Step by Step Guide to Machine Learning
Step by Step Guide to Machine Learning
Step by Step Guide to Machine Learning Learn about SVMs for classification, regression and outliers detection in machine learning. Course content. 5 sections • 16 lectures •
What you'll learn
- Learn how to use NumPy to do fast mathematical calculations in machine learning.
- Learn what is Machine Learning and Data Wrangling in machine learning.
- Learn how to use scikit-learn for data-preprocessing in machine learning.
- Learn different model selection and feature selections techniques in machine learning.
- Learn about cluster analysis and anomaly detection in machine learning.
- Learn about SVMs for classification, regression and outliers detection in machine learning.
Requirements
- Basic knowledge of scripting and programming
- Basic knowledge of python programming
Description
If you are looking to start your career in machine learning then this is the course for you.
This is a course designed in such a way that you will learn all the concepts of machine learning right from basic to advanced levels.
This course has 5 parts as given below:
Introduction & Data Wrangling in machine learning
Linear Models, Trees & Preprocessing in machine learning
Model Evaluation, Feature Selection & Pipelining in machine learning
Bayes, Nearest Neighbours & Clustering in machine learning
SVM, Anomalies, Imbalanced Classes, Ensemble Methods in machine learning
For the code explained in each lecture, you can find a GitHub link in the resources section.
Machine learning is the fuel we need to power robots, alongside AI. With Machine Learning, we can power programs that can be easily updated and modified to adapt to new environments and tasks to get things done quickly and efficiently.
Here are a few reasons for you to pursue a career in Machine Learning:
1) Machine learning is a skill of the future
– Despite the exponential growth in Machine Learning, the field faces
skill shortage. If you can meet the demands of large companies by
gaining expertise in Machine Learning, you will have a secure career in a
technology that is on the rise.
2) Work on real challenges
– Businesses in this digital age face a lot of issues that Machine
learning promises to solve. As a Machine Learning Engineer, you will
work on real-life challenges and develop solutions that have a deep
impact on how businesses and people thrive. Needless to say, a job that
allows you to work and solve real-world struggles gives high
satisfaction.
3) Learn and grow – Since Machine
Learning is on the boom, by entering into the field early on, you can
witness trends firsthand and keep on increasing your relevance in the
marketplace, thus augmenting your value to your employer.
4) An exponential career graph
– All said and done, Machine learning is still in its nascent stage.
And as the technology matures and advances, you will have experience and
expertise to follow an upward career graph and approach your ideal
employers.
5) Build a lucrative career– The average
salary of a Machine Learning engineer is one of the top reasons why
Machine Learning seems a lucrative career to a lot of us. Since the
industry is on the rise, this figure can be expected to grow further as
the years pass by.
6) Side-step into data science –
Machine learning skills help you expand avenues in your career. Machine
Learning skills can endow you with two hats- the other of a data
scientist. Become a hot resource by gaining expertise in both fields
simultaneously and embark on an exciting journey filled with challenges,
opportunities, and knowledge.
Machine learning is happening right now. So, you want to have an early bird advantage of toying with solutions and technologies that support it. This way, when the time comes, you will find your skills in much higher demand and will be able to secure a career path that’s always on the rise.
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