Senior Machine Learning Engineer - Automatic Speech Recognition (asr)

Cresta Cresta · Vertical AI · Germany, Romania, United Kingdom · Remote · Engineering

Senior Machine Learning Engineer focused on Automatic Speech Recognition (ASR) and downstream NLP systems. The role involves designing and implementing evaluation frameworks, leading ASR quality improvement efforts, analyzing data, developing ML models, and optimizing pipelines for production systems. Requires strong background in speech recognition, model evaluation, and ML frameworks.

What you'd actually do

  1. Design, implement, and maintain evaluation frameworks to measure model accuracy, robustness, latency, and real-world performance across ASR and NLP systems.
  2. Lead ASR quality improvement efforts, including error analysis, dataset curation, metric definition (e.g., WER and task-specific metrics), and model iteration.
  3. Analyze large-scale speech and text data to identify failure modes and drive targeted model and data improvements.
  4. Develop, train, and deploy machine learning models for speech recognition and downstream tasks such as classification, entity recognition, information extraction, and structured insight generation.
  5. Partner with applied research to translate experimental improvements into production-ready systems.

Skills

Required

  • Master’s or Ph.D. in Computer Science, Machine Learning, AI, or a related field.
  • 5+ years of hands-on experience building, evaluating, and deploying ML models in production.
  • Strong background in speech recognition (ASR), speech processing, or closely related domains.
  • Deep experience with model evaluation, benchmarking, and error analysis for ML systems.
  • Proficiency with ML frameworks and libraries (e.g., PyTorch, TensorFlow, Hugging Face).
  • Solid understanding of modern ML techniques, including transformer-based models and large-scale training.
  • Experience building data pipelines and tooling for large-scale experimentation and quality analysis.
  • Strong passion for improving real-world AI system quality, with a track record of delivering measurable, production-grade improvements.

What the JD emphasized

  • model evaluation, measurement, and quality improvements
  • Automatic Speech Recognition (ASR)
  • design rigorous evaluation frameworks
  • define quality metrics
  • drive systematic improvements to model accuracy, robustness, and reliability
  • evaluation frameworks
  • ASR quality improvement efforts
  • model evaluation, benchmarking, and error analysis
  • improving real-world AI system quality
  • measurable, production-grade improvements

Other signals

  • advancing model evaluation, measurement, and quality improvements
  • Automatic Speech Recognition (ASR)
  • design rigorous evaluation frameworks
  • define quality metrics
  • drive systematic improvements to model accuracy, robustness, and reliability