Security News
Research
Data Theft Repackaged: A Case Study in Malicious Wrapper Packages on npm
The Socket Research Team breaks down a malicious wrapper package that uses obfuscation to harvest credentials and exfiltrate sensitive data.
pip install funcchain
funcchain
is the most pythonic way of writing cognitive systems. Leveraging pydantic models as output schemas combined with langchain in the backend allows for a seamless integration of llms into your apps.
It utilizes OpenAI Functions or LlamaCpp grammars (json-schema-mode) for efficient structured output.
In the backend it compiles the funcchain syntax into langchain runnables so you can easily invoke, stream or batch process your pipelines.
from funcchain import chain
from pydantic import BaseModel
# define your output shape
class Recipe(BaseModel):
ingredients: list[str]
instructions: list[str]
duration: int
# write prompts utilising all native python features
def generate_recipe(topic: str) -> Recipe:
"""
Generate a recipe for a given topic.
"""
return chain() # <- this is doing all the magic
# generate llm response
recipe = generate_recipe("christmas dinner")
# recipe is automatically converted as pydantic model
print(recipe.ingredients)
from pydantic import BaseModel, Field
from funcchain import chain
# define nested models
class Item(BaseModel):
name: str = Field(description="Name of the item")
description: str = Field(description="Description of the item")
keywords: list[str] = Field(description="Keywords for the item")
class ShoppingList(BaseModel):
items: list[Item]
store: str = Field(description="The store to buy the items from")
class TodoList(BaseModel):
todos: list[Item]
urgency: int = Field(description="The urgency of all tasks (1-10)")
# support for union types
def extract_list(user_input: str) -> TodoList | ShoppingList:
"""
The user input is either a shopping List or a todo list.
"""
return chain()
# the model will choose the output type automatically
lst = extract_list(
input("Enter your list: ")
)
# custom handler based on type
match lst:
case ShoppingList(items=items, store=store):
print("Here is your Shopping List: ")
for item in items:
print(f"{item.name}: {item.description}")
print(f"You need to go to: {store}")
case TodoList(todos=todos, urgency=urgency):
print("Here is your Todo List: ")
for item in todos:
print(f"{item.name}: {item.description}")
print(f"Urgency: {urgency}")
from funcchain import Image
from pydantic import BaseModel, Field
from funcchain import chain, settings
# set global llm using model identifiers (see MODELS.md)
settings.llm = "openai/gpt-4-vision-preview"
# everything defined is part of the prompt
class AnalysisResult(BaseModel):
"""The result of an image analysis."""
theme: str = Field(description="The theme of the image")
description: str = Field(description="A description of the image")
objects: list[str] = Field(description="A list of objects found in the image")
# easy use of images as input with structured output
def analyse_image(image: Image) -> AnalysisResult:
"""
Analyse the image and extract its
theme, description and objects.
"""
return chain()
result = analyse_image(Image.open("examples/assets/old_chinese_temple.jpg"))
print("Theme:", result.theme)
print("Description:", result.description)
for obj in result.objects:
print("Found this object:", obj)
from pydantic import BaseModel, Field
from funcchain import chain, settings
# auto-download the model from huggingface
settings.llm = "ollama/openchat"
class SentimentAnalysis(BaseModel):
analysis: str
sentiment: bool = Field(description="True for Happy, False for Sad")
def analyze(text: str) -> SentimentAnalysis:
"""
Determines the sentiment of the text.
"""
return chain()
# generates using the local model
poem = analyze("I really like when my dog does a trick!")
# promised structured output (for local models!)
print(poem.analysis)
Also highly recommend to try and run the examples in the ./examples
folder.
You want to contribute? Thanks, that's great! For more information checkout the Contributing Guide. Please run the dev setup to get started:
git clone https://github.com/shroominic/funcchain.git && cd funcchain
./dev_setup.sh
FAQs
🔖 write prompts as python functions
We found that funcchain demonstrated a healthy version release cadence and project activity because the last version was released less than a year ago. It has 1 open source maintainer collaborating on the project.
Did you know?
Socket for GitHub automatically highlights issues in each pull request and monitors the health of all your open source dependencies. Discover the contents of your packages and block harmful activity before you install or update your dependencies.
Security News
Research
The Socket Research Team breaks down a malicious wrapper package that uses obfuscation to harvest credentials and exfiltrate sensitive data.
Research
Security News
Attackers used a malicious npm package typosquatting a popular ESLint plugin to steal sensitive data, execute commands, and exploit developer systems.
Security News
The Ultralytics' PyPI Package was compromised four times in one weekend through GitHub Actions cache poisoning and failure to rotate previously compromised API tokens.