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学生对 IBM 提供的 Building Generative AI-Powered Applications with Python 的评价和反馈

4.6
264 个评分

课程概述

Ready for an interactive learning experience to build real-world generative AI applications and chatbots? In this hands-on course, you’ll develop a series of guided projects using Python, Flask, Gradio, and LangChain to create AI-powered applications for practical scenarios, including a voice assistant, a meeting summarizer, a language translator, and a personalized career coach. You’ll work with popular large language models (LLMs) such as GPT-3, Llama 2, and Flan-UL2, hosted on platforms like IBM watsonx and Hugging Face. You’ll also explore advanced concepts, such as retrieval-augmented generation (RAG), to enhance LLM responses with external knowledge, and integrate speech-to-text (STT) and text-to-speech (TTS) using IBM Watson® Speech Libraries and OpenAI Whisper to enable voice interactions. While a basic understanding of Python is essential, knowledge of HTML, CSS, or JavaScript is helpful but not required. The course includes supporting readings and videos to build foundational knowledge of the models and frameworks used. In addition, a comprehensive course glossary will help reinforce your learning....

热门审阅

MM

Dec 1, 2024

Amazing hands on learning and exposure to various tech

BI

Sep 18, 2024

The course was well-structured with practical and insightful projects.

筛选依据:

26 - Building Generative AI-Powered Applications with Python 的 48 个评论(共 48 个)

创建者 Daniel S

Jul 17, 2024

Excellent Practical Hands-On Course

创建者 Kareem A

Aug 12, 2025

Very informative and practical.

创建者 Maysa A

Aug 7, 2024

sangat memuaskan dan detail

创建者 Luis c

Apr 4, 2025

Excelente contenido

创建者 Francisco M H S

Nov 25, 2024

Todo perfecto

创建者 Neusa M

Oct 12, 2025

The best !

创建者 Jorge A c c

Nov 20, 2025

excelente

创建者 Mashhura N

Dec 6, 2024

very good

创建者 Hernando A V

Aug 13, 2024

exelente

创建者 Simha C

Sep 11, 2024

Awesome

创建者 Mahesh K

Sep 22, 2025

Good

创建者 Paras S

Sep 19, 2025

nice

创建者 GURJAR S P

Jun 23, 2025

good

创建者 JALAL E

May 25, 2025

good

创建者 Javier D J T

Dec 9, 2024

Good

创建者 Online L

Oct 11, 2024

Good

创建者 PATEL J B

Oct 7, 2024

Nice

创建者 Anyinson V S

Jul 24, 2025

super bueno

创建者 Jingjing W

Nov 23, 2025

A lot of codes are pre-made and do not have good explanation for understanding. Too little input from learner into the code. The course heavily rely on the lab without laying down good foundation beforehand. For example, there was no explanation of what Embedding means and I had to search it for myself to understand its relationship with LLM.

创建者 Carlos Z

Jun 24, 2024

Los temas son ecelentes pero las explicaciones de las prácticas son malísimas

创建者 Pritam B

Mar 16, 2025

very useful course for beganier

创建者 Aurelio M

Feb 22, 2026

The idea of a program built almost entirely around hands-on projects to demonstrate how generative AI models are used in real applications was extremely appealing to me. I expected a practical, industry-oriented experience that would deepen my understanding of how to work with modern AI systems in production contexts. At the beginning, the theoretical introductory lessons were genuinely excellent. The explanations of core concepts such as large language models, speech technologies, RAG, and the overall ecosystem around IBM watsonx and Hugging Face were clear and engaging. These initial modules were the strongest part of the course and provided solid foundational knowledge. However, as the course progressed, many of my initial concerns unfortunately proved valid. A significant portion of the hands-on work revolves around using specific models through Hugging Face or similar platforms. The problem is that model interfaces change frequently, APIs evolve, and specific models quickly become outdated. Investing time in learning how to use a particular model configuration feels of limited long-term value when that model may be replaced or deprecated within months. In practice, the course gives a general idea of how to interact with LLMs in Python, but it focuses too heavily on implementation details that are not particularly transferable or durable. Some of the models covered are already far less relevant in today’s rapidly evolving generative AI landscape. From a professional standpoint, I did not feel that this significantly improved my readiness to work with state-of-the-art systems currently used in industry. Another weakness is the structure of the labs. Many exercises feel passive: you are often copying and pasting large chunks of code rather than actively designing or reasoning about solutions. This approach limits deep understanding and does not encourage critical thinking or independent problem solving. It becomes more of a guided replication exercise than true hands-on engineering practice. The development environment was also frustrating. It frequently required restarts and felt unstable, which disrupted the learning flow and added unnecessary friction to the experience. In my opinion, the course would benefit from being more focused. Out of the seven projects, three well-designed, deeper, and more challenging projects would have been more effective than seven relatively superficial ones. More emphasis on architectural thinking, abstraction, and transferable design principles would significantly improve its long-term value. Overall, while the introductory theory and exposure to tools like Gradio and some LangChain basics were useful, much of the practical component felt superficial and quickly outdated. I finished the course feeling that the time invested did not translate into proportionate professional growth.

创建者 Sam S

Oct 15, 2025

IBM lab kicked me out every time. In this module, never get to complete downloading torch module. Lab WENT OFFLINE! How am I gonna be able to finish anything here??????????????