Features
- Automatic Function/Method Call Tracing: Automatically records the flow of synchronous/asynchronous functions and classes with a single
@trace
decorator.
- Rich Colors and Tree-Structured Logs: Enhances readability with color and indentation based on call depth.
- Multiple Log Levels Supported: DEBUG, INFO, WARNING, ERROR, CRITICAL.
- Set Log Level via CLI: Manage and store
HUNT_LEVEL
in a .env
file.
- Optimized for AI Workflows: Easily trace code generated by AI.
- Detailed Exception Information: Includes call arguments, location, and stack trace on exceptions.
Installation
Install with pip
pip install pyhunt
Install with uv
uv add pyhunt
Quick Start
1. Set Up and Manage Environment Variable File
You can set up and manage the .env
file by running the hunt
command.
hunt
Executing the above command sets HUNT_LEVEL=DEBUG
and ROOT_DIR
to the current directory in the .env
file.
2. Apply @trace
to Functions or Classes
See more examples in the examples folder.
Basic Example
from pyhunt import trace
@trace
def test(value):
return value
Asynchronous Function
@trace
async def test(value):
return value
Class
@trace
class MyClass:
def first_method(self, value):
return value
def second_method(self, value):
return value
Using with AI
Rule Setup
Add the following rules to .cursorrules
, .clinerules
, or .roorules
:
<logging-rules>
**Import:** Import the decorator with `from pyhunt import trace`.
**Tracing:** Use the `@trace` decorator to automatically log function calls and execution times.
**Avoid `print()`:** Do not use the `print()` function.
**Exception Handling:** Use `try`/`except Exception as e: raise e` blocks to maintain traceback.
</logging-rules>
Modifying Existing Codebase
Prompt: "Modify the code according to the logging rules."
Logger Usage
The logger
interface is recommended for use only in important sections.
Most actions are traced via @trace
, and excessive use may reduce readability.
from pyhunt import logger
logger.debug("This is a debug log.")
logger.info("This is an info log.")
logger.warning("This is a warning log.")
logger.error("This is an error log.")
logger.critical("This is a critical log.")
CLI Usage
You can manage log levels and other settings using the hunt
command.
hunt [options]
Supported Options
--debug
: DEBUG level (most detailed)
--info
: INFO level
--warning
: WARNING level
--error
: ERROR level
--critical
: CRITICAL level
--root
: Sets the ROOT_DIR
environment variable to the current directory.
--repeat <count>
: Sets the HUNT_MAX_REPEAT
environment variable to the specified count. (Log repetition limit)
If no option is specified, the default is DEBUG
.
Environment Variables
pyhunt
supports the following environment variables through the .env
file:
HUNT_LEVEL
: Sets the log level (DEBUG, INFO, WARNING, ERROR, CRITICAL). Default is DEBUG
.
HUNT_MAX_REPEAT
: The number of times the same log is displayed when repeated. Default is 3.
ELAPSED
: Sets whether to display function execution time in logs (True
or False
). Default is True
.
ROOT_DIR
: Sets the base directory for log output. Displays paths more accurately.