Data Science Essential – DSE
About Course
A thorough grasp of statistical analysis, familiarity with huge
dataset processing, and programming languages like Python
or R are all part of the Data Science Essentials. To extract
important insights and make wise judgments, data scientists
use machine learning algorithms and data visualization
approaches. Gaining an understanding of Data Science
Essentials is essential for generating actionable insight and
promoting innovation in a variety of sectors, since it centers
on the extraction of knowledge from raw data
Course Content
1. Introduction to Data Science
Understanding Data Science
00:00Definition and scope of data science
00:00Data science lifecycle and processes
00:00Role of a Data Scientist
00:00Data Exploration and Preprocessing
00:00Exploratory Data Analysis (EDA) techniques
00:00Handling missing data and outliers
00:00Data cleaning and transformation
00:00Introduction to Data Visualization
00:00Importance of data visualization
00:00Common visualization tools and libraries (e.g., Matplotlib, Seaborn)
00:00Creating effective visualizations
00:00
2. Statistical Analysis and Machine Learning Basics
3. Supervised Learning
4. Unsupervised Learning and Feature Engineering
5. Advanced Topics in Data Science
6. Final Project
7. Final Exam
Student Ratings & Reviews
No Review Yet