Mathematics-Basics to Advanced for Data Science And GenAI
What you'll learn
- Master Calculus: Understand derivatives and integrals, and apply them in optimizing machine learning algorithms and data analysis tasks.
- Learn Linear Algebra: Grasp vectors, matrices, and eigenvalues, essential for building and understanding advanced data science models.
- Understand Probability: Dive into probability theory, crucial for making informed predictions and working with uncertainty in data.
- Apply Statistics: Gain practical skills in statistical analysis, helping you make data-driven decisions and interpret results effectively.
Requirements
- Basic Understanding of High School Math: Familiarity with basic algebra, geometry, and arithmetic operations will help you grasp the course material more effectively.
- Curiosity About Data Science: A keen interest in learning how mathematics is applied in data science will enhance your engagement with the content.
- No Prior Programming Experience Required: While some familiarity with programming is helpful, it's not mandatory. Mathematical concepts will be the main focus.
- Willingness to Practice: Be ready to work through exercises, quizzes, and projects to reinforce your understanding and gain practical experience.
Description
Are you eager to dive into the world of data science but feel overwhelmed by the mathematical concepts involved? Welcome to the "Complete Maths to Learn Data Science" course, your comprehensive guide to mastering the essential mathematical foundations needed to excel in data science and machine learning.
This course is designed to bridge the gap between your current math skills and the level required to understand and implement data science algorithms effectively. Whether you are a beginner or an experienced professional looking to strengthen your mathematical understanding, this course will equip you with the tools you need to succeed.
What You Will Learn:
Calculus for Data Science:
Understand the fundamentals of calculus, including derivatives, integrals, and limits.
Learn how these concepts are applied in optimizing machine learning algorithms, such as gradient descent, and in understanding complex data transformations.
Linear Algebra Essentials:
Gain a deep understanding of vectors, matrices, eigenvalues, and eigenvectors.
Discover how these linear algebra concepts are crucial for data manipulation, dimensionality reduction (like PCA), and building advanced machine learning models.
Probability Theory and Its Applications:
Dive into the world of probability, including concepts like random variables, distributions, and Bayes’ Theorem.
Explore how probability forms the backbone of predictive modeling, classification algorithms, and risk assessment in data science.
Statistics for Data Analysis:
Master key statistical techniques such as hypothesis testing, regression analysis, and statistical inference.
Learn to make data-driven decisions by understanding and applying statistical methods to real-world datasets.
Why This Course?
This course stands out by focusing on the clarity and practical application of mathematical concepts in data science. Each topic is broken down into simple, easy-to-understand modules that build on one another. You will not only learn the theory but also see exactly how these mathematical tools are used in real data science scenarios.
Throughout the course, you’ll engage with interactive quizzes, assignments, and hands-on projects designed to reinforce your understanding. By applying what you learn in real-world projects, you’ll gain practical experience and build a portfolio that showcases your newly acquired skills.
Who Is This Course For?
Aspiring Data Scientists: Individuals looking to build a strong mathematical foundation essential for mastering data science and machine learning.
Data Science Beginners: Those new to the field who want to understand the core mathematical concepts that drive data science algorithms.
Professionals Transitioning into Data Science: Engineers, analysts, or professionals from other fields seeking to acquire the mathematical skills necessary for a career shift into data science.
Students and Academics: Students pursuing studies in data science, computer science, or related fields who need a comprehensive understanding of mathematics for data science applications.
Lifelong Learners: Anyone with a passion for learning and a desire to understand how mathematics powers the world of data science, even without prior experience in the field.
Enroll Today!
Join thousands of learners who have transformed their careers by mastering the mathematics behind data science. Whether you’re aiming to start a new career, enhance your skills, or simply satisfy your curiosity, this course will provide the solid mathematical foundation you need to succeed. Enroll now and take the first step towards becoming a confident and skilled data scientist!
Who this course is for:
- Aspiring Data Scientists: Individuals looking to build a strong mathematical foundation essential for mastering data science and machine learning.
- Data Science Beginners: Those who are new to data science and want to understand the core mathematical concepts that drive data science algorithms.
- Professionals Transitioning into Data Science: Engineers, analysts, or professionals from other fields seeking to acquire the mathematical skills necessary for a career shift into data science.
- Students and Academics: Students pursuing studies in data science, computer science, or related fields who need a comprehensive understanding of mathematics for data science applications.
- Lifelong Learners: Anyone with a passion for learning and a desire to understand how mathematics powers the world of data science, even without prior experience in the field.
- This course is tailored to equip learners with the essential mathematical tools needed to excel in data science, regardless of their current level of expertise.
Instructors
I am the Ex Co-founder and Chief AI Engineer of iNeuron and my experience is pioneering in machine learning, deep learning, and computer vision,Generative AI,an educator, and a mentor, with over 15 years' experience in the industry. These are my Udemy Courses where I explain various topics on machine learning, deep learning, and AI with many real-world problem scenarios. I have delivered over 30+ tech talks on data science, machine learning, and AI at various meet-ups, technical institutions, and community-arranged forums. My main aim is to make everyone familiar of ML and AI.
Krish AI Technologies is at the forefront of education in the fields of Data Science, Machine Learning, Generative AI, Deep Learning, and related technologies. Founded by industry veteran Krish Naik, who has over 13 years of experience in the data analytics industry and more than 7 years of teaching expertise, our mission is to equip learners with the skills and knowledge required to excel in the rapidly evolving tech landscape.
Our Expertise: At Krish AI Technologies, we specialize in a comprehensive range of subjects within the realm of artificial intelligence and data science, including:
Data Science: From foundational concepts to advanced techniques, we cover all aspects of data analysis, statistical modeling, and data visualization.
Machine Learning: Our curriculum spans the full spectrum of machine learning algorithms, including supervised and unsupervised learning, clustering techniques, and advanced predictive modeling.
Generative AI: We provide in-depth training on the latest generative AI models and techniques, helping students understand and implement cutting-edge technologies.
Deep Learning: Our courses delve into the mathematical intuition and practical applications of deep learning, covering neural networks, CNNs, RNNs, and more.
Natural Language Processing (NLP): We offer comprehensive training in NLP, including text preprocessing, sentiment analysis, language modeling, and various NLP projects.