Data Science Tutorial

Q.1 What is data science?

Answer:

Data science is an interconnected field that involves the use of statistical and computational methods to extract insightful information and knowledge from data. Data Science is simply the application of specific principles and analytic techniques to extract information from data used in planning, strategic , decision making, etc.

Q.2 What’s the difference between Data Science and Data Analytics ?

Answer:

Data Science Data Analytics
Data Science is used in asking problems, modelling algorithms, building statistical models. Data Analytics use data to extract meaningful insights and solves problem.
Machine Learning, Java, Hadoop Python, software development etc., are the tools of Data Science. Data analytics tools include data modelling, data mining, database management and data analysis.
Data Science discovers new Questions. Use the existing information to reveal the actionable data.
This domain uses algorithms and models to extract knowledge from unstructured data. Check data from the given information using a specialised system.

Q.3 Is Python necessary for Data Science ?

Answer:

Python is easy to learn and most worldwide used programming language. Simplicity and versatility is the key feature of Python. There is R programming is also present for data science but due to simplicity and versatility of python, recommended language is python for Data Science.

Machine Learning Foundation

Machines are learning, so why do you wish to get left behind? Strengthen your ML and AI foundations today and become future ready. This self-paced course will help you learn advanced concepts like- Regression, Classification, Data Dimensionality and much more. Also included- Projects that will help you get hands-on experience. So wait no more, and strengthen your Machine Learning Foundations.

Complete Data Science Program

Every organisation now relies on data before making any important decisions regarding their future. So, it is safe to say that Data is really the king now. So why do you want to get left behind? This LIVE course will introduce the learner to advanced concepts like: Linear Regression, Naive Bayes & KNN, Numpy, Pandas, Matlab & much more. You will also get to work on real-life projects through the course. So wait no more, Become a Data Science Expert now.



Learn Data Science With Python

This data science with Python tutorial will help you learn the basics of Python along with different steps of data science according to the need of 2023 such as data preprocessing, data visualization, statistics, making machine learning models, and much more with the help of detailed and well-explained examples. This tutorial will help both beginners as well as some trained professionals in mastering data science with Python.

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What is Data Science

Data science is an interconnected field that involves the use of statistical and computational methods to extract insightful information and knowledge from data. Python is a popular and versatile programming language, now has become a popular choice among data scientists for its ease of use, extensive libraries, and flexibility. Python provide and efficient and streamlined approach to handing complex data structure and extracts insights....

Introduction

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Data Visualization

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Career Opportunities in Data Science

Data Scientist : The data scientist develops model like econometric and statistical for various problems like projection, classification, clustering, pattern analysis. Data Architect : The Data Scientist performs a important role in the improving of innovative strategies to understand the business’s consumer trends and management as well as ways to solve business problems, for instance, the optimization of product fulfilment and entire profit. Data Analytics : The data scientist supports the construction of the base of futuristic and various planned and continuing data analytics projects. Machine Learning Engineer : They built data funnels and deliver solutions for complex software. Data Engineer : Data engineers process the real-time gathered data or stored data and create and maintain data pipelines that create interconnected ecosystem within an company....

FAQs on Data Science Tutorial

Q.1 What is data science?...