to test how the model would run inside various areas
  4. Deployment — this is based on the focus of the post-deployment areas, specifically around data and model monitoring, adaptation, and retraining
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Guidebook: Insights Into the Why and How of AI and Hyperautomation’s Impact

06:13 — Aaron explains, “It’s like a loop that goes back in so you deploy it out, but then it goes back in as new data emerges…and is fed back into that framework again.”

06:26 — AI has come a long way. However, it’s not yet completely standardized and ethical. Implementing frameworks is becoming more of a true standard around AI and ML. Bias, whether intentional or unintentional, is still a major concern. There are big strides being made to mitigate bias.

07:13 — Aaron foresees the DC-Check framework to be an extension of the AI Bill of Rights that the White House released. He’s hopeful that there will be stronger AI/ML standards put in place that are specifically built to integrate across cybersecurity and data standards that have already been in place.

07:40 — The lines are continuing to blur between AI, security, and data as cloud platforms are being used more. Further, the use of multi-cloud adds more complexity. Aaron highlights that standardization and frameworks are becoming increasingly important across AI, security, and data as these areas continue to work more together.


Looking for real-world insights into artificial intelligence and hyperautomation? Subscribe to the AI and Hyperautomation channel:

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Aaron Back
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Aaron Back (Bearded Analyst), Chief Content Officer for Acceleration Economy, focuses on empowering individuals and organizations with the information they need to make crucial decisions. He surfaces practical insights through podcasts, news desk interviews, analysis reports, and more to equip you with what you need to #competefast in the acceleration economy. | 🎧 Love listening to podcasts wherever you go? Then check out my "Back @ IT" podcast and listen wherever you get your podcasts delivered: https://back-at-it.simplecast.com #wdfa

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