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Dataset Card for μ-Bench (Leaderboard | Code)

μ-Bench is a multilingual transcription benchmark built from real customer-service phone conversations.

Dataset Details

Dataset Description

Most public ASR benchmarks are either English-only or built from read speech in quiet studios. μ-Bench fills that gap: real phone-call audio, five languages, and metrics that go beyond Word Error Rate to distinguish meaning-changing errors from surface-level ones.

The calls are scripted interactions with an AI banking agent built on Sierra's voice platform — checking card status, confirming case codes, providing personal details, disputing transactions, and requesting credit-limit increases.

Callers used their own phones from their own environments, producing realistic background noise, disfluencies, emotional variation, interruptions, and diverse speaking styles.

The call audio is processed and clipped into individual user utterances.

Dataset Structure

The dataset contains 250 conversations totaling 4,270 utterances (~5.1 hours of audio):

Locale Language Utterances
en-US English (US) 817
es-MX Spanish (Mexico) 792
tr-TR Turkish 846
vi-VN Vietnamese 975
zh-CN Chinese (Mandarin) 840

Audio files follow:

<locale>/conv-<N>-turn-<M>.wav

Each utterance has a row in metadata.jsonl:

Field Type Description
file_name string Relative audio path
locale string BCP-47 locale tag
conversation_id int Conversation identifier
turn_index int Turn index (0-based)
duration_sec float Duration in seconds
transcript string Clean verbatim transcript

There is a single split. Evaluation uses the full dataset with conversation-level bootstrap resampling.

Evaluation Artifacts

In addition to the dataset, the prompts used for LLM-based normalization and error classification (see our Github for more details) are also available for download as part of this repository.

More Information

Dataset Card Contact

soham@sierra.ai

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