دورات تدريبية باللغة العربية

Course Overview

This dynamic and forward-looking training course takes participants on a comprehensive journey into the Principles and Practices of Artificial Intelligence (AI). As AI continues to transform industries and redefine how we interact with technology, understanding its foundations and practical applications has become essential.Throughout the course, participants will explore the core principles of machine learning, neural networks, natural language processing (NLP), computer vision, and reinforcement learning. The program blends theoretical knowledge with practical, hands-on experience, equipping participants with the skills needed to apply AI techniques confidently in real-world scenarios.Whether you are an experienced professional seeking to expand your expertise or a newcomer eager to gain foundational knowledge, this course provides a comprehensive, practice-oriented exploration of AI that empowers you to harness its full potential.
Key Highlights
  • Foundational Principles of Artificial Intelligence
  • Machine Learning Algorithms and Applications
  • Neural Networks and Deep Learning Architectures
  • Ethical and Responsible AI Practices
  • Hands-on Practical Applications across Industries
  • Emerging Trends and Future Innovations
  • Interdisciplinary Perspectives and Use Cases

Course Objectives

By the end of this course, participants will be able to:

  • Understand the fundamental concepts and methodologies underpinning AI.

  • Apply machine learning and deep learning techniques in real-world contexts.

  • Develop practical skills through Python-based projects and exercises.

  • Explore advanced topics such as reinforcement learning and NLP.

  • Evaluate ethical challenges and implement responsible AI practices.

  • Collaborate effectively in AI-driven projects and discussions.

  • Enhance critical thinking, problem-solving, and decision-making skills.

  • Prepare for career growth in AI-related roles.

Course Audience

This course is ideal for:

  • Software Engineers and Developers

  • Data Scientists and Analysts

  • Business Leaders and Project Managers

  • Researchers and Academics

  • Entrepreneurs and Start-up Founders

  • Professionals from non-technical backgrounds with an interest in AI

  • Anyone eager to explore the world of Artificial Intelligence

Course Methodology

The course adopts a blended, interactive learning approach, combining:

  • Expert-led lectures for theoretical foundations.

  • Hands-on workshops using Python, TensorFlow, and PyTorch.

  • Real-world case studies and simulations.

  • Group projects and collaborative problem-solving activities.

  • Continuous feedback and progress tracking to ensure effective learning outcomes.

  • This immersive methodology ensures participants not only grasp key concepts but also develop practical expertise applicable in professional environments.

Course Outline

Day 1: Introduction to AI Fundamentals
  • Definition and history of AI
  • AI applications across industries
  • Core concepts of machine learning
  • Supervised, unsupervised, and reinforcement learning basics
  • Python essentials for AI: NumPy, Pandas, Matplotlib
Day 2: Machine Learning Algorithms
  • Linear regression: theory and implementation
  • Logistic regression for classification
  • Decision trees and ensemble methods (Random Forests)
  • Practical exercises using Python ML libraries
Day 3: Neural Networks and Deep Learning
  • Architecture of neural networks
  • Activation functions, layers, and optimization algorithms
  • Feedforward and backpropagation techniques
  • Convolutional Neural Networks (CNNs) for image tasks
  • Recurrent Neural Networks (RNNs) for sequential data
  • Transfer learning and pre-trained models
  • Hands-on projects with TensorFlow or PyTorch
Day 4: Advanced Topics in AI
  • Fundamentals of reinforcement learning
  • Q-learning, policy gradients, and deep RL
  • Applications in robotics, gaming, and autonomous systems
  • Natural Language Processing (NLP): preprocessing, tokenization, feature extraction
  • Applications of NLP in sentiment analysis, chatbots, and translation
  • Practical implementation of RL and NLP techniques
Day 5: Ethics and Practical Applications
  • AI bias, fairness, and ethical frameworks
  • Guidelines for responsible AI adoption
  • Case studies of AI implementation across industries
  • Challenges and opportunities in deploying AI solutions
  • Capstone project presentations by participants
  • Open discussion and feedback session

Certificates

On successful completion of this training course, HighPoint Certificate will be awarded to the delegates. Continuing Professional Education credits (CPE): In accordance with the standards of the National Registry of CPE Sponsors, one CPE credit is granted per 50 minutes of attendance.

Upcoming Courses

Cairo - Egypt
02-06 Nov 2025
$3950
Cairo - Egypt
09-13 Nov 2025
$3950
Cairo - Egypt
16-20 Nov 2025
$3950
Cairo - Egypt
23-27 Nov 2025
$3950
Cairo - Egypt
30 Nov-04 Dec 2025
$3950
Cairo - Egypt
07-11 Dec 2025
$3950
Cairo - Egypt
14-18 Dec 2025
$3950
Cairo - Egypt
21-25 Dec 2025
$3950
×
High Point High Point

Hello! 👋
How can we help you today?