MW
Mar 31, 2021
I just finished the 2nd Course in the Google Data Analyst course - even though I have experience in the field, this course reminded of areas that I should focus on and work to strengthen my skills in.
AS
Aug 20, 2021
i love the course as it helped me understand the importance of asking the right questions, understanding the problem and expectations of stakeholders and impotance and the right way of communicatilon.
By Xu M
•May 6, 2021
you told me I can do speed track, I did and I passed all test, I was supposed to get my certificate, why it shows that it is in progress ?????? Is this a JOKE ?
By Daniel O
•Sep 20, 2021
If I'm honest not very useful/new stuff here. All seems a bit basic, a bit too basic for a course like this. All information can be found online for free
By Camilo A R
•Mar 28, 2022
The content of the course was not as interesting as the first one. The approach was too theoretical and vague.
By Ganesh R
•Jan 1, 2022
There is no option to mark the course complete when I finish auditing it.
By RAVREET S
•May 18, 2022
not much to learn practicallly like sql tableau only theory based course
By Akash K S
•Dec 24, 2021
I have completed the course, yet I have not been issued a certificate
By Sonmankar s s
•Oct 10, 2021
This is not worthy. Too basic which will not help to attend interview
By Orlando G
•Apr 30, 2022
Unless your common sense is quite bad, I would not recommend this.
By Ankush K
•Mar 27, 2022
Worst instructor and totally boring and time wasting course.
By V M
•May 11, 2021
Too conceptual.
I expected something more practical/hands-on.
By Asmaa A
•Sep 24, 2021
Extremly basic. Good advice to go for the speed track
By Jakub Č
•Jan 26, 2023
Memorizing useless definitions, no new skills learnt
By Saeed A G
•Feb 28, 2022
a lot of speeking with little real important staff
By Dinar S
•Nov 23, 2021
бестолковый курс с очевидными вещами
By Raian R
•Jan 26, 2022
The Spreadsheet part was very basic
By chee s t
•Oct 2, 2021
The contents are below average.
By Moritz B
•Jun 15, 2021
Only Basics and way to lengthy.
By Chiara G
•Feb 23, 2022
Too easy and superficial
By SUBHASISH P
•Jul 2, 2021
Too basic and repetitive
By Brandon N
•Sep 23, 2021
Very common sense stuff
By Rahul P
•May 27, 2023
I recently completed the "Ask Questions to Make Data-Driven Decisions" course on Coursera, and I would like to provide feedback on my experience. Overall, I found the course to be highly informative and practical, offering valuable insights into the world of data-driven decision-making. Here are my thoughts:
1. Comprehensive and Well-Structured Content: The course content was well-organized and covered a wide range of important topics. Starting from the basics of data-driven decision-making, it gradually progressed to more advanced concepts, allowing me to build a strong foundation. The course covered essential aspects such as framing questions, data collection, analysis techniques, and interpretation of results, providing a holistic understanding of the subject.
2. Engaging and Clear Instruction: The instructors did an excellent job of presenting the material in a clear and engaging manner. Their explanations were concise, and they used real-life examples and case studies to illustrate key concepts. This approach helped me connect theory with practical applications, making it easier to grasp and retain the information.
3. Practical Assignments and Quizzes: The course included a variety of assignments and quizzes that reinforced the learning material. These hands-on exercises challenged me to apply the concepts I learned, enabling me to develop practical skills. The feedback provided on my assignments was valuable in guiding my progress and enhancing my understanding of the subject.
4. Emphasis on Critical Thinking: One aspect I particularly appreciated about the course was its emphasis on critical thinking. It taught me how to ask the right questions, identify potential biases, and interpret data objectively. This critical thinking approach has been invaluable in improving my decision-making process, both personally and professionally.
5. Relevance and Applicability: The course content was highly relevant and applicable to real-world scenarios. The practical examples and case studies covered a wide range of industries and contexts, making it easier for learners from diverse backgrounds to relate to the material. I now feel confident in applying the concepts and techniques learned in the course to my own work and decision-making processes.
6. Supportive Learning Environment: The course fostered a supportive learning environment through interactive discussion forums and peer collaboration. The instructors and teaching assistants were responsive to questions and provided helpful guidance whenever needed. Additionally, the community of learners allowed for meaningful discussions and knowledge sharing, enhancing the overall learning experience.
7. Continuous Improvement Opportunities: While the course was highly beneficial, there are a few areas that could be improved. Providing more real-time data analysis examples or interactive exercises could further enhance the learning experience. Additionally, incorporating more advanced data visualization techniques and tools would be valuable for learners seeking to develop their data analysis skills further.
In conclusion, the "Ask Questions to Make Data-Driven Decisions" course on Coursera was an excellent learning experience. The comprehensive content, engaging instruction, practical assignments, and emphasis on critical thinking made it a worthwhile investment of time. I feel equipped with the necessary skills to ask the right questions, analyze data effectively, and make informed decisions. I highly recommend this course to anyone looking to enhance their data-driven decision-making capabilities.
By Saif U R
•Dec 27, 2023
ChatGPT Data analytics is the process of examining and interpreting data to uncover meaningful patterns, insights, and trends. It involves the use of various techniques and tools to extract valuable information from raw data, with the ultimate goal of making informed decisions and predictions. Data analytics is a multidisciplinary field that incorporates elements of statistics, mathematics, computer science, and domain-specific knowledge. There are three main types of data analytics: Descriptive Analytics: Descriptive analytics involves summarizing and interpreting historical data to provide a snapshot of what has happened in the past. This type of analysis helps in understanding trends, patterns, and key performance indicators (KPIs). Visualization tools like charts and graphs are commonly used to present descriptive analytics results. Predictive Analytics: Predictive analytics uses statistical algorithms and machine learning techniques to identify the likelihood of future outcomes based on historical data. It involves building models that can make predictions or forecasts, enabling organizations to anticipate trends and make proactive decisions. Prescriptive Analytics: Prescriptive analytics goes beyond predicting future outcomes; it recommends actions to optimize results. This type of analytics suggests the best course of action to achieve a desired outcome, considering various constraints and objectives. Data analytics is widely applied across industries for purposes such as business intelligence, market research, fraud detection, risk management, healthcare optimization, and more. The increasing volume and complexity of data have led to the development of advanced analytics methods, including big data analytics, machine learning, and artificial intelligence, to extract deeper insights and drive more accurate predictions.
By Akbar V P
•Feb 6, 2024
Kursus "Ask Questions to Make Decisions Based on Data" memberikan pengalaman pembelajaran yang sangat memuaskan. Materi kursus dirancang dengan baik, memungkinkan peserta untuk memahami konsep-konsep penting dalam pengambilan keputusan berbasis data secara sistematis. Metode pembelajaran interaktif, seperti studi kasus dan latihan praktis, membantu dalam memperkuat pemahaman konsep yang diajarkan. Instruktur juga memberikan klarifikasi yang tepat saat peserta memiliki pertanyaan atau kebingungan. Salah satu hal yang membuat kursus ini sangat bermanfaat adalah fokusnya pada pengembangan keterampilan bertanya yang efektif. Kemampuan untuk mengajukan pertanyaan yang tepat merupakan kunci dalam mengurai dan menganalisis data dengan baik. Dengan memperoleh keterampilan ini, peserta menjadi lebih mampu mengambil keputusan yang didukung oleh data secara lebih akurat dan efisien. Selain itu, kursus ini memberikan wawasan yang berharga tentang bagaimana memahami kebutuhan audiens dan pemangku kepentingan, yang merupakan aspek penting dalam komunikasi hasil analisis data. Dengan memperhatikan kebutuhan dan ekspektasi pemangku kepentingan, peserta dapat mengarahkan analisis data mereka untuk memberikan nilai tambah yang maksimal bagi organisasi. Secara keseluruhan, kursus "Ask Questions to Make Decisions Based on Data" sangat direkomendasikan bagi siapa saja yang tertarik untuk meningkatkan kemampuan dalam pengambilan keputusan berbasis data. Dengan materi yang berkualitas dan pendekatan pembelajaran yang interaktif, kursus ini memberikan landasan yang kuat bagi peserta untuk berhasil menerapkan konsep-konsep ini dalam konteks pekerjaan mereka.
By Nazia N
•Jul 5, 2023
Here is a comprehensive list of skills in data analytics:
i have been learned through this course
1. Data Analysis
2. Statistical Analysis
3. Data Visualization
4. Programming (Python, R, etc.)
5. SQL
6. Data Cleaning and Preprocessing
7. Machine Learning
8. Predictive Modeling
9. Data Warehousing
10. Data Storytelling
11. Problem-Solving
12. Domain Knowledge
13. Data Mining
14. Data Manipulation
15. Exploratory Data Analysis (EDA)
16. Data Wrangling
17. Data Modeling
18. Data Integration
19. Data Transformation
20. Feature Engineering
21. Time Series Analysis
22. Regression Analysis
23. Classification Techniques
24. Clustering Techniques
25. Natural Language Processing (NLP)
26. Sentiment Analysis
27. Text Mining
28. Big Data Technologies (Hadoop, Spark, etc.)
29. Data Governance
30. Data Ethics and Privacy
31. Data Security
32. Data Quality Assurance
33. Data Interpretation
34. Data Presentation
35. Data-driven Decision Making
36. Experimental Design
37. A/B Testing
38. Data Analytics Tools (Tableau, Power BI, Excel, etc.)
39. Data Extraction
40. Data Validation
41. Data Storage and Retrieval
42. Data Architecture
43. Data Warehouse Design
44. Data Governance
45. Data Migration
46. Data Visualization Tools (Tableau, Power BI, Matplotlib, Seaborn, etc.)
47. Data Storytelling Techniques
48. Data Communication
49. Data-driven Strategy
50. Data-driven Problem Solving
By Shahir A S
•Apr 8, 2023
The Ask Questions to Make Data-Driven Decisions course in the Google Analytics Professional Certificate on Coursera is an excellent resource for anyone looking to develop their skills in data analysis. The course is very well structured, with clear and concise explanations of important concepts that are illustrated with relevant examples.
One of the strengths of this course is that it provides learners with practical experience in using Google Analytics to ask questions and make data-driven decisions. The interactive exercises and quizzes allow learners to apply what they've learned and receive immediate feedback, which is very helpful for solidifying understanding.
The course also covers a wide range of topics, including identifying stakeholders, asking effective questions, and visualizing data, making it a comprehensive resource for anyone interested in data analysis. The real-world scenarios provided in the course help to contextualize the content, making it more relevant and engaging.
Overall, I highly recommend this course for anyone interested in learning more about data analysis and using Google Analytics to make data-driven decisions. The course is well-designed, informative, and engaging, and the skills learned will be invaluable in a wide range of professional contexts.