AI Native DevCon 2026 London — all conference sessions as interactive skills
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Robert Overweg — Co-founder of Leapfrog A.I. Leapfrog A.I. helps fashion brands optimise their studio, e-comm, and content creation through AI, serving some of the world's biggest fashion brands. Robert has 13+ years of experience in technology, digital transformation, and bringing new technology to large enterprises like Heineken global. Prior to this he had a part-time art career, with exhibitions at Centre Pompidou and Seoul Media Biennial.
We're running an experiment: all leadership shares one brain. It contains research, client context, delivery dates, client preferences. Each person knows different pieces. We stopped keeping them separate. Now in production or decision-making moments, it all weaves together. A multiplayer brain.
Every client gets their own section in the vault: brand DNA, preferences, delivery dates, what their AD flagged last week. Our orchestrator has access to it all. The AI learns their brand, their preferences, not generic patterns.
We built it using OpenClaw and structured vaults. A knowledge management layer that agents read from and write to. A living system where research, decisions, and learnings flow in continuously.
I'll cover how we structured it, what flows in, what changed when we stopped relying on memory, and what it enabled.
For a small team producing very high volumes of work, AI-native knowledge flow isn't optional — searching for files, chasing people for context, and losing learnings in chat windows is incompatible with the output rate. Leapfrog's answer is two structured vaults (personal research + per-client knowledge) orchestrated by OpenClaw, surfaced via Obsidian locally and Telegram on the go, fed by Granola-recorded meetings and a cron-driven research agent, with a strict "promote to vault" discipline so the team-wide brain only receives validated material. Keep this knowledge on your own stack, not in vendor chat windows.
| § | Heading | Summary | Transcript lines |
|---|---|---|---|
| 1 | Host introduction | Host frames the talk around pre-issue scoping/decision-making being the hardest part. | 1–10 |
| 2 | Why one brain — the frustration | Robert's motivation: finding files, knowing if a prototype is for 500 or 5,000 units, channeling org knowledge while working off-hours. | 11–25 |
| 3 | Who Leapfrog is | Small team, high-volume fashion-brand visual work (digital persons, AI imagery/video at scale), multiple production modules — can't afford to be lost in folders. | 26–40 |
| 4 | Two kinds of knowledge | Company knowledge (research, new developments) vs creation-pipeline knowledge (skills optimisation). | 41–48 |
| 5 | The starter stack | OpenClaw on GitHub sandbox repo + Obsidian locally + Telegram as 24/7 surface. Start simple. | 49–62 |
| 6 | What you get back | Natural-language sparring partner; CI/CD example; "no longer search for files — search for ideas and context". | 63–75 |
| 7 | The research agent (cron job) | Cron job on OpenClaw tracks specific Hex accounts and keywords; daily morning digest replaces newspaper. | 76–88 |
| 8 | Promote-to-vault discipline | Don't dump everything into the vault — promote only validated material; example of analysing an Anthropic skill and deciding not to add it. | 89–105 |
| 9 | Inside the vault — research + notes | ~1200 markdown files, no extra tooling needed yet; to-dos, related-nodes, manual connections; daily updates and meeting-transcript notifications. | 106–125 |
| 10 | The second vault — client information | Separate vault for per-client files; interprets whatever format clients use (Miro/Keynote/Figma); natural-language queries about delivered assets. | 126–140 |
| 11 | Dorsey quote + flatter orgs | AI undermines hierarchy-as-coordination; "what if information can be modeled, understood and distributed in real time". | 141–152 |
| 12 | Record everything | Bridgewater inspiration; OB open-source recorder (self-hosted, owns the data); Granola for meeting transcripts that mold around your notes. | 153–172 |
| 13 | Chief-of-staff agent (planned) | Surfaces the right sales questions in the right meetings; offloads ~20% of busywork so people get time back. | 173–185 |
| 14 | Own your stack | Don't leave your knowledge in vendor chat windows. | 186–192 |
| 15 | Keeping it real — failure modes | Conflicts and CDN merge issues; knowledge-sharing boundary problems; AI being brilliant and dumb at once; scripts and cron jobs breaking. | 193–212 |
| 16 | The actual architecture | Private vault → GitHub → GBrain (Gary Tan / Y Combinator) → GPT factor + zero entropy (vector/keywords/translation). Separate chief-of-staff instance. Telegram surface. Obsidian + Neo4j experiments. | 213–235 |
| 17 | How OpenClaw search works for them | Memory search (semantic over memory.md), vault context, GBrain for large research, direct file reads; routes some queries to Haiku for cost. | 236–250 |
| 18 | Advice for getting started | Start small, one person suffers first; run locally; security hardening; data-use alignment; chief-of-staff agent first; then research agent. | 251–270 |
| 19 | Q&A — scaling client files | Local-only today; permissions and data-segregation still open. | 271–285 |
| 20 | Q&A — time cost to set up | About a month of work; once scripted, re-setup is ~30 seconds; ongoing maintenance pain when configs change. | 286–298 |
| 21 | Q&A — how team interacts; AD preferences | Leadership uses ~80% of it; ~10–15 things promoted to wider team; AD preferences captured subjectively + 60-place feedback loop. | 299–315 |
| 22 | Q&A — why OpenClaw | Picked early after release; suits ~1500 large markdown files; likes its proactiveness; multiple agents on top within same orchestrator, with promoted vault on separate DB. | 316–330 |
| 23 | Q&A — Hermes and coding | Considered Hermes for troubleshooting but didn't have bandwidth; uses OpenClaw to orchestrate a code factory pipeline that delegates bulk work to Codex. | 331–345 |
| 24 | Wrap and logistics | Applause, party announcement, prize-draw notice, tube-strike warning. | 346–355 |
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