Metadata-Version: 2.4
Name: cachify
Version: 0.3.4
Summary: A simple cache library with sync/async support, Memory and Redis backend
License: MIT
License-File: LICENSE
Keywords: cachify,cache,caching,redis,async,decorator,memoization
Author: dynalz
Author-email: git@pulsar.finance
Requires-Python: >=3.10,<3.15
Classifier: Development Status :: 4 - Beta
Classifier: Intended Audience :: Developers
Classifier: License :: OSI Approved :: MIT License
Classifier: Programming Language :: Python :: 3
Classifier: Programming Language :: Python :: 3.10
Classifier: Programming Language :: Python :: 3.11
Classifier: Programming Language :: Python :: 3.12
Classifier: Programming Language :: Python :: 3.13
Classifier: Programming Language :: Python :: 3.14
Classifier: Topic :: Software Development :: Libraries :: Python Modules
Classifier: Typing :: Typed
Requires-Dist: redis[hiredis] (>5.0.0)
Project-URL: Homepage, https://github.com/PulsarDataSolutions/cachify
Project-URL: Repository, https://github.com/PulsarDataSolutions/cachify
Description-Content-Type: text/markdown

# Python Cachify Library

A simple and robust caching library for Python functions, supporting both synchronous and asynchronous code.

## Table of Contents

- [Features](#features)
- [Installation](#installation)
- [Usage](#usage)
  - [Basic Usage](#basic-usage)
  - [Redis Cache](#redis-cache)
  - [Never Die Cache](#never-die-cache)
  - [Skip Cache](#skip-cache)
- [Testing](#testing)
- [Contributing](#contributing)
- [License](#license)

## Features

- Cache function results based on function ID and arguments
- Supports both synchronous and asynchronous functions
- Thread-safe locking to prevent duplicate cached function calls
- Configurable Time-To-Live (TTL) for cached items
- "Never Die" mode for functions that should keep cache refreshed automatically
- Skip cache functionality to force fresh function execution while updating cache
- Redis cache for distributed caching across multiple processes/machines

## Installation

```bash
# Using pip
pip install cachify

# Using poetry
poetry add cachify

# Using uv
uv add cachify
```

## Usage

### Basic Usage

```python
from cachify import cache

# Cache function in sync functions
@cache(ttl=60)  # ttl in seconds
def expensive_calculation(a, b):
    # Some expensive operation
    return a + b

# And async functions
@cache(ttl=3600)  # ttl in seconds
async def another_calculation(url):
    # Some expensive IO call
    return await httpx.get(url).json()
```

### Decorator Parameters

| Parameter        | Type            | Default | Description                                                    |
| ---------------- | --------------- | ------- | -------------------------------------------------------------- |
| `ttl`            | `int \| float`  | `300`   | Time to live for cached items in seconds                       |
| `never_die`      | `bool`          | `False` | If True, cache refreshes automatically in background           |
| `cache_key_func` | `Callable`      | `None`  | Custom function to generate cache keys                         |
| `ignore_fields`  | `Sequence[str]` | `()`    | Function parameters to exclude from cache key                  |
| `no_self`        | `bool`          | `False` | If True, ignores the first parameter (usually `self` or `cls`) |

### Custom Cache Key Function

Use `cache_key_func` when you need custom control over how cache keys are generated:

```python
from cachify import cache

def custom_key(args: tuple, kwargs: dict) -> str:
    user_id = kwargs.get("user_id") or args[0]
    return f"user:{user_id}"

@cache(ttl=60, cache_key_func=custom_key)
def get_user_profile(user_id: int):
    return fetch_from_database(user_id)
```

### Ignore Fields

Use `ignore_fields` to exclude specific parameters from the cache key. Useful when some arguments don't affect the result:

```python
from cachify import cache

@cache(ttl=300, ignore_fields=("logger", "request_id"))
def fetch_data(query: str, logger: Logger, request_id: str):
    # Cache key only uses 'query', ignoring logger and request_id
    logger.info(f"Fetching data for request {request_id}")
    return database.execute(query)
```

### Redis Cache

For distributed caching across multiple processes or machines, use `rcache`:

```python
import redis
from cachify import setup_redis_config, rcache

# Configure Redis (call once at startup)
setup_redis_config(
    sync_client=redis.from_url("redis://localhost:6379/0"),
    key_prefix="{myapp}",       # default: "{cachify}", prefix searchable on redis "PREFIX:*"
    lock_timeout=10,          # default: 10, maximum lock lifetime in seconds
    on_error="silent",        # "silent" (default) or "raise" in case of redis errors
)

@rcache(ttl=300)
def get_user(user_id: int) -> dict:
    return fetch_from_database(user_id)

# Async version
import redis.asyncio as aredis

setup_redis_config(async_client=aredis.from_url("redis://localhost:6379/0"))

@rcache(ttl=300)
async def get_user_async(user_id: int) -> dict:
    return await fetch_from_database(user_id)
```

### Never Die Cache

The `never_die` feature ensures that cached values never expire by automatically refreshing them in the background:

```python
# Cache with never_die (automatic refresh)
@cache(ttl=300, never_die=True)
def critical_operation(data_id: str):
    # Expensive operation that should always be available from cache
    return fetch_data_from_database(data_id)
```

**How Never Die Works:**

1. When a function with `never_die=True` is first called, the result is cached
2. A background thread monitors all `never_die` functions
3. On cache expiration (TTL), the function is automatically called again
4. The cache is updated with the new result
5. If the refresh operation fails, the existing cached value is preserved
6. Clients always get fast response times by reading from cache

**Benefits:**

- Cache is always "warm" and ready to serve
- No user request ever has to wait for the expensive operation
- If a dependency service from the cached function goes down temporarily, the last successful result is still available
- Perfect for critical operations where latency must be minimized

### Skip Cache

The `skip_cache` feature allows you to bypass reading from cache while still updating it with fresh results:

```python
@cache(ttl=300)
def get_user_data(user_id):
    # Expensive operation to fetch user data
    return fetch_from_database(user_id)

# Normal call - uses cache if available
user = get_user_data(123)
# Force fresh execution while updating cache
fresh_user = get_user_data(123, skip_cache=True)
# Next normal call will get the updated cached value
updated_user = get_user_data(123)
```

**How Skip Cache Works:**

1. When `skip_cache=True` is passed, the function bypasses reading from cache
2. The function executes normally and returns fresh results
3. The fresh result is stored in the cache, updating any existing cached value
4. Subsequent calls without `skip_cache=True` will use the updated cached value
5. The TTL timer resets from when the cache last was updated

**Benefits:**

- Force refresh of potentially stale data while keeping cache warm
- Ensuring fresh data for critical operations while maintaining cache for other calls

## Testing

Run the test scripts

```bash
poetry run python -m pytest
```

## Contributing

Contributions are welcome! Feel free to open an issue or submit a pull request.

## License

This project is licensed under the MIT License - see the [LICENSE](https://github.com/PulsarDataSolutions/cachify/blob/master/LICENSE) file for details.

