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There are 4 modules in this course
Newly updated for 2024! Mathematics for Machine Learning and Data Science is a foundational online program created by DeepLearning.AI and taught by Luis Serrano. In machine learning, you apply math concepts through programming. And so, in this specialization, you’ll apply the math concepts you learn using Python programming in hands-on lab exercises. As a learner in this program, you'll need basic to intermediate Python programming skills to be successful.
After completing this course, you will be able to:
• Represent data as vectors and matrices and identify their properties using concepts of singularity, rank, and linear independence, etc.
• Apply common vector and matrix algebra operations like dot product, inverse, and determinants
• Express certain types of matrix operations as linear transformations
• Apply concepts of eigenvalues and eigenvectors to machine learning problems
Many machine learning engineers and data scientists need help with mathematics, and even experienced practitioners can feel held back by a lack of math skills. This Specialization uses innovative pedagogy in mathematics to help you learn quickly and intuitively, with courses that use easy-to-follow visualizations to help you see how the math behind machine learning actually works.
We recommend you have a high school level of mathematics (functions, basic algebra) and familiarity with programming (data structures, loops, functions, conditional statements, debugging). Assignments and labs are written in Python but the course introduces all the machine learning libraries you’ll use.
Matrices are commonly used in machine learning and data science to represent data and its transformations. In this week, you will learn how matrices naturally arise from systems of equations and how certain matrix properties can be thought in terms of operations on system of equations.
System of equations as lines and planes•12 minutes
A geometric notion of singularity•3 minutes
Singular vs non-singular matrices•5 minutes
Linear dependence and independence•7 minutes
The determinant•8 minutes
Conclusion•0 minutes
8 readings•Total 72 minutes
Join the DeepLearning.AI Forum to ask questions, get support, or share amazing ideas!•2 minutes
Notations•10 minutes
Learning Python: Recommended Resources•10 minutes
Check your knowledge•10 minutes
Interactive Tool: Graphical Representation of Linear Systems with 2 variables•10 minutes
Interactive Tool: System of Equations as Planes (3x3)•10 minutes
(Optional) Downloading your Notebook and Refreshing your Workspace•10 minutes
Week 1 - Slides•10 minutes
3 assignments•Total 210 minutes
Practice Quiz 1•60 minutes
Practice Quiz 2•30 minutes
Graded quiz•120 minutes
1 app item•Total 1 minute
Intake Survey•1 minute
2 ungraded labs•Total 120 minutes
Introduction to NumPy Arrays•60 minutes
Linear Systems as Matrices•60 minutes
Week 2: Solving systems of linear equations
Week 2•9 hours to complete
Module details
In this week, you will learn how to solve a system of linear equations using the elimination method and the row echelon form. You will also learn about an important property of a matrix: the rank. The concept of the rank of a matrix is useful in computer vision for compressing images.
(Optional) Partial Grading for Assignments•10 minutes
Week 2 - Slides•5 minutes
2 assignments•Total 150 minutes
Practice Quiz•30 minutes
Graded Quiz•120 minutes
1 programming assignment•Total 240 minutes
Gaussian Elimination•240 minutes
1 ungraded lab•Total 30 minutes
Introduction to the Numpy.linalg sub-library•30 minutes
Week 3: Vectors and Linear Transformations
Week 3•10 hours to complete
Module details
An individual instance (observation) of data is typically represented as a vector in machine learning. In this week, you will learn about properties and operations of vectors. You will also learn about linear transformations, matrix inverse, and one of the most important operations on matrices: the matrix multiplication. You will see how matrix multiplication naturally arises from composition of linear transformations. Finally, you will learn how to apply some of the properties of matrices and vectors that you have learned so far to neural networks.
Interactive Tool: Linear Transformations•10 minutes
Week 3 - Slides•5 minutes
2 assignments•Total 90 minutes
Practice Quiz•30 minutes
Graded Quiz•60 minutes
1 programming assignment•Total 240 minutes
Linear Transformations and Neural Networks•240 minutes
3 ungraded labs•Total 180 minutes
Vector Operations: Scalar Multiplication, Sum and Dot Product of Vectors•60 minutes
Matrix Multiplication•60 minutes
Linear Transformations•60 minutes
Week 4: Determinants and Eigenvectors
Week 4•8 hours to complete
Module details
In this final week, you will take a deeper look at determinants. You will learn how determinants can be geometrically interpreted as an area and how to calculate determinant of product and inverse of matrices. We conclude this course with eigenvalues and eigenvectors. Eigenvectors are used in dimensionality reduction in machine learning. You will see how eigenvectors naturally follow from the concept of eigenbases.
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MS
5·
Reviewed on Aug 26, 2024
While people focus on teaching how to solve problems basically, It is very good to see people speak about maths like science as a concept with good visualization!. Great work guys.
R
RK
4·
Reviewed on Sep 22, 2023
I enjoyed the course very much but I found that week 4, especially the Eigenvalues and Eigenvectors explanation were not complete. This section can be definitely improved.
S
SP
5·
Reviewed on Jul 26, 2023
This course is truly exceptional for individuals eager to strengthen their grasp of Linear Algebra concepts, paving the way for a deeper understanding of machine learning and data science.
This is a beginner-friendly course, aiming to teach the concepts covered with minimal background knowledge necessary. If you're familiar with the concepts of linear algebra, you'll find this course a good review for the next course in the specialization, Calculus for Machine Learning and Data Science.
I’m not good at math, is this course still for me?
Yes! We want to break down the barriers that hold people back from advancing their math skills. In this course, we flip the traditional mathematics pedagogy for teaching math, starting with the real world use-cases and working back to theory.
Most people who are good at math simply have more practice doing math, and through that, more comfort with the mindset needed to be successful. This course is the perfect place to start or advance those fundamental skills, and build the mindset required to be good at math.
What areas of mathematics will I learn in this course?
Linear algebra (matrices, vectors, and their applications)
Why is mathematics for machine learning and data science important?
With out-of-the-box tools, it’s easier than ever to begin a career as a machine learning engineer or data scientist. But to advance deeper in your career, create efficient models, troubleshoot algorithms, and incorporate creative thinking, a deeper understanding of the mathematics behind the models is needed.
Do I need to take the courses in a specific order?
No. Most learners would benefit from taking courses one and two together, as they introduce concepts that build upon each other, but course three is independent from the other courses in this specialization.
Will I earn university credit for completing the Specialization?
No, this Specialization is not for college credit.
Is this a standalone course or a Specialization?
Linear Algebra for Machine Learning and Data Science can be taken as a standalone course or the first course in the Mathematics for Machine Learning and Data Science Specialization.
Can I apply for financial aid?
Yes, Coursera provides financial aid to learners who cannot afford the fee.
When will I have access to the lectures and assignments?
To access the course materials, assignments and to earn a Certificate, you will need to purchase the Certificate experience when you enroll in a course. You can try a Free Trial instead, or apply for Financial Aid. The course may offer 'Full Course, No Certificate' instead. This option lets you see all course materials, submit required assessments, and get a final grade. This also means that you will not be able to purchase a Certificate experience.
What will I get if I subscribe to this Specialization?
When you enroll in the course, you get access to all of the courses in the Specialization, and you earn a certificate when you complete the work. Your electronic Certificate will be added to your Accomplishments page - from there, you can print your Certificate or add it to your LinkedIn profile.
Is financial aid available?
Yes. In select learning programs, you can apply for financial aid or a scholarship if you can’t afford the enrollment fee. If fin aid or scholarship is available for your learning program selection, you’ll find a link to apply on the description page.