dots bg

Data Science/ Analytics 9

Data Science combines statistics, programming, and domain knowledge to extract insights from data. It covers data collection, cleaning, analysis, visualization, and predictive modelling using tools like Python, SQL, Excel, Power BI, and machine learning to drive data-driven decisions.

Course Instructor: Kishan

FREE

dots bg

Course Overview

Data Science is a dynamic and rapidly growing field that combines elements of mathematics, statistics, computer science, and domain expertise to extract meaningful insights and drive informed decision-making from vast volumes of data. In today’s data-driven world, organizations across industries—from finance and healthcare to retail and technology—rely heavily on data science to solve complex problems, improve operations, enhance customer experience, and predict future trends.

At its core, data science involves the entire lifecycle of data: from data collection and storage to cleaning, exploration, analysis, and modeling. Professionals in this field use a wide range of tools and techniques to uncover hidden patterns, discover correlations, and create predictive models that can automate processes or generate strategic business intelligence.

Our Data Science program offers a comprehensive learning path, guiding learners from foundational to advanced levels. The journey begins with Excel, where students learn how to organize and analyze datasets using spreadsheets and formulas. It then moves to SQL, enabling learners to query, manipulate, and manage data in relational databases efficiently.

The program then dives into Python, the most widely used programming language in data science due to its simplicity and powerful libraries like Pandas, NumPy, Matplotlib, and Scikit-learn. With Python, learners gain hands-on experience in data preprocessing, transformation, visualization, and building machine learning models.

We also emphasize Power BI, a leading data visualization tool used to create interactive dashboards and reports. Students learn to turn raw data into visually compelling stories that communicate key insights to stakeholders.

A strong foundation in Statistics is essential, as it helps in understanding data distributions, probability, hypothesis testing, and statistical modeling. This knowledge supports sound decision-making and ensures model accuracy and reliability.

The final phase of the program focuses on Machine Learning, where learners are introduced to supervised and unsupervised algorithms, model evaluation techniques, and real-world applications such as classification, regression, clustering, and recommendation systems.

Throughout the program, learners work on real-world projects and case studies that reinforce their skills and prepare them for industry challenges. Whether you're aiming to become a data analyst, data scientist, or machine learning engineer, this program equips you with the tools, techniques, and practical experience needed to thrive in the field of data science.

Schedule of Classes

Course Curriculum

1 Subject

Data Science/ Analytics 9

17 Learning Materials

Excel

Excel Syllabus

DOC

Excel 1 Material

DOC

Excel Lecture 1 File

DOC

Excel Lecture 1 Dataset

DOC

Excel Lecture 2 Material

application/octet-stream

Excel Lecture 2 HR Dataset

DOC

Excel Lecture 2 Order_Dataset

DOC

SQL

SQL syllabus

DOC

SQL Lecture 1 PPT

PDF

SQL Lecture 1 PPT

ZIP

SQL Lecture 2 Pre-read Material

PDF

SQL Lecture 2 Pre-read material_2

PDF

SQL Lecture 2 PPT

application/octet-stream

Power BI

Power BI Syllabus

DOC

Python

Python Syllabus

DOC

Statistics

Statistics Syllabus

DOC

Machine Learning

Machine Learning Syllabus

DOC

Course Instructor

tutor image

Kishan

6 Courses   •   114 Students