Really like the focus on practical application and demonstrating the latest capability of TensorFlow. As mentioned in the course, it is a great compliment to Andrew Ng's Deep Learning Specialization.
It was an amazing experience to learn from such great experts in the field and get a complete understanding of all the concepts involved and also get thorough understanding of the programming skills.
By Shiladitya P•
I learned the best practices for forecasting using statistical techniques as well as deep learning networks in this course. One point for improvement is to focus on a few multi-variate examples with code, which was absent in the course.
By Adnan D•
It was good totally, but I think the assignments weren't enough also I expected the multivariate time series to be covered but it wasn't, I'm waiting to see this teacher next course soon I wish for better assignments and a cool topic!
By Александр З•
I would like to have more info on window and batch sizes - seems to be pretty important values to work with, but they are not covered in depth.
In general, greate course that shows how to prepare sequences, feed them in to NN.
By Vahid N•
It is very easy to follow this course. I wish some function/object options and arguments (such as why we use Y^hat (hat is usually reserved for estimated values) and not Y in LSTMs) were explained in more detail for curious readers.
By Neelkanth S M•
As with an machine/ deep learning model, data preprocessing is the most underrated part. Taking this course exposes students to various pre-processing nuances that are helpful in training a deep learning model.
By Tobias L•
Nice and short introduction to time series handling in Keras. As with the other courses, this is a simple hands-on course. I therefore recommend to take the DeepLearning Specialization before this course.
By WALEED E•
The course is fantastic. It was a bit short and with some hyperparameters tuning focus, it could have been great. Also, it seems that it is biased to show that LSTM is always superior to RNN networks.
By mehryar m•
I'm so glad to take this course and build my knowledge regarding time-series data and modern approaches to create prognostic models. Thanks to Andrew Ng and L. Moroney to provide this course.
By Siddhartha P•
Few hands on programming assignments could be better for experience as was the case with starting two courses. Overall good course and the structure was well laid. Thanks for building it up
By William G•
Though I feel some aspects of this course did not delve deep enough into the explanations of some functions, the course helped me understand how to use models for time series problems.
By hm s•
I wish there were more detail explanation about hyper-parameter tuning when we define NN Models.
other than that, this course was great and gave me lot of insights. Thank you.
By Yongqing X•
I'd like to learn more about algorithmic principle（Although some Andrew‘s class link is attached. ）why not explain the principle combined with the real example
Wish there were graded programming exercises. The quizzes has questions not relevant to the goal of the lesson ex What is the seasonality of sunspots.
By SAIKAT M•
New techniques were learnt regarding how to create a time-series signal and how they can be manipulated for forcasting and feeding to DNN networks.
By Parth A•
A good intro course to time series prediction. Would have loved some more data analysis and other time series methods like ARIMA and seasonal ARIMA
By Ruben Y Q•
course is good but it dont get deeper on using things like multivariate time series, in addition the course practice materials where kind of lax
By Jessie S•
A little bit too simple cuz it only covers univariate time series practice. Would be better if there's more multivariate time series exercise.
By Dan R•
I was really waiting to predict 100 data that was similar to sequence, that being said; this was a good introduction to time series analysis.
By Kartik P•
its a nice course but instead of using synthetic data, it would have been better if we use real-time datasets for our practice and learning.
By AMAN G•
The programming exercise should not have been optional. But overall, this was an amazing course. A thumbs up from my side. Thanks a lot.
By Ruben A M•
A lot of typos and I felt that making the Graded Exercises instead of Non Graded is a much better experience for us the students.
By Erik J J D B•
Good and easy to follow course to learn tensorflow. You need a background on Machine Learning to fully benefit from this course.
By DING T K•
It is nice in introduction to the use of TF in time series. But a bit difficult in the code which without detail explanation.
By Duncan B•
I think this is a helpful introduction. It would have been helpful to delve into some multivariate sequence data examples.