03 Dec
OpEase
Bengaluru
Machine Learning Engineer (2D→3D Reconstruction & Workflow Intelligence)
OpEase Technologies builds a high-precision, web-based surgical planning platform for orthopedic and spine surgeons. Doctors use OpEase to securely store patient data, upload X-rays, calibrate, measure, and plan surgeries through advanced geometry tools and clinical logic.
Role Overview:
We’re hiring an ML Engineer who will own the core AI systems powering OpEase — specifically:
1. Reconstructing 3D anatomical structures from orthogonal 2D X-rays, and
2. Building intelligent auto-selection and auto-suggestion logic for measurement and planning tools inside our surgical workflow.
This is not a research-only role. You will be responsible for designing, training, validating, and deploying production-grade ML systems that directly impact surgical decision-making. Clear problem statements and datasets will be provided; you are expected to execute with speed and rigor.
What You Will Build (Very Specific):
• A robust 2D→3D spine/long-bone reconstruction model using dual-view X-rays (AP + lateral)
• Landmark/keypoint detection models for vertebrae, femur/tibia, pelvis, etc.
• Heatmap regression networks for anatomical feature extraction
• A model-driven auto-selection system that identifies which OpEase tool the surgeon requires based on image context and user behaviour
• End-to-end inference pipeline integrated into our MERN + Cornerstone-based viewer
• Continuous evaluation pipelines for accuracy, latency, and failure-case analysis
Responsibilities:
• Architect and train models for 2D→3D anatomical prediction using multi-view geometry, implicit fields, NeRF/DVGO variants, or transformer-based approaches
• Build landmark detection modules for calibration, templating, and surgical planning
• Design the autosuggestion engine: tool intent prediction, context modelling,
clinical-rule integration
• Manage data pipelines for X-ray preprocessing, augmentation, versioning, annotation QC, and synthetic dataset generation
• Validate models with surgeons; refine based on clinical feedback
• Deploy models to production (REST endpoints, ONNX/TensorRT optimization, GPU/CPU fallback)
• Maintain experiment logs, metrics dashboards, and detailed model documentation
Requirements (High Priority & Non-Negotiable):
• Minimum 4 years of full-time experience in ML/Deep Learning with shipped models in production
• Strong experience in computer vision for geometry problems: keypoints, reconstruction, pose estimation, volumetric prediction
• Hands-on expertise with PyTorch, multi-GPU training, and advanced optimization techniques
• Prior work with DICOM/X-ray/medical imaging OR demonstrably adjacent experience (e.g., industrial CV, robotics perception, pose estimation)
• Proven ability to independently take a model from idea → dataset → training → evaluation → production
• Strong mathematical grounding in 3D geometry, camera models, coordinate transforms, and projection systems
• Excellent documentation and communication skills
Bonus (Big Plus):
• Experience with NeRFs, implicit neural representations, depth inference, or differentiable rendering
• Experience building autosuggestion systems, ranking models, or intent prediction in complex workflows
Why Join:
• You will own the foundational AI layer for India’s most advanced orthopedic planning platform
• Transparent, well-scoped problems and direct access to clinicians who use your models
• Chance to build category-defining medical AI from the ground up
• High ownership, high-impact role in a company scaling rapidly across India and global markets
Hybrid role with periodic clinical onsite work.
Compensation: ₹18–24 LPA + ESOPs.
📌 Machine Learning Engineer (Bengaluru)
🏢 OpEase
📍 Bengaluru
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