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It leverages the power of cutting-edge deep learning to enhance the world of file type detection. It provides increased accuracy and support for a comprehensive range of content types, outperforming traditional tools with 99%+ average precision and recall. | TestDino is an AI-native, Playwright-focused test reporting and management platform with MCP support. It enables Claude Code, Cursor, and LLM-based querying to navigate Playwright reporting, analyze flaky trends, compare environments, and sync complete run context into Jira or Asana. |
Available as a Python command line, a Python API, and an experimental TFJS version;
Trained on a dataset of over 25M files across more than 100 content types;
Achieves 99%+ average precision and recall, outperforming existing approaches;
After the model is loaded (this is a one-off overhead), the inference time is about 5ms per file | Flaky test analysis: finds top flaky tests across CI runs and branches. Solves: random failures, rerun waste, flaky noise, Errors analysis: groups failures and highlights the real failing file/method/line. Solves: noisy stack traces, hard triage, slow debugging, Evidence collection: trace, screenshots, video, console logs attached to failures. Solves: “works locally”, missing logs, can’t reproduce CI failures, Environment analysis: compares failures by OS/browser/runner/env. Solves: CI only failures, linux headless issues, infra based flakes, Test failure classification: bug vs flaky vs infrastructure vs UI change. Solves: wrong prioritization, dev QA blame game, wasted fixing wrong issues, Smart rerun grouping: attempts 1/2/3 grouped. Solves: proving flaky vs real bug, tracking rerun outcomes, retry confusion, AI insights: detects regressions, repeated failures, new failure patterns. Solves: hidden instability trends, late discovery of regressions, AI summaries: one line reason + next action. Solves: long debugging notes, slow understanding for non authors, Test run management: centralized history with commit/branch/duration. Solves: hunting CI artifacts, no single source of truth, GitHub integration: PR checks + commit summaries. Solves: low PR confidence, unstable merges, unclear test status, Slack app: real time failure and flaky alerts. Solves: delayed awareness, silent CI failures, missed regressions, Jira/Linear/Asana/Monday: auto create issues with full context. Solves: manual ticket creation, missing reproduction details, slow handoff, MCP server: query test runs/errors/flakes via AI tools. Solves: slow investigation, manual searching, lack of AI assisted debugging workflow. |
Statistics | |
GitHub Stars 8.9K | GitHub Stars - |
GitHub Forks 454 | GitHub Forks - |
Stacks 0 | Stacks 0 |
Followers 2 | Followers 1 |
Votes 0 | Votes 1 |
Integrations | |
| No integrations available | |

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