Role overview

Machine Learning Engineer

Requirements and responsibilities

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Details

  • Research, design, train, and productionize deep learning models for speech/audio (ASR, speaker diarization, audio classification, TTS, noise suppression) and computer vision (detection, segmentation, classification, video understanding) use cases.
  • Architect training pipelines capable of handling large-scale datasets, manage data preprocessing, augmentation, and versioning workflows.
  • Select and adapt state-of-the-art architectures (Transformers, CNNs, RNNs, diffusion models, etc.) and fine-tune or distill pre-trained models for production constraints.
  • Optimize models for inference - quantization, pruning, knowledge distillation - targeting latency, throughput, and memory budgets on CPU/GPU/edge hardware.
  • Work with software engineers to integrate models into production systems, design APIs and microservices for model serving.
  • Define and track evaluation benchmarks, monitor model performance in production, and drive continuous improvement cycles.
  • Stay current with research literature, evaluate and implement relevant SOTA techniques, contribute to internal technical forums.
  • B.Tech / M.Tech / M.Sc. / PhD in Computer Science, Electrical Engineering, Signal Processing, or a related field.
  • 4+ years of experience in machine learning/deep learning engineering with significant hands-on work in speech/audio and/or computer vision in production environments.
  • PyTorch (primary) and TensorFlow/Keras, familiarity with JAX is a plus.
  • Deep expertise in Wav2Vec 2.0, Whisper, ESPnet, SpeechBrain, torchaudio, librosa.
  • Strong experience with speech/audio frameworks and toolkits: YOLO, DETR, ViT, EfficientNet, SAM, and standard CV pipelines (OpenCV, torchvision, Albumentations).
  • Solid background in computer vision: TensorRT, ONNX Runtime, TorchScript, DeepSpeed, or Triton Inference Server.
  • Hands-on experience with model inference optimization using Python and strong software engineering fundamentals: OOP, clean code, testing, CI/CD.
  • Proficient in SQL for data extraction and pipeline logging.
  • Experience with distributed training frameworks (DDP, DeepSpeed, FSDP) and large-scale data pipelines.
  • Familiarity with cloud ML platforms (AWS SageMaker, GCP Vertex AI, Azure ML) and containerized deployment (Docker, Kubernetes, ECS).
  • Good knowledge of system design principles for ML services: throughput, latency, scalability, fault tolerance.
  • Professional growth in a dynamic, rapidly expanding, high-social-impact industry
  • An open-minded, collaborative culture made up of enthusiastic colleagues who are driven by the challenge of innovation towards profound impact on people and the planet.
  • A truly multicultural experience: You will have the chance to work with and learn from people from different geographies, nationalities, and backgrounds.
  • Structured, tailored learning and development programs that help you become a better leader, manager, and professional through the Sun King Center for Leadership.
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Browse stack
FocusMachine Learning EngineerRole area
Seniority signalMiddleCandidate level
StackAWS, Azure, CI/CDPrimary skills
Location1 accepted countryEligibility

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