Metadata-Version: 2.1
Name: python-worker
Version: 2.2.1
Summary: Simplify and master control (run and stop) the python threads (workers)
Home-page: https://github.com/Danangjoyoo/python-worker
Author: danangjoyoo (Agus Danangjoyo)
Author-email: <agus.danangjoyo.blog@gmail.com>
Keywords: python,threading,worker,async worker,async thread,abort thread,thread stopper,thread manager,simple thread,thread monitor
Classifier: Development Status :: 5 - Production/Stable
Classifier: Intended Audience :: Developers
Classifier: Programming Language :: Python :: 3
Classifier: Operating System :: Unix
Classifier: Operating System :: MacOS :: MacOS X
Classifier: Operating System :: Microsoft :: Windows
Description-Content-Type: text/markdown
Requires-Dist: keyboard

# python-worker
[![Downloads](https://static.pepy.tech/personalized-badge/python-worker?period=total&units=international_system&left_color=black&right_color=orange&left_text=Downloads)](https://pepy.tech/project/python-worker)

---
## Description
A package to simplify the thread declaration directly either by using decorator or pass it through function. It also allows you to stop the running thread (worker) from any layer

---

## Installation
```
pip install python-worker
```

---

## Changelogs
- v1.8:
  - Refactoring codes
  - flexible `worker` declaration
- v1.9:
  - Added Asynchronous Worker for coroutine function using `@async_worker` decorator
- v1.10:
  - Added `overload` typehints for `worker` and `async_worker`
  - Added `restart` feature for worker
- v2.0:
  - Added `process` worker to enable run your function in different GIL (Global Interpreter Lock) which could give you a performance boost
- v2.2:
  - Added `async_process` worker to enable run your async function / coroutine in different GIL (Global Interpreter Lock) which could give you a performance boost


---
## Basic Guide
`@worker` will define a function as a thread object once it run

```
import time
from worker import worker

@worker
def go(n, sleepDur):
    for i in range(n):
      time.sleep(sleepDur)
    print('done')

go(100, 0.1)
```
The function `go` will be running as a thread

---

## Asynchronous Guide
Well, if you have a coroutine function you can use `async_worker` instead
```
import asyncio
from worker import async_worker

@async_worker
async def go():
    print("this is inside coroutine!")
    for i in range(10):
        time.sleep(0.5)
        print(i)
    print("done!")
    return "result!"

go_worker = asyncio.run(go())
```

or run it as a process
```
import asyncio
from worker import async_process

@async_process
async def go():
    print("this is inside coroutine!")
    for i in range(10):
        time.sleep(0.5)
        print(i)
    print("done!")
    return "result!"

go_worker = asyncio.run(go())
```

---

## Process Guide
A new feature called `process` is simply putting your worker on different GIL (Global Interpreter Lock) which could give you a performance boost.
It's implementing `multiprocessing` instead of `multithreading` which at this stage is achieving the true form of `parallelism` which is run in different environment with your function call environment

```
import time
import os
from worker import process

@process
def go(n, sleepDur):
    for i in range(n):
        time.sleep(sleepDur)
    print('done')

go(100, 0.1)
```
your function `go` will run in different process.

To check it, you can just print out the `os.getpid()`
```
import os
from worker import worker, process

@worker(multiproc=True)
def run_in_new_process_from_worker(parent_pid):
    print(f"from {parent_pid} running in a new process {os.getpid()} - from worker.mutliproc==True")
    return "return from process"

@process
def run_in_new_process(parent_pid):
    print(f"from {parent_pid} running in a new process {os.getpid()} - from process")
    return "return from process"

@worker
def run_in_new_thread(parent_pid):
    print(f"from {parent_pid} running in a new thread {os.getpid()} - from worker.multiproc==False")
    return "return from thread"


print(f"this is on main thread {os.getpid()}")

run_in_new_process_from_worker(os.getpid())
run_in_new_process(os.getpid())
run_in_new_thread(os.getpid())

```

then run the script
```
this is on main thread 29535
from 29535 running in a new process 29537 - from worker.mutliproc==True
from 29535 running in a new thread 29535 - from worker.multiproc==False
from 29535 running in a new process 29538 - from process
```

you can see the different of process id between running in a new process and thread

---

# Additional Guides

## Kill / Stop / Abort the running worker
You can abort some workers, all workers or even all threads..

### Abort specific workers
```
import time
from worker import worker, abort_worker

@worker
def go4(n=10):
    for i in range(n):
        time.sleep(1)

go4_worker = go4(10)
time.sleep(3)
abort_worker(go4_worker)
```
or just abort it from the instance
```
go4_worker.abort()
```

### Abort all workers (this only abort worker threads only)
```
from worker import abort_all_worker

abort_all_worker()
```

### Abort all threads (it will abort both all worker and non-worker threads)
```
from worker import abort_all_thread

abort_all_thread()
```
---
## Run undefined `@worker` function
```
import time
from worker import run_as_Worker

def go(n):
    ...

go_worker = run_as_Worker(target=go, args=(10,))
```

---
## Get Return Value
How to get the return of threaded function ?
```
@worker
def go(n):
    time.sleep(n)
    return "done"

go_worker = go(10)

# this will await the worker to finished and return the value

go_result = go_worker.await

# You can also use this if it's finished, dont have to await

go_result = go_worker.ret
```

##  Check/Monitor All Workers
```
from worker import ThreadWorkerManager

## all created workers
ThreadWorkerManager.list()

## All active/running workers only
ThreadWorkerManager.list(active_only=True)
```
it will return the information
```
>>> ThreadWorkerManager.list()
==============================================================
ID   |Name                |Active|Address        | WorkTime (s)
==============================================================
0    |worker              |True  |0x7fdf1a977af0 | 4.97
1    |worker1             |True  |0x7fdf1a73d640 | 4.07
2    |worker2             |True  |0x7fdf1a73d9d0 | 3.83
3    |worker3             |True  |0x7fdf1a73dd00 | 3.62
4    |worker4             |True  |0x7fdf1a74b070 | 3.38
==============================================================
```

---

## Python Interactive Shell - Keyboard Interrupt (CTRL+C)
  When you run your scripts on interactive mode
  ```
  python -i myScript.py
  ```
  you could add an abort handler with keyboard interrupt to abort your thread.

  #### Inside myScript.py

  `ThreadWorkerManager.enableKeyboardInterrupt()` allows you to abort your running workers.
  ```
  from worker import worker, ThreadWorkerManager


  # enabling abort handler for worker into keyboard interrupt (CTRL+C)

  ThreadWorkerManager.enableKeyboardInterrupt()
  ```
  You could also activate exit thread which triggered by pressing the CTRL+Z. This also added an abort handler for worker into keyboard interrupt (CTRL+C).
  ```
  ThreadWorkerManager.disableKeyboardInterrupt(enable_exit_thread=True)
  ```
  Disabling abort handler for worker into keyboard interrupt (CTRL+C).
  ```
  ThreadWorkerManager.disableKeyboardInterrupt()
  ```
  Check handler status.
  ```
  ThreadWorkerManager.keyboard_interrupt_handler_status
  ```

  You also can choose which workers are allowed to be aborted on keyboard interrupt

  #### Inside myScript.py
```
from worker import worker, ThreadWorkerManager

@worker("Uninterrupted", on_abort=lambda: print("ITS GREAT"), keyboard_interrupt=False)
def go_not_interrupted():
  i = 0
  while i < 1e3/2:
    i += 10
    print(i,"go_not_interrupted")
    time.sleep(0.001)
  return i

@worker("Interrupted", on_abort=lambda: print("ITS GREAT"), keyboard_interrupt=True)
def go_interrupted():
  i = 0
  while i < 1e3/2:
    i += 10
    print(i,"go_interrupted")
    time.sleep(0.001)
  return i

ThreadWorkerManagerManager.enableKeyboardInterrupt()
go_not_interrupted()
go_interrupted()
```
  run in your terminal
  ```
  python -i myScript.py
  ```
  press CTRL+C while the process is running and see the results.
