IBM Data Analyst Complete Course | Data Analyst Tutorial For Beginners,
Вставка
- Опубліковано 16 лис 2022
- Build job-ready skills by learning from the best
Get started in the in-demand field of data analytics with a Professional Certificate from IBM. Learn the core principles of data analysis and gain experience with data manipulation using Python and Excel, applying analytical techniques, and working with a variety of data sources.
✅Course Material: mega.nz/file/HBYViQRb#P7X4-tP...
✅An alternative link to access the file: drive.google.com/file/d/1rjbN...
👉Database Engineering By Meta : • Database Engineering C...
👉Applied Data Science By IBM: • Applied Data Science (...
👉Applied Data Science with R By IBM: • Applied Data Science w...
⭐⭐⭐⭐🕑TIME STAMP📋⭐⭐⭐⭐⭐
👉INTRODUCTION TO DATA ANALYTICS
0:00:00 Modern Data Ecosystem and the Role of data analytics
0:21:48 The Data Analyst Role
0:39:39 The Data Ecosystem and Language for Data Professionals
1:08:41 Understandig Data Repositories and Big Data platforms
1:47:03 Gathering Data
2:03:47 Wrangling Data
2:26:55 Analyzing and Mining Data
2:46:33 Communicating Data Analysis Findings
3:11:19 Opportunities and Learning Paths
👉EXCEL BASICS FOR DATA ANALYSIS
3:40:06 Introduction to Spreadsheets for Data Analysis
4:06:37 Getting Started Using Spreadsheets
4:42:03 Basics of Data Quality and Privacy
5:01:55 Cleaning Data
5:30:02 Data Analysis Basics Filtering and Sorting Data
6:05:57 Using Pivot Tables
👉DATA VISUALIZATION AND DASHBOARDS EXCEL AND COGNOS
6:26:48 Creating Charts
6:50:32 Creating Advanced Charts
7:04:27 Creating Dashboards Using Spreadsheets
7:21:39 Creating Dashboards using IBM Cognos Analytics
👉PYTHON FOR DATA SCIENCE, AI & DEVELOPMENT
7:35:08 Types
7:38:11 Expressions and Variables
7:42:06 String Operations
7:46:04 Lists and Tuples
7:54:56 Dictionaries
7:57:21 Sets
8:02:39 Conditions and Branching
8:12:56 Loops
8:19:42 Functions
8:33:14 Exception Handling
8:37:03 Objects and Classes
8:47:56 Reading Writing files with open
8:54:34 Pandas
8:59:43 Numpy in Python
9:18:21 Simple APIs
9:28:41 REST APIs Webscraping and Working with Files
👉PYTHON PROJECT FOR DATA SCIENCE
9:51:59 Optional Intro to Webscraping
👉DATABASES AND SQL FOR DATA SCIENCE WITH PYTHON
10:01:58 Basic SQL
10:20:58 Introduction to Relational Databases and tables
10:43:05 Refining your Results
10:53:59 Functions Multiple Tables and Sub Queries
11:14:43 Accessing Databases Using Python
11:41:55 Assignment Preparing working with real world data sets and build in SQL
11:54:53 View Stored Procedures and Transactions
12:05:41 Join Statements
👉DATA ANALYSIS WITH PYTHON
12:18:16 Import Datasets
12:38:02 Data Wrangling
12:57:26 Exploratory Data Analysis
13:17:06 Model Development
13:44:31 Model Evaluation and Refinement
👉DATA VISUALIZATION WITH PYTHON
14:05:42 Welcome
14:10:13 Introduction to Data Visualization
14:32:21 Basic Visualization tools
14:45:36 Specialized Visualization tools
14:58:24 Advanced Visualization tools
15:03:48 Visualization Geospatial Data
15:13:06 Creating dashboards with plotly and dash
👉IBM DATA ANALYST CAPSTONE PROJECT
15:30:37 Welcome to the Course
15:33:49 How to Present your Findings
♥️♥️Thanks for watching don't forget to like and Subscribe♥️♥️
🧾 For Earning the Certificate, Enroll in this Course here®️: www.coursera.org/professional...
✨✨PLEASE IGNORE THESE TAGS✨✨
data analyst tutorial for beginners,
#dataanalysttutorial,
#dataanalystcourse,
#dataanalytics,
data analytics for beginners,
data analytics tutorial,
data analytics course,
data analytics in excel,
data analytics with excel,
#dataanalyst,
data analyst beginner,
data analyst at google,
data analyst bootcamp for beginners,
data analyst basic,
basics of data analyst,
beginner data analyst,
data analyst course,
data analytics course playlist,
data analytics basic,
data analytics beginning,
complete data analytics - Наука та технологія
🎯 Key Takeaways for quick navigation:
00:08 *🚀 Introduction to Data Analytics*
02:40 *📊 Data Ecosystem and Sources*
07:25 *💡 Importance of Data for Business Decisions*
08:40 *🛠️ Roles in Data Analytics*
13:00 *📊 Types of Data Analysis*
18:48 *🗣️ Perspectives on Data Analytics*
22:00 *🎯 Responsibilities and Skills of Data Analysts*
26:43 *👩💼 Qualities and Skills for Data Analysts*
27:12 *📊 The importance of skills for data analysts*
31:22 *📈 A day in the life of a data analyst*
47:36 *📑 Overview of common data file formats*
52:23 *🌐 Common data sources for data analysts*
53:21 *📊 Data Sources for Analysis*
56:40 *🌐 APIs and Web Scraping for Data Collection*
58:54 *📈 Data Streams for Real-Time Analytics*
01:00:02 *💻 Overview of Data-Related Languages*
01:09:13 *🗄️ Overview of Data Repositories*
01:13:29 *🗃️ Relational Databases: Structure and Advantages*
01:28:42 *🏢 Data warehousing and ETL process*
01:40:48 *🛠️ Big Data analytics technologies*
01:45:49 *📊 Apache Spark for Data Processing*
01:47:17 *📝 Identifying Data for Use Cases*
01:50:01 *🔍 Ensuring Data Quality and Governance*
01:52:41 *📊 Understanding Data Sources*
02:10:58 *🛠️ Popular Data Wrangling Software and Tools*
02:11:12 *📊 Data Wrangling Tools Overview*
02:22:59 *🔍 Data Gathering and Preparation Importance*
02:27:05 *📊 Fundamentals of Statistical Analysis*
02:35:03 *🔍 Understanding Data Mining*
02:36:38 *📊 Data Mining Techniques and Applications*
02:40:31 *🛠️ Commonly Used Software and Tools for Data Mining*
02:46:31 *📈 Effective Communication of Data Analysis Results*
02:51:52 *📢 Role of Storytelling in Data Analysis*
02:54:55 *📊 Principles and Types of Data Visualization*
03:00:33 *🛠️ Data Visualization Software and Tools*
03:08:23 *💼 Data Analysts' Preferred Visualization Tools*
03:17:26 *🚀 Career Journeys of Data Professionals*
03:20:50 *🎯 Employer Expectations for Data Analysts*
03:24:28 *🧮 Skills Required for Data Analysts*
03:26:03 *🎓 Paths to Enter Data Analysis Field*
03:30:06 *🌐 Diverse Career Paths in Data Profession*
03:37:14 *👩💼 Women in Data Science*
03:40:23 *📊 Excel Data Analysis Course Overview*
03:47:51 *📊 Introduction to Spreadsheets and Basic Terminology*
03:54:29 *🖱️ Navigating a Spreadsheet and Understanding Ribbon and Menus*
04:06:50 *🔍 Data Entry, Viewing Features, and Data Editing*
04:09:43 *📊 Excel Data Entry and Editing*
04:12:36 *📋 Moving, Copying, and Filling Data*
04:16:27 *🖌️ Formatting Cells and Data*
04:20:16 *🧮 Introduction to Formulas*
04:27:10 *📊 Common and Advanced Functions*
04:57:16 *📊 Significance of Data Quality*
05:00:11 *🛡️ Importance of Data Privacy in Various Industries*
05:02:16 *🧹 Data Cleaning Techniques*
05:10:54 *🔄 Text Case Transformation and Date Formatting*
05:17:07 *🧹 Data Cleaning Techniques in Excel*
05:20:03 *🛠️ Excel Data Cleaning Tools: Flash Fill and Text to Columns*
05:26:12 *📊 Dealing with Poor Data Quality*
05:30:17 *🧮 Preparing Data for Analysis*
05:35:49 *🔍 Excel Data Filtering and Sorting*
05:39:07 *📊 Data Filtering and Sorting in Excel*
05:43:14 *🧮 Importance of Data Filtering and Sorting*
05:56:14 *📑 Excel Reference Functions: VLOOKUP and HLOOKUP*
06:02:05 *📊 Exploring HLOOKUP function in Excel*
06:06:14 *🔄 Utilizing Pivot Tables for Data Analysis*
06:14:04 *📊 Perspectives on Pivot Tables from Data Professionals*
06:17:27 *🔍 Exploring Advanced Pivot Table Features*
06:24:04 *📊 Excel Pivot Table Timelines*
06:39:16 *📊 Creating Basic Charts in Excel*
06:44:36 *📊 Creating Pivot Charts in Excel*
06:26:44 *📊 Recap: Pivot Table Features*
06:35:25 *🖼️ Importance of Visualizations - Expert Insights*
06:39:16 *📊 Creating Basic Charts in Excel - Line, Pie, Bar*
06:47:03 *📊 Excel Pivot Charts and Filtering*
06:50:43 *📈 Advanced Excel Charts*
06:58:35 *🗺️ Excel Filled Map Charts and Sparklines*
07:04:32 *📊 Introduction to Dashboards*
07:09:53 *📊 Importance of Effective Data Presentation*
07:12:08 *📊 Utilizing Cognos Analytics for Data Visualization*
07:14:12 *📊 Creating Dashboards in Excel*
07:21:35 *📊 Introduction to IBM Cognos Analytics*
07:31:40 *📊 Data Visualization in IBM Cognos Analytics*
07:35:04 *🐍 Python Data Types Overview*
07:38:00 *🧮 Python Expressions and Variables*
07:42:15 *🎻 String Operations in Python*
07:46:10 *📊 Lists and Tuples in Python*
07:54:55 *📚 Python Lists and Dictionaries*
- Ordered collections with elements accessed by indices.
- Elements can be modified, added, or removed.
- Key-value pairs where values are accessed using keys.
07:57:12 *📊 Sets in Python*
- No duplicate elements are allowed.
08:02:33 *🤔 Conditional Statements in Python*
- Allow checking conditions like equality, inequality, greater than, less than, etc.
- Enables running different code based on conditions using if, else, and elif statements.
- Include `not`, `and`, and `or` to modify and combine Boolean values.
- Useful for creating complex conditions and decision-making in code.
08:13:07 *🔄 Loops and Range Function in Python*
- Generates sequences of numbers used in loops.
- Can be customized to specify start, end, and step size.
- For loops iterate over sequences like lists, executing a block of code for each element.
- While loops execute a block of code as long as a condition is true.
08:14:38 *📊 Python Looping Techniques and Functions*
08:23:39 *📝 Advanced Function Concepts and Scopes*
08:39:36 *🔄 Python Objects and Classes Overview*
08:47:45 *📁 File Handling in Python*
08:54:33 *🐼 Introduction to Pandas Library*
08:57:29 *📊 Data Analysis Basics*
09:00:02 *🧮 Numpy Basics*
09:18:18 *🌐 Introduction to APIs*
09:18:50 *📊 Introduction to APIs and REST APIs*
09:23:38 *🎙️ Working with Watson APIs for Audio Transcription and Translation*
09:28:48 *🌐 Understanding HTTP Protocol and URL*
09:32:55 *📡 Working with HTTP Protocol in Python using Requests Library*
09:37:52 *🕸️ Understanding HTML for Web Scraping*
09:41:44 *🌐 Introduction to HTML and Web Scraping*
09:47:51 *📄 Working with Different File Formats*
09:51:58 *🖥️ HTML Review for Web Scraping*
09:57:02 *🕸️ Advanced Web Scraping with BeautifulSoup*
10:02:01 *📊 Importance of SQL in Data Science*
10:03:51 *📊 Introduction to SQL and Relational Databases*
10:12:33 *🎯 Useful Expressions in SELECT Statements*
10:17:38 *🔄 Updating and Deleting Data with UPDATE and DELETE Statements*
10:20:55 *🛢️ Database Concepts: Entity-Relationship Model and Data Types*
10:26:24 *☁️ Cloud Databases*
10:27:36 *🌐 Introduction to Cloud Databases*
10:32:31 *📊 Understanding SQL Statements*
10:35:01 *🔨 Creating Relational Database Tables*
10:47:31 *🔢 Sorting SELECT Statement Result Sets*
10:51:20 *📊 Working with SQL Queries: Eliminating Duplicates and Restricting Results*
10:54:09 *🛠️ Utilizing SQL Functions for Data Analysis*
11:00:18 *📅 Manipulating Date and Time Data in SQL*
11:03:11 *🔄 Mastering Subqueries in SQL*
11:14:47 *🐍 Accessing Databases Using Python*
11:28:22 *🗃️ Creating Tables, Loading Data, and Querying Data*
11:40:37 *📊 Exploratory Data Analysis with Box Plots*
11:48:43 *💼 Querying Data with Python*
11:50:35 *📊 Understanding Database Structure*
11:56:47 *📈 Exploring Data Sets and Libraries in Python*
12:01:55 *📊 Reading Data with Pandas*
12:04:26 *📊 Introduction to Pandas Data Exploration*
12:10:22 *🗃️ Accessing Databases with Python*
12:22:59 *🔄 Data Formatting and Conversion*
12:26:29 *📏 Data Normalization Techniques*
12:26:58 *📊 Normalizing Data:*
12:34:04 *📊 Exploratory Data Analysis (EDA) Basics:*
12:40:08 *🔄 Grouping Data:*
12:43:32 *📈 Correlation Analysis:*
12:49:11 *📊 Chi-Square Test for Independence*
12:53:45 *📈 Model Development Overview*
13:07:01 *🔄 Polynomial Regression and Pipelines*
13:11:29 *📉 Model Evaluation Metrics*
13:12:11 *📊 Understanding Mean Squared Error (MSE)*
13:21:11 *📊 Evaluating Model Generalization with Training and Testing Data*
13:33:24 *📈 Understanding Ridge Regression and Alpha Parameter*
13:42:08 *📊 Overview of Data Visualization with Python*
13:46:45 *📉 Importance of Effective Data Visualization*
13:58:09 *📊 Introduction to Matplotlib and Jupyter Notebook*
14:05:17 *📈 Line Plots: Visualization and Analysis*
14:08:56 *📉 Area Plots: Extending Line Plots*
14:13:45 *📊 Histograms: Analyzing Data Distributions*
14:18:41 *📊 Visualization with Matplotlib: Bar Chart*
14:22:12 *🥧 Visualization with Matplotlib: Pie Chart*
14:26:28 *📦 Visualization with Matplotlib: Box Plot*
14:30:32 *✳️ Visualization with Matplotlib: Scatter Plot*
14:36:26 *☁️ Advanced Visualization: Word Cloud*
14:40:23 *🌐 Advanced Visualization: Folium for Geographic Data*
14:41:31 *🗺️ Introduction to Folium and Map Creation*
14:43:08 *📍 Adding Markers to Maps*
14:45:12 *🌍 Understanding Choropleth Maps*
14:49:30 *📊 Importance of Interactive Data Applications*
14:54:24 *📈 Exploring Plotly Python Library*
14:57:23 *🔍 Analyzing Airline Reporting Data with Plotly*
14:58:13 *🖥️ Understanding Dash Library for Web Applications*
Made with HARPA AI
I must sincerely say I have seen a good person who could put 15hours course for people without charging them. God bless you sir
Amen! Yes indeed God Bless this person!
The channel must have been already monetised by now, so they're making good profits, too.
@@JiMo711 this course is from coursera
@@Phronesis1037 I'm 100% sure channels also get income from Premium subscribers since we're paying for this service. Advertising isn't the only way to monetize.🤷♂️
ad blocker bro@@Phronesis1037
Course#1 "What is Data Analytics" week 2
00:39:45 Overview of the Data Analyst Ecosystem
00:43:28 Types of Data
00:47:30 Understanding Different Types of File Formats
00:52:30 Sources of Data
01:00:25 Languages for Data Professionals
01:08:45 Overview of Data Repositories
01:13:20 RDBMS
01:20:55 NoSQL
01:28:30 Data Marts, Data Lakes, ETL, and Data Pipelines
01:35:15 Foundations of Big Data
01:40:38 Big Data Processing Tools
Good Morning,
Please, can I have a copy of the course support (the diapositives)
I am unable to download it from the links in the description box.
Thanks.
Course#1 "What is Data Analytics" week 5
3:11:22 Career Opportunities in Data Analysis
3:17:24 Get into Data Profession
3:20:42 What do Employers look for in a Data Analyst?
3:25:50 The Many Paths to Data Analysis
3:29:51 Career Options for Data Professionals
3:33:20 Advice for aspiring Data Analysts
3:36:59 Women in Data Professions
Course#1 "What is Data Analytics" week 4
02:22:50 Data preparation and Reliability
02:34:55 What is Data Mining?
02:40:22 Tools for Data Mining
02:46:36 Overview of Communicating and Sharing Data Analysis Findings
02:51:40 Storytelling in Data Analysis
02:54:47 Introduction to Data Visualization
03:00:20 Introduction to Visualization and Dashboarding Software
03:08:03 Visualization Tools3мин
Course#1 "What is Data Analytics" week 3
01:47:05 Identifying Data for Analysis
01:52:35 Data Sources
01:57:20 How to Gather and Import Data
02:03:50 What is Data Wrangling?
02:10:50 Tools for Data Wrangling
02:16:25 Data Cleaning
Can i learn from the material here and just earn the certificate from coursera or do i have to enrol in the course on coursera first and then get a certificate?
Course#1 "What is Data Analytics" week 1
00:00:00 Course Introduction
00:02:45 Modern Data Ecosystem
00:07:30 Key Players in the Data Ecosystem
00:13:10 Defining Data Analysis
00:18:40 Viewpoints: What is Data Analytics?
00:21:50 Responsibilities of a Data Analyst
00:26:30 Qualities and Skills to be a Data Analyst
00:31:27 A Day in the Life of a Data Analyst
00:36:55 Applications of Data Analytics
Thanks this helps a lot
thank you
You are my hero! Thank you so much for the time codes!!!
The first positive comment of the video out of 2.
I hereby pledge to start and finish this course, plz hold me accountable.
Start date: 19 Nov 2022
Completion date: 30 Jan 2023
Update?
Is it helpful?
Update????
Update?!!!
Did it work?
a Deep Deep heartfelt gratitude for putting in all this work and sharing it with us for no compensation. God Truly Truly Bless You!
Thank you so much for this video and the effort put into it. I have to submit my last assessment regarding the OOP topic in the next 2 weeks and this video is a "life-saver"!!!
The course is really great. It is very much helpful for those persons who want to make career in data analyst but are financially weak. Thanks for such a helpful video course.
Love from India. I appreciate the good heart and effort of the person in uploading the video. Keep sharing the knowledge.
Deepest thanks for being a Godsend blessing! Keep up the great work!
This is the full ibm data analytics in coursera 😁
Thanks 👍
Thank you very much for this course! It's hard to find any good course for money, but you made one for free. I can't even imagine how much effort you put into this video.
THANK YOU
This is great. Schooling us for FREE a
coveted branch of IT Industry. I will never forget this generosity. Will definitely financially nurture this and the like projects once on my own feet.
Is this particular course outdated?
I'm 38:08 minutes in and this video has been very helpful so far. I'm gearing up to take Data Management next semester. I feel confident I can master this subject with a little time. Thank you for making the subject plain/understandable.
THIS IS AWESOME.I REALLY APPRECIATE YOU FOR MAKING THIS COURSE FREE OF CHARGE.
Great upload! Thank you very much.
For those who are whining about this video saying that you need to buy the full course to benefit from the certificate, I would say to them: Thank you mister obvious!
These videos are great in preparing anyone to join the training and of course get the paid certificate since the training is based on a monthly fee. This means the more you get acquainted with the course and the exercises, the less time and money it will take you to get the certificate.
And above all, be grateful to anyone who offers these great initiatives.
It is not true actually that you need to pay for the course in order to get the certificate. I did it without paying anything. There is a facility on the course page where you can apply for financing. I applied for financing for the whole set of courses up to certificate level (course completion) and was accepted on all courses. Hence, the certificate was free. Good luck.
@@promoteamutube hey man, does that mean that you apply for financing for each individual course (8 courses)? I apply for financing for the first one and I am still waiting for approval and it doesn’t allow me to submit my answer to the second quiz on the course unless I pay.
@@juanrosa6969 It is true that you can't submit your quiz answers until they reply. It took around 2 weeks for them to reply. You need to apply for each course and I did that all at the same time and got financed for all of them within 2 weeks.
You can audit all of the courses for free
@@daextraxtor681 Can you take the quizzes and submit assignments on audit mode?
I absolutely love this course. Thank you, thank you, and thank you!!!
Thank you so much for this informative starter. Bless you❤
hands down one of my most fav tech learning channel
I have completed the IBM data science and IBM Data Engineering courses on an e-learning learning platform (name withheld)...it didn't come cheap $$$. I must say a massive Thank You to this channel, it's not an easy feat. We appreciate your efforts.
Coursera or edX
Just audit the course for free no?
Did you get a data analyst job?
Thank you so much for the detailed full course. God bless you abundantly. May you never lack in times of need👏🏾👏🏾🙏🏾
Thank you! You too!
Thank you So much. God bless you abundantly. You didn't know how great this help is
God bless your soul, I wish you everything best in this life, thank you
Thank you a lot for this work ❤
I'm so grateful for this. I am going to really apply myself to this.
did you?
Thank you so so much for sharing this training! In just first 15 minutes I had found clear answers to questions I had about modern data science sphere of knowledge.
You mean 15hours?
Am about to start this. Excited.
Thanku soo much very need full video ❤️
Thank you so much for this resource. Very insightful
I'm excited to have learned a whole lot
Thanks by sharing this knowledge with community
Good Accent English used, Generally Ameican accent is bit tough to catch by most of the students all over the globe. Hence this teacher gave in decent accent and maintained medium pace while giving lecture. Thank you very much my lesson for such a great video. Kudoos to you
No American accent is the easiest to catch.
Better than Indian accent.
American English is the easiest dialect to understand. Better than a thick Indian accent.
What a informative video. Thanks for detailed course.
Thank you for sharing this information to the entire world kudoo
Thank you for sharing such a knowledgeable information
Good bless you sir respect by heart 🙏
Thank you so much, it was so valuable
Thanks, I'll watch the full video...
thank you for sharing your knowledge.
Thank you, appreciate!
this course help me most. Thanku you
Thank you for your efforts..
OmGod..i wanna be data analyst. And i started doing basics learning excel, sql ..but now i got this video....🤩🤩i will be learning from this video too from now wards 🥳 Thaankiyuuuuu somuchh ☺️☺️
Hi I have zero knowledge of data analysis. Is this video helpful?? How was your experience till now
He put all of them in one video. Nice!!
Is this the complete version of IBM 40-hour long courses? How he condense the courses into just 15 hours?
Thank you so much! #heartfeltgratitude
Thank you sir !!!
God bless you sir
Excellent!! Thank you.
❤❤❤
please keep the work
thanks for this awesome video!!!
Thank you so much.❤
Thanks for the efforts.
Thank you so much for this course, may God bless you. could you please share the data used so that we can have some data to learn with
thanks bro u r hero 🌹❤️
thank you for the course and can u upload the data files and all the files used in this course
I cant access the course materials u have provided in the description
thanks
I would like to watch a video of everything about "Computer Science" made by you
you are the best thank you so much
God bless you real good
What are the differences between this course and the data engineering by Meta course mentioned above?
unparalleled generosity .
Thanks alot for this package
thank you so much!
Thanks for this
Thanks a lot for this resources.
Hi, thank you for the whole 15h of free DA course. But throughout the course I found it have not much information about bussiness knowlegde, like the course said itself: DA are part of Bussiness Analyst and BI Analyst. Im from the IT industry interested in this course, so most of tools like SQL, excel and Python is very familiar to me. But I cant help find it not easy to learn efficiently because of bussiness term I have to research on sometimes. Is there a way learn enough BI and BA knowledge to keep up with DA.
Most people here want to be DA are already have a bussiness degree, BI or BA knowlegde so they only need code and tools to fit in the job. While I and minority of IT people want to be DA need bussiness knowledge and there arent many good course for our side of perspectives. I hope my question can reach to some programmers like me, get more understanding and can be answered well soon.
que ds te bendiga seas quien seas. gracias por esto!!!
Thankyou very much brother
Thanks for time stamp
masha allaah good explanation
Hats off to this channel!
Can i know if this is all the video teaching materials for this course? I realised it is only a 15-hour long video but on the coursera site, it shows that 1 section is already 10+ hours, appreciate if someone can clear my doubts, thanks!
Complete the video before IBM Sue this channel ❤❤❤🎉🎉🎉
Great content but wow! Never seen so many ads in a single video
This! I appreciate the generosity and certainly wouldn’t mind an ad or two but every 5 min??!!! Nope, I’ll get the info elsewhere.
can you upload full cyber security course for beginner with python used in cyber security
Super ❤❤❤
Man..I'm currently enrolled in the Google Data Analytics course, and I always wondered about the IBM side.. How did this video happen.. I lost my words because the course is such valuable material and it's for free on UA-cam...
Greetings to you, please I would like to know if the course on Google is free.
@@Merely_divine I am about to finish it but it's not free, that being said it is only about $40 a month and you have access to not just the Data Analytics course but to a plethora of material and content. You can also cancel your subscription whenever you want to.
@@MrToco23 so what's your opinion on Google or IBM please reply... which course is best
@@humayrahkhan7100 sorry for some reason I didn't see this comment. Honestly the Data Analytics certificate is pretty basic. I would recommend it to someone that has no background or wants to switch career paths and basically get their "feet wet". A bootcamp program at a university or getting an actual degree is the way to go. I am currently enrolled in a bootcamp program at the University and I can tell you I learned more in the first 2 weeks than the whole google certificate program.
How do I apply for a data analyst job
I really love this
Please sir can I get data engineering course too??
5:57:35 small syntax error . Ive spent some time trying this without results , until i realized that the correct syntax is : =vlookup(b3;a2:b12;2;false) . ITS NOT SIMPLE COMMA . ( at least in my case , i see that in the tutorial it works with comma )
I'm here just to take a glance at the course, but on this matter, I want to inform you, that ; or , is based on a Locale (Regional) settings of the spreadsheet, which affects formatting details such as functions, dates, and currency. As per Google Sheets settings, and I believe, may affect the Excel too. Cheers
Thank a lot
Thank you
Thank you so much
Is there a test or something at the end of this to actually get certified ?
Thanks so much 😢😊
The business speak in this video is second to none. It's like they get paid per word in business speak.
thank you so much
Is this a part of the IBM Data Analyst course on Cousera?
I'm starting this today.
Awesome!
i am foreigner so the subtitle help me a lot to understand cause less video outthere have subtitles.
Good day
Please how can I apply for certificate after the data analyst course for Job application purposes ?
Thank you
Thank you :)
Thank you sir
Thanks so much for thiis
wow so much interesting
thanks my g
Help. There is a problem with course material.
I don't find any of the file in folder.
amazing!
any comments about too much commercials because of thie free knowledge instruction😎?