Google Data Analytics Certificate: Time Commitment + 10-Week Study Plan [Realistic Breakdown]
This blog is reader-supported. When you purchase something through an affiliate link on this site, I may earn some coffee money. Thanks! Learn more.
I put off taking the
So, how long does
First, we should acknowledge that the course is advertised as around 140+ hours for the mandatory modules, but my experience and other students’ experience show that completion time varies.
How long it’s going to take you is determined by:
- Your previous data analytics experience (I had none)
- Your willingness to put the time in
- How comfortable you feel with the tools, and how quickly you pick up the concepts
- Your learning style and preferences – people who take a lot of personal notes are going to probably learn more comprehensively, but it will take longer.
Having said all of that, the most important factor is your motivation: why are you doing this course? If it’s simply to tick a box, you can scan through the materials. If you are doing it because you really want to get an analytics job, you’ll need to truly learn and therefore spend more time on the concepts and assignments.
Not sure if the course is right for you? Read my full Google Data Analytics Certificate review.
Google Data Analytics Certificate: Time estimates from Coursera
The published
The timeframes given by
- Foundations: data, data, everywhere: 12 hours
- Ask questions to make data-driven decisions: 15 hours
- Prepare data for exploration: 19 hours
- Process data from dirty to clean: 20 hours
- Analyze data to answer questions: 26 hours
- Share data through the art of visualization: 18 hours
- Data analysis with R programming: 31 hours
- Capstone project (case study): 11 hours
- Accelerate your job search with AI: 6 hours
Don’t worry – you can complete it much faster. Lots of students report completing it in 2-3 months. If you can spare a couple of evenings a week or a full weekend day, you can get through the material sooner.
Learn analytical skills and how to visualize and present data findings in a compelling way.
Realistic completion time for the Google Data Analytics course
I found that I was much faster with the Foundations module than any of the others because it covers ‘corporate’ stuff that I found easy to pick up. I got through the first module of that in a couple of hours one Saturday afternoon, and that included going through all the ‘general’ course readiness introductory pieces as well.
The data analysis with R module includes learning new tools, so the recommendation is right that it will take longer than any of the others.
10-Week Google Data Analytics study plan
Here’s a
- Week 1: Foundations
- Week 2: Ask questions
- Week 3: Prepare data
- Weeks 4-5: Process data
- Weeks 6-7: Analyze data
- Week 8: Share data with visualization
- Weeks 9-10: R programming
This Coursera data analytics weekly schedule doesn’t include time recommendations for the Capstone or the AI job search courses as these are optional. If you do want to do them, the Capstone could take 2-4 weeks. The AI job search course you can complete in an afternoon.
Each course has a different number of modules.
Foundations has 4 modules. You’ll get through this course the quickest and it gives you a chance to get into the studying habit.
Ask questions has 4 modules, with module 4 being one on stakeholder relationships so that’s a relatively ‘light’ module.
Prepare data has 5 modules. Module 4 and 5 are short, but the database essentials module is time-consuming.
Process data is 6 modules. Module 5 is optional as it’s about adding data to your resume – which may or may not be relevant. You can always come back and do it later. Not completing that module won’t affect your pass mark for the course. The final module is a course wrap up which you can scan through quickly.
Analyze data is 4modules but this is a sizeable course so it’s worth allowing a couple of weeks. If you do it faster, great.
Sharing data is 4 modules, with module 4 being about creating slide presentations. If you are already experienced at using slides and building out stories in presentation format, you will be able to get through this one quite quickly.
R programming is 5 modules. There is a lot of new things in here. While the course builds on what you have learned in other courses, you’ll be programming in RStudio, learning R Markdown, creating visualizations and exporting them.
If you already have R experience or pick up this kind of tool quickly, you might be able to do it faster, but it is not something I have previous experience of.
How to finish the Google Data Analytics Certificate faster
OK, let me share some tips for how to complete the Professional Certificate faster. However, be aware that whizzing through the material does not equal learning!
If you want to recall the concepts and be able to talk about it at an interview, learn at your own pace.
- Watch videos at 1.5x or 1.75x speed.
- Read the transcripts instead of watching the videos at all (skip to the end of the video with the scrub bar to mark it as complete)
- Focus more time on hands-on labs and assignments – this is the really valuable stuff
- Batch small modules into study sprints
- Use the mobile app for flexibility so you can watch videos on the move
- Complete your data journal as you go – it does help.
You’ll also complete it faster if you don’t do the Capstone or the AI job search module. Having said that, you get the certificate whether you do those courses or not, so it won’t make it faster really – it will just feel faster!
Is the Google Data Analytics certificate worth the time?
Even part-time study makes progress. I watch Coursera videos while at the gym (which is not often!!) or while having breakfast. You can fit them in as they aren’t long.
You’ll be learning new skills throughout the course, and you can put those into practice immediately in your job. You don’t have to wait until you complete the whole certificate before you use them or talk to your employer about your career preferences.
Want to start today?
Ready to begin?
Start the Google Data Analytics Certificate on Coursera today and learn at your own pace. No experience required!