Course Instructor

TBA

Course Schedule

19 - 23 Apr 2026
8AM - 3PM

Course Fee

USD Enquire with us

Course Duration

5 Days

Location

JEDDAH, KSA

Course Description

The AI Engineer certification equips participants with a comprehensive understanding of Artificial Intelligence (AI) principles, advanced engineering techniques, and practical applications. The program covers AI architecture, neural networks, Large Language Models (LLMs), Generative AI, and Natural Language Processing (NLP). It also introduces cutting-edge tools like Transfer Learning using frameworks such as Hugging Face. Learners will develop expertise in designing Graphical User Interfaces (GUIs) for AI systems, managing communication pipelines, and deploying AI applications. With hands-on experience and practical projects, graduates emerge as proficient AI engineers ready to tackle complex industry challenges and contribute to innovation in the ever-evolving AI landscape.

Course Objectives

  • Design intuitive, user-friendly interfaces for AI applications through interface usability testing and integration techniques.​
  • Apply AI methodologies to solve real-world challenges, interpret results, and enhance problem-solving strategies.
  • Master the processes of developing AI systems, managing their deployment, and communicating their value to stakeholders.
  • Learn to manage AI projects from planning and resource allocation to stakeholder management and delivery.

Who Should Attend?

This certification is ideal for individuals seeking to gain a deep understanding of AI concepts and techniques, whether they are beginners or have some prior knowledge of AI.

Course Agenda

   Module 1: Foundations of Artificial Intelligence

  1.1 Introduction to AI

  1.2 Core Concepts and Techniques in AI

  1.3 Ethical Considerations

  Module 2: Introduction to AI Architecture

  2.1 Overview of AI and its Various Applications

  2.2 Introduction to AI Architecture

  2.3 Understanding the AI Development Lifecycle

  2.4 Hands-on: Setting up a Basic AI Environment

  Module 3: Fundamentals of Neural Networks

  3.1 Basics of Neural Networks

  3.2 Activation Functions and Their Role

  3.3 Backpropagation and Optimization Algorithms

  3.4 Hands-on: Building a Simple Neural Network Using a Deep Learning Framework

  Module 4: Applications of Neural Networks

  4.1 Introduction to Neural Networks in Image Processing

  4.2 Neural Networks for Sequential Data

  4.3 Practical Implementation of Neural Networks

  Module 5: Significance of Large Language Models (LLM)

  5.1 Exploring Large Language Models

  5.2 Popular Large Language Models

  5.3 Practical Finetuning of Language Models

  5.4 Hands-on: Practical Finetuning for Text Classification

  Module 6: Application of Generative AI

  6.1 Introduction to Generative Adversarial Networks (GANs)

  6.2 Applications of Variational Autoencoders (VAEs)

  6.3 Generating Realistic Data Using Generative Models

  6.4 Hands-on: Implementing Generative Models for Image Synthesis

  Module 7: Natural Language Processing

  7.1 NLP in Real-world Scenarios

  7.2 Attention Mechanisms and Practical Use of Transformers

  7.3 In-depth Understanding of BERT for Practical NLP Tasks

  7.4 Hands-on: Building Practical NLP Pipelines with Pretrained Models

  Module 8: Transfer Learning with Hugging Face

  8.1 Overview of Transfer Learning in AI

  8.2 Transfer Learning Strategies and Techniques

  8.3 Hands-on: Implementing Transfer Learning with Hugging Face Models for Various Tasks

  Module 9: Crafting Sophisticated GUIs for AI Solutions

  9.1 Overview of GUI-based AI Applications

  9.2 Web-based Framework

  9.3 Desktop Application Framework

  Module 10: AI Communication and Deployment Pipeline

  10.1 Communicating AI Results Effectively to Non-Technical Stakeholders

  10.2 Building a Deployment Pipeline for AI Models

  10.3 Developing Prototypes Based on Client Requirements

  10.4 Hands-on: Deployment

  Optional Module: AI Agents for Engineering

  1. Understanding AI Agents

  2. Case Studies

  3. Hands-On Practice with AI Agents

Assessment Methodology

All courses conducted by EdTech will begin with a Pre-evaluation and end with a Post-evaluation. The instructor will evaluate the knowledge and skills of the participants according to the feedback given by participants. This will help to recognize the benefits and the level of knowledge gained by participants through the course.

Training Methodology

Facilitated by a highly qualified specialist, who has extensive knowledge and experience; this program will be conducted using extensively interactive methods, encouraging participants to share their own experiences and apply the program material to real-life work situations in order to stimulate group discussions and improve the efficiency of the subject coverage.

Percentages of the total course hour classification are:

  • ​40% Theoretical lectures, Concepts and approach
  • 20% Motivation to develop individual skill and Techniques
  • 20% Case Studies and Practical Exercises
  • 20% Topic General Discussions and interaction

Course Manual

Participants will be provided with comprehensive presentation material as reference manual. This presentation material is a compilation of core valuable information, references, presentation methods and inspiring reading which will be used as a part of the material guide.

Course Certificate

At the completion of the course, all participants who successfully accomplished the required contact hours will receive an EdTech Training Participation Certificate as a testimony to their commitment to professional development and further education.

Why EdTech?

  • Industry Experienced; Internationally Qualified Trainers
  • Hands-on Practical Sessions & Assignments
  • Intensive Study materials
  • Flexible Schedules
  • Realistic training methodology
  • High-Quality Training in Affordable Course Fees
  • Achievement Certificate, as approved by the Ministry of Education (Abu Dhabi Center for Technical and Vocational Education Training - ACTVET), HABC, AWS, IAOSHE, SHRM, etc.