Page de couverture de AI with Maribel Lopez: IBM Granite Models with Kate Soule

AI with Maribel Lopez: IBM Granite Models with Kate Soule

AI with Maribel Lopez: IBM Granite Models with Kate Soule

Écouter gratuitement

Voir les détails du balado

À propos de cet audio

Episode Summary

In this episode, Maribel Lopez interviews Kate Soule, Director of Technical Product Management for IBM's Granite products. They discuss IBM's third-generation AI models, their focus on efficiency and enterprise readiness, and the latest advancements including vision capabilities and reasoning features.

Guest

Kate Soule - Director of Technical Product Management for IBM's Granite products

Key Topics & Timestamps

00:04 - Introduction

  • Maribel introduces the show and Kate Soule
  • Brief overview of IBM Granite as fit-for-purpose, open-source enterprise AI models

00:48 - What is IBM Granite?

  • Designed as core building blocks for enterprises building with generative AI
  • Focus on efficiency with smaller model sizes
  • Monthly innovation updates to keep pace with rapidly evolving field

02:19 - Understanding AI Reasoning

  • Explanation of reasoning capabilities in AI models
  • How allowing models to generate more text at inference time can improve performance
  • Cost/benefit tradeoffs of reasoning features

03:13 - Enterprise AI Model Selection Criteria

  • Moving beyond "one model to rule them all" thinking
  • Importance of fit-for-purpose models
  • Why smaller models can be customized more easily
  • Trust and transparency considerations

05:38 - AI Governance and Safety

  • How to evaluate models for governance requirements
  • Safety evaluations and benchmarks as table stakes
  • Systems-based approach to safety with guardrails
  • IBM's Granite Guardian and protection mechanisms

08:55 - Benefits of Smaller Models

  • Why size matters: cost, latency, and customization advantages
  • Smaller models are easier to customize and require less computing power
  • IBM's transparent approach to training data

10:13 - Future of AI Evaluation

  • Performance per cost becoming the key evaluation metric
  • The growing importance of flexibility in model selection
  • How the "efficient frontier" between cost and performance will differentiate providers

12:41 - IBM's Vision Models

  • IBM's pragmatic enterprise focus for multimodal capabilities
  • Vision understanding (image in, text out) for practical business use cases
  • Specialization for documents, charts, and dashboards
  • Delivering powerful capabilities in only 2 billion parameters

15:25 - Understanding Model Size Context

  • Evolution from millions to billions of parameters
  • Practical considerations of deploying different-sized models
  • Finding the right cost-benefit trade-off for specific use cases

Ce que les auditeurs disent de AI with Maribel Lopez: IBM Granite Models with Kate Soule

Moyenne des évaluations de clients

Évaluations – Cliquez sur les onglets pour changer la source des évaluations.