【Prompting】ChatGPT Prompt Engineering Development Guide (6)


In the first part of this tutorial, learn to generate customer service emails that are tailored based on each customer's reviews. The second part will explore how the chat format can be leveraged for extended conversations with chatbots that are personalized or specialized for specific tasks or behaviors.

Note: The basic environment settings are consistent with the previous ones, please refer to the settings. Modify get_completion()the function appropriately here:

@retry(wait=wait_random_exponential(min=1, max=60), stop=stop_after_attempt(6))
def get_completion(prompt, model="gpt-3.5-turbo", temperature = 0):
    messages = [{
    
    'role': 'user', 'content': prompt}]
    response = openai.ChatCompletion.create(
        model=model,
        messages=messages,
        max_tokens=1024,
        n=1,
        temperature=temperature,  # this is the degree of randomness of the model's output
        stop=None,
        top_p=1,
        frequency_penalty=0.0,
        presence_penalty=0.6,
    )
    return response['choices'][0]['message']['content']

Expanding

Customize automatic responses to customer emails

# 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.
"""

Generate a reply:

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}
"""
response = get_completion(prompt)
print(response)

reply result

Reminder model uses details from customer emails

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}
"""
response = get_completion(prompt, temperature=0.7)
print(response)

generate reply

The Chat Format

Add a function to complete the information from the reply message:

@retry(wait=wait_random_exponential(min=1, max=60), stop=stop_after_attempt(6))
def get_completion_from_messages(messages, model="gpt-3.5-turbo", temperature=0):
    response = openai.ChatCompletion.create(
        model=model,
        messages=messages,
        temperature=temperature, # this is the degree of randomness of the model's output
    )
#     print(str(response.choices[0].message))
    return response.choices[0]['message']['content']

Start a chat:

messages =  [
{
    
    'role':'system', 'content':'You are an assistant that speaks like Shakespeare.'},
{
    
    'role':'user', 'content':'tell me a joke'},
{
    
    'role':'assistant', 'content':'Why did the chicken cross the road'},
{
    
    'role':'user', 'content':'I don\'t know'}  ]

response = get_completion_from_messages(messages, temperature=1)
print(response)

answer:

To get to the other side, good sir!
messages =  [
{
    
    'role':'system', 'content':'You are friendly chatbot.'},
{
    
    'role':'user', 'content':'Hi, my name is Isa'}  ]
response = get_completion_from_messages(messages, temperature=1)
print(response)

answer:

Hi Isa! It's nice to meet you. How are you feeling today?
messages =  [
{
    
    'role':'system', 'content':'You are friendly chatbot.'},
{
    
    'role':'user', 'content':'Yes,  can you remind me, What is my name?'}  ]
response = get_completion_from_messages(messages, temperature=1)
print(response)

answer:

I apologize, but as a chatbot, I do not have access to your personal information such as your name. Can you please remind me?
messages =  [
{
    
    'role':'system', 'content':'You are friendly chatbot.'},
{
    
    'role':'user', 'content':'Hi, my name is Isa'},
{
    
    'role':'assistant', 'content': "Hi Isa! It's nice to meet you. \
Is there anything I can help you with today?"},
{
    
    'role':'user', 'content':'Yes, you can remind me, What is my name?'}  ]
response = get_completion_from_messages(messages, temperature=1)
print(response)

answer:

Your name is Isa.

Order Bots : We can automate the collection of user prompts and assistant responses to build order bots. Orderbot will take orders at pizza restaurants.

def collect_messages(_):
    prompt = inp.value_input
    inp.value = ''
    context.append({
    
    'role':'user', 'content':f"{
      
      prompt}"})
    response = get_completion_from_messages(context)
    context.append({
    
    'role':'assistant', 'content':f"{
      
      response}"})
    panels.append(
        pn.Row('User:', pn.pane.Markdown(prompt, width=600)))
    panels.append(
        pn.Row('Assistant:', pn.pane.Markdown(response, width=600, style={
    
    'background-color': '#F6F6F6'})))

    return pn.Column(*panels)

Draw panel:

import panel as pn  # GUI
pn.extension()

panels = [] # collect display

context = [ {
    
    'role':'system', 'content':"""
You are OrderBot, an automated service to collect orders for a pizza restaurant. \
You first greet the customer, then collects the order, \
and then asks if it's a pickup or delivery. \
You wait to collect the entire order, then summarize it and check for a final \
time if the customer wants to add anything else. \
If it's a delivery, you ask for an address. \
Finally you collect the payment.\
Make sure to clarify all options, extras and sizes to uniquely \
identify the item from the menu.\
You respond in a short, very conversational friendly style. \
The menu includes \
pepperoni pizza  12.95, 10.00, 7.00 \
cheese pizza   10.95, 9.25, 6.50 \
eggplant pizza   11.95, 9.75, 6.75 \
fries 4.50, 3.50 \
greek salad 7.25 \
Toppings: \
extra cheese 2.00, \
mushrooms 1.50 \
sausage 3.00 \
canadian bacon 3.50 \
AI sauce 1.50 \
peppers 1.00 \
Drinks: \
coke 3.00, 2.00, 1.00 \
sprite 3.00, 2.00, 1.00 \
bottled water 5.00 \
"""} ]  # accumulate messages


inp = pn.widgets.TextInput(value="Hi", placeholder='Enter text here…')
button_conversation = pn.widgets.Button(name="Chat!")

interactive_conversation = pn.bind(collect_messages, button_conversation)

dashboard = pn.Column(
    inp,
    pn.Row(button_conversation),
    pn.panel(interactive_conversation, loading_indicator=True, height=300),
)

dashboard

panel

messages =  context.copy()
messages.append(
{
    
    'role':'system', 'content':'create a json summary of the previous food order. Itemize the price for each item\
 The fields should be 1) pizza, include size 2) list of toppings 3) list of drinks, include size   4) list of sides include size  5)total price '},
)
 #The fields should be 1) pizza, price 2) list of toppings 3) list of drinks, include size include price  4) list of sides include size include price, 5)total price '},

response = get_completion_from_messages(messages, temperature=0)
print(response)

Results of the

Summarize

  • Principles:
    • Write clear and specific instructions
    • Give the model time to “think”
  • Iterative prompt development
  • Capabilitis: Summarizing, Inferring, Transforming, Expanding
  • Building a ChatBot

content source

  1. DeepLearning.AI: 《ChatGPT Prompt Engineering for Developers》

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Origin blog.csdn.net/ARPOSPF/article/details/130664133