Course Image
Course Image

(4.6)

(1.1k Review)

Discovery

Shrenik Parmar is the Founder of DegreeLabs and a mentor focused on helping students build real capability before graduation through structured learning, global immersion, and industry-linked opportunities.

Course table of content
Lesson 1: Introduction to Data Science
  • Overview of data science and its applications in various industries.

  • Key concepts: data collection, analysis, and interpretation.

  • Introduction to the data science workflow and common tools (Python, R, SQL).

Lesson 2: Data Cleaning and Preprocessing
  • Understanding the importance of data cleaning in the data science process.

  • Techniques for handling missing data, outliers, and duplicates.

  • Preprocessing methods like normalization, standardization, and encoding categorical data.

Lesson 3: Exploratory Data Analysis (EDA)
  • Introduction to EDA techniques for understanding data patterns.

  • Using visualization tools (matplotlib, seaborn) to analyze datasets.

  • Identifying trends, correlations, and distributions in data.

Lesson 4: Introduction to Machine Learning Algorithms
  • Overview of supervised vs. unsupervised learning.

  • Introduction to basic machine learning algorithms (linear regression, decision trees, k-means clustering).

  • Implementing algorithms using libraries like scikit-learn.

Lesson 5: Model Evaluation and Validation
  • Understanding key metrics: accuracy, precision, recall, F1 score.

  • Techniques for model evaluation: cross-validation, train/test split.

  • Addressing overfitting and underfitting issues in machine learning models.

Lesson 6: Data Science Projects and Real-World Applications
  • Applying learned skills in end-to-end data science projects.

  • Building predictive models and solving real-world problems using data.

  • Best practices for presenting data insights and results to stakeholders.

Lesson 1: Introduction to Data Science
  • Overview of data science and its applications in various industries.

  • Key concepts: data collection, analysis, and interpretation.

  • Introduction to the data science workflow and common tools (Python, R, SQL).

Lesson 2: Data Cleaning and Preprocessing
  • Understanding the importance of data cleaning in the data science process.

  • Techniques for handling missing data, outliers, and duplicates.

  • Preprocessing methods like normalization, standardization, and encoding categorical data.

Lesson 3: Exploratory Data Analysis (EDA)
  • Introduction to EDA techniques for understanding data patterns.

  • Using visualization tools (matplotlib, seaborn) to analyze datasets.

  • Identifying trends, correlations, and distributions in data.

Lesson 4: Introduction to Machine Learning Algorithms
  • Overview of supervised vs. unsupervised learning.

  • Introduction to basic machine learning algorithms (linear regression, decision trees, k-means clustering).

  • Implementing algorithms using libraries like scikit-learn.

Lesson 5: Model Evaluation and Validation
  • Understanding key metrics: accuracy, precision, recall, F1 score.

  • Techniques for model evaluation: cross-validation, train/test split.

  • Addressing overfitting and underfitting issues in machine learning models.

Lesson 6: Data Science Projects and Real-World Applications
  • Applying learned skills in end-to-end data science projects.

  • Building predictive models and solving real-world problems using data.

  • Best practices for presenting data insights and results to stakeholders.

Review of this Course

4.9

(1.2k Review)

User Image
Kane Williamson

Feb 12, 2025

"I had high hopes, but this program exceeded every expectation. The instructors were knowledgeable, and the resources provided were top notch. Highly recommend course from learnly!"

User Image
Kane Williamson

Feb 12, 2025

"I had high hopes, but this program exceeded every expectation. The instructors were knowledgeable, and the resources provided were top notch. Highly recommend course from learnly!"

User Image
Kane Williamson

Feb 12, 2025

"I had high hopes, but this program exceeded every expectation. The instructors were knowledgeable, and the resources provided were top notch. Highly recommend course from learnly!"

Price of this course

8,000

INR
User

Enrolled Student:

1,100

User

Enrolled Student:

1,100

Feature

Course level:

Begineer

Feature

Course level:

Begineer

BookMark

Lesson:

12

BookMark

Lesson:

12

BookMark

Language:

English

BookMark

Language:

English

Feature

Subtitles:

English, Spanish, French

Feature

Subtitles:

English, Spanish, French

Feature

Additional recourses:

12 files

Feature

Additional recourses:

12 files

Watch

Duration:

25h 30min

Watch

Duration:

25h 30min

Award

Certificate:

Upon completion of the course

Award

Certificate:

Upon completion of the course

Book
Assignment

Plan to dedicate a minimum of 1–2 hours per day to watch course videos, complete data analysis exercises, and work on hands-on projects to apply your learning and build a solid foundation in data science.

Book
Assignment

Plan to dedicate a minimum of 1–2 hours per day to watch course videos, complete data analysis exercises, and work on hands-on projects to apply your learning and build a solid foundation in data science.

Cap
Prerequisites

Basic understanding of mathematics, statistics, and programming concepts (preferably in Python). Familiarity with tools like Excel or Google Sheets will be beneficial but not required.

Cap
Prerequisites

Basic understanding of mathematics, statistics, and programming concepts (preferably in Python). Familiarity with tools like Excel or Google Sheets will be beneficial but not required.

Material
Materials

Access to Python programming language and libraries like NumPy, pandas, and Matplotlib (free versions). A laptop or desktop with at least 8GB of RAM and a stable internet connection is required for optimal performance. Additional resources such as datasets and code samples will be provided during the course.

Material
Materials

Access to Python programming language and libraries like NumPy, pandas, and Matplotlib (free versions). A laptop or desktop with at least 8GB of RAM and a stable internet connection is required for optimal performance. Additional resources such as datasets and code samples will be provided during the course.

Related Courses

Related Courses

Related Courses

Beginner

Discover Program

Clock

Book

0

Lessons

View Program

Beginner

Discover Program

Clock

Book

0

Lessons

View Program

Advanced

Industry Challenge Pathway

Clock

Book

0

Lessons

View Program

Advanced

Industry Challenge Pathway

Clock

Book

0

Lessons

View Program

Beginner

Discover Program

Clock

Book

0

Lessons

View Program

Advanced

Industry Challenge Pathway

Clock

Book

0

Lessons

View Program

Intermediate

Course Image
Clock

10h 00min

Book

12

Lessons

View Program

Union

Start Your Capability Journey

Join the next Discover cohort and begin building real-world capability before graduation.

Union

Start Your Capability Journey

Join the next Discover cohort and begin building real-world capability before graduation.

Union

Start Your Capability Journey

Join the next Discover cohort and begin building real-world capability before graduation.