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    Home»AI»DeepSpeech Revenue, Net Worth, Marketcap, Competitors 2026

    DeepSpeech Revenue, Net Worth, Marketcap, Competitors 2026

    DariusBy DariusDecember 17, 2025Updated:January 17, 2026No Comments7 Mins Read
    Mozilla DeepSpeech open-source speech recognition with 26,700 GitHub stars, 7.06% word error rate, archived June 2025.
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    Key Stats

    Mozilla DeepSpeech represents a significant milestone in open-source speech recognition technology. The project transformed automatic speech recognition by making powerful models accessible to developers worldwide through an open-source framework built on TensorFlow.

    Launched in 2017 and officially archived in June 2025, DeepSpeech achieved remarkable adoption with over 26,700 GitHub stars. The technology demonstrated competitive performance with 7.06% word error rates on clean audio benchmarks.

    DeepSpeech’s impact extends beyond its codebase through contributions to the Mozilla Common Voice dataset, which now contains over 33,150 hours of multilingual speech data. The project established foundational benchmarks for edge deployment and lightweight speech recognition solutions.

    GitHub Stars: Over 26,700 developers starred the repository, positioning DeepSpeech among the most popular open-source speech recognition projects globally.
    Word Error Rate: Achieved 7.06% WER on LibriSpeech clean test corpus, demonstrating strong performance in controlled acoustic environments.
    Language Support: Officially supports 19 languages with models trained on Mozilla Common Voice dataset containing 33,150 hours across 133 languages.
    Processing Speed: Delivers 30% faster processing compared to Whisper for real-time applications while maintaining superior performance in noisy industrial environments.
    Project Status: Repository archived on June 19, 2025, marking the conclusion of active development after establishing significant contributions to open-source ASR ecosystem.

    DeepSpeech History

    Late 2017
    Mozilla launched DeepSpeech as an initiative within the machine learning team at Mozilla Research. The project aimed to develop an open-source automatic speech recognition model based on Baidu’s Deep Speech research paper, implementing it with TensorFlow framework.
    2018
    Mozilla Research team collaborated with the Open Innovation team to launch Common Voice project alongside DeepSpeech development. The project began collecting voluntarily contributed speech data from volunteers worldwide to train more robust models.
    2019
    DeepSpeech achieved significant accuracy improvements through expanded training data. The team reached out to public TV and radio stations, university language departments, and other institutions to gather labeled speech data, more than doubling available training resources.
    December 2020
    Mozilla released DeepSpeech version 0.9.3, marking the final official release. This version achieved 7.06% word error rate on LibriSpeech clean test corpus and included support for memory-mapped models and TensorFlow Lite optimization for edge devices.
    April 2021
    Mozilla announced the wind-down of active DeepSpeech development while introducing a grant program to support projects building on the technology. The organization recognized mature open-source speech engines emerging while acknowledging gaps in language coverage.
    June 19, 2025
    Mozilla formally discontinued and archived the DeepSpeech repository following years of minimal activity since 2021. The codebase remains available for reference, educational purposes, and legacy applications, with 529 dependent projects continuing to utilize the technology.

    DeepSpeech Co-founders

    Brendan Eich
    Mozilla Co-founder & CTO

    Brendan Eich co-founded Mozilla in 1998 and served as chief technology officer before briefly becoming CEO in 2014. He created JavaScript programming language and shaped Mozilla’s technology vision, including support for initiatives like DeepSpeech under Mozilla Research.

    Mitchell Baker
    Mozilla Co-founder & Executive Chairwoman

    Mitchell Baker co-founded Mozilla with Brendan Eich in 1998 and serves as Executive Chairwoman. She provided strategic leadership for Mozilla Foundation and Corporation, overseeing initiatives including DeepSpeech and Common Voice projects aimed at democratizing speech technology.

    Mozilla Research Team
    Core Development Team

    The Mozilla Research machine learning team initiated and developed DeepSpeech starting in late 2017. This team implemented the architecture based on Baidu’s research, trained models using TensorFlow, and established the open-source framework that attracted thousands of contributors.

    DeepSpeech Revenue

    DeepSpeech operated as an open-source research project under Mozilla Foundation rather than generating direct revenue. Mozilla funded the initiative through its broader organizational resources derived from partnerships and services.

    The project contributed value through ecosystem impact rather than monetization. DeepSpeech enabled developers to implement speech recognition in applications without licensing costs, supporting startups and enterprises implementing voice interfaces. The technology powered voice command systems, medical dictation applications, and industrial automation solutions across diverse sectors.

    Mozilla’s investment in DeepSpeech aligned with its mission to promote openness and accessibility on the internet. The organization measured success through adoption metrics including 26,700 GitHub stars, 529 dependent projects, and contributions to the 33,150-hour Common Voice dataset rather than revenue generation.

    DeepSpeech Acquisitions

    Mozilla DeepSpeech did not pursue acquisitions as an open-source research project. The technology development followed an organic growth model focused on community contributions and collaborative development rather than corporate expansion strategies.

    The project instead influenced the broader speech recognition ecosystem through knowledge sharing and open-source releases. Several commercial entities built upon DeepSpeech’s foundation, including Coqui AI, which created a fork called Coqui STT before discontinuing development in 2024.

    Mozilla’s approach emphasized collaboration over consolidation. The organization partnered with universities, research institutions, and technology companies to advance speech recognition capabilities while maintaining the open-source nature of the project. This strategy enabled widespread adoption across embedded systems, IoT devices, and edge computing applications.

    The Common Voice dataset developed alongside DeepSpeech represented Mozilla’s most significant contribution beyond the core technology. This growing collection of multilingual speech data continues supporting numerous open-source and commercial speech recognition projects worldwide, extending DeepSpeech’s impact beyond the original codebase.

    DeepSpeech Marketcap

    DeepSpeech operated as an open-source project under Mozilla Foundation without market capitalization. Mozilla Corporation, the for-profit subsidiary that funded DeepSpeech development, remains privately held without public stock trading.

    The project’s value manifested through ecosystem contributions rather than market valuation. DeepSpeech influenced the $12.63 billion to $18.89 billion global speech recognition market in 2024, projected to reach $81-92 billion by 2032 with compound annual growth rates exceeding 20%.

    DeepSpeech’s technological foundation enabled cost savings for companies implementing speech recognition without proprietary licensing fees. The open-source model democratized access to advanced speech technology, particularly benefiting resource-constrained organizations and researchers advancing the field.

    DeepSpeech Competitors

    DeepSpeech competed in the open-source automatic speech recognition space against both commercial platforms and alternative open-source solutions. The competitive landscape included proprietary services from major technology companies alongside community-driven projects.

    The speech recognition market features established commercial players including Google Voice Search and Google Assistant, Amazon Alexa and AWS Transcribe, Apple Siri, and Microsoft Azure Speech. These proprietary solutions offer extensive language coverage and integration with broader ecosystems but require ongoing cloud costs and raise privacy concerns.

    Open-source alternatives emerged as direct competitors to DeepSpeech, each targeting specific deployment scenarios and offering distinct advantages. OpenAI’s Whisper gained prominence through superior multilingual capabilities, while Vosk focused on offline mobile efficiency. The competitive dynamics shifted following DeepSpeech’s discontinuation in 2025, with active projects capturing market share from legacy implementations.

    Competitor Type Primary Strength Status
    OpenAI Whisper Open Source Multilingual robustness (97 languages) Active
    Vosk Open Source Offline mobile efficiency Active
    Wav2Vec 2.0 (Meta) Open Source Self-supervised learning architecture Active
    Coqui STT Open Source DeepSpeech successor fork Discontinued (2024)
    Google Cloud Speech-to-Text Commercial Cloud scalability and accuracy Active
    Amazon Transcribe Commercial AWS ecosystem integration Active
    Microsoft Azure Speech Commercial Enterprise features and support Active
    AssemblyAI Commercial Developer-focused API Active
    Speechmatics Commercial High-accuracy real-time transcription Active
    Rev.ai Commercial Human-in-the-loop accuracy Active

    Performance Benchmarks Comparison

    Word Error Rate by Model (Lower is Better)
    Wav2Vec 2.0
    3-8%
    Whisper
    5-9%
    Coqui STT
    6-10%
    DeepSpeech
    7-21%
    Vosk
    10-15%
    Mozilla Common Voice Dataset Growth (Hours of Audio)
    2022
    28,400
    2023
    30,200
    June 2024
    31,841
    Sept 2024
    32,584
    Dec 2024
    33,150

    FAQs

    What is DeepSpeech’s word error rate?

    DeepSpeech achieves 7.06% word error rate on LibriSpeech clean test corpus under optimal acoustic conditions, demonstrating competitive performance for clean audio processing tasks.

    How many languages does DeepSpeech support?

    DeepSpeech officially supports 19 languages with trained models, significantly fewer than Whisper’s 97-language coverage but sufficient for primary language markets and specialized applications.

    Is DeepSpeech still maintained?

    Mozilla archived the DeepSpeech repository on June 19, 2025. The project is no longer actively maintained but remains available for reference, educational purposes, and legacy implementations.

    What training data does DeepSpeech use?

    DeepSpeech models are primarily trained using Mozilla Common Voice, which contains over 33,150 hours of multilingual speech data as of December 2024, spanning 133 languages.

    How does DeepSpeech compare to Whisper?

    DeepSpeech processes audio 30% faster for real-time applications and performs 13% better in noisy environments. Whisper achieves higher accuracy on clean audio and supports more languages.
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    Darius
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    I've spent over a decade researching and documenting the stories behind the world's most influential companies. What started as a personal fascination with how businesses evolve from small startups to global giants turned into CompaniesHistory.com—a platform dedicated to making corporate history accessible to everyone.

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