AI+ Architect™

Visualize Tomorrow: Neural Networks in Vision

Certificate Code: AT-320
Duration: 30 hours (5 Days)
Course Metrics Prerequisites Curriculum Outcomes Opportunities Salary Comparison FAQs Enroll
12+
Modules
30 hours (5 Days)
Duration
50 MCQs, 90 Minutes
Examination
70% (35/50)
Passing Score

About This Certification

  • 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

Prerequisites

  • A foundational knowledge on neural networks, including their optimization and architecture for applications.
  • Ability to evaluate models using various performance metrics to ensure accuracy and reliability.
  • Willingness to know about AI infrastructure and deployment processes to implement and maintain AI systems effectively.

Tools Covered

AutoGluon
AutoGluon
ChatGPT
ChatGPT
SonarCube
SonarCube
Vertex AI
Vertex AI

Course Curriculum

12 Modules 30 hours (5 Days)
1

Certification Overview

  1. Course IntroductionPreview
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

Exam Blueprint

Fundamentals of Neural Networks – 10%
Neural Network Optimization – 10%
Neural Network Architectures for NLP – 10%
Neural Network Architectures for Computer Vision – 10%
Model Evaluation and Performance Metrics – 10%
AI Infrastructure and Deployment – 10%
AI Ethics and Responsible AI Design – 10%
Generative AI Models – 10%
Research-Based AI Design – 10%
Capstone Project and Course Review – 10%

Learning Outcomes

End-to-End AI Solution Development

Learners will be able to develop end-to-end AI solutions, encompassing the entire workflow from data preprocessing and model building to deployment and monitoring. This includes integrating AI models into larger systems and applications, ensuring they work seamlessly within existing infrastructures.

Neural Network Implementation

Learners will gain hands-on experience in implementing various neural network architectures from scratch using programming frameworks like TensorFlow or PyTorch. This includes creating, training, and debugging models for different applications.

AI Research and Innovation

Learners will be equipped with the ability to conduct AI research, enabling them to stay at the forefront of AI developments. This includes identifying research gaps, proposing novel solutions, and critically evaluating current AI methodologies to drive innovation in the field.

Generative AI and Research-Based AI Design

Learners will explore advanced concepts in generative AI models and engage in research-based AI design. This includes developing innovative AI solutions and understanding the latest advancements in AI research, preparing them for cutting-edge applications and further research opportunities.

Career Opportunities

AI Architect

Specializes in designing AI models, neural networks, and intelligent systems for diverse applications, including NLP and computer vision.

AI Solutions Architect

Leads the integration of AI into complex systems, ensuring the deployment of scalable and efficient AI solutions across various platforms.

Cloud AI Architect

Designs and implements AI-powered cloud infrastructures, focusing on the seamless integration of AI models.

AI Research Scientist

Engages in the development of new AI models and architectures, conducting cutting-edge research.

AI System Integrator

Focuses on the implementation and integration of AI components into existing systems, ensuring that AI-driven solutions.

Salary Potential

Without AI Skills
$120,319
With AI Skills
$158,719
32% Higher Earning Potential

Frequently Asked Questions

What is the duration of the AI+ Architect certification course?

The certification lasts 40 hours, typically completed over 5 days, providing an intensive learning experience.

What will I learn in the AI+ Architect certification?

You will learn advanced neural network techniques, model optimization, NLP and computer vision architectures, AI deployment infrastructure, and ethical AI design.

Who should enroll in this course?

This course is ideal for AI architects, engineers, software developers, and professionals seeking to master AI architectures and neural networks.

Do I need prior experience to enroll in the AI+ Architect course?

A foundational understanding of AI and neural networks is recommended but not required, as the course starts with core concepts.

What is the outcome after completing the AI+ Architect certification?

Participants will be equipped with both theoretical and practical knowledge to design, optimize, and implement AI architectures.

Start Your AI Journey Today

Enroll Now

Choose the Format That Fits Your Schedule

What’s Included (One-Year Subscription + All Updates):

  • High-Quality Videos, E-book (PDF & Audio), and Podcasts
  • AI Mentor for Personalized Guidance
  • Quizzes, Assessments, and Course Resources
  • Online Proctored Exam with One Free Retake
  • Comprehensive Exam Study Guide

Instructor-Led (Live Virtual/Classroom)

  • 1 day of intensive training with live demos
  • Real-time Q&A and peer collaboration
  • Led by AI Certified Trainers and delivered through Authorized Training Partners
Purchase Instructor-Led Course

Self-Paced Online

  • ~6 hours of on-demand video lessons, e-book, and podcasts
  • Learn anywhere, anytime, with modular quizzes to track progress
  • Led by AI Certified Trainers and delivered through Authorized Training Partners
Purchase Self-Paced Course

Request Training

Get Training Details and Empower Your Journey

9 + 4 = ?
Reload

Please enter the characters shown in the CAPTCHA to verify that you are human.