real-time ai transcription with speaker identification
Automatically converts audio from live meetings, interviews, and calls into text with speaker labels and timestamps. Supports direct integration with Zoom, Teams, and other meeting platforms for seamless capture without manual recording.
collaborative live notetaking with simultaneous annotation
Enables multiple team members to highlight, tag, and add notes to transcripts in real-time without creating version conflicts. Supports synchronized editing across distributed teams with change tracking.
research-specific tagging and highlight system
Provides built-in tagging and highlighting tools designed for qualitative research workflows, allowing researchers to categorize insights, themes, and quotes for later analysis and pattern identification.
meeting platform integration and direct upload
Connects directly to Zoom, Teams, and other meeting platforms to automatically capture and process recordings, or allows manual upload of audio/video files for transcription and analysis.
ux research analysis templates
Provides pre-built analysis frameworks and templates tailored to common UX research patterns, including user journey mapping, pain point identification, and feature request categorization.
research data organization and project management
Organizes transcripts, notes, and analysis artifacts into projects with folder structures, allowing researchers to manage multiple studies and maintain clear data hierarchies.
cross-interview pattern and theme extraction
Analyzes multiple transcripts to identify recurring themes, patterns, and insights across interviews, surfacing common user needs and pain points at scale.
transcript export and data retrieval
Exports transcripts, annotations, and analysis in various formats for use in external tools and workflows, though with limited flexibility compared to competitors.
+2 more capabilities