AI+ Engineer™

This globally recognized AI+ Engineer™ Certification Course by AI CERTs® equips professionals with essential engineering knowledge to design, build, deploy, and optimize artificial intelligence systems enabling them to confidently begin their journey into developing robust, scalable, and production-ready AI solutions.

AI Certification Course - Synergogy

AI+ Engineer™ Certification

Synergogy, the Authorized Training Partner (ATP) of AI Certs, brings you this globally recognized AI+ Engineer™ Certification Course by AI CERTs® equips professionals with essential engineering knowledge to design, build, deploy, and optimize artificial intelligence systems—enabling them to confidently begin their journey into developing robust, scalable, and production-ready AI solutions.

AI+ Engineer™ Certification

This course includes

Why This Certification Matters

  • Master AI System Design: Develop the skills to design, implement, and optimize advanced AI systems for real-world applications.
  • Build Scalable AI Solutions: Learn how to create scalable AI solutions for industries like technology, finance, and healthcare.
  • Tackle Complex Engineering Challenges: This certification ensures you’re equipped to solve challenges in AI architecture, neural networks, and NLP.
  • Contribute to AI-Driven Innovations: Certified AI+ Engineers develop cutting-edge AI solutions that enhance business operations and drive future innovations.
  • Advance Your Career in AI Engineering: As demand for skilled AI engineers rises, this certification offers a competitive advantage in the job market.
Who Should Enroll?
  • AI and Software Engineers: Advance development expertise by mastering AI engineering techniques and designing robust, high-performance AI systems.
  • Machine Learning Practitioners: Apply deep learning, neural networks, and natural language processing techniques to solve practical, real-world AI challenges.
  • Data Scientists: Expand AI capabilities with engineering-focused skills for building, scaling, and deploying production-ready AI solutions.
  • IT Specialists and System Architects: Learn to integrate AI technologies into existing infrastructures while optimizing system performance, scalability, and reliability.
  • Students and Early-Career Professionals: Build in-demand AI engineering skills to prepare for successful careers in the rapidly expanding artificial intelligence industry.
Tools Covered
  • TensorFlow
  • Hugging Face Transformers
  • Jenkins
  • TensorFlow Hub
 
Prerequisites
  • AI+ Data™  or AI+ Developer™ course should be completed.
  • Basic understanding of Python programming is mandatory for hands-on exercises and project work.
  • Familiarity with high school-level algebra and basic statistics is required.
  • Understanding basic programming concepts such as variables, functions, loops, and data structures like lists and dictionaries is essential.
Exam Details
  • Foundations of Artificial Intelligence – 5%
  • Introduction to AI Architecture – 10%
  • Fundamentals of Neural Networks – 15%
  • Applications of Neural Networks – 7%
  • Significance of Large Language Models (LLM) – 8%
  • Application of Generative AI – 8%
  • Natural Language Processing – 15%
  • Transfer Learning with Hugging Face – 15%
  • Crafting Sophisticated GUIs for AI Solutions – 10%
  • AI Communication and Deployment Pipeline – 7%

What You'll Learn

1: Foundations of Artificial Intelligence

  • Evolution and core concepts of Artificial Intelligence

  • Overview of Machine Learning and Deep Learning

  • AI applications across engineering and software domains

  • Importance of data preparation and ethical AI considerations

2: AI Architecture and Engineering Design

  • Fundamentals of AI system architecture

  • AI development lifecycle and best practices

  • Designing scalable and efficient AI solutions

  • Setting up AI environments using TensorFlow and PyTorch

3: Neural Networks Fundamentals

  • Structure of neural networks: neurons, layers, and activation functions

  • Optimization techniques such as Gradient Descent, Adam, and RMSprop

  • Training and evaluating neural network models

  • Hands-on model development using standard datasets

4: Applied Neural Networks and Transfer Learning

  • Neural network applications in computer vision, NLP, and time series analysis

  • Image and sequence data handling

  • Transfer learning concepts to improve model performance

  • Practical application of pretrained models

5: Large Language Models and Generative AI

  • Significance of Large Language Models (LLMs) in modern AI systems

  • Architectures such as BERT and GPT

  • Generative AI concepts including GANs and VAEs

  • Fine-tuning pretrained models for real-world tasks

6: Natural Language Processing and Model Adaptation

  • Core NLP tasks: text classification, sentiment analysis, and translation

  • Attention mechanisms and transformer models

  • Transfer learning with Hugging Face frameworks

  • Building and deploying NLP pipelines

7: AI Interfaces, Communication, and Deployment

  • Designing intuitive GUIs for AI solutions

  • Frameworks for AI interfaces (Streamlit, Dash, PyQt, etc.)

  • Communicating AI outcomes to non-technical stakeholders

  • Building AI deployment pipelines using CI/CD practices

8: Responsible AI and Capstone Project

  • Ethics, bias mitigation, transparency, and accountability in AI systems

  • Governance and responsible AI engineering practices

  • End-to-end capstone project applying AI engineering concepts

  • Real-world case studies and solution presentation

Bring our
AI+ Foundation™ Course in-house

Interested in getting your team started with the AI Foundation Course, fully customised for your team?

Vision-Mission-Values Synergogy

FAQs - AI+ Engineer™

  • 1. What is the AI+ Engineer™ Certification?

    The AI+ Engineer™ Certification by AI CERTs® is a globally recognized program designed to equip professionals with the engineering skills needed to design, build, deploy, and optimize scalable, production-ready artificial intelligence systems.

  • 2. Who should enroll in the AI+ Engineer™ course?

    This certification is ideal for AI engineers, software developers, machine learning practitioners, data scientists, IT specialists, system architects, and students who want to develop end-to-end AI engineering expertise.

  • 3. What skills will I gain from the AI+ Engineer™ Certification?

    Learners gain hands-on skills in AI system architecture, neural networks, deep learning, large language models, NLP, generative AI, model deployment, AI interfaces, MLOps fundamentals, and responsible AI engineering practices.

  • 4. Are there any prerequisites for enrolling in the AI+ Engineer™ Certification?

    No formal prerequisites are required. However, basic programming knowledge and familiarity with AI, machine learning, or data concepts will help learners progress more efficiently through the course.

  • 5. How does the AI+ Engineer™ Certification support career growth?

    The certification validates in-demand AI engineering capabilities, preparing professionals for roles such as AI Engineer, Machine Learning Engineer, AI Software Engineer, Applied AI Specialist, and AI Solutions Engineer across technology-driven industries.

Our Blog

TTI Success Insights DISC Certified (TDC®)

Limited Seats

Our internationally recognized DISC Certification program helps HR professionals, coaches, trainers, and organizational leaders master the world’s most proven behavioral assessment tool.

Join our upcoming cohort on 6-7 Feb. 2025 and get 5 licenses to AI+ Foundation Course Absolutely Free