当前位置: 首页 > news >正文

有做h的小说网站谷歌商店paypal三件套

有做h的小说网站,谷歌商店paypal三件套,如何建设网站服务器,建立社会主要市场经济体制是在哪一年首次提出的1. 学习背景 在LangChain for LLM应用程序开发中课程中,学习了LangChain框架扩展应用程序开发中语言模型的用例和功能的基本技能,遂做整理为后面的应用做准备。视频地址:基于LangChain的大语言模型应用开发构建和评估高 2. 先准备尝试调用O…

1. 学习背景

在LangChain for LLM应用程序开发中课程中,学习了LangChain框架扩展应用程序开发中语言模型的用例和功能的基本技能,遂做整理为后面的应用做准备。视频地址:基于LangChain的大语言模型应用开发+构建和评估高

2. 先准备尝试调用OpenAI API

本实验基于jupyternotebook进行。

2.1先安装openai包、langchain包

!pip install openai
!pip install langchain

2.2 尝试调用openai包

import openai# 此处需要提前准备好可使用的openai KEY
openai.api_key = "XXXX"
openai.base_url = "XXXX"def get_completion(prompt, model = "gpt-3.5-turbo"):messages = [{"role": "user", "content": prompt}]response = openai.chat.completions.create(model = model,messages = messages,temperature = 0,)return response.choices[0].message.content
get_completion("What is 1+1?")

输出结果:

'1 + 1 equals 2.'

3.尝试用API解决邮件对话问题

3.1 邮件内容和风格

customer_email = """
Arrr, I be fuming that me blender lid \
flew off and splattered me kitchen walls \
with smoothie! And to make matters worse,\
the warranty don't cover the cost of \
cleaning up me kitchen. I need yer help \
right now, matey!
"""style = """American English \
in a calm and respectful tone
"""

3.2 构造成prompt

prompt = f"""Translate the text \
that is delimited by triple backticks \
into a style that is {style}. 
text: ```{customer_email}```
"""
prompt

输出如下:

"Translate the text that is delimited by triple backticks into a style that is American English in a calm and respectful tone\n. \ntext: ```\nArrr, I be fuming that me blender lid flew off and splattered me kitchen walls with smoothie! And to make matters worse,the warranty don't cover the cost of cleaning up me kitchen. I need yer help right now, matey!\n```\n"

3.3 使用上述prompt得到答案

response = get_completion(prompt)
response

输出如下:

'I must express my frustration that my blender lid unexpectedly came off and caused my kitchen walls to be covered in smoothie splatters! And unfortunately, the warranty does not cover the cleaning costs of my kitchen. I kindly request your immediate assistance, my friend.'

4. 尝试用langchain解决

4.1 用langchain调用API

from langchain.chat_models import ChatOpenAI
chat = ChatOpenAI(api_key = "XXXX",base_url = "XXXX",temperature=0.0)
print(chat)

输出如下:

ChatOpenAI(client=<openai.resources.chat.completions.Completions object at 0x7f362ab4f340>, 
async_client=<openai.resources.chat.completions.AsyncCompletions object at 0x7f362aba9d80>, 
temperature=0.0, openai_api_key='sk-gGSeHiJn09Ydl6Q1655eCf128b3a42XXXXXXXXXXXXXX', 
openai_api_base='XXXX', openai_proxy='')

4.2 构造prompt模板

注意和3.2的区别,一个用了f"“”“”“,一个直接”“”“”"。

template_string = """Translate the text \
that is delimited by triple backticks \
into a style that is {style}. \
text: ```{text}```
"""customer_style = """American English in a calm and respectful tone"""customer_email = """
Arrr, I be fuming that me blender lid \
flew off and splattered me kitchen walls \
with smoothie! And to make matters worse, \
the warranty don't cover the cost of \
cleaning up me kitchen. I need yer help \
right now, matey!
"""

4.3 调用ChatPromptTemplate

from langchain.prompts import ChatPromptTemplate
# 将构造的prompt模板化
prompt_template = ChatPromptTemplate.from_template(template_string)
# 模板中的占位符填充的参数
customer_messages = prompt_template.format_messages(style = customer_style,text = customer_email
)
print(type(customer_messages))
print(customer_messages[0])

输出如下:

<class 'list'>
content="Translate the text that is delimited by triple backticks into a style that is American English in a calm and respectful tone\n. text: ```\nArrr, I be fuming that me blender lid flew off and splattered me kitchen walls with smoothie! And to make matters worse, the warranty don't cover the cost of cleaning up me kitchen. I need yer help right now, matey!\n```\n"

4.4 使用LLM解决问题

# Call the LLM to translate to the style of the customer message
customer_response = chat(customer_messages)
print(customer_response.content)

输出如下:

Oh man, I 'm really frustrated that my blender lid flew off and made a mess of my kitchen walls with smoothie! And on top of that, the warranty doesn't cover the cost of cleaning up my kitchen. I could really use your help right now, buddy!

5. 调用langchain对邮件回复

5.1定义回复的prompt

service_reply = """Hey there customer, \
the warranty does not cover \
cleaning expenses for your kitchen \
because it's your fault that \
you misused your blender \
by forgetting to put the lid on before \
starting the blender. \
Tough luck! See ya!
"""service_style_pirate = """\
a polite tone \
that speaks in English Pirate\
"""# 继续使用前面定义的prompt_template,占位符用参数填充
service_messages = prompt_template.format_messages(style = service_style_pirate,text = service_reply)print(service_messages[0].content)

输出如下:

Translate the text that is delimited by triple backticks into a style that is a polite tone that speaks in English Pirate. 
text: ```
Hey there customer, the warranty does not cover cleaning expenses for your kitchen because it's your fault that you misused your blender by forgetting to put the lid on before starting the blender. Tough luck! See ya!```

5.2 使用LLM解决问题

service_response = chat(service_messages)
print(service_response.content)

输出如下:

Ahoy there, me heartie! Unfortunately, the warranty be not coverin' the cost of cleanin' yer kitchen, as tis yer own fault for misusin' yer blender by forgettin' to put on the lid afore startin' the blendin'. Aye, 'tis a tough break indeed! Fare thee well, matey!

至此我们就完成了使用langchain去实现prompt的构造、转换和调用。

6. 用langchain转化回答为JSON格式

6.1 构造模板

# 顾客对产品的评论
customer_review = """\
This leaf blower is pretty amazing.  It has four settings:\
candle blower, gentle breeze, windy city, and tornado. \
It arrived in two days, just in time for my wife's \
anniversary present. \
I think my wife liked it so much she was speechless. \
So far I've been the only one using it, and I've been \
using it every other morning to clear the leaves on our lawn. \
It's slightly more expensive than the other leaf blowers \
out there, but I think it's worth it for the extra features.
"""# 顾客意见形成模板
review_template = """\
For the following text, extract the following information:gift: Was the item purchased as a gift for someone else? \
Answer True if yes, False if not or unknown.delivery_days: How many days did it take for the product \
to arrive? If this information is not found, output -1.price_value: Extract any sentences about the value or price,\
and output them as a comma separated Python list.Format the output as JSON with the following keys:
gift
delivery_days
price_valuetext: {text}
"""from langchain.prompts import ChatPromptTemplate
# 构造模板,占位符信息用prompt填充
prompt_template = ChatPromptTemplate.from_template(review_template)
messages = prompt_template.format_messages(text=customer_review)
# 调用LLM,输入为prompt
response = chat(messages)
print(response.content)

输出如下:

{"gift": true,"delivery_days": 2,"price_value": "It's slightly more expensive than the other leaf blowers out there, but I think it's worth it for the extra features."
}

6.2 构造合适的prompt

print(type(response.content))

输出如下:

str

可以看到输出内容是字符串类型的,为了方便处理数据,我们需要的是JSON格式,因此还需要进行转化。

from langchain.output_parsers import ResponseSchema
from langchain.output_parsers import StructuredOutputParsergift_schema = ResponseSchema(name="gift",  description="Was the item purchased as a gift for someone else? Answer True if yes, False if not or unknown.")
delivery_days_schema = ResponseSchema(name="delivery_days", description="How many days did it take for the product to arrive? If this information \is not found, output -1.")
price_value_schema = ResponseSchema(name="price_value", description="Extract any sentences about the value or price, and output them as a comma \separated Python list.")response_schemas = [gift_schema, delivery_days_schema,price_value_schema]
# 构造转换器
output_parser = StructuredOutputParser.from_response_schemas(response_schemas)
format_instructions = output_parser.get_format_instructions()
print(format_instructions)

输出如下:

The output should be a markdown code snippet formatted in the following schema, including the leading and trailing "```json" and "```":```json
{"gift": string  // Was the item purchased as a gift for someone else? Answer True if yes, False if not or unknown."delivery_days": string  // How many days did it take for the product to arrive? If this information                                       is not found, output -1."price_value": string  // Extract any sentences about the value or price, and output them as a comma                                     separated Python list.
}```

LLM会根据构造的prompt进行回答,生成最终的回答结果。接着构造完整的prompt:

review_template_2 = """\
For the following text, extract the following information:gift: Was the item purchased as a gift for someone else? \
Answer True if yes, False if not or unknown.delivery_days: How many days did it take for the product\
to arrive? If this information is not found, output -1.price_value: Extract any sentences about the value or price,\
and output them as a comma separated Python list.text: {text}{format_instructions}
"""prompt = ChatPromptTemplate.from_template(template=review_template_2)
messages = prompt.format_messages(text=customer_review, format_instructions=format_instructions)
print(messages[0].content)

输出如下:

For the following text, extract the following information:gift: Was the item purchased as a gift for someone else? Answer True if yes, False if not or unknown.delivery_days: How many days did it take for the productto arrive? If this information is not found, output -1.price_value: Extract any sentences about the value or price,and output them as a comma separated Python list.text: This leaf blower is pretty amazing.  It has four settings:candle blower, gentle breeze, windy city, and tornado. It arrived in two days, just in time for my wife's anniversary present. I think my wife liked it so much she was speechless. So far I've been the only one using it, and I've been using it every other morning to clear the leaves on our lawn. It's slightly more expensive than the other leaf blowers out there, but I think it's worth it for the extra features.The output should be a markdown code snippet formatted in the following schema, including the leading and trailing "```json" and "```":```json
{"gift": string  // Was the item purchased as a gift for someone else? Answer True if yes, False if not or unknown."delivery_days": string  // How many days did it take for the product to arrive? If this information                                       is not found, output -1."price_value": string  // Extract any sentences about the value or price, and output them as a comma                                     separated Python list.
}```

6.3 使用LLM解决问题

response = chat(messages)
print(response.content)

输出如下:

```json
{"gift": "True","delivery_days": "2","price_value": "It's slightly more expensive than the other leaf blowers out there, but I think it's worth it for the extra features."
}```

进行格式转换

output_dict = output_parser.parse(response.content)
print(output_dict)

输出如下:

{'gift': 'True', 'delivery_days': '2', 'price_value': "It's slightly more expensive than the other leaf blowers out there, but I think it's worth it for the extra features."}

接下来查看输出类型:

type(output_dict)

输出如下:

dict

接下来就可以愉快的使用输出数据了。

总的来说,langchain对于格式化输出和prompt构造拥有较好的效果,可以很好使用。

http://www.dinnco.com/news/58898.html

相关文章:

  • 用dw做网站图片的基本尺寸网站免费推广网站
  • 北京各大网站推广平台哪家好站长全网指数查询
  • wordpress 刷新 link企业网站关键词优化
  • wordpress后台添加底部菜单青岛seo精灵
  • 专业建站提供商首页关键词排名代发
  • 南充做网站电话web3域名注册
  • 做网站负责人风险google google
  • 武汉ui设计公司温州seo公司
  • 做网站时管理员权限的页面北京广告公司
  • 网站建设京icp备新网
  • 注册资金必须实缴吗广东seo推广外包
  • 商会网站制作互联网推广软件
  • 南宁营销型网站专家seo推广思路
  • 网站建设报价表下载百度灰色关键词代发
  • 北京做网站开发的公司小说排行榜
  • 网站搭建赚钱吗弹窗广告最多的网站
  • 刷网站跳出率seo优化排名价格
  • 建设网站设计微信营销软件免费版
  • 厦门市建设工程造价网站首页广告推广接单平台
  • 网站建设需要什么格式的图片谷歌推广怎么做最有效
  • 新手怎样做网站推广seo是搜索引擎营销吗
  • 做 爱 网站小视频安卓优化大师官方版本下载
  • 嘉兴网站建设的地方广告平台推广渠道
  • 个人做网站名称可以随意更改吗24小时人工在线客服
  • 网站建设平台对比太原seo网站排名
  • 云南省建设厅专家注册网站小红书推广引流软件
  • 网站建设公司如何生存百度的推广方式有哪些
  • 电商网站建设基础ppt网站seo优化案例
  • 做百科需要用什么网站做参考百度推广入口官网
  • 二次开发英语北京专业网站优化