ChatGPT Prompt Engineering for Developers from DeepLearning.AI

这篇具有很好参考价值的文章主要介绍了ChatGPT Prompt Engineering for Developers from DeepLearning.AI。希望对大家有所帮助。如果存在错误或未考虑完全的地方,请大家不吝赐教,您也可以点击"举报违法"按钮提交疑问。

链接:https://learn.deeplearning.ai/chatgpt-prompt-eng/lesson/1/introduction

In this course, there are some example codes that you can already run in Jupyter Notebook. Below, I will write down the core knowledge points, such as how to build a prompt and how the prompt looks like in each application. Therefore, this blog contains more notes than tutorials. If you want to know more details, please refer to the link at the beginning of this article.

1. introduce

Origin Slide picture:
ChatGPT Prompt Engineering for Developers from DeepLearning.AI
Two Types of large language models(LLMs)

  • Base LLM

    • Predicts next word, based on text training data
  • Instruction Tuned LLM

    • Tries to follow instuctions
    • Fine-tune on instructions and good attempts at following those instructions
    • usually use tech named RLHF (Reinforcement Learning with Human Feedback)

This course will focus on best practices for instruction-tuned LLMs.

2. GuideLines

In this lesson, you’ll practice two prompting principles and their related tactics in order to write effective prompts for large language models.

2.1 how to set your prompt

Origin Slide picture:
ChatGPT Prompt Engineering for Developers from DeepLearning.AI

  • Principle 1 - Write clear and specific instructions (clear ≠ short)
    • Tactic 1: Use delimiters to clearly indicate distinct parts of the input
      • Delimiters can be anything like: ```, “”", < >, , :
# prompt example:
text = f"""
You should express what you want a model to do by \ 
providing instructions that are as clear and \ 
specific as you can possibly make them. \ 
This will guide the model towards the desired output, \ 
and reduce the chances of receiving irrelevant \ 
or incorrect responses. Don't confuse writing a \ 
clear prompt with writing a short prompt. \ 
In many cases, longer prompts provide more clarity \ 
and context for the model, which can lead to \ 
more detailed and relevant outputs.
"""
prompt = f"""
Summarize the text delimited by triple backticks \ 
into a single sentence.
```{text}```
"""
    • Tactic 2: Ask for a structured output
      • JSON, HTML
#prompt example:
prompt = f"""
Generate a list of three made-up book titles along \ 
with their authors and genres. 
Provide them in JSON format with the following keys: 
book_id, title, author, genre.
"""
    • Tactic 3: Ask the model to check whether conditions are satisfied
# prompt example
text_1 = f"""
Making a cup of tea is easy! First, you need to get some \ 
water boiling. While that's happening, \ 
grab a cup and put a tea bag in it. Once the water is \ 
hot enough, just pour it over the tea bag. \ 
Let it sit for a bit so the tea can steep. After a \ 
few minutes, take out the tea bag. If you \ 
like, you can add some sugar or milk to taste. \ 
And that's it! You've got yourself a delicious \ 
cup of tea to enjoy.
"""
prompt = f"""
You will be provided with text delimited by triple quotes. 
If it contains a sequence of instructions, \ 
re-write those instructions in the following format:

Step 1 - ...
Step 2 - …
…
Step N - …

If the text does not contain a sequence of instructions, \ 
then simply write \"No steps provided.\"

\"\"\"{text_1}\"\"\"
"""
    • Tactic 4: “Few-shot” prompting
#prompt example
prompt = f"""
Your task is to answer in a consistent style.

<child>: Teach me about patience.

<grandparent>: The river that carves the deepest \ 
valley flows from a modest spring; the \ 
grandest symphony originates from a single note; \ 
the most intricate tapestry begins with a solitary thread.

<child>: Teach me about resilience.
"""

Origin Slide picture:
ChatGPT Prompt Engineering for Developers from DeepLearning.AI

  • Principle 2 - Give the model time to think
    • Tactic 1: Specify the steps required to complete a task
#prompt example
text = f"""
In a charming village, siblings Jack and Jill set out on \ 
a quest to fetch water from a hilltop \ 
well. As they climbed, singing joyfully, misfortune \ 
struck—Jack tripped on a stone and tumbled \ 
down the hill, with Jill following suit. \ 
Though slightly battered, the pair returned home to \ 
comforting embraces. Despite the mishap, \ 
their adventurous spirits remained undimmed, and they \ 
continued exploring with delight.
"""
# example 1
prompt_1 = f"""
Perform the following actions: 
1 - Summarize the following text delimited by triple \
backticks with 1 sentence.
2 - Translate the summary into French.
3 - List each name in the French summary.
4 - Output a json object that contains the following \
keys: french_summary, num_names.

Separate your answers with line breaks.

Text:
```{text}```
"""
    • Tactic 2: Instruct the model to work out its own solution before rushing to a conclusion
#prompt example:
prompt = f"""
Your task is to determine if the student's solution \
is correct or not.
To solve the problem do the following:
- First, work out your own solution to the problem. 
- Then compare your solution to the student's solution \ 
and evaluate if the student's solution is correct or not. 
Don't decide if the student's solution is correct until 
you have done the problem yourself.

Use the following format:
Question:
···
question here
···
Student's solution:
···
student's solution here
···
Actual solution:
···
steps to work out the solution and your solution here
···
Is the student's solution the same as actual solution \
just calculated:
···
yes or no
···
Student grade:
···
correct or incorrect
···

Question:
···
I'm building a solar power installation and I need help \
working out the financials. 
- Land costs $100 / square foot
- I can buy solar panels for $250 / square foot
- I negotiated a contract for maintenance that will cost \
me a flat $100k per year, and an additional $10 / square \
foot
What is the total cost for the first year of operations \
as a function of the number of square feet.
···
Student's solution:
···
Let x be the size of the installation in square feet.
Costs:
1. Land cost: 100x
2. Solar panel cost: 250x
3. Maintenance cost: 100,000 + 100x
Total cost: 100x + 250x + 100,000 + 100x = 450x + 100,000
···
Actual solution:
"""

2.2 Model Limitations

LLMs may cause some hallucinations. (Makes statements that sound plausible but are not true.)
Solutions ( reducing hallucinations ): First find relevant information, then answer the question based on the relevant information.

Origin Slide picture:
ChatGPT Prompt Engineering for Developers from DeepLearning.AI

3. Iterative (Iterative Prompt Development)

Origin Slide picture:
ChatGPT Prompt Engineering for Developers from DeepLearning.AI
ChatGPT Prompt Engineering for Developers from DeepLearning.AI

In this lesson, you’ll iteratively analyze and refine your prompts to generate marketing copy from a product fact sheet.

Prompt guidelines:

  • Be clear and specific
  • Analyse why result dose not give desired output
  • Refine the idea and the prompt
  • Repeat

Iterative Process

  • Try something
  • Analyse where the result dose not give what you want
  • Clarify instructions, give more time to think
  • Refine prompts with a banch of examples
Example:
fact_sheet_chair = """
OVERVIEW
- Part of a beautiful family of mid-century inspired office furniture, 
including filing cabinets, desks, bookcases, meeting tables, and more.
- Several options of shell color and base finishes.
- Available with plastic back and front upholstery (SWC-100) 
or full upholstery (SWC-110) in 10 fabric and 6 leather options.
- Base finish options are: stainless steel, matte black, 
gloss white, or chrome.
- Chair is available with or without armrests.
- Suitable for home or business settings.
- Qualified for contract use.

CONSTRUCTION
- 5-wheel plastic coated aluminum base.
- Pneumatic chair adjust for easy raise/lower action.

DIMENSIONS
- WIDTH 53 CM | 20.87”
- DEPTH 51 CM | 20.08”
- HEIGHT 80 CM | 31.50”
- SEAT HEIGHT 44 CM | 17.32”
- SEAT DEPTH 41 CM | 16.14”

OPTIONS
- Soft or hard-floor caster options.
- Two choices of seat foam densities: 
 medium (1.8 lb/ft3) or high (2.8 lb/ft3)
- Armless or 8 position PU armrests 

MATERIALS
SHELL BASE GLIDER
- Cast Aluminum with modified nylon PA6/PA66 coating.
- Shell thickness: 10 mm.
SEAT
- HD36 foam

COUNTRY OF ORIGIN
- Italy
"""
prompt = f"""
Your task is to help a marketing team create a 
description for a retail website of a product based 
on a technical fact sheet.

Write a product description based on the information 
provided in the technical specifications delimited by 
triple backticks.

Technical specifications: ```{fact_sheet_chair}```
"""

Issue 1: The text is too long
You’ll get long text from model when using the above prompt.
Solution: Limit the number of words/sentences/characters.

prompt = f"""
Your task is to help a marketing team create a 
description for a retail website of a product based 
on a technical fact sheet.

Write a product description based on the information 
provided in the technical specifications delimited by 
triple backticks.

Use at most 50 words.

Technical specifications: ```{fact_sheet_chair}```
"""

Issue 2. Text focuses on the wrong details
Solution: Ask it to focus on the aspects that are relevant to the intended audience.

prompt = f"""
Your task is to help a marketing team create a 
description for a retail website of a product based 
on a technical fact sheet.

Write a product description based on the information 
provided in the technical specifications delimited by 
triple backticks.

The description is intended for furniture retailers, 
so should be technical in nature and focus on the 
materials the product is constructed from.

At the end of the description, include every 7-character 
Product ID in the technical specification.

Use at most 50 words.

Technical specifications: ```{fact_sheet_chair}```
"""

Issue 3. Description needs a table of dimensions
Solution: Ask it to extract information and organize it in a table.

prompt = f"""
Your task is to help a marketing team create a 
description for a retail website of a product based 
on a technical fact sheet.

Write a product description based on the information 
provided in the technical specifications delimited by 
triple backticks.

The description is intended for furniture retailers, 
so should be technical in nature and focus on the 
materials the product is constructed from.

At the end of the description, include every 7-character 
Product ID in the technical specification.

After the description, include a table that gives the 
product's dimensions. The table should have two columns.
In the first column include the name of the dimension. 
In the second column include the measurements in inches only.

Give the table the title 'Product Dimensions'.

Format everything as HTML that can be used in a website. 
Place the description in a <div> element.

Technical specifications: ```{fact_sheet_chair}```
"""

4. Summerizing (Summerize text)

In this lesson, you will summarize text with a focus on specific topics.

Examples:
text to summerize
prod_review = """
Got this panda plush toy for my daughter's birthday, \
who loves it and takes it everywhere. It's soft and \ 
super cute, and its face has a friendly look. It's \ 
a bit small for what I paid though. I think there \ 
might be other options that are bigger for the \ 
same price. It arrived a day earlier than expected, \ 
so I got to play with it myself before I gave it \ 
to her.
"""
  • Summarize with a word/sentence/character limit
prompt = f"""
Your task is to generate a short summary of a product \
review from an ecommerce site. 

Summarize the review below, delimited by triple 
backticks, in at most 30 words. 

Review: ```{prod_review}```
"""
  • Summarize with a focus on shipping and delivery
prompt = f"""
Your task is to generate a short summary of a product \
review from an ecommerce site to give feedback to the \
Shipping deparmtment. 

Summarize the review below, delimited by triple 
backticks, in at most 30 words, and focusing on any aspects \
that mention shipping and delivery of the product. 

Review: ```{prod_review}```
"""
  • Summarize with a focus on price and value
prompt = f"""
Your task is to generate a short summary of a product \
review from an ecommerce site to give feedback to the \
pricing deparmtment, responsible for determining the \
price of the product.  

Summarize the review below, delimited by triple 
backticks, in at most 30 words, and focusing on any aspects \
that are relevant to the price and perceived value. 

Review: ```{prod_review}```
"""
  • Summarize multiple product reviews
review_1 = prod_review 

# review for a standing lamp
review_2 = """
Needed a nice lamp for my bedroom, and this one \
had additional storage and not too high of a price \
point. Got it fast - arrived in 2 days. The string \
to the lamp broke during the transit and the company \
happily sent over a new one. Came within a few days \
as well. It was easy to put together. Then I had a \
missing part, so I contacted their support and they \
very quickly got me the missing piece! Seems to me \
to be a great company that cares about their customers \
and products. 
"""

# review for an electric toothbrush
review_3 = """
My dental hygienist recommended an electric toothbrush, \
which is why I got this. The battery life seems to be \
pretty impressive so far. After initial charging and \
leaving the charger plugged in for the first week to \
condition the battery, I've unplugged the charger and \
been using it for twice daily brushing for the last \
3 weeks all on the same charge. But the toothbrush head \
is too small. I’ve seen baby toothbrushes bigger than \
this one. I wish the head was bigger with different \
length bristles to get between teeth better because \
this one doesn’t.  Overall if you can get this one \
around the $50 mark, it's a good deal. The manufactuer's \
replacements heads are pretty expensive, but you can \
get generic ones that're more reasonably priced. This \
toothbrush makes me feel like I've been to the dentist \
every day. My teeth feel sparkly clean! 
"""

# review for a blender
review_4 = """
So, they still had the 17 piece system on seasonal \
sale for around $49 in the month of November, about \
half off, but for some reason (call it price gouging) \
around the second week of December the prices all went \
up to about anywhere from between $70-$89 for the same \
system. And the 11 piece system went up around $10 or \
so in price also from the earlier sale price of $29. \
So it looks okay, but if you look at the base, the part \
where the blade locks into place doesn’t look as good \
as in previous editions from a few years ago, but I \
plan to be very gentle with it (example, I crush \
very hard items like beans, ice, rice, etc. in the \ 
blender first then pulverize them in the serving size \
I want in the blender then switch to the whipping \
blade for a finer flour, and use the cross cutting blade \
first when making smoothies, then use the flat blade \
if I need them finer/less pulpy). Special tip when making \
smoothies, finely cut and freeze the fruits and \
vegetables (if using spinach-lightly stew soften the \ 
spinach then freeze until ready for use-and if making \
sorbet, use a small to medium sized food processor) \ 
that you plan to use that way you can avoid adding so \
much ice if at all-when making your smoothie. \
After about a year, the motor was making a funny noise. \
I called customer service but the warranty expired \
already, so I had to buy another one. FYI: The overall \
quality has gone done in these types of products, so \
they are kind of counting on brand recognition and \
consumer loyalty to maintain sales. Got it in about \
two days.
"""

reviews = [review_1, review_2, review_3, review_4]

for i in range(len(reviews)):
    prompt = f"""
    Your task is to generate a short summary of a product \ 
    review from an ecommerce site. 

    Summarize the review below, delimited by triple \
    backticks in at most 20 words. 

    Review: ```{reviews[i]}```
    """
    ```
## 5. Inferring (Sentiment (Positive/negative) and more)
In this lesson, you will infer sentiment and topics from product reviews and news articles.

**Example text 1:**
* review text
```python 
lamp_review = """
Needed a nice lamp for my bedroom, and this one had \
additional storage and not too high of a price point. \
Got it fast.  The string to our lamp broke during the \
transit and the company happily sent over a new one. \
Came within a few days as well. It was easy to put \
together.  I had a missing part, so I contacted their \
support and they very quickly got me the missing piece! \
Lumina seems to me to be a great company that cares \
about their customers and products!!
"""
  • Sentiment (positive/negative)
prompt = f"""
What is the sentiment of the following product review, 
which is delimited with triple backticks?

Review text: '''{lamp_review}'''
"""
Identify types of emotions
prompt = f"""
Identify a list of emotions that the writer of the \
following review is expressing. Include no more than \
five items in the list. Format your answer as a list of \
lower-case words separated by commas.

Review text: '''{lamp_review}'''
"""
  • Identify anger
prompt = f"""
Is the writer of the following review expressing anger?\
The review is delimited with triple backticks. \
Give your answer as either yes or no.

Review text: '''{lamp_review}'''
"""
  • Extract product and company name from customer reviews
prompt = f"""
Identify the following items from the review text: 
- Item purchased by reviewer
- Company that made the item

The review is delimited with triple backticks. \
Format your response as a JSON object with \
"Item" and "Brand" as the keys. 
If the information isn't present, use "unknown" \
as the value.
Make your response as short as possible.
  
Review text: '''{lamp_review}'''
"""
  • Doing multiple tasks at once
prompt = f"""
Identify the following items from the review text: 
- Sentiment (positive or negative)
- Is the reviewer expressing anger? (true or false)
- Item purchased by reviewer
- Company that made the item

The review is delimited with triple backticks. \
Format your response as a JSON object with \
"Sentiment", "Anger", "Item" and "Brand" as the keys.
If the information isn't present, use "unknown" \
as the value.
Make your response as short as possible.
Format the Anger value as a boolean.

Review text: '''{lamp_review}'''
"""

Example text 2:

  • story text
story = """
In a recent survey conducted by the government, 
public sector employees were asked to rate their level 
of satisfaction with the department they work at. 
The results revealed that NASA was the most popular 
department with a satisfaction rating of 95%.

One NASA employee, John Smith, commented on the findings, 
stating, "I'm not surprised that NASA came out on top. 
It's a great place to work with amazing people and 
incredible opportunities. I'm proud to be a part of 
such an innovative organization."

The results were also welcomed by NASA's management team, 
with Director Tom Johnson stating, "We are thrilled to 
hear that our employees are satisfied with their work at NASA. 
We have a talented and dedicated team who work tirelessly 
to achieve our goals, and it's fantastic to see that their 
hard work is paying off."

The survey also revealed that the 
Social Security Administration had the lowest satisfaction 
rating, with only 45% of employees indicating they were 
satisfied with their job. The government has pledged to 
address the concerns raised by employees in the survey and 
work towards improving job satisfaction across all departments.
"""
  • Infer 5 topics
prompt = f"""
Determine five topics that are being discussed in the \
following text, which is delimited by triple backticks.

Make each item one or two words long. 

Format your response as a list of items separated by commas.

Text sample: '''{story}'''
"""
Make a news alert for certain topics
topic_list = [
    "nasa", "local government", "engineering", 
    "employee satisfaction", "federal government"
]

prompt = f"""
Determine whether each item in the following list of \
topics is a topic in the text below, which
is delimited with triple backticks.

Give your answer as list with 0 or 1 for each topic.\

List of topics: {", ".join(topic_list)}

Text sample: '''{story}'''

6. Transforming (Translating to a different lanuage, and more)

In this lesson, we will explore how to use Large Language Models for text transformation tasks such as language translation, spelling and grammar checking, tone adjustment, and format conversion.

  • translation
prompt = f"""
Translate the following English text to Spanish: \ 
```Hi, I would like to order a blender```
"""
prompt = f"""
Tell me which language this is: 
```Combien coûte le lampadaire?```
"""
prompt = f"""
Translate the following  text to French and Spanish
and English pirate: \
```I want to order a basketball```
"""
prompt = f"""
Translate the following text to Spanish in both the \
formal and informal forms: 
'Would you like to order a pillow?'
"""
  • Universal Translator
user_messages = [
  "La performance du système est plus lente que d'habitude.",  # System performance is slower than normal         
  "Mi monitor tiene píxeles que no se iluminan.",              # My monitor has pixels that are not lighting
  "Il mio mouse non funziona",                                 # My mouse is not working
  "Mój klawisz Ctrl jest zepsuty",                             # My keyboard has a broken control key
  "我的屏幕在闪烁"                                               # My screen is flashing
] 
for issue in user_messages:
    prompt = f"Tell me what language this is: ```{issue}```"

    prompt = f"""
    Translate the following  text to English \
    and Korean: ```{issue}```
    """
  • tone transformation
prompt = f"""
Translate the following from slang to a business letter: 
'Dude, This is Joe, check out this spec on this standing lamp.'
"""
  • format conversion
data_json = { "resturant employees" :[ 
    {"name":"Shyam", "email":"shyamjaiswal@gmail.com"},
    {"name":"Bob", "email":"bob32@gmail.com"},
    {"name":"Jai", "email":"jai87@gmail.com"}
]}

prompt = f"""
Translate the following python dictionary from JSON to an HTML \
table with column headers and title: {data_json}
"""
  • Spellcheck/Grammar check
text = [ 
  "The girl with the black and white puppies have a ball.",  # The girl has a ball.
  "Yolanda has her notebook.", # ok
  "Its going to be a long day. Does the car need it’s oil changed?",  # Homonyms
  "Their goes my freedom. There going to bring they’re suitcases.",  # Homonyms
  "Your going to need you’re notebook.",  # Homonyms
  "That medicine effects my ability to sleep. Have you heard of the butterfly affect?", # Homonyms
  "This phrase is to cherck chatGPT for speling abilitty"  # spelling
]
for t in text:
    prompt = f"""Proofread and correct the following text
    and rewrite the corrected version. If you don't find
    and errors, just say "No errors found". Don't use 
    any punctuation around the text:
    ```{t}```"""
text = f"""
Got this for my daughter for her birthday cuz she keeps taking \
mine from my room.  Yes, adults also like pandas too.  She takes \
it everywhere with her, and it's super soft and cute.  One of the \
ears is a bit lower than the other, and I don't think that was \
designed to be asymmetrical. It's a bit small for what I paid for it \
though. I think there might be other options that are bigger for \
the same price.  It arrived a day earlier than expected, so I got \
to play with it myself before I gave it to my daughter.
"""
prompt = f"proofread and correct this review: ```{text}```"


from redlines import Redlines

diff = Redlines(text,response)
display(Markdown(diff.output_markdown))
prompt = f"""
proofread and correct this review. Make it more compelling. 
Ensure it follows APA style guide and targets an advanced reader. 
Output in markdown format.
Text: ```{text}```
"""

refer: https://writingprompts.com/bad-grammar-examples/

7. Expanding (expand a shorter text to a longer text)

In this lesson, you will generate customer service emails that are tailored to each customer’s review.

  • Customize the automated reply to a customer email
# given the sentiment from the lesson on "inferring",
# and the original customer message, customize the email
sentiment = "negative"

# review for a blender
review = f"""
So, they still had the 17 piece system on seasonal \
sale for around $49 in the month of November, about \
half off, but for some reason (call it price gouging) \
around the second week of December the prices all went \
up to about anywhere from between $70-$89 for the same \
system. And the 11 piece system went up around $10 or \
so in price also from the earlier sale price of $29. \
So it looks okay, but if you look at the base, the part \
where the blade locks into place doesn’t look as good \
as in previous editions from a few years ago, but I \
plan to be very gentle with it (example, I crush \
very hard items like beans, ice, rice, etc. in the \ 
blender first then pulverize them in the serving size \
I want in the blender then switch to the whipping \
blade for a finer flour, and use the cross cutting blade \
first when making smoothies, then use the flat blade \
if I need them finer/less pulpy). Special tip when making \
smoothies, finely cut and freeze the fruits and \
vegetables (if using spinach-lightly stew soften the \ 
spinach then freeze until ready for use-and if making \
sorbet, use a small to medium sized food processor) \ 
that you plan to use that way you can avoid adding so \
much ice if at all-when making your smoothie. \
After about a year, the motor was making a funny noise. \
I called customer service but the warranty expired \
already, so I had to buy another one. FYI: The overall \
quality has gone done in these types of products, so \
they are kind of counting on brand recognition and \
consumer loyalty to maintain sales. Got it in about \
two days.
"""
prompt = f"""
You are a customer service AI assistant.
Your task is to send an email reply to a valued customer.
Given the customer email delimited by ```, \
Generate a reply to thank the customer for their review.
If the sentiment is positive or neutral, thank them for \
their review.
If the sentiment is negative, apologize and suggest that \
they can reach out to customer service. 
Make sure to use specific details from the review.
Write in a concise and professional tone.
Sign the email as `AI customer agent`.
Customer review: ```{review}```
Review sentiment: {sentiment}
"""
  • Remind the model to use details from the customer’s email
    For tasks that require reliability, predictability. You can set a lower “temprature”.
    For tasks that require variety. You can use a higher “temprature”.

tips: temprature here is a hyperparameter which means randomness of output.

prompt = f"""
You are a customer service AI assistant.
Your task is to send an email reply to a valued customer.
Given the customer email delimited by ```, \
Generate a reply to thank the customer for their review.
If the sentiment is positive or neutral, thank them for \
their review.
If the sentiment is negative, apologize and suggest that \
they can reach out to customer service. 
Make sure to use specific details from the review.
Write in a concise and professional tone.
Sign the email as `AI customer agent`.
Customer review: ```{review}```
Review sentiment: {sentiment}
"""
# request api for ChatGPT, refer to the video tutorial for details 
response = get_completion(prompt, temperature=0.7)
print(response)

8. Chatbots

In this lesson, you will explore how you can utilize the chat format to have extended conversations with chatbots personalized or specialized for specific tasks or behaviors.

This lesson is specific to using the OpenAI API, so I won’t go into too much details. All you need to know is that in order to provide ChatGPT with the chat context, you should append your old prompt to the new prompt.文章来源地址https://www.toymoban.com/news/detail-479623.html

到了这里,关于ChatGPT Prompt Engineering for Developers from DeepLearning.AI的文章就介绍完了。如果您还想了解更多内容,请在右上角搜索TOY模板网以前的文章或继续浏览下面的相关文章,希望大家以后多多支持TOY模板网!

本文来自互联网用户投稿,该文观点仅代表作者本人,不代表本站立场。本站仅提供信息存储空间服务,不拥有所有权,不承担相关法律责任。如若转载,请注明出处: 如若内容造成侵权/违法违规/事实不符,请点击违法举报进行投诉反馈,一经查实,立即删除!

领支付宝红包 赞助服务器费用

相关文章

  • ChatGPT Prompt Engineering for Developers 大语言模型引导词指导手册

    以下内容均整理来自deeplearning.ai的同名课程 L ocation  课程访问地址 https://learn.deeplearning.ai/chatgpt-prompt-eng Principle 1: Write clear and specific instructions 编写清晰明确的指令 Principle 2: Give the model time to “think” 给模型足够的“思考”时间 Principle 1: Write clear and specific instructions 编写清

    2024年02月05日
    浏览(34)
  • Openai+Deeplearning.AI: ChatGPT Prompt Engineering(六)

    想和大家分享一下最近学习的Deeplearning.AI和openai联合打造ChatGPT Prompt Engineering在线课程.以下是我写的关于该课程的前五篇博客: ChatGPT Prompt Engineering(一) ChatGPT Prompt Engineering(二) ChatGPT Prompt Engineering(三) ChatGPT Prompt Engineering(四) ChatGPT Prompt Engineering(五) 今天我们来学习第五部分

    2024年02月07日
    浏览(27)
  • LLM学习《Prompt Engineering for Developer》

    教程地址:https://github.com/datawhalechina/prompt-engineering-for-developers 分割符 :分隔符就像是 Prompt 中的墙,将不同的指令、上下文、输入隔开,避免意外的混淆。你可以选择用 ```,“”\\\", , ,: 等做分隔符,只要能明确起到隔断作用即可。 寻求结构化的输出 。按照某种格式组织

    2024年02月11日
    浏览(27)
  • Openai+Coursera: ChatGPT Prompt Engineering(二)

    这是我写的ChatGPT Prompt Engineerin的第二篇博客,如何还没看过第一篇的请先看我写的第一篇博客: ChatGPT Prompt Engineerin(一) 今天我们的重点关注按特定主题来总结文本。 下面我们来定义一段文本,该文本来自于一个电商网站的客户评论,我们要让ChatGPT来对这段文本进行总结,由

    2024年02月05日
    浏览(25)
  • Openai+Coursera: ChatGPT Prompt Engineering(一)

    今天我学习了DeepLearning.AI的 Prompt Engineering 的在线课程,我想和大家一起分享一下该门课程的一些主要内容。 下面是我们访问大型语言模(LLM)的主要代码: 原则1:写出清晰和具体的说明 ( Write clear and specific instructions ) 原则2:给模型时间“思考” ( Give the model time to “think”

    2024年02月07日
    浏览(28)
  • Prompt工程师指南[应用篇]:Prompt应用、ChatGPT|Midjouney Prompt Engineering

    主题: 与 ChatGPT 对话 Python 笔记本 Topics: ChatGPT介绍 审查对话任务 与ChatGPT对话 Python笔记本 ChatGPT介绍 ChatGPT是OpenAI训练的一种新型模型,可以进行对话交互。该模型经过训练,可以按照提示中的指令,在对话上下文中提供适当的回应。ChatGPT 可以帮助回答问题、建议菜谱、按

    2024年02月04日
    浏览(44)
  • ChatGPT prompt engineering (中文版)笔记 |吴恩达ChatGPT 提示工程

    出处:https://download.csdn.net/download/weixin_45766780/87746321 感谢中文版翻译https://github.com/datawhalechina/prompt-engineering-for-developers/tree/main/content 国内 == 需要对openapi的endpoint做一个反向代理,并修改本地openai包的源代码== 如下图: completion 原则一:编写清晰、具体的指令 你应该通过提供

    2024年02月03日
    浏览(42)
  • 使用 ChatGPT 的 7 个技巧 | Prompt Engineering 学习笔记

    前段时间在 DeepLearning 学了一门大火的 Prompt 的课程,吴恩达本人授课,讲的通俗易懂,感觉受益匪浅,因此在这里总结分享一下我的学习笔记。 为什么要学习 Prompt ? 因为在未来的 AIGC 年代,学习有效的 Promot 提示词有效的利用 AI 来完成一些重复性的工作。这也我认为未来

    2024年02月07日
    浏览(39)
  • 提升ChatGPT性能的实用指南:Prompt Engineering的艺术

    提示工程是一门新兴学科,就像是为大语言模型(LLM)设计的\\\"语言游戏\\\"。通过这个\\\"游戏\\\",我们可以更有效地引导 LLM 来处理问题。只有熟悉了这个游戏的规则,我们才能更清楚地认识到 LLM 的能力和局限。 这个\\\"游戏\\\"不仅帮助我们理解 LLM,它也是提升 LLM 能力的途径。有效

    2024年02月13日
    浏览(24)
  • 【简单入门】ChatGPT prompt engineering (中文版)笔记 |吴恩达ChatGPT 提示工程

    出处:https://download.csdn.net/download/weixin_45766780/87746321 感谢中文版翻译https://github.com/datawhalechina/prompt-engineering-for-developers/tree/main/content 国内 == 需要对openapi的endpoint做一个反向代理,并修改本地openai包的源代码== 如下图: completion 原则一:编写清晰、具体的指令 你应该通过提供

    2024年02月05日
    浏览(37)

觉得文章有用就打赏一下文章作者

支付宝扫一扫打赏

博客赞助

微信扫一扫打赏

请作者喝杯咖啡吧~博客赞助

支付宝扫一扫领取红包,优惠每天领

二维码1

领取红包

二维码2

领红包