Data Analysis with Python - Full Course for Beginners (Numpy, Pandas, Matplotlib, Seaborn)
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- Äas pĆidĂĄn 14. 04. 2020
- Learn Data Analysis with Python in this comprehensive tutorial for beginners, with exercises included!
NOTE: Check description for updated Notebook links.
Data Analysis has been around for a long time, but up until a few years ago, it was practiced using closed, expensive and limited tools like Excel or Tableau. Python, SQL and other open libraries have changed Data Analysis forever.
In this tutorial you'll learn the whole process of Data Analysis: reading data from multiple sources (CSVs, SQL, Excel, etc), processing them using NumPy and Pandas, visualize them using Matplotlib and Seaborn and clean and process it to create reports.
Additionally, we've included a thorough Jupyter Notebook tutorial, and a quick Python reference to refresh your programming skills.
đ» Course created by Santiago Basulto from DataWars
đ Check out all Data Science courses from DataWars: datawars.io/ref=fcc
â ïž Note: Instead of loading the notebooks on notebooks.ai, you should use Google Colab instead. Here are instructions on loading a notebook directly from GitHub into Google Colab: colab.research.google.com/git...
âïž Course Contents âïž
âšïž Part 1: Introduction
What is Data Analysis, why Python?, what other options are there? what's the cycle of a Data Analysis project? What's the difference between Data Analysis and Data Science?
đ Slides for this section: docs.google.com/presentation/...
âšïž Part 2: Real Life Example of a Python/Pandas Data Analysis project (00:11:11)
A demonstration of a real life data analysis project using Python, Pandas, SQL and Seaborn. Don't worry, we'll dig deeper in the following sections
đ Notebooks: github.com/rmotr-curriculum/F...
âšïž Part 3: Jupyter Notebooks Tutorial (00:30:50)
A step by step tutorial to learn how to use Juptyer Notebooks
đ Twitter Cheat Sheet: / 1122176794696847361
đ Notebooks: github.com/rmotr-curriculum/d...
âšïž Part 4: Intro to NumPy (01:04:58)
Learn why NumPy was such an important library for the data-processing world in Python. Learn about low level details of computations and memory storage, and why tools like Excel will always be limited when processing large volumes of data.
đ Notebooks: github.com/rmotr-curriculum/f...
âšïž Part 5: Intro to Pandas (01:57:08)
Pandas is arguably the most important library for Data Processing in the Python world. Learn how it works and how its main data structure, the Data Frame, compares to other tools like spreadsheets or DFs used for Big Data
đ Notebooks: github.com/rmotr-curriculum/f...
âšïž Part 6: Data Cleaning (02:47:18)
Learn the different types of issues that we'll face with our data: null values, invalid values, statistical outliers, etc, and how to clean them.
đ Notebooks: github.com/rmotr-curriculum/d...
âšïž Part 7: Reading Data from other sources (03:25:15)
đ Notebooks: github.com/rmotr-curriculum/R...
âšïž Part 8: Python Recap (03:55:19)
If your Python or coding skills are rusty, check out this section for a quick recap of Python main features and control flow structures.
đ Notebooks: github.com/rmotr-curriculum/d...
--
Learn to code for free and get a developer job: www.freecodecamp.org
Read hundreds of articles on programming: freecodecamp.org/news
â ïž Note: Instead of loading the notebooks on notebooks.ai, you should use Google Colab instead. Here are instructions on loading a notebook directly from GitHub into Google Colab: colab.research.google.com/github/googlecolab/colabtools/blob/master/notebooks/colab-github-demo.ipynb#scrollTo=K-NVg7RjyeTk
The code links in the description have been updated to the content stored on GitHub.
you cant load the root folder into google collab. Therefore you need to load the exercises directly to the collab but that leads to an error if you want to try to load data e.g. sales_data.csv (' cannot open 'data/sales_data.csv' for reading: No such file or directory')
@@mellowbeatz93 check the path of the uploaded file . usually it is in a content folder .
please add persian subtitleđđđđđđđ
Yea, there's an error, does anyone have any advice on loading the exercise files ?
@@mellowbeatz93 if you navigate to your files directory, in colab, there is an option to copy the full file path name and from there you copy that, and paste it into your code like this (I saved mine with capital letters.)
sales = pd.read_csv(
'/SALES_DATA.CSV',
parse_dates=['Date'])
*My takeaways:*
*1. Table of Content* 1:45
*2. Introduction **2:52*
2.1 What is data analysis 2:52
2.2 Data analysis tools 4:38
2.3 Data analysis process 7:31
2.4 Data Analysis vs Data Science 8:56
2.5 Python and PyData Ecosystem 9:28
2.6 Python data analysis vs Excel 9:46
*3. Real example data analysis with Python: getting a sense of what you can learn from this course **11:00*
*4. How to use Jupyter Notebooks **30:50*
*5. Intro to NumPy **1:04:58*
5.1 Low-level basis: binary numbers, memory footprint 1:09:32
5.2 Python is not memory efficient to store numbers since it wraps everything into objects. Whereas in NumPy, we can select the number of bits to represent numbers 1:22:50
5.3 NumPy can compute arrays faster than Python 1:24:58
5.4 NumPy tutorial: NumPy arrays, matrices 1:29:47
5.5 Memory footprint and performance: Python vs NumPy 1:53:14
*6. Intro to Pandas: getting, processing and visualizing data **1:56:58*
6.1 Pandas data structure: Series 1:58:41
6.2 We can change the index of Pandas series and this is fundamentally different from NumPy arrays 2:02:55
6.3 The upper limit of slicing in Pandas series is included, whereas, in NumPy, the limit is excluded 2:07:55
6.4 Pandas data structure: DataFrames 2:14:36
6.5 Most operations in Pandas are immutable 2:29:10
6.7 Reading external data 2:36:47
6.8 Pandas plotting 2:44:41
*7. Data cleaning **2:47:18*
7.1 Handling miss data 2:51:40
7.2 Cleaning invalidate values 3:03:17
7.3 Handling duplicated data 3:06:09
7.4 Handling text data 3:11:05
7.5 Data visualization 3:13:41
7.6 Matplotlib global API 3:14:25
7.7 Matplotlib OOP API 3:18:27
*8. Working with data from(/to) SQL, CSV, txt, API etc. **3:25:15*
8.1 Python methods for working with files 3:26:37
8.2 Python methods for working with CSV files 3:29:33
8.3 Pandas methods for working with CSV files 3:30:05
8.4 Python methods for working with SQL 3:36:17
8.5 Pandas methods for working with SQL 3:38:58
8.6 Pandas methods for working with HTML 3:43:09
8.7 Pandas methods for working with Excel files 3:49:56
*9. Python recap **3:55:18*
Lei Xun Thanks for sharing
Many thx!
goat đ
Thank u â€ïž
Thanks nan
Part 1: Introduction
Part 2: Real Life Example of a Python/Pandas Data Analysis project 00:11:11
Part 3: Jupyter Notebooks Tutorial (00:30:50)
Part 4: Intro to NumPy (01:04:58), (01:30:00)
Part 5: Intro to Pandas (01:57:08)
Part 6: Data Cleaning (02:47:18)
Part 7: Reading Data from other sources (03:25:15)
Part 8: Python Recap (03:55:19)
Thanks
Is that enough to study in data analysis?
@@SarveshGupta-bu5ho i think need more research
@@SarveshGupta-bu5ho u wish XD, this is just the start
@@SarveshGupta-bu5ho but If u have a good grasp of these libraries, it will be very beneficial in model creation for machine learning and deep learning
This course is awesome ! The explanations are very clear and the teaching way is very fine. Thank you so much for all the hard work you put in making this !
As a data analyst in Maersk, I really appreciate this course in balancing between the technical foundations and actual executions! Most people only get to learn the codes without understanding the concepts, which are what separate workers from engineers!
Hi it seems like you were able to successfully complete the course did u have any troubles in accessing the sales file?
how much do you earn asa data analyst
With a name like that, how come you are not yet sanctioned by Biden?
I am 25 and I come from a strong pure and applied mathematical background, but I am a total newbie in programmation. I please have some questions:
1/ Are SQL, Python and R enough to get a permanent position as a Data Analyst / Data Scientist?
2/ How much time do I need to be able to manage and organize databases, and use them to produce statistical analysis and graphs?
3/ If I am hired, can the employer change his / her mind and ask me to code in other languages that were not written in my curriculum, such as C++ or Java?
â@@vegetossgss1114 I could anwer your questions: I`m working in a data science team. In an entring possition you are generally hired as data analyst in the first place, even thought some business don`t make such diferences between data analyst and data scientists.
1- SQL knowledge is a must. You should be fine opting between R and Python. If you are starting and don`t know neither of them, I would reccomend Python, since itÂŽs the most popular.
2- In most companies they already have data bases and you need to know how to write SQL queries to access the data and, after that, cleaning it with Python or R. If you are just trying things out, you only need data tables from websites such as kaggle. CSV or excel files.
3- It obviously deppends on the company, but that would be odd, since data analys/scientists are not meant to be "professional programmers".
If you have a strong mathematical background I think it will be quite easy for you to understand machine learinig algorithms in the future, which is something most people struggle with.
i dont know how many comments down here are real, but i think this tutorial was wayyy to direct for a beginner... Numpy and Pandas are explained very well no doubts on that...the data cleaning part was very direct, no beginner will get a bit of it, reading external files section was Ok, Matplotlib was explained like everyone knows about the attributes since birth.
I am working as a data scientist from the past 4 years, i would not recommend this to anyone who is a beginner, except for the Intro , numpy , pandas and reading data from external sources section...
Completely agreed.
Sir can you please recommend me some tutorials as I am completely beginner and don't know anything about python.
But I have to learn atleast basics within this month. It's urgent. Please recommend me some videos.
I disagree, I'm a beginner and this is very straight forward. A beginner in programmatic data analysis should know what he's going to get into and this lecturer definitely has a great breakdown of that
2:08:09 The difference where the upper limit is included only seems to apply if you've defined your own index. It seems to work the same if you use the default numeric index.
Youâre absolutely brilliant and generous for giving out this much information for all of us to learn, thank you!
1. Table of Content 1:45
2. Introduction 2:52
2.1 What is data analysis 2:52
2.2 Data analysis tools 4:38
2.3 Data analysis process 7:31
2.4 Data Analysis vs Data Science 8:56
2.5 Python and PyData Ecosystem 9:28
2.6 Python data analysis vs Excel 9:46
3. Real example data analysis with Python: getting a sense of what you can learn from this course 11:00
4. How to use Jupyter Notebooks 30:50
5. Intro to NumPy 1:04:58
5.1 Low-level basis: binary numbers, memory footprint 1:09:32
5.2 Python is not memory efficient to store numbers since it wraps everything into objects. Whereas in NumPy, we can select the number of bits to represent numbers 1:22:50
5.3 NumPy can compute arrays faster than Python 1:24:58
5.4 NumPy tutorial: NumPy arrays, matrices 1:29:47
5.5 Memory footprint and performance: Python vs NumPy 1:53:14
6. Intro to Pandas: getting, processing and visualizing data 1:56:58
6.1 Pandas data structure: Series 1:58:41
6.2 We can change the index of Pandas series and this is fundamentally different from NumPy arrays 2:02:55
6.3 The upper limit of slicing in Pandas series is included, whereas, in NumPy, the limit is excluded 2:07:55
6.4 Pandas data structure: DataFrames 2:14:36
6.5 Most operations in Pandas are immutable 2:29:10
6.7 Reading external data 2:36:47
6.8 Pandas plotting 2:44:41
7. Data cleaning 2:47:18
7.1 Handling miss data 2:51:40
7.2 Cleaning invalidate values 3:03:17
7.3 Handling duplicated data 3:06:09
7.4 Handling text data 3:11:05
7.5 Data visualization 3:13:41
7.6 Matplotlib global API 3:14:25
7.7 Matplotlib OOP API 3:18:27
8. Working with data from(/to) SQL, CSV, txt, API etc. 3:25:15
8.1 Python methods for working with files 3:26:37
8.2 Python methods for working with CSV files 3:29:33
8.3 Pandas methods for working with CSV files 3:30:05
8.4 Python methods for working with SQL 3:36:17
8.5 Pandas methods for working with SQL 3:38:58
8.6 Pandas methods for working with HTML 3:43:09
8.7 Pandas methods for working with Excel files 3:49:56
9. Python recap 3:55:18
This is the best channel ever.
No one does so clear, long and ad free videos....
My compliments đđđ€đđ€
Freecodecamp all the way!
all coding no play makes Jack a dull boy
@@colinhuang2325 wow, this is a good oneđđ
Excellent
Is that enough to study in data analysis?
This is far better than many high-priced tutorial courses on the most popular MOOC platforms. I will forever keep this for future reference â€â€
hi sorry please what's MOOCđą
I never could imagine to find such an invaluable complete course for FREE in CZcams. I can not find words to appreciate.
Oh, thank you so much brothers, I have been waiting for a course like this from you guys, your channel has been so much helpful for me to improve my coding skills. You guys deserve to receive an award for this incredible service. Thanks again brothers, keep it up. đ
Is that enough to study in data analysis?
I swear this is the best channel in youtube ever.
what if you don't like coding you would not think like this
@@Tyong-sk7vt then you better learn to understand the logic at least or dont venture into this field.
iskandar zulkarnain lmao itâs filled with info
var Iskandar comment = "you swear wrong"
P.S:- I created variable unethically
@@Tyong-sk7vt he speaks as a coders
Been looking forward to this course since the beginning of the year. It could not have come at a better time. Thank you very much!
Steven Negishi exaclty
I have been watching your course for 2 weeks and I can say this is the best guide I have ever seen. Thank you guys
Thank you!
How you are doing the practicals? Can you help me out?
Coming from Excel to Python i found this really helped. Thank you for helping me get my bearings.
I am new to python. but I enjoyed this. If you are a newbie, dont focus on learning the syntax in this video. the best way to learn programming is to learn the functions first and then set aside sometime to work on your syntax skills. syntax overwhelms in the beginning. thank you for this. also loved your voice :)
There's a special place in heaven for you guys.
After the python course, I had to try different videos like numpy, pandas etc. This is way better!
i have reached the part where they r showing what we can do after this tutorial.. please help me out and let me know if i should practise more than the basic SQL before i continue this???
1:45:43 Notably you _can_ multiply arrays of different dimensions so long as the array with more dimensions is made up of arrays of the same shape as the smaller array.
Just seen the first few minutes and I seem to loke it. You have one of the most easy, quick and to the point explanations. Subscribed and willing to complete the video...
I just finished it and the content is just awesome. It gets easy the way trainer explains things here. Thanks a ton for this lovely content.
Accha course tar prerequisites ki ki? Ami c java valo kore jani.. python er ekdom basic gulo jani.. mane oi if else loop eisob gulo just. Python a Kono coding experience nei. Ei video ta start kora jbe?
@@sheldoncooper3373 ekdom start kora jabe. Ami jokhon start korechilam ami o python r basic e jantam. Chotpot start kore dao. Khub valo kore e bujhiyeche. Best of luck.
@@sagnikmukherjee5108 thank you dadađđ
hello, does this course have matplotlib, seaborn and all?
Amazing video, really really good, thank you Santiago for offering such a great free class online.
Very thorough video, does a great job of explaining intricate concepts in a simple way.
Cant imagine learning so good anywhere else :)
Thank you for all of this. Went through the whole video and was very valuable.
Impressive and helpful tutorial. Thanks for this amazing teaching.
All in all, thanks for providing a free course for us :)
Just started the course, Jupyter went great, I decided to use Jupyter lab instead of Jupyter Notebooks.
Went through Numpy lecture, seemed good.
Now I'm at Numpy Excercises, where I had trouble loading the notebook and I ran into a couple of errors in the Numpy Excercise problems.
If i run into more, i'll try to post them here for other people by editing the comment. Can't promise anything though.
Possible error list:
Numpy Excercises - Logical operations:
Given the X numpy array, return True if any of its elements is zero (prosing a change to non zero here) because np.any() is a test for true (non zero) elements, and therefore the wrong answer.
A tremendous effort to go through data science topics. Extremely beneficial. Highly recommended and appriciation
This video was an unmitigated GODSEND! Thanks ever so much for posting it, Santiago! Since this has helped thousands of future DS folks out there (some of whom are struggling with a few of of these subjects like me), 1000000 karma points have been credited to your account :-)
It's great to see so many thankfulness from every corner. It would be even better to see some gratitude transformed into donations. Some day this videos/courses will be over otherwise, no one survives only from free gratitude :)
Dear Santiago! Great thanks releasing the valuable video! You have rescued me from confusion in data science
Greetings from Montenegro
I'm so happy that I haven't stopped to continue learning English and there're lots of opportunities opened for me. Thanks for this course It's really useful!
I'm currently looking for a new job as a Product Analyst in Russia (recenty relocated from there) and maybe I've to try to find a job in Western/Eastern companies as well. Idk if my Enlish level'll be enough but I'll see
Best wishes, Anton!
Yesss !!! Iâve been waiting for this for a long time !!
Is that enough to study in data analysis?
No
Check IIIT Syllabus
Just when I wanted it. Good timing.
Thank you Santiago Basulto ! The beginner course training was excellent. It was a delicious appetiser. Now I am waiting in anticipation for the main dish :)
Great contents. The speaker knows exactly what he's talking about and has great deal of detail knowledge about python and various libraries. Thank you for sharing.
I'm just wondering if sharing the fundamentals and ground level details (numpy memory) could have been a separate course all together and this one could have just focused on data analysis, may be....
This tutorial is perfect. Thank you very much for making it!
Freecodecamp coming through for us like nobody's business wow i stanâ€ïž
This is so great and I have not seen a session like this before and its so well explained. Great job !!
HI Bro.. to get a complete understanding of this.. do we need to have had learn Python course ( Coding) as a pre requisite..kindly advise..
I liked it even from the beginning , you are doing a great effort to explain every detail. thank you
found i was looking for. thank you so much.
I have completed whole tutorial I leant so much from this.. thanks free code camp and tutor..đâș
Happy it helped :)
Very well structured and delivered, Thank you.
Awesome course... detailed explanation, easy to get the concept quickly. Thanks
please help. where can i find the dataset " btc-market-price"?
Wow excellent explanation and easy to understand. I love the presentation . Thank you đ
Exactly what I was looking for, thank you!
Thanks for the introduction part..kindly implement project also from start to end...
"Welcome to our Data Analasis with Python Tutorial. My name is Santiago and I will be your instructor."
760.000 people: "Ok, here we go"
I'm new to data analysis and this video shows up. Appericiate it :)
Great tutorial. Very grateful to have found this!
1:53:00 When you refer to dot product here, it is effectively a matrix multiplication by looking at its result! :)
I started the course on July 15th and I will add a comment when I finish it
edit: I finished the course on August 2nd Considering that I know Python and spent seven days of time learning fast typing
is this video suitable for people who have no programming experience at all but want to look into using python for data analysis?
@@Invin_cibles programming skill isn't required. but basic python should be known
@@kartikhegde533 Thanks, I'm struggling to find the notebooks.ai demo or the interactive tutorial he's using, dont quite get the comment about google colab
@@Invin_cibles if you are using VS Code they have notebook option. In command palette type 'create new notebook' experiment for a couple of days. And watch a separate tutorial . There are plenty available
@@Invin_cibles You will need to learn the basics of python and the basics of statics for data analysis, and that will not take as many days as you think. It may take a couple of weeks. Just start, you'll get there at the end.
Thank you so much for this beginner friendly course. I have had a good start!đ
1:42:36 kindly note that the method np.arange is "arange" instead of "arrange", there is single 'r' instead
Searching for data analysis course on the web... Bingo got the notification.. No search required đ
Agar kisi chez ko dil se Chaho to puri kayanat tumhe usse Mila deti haiđ
@@creativebeing1108 yaah truly well said... I believe
what about a "freeMathCamp" or "freeLogicCamp" section?
Sooner or later you will have to use math and logic in programming.
Check out their "Mathematics" playlist.
Invaluable resources on this channel! thank you so much!
i dont know a dang thing about programing ,just a little command prompt and thats it.. yet i actually understood what he was talking about. damn good teaching skills and communication skills .thank you.
where can i find the file csv thx
A word of advice for the guy teaching, please type the commands/codes yourself while explaining each line of code. You are just skimming what was already written and barely giving any time before scrolling down. Writing the code (prepare then read it from another screen or script) and explaining it will have a massive difference for your audience/students to understand. Teachers like blackboards over slideshows/pre-written materials to teach, because it helps the pace to train on it, is almost equal to the pace students understand.
Sure, the video gets a bit longer or maybe a lot but nothing beats understanding it better than a quick video where it's harder to understand.
Well said
Excellent course! Thank you very much!!
I was looking for some tutorial some tells me both basics and helps me start with analysis. Thank you so much for this video. Its very helpful
Is that enough to study in data analysis?
SHOUTOUT TO EVERYONE LEARNING HOW TO CODE ON THIS CORONA TIMES
Is that enough to study in data analysis?
if you want to go more in depth
Thanks for this tutorial. Can anyone tell me where can I find these csv files ?
You know how to teach. Very rare skill. Thanks for sharing this.
I have been falling love in with this channel for one year â€ïž
Great course! The repo for part 7 doesn't exist, fyi
I've updated it, should be working now!
The flow in this needs some work in my opinion. I've been using Pandas/Matplotlib for like a year and I still had a hard time following this. It's normal to hit high-level discussion before diving into specifics, but the way it's done here is not the best example on this channel. Doesn't help that the guy's pace of speech is not great. Slows down at all the wrong parts and rattles off important info.
I agree, he seems to start skimming more and more as you get deeper into the video which was disappointing..
Really appreciate this material. Helped me a lot with my dissertation.
Thanks for your work man, i love it, really apreciate , i learned a lot!! đ
I heard that we should focus on excel, sql skills for Data Analysis. People are now learning Python because it is getting popular.
So confused
@ifabulocitygirl that makes sense. Thanks.
Can you reply me because I have some confusion I want to clear it please help me
Excel is a good tool however it cannot deal with large data. Image doing all the analysis with even 5000 rows having to draw graph after graph onto different sheet. Excel gets very sluggish. With Python and their libraries with constant updates and support from the community, your good to go with even 1 million rows. Also like he said in the video, it gets cluster and tiring looking at the spreadsheets constantly, I find it quite distracting to do my analysis. SQL is good. I got no comments on that :)
NO algo expert,NOOO..i dont want to be a software developer at google.
why not, Google is a big company
@@huseyinsusever5159 iyk yk
thank you very much for sharing your knowledge, I found this tutorial very useful!
This is a fantastic introduction to Python!
54:37 is when he starts to actually teach. Just saying.
Well, I was _teaching_ how to use Jupyter Notebooks before, some people might not know how they work.
You shouldnt discourage my brothet
2:18 Please change the video description and use the index below
00:00:00 Introduction
00:11:11 Real Life Example of a Python/Pandas Data Analysis project
00:30:50 Jupyter Notebooks Tutorial
01:04:58 Intro to NumPy
01:57:08 Intro to Pandas
02:47:18 Data Cleaning
03:25:15 Reading Data from other sources
03:55:19 Python Recap
So we can jump out the section by using video process bar.
LEGEND
1:52:26 Taught a very complex topic in the easiest way.
Excellent lesson, I learnt so much from this video. Thanks for sharing. I will check out more videos from you.
If this is intended for people with no knowledge of Python, it's hard to follow. I don't get how to write commands or what the basic principles are, so it seems to me by 'beginners' you meant people who know some python and want to dive into data analysis using it.
A beginner's course to Python is meant for people who are new to Python. Once you want to use Python for a specific goal, there is no reason to repeat the basics of Python since you can learn that in their Python course.
Vraiment
I just want to marry you guys~ love the course!!
coz of course marry
This is insane effort. Thank you, thank you !!!!
The best tutorial ever! Excellent!
Quite disappointed by the teaching structure. Nothing hands on, just endless narrations, code executions and assumptions. It is far from beginner friendly and seems rushed all the time. Not sure if the comments are legitimate because, I can't be the only one struggling to process and grasp the plenty methods and arguments while the course progresses. Started off well, but completely sunk from Numpys down.
I almost got discouraged by your comment but I decided to follow the video comprehensively
The best way I think to understand the tutorial is by practicing the codes available via the links in the description and trying the exercises after every lesson. Although, you might end up spending more than 4 hours on the video but i believe it's a good sacrifice for knowledge.
That aside, I agree with you that the tutorial is not 100% beginner friendly. You must have some basic knowledge of Python before even thinking about using Python for Data Analysis. If you don't, it's better to watch a tutorial on general Python programming for beginners before this.
It's for beginners in data analysis, not python or programming in general
@@abioyeorimadegun7851 do you recommended it?
â@@andredias5061the title says "DATA ANALYSIS WITH *PYTHON*", it's a clickbait and totally confusing( I'm a total noob in coding or analytics)
@@prashansingh8861with python meaning you are supposed to to know python already. Come on guys
This course isn't good. The instructor moves like a bullet train between topics. Fonts are too small for Mac book Air. The section on data cleaning is very confusing. I had to pause this video and follow other videos on data cleaning. The flow of topics is also very jarring.
Why isn't data cleaning the second topic after 'Introduction'? I tried my best but gave up after 3 hours or so.
Please get Closed CCaptions for all your videos. I understand your instructions but sometimes want to speed things up and not miss something. Thanks. Great job
Very very useful!! Thank you so much for uploading this!
You know, you have to tell us about import requests. This isn't something python beginners automatically know exists. This is a big problem with all these "learn code" courses. You're not walking us through line by line and describing what the code does or when, why, how we should use it. It's great to see what python "can" do, but we need to know when to do what with it.
These courses are the equivalent of telling us that numbers exist, giving us 0-9, showing that numbers can be added and such, and then expecting us to go out into the real world and apply them to geometry without ever providing the intermediary steps.
Title of video: Data Analysis with Python.
Spends no time coding, just reading websites. đ
Actually data analysis involve less coding more depends on analytical part
This is great! Thank you for this.
This is a wonderful resource! Thank you!
Data analysis is the process of exploring and analyzing large datasets to make predictions and boost data-driven decision-making. Data analytics allows us to collect, clean, and transform data to derive meaningful insights. It helps to answer questions, test hypotheses, or disprove theories.
Data analytics is used in most sectors of businesses. Here are some primary areas where data analytics does its magic:
Data analytics is used in the banking and e-commerce industries to detect fraudulent transactions.
The healthcare sector uses data analytics to improve patient health by detecting diseases before they happen. It is commonly used for cancer detection.
Data analytics finds its usage in inventory management to keep track of different items.
Logistics companies use data analytics to ensure faster delivery of products by optimizing vehicle routes.
Marketing professionals use analytics to reach out to the right customers and perform targeted marketing to increase ROI.
Data analytics can be used for city planning, to build smart cities.
Types of Data Analytics
Descriptive Analytics
Predictive Analytics
Muchas gracias Santiago !!
Fantastic tutorial.
Great work, thank you so much!!
fantastic tutorial, thanks a lot!
Excellent course, you can download the material and practice and check your knowledge. Thank Freecode and Santiago!
the best channel,the best video,on this topic ,,really a damn costly course,getting for free,really lucky!!
long live free code camp!!!
Thank you, the tutorial is really helpfull :)
By far the best tutorial on data analysis. Have same on machine learning?