Job description
 
                         HCLTech is hiring Vision AI Engineer for Noida/Chennai location.
About HCLTech:
HCLTech is a global technology company, home to more than 218,000 people across 59 countries, delivering industry-leading capabilities centered around digital, engineering, cloud and AI, powered by a broad portfolio of technology services and products.
We work with clients across all major verticals, providing industry solutions for Financial Services, Manufacturing, Life Sciences and Healthcare, Technology and Services, Telecom and Media, Retail and CPG, and Public Services.
Consolidated revenues as of 12 months ending September 2024 totaled $13.7 billion.
To learn how we can supercharge progress for you, visit hcltech.com.
The dedicated business unit – “AIoT & Industrial AI” leads the Industrial AI and (A)IoT Business end-to-end for HCL Technologies including overall product direction, new business models, ecosystem and pioneer customer engagements in partnership with Engineering and Application Services.
We have a unique opportunity in the area of Industrial AI & IoT platform and services where HCL Technologies can lead business model transformations for customers.
Job Description:
Overall Experience:  5 to 10 yrs
Location:  Noida/Chennai
Notice Period : Immediate/30 days
Role Overview
We are seeking a  Senior Computer Vision Developer  to design, build, and deploy  vision-based AI solutions  for real-world applications.
The role requires deep hands-on experience with  image/video analytics, deep learning model development, optimization, and deployment .
You will work closely with AI Architects and data engineers to deliver high-performance, production-grade vision systems.
Experience Required
5–8 years of experience in AI/ML engineering, with  3+ years specialized in Computer Vision .
Hands-on deployment of  vision models in production environments  (edge or cloud).
Proven experience in  optimizing models for real-time inference .
Strong track record of building  vision AI solutions for real-world use cases  (retail, healthcare, manufacturing, autonomous systems, surveillance, etc.).
Key Responsibilities
Model Development & Training
Implement and fine-tune  state-of-the-art computer vision models  for object detection, classification, segmentation, OCR, pose estimation, and video analytics.
Apply  transfer learning, self-supervised learning, and multimodal fusion  to accelerate development.
Experiment with  generative vision models  (GANs, Diffusion Models, ControlNet) for synthetic data augmentation and creative tasks.
Vision System Engineering
Develop and optimize  vision pipelines  from raw data preprocessing → training → inference → deployment.
Build  real-time vision systems  for video streams, edge devices, and cloud platforms.
Implement  OCR and document AI  for text extraction, document classification, and layout understanding.
Integrate vision models into  enterprise applications  via REST/gRPC APIs or microservices.
Optimization & Deployment
Optimize models for  low-latency, high-throughput inference  using ONNX, TensorRT, OpenVINO, CoreML.
Deploy models on  cloud (AWS/GCP/Azure)  and  edge platforms (NVIDIA Jetson, Coral, iOS/Android) .
Benchmark models for  accuracy vs performance trade-offs  across hardware accelerators.
Data & Experimentation
Work with  large-scale datasets  (structured/unstructured, multimodal).
Implement  data augmentation, annotation pipelines, and synthetic data generation .
Conduct rigorous experimentation and maintain  reproducible ML workflows .
Required Skills & Qualifications
Programming:  Expert in Python; strong experience with C++ for performance-critical components.
Deep Learning Frameworks:  PyTorch, TensorFlow, Keras.
Computer Vision Expertise:
Detection & Segmentation:  YOLO (v5–v8), Faster/Mask R-CNN, RetinaNet, Detectron2, MMDetection, Segment Anything.
Vision Transformers:  ViT, Swin, DeiT, ConvNeXt, BEiT.
OCR & Document AI:  Tesseract, PaddleOCR, TrOCR, LayoutLM/Donut.
Video Understanding:  SlowFast, TimeSformer, action recognition models.
3D Vision:  PointNet, PointNet++, NeRF, depth estimation.
Generative AI for Vision:  Stable Diffusion, StyleGAN, DreamBooth, ControlNet.
MLOps Tools:  MLflow, Weights & Biases, DVC, Kubeflow.
Optimization Tools:  ONNX Runtime, TensorRT, OpenVINO, CoreML, quantization/pruning frameworks.
Deployment:  Docker, Kubernetes, Flask/FastAPI, Triton Inference Server.
Data Tools:  OpenCV, Albumentations, Label Studio, FiftyOne.
Interested candidates, kindly share their resume on paridhnya_dhawankar@hcltech.com with below details:
Overall Experience:
Relevant Exp with Vision AI:
Notice Period:
Current and Expected CTC:
Current and Preferred Location:
 
                    
                    
Required Skill Profession
 
                     
                    
                    Computer Occupations