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Amit Paka on transparency

From Model Performance Monitoring and Why You Need it Yesterday // Amit Paka // MLOps Coffee Sessions #42 · · MLOpscommunity

“The lack of transparency in the decisioning of these models played a key role and it came up again and again.”

Amit Paka
Cofounder, Fiddler AI
transparencyexplainabilitymodel decisioning

On , Amit Paka, Cofounder at Fiddler AI, spoke about transparency during Model Performance Monitoring and Why You Need it Yesterday // Amit Paka // MLOps Coffee Sessions #42 on MLOpscommunity.

Model Performance Monitoring and Why You Need it Yesterday // Amit Paka // MLOps Coffee Sessions #42
Watch on YouTube
Model Performance Monitoring and Why You Need it Yesterday // Amit Paka // MLOps Coffee Sessions #42
MLOpscommunity
Watch on YouTube
Coffee Sessions #42 with Amit Paka of Fiddler AI, Model Performance Monitoring. //Abstract Machine Learning accelerates business growth but is prone to performance degradation due to its high reliance on data. Moreover, MLOps is often fragmented in many organizations, causing frictions to debug models in production. With new rules from the EU that focus on trust and transparency, it’s becoming more important to keep track of model performance. But how? We propose a new framework, a centralized ML Model Performance Management powered by Explainable AI. Learn more about how you can stay compliant while maximizing your model performance at all times with explainability and continuous monitoring. //Bio Amit is the co-founder and CPO of Fiddler, a Machine Learning Monitoring company that empowers companies to efficiently monitor and troubleshoot ML models with Explainable AI. Prior to founding Fiddler, Paka led the shopping apps product team at Samsung. Paka founded Parable, the Creative Photo Network, now part of the Samsung family. He also led PayPal's consumer in-store mobile payments launching innovations like hardware beacon payments and has developed successful startup products particularly in online advertising - paid search, a contextual, ad exchange, and display advertising. Paka has passions for actualizing new concepts, building great teams, and pushing the envelope, and aims to leverage these skills to help define how AI can be fair, ethical, and responsible. -------------- ✌️Connect With Us ✌️ ------------ Join our slack community: https://go.mlops.community/slack Follow us on Twitter: @mlopscommunity Sign up for the next meetup: https://go.mlops.community/register Catch all episodes, Feature Store, Machine Learning Monitoring and Blogs: https://mlops.community/ Connect with Demetrios on LinkedIn:   / dpbrinkm   Connect with Vishnu on LinkedIn:   / vrachakonda   Connect with Amit on LinkedIn:   / amitpaka   Timestamps: [00:00] Thank you to Fiddler AI! [00:46] Introduction to Amit Paka [05:04] Amit's background in tech [09:55] EU Regulation [12:39] "The goal that the EU seems to be going for is they want to go for helping build human-centric and responsible AI." [13:28] 4 AI Categories: 1. Unacceptable risk applications 2. High-risk applications 3. Limited risk applications 4. Minimal risk applications [14:58] Deep dive into High-risk applications [17:28] Digital Services Act (DSA) and Digital Marketing Act (DMA) [19:02] Military [19:33] "They don't know what they don't know and they probably wanted the door open." [21:13] US on JIC Team - transparency and increasing trustworthiness on AI [23:06] Diversity of industries and Explainability [24:22] "The urgent need for Explainability comes from verticals that are facing the problems today on the ground and cannot run their business." [30:09] Model Performance Management (MPM) [34:05] "When your model is facing issues, you now have to root-cause it within life." [35:40] Control Theory [36:10] "Control Theory means that you do not just measure it but you can influence it so you can actually keep it." [38:14] Abstraction into being useful [43:23] "You can train a model that accurately represents the reality." [44:00] Data scientist doing ML Flow [49:55] Amit's favorite surprise! [53:04] Banking and Insurance adoption of ML [55:48] Advise ML Scientists and Data Scientists in terms of Explainable AI [58:25] "Models are incredibly hard to debug. You're just training a model for high accuracy but you don't know how that accuracy is distributed." [59:41] "Typically, the actual budget might come from someone else but the user might be somebody else." [59:49] Linking of EU Regulation and MPM
Amit Paka

About Amit Paka

Cofounder · Fiddler AI

Amit Paka, cofounder of Fiddler AI, discussed model performance monitoring and the proposed EU artificial intelligence regulation during a June 2021 appearance on the MLOps Coffee Sessions podcast. Paka stated that before founding Fiddler, while leading the product team on shopping apps at Samsung, he observed challenges that data teams faced in operationalizing models, including difficulty running A/B tests. He said the lack of transparency in model decisioning "played a key role and it came up again and again," and that the Fiddler team aligned on a mission of "helping teams build trust with AI." Paka described the proposed EU regulation as aiming to help teams build "human-centric and trustful AI," classifying applications into categories including banned "unacceptable" uses and "high-risk" applications such as self-driving cars or credit scoring that would face new oversight. He argued that for high-risk applications, the law would require sufficient transparency for users to understand and control how models work, and that monitoring, record-keeping, and fairness validation are what the regulation is pushing toward. Paka also introduced the concept of "Model Performance Management" (MPM), which he described as a centralized framework powered by explainable AI that involves measuring, validating, monitoring, and analyzing model behavior across the lifecycle, with the ability to feed new data representations back into training.

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