Kateřina Ščavnická
Data Governance in the Era of AI
#1about 5 minutes
The high cost and failure of ungoverned data
An initial strategy of collecting massive amounts of data led to high costs, complex queries, and AI models that produced incorrect results.
#2about 2 minutes
Establishing clear data ownership with data mesh
The data mesh philosophy makes data producers responsible for their data, creating clear ownership from domain systems to domain datasets.
#3about 2 minutes
Defining the six essential aspects of a data product
A true data product must have six key qualities: ownership, documentation, data quality checks, architecture, a data contract, and security.
#4about 2 minutes
Prioritizing data governance with a tier-based system
Classifying data products into three tiers based on business impact helps focus governance efforts on the most critical assets first.
#5about 1 minute
Using data contracts to manage critical tier one data
Data contracts are formal agreements between data producers and consumers that define responsibilities, SLAs, and procedures for handling issues with critical data.
#6about 1 minute
Overcoming the cultural challenge of data governance
Implementing data governance is not just a technical fix but a long-term cultural shift that requires changing the entire company's mindset around data.
#7about 2 minutes
Measuring the impact of data governance initiatives
Implementing governance dramatically reduced the number of tracked interactions, queries, and dashboards while improving data completeness and analyst productivity.
#8about 2 minutes
Enabling successful AI with a governed data foundation
With a governed data foundation in place, AI can be successfully used for semantic validation, anomaly detection, and powering a natural language query Slack bot.
#9about 1 minute
Why data governance is the key to unlocking value
The key takeaway is that more data often leads to more confusion, and implementing strong data governance is the only way to create clarity and value.
Related jobs
Jobs that call for the skills explored in this talk.
Matching moments
35:33 MIN
Ensuring AI reliability with monitoring and data governance
Navigating the AI Revolution in Software Development
37:57 MIN
Q&A on AI adoption, tools, and challenges
Navigating the AI Wave in DevOps
24:08 MIN
Practical governance and technical solutions for ethical AI
AI & Ethics
16:06 MIN
Data silos are the enemy of machine learning
AI beyond the code: Master your organisational AI implementation.
11:11 MIN
Why data silos and lack of governance kill AI projects
Big Business, Big Barriers? Stress-Testing AI Initiatives.
00:08 MIN
How to prepare your HR data for successful AI adoption
HR Tech: An Essential Ingredient for Tech-Driven Business Transformation
59:05 MIN
Achieving hyper-personalization and preparing for AI adoption
Inside the AI Revolution: How Microsoft is Empowering the World to Achieve More
00:25 MIN
Overcoming enterprise AI silos with a unified strategy
Beyond GPT: Building Unified GenAI Platforms for the Enterprise of Tomorrow
Featured Partners
Related Videos
Unlocking Value from Data: The Key to Smarter Business Decisions-
Taqi Jaffri, Kapil Gupta & Farooq Sheikh and Tomislav Tipurić
Blueprints for Success: Steering a Global Data & AI Architecture
Dominik Schneider
GenAI Security: Navigating the Unseen Iceberg
Maish Saidel-Keesing
Big Business, Big Barriers? Stress-Testing AI Initiatives.
Marin Niehues
The AI Skills Gap: What Tech Leaders Must Get Right
Thomas Wollmann, Gerrit Einhoff, Kara Sprague & Alexandra Wudel
The AI-Ready Stack: Rethinking the Engineering Org of the Future
Jan Oberhauser, Mirko Novakovic, Alex Laubscher & Keno Dreßel
AI in Leadership: How Technology is Reshaping Executive Roles
Jeff Hausmann, Jasmin Kaiser, Bernd Datler & Sonja Alvarez
Behind the Code: How Women Are Powering the Future of AI
Alexandra Wudel, Madalina Florean & Laura Moritz
From learning to earning
Jobs that call for the skills explored in this talk.

