Financial Sector

Meeting Transcription

Automated speech recognition and structured minutes generation with decision extraction.

Meeting Transcription

Challenge

NDA — Client name is not disclosed under a non-disclosure agreement

A major financial institution held dozens of meetings daily, with minutes recorded manually. Assistants could not capture all decisions and action items, and retrospective information recovery from recordings took hours. Deadlines, assignees, and decision context were frequently lost.

Solution

The system recognizes participants' speech, converts it to text with speaker identification (diarization). An NLP module extracts key decisions, action items, deadlines, and assignees. Structured minutes are generated with timestamps linked to the recording. Minutes are available within 5 minutes after the meeting ends.

Results

95%
Speech recognition accuracy
5 min
Minutes generation time
0
Lost action items

Technologies

ASR NLP Diarization Entity Extraction

Approach

1

Meeting format analysis

Studying meeting types, minutes requirements, and room acoustic conditions.

2

ASR setup with terminology adaptation

Training the speech recognition model on specialized financial sector vocabulary.

3

NLP decision extraction module development

Building a model that extracts key decisions, action items, deadlines, and assignees from text.

4

Pilot on real meetings

Testing the system in live conditions, collecting feedback, calibrating accuracy.

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