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Context Mode Insight
Engineering signal for AI-assisted teams
The first Solution on Context Mode Platform — built on the open-source MCP plugin 400,000+ developers already run locally. One opt-in toggle turns local AI coding sessions into engineering signal your CTO, EM, CISO and FinOps read on Monday morning: per-engineer productive rate, retry waste, blockers named, role-narrowed views. Never source code, never prompts. 222 detection patterns, served as chat through MCP. self-serve · MCP-served.
Hi everyone — Mert here, maker of Context Mode Insight.
Four months ago (first commit Feb 23, 2026) I started context-mode, an open-source MCP plugin that sandboxes tool output and saves AI coding agents ~98% of their context window. It grew to 400,000+ developers across 17 platforms (Claude Code, Cursor, Copilot, Codex, Gemini CLI, Aider…), hit #1 on Hacker News, and sits at 18,100+ GitHub stars. All organic.
But the same question kept coming back from engineering leaders:
"We run Claude Code, Cursor and Copilot across 50 engineers. My CTO asks on Friday what the $50K spend returned this quarter — and I don't have an honest answer."
Insight is the opt-in org layer on top of the same plugin. Flip one toggle and what leaves the machine is structural events only — tool names, file paths, error and retry counts, session durations, commit outcomes. Never source code, prompts, or file content.
Insight runs 222 patterns over those events and turns them into actionable answers — ask from the agent your team already runs, or read them straight off the dashboard:
CTO › "What did our $50K AI coding spend return this quarter?"
EM › "Who's blocked on the payments team this week — and on what?"
EM › "Anyone trending toward burnout — late nights, weekend pushes, climbing retries?"
EM › "Who shipped the most this sprint without review time ballooning?"
IC › "How am I doing versus the rest of my team this sprint?"
CISO › "Did any session touch secret-shaped paths in the last 24h?"
FinOps › "Break our AI spend down by team for this month."
DevOps › "Is commit quality holding, or are we shipping more reverts?"
SecOps › "Flag the riskiest sessions across the org right now."
Seven role-narrowed views (CTO, EM, IC, CISO, FinOps, DevOps, SecOps) — every answer an actionable insight (who to unblock, where spend is leaking, which risk to chase), with the full UI dashboard underneath for drill-down.
On pricing: the plugin already saves your agents ~98% of their context per session — real money never spent. Insight reinvests a fraction of that back into the lens. The engine pays for the view.
I'll be in the thread all day. The one thing I'd genuinely love to hear: which role view would you add for your org?
Links:
· Site: https://context-mode.com
· Context Saving: https://context-mode.com/context...
· OSS (ELv2): https://github.com/mksglu/contex...
· Insight: https://context-mode.com/insight
— Mert
About Context Mode Insight on Product Hunt
“Engineering signal for AI-assisted teams”
Context Mode Insight was submitted on Product Hunt and earned 24 upvotes and 3 comments, placing #23 on the daily leaderboard. The first Solution on Context Mode Platform — built on the open-source MCP plugin 400,000+ developers already run locally. One opt-in toggle turns local AI coding sessions into engineering signal your CTO, EM, CISO and FinOps read on Monday morning: per-engineer productive rate, retry waste, blockers named, role-narrowed views. Never source code, never prompts. 222 detection patterns, served as chat through MCP. self-serve · MCP-served.
On the analytics side, Context Mode Insight competes within Open Source, Developer Tools, Artificial Intelligence and GitHub — topics that collectively have 1.1M followers on Product Hunt. The dashboard above tracks how Context Mode Insight performed against the three products that launched closest to it on the same day.
Who hunted Context Mode Insight?
Context Mode Insight was hunted by Mert Köseoğlu. A “hunter” on Product Hunt is the community member who submits a product to the platform — uploading the images, the link, and tagging the makers behind it. Hunters typically write the first comment explaining why a product is worth attention, and their followers are notified the moment they post. Around 79% of featured launches on Product Hunt are self-hunted by their makers, but a well-known hunter still acts as a signal of quality to the rest of the community. See the full all-time top hunters leaderboard to discover who is shaping the Product Hunt ecosystem.