
What you’ll learn
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Gain proficiency in using Python libraries commonly used in data science and machine learning, such as NumPy, Pandas, and Matplotlib.
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Learn how to clean and preprocess datasets, including handling missing data, outliers, and feature scaling.
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Acquire knowledge of exploratory data analysis techniques to extract insights and patterns from data.
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Master the fundamentals of statistical analysis and apply statistical methods to interpret and draw conclusions from data.
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Understand the principles of machine learning and its various algorithms, such as regression, classification, and clustering.
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Learn how to select appropriate machine learning models and techniques for different types of problems and datasets.
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Develop skills in feature engineering and selection to enhance the performance of machine learning models.
Can I download Data Science Mastery: Journey into Machine Learning course?
You can download videos for offline viewing in the Android/iOS app. When course instructors enable the downloading feature for lectures of the course, then it can be downloaded for offline viewing on a desktop.Can I get a certificate after completing the course?
Yes, upon successful completion of the course, learners will get the course e-Certification from the course provider. The Data Science Mastery: Journey into Machine Learning course certification is a proof that you completed and passed the course. You can download it, attach it to your resume, share it through social media.Are there any other coupons available for this course?
You can check out for more Udemy coupons @ www.coursecouponclub.com
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Disclosure: This post may contain affiliate links and we may get small commission if you make a purchase. Read more about Affiliate disclosure here.