Efficient Batched Reinforcement Learning in TensorFlow
-
Updated
Jan 11, 2019 - Python
Efficient Batched Reinforcement Learning in TensorFlow
The amazing multi-processor 8-bit microcomputer, featuring Z80, 6502 and AVR processors. Built with CPLDs, CERBERUS 2100™ is fully programmable even with respect to its hardware, at the individual gate and flip-flop level.
Parallelize _anything_ //
Building multi-core network applications with PHP.
Research paper on Multi-Threading vs. Multi-Processing applies to Operating System & Application. The research analyzes the fundamental of multiprocess and multithreading programming. The report paper also explains the basics of how operating system functions, and OS Scheduler Algorithms. I also implement the Producer-Consumer Problem using Cond…
RoboticsRepoForMyself
Notes for multi-processing and multi-threading
🍕 A simulation based on a pizzeria coded in C++ using multi-processing, multi-threading and IPC (inter-process-communication). One of my last project of my 2nd year at Epitech
Python implementation of a multi-processed gRPC client/server with streaming capabilities.
Fluid flow simulator using MFEM and multiscale space-time sub-domains.
Mpcurses is an abstraction of the Python curses and multiprocessing libraries providing function execution and runtime visualization capabilities.
This short little python module can help you with running your iteratable functions on multi process without any hassle of creating process by yourself.
Academic project for The Operating Systems course. Fall 2018
Course repository for parallel programming. Includes the usage of concepts like multi-processing, threads, mutex, shared memory, locks, etc.
[Phase II: Consumer] This repository holds the code developed in partial fulfilment of online credit course "CS370 - OS" offered at Colorado State University Online for Spring 2024.
Picture Frame that uses face recognition to identify and display images of users and uses Flickr API to import images
A python implementation of CBDT
Examples on multi-processing and multi-threading in Python.
Add a description, image, and links to the multi-processing topic page so that developers can more easily learn about it.
To associate your repository with the multi-processing topic, visit your repo's landing page and select "manage topics."