As organizations accelerate the deployment of artificial intelligence and advanced analytics, insufficient attention is often given to the foundational role of data quality, structure, and governance. Although algorithmic sophistication continues to advance, evidence from both research and practice indicates that AI outcomes are shaped primarily by the integrity of underlying data assets rather than by model design alone. Weak data foundations can introduce inconsistencies, bias, and operational risk that are subsequently amplified through automated and data driven systems. These conditions frequently erode trust in AI outputs and limit the effectiveness of decision support capabilities. As a result, organizations may experience stalled adoption and reduced value realization from AI initiatives. This session reframes commonly observed AI implementation challenges as data foundation challenges, emphasizing the role of data governance, master data management, metadata, lineage, and standardization in enabling reliable and scalable AI use. Drawing on enterprise analytics and data governance practice, the discussion examines how foundational data capabilities influence explainability, accountability, and decision readiness within AI enabled systems. Particular attention is given to balancing governance rigor with organizational flexibility to support innovation while maintaining control. The session offers practical insights into strengthening data foundations to support responsible and effective AI deployment. Attendees will gain a clearer understanding of why sustainable AI success remains contingent upon disciplined data
Leticia Naqvi
People Analytics Research Manager, AppleAI Starts with Data: Why Governance, Quality, and Standards Still Decide Outcomes
management practices.
Founding The Data Lodge in 2019, Valerie is as committed to data literacy as it gets. With train-the-trainer bootcamps, and a peer community, she’s certifying the world’s first Data Literacy Program Leads. In 2023, The Data Lodge was acquired as the basis of a newly formed venture, Data Society Group (DSG), aimed at fostering data and AI literacy and cultural change at scale. In addition to running the Lodge, Valerie is excited to also serve as the Chief Strategy Officer of DSG. Previously, Valerie was a Gartner Research VP in the CDO team where she pioneered the Data Literacy research and was awarded Gartner’s Top Thought Leadership Award (2018). Valerie has more than 30 years of experience in consulting leadership and telecommunications. Valerie holds a B.S. in Math (SUNY College, Buffalo) and an M.S. in Applied Math (New Mexico State). She lives between the Adirondacks in Upstate NY, and Sarasota, FL with her husband Brian, and their yellow lab, Cooper, the Lodge mascot.
Valerie Logan
CEO & Founder, The Data LodgeTBD

James Meng
Senior Fellow, SuperComputer Center, University of California, San Diego
As organizations race to deploy AI agents across their enterprises, they're encountering a critical bottleneck: fragmented knowledge bases and siloed agent capabilities that prevent comprehensive, cross-domain insights. This presentation explores how to address this challenge through a federated approach to enterprise agentic AI infrastructure. This session examines three fundamental challenges facing enterprise AI adoption: The Knowledge Fragmentation Problem: Organizations are independently building knowledge bases for specific use cases, leading to duplicated effort, inconsistent data parsing strategies, and context drift as source documents evolve. Each team creates their own chunking, embedding, and retrieval mechanisms without a unified architecture—resulting in AI agents that cannot access cross-functional domain knowledge or maintain accuracy at scale. The Agent Collaboration Gap: Today's AI agents operate in isolation within their domains. When business leaders ask complex questions spanning customers, pricing, services, and operations, they receive fragmented answers requiring manual synthesis. Without standardized agent-to-agent communication mechanisms, authentication frameworks, or centralized agent registries, organizations cannot deliver the holistic insights that drive strategic decision-making. The Governance and Innovation Paradox: Enterprises need to enable rapid experimentation while maintaining security, compliance, and user experience standards. Traditional centralized approaches stifle innovation; purely decentralized approaches create chaos. The challenge is building federated frameworks that guide discovery, assessment, incubation, and graduation of AI solutions without creating bottlenecks. This presentation introduces a three-pillar architecture for enterprise agentic AI: Unified Federated Knowledge Base: A bottom-up approach where domain teams create specialized knowledge bases that integrate into an organization-wide ecosystem through standardized ingestion pipelines, interfaces for vector databases and knowledge graphs, and evaluation frameworks for accuracy and relevance. Cross-Domain Agent Collaboration: Technical mechanisms enabling AI agents to discover, authenticate, and communicate with each other—transforming isolated data points into comprehensive business intelligence that spans organizational boundaries. Federated Innovation Framework: Secure sandbox environments with structured governance models that accelerate development time by 50% while maintaining enterprise standards for security and user experience. Attendees will learn: This session is essential for Chief Data Officers, enterprise architects, and data leaders navigating the transition from siloed AI experiments to scalable, federated agentic AI ecosystems that deliver measurable business value.
Dinesh Thangaraju
Head of AWS Data Platform, Amazon Web ServicesBreaking Down Data Silos: Building Federated Knowledge Infrastructure for Enterprise Agentic AI at Scale
Artificial intelligence is rapidly becoming a board-level issue, reshaping enterprise strategy, risk, governance, operations, and fiduciary accountability. Yet while boards are increasingly expected to oversee AI, many organizations still lack the structures, literacy, and leadership alignment required to govern intelligent systems responsibly and effectively. This session explores the emerging discipline of AI Oversight and the evolving role of the Chief Data Officer in enabling boards to govern AI with confidence, transparency, and strategic clarity. Drawing from the research and book AI Oversight: A New Mandate for Corporate Directors and Executives, Dr. Elena Alikhachkina examines how governance models must evolve from traditional control structures toward continuous oversight of analytical, generative, and agentic AI systems. A key focus of the discussion is how the CDO role is expanding beyond data management into enterprise stewardship, board engagement, AI governance, and strategic risk leadership. As organizations navigate increasing regulatory pressure, ethical concerns, model transparency challenges, and AI-driven transformation, CDOs are uniquely positioned to become strategic advisors to boards and executive teams. Participants will learn: Designed for board directors, C-suite executives, Chief Data Officers, AI leaders, risk professionals, and governance stakeholders, this session provides practical guidance for building trusted, resilient, and accountable AI-enabled enterprises.
Elena Alikhachkina
Chief Data and AI Officer, TE ConnectivityAI Oversight and how CDOs should engage with Boards of Directors
Have you ever heard (or thought) the following: Data quality really is the secret sauce that brings together all things data with what is really important to our organizations such as AI, customer satisfaction, efficiently providing products and service, managing risk, etc. Data quality is the underlying flavor that makes everything work better and taste so good, but too many people just can’t put their finger on it. Join us as Danette McGilvray shares key ingredients to preparing a delicious dish of high-quality data that will satisfy the appetite of what you care about in your organization – because everything depends in some way on data.
Danette McGilvray
President and Principal Consultant, Granite Falls Consulting, Inc.Data Quality: The Secret Sauce That Makes Artificial Intelligence and All Things Data Taste So Good

Dr. John R. Talburt
Distinguished Professor of Information Science, UA Little Rock
Robert Abate will present a summarization of the publication of “CDO First 90 Days” best practices in a presentation. The presentations purpose is to enable and empower CDO’s with the primary requirements of the position and establish a cadence with business decision makers. This presentation, discussion and audience participation should provide for a number of benefits and this discussion will include the following topics: Attendees Will Learn:
Robert Abate
CDAIO Best Practices Presentation - Establishing The Office & Roadmap
Back To Proseminar SeriesBack To Speakers

Stuart Madnick
Professor & Founding Director, Cybersecurity at MIT Sloan (CAMS)
The autonomous organisation represents the next frontier in business transformation, moving beyond advanced analytics, piecemeal AI, and single-function automation. We are on the precipice of true organizational “self-driving” capabilities which will redefine business models and economies. While many enterprises still struggle with basic AI implementations, leading organisations are poised to introduce intelligent systems that can sense, decide, perform, interact, and adapt across entire business functions at digital speed. Drawing parallels with the evolution of autonomous driving, Laney will define the seven levels of agentic AI – from early-stage chatbots to full business self-awareness and execution – and share new technology providers and business executives can prepare for this imminent inevitability.
Douglas Laney
Data, analytics and AI advisor, reseacher, and authorAgentic AI: The Road to Fully Autonomous Organizations