Description :
AI/ML Solution Development :
- Design, build, and deploy production-grade AI/ML models and pipelines addressing business needs such as object detection, container/vehicle recognition, OCR extraction, anomaly detection, predictive analytics, and operational automation.
Computer Vision Engineering :
- Develop CV models using CNNs, EfficientDet, YOLO, RCNN variations, segmentation models, and multi-view camera pipelines tailored for container terminal operations, crane OCR systems, and security applications.
LIDAR & Sensor Data Processing :
- Work with LIDAR point clouds, depth maps, and 3D object detection frameworks to build perception systems for equipment monitoring, spatial analysis, and automated safety workflows.
OCR Engineering :
- Implement OCR and document understanding workflows using Tesseract, EasyOCR, PaddleOCR, Azure Cognitive Services, or custom deep learningbased OCR architectures.
Model Training & Optimization :
- Perform dataset preparation, augmentation, labeling, hyperparameter tuning, and model optimization for latency, accuracy, and real-time inference.
MLOps & Production Deployment :
- Build scalable CI/CD and MLOps pipelines using Azure Machine Learning, Kubernetes, Docker, MLflow, or similar frameworks for model versioning, monitoring, and retraining.
Data Engineering Collaboration :
- Work closely with data engineering teams to build robust data pipelines, feature stores, and ETL/ELT processes supporting AI/ML use cases.
Integration with Microservices :
- Package AI/ML models as microservices or Minimal APIbased inference endpoints for integration into enterprise applications.
Research & Innovation :
- Explore and evaluate emerging AI, CV, LIDAR, and OCR technologies, producing PoCs and technical documentation with pros/cons and recommendations.
Cross-functional Collaboration :
- Work closely with Technical Architects, Software Engineers, QA, and Product Managers to ensure AI/ML solutions fit seamlessly into the architecture and meet business objectives.
Performance Monitoring :
- Implement monitoring, logging, drift detection, and performance evaluation for models running in production.
Documentation & Knowledge Sharing :
- Produce clear technical documentation, architecture diagrams, model cards, and best practices; mentor juniors in AI/ML concepts
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