Skip to content

bytegoose/ai

Repository files navigation

AI Research: the latest trends in AI space

Material:

This advanced-level course is designed for researchers, practitioners, and graduate students interested in the cutting-edge developments in artificial intelligence. The course delves deep into the latest research trends, focusing on three primary areas: Large Language Models (LLMs), Large Visual Models (LVMs), and Applied AI in industry tasks. Through a combination of lectures, case studies, and hands-on projects, participants will gain a comprehensive understanding of the theoretical underpinnings and practical applications of these technologies.

Objectives:

To provide an in-depth understanding of the architecture, capabilities, and limitations of Large Language Models (LLMs).

To explore the advancements in Large Visual Models (LVMs), including their applications in image and video processing.

To examine how AI is being applied in various industry sectors, focusing on real-world challenges and solutions.

To equip participants with the skills to critically evaluate and contribute to the latest AI research.

Breakdown of Research Outline:

Model Fundamentals Stack

Architecture - Data - Optimization - Systems

Research Focus 1: Introduction to Large Language Models (LLMs).

Overview of LLMs: History and Evolution

Key Concepts: Transformer Models, Attention Mechanisms, and Pre-training Techniques

Case Studies: GPT-3, BERT, and T5

Ethical Considerations and Bias in LLMs

Research Focus 2: Large Visual Models (LVMs). Research Focus

Introduction to LVMs: From Convolutional Neural Networks to Vision Transformers

Advanced Techniques: Object Detection, Image Segmentation, and Generative Models

Case Studies: DALL-E, CLIP, and VisualGPT

Research Focus 3: Applied AI in Industry Tasks. Applications in Healthcare, Autonomous Vehicles, and Media, Pharma, etc

Focus 3.1 AI in Manufacturing: Predictive Maintenance and Quality Control

Focus 3.2 AI in Finance: Fraud Detection and Algorithmic Trading

Focus 3.3 AI in Healthcare: Diagnostics, Personalized Medicine, and Telemedicine

Focus 3.4 AI in Retail: Customer Behavior Analysis and Inventory Management

Focus 3.5 AI in Pharma: AI Powered Drug Discovery and Longevity

Module Ethical and Regulatory Challenges in Industry Applications

Focus 4: Future Directions and Research Opportunities

Emerging Trends in AI: Multimodal Learning and Explainable AI

Collaborative Research Opportunities: Industry-Academia Partnerships

Preparing for the Future: Skills and Knowledge Required for AI Researchers

AI Research platforms

About

AI Research Docs, Examples, Learning

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published