Data Analysis with Python Part 2 of 6 Python Functions and Working with Files Live Course
Share your inquiries now with community members
Click Here
Sign up Now
Lessons List | 6
Lesson
Comments
Related Courses in Programming
Course Description
How do I start learning Python for Data Analysis?
Check it out on our courses portal and start your data science journey today.
Step 0: Warming up. ...
Step 2: Learn the basics of Python language. ...
Step 3: Learn Regular Expressions in Python. ...
Step 4: Learn Scientific libraries in Python – NumPy, SciPy, Matplotlib and Pandas. ...
Step 5: Effective Data Visualization.
How do I learn data analytics in Python?
How to Learn Python for Data Science the Right Way
Learn just the basics of Python. ...
Numpy and Pandas - An Excellent resource to learn them. ...
Learn to visualize data using Matplotlib. ...
How to use SQL and Python. ...
Learn basic Statistics with Python. ...
Perform Machine Learning using Scikit-Learn. ...
Conclusion.
What is the best way to learn data analysis for a beginner?
No More Excuses: 10 Best Ways to Learn Analytics Online
edX Data Analysis & Statistics Courses. ...
National Tsing Hua University's Business Analytics Using Forecasting via FutureLearn. ...
Codecademy's Learn SQL. ...
Big Data University's Analytics, Big Data, and Data Science Courses.
Is Python good for data analysis?
As we have mentioned, Python works well on every stage of data analysis. It is the Python libraries that were designed for data science that are so helpful. Data mining, data processing, and modeling along with data visualization are the 3 most popular ways of how Python is being used for data analysis
Looking for top Python Developers? They are just a few clicks away.
Services
Features
Case studies
Blog
Contact
Join as a Talent
All
Software
Design
Project Management
Business & Startups
Why Is Python a Great Choice For Data Analysis?
Apr 19, 20215 min read
Dawid Karczewski
Senior full stack developer and CTO at Ideamotive.
According to a forecast from International Data Corporation, the worldwide revenues of Big Data and Business Analytics solutions would reach $260 billion by the end of 2020. This is no wonder, as data analytics helps businesses predict customer needs, personalize their approach to customers, prevent failures and make better business decisions.
Consequently, the popularity of data analytics is constantly growing. If back in 2015 only 17% of companies have been utilizing big data analytics, in 2017 the percentage has grown to 53% and is getting higher each year.
In order to join the top companies that use data and benefit greatly from it, you have to know at least one programming language used for data science.
In this article, we will take a look at one of these most widely-used data science programming languages – Python. Find out whether Python is good for data analysis, how to use Python for data analysis, its pros, and cons, and what alternatives there are for data analytics.
Python_ The Definitive Business Guide
Is Python Good For Data Analysis?
Python was introduced back in 1990 but it began to gain popularity only a couple of years ago. In 2020, Python became the fourth most used language after JavaScript, HTML/CSS, and SQL, with 44,1% of developers using it.
Python is an interpreted, general-purpose, high-level language with an object-oriented approach. The language is used for API development, Artificial Intelligence, web development, Internet of Things, etc.
The part of why Python has become so popular is because it is widely used among data scientists. It is one of the easiest languages to learn and has impressive libraries and works perfectly for every stage of data science.
So the short answer to the question of whether Python is good for data analysis is yes. We will discuss its pros and cons later in the article so stick around to find a more detailed explanation to the question.
How is Python Used For Data Analysis?
As we have mentioned, Python works well on every stage of data analysis. It is the Python libraries that were designed for data science that are so helpful. Data mining, data processing, and modeling along with data visualization are the 3 most popular ways of how Python is being used for data analysis.
Data Mining
A data engineer uses libraries such as Scrapy and BeautifulSoup for data mining Python-based approach. With the help of Scrapy, one can build special programs that can collect structured data from the web. It is also widely used for collecting data from APIs.
BeautifulSoup is used when one can not retrieve data from APIs: it scrapes data and arranges in the preferable format.
Trends
Learning English Speaking
R Programming basics for Data Analytics
Python programming language
MS Excel
Video editing with adobe premiere
Create a website with wordPress for beginners
English greetings and responses
Data Structure in C for Beginners
Automotive Engineering Basics
AutoCAD Mechanical Design
Mobile Apps from Scratch
Convective Heat Transfer Fundamentals
Excel Course Basic to Advanced
AUTOMATA THEORY
Influencer marketing strategies for beginners
Business Law fundamentals
Artificial Intelligence For Beginners
Data Science with Python conditions
CMOS Circuit in VLSI
Control Systems CS
Recent
Creating monthly budget application in excel
Printing student ID cards with excel tools
Building mobile apps with excel sheets
Create a mobile app from an excel
Create drag and drop task scheduler In excel
Creating a project manager in excel
Creating school ID cards in excel
Creating automated excel Forms
ChatGPT tools for excel
Create contact scheduler application in excel
Creating meeting scheduler in excel
Excel for unlimited Labels
Creating Professional emails in excel with AI
Designing Point of sale application in excel
Building a retirement Planner in excel
Create complete employee Payroll In excel
Contact scheduler application in excel
Travel managing application in excel
Create Cafe manager application In excel
Excel for managing file attachments