Machine Learning Magic: Unleashing the Power of Algorithms
The "Machine Learning Fundamentals" course is a comprehensive and essential learning resource designed to provide individuals with a solid foundation in the principles and concepts of machine learning. This course covers a wide range of fundamental topics, equipping participants with the necessary knowledge and skills to excel in the field of machine learning. By enrolling in this course, individuals can gain a deep understanding of the core principles and techniques that underpin machine learning algorithms and applications.
The course begins with an informative overview, providing participants with a clear understanding of the course structure, objectives, and the value it offers. It sets the stage for the subsequent topics that delve into probability and statistics, which are fundamental components of machine learning. Participants will learn about probability and information theory, combinatorics for probability, and the law of large numbers, which are crucial concepts for understanding the probabilistic nature of machine learning algorithms.
Furthermore, the course covers the different distributions commonly used in machine learning. Participants will gain insights into various distributions such as:
- Uniform distribution
- Gaussian distribution
- log-normal distribution
- exponential distribution
- Laplace distribution
- binomial distribution
- multinomial distribution
- Poisson distribution.
Understanding these distributions is vital for modeling and analyzing data in machine learning applications.
Machine learning optimization is another critical topic covered in the course. Participants will learn how to calculate the error of a machine learning model, enabling them to evaluate and optimize their models effectively. This knowledge is essential for improving model performance, making informed decisions, and iteratively refining machine learning algorithms.
Enroll in this course, and gain a solid understanding of the foundational concepts and techniques in machine learning. The comprehensive coverage of probability, statistics, distributions, and optimization will equip participants with the necessary skills to tackle real-world machine learning problems. Don't miss out on this incredible opportunity to enhance your understanding and proficiency in machine learning.
Your Instructor
Alexandra Kropf is Mammoth Interactive's CLO and a software developer with extensive experience in full-stack web development, app development and game development. She has helped produce courses for Mammoth Interactive since 2016, including the Coding Interview series in Java, JavaScript, C++, C#, Python and Swift.
Mammoth Interactive is a leading online course provider in everything from learning to code to becoming a YouTube star. Mammoth Interactive courses have been featured on Harvard’s edX, Business Insider and more.
Over 12 years, Mammoth Interactive has built a global student community with 4 million courses sold. Mammoth Interactive has released over 350 courses and 3,500 hours of video content.
Founder and CEO John Bura has been programming since 1997 and teaching
since 2002. John has created top-selling applications for iOS, Xbox and
more. John also runs SaaS company Devonian Apps, building
efficiency-minded software for technology workers like you.
Course Curriculum
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StartWhat Is Machine Learning (5:26)
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StartTypes Of Machine Learning Models (12:17)
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StartWhat Is Supervised Learning (11:04)
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StartWhat Is Unsupervised Learning (8:17)
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StartHow Does A Machine Learning Agent Learn (7:38)
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StartWhat Is Inductive Learning (4:11)
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StartPerformance Of A Machine Learning Algorithm (4:14)
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StartHandle Noise In Data (5:22)
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StartPowerful Tools With Machine Learning Libraries- (12:11)