We're sunsetting PodQuest on 2025-07-28. Thank you for your support!
Export Podcast Subscriptions
cover of episode AI Reliability, Spark, Observability, SLAs and Starting an AI Infra Company

AI Reliability, Spark, Observability, SLAs and Starting an AI Infra Company

2025/6/27
logo of podcast MLOps.community

MLOps.community

AI Chapters Transcript
Chapters
The podcast discusses the evolution of data from a back-office function to a core product. The limitations of existing data platforms, built 12-13 years ago, are highlighted, along with the impact of AI and the rise of unstructured data.
  • Inference is the new transform.
  • Existing platforms weren't built for AI workloads.
  • Hardware evolution allows for single-node processing.
  • Unstructured data (text, images, video) is now prevalent.

Shownotes Transcript

LLMs are reshaping the future of data and AI—and ignoring them might just be career malpractice. Yoni Michael and Kostas Pardalis unpack what’s breaking, what’s emerging, and why inference is becoming the new heartbeat of the data pipeline.

// Bio

Kostas Pardalis

Kostas is an engineer-turned-entrepreneur with a passion for building products and companies in the data space. He’s currently the co-founder of Typedef. Before that, he worked closely with the creators of Trino at Starburst Data on some exciting projects. Earlier in his career, he was part of the leadership team at Rudderstack, helping the company grow from zero to a successful Series B in under two years. He also founded Blendo in 2014, one of the first cloud-based ELT solutions.

Yoni Michael

Yoni is the Co-Founder of typedef, a serverless data platform purpose-built to help teams process unstructured text and run LLM inference pipelines at scale. With a deep background in data infrastructure, Yoni has spent over a decade building systems at the intersection of data and AI — including leading infrastructure at Tecton and engineering teams at Salesforce.

Yoni is passionate about rethinking how teams extract insight from massive troves of text, transcripts, and documents — and believes the future of analytics depends on bridging traditional data pipelines with modern AI workflows. At Typedef, he’s working to make that future accessible to every team, without the complexity of managing infrastructure.

// Related Links

Website: https://www.typedef.ai

https://techontherocks.show

https://www.cpard.xyz






Catch all episodes, blogs, newsletters, and more: https://go.mlops.community/TYExplore

MLOps Swag/Merch: [https://shop.mlops.community/]

Connect with Demetrios on LinkedIn: /dpbrinkm

Connect with Kostas on LinkedIn: /kostaspardalis/

Connect with Yoni on LinkedIn: /yonimichael/





Timestamps:





[00:00] Breaking Tools, Evolving Data Workloads

[06:35] Building Truly Great Data Teams

[10:49] Making Data Platforms Actually Useful

[18:54] Scaling AI with Native Integration

[24:04] Empowering Employees to Build Agents

[28:17] Rise of the AI Sherpa

[36:09] Real AI Infrastructure Pain Points

[38:05] Fixing Gaps Between Data, AI

[46:04] Smarter Decisions Through Better Data

[50:18] LLMs as Human-Machine Interfaces

[53:40] Why Summarization Still Falls Short

[01:01:15] Smarter Chunking, Fixing Text Issues

[01:09:08] Evaluating AI with Canary Pipelines

[01:11:46] Finding Use Cases That Matter

[01:17:38] Cutting Costs, Keeping AI Quality

[01:25:15] Aligning MLOps to Business Outcomes

[01:29:44] Communities Thrive on Cross-Pollination

[01:34:56] Evaluation Tools Quietly Consolidating