Workflow Script Automation for AI Computer Vision Projects
Automate your entire Computer Vision pipeline — from raw data to deployment-ready models — using intelligent scripting for 2D & 3D vision tasks.
Automate your entire Computer Vision pipeline — from raw data to deployment-ready models — using intelligent scripting for 2D & 3D vision tasks.
This course is designed for computer vision and AI practitioners looking to build scalable, automated pipelines for real-world vision tasks. Covering both 2D and 3D domains, the course empowers learners with skills to automate data preprocessing, model implementation, evaluation, optimization, and reporting using powerful scripting techniques. You’ll build reusable workflows that streamline the entire AI lifecycle — from raw image ingestion to intelligent decision-making systems.
Whether you’re handling RGB, depth, or multi-modal data, this course equips you with the tools to build intelligent automation for classical and deep learning-based computer vision pipelines.
Grasp the core principles and benefits of automating computer vision pipelines to enhance workflow efficiency.
Apply Python and relevant libraries like OpenCV, TensorFlow, and PyTorch to build scalable automated CV solutions.
Build end-to-end automated workflows for 2D and 3D vision tasks including data preprocessing, feature extraction, and model evaluation.
Employ automated hyperparameter tuning and evaluation techniques to maximize the performance of computer vision models.
Create detailed automated reports summarizing pipeline execution, results, and actionable insights for decision making.
Design customizable automation pipelines suited to a variety of 2D/3D CV applications including classification, detection, and segmentation.
Apply your knowledge through practical assignments designed to simulate real-world computer vision automation tasks. These exercises will deepen your understanding of pipeline automation, data preprocessing, and model optimization.
Reinforce your learning with quizzes after each major module to assess your grasp of key concepts and automation techniques. Quizzes will help identify areas for improvement and ensure readiness for advanced topics.
Prepare confidently for technical interviews with curated questions and mock interviews focused on computer vision automation, programming skills, and pipeline design. Gain insights into industry expectations and best practices.
Develop an automated image classifier utilizing a 2D computer vision pipeline. Automate data ingestion, preprocessing, feature extraction, and model training to classify images into predefined categories.
Build a 3D object detection and segmentation system with automated data processing, 2D-to-3D conversion, feature extraction, and deployment of detection and segmentation models for complex 3D vision tasks.
Construct an automated face recognition system combining 2D and 3D vision techniques. Automate data preprocessing, feature extraction, and classification to identify faces from images or video streams.
Design an autonomous navigation system using computer vision with automated pipelines for environment perception, object detection, and decision-making for navigation in real-world scenarios.
Develop an automated system for real-time anomaly detection in surveillance videos. Use 2D/3D pipelines to preprocess, extract features, and identify unusual activities efficiently.
Create an automated medical image analysis system to preprocess medical images, segment anatomical structures, and detect abnormalities using 2D/3D vision pipelines.
Develop an automated visual quality control system to inspect products, detect defects, and ensure compliance using computer vision pipelines for manufacturing processes.
Construct an automated visual search engine that performs content-based image retrieval (CBIR) by identifying similar images or objects within large databases using computer vision automation.