PARTTIME
Data Scientist - Computer Vision
Waltcorp
Not specified · onsite · Posted 9d ago
Sourced from
Undisclosed3–7 yrsparttimeNot specified
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Section · 01
About this role
Key Responsibilities
- Design, develop, and deploy deep learning models for image classification, object detection, segmentation, pose estimation, OCR, and related tasks.
- Work with large-scale datasets (images, videos, annotations), including data cleaning, augmentation, and preprocessing pipelines.
- Evaluate and fine-tune models using metrics like IoU, mAP, F1 score, and accuracy.
- Conduct research and experimentation with state-of-the-art architectures such as CNNs, Transformers (ViT, DETR), GANs, and self-supervised learning.
- Collaborate with cross-functional teams to integrate models into production pipelines (cloud/on-prem).
- Stay current with the latest advancements in computer vision and contribute to the company’s innovation roadmap.
- Develop tools for model explainability and performance monitoring in production environments.
Required Qualifications
- B.Tech, Master’s or Ph.D. in Computer Science, Electrical Engineering, Applied Mathematics, or a related field.
- 3+ years of experience in developing and deploying deep learning models for computer vision tasks.
- Strong proficiency in Python and deep learning frameworks like PyTorch and TensorFlow.
- Hands-on experience with libraries such as OpenCV, Albumentations, MMDetection, Detectron2, or YOLOv5/8.
- Experience training and optimizing models on GPU clusters using distributed training (e.g., PyTorch Lightning, DDP).
- Familiarity with model deployment (ONNX, TensorRT, TorchScript) and serving (FastAPI, Flask, Triton Inference Server).
- Experience with annotation tools (e.g., CVAT, Labelbox) and data versioning tools (e.g., DVC, Weights & Biases).
- Strong understanding of computer vision metrics and evaluation protocols.
- Strong skillset in mathematical algorithmics and explainability of deep learning models and frameworks
Preferred Skills
- Knowledge of 3D vision, SLAM, multi-view geometry and YOLO.
- Experience working with video datasets and spatio-temporal models.
- Background in self-supervised or semi-supervised learning.
- Familiarity with MLOps pipelines and tools like MLflow, Kubeflow, or SageMaker.
- Experience in a domain-specific application like medical imaging, aerial imagery, or autonomous vehicles.
Why Join Us
- Work on impactful AI products at the cutting edge of computer vision.
- Collaborate with a world-class team of researchers and engineers.
- Access to state-of-the-art GPU infrastructure and training platforms.
- Flexible work environment with competitive compensation and benefits.
What We Offer
- Competitive compensation and benefits.
- Opportunity to work on cutting-edge quantum computing and semiconductor R&D projects.
- Collaborative and research-driven work environment.
JOB ID: DS-CV-JUN26
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Section · 02
Skills
PythonPytorchTensorflowLabelboxOCRDeep LearningFastAPIAws SagemakerMLOpscnnOpencvsegmentationKubeflowObject DetectionvitmlflowTensorRTOnnxHugging Face TransformersGPUYOLODVCgansCVATImage ClassificationSelf-supervised learningSLAMFlask FrameworkTriton Inference Server3D Visiondistributed trainingpose estimationWeights BiasesPyTorch Lightningmulti-view geometryDETRAlbumentationsDetectron2DDPsemi-supervised learningTorchScriptMMDetection