Slides: Building an Autonomous Engineering Org - Angie Jones, Agentic AI Foundation

Source Video

Building an Autonomous Engineering Org - Angie Jones, Agentic AI Foundation

Relationship To World's Fair 2026

These slides are extracted from a public AI Engineer YouTube video connected to World's Fair 2026. Speaker-matched clips are supporting context unless later confirmed as exact session recordings; official livestream recordings are day-level/event-level source material.

Related Scheduled Sessions

Extracted Slides

slide-001.jpg

OCR text:

md

Building an

Autonomous

Engineering Org

slide-002.jpg

OCR text:

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Code is not the

bottleneck.

slide-003.jpg

OCR text:

WhereWe Are

Experimentation

Adoption

Impact

explore and normalizeAl

scale usage through

drivemeasurableoutcomes

usage

structureandconsistency

andproductivitygains

slide-004.jpg

OCR text:

AGENTICENGINEER

Al MaturityModel

Stage0

Stage1

Stage2

Stage3

Stage4

Stage5

adapted from SteveYegge'sGasTown article

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OCR text:

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1% Power Users .

1/9/90 Bel Q% Ace

Consumers

90%

slide-006.jpg

OCR text:

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aes

Al Friendly Repo

Ls

slide-007.jpg

OCR text:

STAGE3

Al MaturityModel

Stage0

Stage1

Stage2

Stage3

Stage4

Stage5

Unengaged

Assisted

Conversational

Directed

Parallel

Autonomous

slide-008.jpg

OCR text:

a vi

ran

3 as a

Al-authored code Reported time savings Automated PRs

slide-009.jpg

OCR text:

STAGES

Al MaturityModel

Stage0

Stage1

Stage2

Stage3

Stage4

Stage5

Unengaged

Assisted

Conversational

Directed

Parallel

Autonomous

slide-010.jpg

OCR text:

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Its CEO said most companies will do the same

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OCR text:

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Slide-Derived Subjects To Review

Subject extraction uses video title, related session titles/descriptions, transcript context, and OCR text when available. OCR is best-effort and should be reviewed against the embedded slide images.