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4.0 (3,182)
โฑ 55 min
๐ 8 lessons
๐ง Audio version
About this course
Understanding the mathematics behind dimensionality reduction is crucial for building efficient machine learning pipelines. Principal Component Analysis (PCA) allows you to compress high-dimensional data while retaining its most important features.
In this text-based course, you will build a solid intuitive and mathematical understanding of PCA from the ground up. You will learn how to project complex datasets onto lower-dimensional spaces, enabling faster model training and clearer data visualization without losing critical information.
What you'll learn:
- Understand foundational statistics, including mean, variance, covariance, and correlation matrices.
- Calculate vector distances, angles, and orthogonal projections using inner products.
- Derive the PCA algorithm step-by-step by finding directions of maximum variance.
- Apply PCA to reduce the dimensionality of modern high-dimensional vector embeddings.
- Implement PCA using modern Python data libraries and interpret the principal components.
- Reconstruct datasets from lower-dimensional projections and evaluate the reconstruction error.
This course begins with basic terminology and core mathematical concepts before moving into step-by-step derivations and practical Python code examples. You will progress from foundational linear algebra to implementing and interpreting PCA on real-world datasets.
This course is designed for aspiring data scientists, machine learning beginners, and anyone looking to strengthen their mathematical foundations. No advanced mathematical background is required, as we explain all concepts from scratch.
Start mastering the mathematics of dimensionality reduction today.
What you'll get
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Certificate of completion
Add it to your LinkedIn profile
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๐ง
Audio version included
Learn on the go โ no screen needed
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โพ๏ธ
Lifetime access
Come back anytime, no expiry
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๐ฑ
Phone or computer
Works anywhere, any device
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๐ธ
30-day refund
No questions asked
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โก
Short & focused
55 min of practical content
Reviews (6)
Good introduction. I appreciated the clear steps, although some of the later modules could have used more examples.
Good introduction to the topic. The structure was logical, and most of the examples were relevant, though I wished for more depth in certain areas.
Fantastic content! The explanations were clear and the exercises helped solidify my understanding. So glad I took this.
This course delivered exactly what I needed. The explanations were clear and concise. Big thumbs up!
Pretty good foundation. The explanations were generally clear, and the structure made sense. I'd say it's a worthwhile course.
A good introduction. The structure was mostly clear, but I wish there were a few more real-world examples. Still, learned a lot.
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Frequently asked
What do I need to take this course?
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Just a phone or computer with internet. No installs, no special hardware.
How do I pay?
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By card via Stripe. We donโt store card details โ Stripe handles them securely.
Can I get a refund?
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Yes โ full refund within 30 days, no questions asked.
How long will I have access?
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Forever. Once you purchase, the course is yours to revisit anytime.
Will I get a certificate?
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Yes. On completion you'll receive a certificate you can add to your LinkedIn profile.
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