LP
22 oct. 2021
Very useful course. Personally, I think that there should have been more focus on the implementation of tensorflow and neural network codes. Overall the course is well structured and very clear.
KD
23 août 2019
Introduction of ML for Financial application with combination of Scikit learn, Statsmodels and Tensorflow with neuralnets made this class very interesting. Learned and Enjoyed lot.
par Deleted A
•31 mai 2020
So mouch happy to take the modules, good content, good resources, Thanks
par EDGAR H M
•6 mai 2020
Muy buen curso aunque retador en sus trabajos de programación
par 刘晶
•15 oct. 2018
Very good course! Thank you, Professor Igor Halperin
par Pavel K
•28 nov. 2018
A very informative and well paced intro to ML / DL
par Luis A
•15 nov. 2018
Excellent overview of machine learning in finance
par Sileye B
•21 déc. 2020
I enjoyed thi introduction to ML for finance.
par mohamed h
•27 oct. 2019
thanks coursera for this amazing course
par Yergali B
•4 janv. 2019
Thank you, for this very useful course!
par Daria
•15 mai 2020
Great introduction to ML in Finance!
par Vilimir Y
•2 mars 2020
A great course by a great lecturer!
par Yuning C
•8 sept. 2018
A great course with deep insight.
par Muntu M
•18 janv. 2020
Excellent Course, Well presented
par Sreenath P K
•5 avr. 2020
Very well taught course!
par Jenyi L Y
•17 sept. 2018
very practical for me.
par Yangtao W
•2 déc. 2018
very good course!!!
par WangFangpo
•7 oct. 2019
很好的课程。推荐的论文很值得一读。
par Ezequiel A G
•7 août 2018
Amazing Course!
par LiengPhu T
•15 janv. 2021
Verry good !
par Vinay P K
•20 nov. 2018
good content
par hamid.zand
•30 juin 2018
Great Course
par Sam
•31 oct. 2021
Thank you!
par Russell H
•1 sept. 2018
Good overview of ML in Finance, clearly based on real-world experience. Would not recommend this as a first ML course; probably more useful after first taking another more general course, such as Guestrin's UW ML specialization. Some of the quizzes and exercises seem a bit rushed; e.g., out of order vs. the lectures and not clear about what is required. It was sometimes necessary to consult the discussion forums for clarification. The most useful part may be the categorization of ML algorithms along different axes, including applicability to different areas of finance. The readings and coding exercises seem to come mostly from Geron's O'Reilly book, so plan on buying that (it's a great book, so you should buy it whether you take this course or not).
par Benny P
•6 déc. 2019
This course has been informative, and extremely FUN! This is not to say that it's perfect, in fact as others say the assignments are quite challenging because there's little introduction to the problem/solution being asked. But that's exactly where the fun is! You need to search for the information yourself to solve the problem, much like in the real world. In fact I took another course on TensorFlow in the middle of this course to finish the assignment. But I can imagine this would be frustrating for those with less background on ML or programming, or people who expect everything to be presented smoothly for them.
par Hashim M
•29 déc. 2018
A much needed course by a very seasoned expert in the field, bringing the right blend of backgrounds in finance and tech. The course is well designed for finance professionals with some coding background and for technology professionals with some finance background - which is unique in that sense. Some bridging between lectures and assignments is needed but that kind of fine tuning is inevitable and as more students enroll, the discussion rooms and feedback will provide that sharpening at the edges organically. All in all, I enjoyed the course a lot and look forward to the next three in the specialization!
par gareth o
•24 sept. 2020
Lectures are very good and the use of financial examples really brings the subject alive. However the final projects are not very closely linked to the material taught, it's possible to pass if you ignore the new material. It would also be nice to update the tensorflow code from 1.0 to 2.0 as it would make things much easier to debug.