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学生对 DeepLearning.AI 提供的 Generative AI with Large Language Models 的评价和反馈

4.8
3,512 个评分

课程概述

In Generative AI with Large Language Models (LLMs), you’ll learn the fundamentals of how generative AI works, and how to deploy it in real-world applications. By taking this course, you'll learn to: - Deeply understand generative AI, describing the key steps in a typical LLM-based generative AI lifecycle, from data gathering and model selection, to performance evaluation and deployment - Describe in detail the transformer architecture that powers LLMs, how they’re trained, and how fine-tuning enables LLMs to be adapted to a variety of specific use cases - Use empirical scaling laws to optimize the model's objective function across dataset size, compute budget, and inference requirements - Apply state-of-the art training, tuning, inference, tools, and deployment methods to maximize the performance of models within the specific constraints of your project - Discuss the challenges and opportunities that generative AI creates for businesses after hearing stories from industry researchers and practitioners Developers who have a good foundational understanding of how LLMs work, as well the best practices behind training and deploying them, will be able to make good decisions for their companies and more quickly build working prototypes. This course will support learners in building practical intuition about how to best utilize this exciting new technology. This is an intermediate course, so you should have some experience coding in Python to get the most out of it. You should also be familiar with the basics of machine learning, such as supervised and unsupervised learning, loss functions, and splitting data into training, validation, and test sets. If you have taken the Machine Learning Specialization or Deep Learning Specialization from DeepLearning.AI, you’ll be ready to take this course and dive deeper into the fundamentals of generative AI....

热门审阅

OK

Jan 28, 2024

Easily a five star course. You will get a combination of overview of advanced topics and in depth explanation of all necessary concepts. One of the best in this domain. Good work. Thank you teachers!

KH

Aug 23, 2025

Great introduction to Generative AI with Large Language Models. The lessons are clear, practical, and easy to follow. Highly recommended for anyone interested in learning AI basics and applications.

筛选依据:

826 - Generative AI with Large Language Models 的 843 个评论(共 843 个)

创建者 Teppei Y

Feb 25, 2025

I was hoping to do more hands-on labs.

创建者 Everton L

Feb 18, 2025

Shallow content for professionals.

创建者 Qafar B

Jan 11, 2024

need more practic labs and videos.

创建者 Daniel D T

Jul 30, 2025

Demasiado teoria

创建者 Sonu S

Aug 29, 2023

more hands on

创建者 Samuel L S

Jul 18, 2025

I think the course description promises much more than the course actually delivers. This course is in fact a fantastic starting point to get an overview of all the important aspects of Gen AI with LLMs. However, it is by no means comprehensive enough that you will master any of the topics in the course description. Think of the course as an entry point that will give a lot of basic information to continue your learning journey. It will help you get your bearings in this field, but you will need to continue learning elsewhere. You will see and run some code which you can keep as a reference for the future, but you won't be asked to program anything yourself. All in all, a good starting point, but I feel a bit disappointed by the rather exaggerated promises that the course description makes about the content and the learning objectives.

创建者 Zelda W

Oct 27, 2025

Labs - Not much to actually do besides trigger next action, does offer some practical examples at least of Python based LLMs in action. Lessons - Very much give an unbalanced view of LLMs. Basically they come across as marketing material for companies rather than balanced training perspective on LLMs. I felt like I was being sold LLMs rather than taught them. Ethics aspects were a side note at the very end in a single short video. No discussion of environmental, political, ethical, or societal impacts of LLMs, mathematical nature and inevitability of hallucinations was glossed over. In short the course provides a lot of info but also feels like it left out anything unflattering.

创建者 Guy G

Apr 23, 2024

Most of the course content was quite shallow, only skimming the surface of each topic. I felt that it was a good primer on LLMs and I'm glad I took the course, but if I could go back in time I'd simply audit it. The labs and quizzes add very little value and are in no way worth $50.

创建者 José A R M

Feb 15, 2025

Muito pouca prática. Faltou HandsOn. O certificado em pdf está saindo com defeito na logomarca das empresas e isso pode remeter a desconfianças, por parte de terceiros.

创建者 Mahendra P

Apr 29, 2024

Poor explanations. Can't hold the attention of the student. Start with problems and solve them using Generative AI and gradually explain different ways and concepts.

创建者 Leonardo S

Jun 24, 2025

Terrible platform. The subtitles are not proportional to the video. The course is very bureaucratic and the instructors are not didactic.

创建者 RohitDeo

Nov 6, 2024

This course is okay for non-technical/non-programmers for understanding the concepts.

创建者 Pishu G

Sep 14, 2025

Explanations were far too high-level and expected the student to have a deep understanding of data modeling and statistics - this is not for basic or even intermediate students to AI

创建者 Anas S A

Nov 23, 2024

its labs just doesnt work and not updated i follow the steps and end up in a dead place now i cant take my certificate sooooo sad

创建者 David O

Mar 28, 2025

This is not really a course. Its purpose is to promote some commercial software.

创建者 Shrirang E

Nov 1, 2023

Lab2 doesn't work. The kernel crashes at one place all the time.

创建者 Jophin j

Nov 7, 2025

completed the course, not able to download the certificate.

创建者 adetunji p

Mar 26, 2024

i was not able to finish at 99 percent