Wrapper library for openai to send events to the Imaginary Programming monitor
Project description
Imaginary Dev OpenAI wrapper
Wrapper library for openai to send events to the Imaginary Programming monitor
Features
- Patches the openai library to allow user to set an ip_api_key and ip_prompt_template_name for each request
- Works out of the box with langchain
Get Started
To send events to Imaginary Programming, you'll need to create a project. From the project you'll need two things:
- API key: (
api_key
) This is generated for the project and is used to identify the project and environment (dev, staging, prod) that the event is coming from. - Template Name: (
prompt_template_name
) This uniquely identifies a particular prompt that you are using. This allows projects to have multiple prompts. You do not need to generate this in advance: if the Template Name does not exist, then it will be created automatically. This can be in any format but we recommend using a dash-separated format, e.g.my-prompt-name
.
Note: if you don't pass in an Template Name, new revisions of the same prompt will show up as different prompt templates in Templatest.
OpenAI
You can use the patched_openai
context manager to patch your code that uses
the existing OpenAI client library:
To allow our tools to separate the "prompt" from the "prompt parameters", use TemplateChat
and TemplateText
to create templates.
Use TemplateChat
For the ChatCompletion APIs:
from im_openai import patched_openai, TemplateChat
with patched_openai(api_key="...", prompt_template_name="sport-emoji"):
import openai
completion = openai.ChatCompletion.create(
# Standard OpenAI parameters
model="gpt-3.5-turbo",
messages=TemplateChat(
[{"role": "user", "content": "Show me an emoji that matches the sport: {sport}"}],
{"sport": "soccer"},
),
)
Use TemplateText
for the Completion API:
from im_openai import patched_openai, TemplateText
with patched_openai(api_key="...", prompt_template_name="sport-emoji"):
import openai
completion = openai.Completion.create(
# Standard OpenAI parameters
model="text-davinci-003",
prompt=TemplateText("Show me an emoji that matches the sport: {sport}", {"sport": "soccer"}),
)
Advanced usage
Patching at startup
Rather than using a context manager, you can patch the library once at startup:
from im_openai import patch_openai
patch_openai(api_key="...", prompt_template_name="...")
Then, you can use the patched library as normal:
import openai
completion = openai.ChatCompletion.create(
# Standard OpenAI parameters
...)
Manually passing parameters
While the use of TemplateText
and TemplateChat
are preferred, Most of the parameters passed during patch can also be passed directly to the create()
, with an ip_
prefix.
from im_openai import patch_openai
patch_openai()
completion = openai.ChatCompletion.create(
model="gpt-3.5-turbo",
# Note we are passing the raw chat object here
messages=[{"role": "user", "content": "Show me an emoji that matches the sport: soccer"}],
# call configuration
ip_api_key="...",
ip_prompt_template_name="sport-emoji",
# Here the prompt and parameters is passed seperately
ip_template_params={"sport": "soccer"},
ip_template_chat=[
{"role": "user", "content": "Show me an emoji that matches the sport: {sport}"}
],
)
Langchain
For langchain, you can directly patch, or use a context manager before setting up a chain:
Using a context manager: (recommended)
from langchain import LLMChain, PromptTemplate, OpenAI
from im_openai.langchain import prompt_watch_tracing
with prompt_watch_tracing(api_key="4b2a6608-86cd-4819-aba6-479f9edd8bfb", prompt_template_name="sport-emoji"):
chain = LLMChain(llm=OpenAI(),
prompt=PromptTemplate.from_template("What is the capital of {country}?"))
capital = chain.run({"country": "Sweden"})
The api_key
parameter is visible from your project's settings page.
the prompt_template_name parameter can also be passed directly to a template when you create it, so that it can be tracked separately from other templates:
from langchain import OpenAI, PromptTemplate, LLMChain
from im_openai.langchain import prompt_watch_tracing
# The default prompt_template_name is "default-questions"
with prompt_watch_tracing(api_key="4b2a6608-86cd-4819-aba6-479f9edd8bfb", prompt_template_name="default-questions"):
prompt = PromptTemplate.from_template("""
Please answer the following question: {question}.
""")
llm = LLMChain(prompt=prompt, llm=OpenAI())
llm.run(question="What is the meaning of life?")
# Track user greetings separately under the `user-greeting` api name
greeting_prompt = PromptTemplate.from_template("""
Please greet our newest forum member, {user}.
Be nice and enthusiastic but not overwhelming.
""",
additional_kwargs={"ip_prompt_template_name": "user-greeting"})
llm = LLMChain(prompt=greeting_prompt, llm=OpenAI(openai_api_key=...))
llm.run(user="Bob")
Advanced usage
You can patch directly:
from im_openai.langchain import enable_prompt_watch_tracing, disable_prompt_watch_tracing
old_tracer = enable_prompt_watch_tracing(api_key="4b2a6608-86cd-4819-aba6-479f9edd8bfb", prompt_template_name="sport-emoji")
prompt = PromptTemplate.from_template("""
Please answer the following question: {question}.
""")
llm = LLMChain(prompt=prompt, llm=OpenAI())
llm.run(question="What is the meaning of life?")
# Track user greetings separately under the `user-greeting` api name
greeting_prompt = PromptTemplate.from_template("""
Please greet our newest forum member, {user}. Be nice and enthusiastic but not overwhelming.
""",
additional_kwargs={"ip_prompt_template_name": "user-greeting"})
llm = LLMChain(prompt=greeting_prompt, llm=OpenAI(openai_api_key=...))
llm.run(user="Bob")
# optional, if you need to disable tracing later
disable_prompt_watch_tracing(old_tracer)
Additional Parameters
The following parameters are available in both the patched OpenAI client and the Langchain wrapper.
- For OpenAI, pass these to the
create()
methods. - For Langchain, pass these to the
prompt_watch_tracing()
context manager or theenable_prompt_watch_tracing()
function.
Parameters:
chat_id
/ip_chat_id
: The id of a "chat session" - if the chat API is being used in a conversational context, then the same chat id can be provided so that the events are grouped together, in order. If not provided, this will be left blank.only_named_prompts
: When passed topatched_openai()
orpatch_openai()
, this will only send events for prompts that have a name. This is useful if you have a mix of prompts you want to track and prompts you don't want to track.
OpenAI-only parameters:
These parameters can only be passed to the create()
methods of the patched OpenAI client.
-
ip_template_chat
: The chat template to record for chat requests. This is a list of dictionaries with the following keys:role
: The role of the speaker. Either"system"
,"user"
or"ai"
.content
: The content of the message. This can be a string or a template string with{}
placeholders.
For example:
completion = openai.ChatCompletion.create( ..., ip_template_chat=[ {"role": "ai", "content": "Hello, I'm {system_name}!"}, {"role": "user", "content": "Hi {system_name}, I'm {user_name}!"} ])
To represent an array of chat messages, use the artificial role
"chat_history"
withcontent
set to the variable name in substitution format:[{"role": "chat_history", "content": "{prev_messages}"}}]
-
ip_template_text
: The text template to record for completion requests. This is a string or a template string with{}
placeholders,For example:
completion = openai.Completion.create( ..., ip_template_text="Please welcome the user to {system_name}!")
-
ip_template_params
: The parameters to use for template strings. This is a dictionary of key-value pairs.For example:
completion = openai.Completion.create( ..., ip_template_text="Please welcome the user to {system_name}!"), ip_template_params={"system_name": "Awesome Comics Incorporated"})
-
ip_event_id
: A unique UUID for a specific call. If not provided, one will be generated. Note: In the langchain wrapper, this value is inferred from the chainrun_id
.For example:
import uuid completion = openai.Completion.create( ..., ip_event_id=uuid.uuid4())
-
ip_parent_event_id
: The UUID of the parent event. All calls with the same parent id are grouped as a "Run Group". Note: In the langchain wrapper, this value is inferred from the chainparent_run_id
.For example:
import uuid parent_id = uuid.uuid4() # First call in the run group completion = openai.Completion.create( ..., ip_parent_event_id=parent_id) # Another call in the same group completion = openai.Completion.create( ..., ip_parent_event_id=parent_id)
Sending Feedback
Sometimes the answer provided by the LLM is not ideal, and your users may be able to help you find better responses. There are a few common cases:
- You might use the LLM to suggest the title of a news article, but let the user edit it. If they change the title, you can send feedback to Templatest that the answer was not ideal.
- You might provide a chatbot that answers questions, and the user can rate the
answers with a thumbs up (good) or thumbs down (bad).
You can send this feedback to Tepmlatest by calling send_feedback()
. This will
send a feedback event to Templatest about a prompt that was previously called, and
let you review this feedback in the Templatest dashboard. You can use this
feedback to develop new tests and improve your prompts.
from im_openai import patch_openai, client
patch_openai()
completion = openai.ChatCompletion.create(
...)
# Maybe the user didn't like the answer, so ask them for a better one.
better_response = askUserForBetterResult(completion["choices"][0]["text"])
# If the user provided a better answer, send feedback to Templatest
if better_response !== completion["choices"][0]["text"]:
# feedback key is automatically injected into OpenAI response object.
feedback_key = completion.ip_feedback_key
client.send_feedback(
api_key=api_key,
feedback_key=feedback_key,
# Better answer from the user
better_response=better_response,
# Rating of existing answer, from 0 to 1
rating=0.2)
Note that feedback can include either rating
, better_response
, or both.
Parameters:
rating
- a value from 0 (meaning the result was completely wrong) to 1 (meaning the result was correct)better_response
- the better response from the user
Credits
This package was created with Cookiecutter* and the audreyr/cookiecutter-pypackage
* project template.
.. _Cookiecutter: https://github.com/audreyr/cookiecutter
.. _audreyr/cookiecutter-pypackage
: https://github.com/audreyr/cookiecutter-pypackage
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