学生对 DeepLearning.AI 提供的 Generative AI with Large Language Models 的评价和反馈
课程概述
热门审阅
AB
Nov 1, 2023
Very insightful, in depth and well explained course, that provides a solid explanation about the technical aspects, economical considerations and project lifecycle of AI LLM powered solutions
MB
Jan 4, 2024
This course has been an extra addition in enhancing my understanding of the Generative AI project lifecycle, particularly in the context of architecture and implementation strategies.
651 - Generative AI with Large Language Models 的 675 个评论(共 843 个)
创建者 Maciej J
•Jan 9, 2024
Awesome!
创建者 David G G G
•Jun 29, 2023
Amazing!
创建者 akula j
•Sep 17, 2024
helpful
创建者 Abdullah B
•Mar 20, 2024
Perfect
创建者 Aminah N
•Dec 19, 2024
useful
创建者 Vipul C H
•Nov 30, 2023
thanks
创建者 Praveen H
•Sep 24, 2023
superb
创建者 Justin H
•Sep 1, 2023
Brutal
创建者 Николай Б
•Jul 30, 2023
Greate
创建者 zaidiabbas786 A
•Apr 21, 2025
teert
创建者 Adarsh51
•Mar 2, 2025
Nice!
创建者 Egies R F
•Feb 23, 2025
goodd
创建者 Simone L
•Aug 21, 2023
Super
创建者 mehmet o
•Aug 5, 2023
great
创建者 SUBHADEEP C
•Oct 25, 2025
good
创建者 Pooja S K
•Sep 21, 2025
Good
创建者 Afiga
•Sep 11, 2025
Good
创建者 ABEER H M
•Aug 27, 2024
شكرا
创建者 Khaoula E
•Mar 30, 2024
good
创建者 Buri B
•Mar 3, 2024
nice
创建者 Nivrutti R P
•Feb 25, 2024
good
创建者 zed a
•Jan 24, 2024
good
创建者 Padma M
•Dec 10, 2023
good
创建者 Fraz
•Dec 10, 2023
All the instructors were good and delivery was mostly excellent, however, the course was a bit too short can be improved in several ways. There were very few quizes in the video lectures and the ones that were present, were too easy or obvious (does not require much thinking). There should be good, quality quizes in most video lessons similar to the OG ML course by Andrew Ng. The inline quizes in videos help "reinforce" the learning in humans. This is proven by the research yet to be carried out :D Another aspect that I did not like was the jupyter notebooks to run excercises, all solutions were already provided and it does not help in learning the concepts if all we have to do is to press Shift+Enter and merely observe code and results. Actual learning requires some trail and error as part of the exercises, once again the OG ML course by Andrew Ng did a good job of accomplishing this with Octave exercises.
创建者 Deleted A
•Nov 2, 2023
A delightful and very up-to-date (most of the references have been published in the last 2 years) overview of LLMs with hands-on lab sessions in Python. Prompt engineering, zero/one/few-shot inference, instruction fine tuning (FT), parameter-efficient FT (PEFT), Low-rank Adaptation (LoRA), RL from human feedback, program-aided language (PAL) models, retrieval augmented generation (RAG), etc, etc. In short, everything you need to know about the state-of-the-art in LLMs in 2023. There are a couple of things that disappointed me though. The first one is that, unlike other Coursera courses, there isn't any discussion forum to interchange ideas with other students or post questions. The second one is that there isn't any clear contact (either from the course's intructors or from Coursera) to ask questions regarding problems with the AWS platform when working on the labs.