Artificial Intelligence
Artificial Intelligence Training Program
This comprehensive program offers an in-depth exploration of artificial intelligence (AI), covering its fundamentals, applications, and advanced techniques. Participants will gain a complete understanding of AI concepts, algorithms, and tools, enabling them to leverage AI for concrete problem-solving and business applications.
Overview
Program Objectives
- •Define and explain fundamental concepts of artificial intelligence.
- •Identify distinct types of AI and their applications.
- •Understand the building blocks of AI, including machine learning, deep learning, and natural language processing.
- •Explore AI applications in various sectors (marketing, finance, healthcare, education, etc.).
- •Implement machine learning algorithms for data analysis and prediction.
- •Use deep learning techniques for image recognition, natural language processing, and other complex tasks.
- •Understand ethical issues and challenges related to AI development and deployment.
Learning Outcomes
- ✓Explain the history, evolution, and future of AI.
- ✓Differentiate AI types (narrow, general, super intelligence).
- ✓Describe key AI components (machine learning, deep learning, NLP).
- ✓Identify and discuss AI applications in various industries.
- ✓Implement machine learning algorithms for analysis and prediction.
- ✓Use deep learning techniques for image recognition, NLP, etc.
- ✓Analyze ethical issues related to AI.
- ✓Develop a basic understanding of AI strategy for businesses.
Curriculum
Session I
Introduction to Artificial Intelligence
- •Introduction to AI
- •History of AI
- •Types of AI (functionality/capabilities)
- •Importance of AI
- •AI vs Human Intelligence
- •Building blocks of AI
- •AI trends and statistics
- •Summary and quiz
Session II
Applications of Artificial Intelligence
- •AI applications in: marketing, finance, defense, telecom, healthcare, automotive, gaming, e-commerce, social media, robotics, education, chatbots, agriculture, supply chain, navigation, lifestyle, HR, etc.
- •Summary and discussion
Session III
Fundamental Concepts of Machine Learning
- •Overview and history of ML
- •ML Algorithms
- •Supervised learning (regression, classification, decision trees, random forests, etc.)
- •Unsupervised learning (clustering, association, HMM, etc.)
- •Reinforcement learning
- •ML Steps
- •Pros/cons and future of ML
- •Summary and quiz
Session IV
Machine Learning Use Cases
- •Automatic translation
- •Medical diagnosis
- •Image recognition
- •Voice recognition
- •Summary and quiz
Session V
Deep Learning in Brief
- •Introduction and importance of deep learning
- •Operation and process of deep learning
- •ML vs DL comparison
- •Activation and loss functions, optimizers
- •Creating DL models
- •Applications and limits of deep learning
- •Summary and discussion
Session VI
NLP, NLG, NLU: Fundamentals
- •Introduction to NLP, NLG, NLU
- •Techniques, functioning, and applications of NLP
- •NLP/NLG/NLU comparisons
- •AI/ML/DL comparisons
- •Summary
Session VII
Hybrid AI - Machine as Creative Partners
- •Hybrid model and ANN
- •CNN, autoencoders, feedforward and recurrent neural networks, mixture density network
- •Pros/cons and applications
- •Summary and discussion
Session VIII
AI Strategy for Business
- •AI strategies for business performance
- •Assessing AI capabilities
- •Roadmap and AI implementation plan
- •ABCDE Framework, myths and facts, top AI jobs
- •Summary and discussion
Requirements
- !Basics in mathematics and statistics.
- !Programming concepts (optional).
Coming soon
Duration
Coming soon
Level
All levels
Format
Coming soon
Spots filling up fast