Stephen Harris : What's our readiness for AI, and how do we get there?
Manage episode 444180106 series 3557343
In this episode of the Praxi Pod, host Andrew Turner speaks with Stephen Harris, a seasoned expert in data management and AI. They discuss Stephen's extensive background in the data space, the importance of data management for AI readiness, and the impact of regulatory compliance on data practices. Stephen emphasizes the need for organizations to validate their AI outputs, understand data ownership, and the evolving role of Chief Data Officers. The conversation also touches on the significance of data curation, classification, and the future of AI in organizations.
Takeaways
- Organizations must test AI internally before external deployment.
- Data management is crucial for AI readiness.
- Regulatory compliance drives better data practices in industries.
- AI should be used to validate and improve data quality.
- Education on AI and data management is still lacking.
- Data ownership issues can create internal conflicts.
- The role of Chief Data Officers is evolving and critical.
- Data curation and classification are foundational responsibilities.
- Metadata management is essential for data confidence.
- The future of AI will see a shakeout based on data quality.
Chapters
00:00 Introduction to Stephen Harris and His Journey
02:47 The Importance of Data Management and AI Readiness
05:54 Regulatory Compliance and Its Impact on Data Management
09:04 The Role of AI in Data Validation and Customer Experience
12:10 Understanding AI and Machine Learning in Business
14:54 The Need for Education in AI and Data Management
18:00 Validating AI Outputs and Managing Edge Cases
20:47 The Challenges of Data Ownership and Governance
24:05 The Role of Chief Data Officers in Organizations
27:08 The Future of AI and Data Management Roles
29:52 Data Curation and Classification in the AI Era
32:49 The Importance of Metadata and Data Quality
35:55 The Future of AI and Its Impact on Organizations
17 episodes