General purpose library
Project description
- Target platforms: Win32, Linux, OS X, Android, iOS, Emscripten
- Target architectures: x64, x86, ARM
- Target interpreters: CPython, PyPy
- Recommended Python versions: 3.8+
- Minimal Python versions: 3.1; 2.7
Not all features are accessible on every target platform or architecture.
Installation
pip install git+https://github.com/FI-Mihej/Cengal.git
or
pip install cengal
Exclusive Features: No Alternatives Online
Run concurently following components in a Single (!) Thread
- own blocking CPU-bound function
- third-party blocking CPU-bound function
- Tkinter application
- CustomTkinter application
- asyncio-based file reading task.
Examples
YouTube Showcase
Source code
Tutorial
True Interprocess Shared Memory (Proof of Concepte Stage)
Share your data between your Python processes (2 processes currently) and work with them as usual. Work across different processes is made turn by turn (fast operation: using full memory barrier instead of system calls)
Supported types (currently):
list
- Unlikemultiprocessing.shared_memory.ShareableList
: mutable and resizable between different processes, supports other containers (lists, tuples, dicts) as an items and implements alllist
methods. Faster thanmultiprocessing.shared_memory.ShareableList
.dict
- currently immutabletuple
str
bytes
bytearray
bool
float
- Unlike values inmultiprocessing.shared_memory.ShareableList
, supports Addition Assignment (shared_list[20] += 999.3
) and all other native methods and operatorsint
- int64, currently. Unlike values inmultiprocessing.shared_memory.ShareableList
, supports Addition Assignment (shared_list[15] += 999
) and all other native methods and operatorsNone
Examples
and smaller:
from multiprocessing import Process
from cengal.hardware.memory.shared_memory import *
shared_memory_name = 'test_shared_mem'
shared_memory_size = 200 * 1024 * 1024
switches = 1000
changes_per_switch = 2000
def work(manager, shared_data)
index = 0
while index < switches:
with wait_my_turn(manager):
# emulatin our working process
for i in range(changes_per_switch):
shared_data[1] += 1
def second_process():
consumer: SharedMemory = SharedMemory('test_shmem', False)
consumer.wait_for_messages()
with wait_my_turn(consumer):
shared_data = consumer.take_message()
work(consumer, shared_data)
creator: SharedMemory = SharedMemory(shared_memory_name, True, shared_memory_size)
p = Process(target=second_process)
p.start()
creator.wait_consumer_ready()
with wait_my_turn(creator):
data = [
'hello',
0,
(8, 2.0, False),
{
b'world': -6,
5: 4
}
]
shared_data = creator.put_message(data)
work(creator, shared_data)
p.join()
Performance Benchmark results
Shared list
container (which is not yet fully optimizes currently) is already faster than multiprocessing.shared_memory.ShareableList
.
And unlike multiprocessing.shared_memory.ShareableList
supports Addition Assignment (shared_list[15] += 999
) and all other native methods and operators of items.
It provides an ability to make more than 30000000 reads/writes per second of an int64 value (shared_list[2] = 1234
/ val = shared_list[7]
) or more than 1450000 addition assignments per second (shared_list[15] += 999
).
Roadmap
- Continuosly moving more logic to Cython
- Implement mutable
dict
andset
using an appropricate C hashmap library or C++ code (depending what will be faster in our case) - Increase number of interacting processes from 2 to variable value
- Implement garbage collector for shared data in addition to manual
free()
call - Implement an appropriate Service for
cengal.parallel_execution.coroutines
- for comfortable shared memory usage inside an async code (includingasyncio
) - Improve memory allocation algorithm in an attempt of making it faster
Async Tkinter and Customtkinter
Async QT (PySide, PySide2, PySide6, PyQt4, PyQt5, PyQt6)
Async PyTermGUI
Transparent background for your desktop applications (TBA)
- Target OS: Windows 11, Windows 10, Windows 8, Windows 7, Windows Vista.
- Target frameworks: PySide, PyQt, Kivy, PyWebView
,
Tkinter True Borderless apps for Windows platform (TBA)
- Target OS: Windows 11, Windows 10, Windows 8, Windows 7, Windows Vista.
- Target frameworks: CustomTkinter, Tkinter, ttkbootstrap, ...
Cengal Coroutines and Asyncio Administration and Monitoring Page
Observe loop performance, services state and coroutines list with details. Use an async interactive console in order to interact with your application from inside.
YouTube Showcase
Examples
Modules with unique functionality
- "parallel_execution"
- "coroutines" - asynchronous loop with almost preemptive multitasking within the single thread. Brings an async approach to an unmodified Tkinter, Qt, Kivy, etc. Unlike asyncio/trio/curio, it uses microkernel (services-based) approach which makes it highly- and easily-expandable. Can be executed both independently (asyncio/uvloop loop will be injected within the Cengal-coroutine when needed) and within already executed asyncio/uvloop loop. Can be used from the PyScript for the Web app creation.
- "coro_standard_services" - set of standard services. You can replace standard service by yours for your app or for third-party module without code changes: by registering your own alias.
- "loop_yield" - automatically kinda yield from your loops from time to time (priority based). Can be used to make a proper coroutine (which will not hangs on its endless loops) even from the long-running CPU-hungry third-party function (by function's bytecode modification made in runtime).
- "tkinter" - make your Tkninter app async easily. Run any number of asynchronous Tkinter apps in single thread.
- "db" - async wrapper around LMDB which provides an appropriate async API
- "asyncio_loop" - use asyncio-based code directly from your async Cengal-coroutine neither Trio nor Curio able to to do this
- "wait_coro" - 'put_atomic' request is an analogue of Trio's Nurseries for list of one or more coroutines; 'put_fastest' - returns when at least N of coroutines from the list were done successfully; etc.
- "read_write_locker" - sync primitive usefull for DB creation (was made for a TagDB)
- "remote_nodes" - in progress - connect to any opened listener/port of the node (TCP/UDP/Unix_Socket - doesn't matter), and identify your receiver by name (defined once - during the connection creation process). Uses improved version of the asyncio.streams as a backend in order to have a back pressure and an improved performance (see "efficient_streams" module description below).
- "coro_tools" - tools
- "await_coro" - await Cengal-coroutine or await for a call to the Cengal-service from your asyncio code
- "low_latency" - use standard json module from your coroutines without hangs on huge Json-data (which usually hung even fast json implementation like orjson)
- "integrations" -
- "Qt" - wrapper around an unmodified Qt (supports: PySide, PySide2, PySide6, PyQt4, PyQt5, PyQt6). Adds asynchronous behavior to Slots. Doesn't require total reimplementation of your Qt app unlike other suggestions and competitors.
- "customtkinter" - wrapper around an unmodified customtkinter. Implements an additional call, Customtkinter async apps needs to be executed for a proper work
- "nicegui" - wrapper around an unmodified NiceGUI. Execute nicegui instance from within your code (administrative page for example). Build your pages in an asynchronous way in order to improve your server latency (NiceGUI makes it in a sync way).
- "uvicorn" - wrapper around an unmodified uvicorn. Run uvicorn as a usual asyncio coroutine.
- "uvloop" - an easy-install for a uvloop (if awailable).
- "PyTermGUI" - wrapper around an unmodified PyTermGUI. Adds asynchronous behavior. No competitors currently.
- "coro_standard_services" - set of standard services. You can replace standard service by yours for your app or for third-party module without code changes: by registering your own alias.
- "asyncio" - tools for an asyncio
- "efficient_streams" - more efficient remake of an asyncion.streams. Better awailable traffic limits utilisation. Less kerner-calls number. Back pressure. Unlike asyncio, UDP version is planned but is not ready yet.
- "coroutines" - asynchronous loop with almost preemptive multitasking within the single thread. Brings an async approach to an unmodified Tkinter, Qt, Kivy, etc. Unlike asyncio/trio/curio, it uses microkernel (services-based) approach which makes it highly- and easily-expandable. Can be executed both independently (asyncio/uvloop loop will be injected within the Cengal-coroutine when needed) and within already executed asyncio/uvloop loop. Can be used from the PyScript for the Web app creation.
- "code_flow_control" -
- "python_bytecode_manipulator" - modify your or third-party Python function's code in runtime easily
- "chained_flow" - easy to use monad. Execute your your code if all/none/some of steps were completed withot an exceptions. Use all/none/some resutls of your steps at the final part of monad execution.
- "multiinterface_essence" - Make your model and add different interfaces to it easily. Can be used for example in games: create "chair", "ball", "person" models and add to them your library of general interfaces like "touch", "push", "sit", "shot", "burn", "wet", etc.
- "hardware" - hardware related
- "memory" - RAM related
- "barriers" - fast full memory barriers for both x86/x64 and ARM (Windows, Linux, OS X, iOS, Android).
- "memory" - RAM related
- "time_management" -
- "high_precision_sync_sleep" - provides an ability to put your thread into legetimate sleep for at least 10x smaller time period than
time.sleep()
from the Python's Standard Library able to do on same Operating System: usesnanosleep()
on Linux and periodicSwitchToThread()
on Windows. - "cpu_clock_cycles" - Returnes value of
RDTSCP
on x86/x86_64 orCNTVCT_EL0
on ARM. Fast implementation: 6-12 times faster than all other competitors on Github. Note: CPU Time Stamp Counter (TSC) is not depends on actual current CPU frequency in modern CPUs (starting from around year 2007) so can be safely used as a high precision clock (seetime_management.cpu_clock
module). Windows, Linux and other Operating Systems are using it internaly. - "cpu_clock" - like
perf_counter()
but 25% faster. Supports both x86/x86_64 and ARM.cpu_clock
is slightly faster thancpu_clock_cycles
becausedouble
(float
in Python terms) transfered from C-code to Python code more efficiently than64-bit int
(which needs an addition internal logic inside the Python itself for conversion). Highest-precision possible since it is CPU Time Stamp Counter based which is not depends on actual current CPU frequency in modern CPUs (starting from around year 2007) so can be safely used as a high precision clock (and Windows, Linux and other Operating Systems are using it internaly in this way). Benchmark: cpu_clock_test.py
- "high_precision_sync_sleep" - provides an ability to put your thread into legetimate sleep for at least 10x smaller time period than
Some Other modules
- "parallel_execution"
- "coroutines" -
- "coro_tools" - tools
- "wait_coro" - decorate your coroutine in order to be able to execute it from the plain sunc code as a sync function
- "run_in_loop" - serves the same purpose as an asyncio.run() call
- "prepare_loop" - creates and returns loop. You may use it later
- "coro_tools" - tools
- "asyncio" - tools for an asyncio
- "run_loop" - similar to asyncio.run() but ends only when all background tasks will be finished (main coro can be finished long before this moment).
- "timed_yield" - simple (dum-dum but faster) version of the "loop_yield" (see above) but made directly for an asyncio.
- "coroutines" -
- "bulk_pip_actions" - install lists of required modules. Lists can be different for a different operating systems
- "code_inspection" -
- "auto_line_tracer" - smart and easy to use line logger (current func name, file, lines numbers, surrounding code)
- "line_tracer" - - easy to use line logger (current func name, file, line number)
- "line_profiling" - confinient work with a line_profiler if awailable
- "data_containers" - usefull data containers like stack, fast fifo, etc. Some of them are highly optimized for speed
- "data_manipulation" -
- "conversion" -
- "bit_cast_like" - similar to std::bit_cast from C++
- "reinterpret_cast" - similar to reinterpret_cast from C++. You have a third-party object and you want to change it's type (and behavior) in runtime.
- "serialization" - automatically choose a fastest appropriate serializer for your type and structure of data (json, simplejson, ujson, ojson, msgpack, cbor, cbor2, marshal, pickle, cloudpickle, ...)
- "tree_traversal" - both recrsive and nonrecursive tree traversal algorithms
- "conversion" -
- "ctypes_tools" - ctypes code and structures used by Cengal.
- "tools" - ctypes tools usefull for your code
- "file_system" - normalized relative path, etc.
- "app_fs_structure" - unified list of the default app directories (data, cache, temp, etc.) recommended by OS (Linux, Windows, Mac OS X) in a runtime for a given application name or a service name. Results are cached. Cache size can be modified in runtime.
- "hardware" - hardware related
- "info" - hardware info
- "cpu" - normalized results from cpuinfo extended with an info from psutil.
- "info" - hardware info
- "introspection" -
- "inspect" - find out function parameters, entity owners list (method -> subclass -> class -> module), entitie's own properties (excluding parent's properties), etc.
- "third_party" -
- "ctypes" - provice an instance of ctypes Structure and take a dict with all internals of this structure. Good for inspecting/logging/printing values of a given structure with all values of all its substructures.
- "io" -
- "used_ports" - database of known TCP/UDP ports. Updates from an appropriate Wikipedia page once per Cengal release but you can update if for your self anytime if you want to.
- "serve_free_ports" - provide ports range with an interested port types set and receive number of the first open appropriate port on your machine within given port range.
- "named_connections_manager" - base for the "remote_nodes" (see above) and similar entities
- "net_io" - an experimental networking library with an expandable architecture. Has implemented modules for epoll and select.
- "math" -
- "algebra" -
- "fast_algorithms" - Fast inverse square root (the one from Quake III) implemented efficiently
- "geometry" -
- "ellipse" - ellipse related. Also several algorithms for precisely or efficiently compute an ellipse perimeter
- "point" - numpy (if awailable) or python implementation of points (1D, 2D, 3D, nD)
- "vector" - numpy (if awailable) or python algotithms on vectors (1D, 2D, 3D, nD). Implements CoordinateVectorNd, VectorNd, DirectedGraphNd
- "algebra" -
- "modules_management" - reload module, import drop-in-replacement module if an original is not awailable
- "statistics" -
- "normal_distribution" - compute the normal distribution of your data. Booth count or use a formula. 99, 95, 68; standard_deviation: diff_mean, sqrt(variance), max_deviation, min_deviation.
- "text_processing" - text parsing, patching, detect BOM and encoding
- "time_management" -
- "timer" - timer for any synchronous code
- "sleep_tools" - sleep for a production code. Using usual sleep you may get not wat you want if you are not really into your target OS internals (Windows/Linux)
- "repeat_for_a_time" - measures code/function executions per second. But it smart and eficiently repeats target code/function not N times but up to a T seconds. Results to a high precision measurements for even smallest and fastest pieces of code.
- "relative_time" - time related module for a business purposes (calendars, payments, etc.)
- "unittest" -
- "patcher" - set of context manager for monkey patching builtins or other entities
- "user_interface" -
- "gui" -
- "nt" -
- "blur_behind" - Turn on Aero Glass backgrownd in Winndows 7, 10, 11 using documented or undocumented API (which one is awailable)
- "dpi_awareness" - Turn on DPI awareness
- "nt" -
- "gui" -
- "web_tools" -
- "detect_browsers_host_device_type" -
- "by_http_user_agent" - detects is it mobile or tablet device by analizing its http user_agent string
- "detect_browsers_host_device_type" -
Size of the Cengal library
At the moment of 27 Oct 2022:
161 modules
-------------------------------------------------------------------------------
Language files blank comment code
-------------------------------------------------------------------------------
Python 397 10291 12906 35398
Cython 5 423 284 1411
-------------------------------------------------------------------------------
SUM: 402 10714 13190 36809
-------------------------------------------------------------------------------
Counted with cloc util.
Examples
- Can be found in examples dir
- Each module has a
development
folder. Examples are usually placed there - Some of old examples can be fined inside the tests dir.
Cengal.coroutines examples
- General idea, greenlet main Cengal.coro
- General idea, async main Cengal.coro
- Transparent interconnection between Cengal.coroutines and asyncio
Text processing example
Ensures and updates copyright (with dates) in each Cengal's source file
Projects using Cengal
- flet_async - wrapper which makes Flet async and brings booth Cengal.coroutines and asyncio to Flet (Flutter based UI)
- justpy_containers - wrapper around JustPy in order to bring more security and more production-needed features to JustPy (VueJS based UI)
- Bensbach - decompiler from Unreal Engine 3 bytecode to a Lisp-like script and compiler back to Unreal Engine 3 bytecode. Made for a game modding purposes
- Realistic-Damage-Model-mod-for-Long-War - Mod for both the original XCOM:EW and the mod Long War. Was made with a Bensbach, which was made with Cengal
- SmartCATaloguer.com - TagDB based catalog of images (tags), music albums (genre tags) and apps (categories)
License
Copyright © 2012-2023 ButenkoMS. All rights reserved.
Licensed under the Apache License, Version 2.0.
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