AI+ Architect™

Visualize Tomorrow: Neural Networks in Vision

Certificate Code: AT-320

About This Course

  • Deep AI Expertise: Covers neural networks, NLP, and computer vision frameworks
  • Enterprise AI: Learn to design scalable AI systems for real-world impact
  • Capstone Integration: Build, test, and deploy advanced AI architectures
  • Industry Preparedness: Equips you for roles in high-demand AI design domains

Certificate Overview

Included

Instructor-led OR Self-paced course + Official exam + Digital badge

Duration

  • Instructor-Led: 5 days (live or virtual) 
  • Self-Paced: 40 hours of content

Prerequisites

key concepts in both artificial intelligence, Fundamental understanding of computer science, Familiarity with cloud computing platforms like AWS, Azure, or GCP

Exam Format

50 questions, 70% passing, 90 minutes, online proctored exam

Course Modules

1

Certification Overview

  1. Course Introduction Preview
2

Module 1: Fundamentals of Neural Networks

  1. 1.1 Introduction to Neural Networks
  2. 1.2 Neural Network Architecture
  3. 1.3 Hands-on: Implement a Basic Neural Network
3

Module 2: Neural Network Optimization

  1. 2.1 Hyperparameter Tuning
  2. 2.2 Optimization Algorithms
  3. 2.3 Regularization Techniques
  4. 2.4 Hands-on: Hyperparameter Tuning and Optimization
4

Module 3: Neural Network Architectures for NLP

  1. 3.1 Key NLP Concepts
  2. 3.2 NLP-Specific Architectures
  3. 3.3 Hands-on: Implementing an NLP Model
5

Module 4: Neural Network Architectures for Computer Vision

  1. 4.1 Key Computer Vision Concepts
  2. 4.2 Computer Vision-Specific Architectures
  3. 4.3 Hands-on: Building a Computer Vision Model
6

Module 5: Model Evaluation and Performance Metrics

  1. 5.1 Model Evaluation Techniques
  2. 5.2 Improving Model Performance
  3. 5.3 Hands-on: Evaluating and Optimizing AI Models
7

Module 6: AI Infrastructure and Deployment

  1. 6.1 Infrastructure for AI Development
  2. 6.2 Deployment Strategies
  3. 6.3 Hands-on: Deploying an AI Model
8

Module 7: AI Ethics and Responsible AI Design

  1. 7.1 Ethical Considerations in AI
  2. 7.2 Best Practices for Responsible AI Design
  3. 7.3 Hands-on: Analyzing Ethical Considerations in AI
9

Module 8: Generative AI Models

  1. 8.1 Overview of Generative AI Models
  2. 8.2 Generative AI Applications in Various Domains
  3. 8.3 Hands-on: Exploring Generative AI Models
10

Module 9: Research-Based AI Design

  1. 9.1 AI Research Techniques
  2. 9.2 Cutting-Edge AI Design
  3. 9.3 Hands-on: Analyzing AI Research Papers
11

Module 10: Capstone Project and Course Review

  1. 10.1 Capstone Project Presentation
  2. 10.2 Course Review and Future Directions
  3. 10.3 Hands-on: Capstone Project Development
12

Optional Module: AI Agents for Architect

  1. 1. Understanding AI Agents
  2. 2. Case Studies
  3. 3. Hands-On Practice with AI Agents

AI Tools You'll Learn

AutoGluon

AutoGluon

ChatGPT

ChatGPT

SonarCube

SonarCube

Vertex AI

Vertex AI