Trained on 15,000 hours of diverse Arabic speech using cutting-edge weak supervision, Munsit-1 outperforms global models from OpenAI, Meta and Microsoft across every major Arabic benchmark.
Munsit-1 delivers state-of-the-art results across all major Arabic ASR benchmarks — consistently outperforming top-tier models like Whisper (OpenAI), SeamlessM4T (Meta) and Nvidia Conformer.
Tested across six key Arabic speech benchmarks — SADA, Common Voice, MASC (clean), MASC (noisy), Casablanca, and MGB-2 — Munsit-1 sets a new standard for Arabic speech recognition with the lowest average WER of 26.68%.
Most ASR models struggle with Arabic. Munsit was built for it.
Shameed Sait, Director of AI @ CNTXT AI
Munsit isn’t just a model — it’s the voice engine powering Arabic technology at scale. Designed for businesses, governments, and developers, Munsit enables real-world applications across:
Munsit-1 is powered by CNTXT AI’s proprietary training pipeline, combining large-scale weak supervision with advanced machine learning techniques.
Enable Arabic AI voice agents that understand and respond across dialects, powering customer support, virtual assistants, and conversational interfaces.
Capture Arabic speech from meetings — across multiple dialects — and generate accurate, real-time transcripts and actionable meeting notes.
Convert spoken Arabic — across multiple dialects — into a unified target dialect or English, with high transcription and translation accuracy.
Whether you're building smart cities or streamlining service workflows, Munsit is designed to meet the region’s needs — and scale beyond.
CNTXT safeguards your data with the highest standards of security, privacy, and sovereign AI principles — ensuring full data protection and regulatory compliance across all our solutions.