AI Fundamentals for Non-Data Scientists Course Syllabus

Full curriculum breakdown — modules, lessons, estimated time, and outcomes.

Overview: This course provides non-technical professionals with a strategic understanding of AI and machine learning fundamentals, focusing on real-world business applications. Over approximately 8 hours, learners will explore core concepts, evaluate models, apply no-code tools, and consider ethical implications—all without requiring coding experience. The course blends conceptual learning with hands-on exercises using accessible platforms, culminating in practical takeaways for leading AI initiatives in any industry.

Module 1: Big Data and AI Foundations

Estimated time: 2 hours

  • Big Data concepts and their role in AI
  • Data management tools and infrastructure basics
  • Core AI and machine learning terminology for business leaders
  • Case study analysis on data-driven decision making
  • Developing a high-level data strategy

Module 2: Training & Evaluating ML Algorithms

Estimated time: 2 hours

  • Overview of key ML algorithms: logistic regression, decision trees, neural networks
  • Understanding loss functions and model training
  • Evaluating models using precision, recall, and trade-offs
  • Interpreting confusion matrices and ROC curves
  • Running an AutoML experiment

Module 3: AI Applications & Emerging Methods

Estimated time: 1 hour

  • Introduction to natural language processing (NLP)
  • Basics of generative models: GANs and VAEs
  • No-code machine learning with Teachable Machine
  • Building and comparing two prototype models using sample datasets

Module 4: Industry Insights & Ethics

Estimated time: 1 hour

  • Executive perspectives on AI deployment at scale
  • Data privacy considerations in AI systems
  • Identifying and mitigating bias in models
  • Conducting an ethical AI health check in a simulated business scenario

Module 5: Generative AI Overview

Estimated time: 2 hours

  • Understanding foundation models and their capabilities
  • Fundamentals of prompt engineering
  • Exploring creative and business use cases for generative AI
  • Crafting and testing prompts for text generation
  • Evaluating quality and relevance of AI-generated content

Module 6: Final Project

Estimated time: 1 hour

  • Design a no-code AI solution for a real-world business problem
  • Apply ethical review principles to the proposed solution
  • Present a brief strategy memo outlining implementation and expected impact

Prerequisites

  • Familiarity with basic business concepts
  • No prior coding or data science experience required
  • Access to a modern web browser for no-code tool use

What You'll Be Able to Do After

  • Explain core AI and machine learning concepts in business terms
  • Evaluate and compare machine learning models using performance metrics
  • Build simple AI models using no-code and AutoML tools
  • Apply ethical frameworks to AI deployment scenarios
  • Lead AI strategy discussions and initiatives with technical and non-technical stakeholders
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