Our Top Courses
Web Development Training Program
Artificial Intelligence & Machine Learning Training Program (AIML)
Digital Marketing Training Program
About Course
Jumpstart Your Career in Data Science with WebGo Academy’s Comprehensive Data Science Course
Take the first step into the dynamic world of Data Science with WebGo Academy’s expertly designed course. Whether you’re a beginner or looking to enhance your analytical skills, this course will guide you through extracting, processing, and interpreting data to uncover meaningful insights using Python and industry-standard tools.
Why Learn Data Science with WebGo Academy?
This course is structured to give you practical, hands-on experience with a focus on real-world applications:
-
Foundations of Data Science: Understand key concepts, methodologies, and workflows that form the backbone of data-driven decision-making.
-
Data Collection and Preprocessing: Learn how to gather, clean, and organize data from diverse sources using libraries like Pandas and NumPy.
-
Exploratory Data Analysis and Visualization: Master techniques to analyze and visualize data with tools such as Matplotlib and Seaborn to identify trends and patterns.
-
Statistical Analysis and Inference: Develop skills in hypothesis testing, probability, and statistical modeling to make data-backed conclusions.
-
Introduction to Machine Learning: Gain a foundational understanding of predictive modeling and automation using frameworks like Scikit-learn.
Hands-On Learning
Work on engaging projects as you analyze datasets, build dashboards, and generate actionable insights—preparing you to solve real-world business problems confidently.
Whether you’re looking to start a career in Data Science, advance your analytical skills, or contribute to data-driven projects, WebGo Academy’s Data Science Course will equip you with the tools to succeed.
Let’s transform data into decisions—together!
Course Content
-
Installation of Python
04:51 -
Introduction to Python
08:00 -
First Program in Python
00:00 -
Installation of IDE
04:22 -
Variables – Overview
15:03