ITC Infotech
AI

Machine Learning/Computer Vision Engineer

ITC Infotech ·

Actively hiring Posted 4 months ago

Role overview

We are seeking a Machine Learning / Computer Vision Engineer to join our team. You will work on advancing our machine learning capabilities across the full pipeline — from data processing to model development to reporting. This is a hands-on role requiring both research awareness and production-minded engineering.

Responsibilities

  • Design, train, and evaluate classification models for complex visual and geometric data
  • Implement and benchmark modern vision foundation models (DINOv2, CLIP, ViT, ConvNeXt, or similar)
  • Build learned multi-view fusion architectures (e.g., MVCNN) for combining information across multiple perspectives of an object
  • Fine-tune pre-trained vision backbones on domain-specific imagery
  • Develop multimodal models that combine visual features with structured text and attribute data
  • Explore 3D geometry-based classification using point cloud methods (PointNet++, Point Transformer, DGCNN, or similar)
  • Evaluate model performance through rigorous metrics, ablation studies, and iterative experimentation
  • Contribute to data pipeline development, automated reporting, and system productionization
  • Python — strong proficiency
  • PyTorch — model development, custom training loops, fine-tuning, inference
  • Computer Vision — transfer learning, feature extraction, embedding-based methods
  • Vision Foundation Models — hands-on experience with at least one of: DINOv2, CLIP, ViT, ConvNeXt, EfficientNet-V2
  • Multi-view 3D Recognition — familiarity with MVCNN or learned view-pooling techniques
  • ML evaluation — classification metrics, stratified data splitting, experiment design
  • 3D Point Cloud Learning — PointNet, PointNet++, DGCNN, or Point Transformer
  • Multimodal ML — combining vision and text/structured data (cross-attention, fusion architectures)
  • 3D data formats & tools — STEP, IGES, B-Rep; Open3D, trimesh, FreeCAD, Creo Parametric or SolidWorks
  • CAD-native learning — awareness of UV-Net, BRepNet, or DeepCAD
  • MLOps — experiment tracking (MLflow, W&B), model versioning, CI/CD
  • Manufacturing/engineering domain knowledge — part taxonomies, attribute systems
  • Experience productionizing research-stage ML code (packaging, testing, configuration, logging)
  • GPU/CUDA environment setup and management
  • BS/MS in Computer Science, Machine Learning, Computer Vision, Data Science, Engineering, or equivalent practical experience

About the company

ITC Infotech is a leading global technology services and solutions provider, led by Business and Technology Consulting. ITC Infotech provides business-friendly solutions to help clients succeed and be future-ready, by seamlessly bringing together digital expertise, strong industry specific alliances and the unique ability to leverage deep domain expertise from ITC Group businesses. We provide technology solutions and services to enterprises across industries such as Banking & Financial Services, Retail, Healthcare, Manufacturing, Consumer Goods, Travel and Hospitality, through a combination of traditional and newer business models, as a long-term sustainable partner.

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Fulltime Machine Learning Computer Vision Ai
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