Zum Hauptinhalt springen
Dieser Inhalt ist noch nicht in Ihrer Sprache verfügbar und wird auf Englisch angezeigt.

Riffrec Feedback Analysis

Skill Verifiziert Aktiv

Riffrec product-feedback workflow. ALWAYS load when the user posts a `riffrec-*.zip`, a bundle with `session.json` + `events.json` + `recording.webm` + `voice.webm`, a video/audio recording for product feedback, or asks how to capture and share Riffrec sessions. Routes between setup, quick bug report, and extensive analysis.

Zweck

To convert raw product feedback recordings into structured, actionable evidence for AI-driven product development workflows, ensuring clear traceability and facilitating downstream analysis and planning.

Funktionen

  • Processes Riffrec zip bundles, video, audio, and notes files.
  • Transcribes audio/video and extracts key moments with screenshots.
  • Generates analysis, problem reports, and requirements kickoff documents.
  • Routes feedback to setup, quick bug report, or extensive analysis paths.
  • Integrates with `ce-brainstorm` for requirement refinement.

Anwendungsfälle

  • Analyzing recorded product feedback sessions to identify bugs and usability issues.
  • Extracting requirements from user recordings for feature development.
  • Providing structured input for AI-driven product brainstorming and planning.
  • Setting up a feedback capture workflow for development teams.

Nicht-Ziele

  • Implementing the Riffrec capture tool itself.
  • Performing code review or direct code fixes.
  • Acting as a user-facing bug tracker or issue creation tool.
  • Storing raw media files or extracted frames in version control by default.

Praktiken

  • Feedback analysis
  • Structured documentation
  • AI-assisted product development

Voraussetzungen

  • Python 3.8+
  • ffmpeg (for media processing)
  • curl (for transcription)
  • OpenAI API key (optional, for transcription)

Installation

Zuerst Marketplace hinzufügen

/plugin marketplace add EveryInc/compound-engineering-plugin
/plugin install compound-engineering@compound-engineering-plugin

Qualitätspunktzahl

Verifiziert
98 /100
Analysiert about 21 hours ago

Vertrauenssignale

Letzter Commitabout 21 hours ago
Sterne16.7k
LizenzMIT
Status
Quellcode ansehen

Ähnliche Erweiterungen

Performance Analysis

100

Comprehensive performance analysis, bottleneck detection, and optimization recommendations for Claude Flow swarms

Skill
ruvnet

Cleanup Dashboards

100

Audit and consolidate HubSpot reporting dashboards. Identifies unused, duplicate, or outdated dashboards. Must be performed manually — no dashboard API is available.

Skill
TomGranot

Status

100

Display the current state of the FPF knowledge base

Skill
NeoLabHQ

Pm Strategic Review

100

End-of-quarter strategic review in narrative style with a bets scorecard. Use when someone says "quarter review", "strategic review", "what happened last quarter", "quarterly retro", "bets scorecard", "review our bets", "end of quarter report".

Skill
marfoerst

Ops Revenue

100

Revenue and costs tracker. AWS spend via aws ce, credits tracker, project revenue stages. Shows burn rate, runway estimate, credits expiring.

Skill
Lifecycle-Innovations-Limited

Minimal Run And Audit

100

Vertrauenswürdige Ausführungs- und Reporting-Skill für die README-basierte Reproduktion von KI-Repositorien. Verwenden Sie diesen Skill, wenn die Aufgabe speziell darin besteht, Nachweise aus dem ausgewählten Smoke-Test oder dem dokumentierten Inferenz- oder Auswertungsbefehl zu erfassen oder zu normalisieren und standardisierte `repro_outputs/`-Dateien zu schreiben, einschließlich Patch-Notizen, wenn sich Repository-Dateien geändert haben. Nicht für Trainingsausführung, erstmalige Repositoireaufnahme, generische Umgebungs einrichtung, Paper-Suche, Zielauswahl oder reine End-to-End-Orchestrierung verwenden.

Skill
lllllllama