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Barie.AI

Agentic AI Platform for Deep Research & Execution

Role

Technical Product Manager – Sole Product Owner

Company

Programmers Force

Period

Jan 2025 – Jun 2025

Websitebarie.ai
01 /

Context

When I started thinking about what became Barie, the obvious move was to build a better deep research tool. ChatGPT and Gemini's research features were impressive but shallow: they searched the web and summarised, but couldn't execute. The first version of the concept was exactly that, a research assistant with better sourcing, better reasoning, and fewer hallucinations. MCP (Model Context Protocol) was emerging as the architectural key that would let LLMs connect to external tools. The product opportunity wasn't a better research tool. It was an agent that could do the work.

02 /

The Problem

Enterprises were spending hours reformatting and completing work that AI had only partially done. The market needed an agentic model that researches with live sources, reasons across data points, connects to business applications, retains context, and delivers finished outputs, not a well-formatted starting point.

03 /

The Hard Choices

The original deep research framing was comfortable. It was a product I could have shipped faster and marketed more easily. The pivot to full agentic execution, with MCP integration, memory retention, and multi-tool orchestration, was a harder bet. It required solving two problems that simple research tools ignore.

The first was context. You cannot give an AI agent access to 200+ MCP connectors simultaneously because the context window collapses and performance degrades. The architecture required intelligent connector selection: the agent needed to know which tools to load based on the task, not load all of them by default. This is a harder engineering problem than it sounds.

The second was hallucination. Research agents that pull from live sources introduce new failure modes: stale data presented as current, cited sources that don't support the claim, and confident synthesis from low-quality inputs. The pipeline required source verification, citation requirements, and multi-step reasoning checks before any output was delivered. Getting this right while maintaining speed of live queries was the core technical challenge of the build.

04 /

My Approach

I identified the gap, named the product ("Barie," making complex work "barie easy"), and executed with radical constraint. Prototype in one month, three engineers, near-zero budget. Website built in days on Vercel. Every decision maximised output per resource to validate the market thesis before committing further. The constraint was the discipline: it forced us to build exactly what was needed to prove the concept, nothing more.

05 /

What Was Built

Agentic Architecture

Complete technical foundation including orchestration that breaks complex tasks into parallel subtasks, MCP integration for 200+ connectors (Gmail, Drive, Notion, Slack, Calendar) with intelligent context management to prevent token bloat, memory retention across sessions, hallucination minimisation through source verification and citation requirements, and multi-model support.

Deep Research Engine

In-depth research combining live market trends, expert opinions, and industry data. Visualises sources in real time. Over 90% pass rate on GAIA Level 1 and top-tier results on Level 3, the most complex multi-step reasoning category. Exceeded ChatGPT and Gemini output quality at prototype stage.

MCP Connectors

40+ pre-built integrations with custom MCP server support. Context-efficient design prevents bloat because the agent loads only the tools relevant to each task. Read, analyse, and write across business apps from a single conversation.

GTM Validation

Waitlist-first strategy that generated 1,000+ sign-ups in 2 months with minimal spend. This confirmed organic demand for agentic AI before scaling acquisition.

06 /

Impact

1,000+

Waitlist sign-ups in 2 months with minimal spend

Named the product and established the brand identity

Functional prototype in 1 month with 3 engineers and near-zero budget

Research quality exceeded ChatGPT and Gemini at prototype stage

Top-tier GAIA Level 3 benchmark performance

Foundation supports continued expansion: 40+ connectors, VS Code extension, Ace Max agent

07 /

Reflection

Barie taught me that constraint is a feature, and that the hardest product decisions are the ones where the easier path is also the defensible path. Building a better deep research tool would have been fine. Choosing to solve the harder problem (full agentic execution with context-efficient MCP integration and hallucination-resistant pipelines) is what made the product genuinely differentiated. One month, three engineers, near-zero budget forced every decision to be precise. The 1,000+ waitlist sign-ups confirmed this was a genuine market need. Everything Barie has become was built on that one-month prototype and the decision to take the harder bet.