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Jitera

Shared context that turns AI into your teammate

Productivity
Artificial Intelligence
Tech
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Hunted byChris MessinaChris Messina

Jitera gives your team a shared context graph — so AI agents stop guessing and start working like real teammates. Trusted by Panasonic, Asahi Life, Sumitomo Electric, and 100+ teams.

Top comment

Hey PH, I'm Nao, founder of Jitera!

Without context, AI is a genius goldfish. With context, your teammate.

Jitera has three layers — Documents, Memory, and AI Agents.

By giving each agent its own context, we designed AI that works like a real teammate.

In Japan, we've been the context layer for multiple Fortune 500 and global companies — especially powerful for reverse engineering and product management in software development. Today, we're launching in the US!

🚀

Comment highlights

Hey PH 👋 Keima here, one of the makers of Jitera.

Recently, AI agents have become incredibly capable. Tools like Claude Code, Codex, and OpenClaw can look almost autonomous. But when you compare them to how humans actually work, there’s still a noticeable gap in the quality of real output.

We think that gap comes from context. Jitera is built around a Context Graph that continuously builds and updates the context an agent needs to do meaningful work. Agents don’t just use context. They grow it. They act based on what the team knows, and at the same time, accumulate new context through their work. In a way, they behave almost like something that “lives” on information.

Because of this, when you use Jitera as a team, the context that used to live only inside individual team members gradually becomes shared with agents. The result is a new kind of team experience, where humans and agents operate with the same understanding.

It’s still early, but we’d really love for you to try it with your team and share your feedback 🔥

Jitera team member here 👋

One thing I personally feel more and more in daily work: even with AI everywhere, great products are still built by teams.

AI can generate fast outputs, but real product development still needs discussion, shared understanding, feedback loops, and people aligning together. That’s why I’m excited about what we’re building at Jitera — not AI replacing the team, but humans and agents working together as teammates.

What makes this especially interesting to me is the “team in the loop” part. As agents interact with people across the team, they gradually understand more of the company’s tribal knowledge — past decisions, context behind discussions, ownership, constraints, and how the team actually works.

The context grows with the team, instead of staying trapped in isolated chats and private tabs.

Really proud to be part of a team building toward that direction 🙏

A shared context graph for agents is super interesting.

Curious: can agents adapt to individual working styles too (how someone writes, makes decisions, reviews), or is it mostly built around shared team context?

Hey, Ivan here, I work on Jitera.

Before this I spent a few years building open-source tooling for people running their own LLMs and agent stacks, so I came into the project with strong opinions about what agent platforms tend to get wrong.

I want to talk about the part of Jitera I'm very proud of, which isn't really something you'd put on a marketing page. It's how the platform is built underneath.

The obvious way to build something like this is to make one big core that handles everything itself. The platform decides how memory works, where telemetry goes, what file storage looks like, which LLM runtime gets used. That demos great, but breaks down when someone asks if their agents can route usage data to their own observability stack instead of ours, and another wants their agents to mount an S3 bucket as if it were a local filesystem, and a third wants to swap the LLM runtime to Anthropic's Claude SDK for one specific team's agents but not the rest. In the all-in-one version, each of those becomes its own fork in the codebase, and a year later it transforms into something nobody can reason about.

We built it differently, so every behavior in the platform is a small piece of middleware wrapped around the agent loop. Memory, telemetry, input classification, the cloud bucket mounts, even the LLM runtime itself, they all have the same shape and they stack on top of each other without interfering. Adding "always preload this URL into the agent's context" is just a tiny self-contained module, and the bucket mount and the per-agent telemetry sink are around the same. New behaviors plug in without making the platform more complicated. One interesting bit is that Jitera's own agents are built on the same exact primitives, so anyone using our products can replicate or enhance our agents on their own.

I've worked on enough infrastructure to know this is the kind of decision that pays you back every time and really proud of everything this direction enabled us to do.

I really hope that you'll like the product's flexibility and features, excited to see how it'll be used :)

Hey PH 👋 I'm Yota, one of the makers of Jitera.

Turn AI into your teammate. With shared context.

Over the past year, AI went from novelty to daily tool. But something still feels off.

Everyone prompts their own AI in their own tab. Outputs get copy-pasted, nobody reads them, and the team falls out of sync. Your organization isn't learning, it's just generating.

Even with AI everywhere, teamwork itself hasn't changed.

Here's what we believe: without context, AI is a genius goldfish, brilliant in the moment, then forgets everything. With shared context, it becomes your teammate.

Jitera builds that shared context as a Context Graph — connecting your code, docs, decisions, and tribal knowledge so every agent knows who owns what, what was decided, and what's already been tried.

That's Jitera.

What it looks like 👇

🧭 Context Graph
Connect docs, data, decisions, and people into shared context your agents can actually use.

🌱 Agents that grow your context
Agents ask the right teammate when context is missing — so your shared context keeps getting sharper.

📝 Humans and agents co-edit
Docs, specs, and notes edited together by humans and AI, in the same document.

💬 One shared thread, not 100 private tabs
The whole team chats with agents in one place. No more copy-paste from private ChatGPT windows.

Not just faster outputs. Better decisions, made together.

We're early, and we're building this with teams who want AI that actually fits how they work. If that's you, we'd love your feedback — the sharp kind 🙏

👉 https://jitera.com/

— Yota & the Jitera team

About Jitera on Product Hunt

Shared context that turns AI into your teammate

Jitera launched on Product Hunt on April 28th, 2026 and earned 94 upvotes and 7 comments, placing #16 on the daily leaderboard. Jitera gives your team a shared context graph — so AI agents stop guessing and start working like real teammates. Trusted by Panasonic, Asahi Life, Sumitomo Electric, and 100+ teams.

Jitera was featured in Productivity (650.6k followers), Artificial Intelligence (467.2k followers) and Tech (622.4k followers) on Product Hunt. Together, these topics include over 381k products, making this a competitive space to launch in.

Who hunted Jitera?

Jitera was hunted by Chris Messina. 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.

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