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    Ai Essentials For Business

    Posted By: ELK1nG
    Ai Essentials For Business

    Ai Essentials For Business
    Published 3/2025
    MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
    Language: English | Size: 2.29 GB | Duration: 7h 46m

    Drive AI Innovation to 10x Your Business!

    What you'll learn

    Understand AI Fundamentals – Grasp the core concepts, types, and evolution of AI, including machine learning and deep learning.

    Identify AI Business Opportunities – Recognize how AI can drive innovation and efficiency across various business functions.

    Explore AI Applications – Analyze industry-specific use cases in marketing, sales, operations, finance, HR, customer service, and more.

    Develop an AI Strategy – Create a structured approach to adopting AI solutions, selecting the right technologies, and aligning AI with business goals.

    Implement AI Ethically and Effectively – Understand ethical considerations, legal compliance, and data privacy to ensure responsible AI deployment.

    Navigate AI Tools and Technologies – Explore AI platforms, no-code solutions, and data analytics tools tailored for business professionals.

    Prepare for the Future of AI – Stay ahead of emerging AI trends and foster an AI-ready culture within the organization.

    Requirements

    No requirements - only an interest in AI & Business

    Description

    AI Essentials for Business is a self-paced online course designed to help business professionals understand and apply artificial intelligence (AI) in practical, real-world scenarios. Whether you're a business leader, manager, entrepreneur, or professional looking to stay ahead in the rapidly evolving digital landscape, this course provides a strong foundation in AI and its business applications.We break down complex AI concepts into clear, easy-to-understand lessons, covering essential topics such as machine learning, deep learning, and data-driven decision-making. You'll explore how AI is transforming key industries like marketing, finance, operations, human resources, and customer service, gaining insights into how businesses are using AI to improve efficiency, automate processes, and enhance customer experiences.Beyond understanding AI, this course also provides a strategic roadmap for successfully integrating AI into business operations. You’ll learn how to identify AI opportunities, assess business processes for AI adoption, select the right tools, and implement AI solutions effectively. Ethical considerations, legal compliance, and data privacy are also covered to ensure responsible AI use.With interactive modules, case studies, expert insights, and hands-on exercises, you’ll develop the confidence to leverage AI for smarter decision-making and long-term business growth. By the end of the course, you’ll have the knowledge and skills to create an AI strategy, drive innovation, and make AI a valuable asset in your organization. Whether you're new to AI or looking to deepen your understanding, this course will equip you with the tools to stay competitive in an AI-driven world.

    Overview

    Section 1: Introduction

    Lecture 1 1.1.1 What is AI?

    Lecture 2 1.1.2 The Historical Evolution of AI

    Lecture 3 1.1.3 Two types of AI

    Lecture 4 1.1.4 Types of AI - A General Overview

    Lecture 5 1.1.5 Types of AI - Machine Learning (ML)

    Lecture 6 1.1.6 Types of AI - Deep Learning

    Lecture 7 1.1.7 Types of AI - Natural Language Processing (NLP)

    Lecture 8 1.1.8 AI as a Driver of Digital Business Transformation

    Lecture 9 1.1.9 AI as a Competitive Edge

    Lecture 10 1.1.10 Assessing AI Business Opportunities - the IBM Framework

    Section 2: Fundamentals of Machine Learning

    Lecture 11 2.1 Machine Learning Basics and AI Use Cases

    Lecture 12 2.2 Key Concepts in Machine Learning (ML)

    Lecture 13 2.3 Supervised Learning

    Lecture 14 2.4 Unsupervised Learning

    Lecture 15 2.5 Reinforcement Learning

    Lecture 16 2.6 How Machines Learn from Data

    Lecture 17 2.7 Common Machine Learning (ML) Algorithms - Supervised Learning

    Lecture 18 2.8 Common Machine Learning (ML) Algorithms - Unsupervised Learning

    Lecture 19 2.9 Common Machine Learning (ML) Algorithms - Reinforcement Learning

    Lecture 20 2.10 AI Model Training, Validation and Evaluation

    Lecture 21 2.11 Practical Example - Building an AI Customer Churn Prediction Model (Roadmap

    Section 3: Deep Learning

    Lecture 22 3.1 Deep Learning Essentials - I

    Lecture 23 3.2 Deep Learning Essentials - II

    Lecture 24 3.3 Neural Networks and their Business Applications

    Lecture 25 3.4 Challenges in Implementing Neural Networks

    Lecture 26 3.5 Data Quality, Quantity and Pre-processing

    Lecture 27 3.6 Data Management - Best Practices

    Section 4: AI Business Applications

    Lecture 28 4.1 AI Applications - Marketing and Sales

    Lecture 29 4.2 AI Applications - Business Operations and Supply Chain Management

    Lecture 30 4.3 AI Applications - Human Resources

    Lecture 31 4.4 AI Applications - Finance and Risk Management

    Lecture 32 4.5 Identifying AI Business Opportunities

    Lecture 33 4.6 Implementing AI in Business - Goals and KPIs

    Lecture 34 4.7 Developing an AI Roadmap

    Lecture 35 4.8 Developing an AI Roadmap - Resource Allocation

    Lecture 36 4.9 Exercise - Developing an AI Strategy

    Lecture 37 4.10 Example - Developing an AI Strategy (I)

    Lecture 38 4.11 Example - Developing an AI Strategy (II)

    Lecture 39 4.12 Example - Developing an AI Strategy (III)

    Lecture 40 4.13 Example - Developing an AI Strategy (IV)

    Lecture 41 4.14 Example - Developing an AI Strategy (Key Take-aways)

    Lecture 42 4.15 Selecting AI Technologies

    Lecture 43 4.16 In-house Development vs Outsourcing

    Lecture 44 4.17 Hybrid Approach to AI Development

    Lecture 45 4.18 Deciding whether to develop in-house or outsource

    Lecture 46 4.19 Example - Deciding how to develop AI

    Section 5: Ethical and Legal Aspects of AI

    Lecture 47 5.1 Ethical Practices in AI - Bias

    Lecture 48 5.2 Ethical Practices in AI - Transparency and Explainability

    Lecture 49 5.3.1 Data Privacy and Security - The GDPR

    Lecture 50 5.3.2 Data Privacy and Security - The CCPA

    Lecture 51 5.3.3 Data Privacy and Security - Security Considerations

    Lecture 52 5.4 Societal Considerations of AI

    Lecture 53 5.5 Impact of AI (Example)

    Lecture 54 5.6 Corporate Social Responsibility (CSR) and AI

    Lecture 55 5.7. 1 Developing an AI Ethics Policy

    Lecture 56 5.7.2 Exercise - Developing an AI Ethics Policy

    Lecture 57 5.7.3 Exercise - Developing an AI Ethics Policy - Example

    Everyone interested in AI and its business applications!