TT
Khóa học này cho tôi hiểu biết cơ bản về vòng đời của kĩ sư dữ liệu, các yếu tố nền móng và quan trọng là suy nghĩ như một kiến trúc sư dữ liệu. Cũng như thực hành các kiến thức đã học được trên AWS

In this course, you will be introduced to the data engineering lifecycle, from data generation in source systems, to ingestion, transformation, storage, and serving data to downstream stakeholders. You’ll study the key undercurrents that affect all stages of the lifecycle, and start developing a framework for how to think like a data engineer. To gain hands-on practice, you’ll gather stakeholder needs, translate those needs into system requirements, and choose tools and technologies to build systems that provide business value. By the end of this course you’ll be spinning up batch and streaming data pipelines to serve product recommendations on the AWS cloud!

TT
Khóa học này cho tôi hiểu biết cơ bản về vòng đời của kĩ sư dữ liệu, các yếu tố nền móng và quan trọng là suy nghĩ như một kiến trúc sư dữ liệu. Cũng như thực hành các kiến thức đã học được trên AWS
CB
Awsome course Joe goes over details of the fundamentals of data engineering and i learn many things i didn't expect in this course. I can't wait to start the second course.
BP
I appreciate the addition of the DE mental framework as it gives a whole lot of context to the more practical knowledge that will be learned in the next courses.
JF
High level overview is great! But I wish the lab should involve hands-on application, and not just following instructions
YZ
Good theory introduction, and looking forward to the hands-on practices in the next courses.
KD
This course fulfills what it says it will give - make you think like a data engineer. Has exceeded my expectations. And so far, the BEST data engineering course out there.
AS
The Course is very interactive and curated for people without experience in I.T. and Databases.
PS
One of the best courses in the platform, it will guide you to the fundamental principles of data engineering and you'll build your first pipeline for stream and batch data
GC
Curso bem completo e explicado, o laboratório da AWS deixa o aluno imersivo e um cenário real
NQ
absolutely informative, thoughtful, well-executed course! thank u all the instructors, teaching assistants and contributors!
PF
Well-paced, the labs do a great job of focusing exactly on what you are actively learning.
VK
Learning about how you think and work as a data engineer is fantastic. Joe, Morgan, and the other instructors have done very well. Thanks for giving this course?
Showing: 20 of 108
One of the best courses in the platform, it will guide you to the fundamental principles of data engineering and you'll build your first pipeline for stream and batch data
A good introductory course that provides a good framework on how to think about the data engineering discipline. I particularly liked the simulated conversations with other stakeholders. They were quite representative of real world interactions. In my opinion, the only downside were the labs. They were too easy and almost entirely involved following direct instructions provided as part of the comments and did not involve any thinking to be done on the learner's part
Excellent course. Good combination of theory with the work with current tools in the market. I would have liked to have more time for reviewing the details and links.
This course fulfills what it says it will give - make you think like a data engineer. Has exceeded my expectations. And so far, the BEST data engineering course out there.
Labs were very much handheld with every step being explained, not much do it yourself
Sort of theoretical, would've been better if the use cases were more realistic
The "Introduction to Data Engineering" course on Coursera provides an excellent foundation for those new to the field. It strikes a good balance between theory and practical application, covering key concepts like data pipelines, cloud services, and how to translate business requirements into technical solutions. The course offers hands-on experience with AWS tools such as Lambda, Glue, Kinesis, RDS, and Firehose, giving learners practical skills to build and manage data pipelines. The mental framework for problem-solving and understanding functional and non-functional requirements is a highlight. Overall, this course is a great starting point for aspiring data engineers, offering both foundational knowledge and hands-on experience with industry-standard tools.
I recently completed the "Introduction to Data Engineering" course by DeepLearning.AI and AWS. The course provided valuable insights and practical knowledge that deepened my understanding of data engineering concepts. The instructor's expertise was evident and truly inspiring. However, I encountered challenges related to IAM permissions while configuring a Lambda function, which hindered my progress. Guidance on resolving such issues would enhance the learning experience for future participants. Overall, I highly recommend this course for anyone looking to delve into the field of data engineering!
The course material is of outstanding quality, featuring challenging labs that effectively stimulate learning. The insightful interviews, especially those involving Sol Rashidi, were a highlight. Joseph Reis, a new instructor to me, impressed with his humility and generosity with the interviewees and content. The updates to the content promise even more value with Morgan Willis, whom I admire, along with the entire AWS e-learning team. I follow them whenever possible, even in gamified interactions on Twitch and on AWS events. Grateful for this enriching experience. +5 stars!
This course was fascinating, useful and well execute. The whole concept of the lifecycle and undercurrents along with reading the book was something I was looking for. In particular, the requirements gathering part was something which I didn't find in other courses/content that I've seen on that engineering, and I was a bit lost before. I feel like I gain important knowledge and also had to think through about the functional and non-functional requirements and tradeoffs of the different services. I look forward to the next courses
I had recently been promoted to a more senior role involving managing projects and working with a broad spectrum of non-technical stakeholders situated relatively high in the business value chain. This course helped me develop a basic mental framework to get by and wrap my head around the ABCs of managing data products. I was surprised to see the fruits of learning so soon. I wholeheartedly recommend this course to technical experts who are also taking their first steps in product ownership and management.
Great course, nice get-your-hands-dirty-quick approach, with lots of theory though 😅 Worth it in the end, even if it feels overwhelming (and maybe a bit boring) at the beginning! P.S., @Joe, you're an awesome instructor, but please try to be more engaging, I found myself losing focus a lot in the videos with only theory -- the other videos about AWS labs with Morgan, simulted interviews, etc., were more lively and focus-grabbing. Could be just me, thanks for all of this, nonethless! 💖
Puede parecer muy agobiante por la cantidad de teoría que manejan, pero si complementas lo aprendido en el curso con información externa y aparte consigues el libro de fundamentals of data engineering, todo empieza a cobrar sentido en el contexto macroscópico. Apenas he acabado el primer curso de la especialización y sin duda me encuentro ansioso de iniciar con los demás. ¡Muy recomendado!!
Coming from a background in data analysis and data science, I had always focused on the latter stages of the data lifecycle. This course illuminated the extensive groundwork required to make data analysis possible. It bridged a significant knowledge gap, showing how raw data is transformed into a usable resource for analytics and machine learning.
I thoroughly enjoyed this introductory course! The theory was engaging and informative, but what stood out the most were the hands-on practice labs in AWS, showcasing tools widely used in real-world scenarios. I highly recommend this course to beginners looking to build a strong foundation and reinforce it with practical, real-world use cases.
The DE specialization so far is the best. The instructor, learning materials, and labs are top notch. The only concern I have is regarding the labs. So, if you mess up something and then you want to re-run all terraform it won't. Because there are leftover resources in AWS and you need to go there and remove almost all of them by hand.
This was a really great introduction to the data engineering world, in process like gathering inforrmation, Resi tried to simulate as possible the real process to handle differents stakeholders. The content was really good how ever I would like to go deep in the hands-on laboratory, it was like just to run the terraform scripts.
Although the theory might be boring for some folks, but I found theory very critical to setting up a good foundation to implement efficient data analytics pipeline. It's very important to know to interact with the different stakeholders to gather their data need and bring that to life through the data pipeline
Really good course to get an overall view of what is involved in data engineering and I have been able to successfully use apply this knowledge to my work as a consultant and I am keen to expand on the knowledge gained, especially in the event driven architecture and (near) real-time data streaming areas.
Lots of theory and cursory application of that theory. BUT, I feel like I understand the fundamentals of data pipelines now at a high level. AND, I feel like I understand AWS so much better now. It's like the "closest to the metal" that you can get as a modern software/data engineer.