Context Engineering: Building the Knowledge Layer AI Agents Need

Abstract

Every AI coding tool can generate code. Very few can generate the right code for your organization — because they're missing context. They don't know why your team chose Redis over DynamoDB, what the team decided in a Slack thread from two months ago about the auth migration, or which architectural patterns your principal engineers actually enforce in review.

This talk is a practitioner's guide to building a context engine: the reasoning layer that continuously synthesizes organizational knowledge across disparate sources into unified, queryable understanding. I'll walk through the problems you actually have to solve — reasoning across systems that don't agree with each other, searching globally before you can reason, maintaining identity-scoped permissions so every user and agent only sees what they should, and personalizing results based on who's asking and what they're working on. These are the engineering challenges that make naive RAG fall short, drawn from real lessons building this at scale.

Includes a live demo showing the same coding task with and without organizational context, and an honest look at what we got wrong along the way.


Speaker

Brandon Waselnuk

Developer Relations @Unblocked

Brandon Waselnuk is Developer Relations at Unblocked, a platform that provides decision-grade context developers and their AI tools need to ship software. He previously led product at Mintlify and co-founded Squire AI, an AI code review platform. A Y Combinator alum (S21) and Venture Partner at Pioneer Fund, Brandon also led product initiatives at IBM, helping create Design Thinking @ IBM and managing portfolio planning for IBM's $1B+ Business Analytics division. He's passionate about building tools that make engineering teams more productive.

Read more

Session Sponsored By

Give your AI tools the context they're missing. Unblocked surfaces the context developers and agents need to generate reliable code, reviews, and answers.

Date

Monday Mar 16 / 05:05PM GMT ( 50 minutes )

Location

Westminster (4th Fl.)

Video

Video is not available

Share

From the same track

Session

Scaling the Unknown: How monday.com Built Performance Guardrails for AI and Custom Apps

Monday Mar 16 / 10:35AM GMT

At monday.com, we’ve learned that performance bottlenecks are never solved—only relocated.

Speaker image - Eviathar	 Moussaffi

Eviathar Moussaffi

R&D Director and Site Lead @Monday

Session

Maximising an Agentic AI Ecosystem: Trust, Control and Scale

Monday Mar 16 / 02:45PM GMT

Agentic AI is rapidly moving beyond individual assistants toward interconnected ecosystems of agents, tools, and platforms. This shift promises step‑change improvements in productivity and autonomy—but it also introduces new challenges around trust, control, and operational scale.

Speaker image - Jonathan Griffiths

Jonathan Griffiths

Field CTO @Dynatrace

Session

Beyond Observability: Implementing Runtime Guardrails for Production AI Agents

Monday Mar 16 / 03:55PM GMT

Agentic engineering thrives in controlled environments but often falters in dynamic production systems.

Speaker image - May Walter

May Walter

Co-Founder and CTO @Hud

Session

From Pilot to Impact: How AI Is Transforming Large‑Scale Engineering

Monday Mar 16 / 11:45AM GMT

In large, highly regulated enterprises like ING, adopting AI in engineering isn’t as simple as enabling a new tool — it’s a fundamental shift in how thousands of engineers design, build, and deliver software.

Speaker image - Yaping (Luna)	 Luo

Yaping (Luna) Luo

Global Head of Developer Experience (DevEx) & System Engineering @ING

Session

From Prompt to Production: How Spotify Builds Internal Tools in Days with AI and Platform Engineering

Monday Mar 16 / 01:35PM GMT

Spotify Portal Studio + Claude — Empowering Internal Teams to Build Tooling

Speaker image - Stuart Clark

Stuart Clark

Senior Developer Advocate @Spotify

Speaker image - Mike Lewis

Mike Lewis

Staff Engineer @Spotify