Skip to content
geeksforgeeks
  • Tutorials
    • Python
    • Java
    • Data Structures & Algorithms
    • ML & Data Science
    • Interview Corner
    • Programming Languages
    • Web Development
    • CS Subjects
    • DevOps And Linux
    • School Learning
    • Practice Coding Problems
  • Courses
    • DSA to Development
    • Get IBM Certification
    • Newly Launched!
      • Master Django Framework
      • Become AWS Certified
    • For Working Professionals
      • Interview 101: DSA & System Design
      • Data Science Training Program
      • JAVA Backend Development (Live)
      • DevOps Engineering (LIVE)
      • Data Structures & Algorithms in Python
    • For Students
      • Placement Preparation Course
      • Data Science (Live)
      • Data Structure & Algorithm-Self Paced (C++/JAVA)
      • Master Competitive Programming (Live)
      • Full Stack Development with React & Node JS (Live)
    • Full Stack Development
    • Data Science Program
    • All Courses
  • Python
  • R Language
  • Python for Data Science
  • NumPy
  • Pandas
  • OpenCV
  • Data Analysis
  • ML Math
  • Machine Learning
  • NLP
  • Deep Learning
  • Deep Learning Interview Questions
  • Machine Learning
  • ML Projects
  • ML Interview Questions
Open In App
Next Article:
Difference Between Data Science and Business Intelligence
Next article icon

Data Science Vs Machine Learning : Key Differences

Last Updated : 29 Nov, 2024
Comments
Improve
Suggest changes
Like Article
Like
Report

In the 21st Century, two terms "Data Science" and "Machine Learning" are some of the most searched terms in the technology world. From 1st-year Computer Science students to big Organizations like Netflix, Amazon, etc are running behind these two techniques. Both fields have grown exponentially due to the explosion of data and the need for intelligent systems that can make sense of it.

Machine-Learning--VS-Data-Science-copy
Data Science Vs Machine Learning

In this article, we will discuss about the difference between Data Science & Machine Learning, it's core component, Tools & Techniques and so on.

Table of Content

  • What is Data Science?
  • What is Machine Learning?
  • Comparison Between Data Science Vs Machine Learning
  • Role of Machine Learning in Data Science

What is Data Science?

Data Science is the complex study of the large amount of data in a company or organization's repository. When we study this data. we get valuable information about business or market patterns which helps the business have an edge over the other competitors since they’ve increased their effectiveness by recognizing patterns in the data set. 

Core Components of Data Science:

  • Data Collection: Gathering raw data from multiple sources.
  • Data Cleaning and Preprocessing: Removing inconsistencies, handling missing values, and formatting data for analysis.
  • Data Analysis and Visualization: Finding patterns in data and presenting findings through charts, graphs, and dashboards.
  • Predictive Modeling: Using algorithms to make predictions based on historical data.
  • Data Interpretation and Communication: Translating insights for business stakeholders.

Tools Used in Data Science:

  • Programming Languages:Python, R
  • Data Visualization:Tableau, Power BI, Matplotlib, Seaborn
  • Big Data Processing:Hadoop, Spark
  • Databases: SQL,MongoDB

What is Machine Learning?

Machine Learning is a field of study that gives computers the capability to learn without being explicitly programmed. Machine Learning is applied using Algorithms to process the data and get trained for delivering future predictions without human intervention. Machine Learning is used extensively by companies like Facebook, Google, etc. 

Core Components of Machine Learning:

  • Data Processing: Preparing data for ML models through preprocessing techniques.
  • Model Selection: Choosing the appropriate model for the task (e.g., regression, classification, clustering).
  • Training and Testing: Splitting data to evaluate model performance and optimize it for real-world application.
  • Optimization and Tuning: Adjusting model parameters to enhance accuracy and efficiency.

Tools Used in Machine Learning:

  • Programming Languages: Python, R.
  • Libraries and Frameworks: TensorFlow, PyTorch, Scikit-Learn, Keras
  • Algorithms: Linear Regression, Decision Trees, Neural Network, K-Nearest Neighbors.

Comparison Between Data Science Vs Machine Learning

Aspect

Data Science

Machine Learning

Definition

Field focused on extracting insights from data using statistical, mathematical, and computational methods.

Subfield of AI focused on designing algorithms that learn from and make predictions or decisions based on data.

Goal

To analyze and interpret data to gain insights and drive business decisions.

To enable systems to learn patterns from data and make accurate predictions or automate tasks.

Data Handling

Involves handling raw, unstructured, structured, and big data.

Primarily uses structured data for training models.

Techniques

Statistical analysis, data visualization, data preprocessing, data cleaning.

Algorithms like supervised learning, unsupervised learning, reinforcement learning.

Industrial Sectors

Healthcare, finance, e-commerce, marketing, government.

Autonomous vehicles, robotics, finance, healthcare, image recognition.

Skills Required

Statistical analysis, data wrangling, programming, storytelling.

Strong programming, algorithm design, and mathematical skills.

Key Processes

Data cleaning, data exploration, visualization, reporting.

Model training, model evaluation, hyperparameter tuning, deployment.

Role of Machine Learning in Data Science

  • Prediction and Classification: Machine Learning is often used to build predictive models, making it essential in cases where forecasts or classifications are needed, such as customer segmentation or sales predictions.
  • Pattern Recognition and Automation: ML algorithms help data scientists identify patterns in data that may be too complex or too vast for manual analysis.
  • Handling Big Data: In situations involving large datasets, traditional analytical techniques may not be feasible, and ML algorithms can efficiently manage and analyze vast amounts of data.
  • Exploratory Data Analysis (EDA): Data Science heavily involves EDA which includes summarizing main characteristics, visualizing data, and spotting trends. While ML can aid in analysis, it's not essential for EDA.

Conclusion

While Data Science and Machine Learning are closely related fields, they have distinct purposes, techniques, and applications. Data Science is a broad field focused on analyzing and interpreting data, whereas Machine Learning is a subset that involves developing algorithms for predictive insights. Understanding these differences is crucial for those interested in a career in data or AI, as well as for businesses aiming to leverage data-driven insights effectively.


Next Article
Difference Between Data Science and Business Intelligence

A

amritanand25
Improve
Article Tags :
  • Computer Subject
  • Difference Between
  • Machine Learning
  • Write From Home
  • AI-ML-DS Blogs
  • AI-ML-DS
  • data-science
  • Data Science Blogs
Practice Tags :
  • Machine Learning

Similar Reads

    Data Science Tutorial
    Data Science is a field that combines statistics, machine learning and data visualization to extract meaningful insights from vast amounts of raw data and make informed decisions, helping businesses and industries to optimize their operations and predict future trends.This Data Science tutorial offe
    3 min read

    Fundamental of Data Science

    What is Data Science?
    Data science is the study of data that helps us derive useful insight for business decision making. Data Science is all about using tools, techniques, and creativity to uncover insights hidden within data. It combines math, computer science, and domain expertise to tackle real-world challenges in a
    8 min read
    What Are the Roles and Responsibilities of a Data Scientist?
    In the world of data space, the era of Big Data emerged when organizations are dealing with petabytes and exabytes of data. It became very tough for industries for the storage of data until 2010. Now when the popular frameworks like Hadoop and others solved the problem of storage, the focus is on pr
    5 min read
    Top 10 Data Science Job Profiles
    Data Science refers to the study of data to extract the most useful insights for the business or the organization. It is the topmost highly demanding field world of technology. Day by day the increasing demand of data enthusiasts is making data science a popular field. Data science is a type of appr
    8 min read
    Applications of Data Science
    Data Science is the deep study of a large quantity of data, which involves extracting some meaning from the raw, structured, and unstructured data. Extracting meaningful data from large amounts usesalgorithms processing of data and this processing can be done using statistical techniques and algorit
    6 min read
    Data Science vs Data Analytics
    In this article, we will discuss the differences between the two most demanded fields in Artificial intelligence that is data science, and data analytics.What is Data Science Data Science is a field that deals with extracting meaningful information and insights by applying various algorithms preproc
    3 min read
    Data Science Vs Machine Learning : Key Differences
    In the 21st Century, two terms "Data Science" and "Machine Learning" are some of the most searched terms in the technology world. From 1st-year Computer Science students to big Organizations like Netflix, Amazon, etc are running behind these two techniques. Both fields have grown exponentially due t
    5 min read
    Difference Between Data Science and Business Intelligence
    While they have different uses, business intelligence (BI) and data science are both essential for making data-driven decisions. Data science is the study of finding patterns and forecasts through sophisticated analytics, machine learning, and algorithms. In contrast, the main function of business i
    4 min read
    Data Science Fundamentals
    In the world of data space, the era of Big Data emerged when organizations began dealing with petabytes and exabytes of data. It became very tough for industries the store data until 2010. Now, the popular frameworks like Hadoop and others have solved the problem of storage, the focus is on processi
    15+ min read
    Data Science Lifecycle
    Data Science Lifecycle revolves around the use of machine learning and different analytical strategies to produce insights and predictions from information in order to acquire a commercial enterprise objective. The complete method includes a number of steps like data cleaning, preparation, modelling
    6 min read
    Math for Data Science
    Data Science is a large field that requires vast knowledge and being at a beginner's level, that's a fair question to ask "How much maths is required to become a Data Scientist?" or "How much do you need to know in Data Science?". The point is when you'll be working on solving real-life problems, yo
    5 min read

    Programming Language for Data Science

    Python for Data Science - Learn the Uses of Python in Data Science
    In this Python for Data Science guide, we'll explore the exciting world of Python and its wide-ranging applications in data science. We will also explore a variety of data science techniques used in data science using the Python programming language. We all know that data Science is applied to gathe
    6 min read
    R Programming for Data Science
    R is an open-source programming language used statistical software and data analysis tools. It is an important tool for Data Science. It is highly popular and is the first choice of many statisticians and data scientists.R includes powerful tools for creating aesthetic and insightful visualizations.
    13 min read
    SQL for Data Science
    Mastering SQL (Structured Query Language) has become a fundamental skill for anyone pursuing a career in data science. As data plays an increasingly central role in business and technology, SQL has emerged as the most essential tool for managing and analyzing large datasets. Data scientists rely on
    7 min read

    Complete Data Science Program

    Data Science Tutorial
    Data Science is a field that combines statistics, machine learning and data visualization to extract meaningful insights from vast amounts of raw data and make informed decisions, helping businesses and industries to optimize their operations and predict future trends.This Data Science tutorial offe
    3 min read
    Learn Data Science Tutorial With Python
    Data Science has become one of the fastest-growing fields in recent years, helping organizations to make informed decisions, solve problems and understand human behavior. As the volume of data grows so does the demand for skilled data scientists. The most common languages used for data science are P
    3 min read

    Data Analysis tutorial

    Data Analysis (Analytics) Tutorial
    Data Analytics is a process of examining, cleaning, transforming and interpreting data to discover useful information, draw conclusions and support decision-making. It helps businesses and organizations understand their data better, identify patterns, solve problems and improve overall performance.
    4 min read
    Data Analysis with Python
    Data Analysis is the technique of collecting, transforming and organizing data to make future predictions and informed data-driven decisions. It also helps to find possible solutions for a business problem. In this article, we will discuss how to do data analysis with Python i.e. analyzing numerical
    15+ min read
    Data analysis using R
    Data Analysis is a subset of data analytics, it is a process where the objective has to be made clear, collect the relevant data, preprocess the data, perform analysis(understand the data, explore insights), and then visualize it. The last step visualization is important to make people understand wh
    9 min read
    Top 80+ Data Analyst Interview Questions and Answers
    Data is information, often in the form of numbers, text, or multimedia, that is collected and stored for analysis. It can come from various sources, such as business transactions, social media, or scientific experiments. In the context of a data analyst, their role involves extracting meaningful ins
    15+ min read

    Data Vizualazation Tutotrial

    Python - Data visualization tutorial
    Data visualization is a crucial aspect of data analysis, helping to transform analyzed data into meaningful insights through graphical representations. This comprehensive tutorial will guide you through the fundamentals of data visualization using Python. We'll explore various libraries, including M
    7 min read
    Data Visualization with Python
    In today's world, a lot of data is being generated on a daily basis. And sometimes to analyze this data for certain trends, patterns may become difficult if the data is in its raw format. To overcome this data visualization comes into play. Data visualization provides a good, organized pictorial rep
    14 min read
    Data Visualization in R
    Data visualization is the practice of representing data through visual elements like graphs, charts, and maps. It helps in understanding large datasets more easily, making it possible to identify patterns and trends that support better decision-making. R is a language designed for statistical analys
    5 min read

    Machine Learning Tutorial

    Machine Learning Tutorial
    Machine learning is a branch of Artificial Intelligence that focuses on developing models and algorithms that let computers learn from data without being explicitly programmed for every task. In simple words, ML teaches the systems to think and understand like humans by learning from the data.Machin
    5 min read
    Maths for Machine Learning
    Mathematics is the foundation of machine learning. Math concepts plays a crucial role in understanding how models learn from data and optimizing their performance. Before diving into machine learning algorithms, it's important to familiarize yourself with foundational topics, like Statistics, Probab
    5 min read
    100+ Machine Learning Projects with Source Code [2025]
    This article provides over 100 Machine Learning projects and ideas to provide hands-on experience for both beginners and professionals. Whether you're a student enhancing your resume or a professional advancing your career these projects offer practical insights into the world of Machine Learning an
    5 min read
    Top 50+ Machine Learning Interview Questions and Answers
    Machine Learning involves the development of algorithms and statistical models that enable computers to improve their performance in tasks through experience. Machine Learning is one of the booming careers in the present-day scenario.If you are preparing for machine learning interview, this intervie
    15+ min read
    Machine Learning with R
    Machine Learning as the name suggests is the field of study that allows computers to learn and take decisions on their own i.e. without being explicitly programmed. These decisions are based on the available data that is available through experiences or instructions. It gives the computer that makes
    2 min read

    Deep Learning & NLP Tutorial

    Deep Learning Tutorial
    Deep Learning tutorial covers the basics and more advanced topics, making it perfect for beginners and those with experience. Whether you're just starting or looking to expand your knowledge, this guide makes it easy to learn about the different technologies of Deep Learning.Deep Learning is a branc
    5 min read
    5 Deep Learning Project Ideas for Beginners
    Well, irrespective of our age or domain or background knowledge some things succeed in fascinating us in a way such that we're so motivated to do something related to it. Artificial Intelligence is one such thing that needs nothing more than just a definition to attract anyone and everyone. To be pr
    6 min read
    Deep Learning Interview Questions
    Deep learning is a part of machine learning that is based on the artificial neural network with multiple layers to learn from and make predictions on data. An artificial neural network is based on the structure and working of the Biological neuron which is found in the brain. Deep Learning Interview
    15+ min read
    Natural Language Processing (NLP) Tutorial
    Natural Language Processing (NLP) is a branch of Artificial Intelligence (AI) that helps machines to understand and process human languages either in text or audio form. It is used across a variety of applications from speech recognition to language translation and text summarization.Natural Languag
    5 min read
    Top 50 NLP Interview Questions and Answers 2024 Updated
    Natural Language Processing (NLP) is a key area in artificial intelligence that enables computers to understand, interpret, and respond to human language. It powers technologies like chatbots, voice assistants, translation services, and sentiment analysis, transforming how we interact with machines.
    15+ min read

    Computer Vision Tutorial

    Computer Vision Tutorial
    Computer Vision is a branch of Artificial Intelligence (AI) that enables computers to interpret and extract information from images and videos, similar to human perception. It involves developing algorithms to process visual data and derive meaningful insights.Why Learn Computer Vision?High Demand i
    8 min read
    40+ Top Computer Vision Projects [2025 Updated]
    Computer Vision is a branch of Artificial Intelligence (AI) that helps computers understand and interpret context of images and videos. It is used in domains like security cameras, photo editing, self-driving cars and robots to recognize objects and navigate real world using machine learning.This ar
    4 min read
    Why Data Science Jobs Are in High Demand
    Jobs are something that can help you enable your disabled dreams. This is why many aspirants, who fail to achieve milestones in their businesses in one go, prefer to apply for that job they can pursue. With the same context, you need to know that Data Science jobs are trending in this pandemic era t
    6 min read
geeksforgeeks-footer-logo
Corporate & Communications Address:
A-143, 7th Floor, Sovereign Corporate Tower, Sector- 136, Noida, Uttar Pradesh (201305)
Registered Address:
K 061, Tower K, Gulshan Vivante Apartment, Sector 137, Noida, Gautam Buddh Nagar, Uttar Pradesh, 201305
GFG App on Play Store GFG App on App Store
Advertise with us
  • Company
  • About Us
  • Legal
  • Privacy Policy
  • In Media
  • Contact Us
  • Advertise with us
  • GFG Corporate Solution
  • Placement Training Program
  • Languages
  • Python
  • Java
  • C++
  • PHP
  • GoLang
  • SQL
  • R Language
  • Android Tutorial
  • Tutorials Archive
  • DSA
  • Data Structures
  • Algorithms
  • DSA for Beginners
  • Basic DSA Problems
  • DSA Roadmap
  • Top 100 DSA Interview Problems
  • DSA Roadmap by Sandeep Jain
  • All Cheat Sheets
  • Data Science & ML
  • Data Science With Python
  • Data Science For Beginner
  • Machine Learning
  • ML Maths
  • Data Visualisation
  • Pandas
  • NumPy
  • NLP
  • Deep Learning
  • Web Technologies
  • HTML
  • CSS
  • JavaScript
  • TypeScript
  • ReactJS
  • NextJS
  • Bootstrap
  • Web Design
  • Python Tutorial
  • Python Programming Examples
  • Python Projects
  • Python Tkinter
  • Python Web Scraping
  • OpenCV Tutorial
  • Python Interview Question
  • Django
  • Computer Science
  • Operating Systems
  • Computer Network
  • Database Management System
  • Software Engineering
  • Digital Logic Design
  • Engineering Maths
  • Software Development
  • Software Testing
  • DevOps
  • Git
  • Linux
  • AWS
  • Docker
  • Kubernetes
  • Azure
  • GCP
  • DevOps Roadmap
  • System Design
  • High Level Design
  • Low Level Design
  • UML Diagrams
  • Interview Guide
  • Design Patterns
  • OOAD
  • System Design Bootcamp
  • Interview Questions
  • Inteview Preparation
  • Competitive Programming
  • Top DS or Algo for CP
  • Company-Wise Recruitment Process
  • Company-Wise Preparation
  • Aptitude Preparation
  • Puzzles
  • School Subjects
  • Mathematics
  • Physics
  • Chemistry
  • Biology
  • Social Science
  • English Grammar
  • Commerce
  • World GK
  • GeeksforGeeks Videos
  • DSA
  • Python
  • Java
  • C++
  • Web Development
  • Data Science
  • CS Subjects
@GeeksforGeeks, Sanchhaya Education Private Limited, All rights reserved
We use cookies to ensure you have the best browsing experience on our website. By using our site, you acknowledge that you have read and understood our Cookie Policy & Privacy Policy
Lightbox
Improvement
Suggest Changes
Help us improve. Share your suggestions to enhance the article. Contribute your expertise and make a difference in the GeeksforGeeks portal.
geeksforgeeks-suggest-icon
Create Improvement
Enhance the article with your expertise. Contribute to the GeeksforGeeks community and help create better learning resources for all.
geeksforgeeks-improvement-icon
Suggest Changes
min 4 words, max Words Limit:1000

Thank You!

Your suggestions are valuable to us.

What kind of Experience do you want to share?

Interview Experiences
Admission Experiences
Career Journeys
Work Experiences
Campus Experiences
Competitive Exam Experiences