EPISODE · Mar 30, 2026 · 44 MIN
Preparing Enterprise Data for Reliable AI Systems
from Deconstructing Data · host BDEX
AI systems are only as reliable as the data behind them.Disconnected tools, inconsistent data, and fragmented signals continue to slow down decision-making across organizations. As more companies adopt AI, the challenge is not just implementation; it is ensuring the data feeding those systems is clean, structured, and usable.On this episode of Deconstructing Data, Jessie Lizak and David Finkelstein are joined by Eugina Jordan, CEO and Co-founder of YOUnifiedAI to explore what it takes to prepare enterprise data for reliable AI systems.Eugina brings a unique perspective shaped by decades of experience in building and scaling businesses, leading go-to-market strategies, and driving innovation across industries. With over 24 patents and a background in creating and launching new market categories, she focuses on solving one of the most persistent challenges in business: connecting fragmented data to enable faster, more informed decisions.In this conversation, we’ll explore:1. Data Consistency and Cleansing for Reliable AI Systems2. Structured vs Unstructured Data Strategies for Enterprise AI3. Activating Intent Signals from Fragmented Data4. Tech StackFrom improving data quality to making sense of disconnected systems, this episode looks at how organizations can build stronger data foundations to support AI-driven decision-making.Join us as we break down how data consistency, structure, and signal activation play a role in making AI systems more reliable and actionable.
What this episode covers
AI systems are only as reliable as the data behind them.Disconnected tools, inconsistent data, and fragmented signals continue to slow down decision-making across organizations. As more companies adopt AI, the challenge is not just implementation; it is ensuring the data feeding those systems is clean, structured, and usable.On this episode of Deconstructing Data, Jessie Lizak and David Finkelstein are joined by Eugina Jordan, CEO and Co-founder of YOUnifiedAI to explore what it takes to prepare enterprise data for reliable AI systems.Eugina brings a unique perspective shaped by decades of experience in building and scaling businesses, leading go-to-market strategies, and driving innovation across industries. With over 24 patents and a background in creating and launching new market categories, she focuses on solving one of the most persistent challenges in business: connecting fragmented data to enable faster, more informed decisions.In this conversation, we’ll explore:1. Data Consistency and Cleansing for Reliable AI Systems2. Structured vs Unstructured Data Strategies for Enterprise AI3. Activating Intent Signals from Fragmented Data4. Tech StackFrom improving data quality to making sense of disconnected systems, this episode looks at how organizations can build stronger data foundations to support AI-driven decision-making.Join us as we break down how data consistency, structure, and signal activation play a role in making AI systems more reliable and actionable.
NOW PLAYING
Preparing Enterprise Data for Reliable AI Systems
No transcript for this episode yet
Similar Episodes
No similar episodes found.
Similar Podcasts
No similar podcasts found.