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ChatGPT Coursera Review

ChatGPT Coursera Review

Posted on July 30August 24 By Admin No Comments on ChatGPT Coursera Review

ChatGPT ChatGPT Coursera Review, are you looking for prompt engineering?

If so, then you should read this article. You may discover a thorough Prompt Engineering for ChatGPT Coursera Review on this page.

Let’s begin:

Course Content:- The course material was excellent and covered a wide range of subjects. It was intriguing and made sense thanks to its use of real-world examples.

Instructor:-The projects and exercises helped with learning. If there had been more choices for various skill levels, it would have been even great.

Hands-on Practice:-The projects and exercises helped with learning. If there had been more choice for various skill levels, it would have been even great.

Support:- Although Coursera provided decent support, at times it was a little difficult to receive assistance. It would have been wonderful to receive more thorough responses to the queries.

Community:-The online neighborhood was excellent! We could converse with other pupils and gain knowledge from them. The conversations were helpful, and everyone was friendly.

Overall Experience:- Advising people who are interested in AI and language processing to take it. Although there were a few little issues, overall it was a fantastic experience.

There is a 6-week schedule for prompt engineering for ChatGPT.

Week 1: Introduction to the Course

The training kicked off in the first week with an inspiring introduction and a few fascinating examples that demonstrated ChatGPT’s potential.

The teacher gave us a rundown of what to anticipate in the upcoming weeks and stressed the value of comprehending the fundamental ideas before moving on to practical applications.

Our enthusiasm for the training was further increased by learning how to create an account and beginning to experiment with ChatGPT.

Week 2- Introduction to Prompts

Prompts, which are essential in directing the behavior of language models like ChatGPT, were the focus of the second week.

It was straightforward to understand the principle of using prompts efficiently thanks to the instructor’s superb explanation of the topic in clear language.

We looked at many prompts, and the Persona Pattern stood out as a unique approach to individualized language model interactions. We were able to investigate different roles and viewpoints to get a range of replies from ChatGPT.

Week 3- Prompt Patterns I

Week 3 continued our exploration of several prompt patterns, broadening our arsenal for creating efficient prompts.

The Cognitive Verifier Pattern, Audience Persona Pattern, Question Refinement Pattern, and Flipped Interaction Pattern were all introduced to us.

We were able to comprehend how to create prompts to get the appropriate responses from ChatGPT because each pattern was accompanied by thorough explanations and examples.

Additionally, other readings provide more context and comprehension of the formats of these patterns.

Week 4- Few-Shot Examples

We looked into Few-Shot Examples in the fourth week, which revealed intriguing possibilities for utilizing ChatGPT with little data. Even when there were few examples available, the lecturer showed how to give particular examples to direct the model’s behavior.

Additionally, we studied Chain of Thought Prompting and ReAct Prompting, which provided helpful methods for modifying the language model’s output through organized prompts.

Week 5- Prompt Patterns II

We proceeded to learn more about prompt patterns in week 5. We were able to create more complex prompts using the Game Play Pattern, Template Pattern, Meta Language Creation Pattern, Recipe Pattern, and Alternative Approaches Pattern.

We were able to develop interactive narratives, produce structured responses, and investigate cutting-edge ChatGPT usage trends thanks to these patterns.

Week 6- Prompt Patterns III

The Ask for Input Pattern, Combining Patterns, Outline Expansion Pattern, Menu Actions Pattern, Fact Check List Pattern, Tail Generation Pattern, and Semantic Filter Pattern were some of the additional prompt patterns we looked at in Week 6.

Our knowledge of rapid engineering and its applications has been expanded in new and interesting ways by each of these patterns.

The training closed with a thank-you note and an exhortation to study more about prompt engineering after the session.

The instructor provided clear and simple explanations throughout the entire course. The accompanying readings offered extra background and tools for future investigation, and the video sessions were well-paced. To reinforce learning, adding additional interactive exercises or tests might be a slight benefit.

Is Prompt Engineering for ChatGPT Worth It?

The course “Prompt Engineering for ChatGPT” is unquestionably worthwhile! Anyone who wishes to comprehend and utilize ChatGPT efficiently should use it.

No specialized knowledge is required to enroll. Simple computer skills are sufficient, such as the ability to use ChatGPT and a web browser.

The prompt engineering portion of the course focuses on writing efficient ChatGPT commands. It is helpful in a variety of industries, including smart grids, healthcare, and more.

By the end of the course, you’ll be able to design effective prompts and utilize ChatGPT to its full potential.

So, this course is a wonderful option if you’re interested in AI and language processing.

You’ll enjoy yourself while discovering ChatGPT’s universe and picking up useful talents

Course

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