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Learn Machine Learning topics in-depth, which covers both the aspects practically, and mathematically
Note: DON'T BUY ANY COURSE FROM HERE, IT'S NOT AN UPDATED BATCH, If you've already bought, please email team@antern.co
Instructor: Ayush SinghLanguage: English
Overview of the Course
Note: DON'T BUY ANY COURSE FROM HERE, IT'S NOT AN UPDATED BATCH, If you've already bought, please email team@antern.co
In this course, you will get to learn machine learning topics in-depth, it covers both the aspects practically & mathematically. You will learn in-depth mathematics behind algorithms and you will implement these algorithms, and techniques from scratch as well.
We start by covering mathematics review parts that are required for successfully completing this course such as calculus, linear algebra, and probability theory. We are not only covering a wide range of theorey, but we are also covering various case studies, machine learning system designs, good resume-level projects taken from Kaggle competitions that solve real-world problems, large-scale machine learning, and a lot more.
You will create data pipeline workflows to
analyze, visualize, and gain insights from data.
Understand Machine Learning from top to bottom.
You will build a portfolio of projects with real-world data.
Master critical Machine Learning skills.
Create supervised machine learning
algorithms to predict classes.
Understand the complete production
workflow for the machine learning lifecycle.
Explore how to deploy your machine-learning
models as interactive APIs.
WE ARE ANTERN
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Students will master machine learning techniques and apply these algorithms in the real world with careful consideration of data.
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Students will learn to apply machine learning to a real-world problem, by following the full machine learning pipeline like data ingestion, processing and etc.
Students will be able to design their own machine-learning systems in the real world, they will be able to think about problems from various points of view.
Students will work on writing their own research papers guided by competent professionals in the industry.
They will not only learn algorithms, but they will also learn to fix the algorithm if the algorithm is not performing well on the data.
Throughout the course with the type of practice we provide, they will adopt a Statistician's mindset.
Students will be able to do Kaggle competitions and actively work on complicated machine learning projects confidently whether it be alone or in a team.