---
title: "Episode 26: I’m not a data scientist, but I work for an AI/ML startup building on Serverless Containers"
id: "9825"
type: "podcast"
slug: "episode-26-i-m-not-a-data-scientist-but-i-work-for-an-ai-ml-startup-building-on-serverless-containers"
published_at: "2018-09-05T06:00:00+00:00"
modified_at: "2023-03-06T18:40:32+00:00"
url: "https://www.lastweekinaws.com/podcast/screaming-in-the-cloud/episode-26-i-m-not-a-data-scientist-but-i-work-for-an-ai-ml-startup-building-on-serverless-containers/"
markdown_url: "https://www.lastweekinaws.com/podcast/screaming-in-the-cloud/episode-26-i-m-not-a-data-scientist-but-i-work-for-an-ai-ml-startup-building-on-serverless-containers.md"
taxonomy_shows:
  - "Screaming in the Cloud"
---

About the Author Corey is the Chief Cloud Economist at Duckbill, where he specializes in helping companies improve their AWS bills by making them smaller and less horrifying. He also hosts the "Screaming in the Cloud" and "AWS Morning Brief" podcasts; and curates "Last Week in AWS," a weekly newsletter summarizing the latest in AWS news, blogs, and tools, sprinkled with snark and thoughtful analysis in roughly equal measure.

[https://podcasts.apple.com/us/podcast/screaming-in-the-cloud/id1361244178](https://podcasts.apple.com/us/podcast/screaming-in-the-cloud/id1361244178)

[https://overcast.fm/itunes1361244178/screaming-in-the-cloud](https://overcast.fm/itunes1361244178/screaming-in-the-cloud)

[https://pca.st/7l2e](https://pca.st/7l2e)

[https://open.spotify.com/show/3fBA9eNkGliCzp3Xuy1GVd](https://open.spotify.com/show/3fBA9eNkGliCzp3Xuy1GVd)

[https://feeds.transistor.fm/screaming-in-the-cloud](https://feeds.transistor.fm/screaming-in-the-cloud)

## Episode Summary

Do you deal with a lot of data? Do you need to analyze and interpret data? Veritone’s platform is designed to ingest audio, video, and other data through batch processes to process the media and attach output, such as transcripts or facial recognition data. Today, we’re talking to Christopher Stobie, a DevOps professional with more than seven years of experience building and managing applications. Currently, he is the director of site reliability engineering at Veritone in Costa Mesa, Calif. Veritone positions itself as a provider of artificial intelligence (AI) tools designed to help other companies analyze and organize unstructured data. Previously, Christopher was a technical account manager (TAM) at Amazon Web Services (AWS); lead DevOps engineer at Clear Capital; lead DevOps engineer at ESI; Cloud consultant at Credera; and Patriot/THAAD Missile Fire Control in the U.S. Army. Besides staying busy with DevOps and missiles, he enjoys playing racquetball in short shorts and drinking good (not great) wine. Some of the highlights of the show include: Various problems can be solved with AI; companies are spending time and money on AI Tasks can be automated that are too intelligent to write around simple software Machine learning (ML) models are applicable for many purposes; real people with real problems and who are not academics can use ML Fargate is instant-on Docker containers as a service; handles infrastructure scaling, but involves management expense Instant-on works with numerous containers, but there will probably be a time when it no longer delivers reasonable fleet performance on demand Decision to use Kafka was based on workload, stream-based ingestion Veritone’s writes code that tries to avoid provider lock-in; wants to make an integration as decoupled as possible People spend too much time and energy being agnostic to their technology and giving up benefits If you dream about seeing your name up in lights, Christopher describes the process of writing a post for AWS Pain Points: Newness of Fargate and unfamiliarity with it; limit issues; unable to handle large containers Links: Veritone Christopher Stobie on LinkedIn Building Real Time AI with AWS Fargate SageMaker Fargate Docker Kafka Digital Ocean

## Episode Show Notes & Transcript

Do you deal with a lot of data? Do you need to analyze and interpret data? Veritone’s platform is designed to ingest audio, video, and other data through batch processes to process the media and attach output, such as transcripts or facial recognition data.

Today, we’re talking to Christopher Stobie, a DevOps professional with more than seven years of experience building and managing applications. Currently, he is the director of site reliability engineering at Veritone in Costa Mesa, Calif. Veritone positions itself as a provider of artificial intelligence (AI) tools designed to help other companies analyze and organize unstructured data. Previously, Christopher was a technical account manager (TAM) at Amazon Web Services (AWS); lead DevOps engineer at Clear Capital; lead DevOps engineer at ESI; Cloud consultant at Credera; and Patriot/THAAD Missile Fire Control in the U.S. Army. Besides staying busy with DevOps and missiles, he enjoys playing racquetball in short shorts and drinking good (not great) wine.

Some of the highlights of the show include:

- Various problems can be solved with AI; companies are spending time and money on AI
- Tasks can be automated that are too intelligent to write around simple software
- Machine learning (ML) models are applicable for many purposes; real people with real problems and who are not academics can use ML
- Fargate is instant-on Docker containers as a service; handles infrastructure scaling, but involves management expense
- Instant-on works with numerous containers, but there will probably be a time when it no longer delivers reasonable fleet performance on demand
- Decision to use Kafka was based on workload, stream-based ingestion
- Veritone’s writes code that tries to avoid provider lock-in; wants to make an integration as decoupled as possible
- People spend too much time and energy being agnostic to their technology and giving up benefits
- If you dream about seeing your name up in lights, Christopher describes the process of writing a post for AWS
- Pain Points: Newness of Fargate and unfamiliarity with it; limit issues; unable to handle large containers

Links:

- [Veritone](https://www.veritone.com/)
- [Christopher Stobie on LinkedIn](https://www.linkedin.com/in/cstobie)
- [Building Real Time AI with AWS Fargate](https://aws.amazon.com/blogs/architecture/building-real-time-ai-with-aws-fargate/)
- [SageMaker](https://aws.amazon.com/sagemaker/)
- [Fargate](https://aws.amazon.com/blogs/aws/aws-fargate/)
- [Docker](https://www.docker.com/)
- [Kafka](https://kafka.apache.org/)
- [Digital Ocean](https://do.co/screaming)

.

 View Full Transcript  Hide Full Transcript

## You might also like

[More Podcast Episodes](https://www.lastweekinaws.com/podcast/screaming-in-the-cloud/)

### [The Power of Saying No: Growing by Narrowing Your Focus with Corey Quinn](https://www.lastweekinaws.com/podcast/screaming-in-the-cloud/the-power-of-saying-no-growing-by-narrowing-your-focus-with-corey-quinn/)

Screaming in the Cloud

04.16.2026

29 Minutes

[Play Episode](https://www.lastweekinaws.com/podcast/screaming-in-the-cloud/the-power-of-saying-no-growing-by-narrowing-your-focus-with-corey-quinn/)

### [Build vs Buy: The Hidden Costs of “Just Building It” with Ahmed Bebars](https://www.lastweekinaws.com/podcast/screaming-in-the-cloud/build-vs-buy-the-hidden-costs-of-just-building-it-with-ahmed-bebars/)

Screaming in the Cloud

04.02.2026

43 Minutes

[Play Episode](https://www.lastweekinaws.com/podcast/screaming-in-the-cloud/build-vs-buy-the-hidden-costs-of-just-building-it-with-ahmed-bebars/)

### [FinOps, AI, and the Cost of Cloud Chaos with J.R. Storment](https://www.lastweekinaws.com/podcast/screaming-in-the-cloud/finops-ai-and-the-cost-of-cloud-chaos-with-j-r-storment/)

Screaming in the Cloud

03.19.2026

48 Minutes

[Play Episode](https://www.lastweekinaws.com/podcast/screaming-in-the-cloud/finops-ai-and-the-cost-of-cloud-chaos-with-j-r-storment/)
