AI Engineer – Computer Vision

AI Engineer – Computer Vision

Location: GIFT City, Gandhinagar, Gujarat – India. (Work from Office)

Experience: Internship (Full-Time)

About the Role

We are hiring an enthusiastic AI Engineer Intern with a strong interest in Computer Vision to join our team at GIFT City. You will get hands-on experience designing, training, optimizing, and deploying vision-based AI systems used across healthcare, fintech, manufacturing, retail automation, and enterprise applications.
This internship is ideal for learners who want real exposure to AI development, large-scale datasets, and production-grade model building for global use cases.

Key Responsibilities:

  • Develop, train, and optimize Computer Vision models for object detection, segmentation, OCR, anomaly detection, rPPG-based vitals extraction, and custom video analytics.
  • Build robust data pipelines for image/video ingestion, cleaning, augmentation, and annotation workflows.
  • Perform model evaluation using standard metrics such as mAP, IoU, F1, precision, recall, latency, and accuracy.
  • Deploy models to production using TensorFlow, PyTorch, ONNX Runtime, or OpenVINO.
  • Develop scalable inference APIs and integrate models with backend systems.
  • Implement model optimization techniques including quantization, pruning, distillation, and GPU acceleration.
  • Research and experiment with modern architectures like Transformers, YOLO variants, RNN/CNN hybrids, and lightweight mobile models.
  • Collaborate with DevOps teams to containerize inference workloads using Docker and deploy on cloud platforms.
  • Document experiments, results, and best practices clearly for internal teams and clients.

Required Skills

  • Strong proficiency in Python and deep learning frameworks (PyTorch or TensorFlow).
  • Solid understanding of machine learning algorithms and computer vision fundamentals.
  • Experience with OpenCV, NumPy, and image/video preprocessing.
  • Hands-on experience with datasets, annotations, and CV pipeline design.
  • Ability to train, validate, and tune deep learning models.
  • Familiarity with deploying ML workloads on cloud or containerized environments.
  • Good analytical and debugging skills.

Nice-to-Have Skills

  • Experience with YOLOv7/8, Detectron2, MediaPipe, OpenVINO, or ONNX Runtime.
  • Exposure to rPPG signal extraction, vitals estimation, and video-based biometrics.
  • Understanding of MLOps tools and practices.
  • Knowledge of AWS, GCP, or Azure ML services.
  • Experience with GPU optimization and real-time model performance tuning.

Interested candidates may apply at [email protected]

Reach HR Team