GURUGRAM · FULLTIME
Voice AI / Speech ML Engineer
UpTye
Gurugram · onsite · Posted 1d ago
Sourced from
Undisclosed3–2 yrsfulltimeGurugram
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Section · 01
About this role
Job Overview
- We are looking for a strong Voice AI / Speech ML Engineer who can work on fine-tuning and improving speech models for real-world users across different accents, dialects, noisy audio environments, and multilingual conversations.
- This role is focused on making speech AI systems work beyond clean demo conditions. The engineer will work on speech-to-text, text-to-speech, language model layers where required, and audio data pipelines for low-resource or multi-dialect use cases.
- The ideal candidate should have hands-on applied ML experience, strong exposure to speech models, and practical experience with messy audio data, model fine-tuning, evaluation, and production deployment.
Key Responsibilities
- Fine-tune speech-to-text, text-to-speech, and related voice AI models for real-world accents, dialects, and noisy audio conditions.
- Work on audio data sourcing, cleaning, labeling, augmentation, and preparation for model training.
- Build and improve training pipelines for low-resource, multilingual, and multi-dialect speech use cases.
- Evaluate model performance using practical metrics such as word error rate, naturalness, robustness to noise, and code-switching accuracy.
- Test models on real-world audio instead of relying only on standard benchmarks.
- Improve model performance based on production feedback and user audio samples.
- Work with modern speech model architectures such as Whisper-family models, neural TTS, ASR/STT models, and speech-to-speech systems.
- Optimize models for latency, accuracy, and real-time serving where required.
- Collaborate closely with engineering and product teams to ship voice AI features quickly.
- Own the model lifecycle from data preparation and training to evaluation and production improvement.
Ideal Candidate Profile
- 3+ years of experience in applied ML, speech AI, voice AI, ASR/STT, TTS, or related ML engineering roles.
- Hands-on experience fine-tuning and deploying ML models in production.
- Strong experience with Python, PyTorch, and ML training workflows.
- Experience working with ASR/STT, TTS, speech recognition, speaker/audio processing, or voice AI systems.
- Practical experience with audio data collection, cleaning, labeling, augmentation, and preprocessing.
- Strong understanding of model evaluation, especially for real-world speech performance.
- Experience measuring WER, latency, robustness, and model quality across different audio conditions.
- Comfortable working with noisy, imperfect, and low-resource datasets.
- Ability to own technical work independently and ship fast.
- Strong problem-solving ability and practical engineering mindset.
Good to Have
- Experience with low-resource languages, multilingual speech, or multi-dialect speech systems.
- Experience with Whisper, wav2vec, Conformer, DeepSpeech, FastSpeech, Tacotron, VITS, or similar speech architectures.
- Experience with code-switching, accent adaptation, or dialect-specific model improvement.
- Experience deploying speech models for real-time or near-real-time use cases.
- Exposure to MLOps, model monitoring, inference optimization, or production ML pipelines.
- Interest in voice AI, emerging markets, and real-world speech technology.
You Are a Good Fit If
- You have fine-tuned speech or ML models and shipped them to production.
- You understand that real-world audio data is messy and requires strong preprocessing.
- You can evaluate models using practical business and product metrics, not only benchmark scores.
- You are comfortable working independently with imperfect data.
- You can improve model performance through data, training, evaluation, and production feedback loops.
You May Not Be a Fit If
- You have only used speech APIs without training or fine-tuning models.
- You have not worked with audio data pipelines or model evaluation.
- You are looking for a research-only role without production responsibility.
- You are not comfortable working with noisy, incomplete, or low-resource datasets.
- You have not handled applied ML systems end to end.
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Section · 02
Skills
PythonPytorchlanguage modelsMLOpsSpeech RecognitionModel MonitoringText-to-SpeechVoice AIWhisperAudio Processinginference optimizationTTSASRspeech modelsSTTSpeech to textFastSpeechVITSConformerDeepSpeechTacotronWav2vecaudio data pipelineslanguage modelspeaker processingSpeech ML