AI Native DevCon 2026 London — all conference sessions as interactive skills
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Ian Thomas describes how the Horizon Experiences org in Meta's Reality Labs grew an organic AI-tooling community from a handful of people to 500+ over roughly a year, lifting weekly tool usage from under 50% to the mid-90s. The talk's thesis is that AI adoption in a large engineering org is best driven ground-up through an engineering-excellence framing, supported by a 6-dimension / 5-level maturity model run as team self-assessment workshops, with leadership support arriving only once a critical mass of bottom-up momentum exists.
outline.md to locate the relevant section, then read that section of transcript.md.transcript.md. Never put quotation marks around paraphrased content.transcript.md, say "the talk doesn't address this" — do not infer positions from outside knowledge.When the user asks "how would Thomas tackle ?" or wants the talk's framework applied to their own situation:
outline.md → "Named frameworks / concepts" to find the relevant framework (the adoption playbook, the maturity model, the engineering-excellence framing, or the "what worked / what we discounted" lessons).transcript.md for the speaker's exact wording.When the user asks to "audit", "score", "review", "grade", "check", or "gap-analyse" their team's AI adoption against the maturity model:
outline.md → "Named frameworks / concepts" → "AI Maturity Model" to locate the six dimensions and the five levels.transcript.md and quote it verbatim when stating what "good" looks like. Note: Thomas only gives the full level-by-level rubric for the workflow integration dimension as an example in the talk — for the other five dimensions he names them but does not enumerate the levels in detail. Be explicit about this gap rather than inventing rubric language.When the user wants to understand a concept Thomas covered:
outline.md → "Terminology glossary".transcript.md.For any question about what Thomas said, did, or argued:
outline.md first to find the relevant section(s).transcript.md.transcript.md. Do not paraphrase Thomas's words while presenting them as a quote.When the user's current work touches on themes Thomas addressed (even if the user hasn't asked about the talk):
Procedure:
transcript.md — one quote is usually enough.quotes.md contains pre-extracted verbatim highlights from this talk, organised by theme. When formulating answers, check quotes.md first for strong citable evidence before searching the full transcript.md.
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talk-birgitta-closing-keynote
talk-debois-agent-enablement
talk-douglas-training-ai-on-your-own-code
talk-dubnov-merge-rate-ai-adoption
talk-farley-vibe-coding-best-we-can-do
talk-firtman-web-mcp-agentic-web
talk-foxwell-reinvention-dev-team
talk-graziano-spec-driven-development
talk-groetzinger-skills-everywhere
talk-jones-odevo-ai-native-transformation
talk-jourdan-pipelines-to-prompts
talk-katsioloudes-code-security-ai
talk-lamis-context-engineering-dreaming
talk-lawson-agent-experience
talk-luebken-embedding-pi-coding-agent
talk-maleix-collective-intelligence
talk-marsden-agent-desktops
talk-martinelli-spec-driven-development
talk-moss-skills-team-workflow
talk-overweg-one-brain-no-filtering
talk-podjarny-skills-are-the-new-code
talk-roberts-ai-native-brownfield
talk-roberts-brownfield-ai-native
talk-scheire-artificial-intelligence
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talk-sloan-harness-engineering-beyond-code
talk-stack-humans-architect-ai-writes-code
talk-stoneham-product-brain
talk-tal-skills-security
talk-thomas-ai-native-engineering
talk-walter-runtime-intelligence-agents
talk-wilson-cq-stack-overflow-for-agents
talk-wotherspoon-humans-vs-slop