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The Ultimate Beginner's Guide to AI and Machine Learning

Posted By: Sigha
The Ultimate Beginner's Guide to AI and Machine Learning

The Ultimate Beginner's Guide to AI and Machine Learning
2025-01-25
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English (US) | Size: 37.54 GB | Duration: 35h 54m

Plus: (1) AI and Humans, (2) Generative AI and Leaders, (3) AI and Operations, (4) AI and Business Strategy

What you'll learn
Demonstrate a solid understanding of the difference between AI, Machine Learning and Deep Learning.
Clearly articulate why Large Language Models like ChatGPT and Bard are NOT intelligent.
Articulate the difference between Supervised, Unsupervised, and Reinforcement Machine Learning.
Explain the concept of machine learning and its relation to AI.
Define artificial intelligence (AI) and differentiate it from human intelligence.
Describe what Artificial Intelligence is, and what it is not.
Explain what types of sophisticated software systems are not AI systems.
Describe how Machine Learning is different to the classical software development approach.
Compare and contrast supervised, unsupervised, and reinforcement learning.
Explain Supervised and Unsupervised Machine Learning terms such as algorithms, models, labels and features.
Explain Function Approximators and the role of Neural Networks as Universal Function Approximators.
Explain Encoding and Decoding when using machine learning models to work with non-numeric, categorical type data.
Demonstrate an intuitive understanding of Reinforcement Learning concepts such as agents, environments, rewards and goals.
Identify examples of AI in everyday life and discuss their impact.
Evaluate the effectiveness of different AI applications in real-world scenarios.
Apply basic principles of neural networks to a hypothetical problem.
Discuss the role of data in training AI models
Construct a neural network model for a specified task
Assess the impact of AI on job markets and skill requirements
Recall the key milestones in the evolution of AI from theory to its practical applications in business contexts.
Explain the benefits of integrating AI with human teams to improve business outcomes.
Identify and debunk common misconceptions about AI in the workplace.
Evaluate ethical considerations and propose ethical guidelines for implementing AI in team environments.
Identify potential opportunities where AI could enhance team performance within your organization.
Demonstrate effective collaboration techniques between AI systems and human team members in project scenarios.
Build trust among team members in using AI systems by facilitating open discussions about AI capabilities and limitations.
Create a strategy to foster a culture that embraces AI innovation and change within a team or organization
Compare AI tools commonly used in business settings to determine which would best meet your team’s needs
Describe how AI technologies can be used for data analysis and decision-making in business projects.
Lead a team through AI-driven changes by developing and implementing strategies for AI integration.
Use AI for predictive analytics and risk management, demonstrating improved decision-making processes in team projects.
Implement AI-driven personalization in marketing campaigns and measure the impact on consumer engagement.
Develop a plan to use AI for enhancing recruitment and talent management processes within Human Resources.
Analyze financial data using AI tools for forecasting and budget planning, demonstrating improved accuracy in financial management
Optimize supply chain management by integrating AI solutions for inventory management and demand forecasting.
Identify barriers to AI integration and devise strategies to address them, fostering an environment conducive to AI adoption.
Develop and ensure adherence to ethical AI guidelines in your team or organization, demonstrating responsible AI use.
Predict future trends in AI and prepare your team or organization for innovative AI technologies and methodologies.
Design and implement a continuous improvement plan for AI integration, demonstrating long-term success in enhancing team performance.
Explain the concept of Artificial Intelligence and its significance in the modern world.
Differentiate between Narrow AI, General AI, and Superintelligent AI in terms of capabilities and limitations.
Utilize machine learning algorithms to identify patterns in data.
Implement a basic neural network using deep learning frameworks
Assess the role of data in training AI systems and the importance of a robust AI ecosystem.
Apply supervised learning algorithms to solve real-world predictive problems.
Cluster data points using unsupervised learning algorithms like K-means clustering.
Design a reinforcement learning model to optimize decision-making processes.
Prepare datasets for machine learning by performing data cleaning, normalization, and feature selection.
Evaluate the performance of machine learning models to avoid overfitting using validation techniques.
Create a Convolutional Neural Network (CNN) to recognize patterns in images.
Develop a Recurrent Neural Network (RNN) for processing sequential data.
Generate realistic data samples with Generative Adversarial Networks (GANs).
Employ predictive analytics tools to forecast future trends based on historical data.
Implement text processing techniques in natural language processing (NLP) for sentiment analysis.
Leverage AI-driven decision-making tools to enhance business processes.
Analyze customer behavior using AI techniques for targeted marketing strategies.
Automate repetitive tasks within an organization using Robotic Process Automation (RPA).
Optimize supply chain operations by applying AI-driven predictive analytics.
Apply AI in healthcare to improve accuracy in medical diagnosis and personalized medicine.
Define artificial intelligence and differentiate between AI and machine learning.
Identify and describe three major applications of AI in business.
Explain the role of AI in digital transformation and its impact on businesses.
Discuss the importance of ethics and governance in AI development and deployment.
Classify different data types and sources relevant for AI projects.
Describe the process of collecting and managing data for use in AI applications.
Apply data preprocessing techniques to improve the quality of data for AI models.
Demonstrate data representation techniques suitable for AI algorithms.
Evaluate data quality and implement data governance practices in AI projects.
Understand the basic concepts of machine learning and its main types.
Apply supervised learning algorithms to solve classification and regression problems.
Utilize unsupervised learning techniques for data clustering and anomaly detection.
Describe the fundamentals of reinforcement learning and its application areas.
Develop a simple linear regression model for predictive analytics.
Construct a decision tree model to classify data into predefined categories.
Implement a basic neural network for solving simple classification problems.
Apply k-means clustering algorithm to segment data into distinct groups.
Analyze text data using natural language processing (NLP) techniques for sentiment analysis.
Build and train a convolutional neural network (CNN) for image classification tasks.
Design a reinforcement learning model using the Q-learning algorithm for decision-making processes.

Requirements
There are no requirements or prerequisites for this course, but the items listed below are a guide to useful background knowledge that will increase the value and benefits of this course:
High school Math and a deep interest in machine learning would be highly beneficial for this series of lessons. There is no coding or complex mathematics involved in this course. If you can't remember high-school math, it will not prevent you from learning the concepts in this course.
An appreciation for, but not a deep knowledge of, the importance of Mathematics and Statistics in Machine Learning.
Basic computer literacy, including familiarity with operating a computer.
There are no requirements or pre-requisites for this course, but the items listed below are a guide to useful background knowledge which will increase the value and benefits of this course.
Basic understanding of AI concepts and terminology.
General familiarity with business processes and team dynamics.
Access to a computer and internet for exploring AI tools and technologies.
Basic understanding of programming concepts and familiarity with any programming language (e.g., Python, Java).
Basic knowledge of mathematics, especially algebra and statistics.
Access to a computer with internet connection to use online tools and platforms for hands-on experiments.
Basic understanding of statistics and probability.
For some lectures, familiarity with programming concepts, preferably in Python, will be useful.
General knowledge of mathematical concepts such as algebra and calculus.

Description
This course provides the essential foundations for any beginner who truly wants to master AI and machine learning. Crucial, foundational AI concepts, all bundled into one course. These concepts will be relevant for years to come. Mastering any craft, requires that you have solid foundations. Anyone who is thinking about starting a career in AI and machine learning will benefit from this. Non-technical professionals such as marketers, business analysts, etc. will be able to effectively converse and work with data scientists, machine learning engineers, or even data scientists if they apply themselves to understanding the concepts in this course.Many misconceptions about artificial intelligence and machine learning are clarified in this course. After completing this course, you will understand the difference between AI, machine learning, deep learning, reinforcement learning, deep reinforcement learning, etc.The fundamental concepts that govern how machines learn, and how machine learning uses mathematics in the background, are clearly explained. I only reference high school math concepts in this course. This is because neural networks, which are used extensively in all spheres of machine learning, are mathematical function approximators. I therefore cover the basics of functions, and how functions can be approximated, as part of the explanation of neural networks.This course does not get into any coding, or complex mathematics. This course is intended to be a baseline stepping stone for more advanced courses in AI and machine learning.

Who this course is for:
Business Executives and Managers: Professionals in leadership roles who are looking to understand how AI can be leveraged for strategic advantage in their organizations., Busy professionals who need a short, easy but solid understanding of AI fundamentals., Entrepreneurs and Startup Founders: Individuals who are building or planning to build businesses where AI could play a transformative role., Technology Consultants and Advisors: Professionals who provide strategic advice on technology adoption and integration., Absolute beginners who are aspiring to become Data Scientists or Machine Learning Engineers, and who are looking for the best fundamentals of artificial intelligence and machine learning., Product Managers and Developers: Those who are involved in product development and are interested in incorporating AI into new or existing products., Non-technical Professionals: Including, but not limite to Business Analysts or Marketers. Yhis course can give you all the skills you need to be able to interact with Data Scientists, Machine Learning Engineers or other AI specialiists., Ai and machine learning enthusiasts: This course will still be valuable because it covers extremely important fundamental concepts that are often misunderstood., This course is not for you if you have an aversion or intense dislike for Mathematics., Also, if you are looking for coding tips, technical detail about the different machine learning algorithms, back-propagation in Neural Networks, loss functions, gradient descent, policy gradient methods, etc., then these series of lessons are definitely not for you., Business leaders and managers seeking to integrate AI into their teams for improved performance and innovation., HR professionals aiming to leverage AI for recruitment, talent management, and employee engagement., Marketing and sales teams interested in utilizing AI for consumer insights, personalization, and optimizing sales strategies., Operations and supply chain specialists looking to employ AI for inventory management, demand forecasting, and enhancing operational efficiency, Team leaders and project managers who want to use AI for better decisionmaking, project management, and team collaboration., IT professionals and developers focused on implementing AI tools and technologies within business environments, enhancing data analysis, and developing human-centric AI solutions., Data Scientists looking to deepen their understanding of AI technologies and their real-world applications., Software Engineers interested in developing AI-driven solutions in areas such as healthcare, finance, and cybersecurity., Business Analysts aiming to leverage AI for better decision-making processes in marketing, sales, and supply chain management., Product Managers seeking to implement AI features into their products for enhanced user experience and operational efficiency., IT Professionals focused on the deployment and management of AI systems in enterprise environments, including automation and cybersecurity., Academic Researchers and Graduate Students pursuing advanced studies in machine learning, neural networks, and their applications across various domains., Data scientists and analysts looking to enhance their AI and ML skills., Business professionals interested in leveraging AI for digital transformation and competitive advantage., Software engineers and developers seeking to specialize in AI, ML, and deep learning technologies., Healthcare professionals aiming to apply AI in diagnostics, patient care, and medical data analysis., Marketing professionals seeking to utilize AI for customer insights, segmentation, and personalized marketing strategies., Industrial engineers and professionals exploring AI applications in smart manufacturing, predictive maintenance, and Industry 4.0.


The Ultimate Beginner's Guide to AI and Machine Learning


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