The experimentation platform for the agentic era
Run agentic workflows in production-like environments.
Define the experiment once, repeat it at scale, measure what changes.
What do you want to test first?
Agents are becoming software’s primary user.Build systems that work for them.
Evaluate agentic workflows the way they actually run
- Agents
- Opus · High, Sonnet · High
- Treatments
- Baseline, + skill
- Library
- ⬡ 12 repos
- Environment
- cloud
- Trials
- 3
Define any experiment
Choose the workflow, treatment, agents, and configuration. Oqoqo turns it into a repeatable experiment.
Run it in a production-like environment
Execute trials in clean, isolated sandboxes so agents interact with the same setup every time.
Capture the full trajectory
Record tool calls, commands, tokens, outputs, and the exact step where the agent got stuck.
- Steps
- 0
- Tokens
- 0k
- Cost
- $0.00
- Duration
- 0m 00s
- Tool calls
- 0
Measure the effect
Compare success, latency, token use, and frictions across runs. Ask questions grounded in the trace when you need the why.
Feed the next loop
Use the results to improve the agent-facing interface or workflow, then rerun automatically, on a schedule, or in CI/CD.
One experiment, end to endand back again
One experiment, end to endand back again
Input
Everything, held constant
Sandbox
Isolated, reproducible runs
Output
Everything the run produced
Analyze
Find the fix
Frequently askedquestions
Yes. You get up to 100 runs for free.
A few minutes. Pick one of our templates or define your own experiment, then configure the environment however you like.
You can, and you should. Oqoqo turns that useful dogfood step into repeatable testing across controlled tasks, agents, versions, environments, and product changes.
A sandbox just runs the agent. Oqoqo runs the whole experiment around it: production-like environments with real repos, data, and files, controlled variables across agents, models, and versions, and full traces, metrics, diffs of what changed, and evals on every run. You get repeatable, comparable results at scale instead of a one-off script you have to build and maintain.
We start with Claude Code and Codex, and are expanding coverage to Cursor, GitHub Copilot, Antigravity, and OpenCode. You can run different models and effort levels per agent.
SDKs, APIs, CLIs, MCP servers, skills, and more. Anything an agent would touch can be tested and evaluated.
Yes. You define a basic rubric and our system rewrites it to follow best practices — an out-of-the-box capability that delivers high-grade eval results at scale.
Yes. Each run records files read, commands issued, tool calls made, errors hit, and the point where the agent recovered or stopped. Traces live in the workspace for every published run. A reasoning hook also captures the “why” behind each agent decision throughout the run.
Run your first agent experiment
Start with a template or define your own. Test agentic workflows in production-like environments, measure the effect, and feed your next iteration.