Prompt Engineering: Crafting precise instructions to guide large language models for accurate, efficient, and scalable real-world task execution.
Machine Learning: Building algorithms that learn from data to automate decisions, predictions, personalization, and intelligent business optimization processes.
Deep Learning: Designing neural networks for vision, speech, autonomous systems, and complex pattern recognition across massive datasets.
Generative AI: Creating text, images, video, and audio using diffusion models and transformers for creative and enterprise applications.
AI Ethics: Ensuring fairness, transparency, accountability, and responsible deployment of artificial intelligence in regulated, high-impact environments.
Data Engineering: Preparing, cleaning, and managing large datasets that power AI pipelines and real-time analytics systems.
MLOps: Deploying, monitoring, and scaling machine learning models reliably in production environments with automation and governance.
Natural Language Processing: Teaching machines to understand, generate, and analyze human language across multilingual contexts.
Computer Vision: Enabling machines to interpret images and video for surveillance, healthcare diagnostics, retail, and autonomous mobility.