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Ship Agents: A Virtual Conference
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Ship Agents: A Virtual Conference

There's a specific set of problems that show up after the demo:

Agent decisions that look reasonable in isolation but compound into failures across turns. Multi-agent handoffs that silently lose context. Security models that scan prompts but miss intent. Retrieval that's fast in staging and unreliable in production. Pricing models that can't survive contact with finance.

Ship Agents is a two-hour virtual conference where practitioners share the failures, fixes, and production patterns they've earned the hard way - from securing agent intent across multi-turn interactions, to building data architectures that keep retrieval reliable past the demo stage, to designing APIs that actually work for tool calling and MCP integrations.

Speakers from major tech companies and early-stage startups. Every talk grounded in systems that are live and serving real users. If you're past the prototype phase and deep in the "why does this keep breaking" phase, this is your event.



Speakers

Sai Sandeep Kantareddy
Sr Applied Machine Learning Engineer @ 7-Eleven
Deborah Jacob
CTO @ botanu, Inc.
Elizabeth Fuentes
Developer @ AWS
Sarmad Afzal
Lead AI Engineer @ Royal Cyber
Kamal Srinivasan
Data Engineering @ Unitone.ai
Mika Sagindyk
Founder @ 2027.dev
Pratik Mehta
AI Architect @ Nvidia
Divya Mahajan
Software Engineer @ Amazon
Xia Hua
CEO @ Traceforce
Brad Sun
Cofounder @ InferX
Deepak Kamboj
Senior Software Engineer @ Microsoft Corp.
Jenet Sung
Software Engineer @ Google
Joel Ponukumatla
Founder @ Offlyn.ai
Demetrios Brinkmann
Chief Happiness Engineer @ MLOps Community

Agenda

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From4:00 PM
To4:05 PM
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Opening / Closing
Welcoming Notes
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From4:05 PM
To4:25 PM
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Presentation
Why Most AI Agent Systems Fail in Production and the Data Architecture Fix

Many AI agent systems fail not because of model quality, but because of weak data architecture, observability, and system contracts. In this talk, I'll share production lessons from building enterprise-scale RAG and agentic platforms, covering intent-driven data design, retrieval reliability, latency/cost tradeoffs, and AI-to-system integrations (MCP/tool calling). Attendees will learn how to design agent systems that remain reliable beyond demos.

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From4:25 PM
To4:45 PM
GMT
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Presentation
Building a Production-Grade Sales Assistant Agent for Thousands of Users at Nvidia

I have built and deployed a production grade sales assistant agent at Nvidia which is live and improving over the past 12 months. Sharing some hard learned lessons from the ground. It's not just about a single system deployed once but an entire eco-system which continuously improves as we scale and upgrade and at times reduce and rewire to let the agent do more.

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From4:45 PM
To4:55 PM
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You Can't Do Outcome-Based Pricing for AI Agents Without Cost Per Outcome

Teams want to price AI agents by resolution, conversation, or task, yet most can't clearly explain what a single outcome costs. This talk covers lessons from building a production system to measure cost per outcome, the real-world challenges encountered, and the design patterns that enabled outcome-based pricing.

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From4:55 PM
To5:15 PM
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From Recommendation Systems to Personalized Agents

AI agents excel at reasoning but remain "socially blind," lacking the "wisdom of the crowd" found in traditional recommendation pipelines. While we can already predict user needs at scale, this intelligence is rarely integrated into LLMs. This talk explores the intersection of generative models and industrial-scale retrieval, evolving static tools into agents that leverage collaborative intelligence to bridge the gap between logical reasoning and human intuition.

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From5:15 PM
To5:35 PM
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In-production agent systems - what's running, what broke, what you changed

As AI agents transition from experimental demos to enterprise production, the "happy path" of autonomous execution often collides with the messy reality of legacy integrations, non-deterministic failures, and "infinite loop" costs. This session moves past the hype to explore the actual state of agentic systems in 2026. We will dissect common production architectures—from single-agent tool loops to hierarchical swarms—and reveal the most frequent failure modes encountered in the field, such as context abandonment and coordination silent-failures. Finally, we’ll discuss the "Engineering Pivot": why teams are trading raw autonomy for deterministic workflows, multi-layer guardrails, and session-level tracing.

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From5:35 PM
To5:50 PM
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From DX to AX (Agent Experience): The Challenge of Devtools

AI agents are becoming primary users of developer tools -- and most devtools aren't ready. We built the first benchmark to evaluate agent readiness. Based on five distinct factors, we evaluate how easy it is for AI agents to adopt devtools. After evaluating 40+ tools across search, auth, databases etc., we've uncovered key fundamentals behind great AX. This talk covers the patterns that make tools agent-ready along with actionable insights for any team building for the agentic future.

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From5:55 PM
To6:15 PM
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Context Engineering - Stop Agents from Choking on Their Own Data

Context Engineering - Stop Agents from Choking on Their Own Data

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Event has finished
March 26, 4:00 PM GMT
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MLOps Community
Event has finished
March 26, 4:00 PM GMT
Online
Organized by
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MLOps Community
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