Raj

python - Core, Rest APIs, Frameworks

by Raj

Experience:5 Yrs

Python for Data Science (Beginner) – Full 1000-Word Course Description

Python has become the world’s most popular programming language for Data Science, Artificial Intelligence, Automation, a...

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Course Content

Python for Data Science (Beginner) – Full 1000-Word Course Description

Python has become the world’s most popular programming language for Data Science, Artificial Intelligence, Automation, and Machine Learning because of its simplicity, flexibility, and powerful ecosystem of data-focused libraries. This beginner-friendly course is designed for students, working professionals, and anyone interested in learning how to analyze real-world data using Python. The program takes you step by step from the basics of programming to hands-on data processing, visualization, and mini-project development, enabling you to confidently move into Data Science and Machine Learning career pathways.

In today’s world, data is the most valuable resource, and organizations rely heavily on insights extracted from large datasets to drive decisions. This course helps learners understand how data works, how to clean and organize datasets, and how to apply analytical methods to uncover meaningful patterns. With a balanced combination of theory and practice, students will work with real-time datasets, build visual dashboards, and perform end-to-end analysis using popular tools like NumPy, Pandas, Matplotlib, Seaborn, and Jupyter Notebook.

Unlike traditional programming courses, this training focuses on industry-based learning, ensuring every concept is practiced rather than memorized. Even if you have zero programming experience, the program will help you become confident in writing code, solving logical problems, analyzing data, and presenting insights visually.

Course Objectives

By the end of this course, learners will be able to:

Understand the fundamentals of Python and core programming concepts.

Work with data types, loops, conditional statements, functions, and modules.

Use NumPy for numerical computations and array manipulations.

Use Pandas for data manipulation, data cleaning, and preparing structured datasets.

Perform Exploratory Data Analysis (EDA) using statistical and visual methods.

Create meaningful data visualizations using Matplotlib and Seaborn.

Import, clean, filter, group, merge, and transform data efficiently.

Solve real-life analytical problems using datasets such as sales, students performance, healthcare, or finance data.

Build a complete Mini Data Analysis Project and present insights.

Prepare for advanced topics like Machine Learning and AI.

Who Can Join This Course

This course is ideal for:

Students from any background who want to start careers in Data Science & AI.

Working professionals looking to shift into analytics or automation.

Engineers aiming for Data Analyst / Python Developer roles.

Beginners who want to learn programming from scratch.

Entrepreneurs who want to analyze business data for decision-making.

No prior coding or mathematics experience is required—everything is taught step-by-step.

Course Structure & Syllabus (Module-wise)

Module 1: Introduction to Python & Installation

Understanding Data Science & the role of Python

Installing Python, Anaconda, and Jupyter Notebook

Understanding notebooks vs IDEs

Writing your first Python program

Code execution methods & best practices

Module 2: Python Basics & Programming Fundamentals

Variables, Identifiers, Operators, Expressions

Data Types: numbers, strings, booleans, lists, tuples, sets, dictionaries

Type conversion and input/output handling

String operations and slicing techniques

Module 3: Control Statements & Functions

if-else conditions and nested decisions

Loops: for, while, break, continue, pass

Functions: definition, arguments, return values, scope

Lambda & built-in functions

Understanding modules and package imports

Module 4: File Handling & Error Management

Reading & writing files (.txt, .csv, .json)

Working with Excel files

Exceptions & debugging

Module 5: NumPy for Numerical Computing

Arrays vs Lists

Creating, reshaping, and slicing arrays

Mathematical operations & array broadcasting

Statistical methods using NumPy

Module 6: Pandas for Data Manipulation

DataFrames, Series, indexing & filtering

Handling missing values

GroupBy, merge, join, concatenate

Sorting, aggregation, pivot tables

Loading and analyzing CSV/Excel data

Module 7: Data Visualization

Understanding visual patterns & analytics

Line, bar, scatter, pie charts

Heatmaps, count plots, histograms, boxplots

Styling visual graphs for presentations

Module 8: Exploratory Data Analysis (EDA)

Descriptive statistics & summary reports

Identifying patterns, trends, outliers

Feature relationship understanding & correlation mapping

Module 9: Mini-Project

Examples:

Sales performance analysis

Student academic performance insight generation

Hospital patient record evaluation

Consumer behavioral analysis

Students will submit a final project demonstrating dataset handling, cleaning, visualization, and insights.

Tools & Technologies Covered

Tool Purpose

Python Programming language

Jupyter Notebook Interactive coding environment

NumPy Fast numerical processing

Pandas Data manipulation & transformation

Matplotlib / Seaborn Visualization libraries

CSV, Excel, JSON Dataset formats

Skills You Will Gain

Programming logic & problem-solving

Data cleaning and preprocessing

Data visualization and storytelling using charts

Analytical and statistical thinking

Report generation and insight presentation

Confidence to move into ML & AI tracks

Career Paths After This Course

After completing this training, students can pursue roles such as:

Python Developer

Data Analyst

Business Analyst

Data Engineer (Entry-level)

Machine Learning Engineer (Next Step)

Research & AI trainee

Industries hiring Data Science professionals include IT, finance, healthcare, e-commerce, education, consulting, and startups.

Python for Data Science (Beginner) – Full 1000-Word Course Description

Python has become the world’s most popular programming language for Data Science, Artificial Intelligence, Automation, and Machine Learning because of its simplicity, flexibility, and powerful ecosystem of data-focused libraries. This beginner-friendly course is designed for students, working professionals, and anyone interested in learning how to analyze real-world data using Python. The program takes you step by step from the basics of programming to hands-on data processing, visualization, and mini-project development, enabling you to confidently move into Data Science and Machine Learning career pathways.

In today’s world, data is the most valuable resource, and organizations rely heavily on insights extracted from large datasets to drive decisions. This course helps learners understand how data works, how to clean and organize datasets, and how to apply analytical methods to uncover meaningful patterns. With a balanced combination of theory and practice, students will work with real-time datasets, build visual dashboards, and perform end-to-end analysis using popular tools like NumPy, Pandas, Matplotlib, Seaborn, and Jupyter Notebook.

Unlike traditional programming courses, this training focuses on industry-based learning, ensuring every concept is practiced rather than memorized. Even if you have zero programming experience, the program will help you become confident in writing code, solving logical problems, analyzing data, and presenting insights visually.

Course Objectives

By the end of this course, learners will be able to:

Understand the fundamentals of Python and core programming concepts.

Work with data types, loops, conditional statements, functions, and modules.

Use NumPy for numerical computations and array manipulations.

Use Pandas for data manipulation, data cleaning, and preparing structured datasets.

Perform Exploratory Data Analysis (EDA) using statistical and visual methods.

Create meaningful data visualizations using Matplotlib and Seaborn.

Import, clean, filter, group, merge, and transform data efficiently.

Solve real-life analytical problems using datasets such as sales, students performance, healthcare, or finance data.

Build a complete Mini Data Analysis Project and present insights.

Prepare for advanced topics like Machine Learning and AI.

Who Can Join This Course

This course is ideal for:

Students from any background who want to start careers in Data Science & AI.

Working professionals looking to shift into analytics or automation.

Engineers aiming for Data Analyst / Python Developer roles.

Beginners who want to learn programming from scratch.

Entrepreneurs who want to analyze business data for decision-making.

No prior coding or mathematics experience is required—everything is taught step-by-step.

Course Structure & Syllabus (Module-wise)

Module 1: Introduction to Python & Installation

Understanding Data Science & the role of Python

Installing Python, Anaconda, and Jupyter Notebook

Understanding notebooks vs IDEs

Writing your first Python program

Code execution methods & best practices

Module 2: Python Basics & Programming Fundamentals

Variables, Identifiers, Operators, Expressions

Data Types: numbers, strings, booleans, lists, tuples, sets, dictionaries

Type conversion and input/output handling

String operations and slicing techniques

Module 3: Control Statements & Functions

if-else conditions and nested decisions

Loops: for, while, break, continue, pass

Functions: definition, arguments, return values, scope

Lambda & built-in functions

Understanding modules and package imports

Module 4: File Handling & Error Management

Reading & writing files (.txt, .csv, .json)

Working with Excel files

Exceptions & debugging

Module 5: NumPy for Numerical Computing

Arrays vs Lists

Creating, reshaping, and slicing arrays

Mathematical operations & array broadcasting

Statistical methods using NumPy

Module 6: Pandas for Data Manipulation

DataFrames, Series, indexing & filtering

Handling missing values

GroupBy, merge, join, concatenate

Sorting, aggregation, pivot tables

Loading and analyzing CSV/Excel data

Module 7: Data Visualization

Understanding visual patterns & analytics

Line, bar, scatter, pie charts

Heatmaps, count plots, histograms, boxplots

Styling visual graphs for presentations

Module 8: Exploratory Data Analysis (EDA)

Descriptive statistics & summary reports

Identifying patterns, trends, outliers

Feature relationship understanding & correlation mapping

Module 9: Mini-Project

Examples:

Sales performance analysis

Student academic performance insight generation

Hospital patient record evaluation

Consumer behavioral analysis

Students will submit a final project demonstrating dataset handling, cleaning, visualization, and insights.

Tools & Technologies Covered

Tool Purpose

Python Programming language

Jupyter Notebook Interactive coding environment

NumPy Fast numerical processing

Pandas Data manipulation & transformation

Matplotlib / Seaborn Visualization libraries

CSV, Excel, JSON Dataset formats

Skills You Will Gain

Programming logic & problem-solving

Data cleaning and preprocessing

Data visualization and storytelling using charts

Analytical and statistical thinking

Report generation and insight presentation

Confidence to move into ML & AI tracks

Career Paths After This Course

After completing this training, students can pursue roles such as:

Python Developer

Data Analyst

Business Analyst

Data Engineer (Entry-level)

Machine Learning Engineer (Next Step)

Research & AI trainee

Industries hiring Data Science professionals include IT, finance, healthcare, e-commerce, education, consulting, and startups.

Python for Data Science (Beginner) – Full 1000-Word Course Description

Python has become the world’s most popular programming language for Data Science, Artificial Intelligence, Automation, and Machine Learning because of its simplicity, flexibility, and powerful ecosystem of data-focused libraries. This beginner-friendly course is designed for students, working professionals, and anyone interested in learning how to analyze real-world data using Python. The program takes you step by step from the basics of programming to hands-on data processing, visualization, and mini-project development, enabling you to confidently move into Data Science and Machine Learning career pathways.

In today’s world, data is the most valuable resource, and organizations rely heavily on insights extracted from large datasets to drive decisions. This course helps learners understand how data works, how to clean and organize datasets, and how to apply analytical methods to uncover meaningful patterns. With a balanced combination of theory and practice, students will work with real-time datasets, build visual dashboards, and perform end-to-end analysis using popular tools like NumPy, Pandas, Matplotlib, Seaborn, and Jupyter Notebook.

Unlike traditional programming courses, this training focuses on industry-based learning, ensuring every concept is practiced rather than memorized. Even if you have zero programming experience, the program will help you become confident in writing code, solving logical problems, analyzing data, and presenting insights visually.

Course Objectives

By the end of this course, learners will be able to:

Understand the fundamentals of Python and core programming concepts.

Work with data types, loops, conditional statements, functions, and modules.

Use NumPy for numerical computations and array manipulations.

Use Pandas for data manipulation, data cleaning, and preparing structured datasets.

Perform Exploratory Data Analysis (EDA) using statistical and visual methods.

Create meaningful data visualizations using Matplotlib and Seaborn.

Import, clean, filter, group, merge, and transform data efficiently.

Solve real-life analytical problems using datasets such as sales, students performance, healthcare, or finance data.

Build a complete Mini Data Analysis Project and present insights.

Prepare for advanced topics like Machine Learning and AI.

Who Can Join This Course

This course is ideal for:

Students from any background who want to start careers in Data Science & AI.

Working professionals looking to shift into analytics or automation.

Engineers aiming for Data Analyst / Python Developer roles.

Beginners who want to learn programming from scratch.

Entrepreneurs who want to analyze business data for decision-making.

No prior coding or mathematics experience is required—everything is taught step-by-step.

Course Structure & Syllabus (Module-wise)

Module 1: Introduction to Python & Installation

Understanding Data Science & the role of Python

Installing Python, Anaconda, and Jupyter Notebook

Understanding notebooks vs IDEs

Writing your first Python program

Code execution methods & best practices

Module 2: Python Basics & Programming Fundamentals

Variables, Identifiers, Operators, Expressions

Data Types: numbers, strings, booleans, lists, tuples, sets, dictionaries

Type conversion and input/output handling

String operations and slicing techniques

Module 3: Control Statements & Functions

if-else conditions and nested decisions

Loops: for, while, break, continue, pass

Functions: definition, arguments, return values, scope

Lambda & built-in functions

Understanding modules and package imports

Module 4: File Handling & Error Management

Reading & writing files (.txt, .csv, .json)

Working with Excel files

Exceptions & debugging

Module 5: NumPy for Numerical Computing

Arrays vs Lists

Creating, reshaping, and slicing arrays

Mathematical operations & array broadcasting

Statistical methods using NumPy

Module 6: Pandas for Data Manipulation

DataFrames, Series, indexing & filtering

Handling missing values

GroupBy, merge, join, concatenate

Sorting, aggregation, pivot tables

Loading and analyzing CSV/Excel data

Module 7: Data Visualization

Understanding visual patterns & analytics

Line, bar, scatter, pie charts

Heatmaps, count plots, histograms, boxplots

Styling visual graphs for presentations

Module 8: Exploratory Data Analysis (EDA)

Descriptive statistics & summary reports

Identifying patterns, trends, outliers

Feature relationship understanding & correlation mapping

Module 9: Mini-Project

Examples:

Sales performance analysis

Student academic performance insight generation

Hospital patient record evaluation

Consumer behavioral analysis

Students will submit a final project demonstrating dataset handling, cleaning, visualization, and insights.

Tools & Technologies Covered

Tool Purpose

Python Programming language

Jupyter Notebook Interactive coding environment

NumPy Fast numerical processing

Pandas Data manipulation & transformation

Matplotlib / Seaborn Visualization libraries

CSV, Excel, JSON Dataset formats

Skills You Will Gain

Programming logic & problem-solving

Data cleaning and preprocessing

Data visualization and storytelling using charts

Analytical and statistical thinking

Report generation and insight presentation

Confidence to move into ML & AI tracks

Career Paths After This Course

After completing this training, students can pursue roles such as:

Python Developer

Data Analyst

Business Analyst

Data Engineer (Entry-level)

Machine Learning Engineer (Next Step)

Research & AI trainee

Industries hiring Data Science professionals include IT, finance, healthcare, e-commerce, education, consulting, and startups.

Python for Data Science (Beginner) – Full 1000-Word Course Description

Python has become the world’s most popular programming language for Data Science, Artificial Intelligence, Automation, and Machine Learning because of its simplicity, flexibility, and powerful ecosystem of data-focused libraries. This beginner-friendly course is designed for students, working professionals, and anyone interested in learning how to analyze real-world data using Python. The program takes you step by step from the basics of programming to hands-on data processing, visualization, and mini-project development, enabling you to confidently move into Data Science and Machine Learning career pathways.

In today’s world, data is the most valuable resource, and organizations rely heavily on insights extracted from large datasets to drive decisions. This course helps learners understand how data works, how to clean and organize datasets, and how to apply analytical methods to uncover meaningful patterns. With a balanced combination of theory and practice, students will work with real-time datasets, build visual dashboards, and perform end-to-end analysis using popular tools like NumPy, Pandas, Matplotlib, Seaborn, and Jupyter Notebook.

Unlike traditional programming courses, this training focuses on industry-based learning, ensuring every concept is practiced rather than memorized. Even if you have zero programming experience, the program will help you become confident in writing code, solving logical problems, analyzing data, and presenting insights visually.

Course Objectives

By the end of this course, learners will be able to:

Understand the fundamentals of Python and core programming concepts.

Work with data types, loops, conditional statements, functions, and modules.

Use NumPy for numerical computations and array manipulations.

Use Pandas for data manipulation, data cleaning, and preparing structured datasets.

Perform Exploratory Data Analysis (EDA) using statistical and visual methods.

Create meaningful data visualizations using Matplotlib and Seaborn.

Import, clean, filter, group, merge, and transform data efficiently.

Solve real-life analytical problems using datasets such as sales, students performance, healthcare, or finance data.

Build a complete Mini Data Analysis Project and present insights.

Prepare for advanced topics like Machine Learning and AI.

Who Can Join This Course

This course is ideal for:

Students from any background who want to start careers in Data Science & AI.

Working professionals looking to shift into analytics or automation.

Engineers aiming for Data Analyst / Python Developer roles.

Beginners who want to learn programming from scratch.

Entrepreneurs who want to analyze business data for decision-making.

No prior coding or mathematics experience is required—everything is taught step-by-step.

Course Structure & Syllabus (Module-wise)

Module 1: Introduction to Python & Installation

Understanding Data Science & the role of Python

Installing Python, Anaconda, and Jupyter Notebook

Understanding notebooks vs IDEs

Writing your first Python program

Code execution methods & best practices

Module 2: Python Basics & Programming Fundamentals

Variables, Identifiers, Operators, Expressions

Data Types: numbers, strings, booleans, lists, tuples, sets, dictionaries

Type conversion and input/output handling

String operations and slicing techniques

Module 3: Control Statements & Functions

if-else conditions and nested decisions

Loops: for, while, break, continue, pass

Functions: definition, arguments, return values, scope

Lambda & built-in functions

Understanding modules and package imports

Module 4: File Handling & Error Management

Reading & writing files (.txt, .csv, .json)

Working with Excel files

Exceptions & debugging

Module 5: NumPy for Numerical Computing

Arrays vs Lists

Creating, reshaping, and slicing arrays

Mathematical operations & array broadcasting

Statistical methods using NumPy

Module 6: Pandas for Data Manipulation

DataFrames, Series, indexing & filtering

Handling missing values

GroupBy, merge, join, concatenate

Sorting, aggregation, pivot tables

Loading and analyzing CSV/Excel data

Module 7: Data Visualization

Understanding visual patterns & analytics

Line, bar, scatter, pie charts

Heatmaps, count plots, histograms, boxplots

Styling visual graphs for presentations

Module 8: Exploratory Data Analysis (EDA)

Descriptive statistics & summary reports

Identifying patterns, trends, outliers

Feature relationship understanding & correlation mapping

Module 9: Mini-Project

Examples:

Sales performance analysis

Student academic performance insight generation

Hospital patient record evaluation

Consumer behavioral analysis

Students will submit a final project demonstrating dataset handling, cleaning, visualization, and insights.

Tools & Technologies Covered

Tool Purpose

Python Programming language

Jupyter Notebook Interactive coding environment

NumPy Fast numerical processing

Pandas Data manipulation & transformation

Matplotlib / Seaborn Visualization libraries

CSV, Excel, JSON Dataset formats

Skills You Will Gain

Programming logic & problem-solving

Data cleaning and preprocessing

Data visualization and storytelling using charts

Analytical and statistical thinking

Report generation and insight presentation

Confidence to move into ML & AI tracks

Career Paths After This Course

After completing this training, students can pursue roles such as:

Python Developer

Data Analyst

Business Analyst

Data Engineer (Entry-level)

Machine Learning Engineer (Next Step)

Research & AI trainee

Industries hiring Data Science professionals include IT, finance, healthcare, e-commerce, education, consulting, and startups.

Skills

R Programming/python, Python and Opencv, Python Django, Python and Kafka, Python 3, 12th Python, Advanced Python

Tutor

Raj Profile Pic
Raj

Yoga is a group of physical, mental, and spiritual practices or disciplines that originated with its own philosophy in ancient India, aimed at controlling body and mind to attain various soteriolog...

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5 Years Experience

gachibowli

Course Mode

Online and Offline

Duration

8 months

Language

English, Hindi, Malayalam, Marathi, Punjabi, Urdu

Location

Karimnagar

Pricing

9999.00 INR

Batch Type

Weekend

What Students Say About: Raj

The instructor explained the concepts very clearly. I really enjoyed the course.

Amit Sharma

This course was very informative and helped me understand the topic better.

Priya Das

I liked the structure of the lessons and the examples used were very practical.

Rohan Mehta

FMG-2.0😎

SRV

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