#python #cpu_profiling #memory_management #performance_analysis #profiling
https://github.com/emeryberger/scalene
https://github.com/emeryberger/scalene
GitHub
GitHub - emeryberger/scalene: Scalene: a high-performance, high-precision CPU, GPU, and memory profiler for Python
Scalene: a high-performance, high-precision CPU, GPU, and memory profiler for Python - emeryberger/scalene
#c_lang #convolutional_neural_network #convolutional_neural_networks #cpu #inference #inference_optimization #matrix_multiplication #mobile_inference #multithreading #neural_network #neural_networks #simd
https://github.com/google/XNNPACK
https://github.com/google/XNNPACK
GitHub
GitHub - google/XNNPACK: High-efficiency floating-point neural network inference operators for mobile, server, and Web
High-efficiency floating-point neural network inference operators for mobile, server, and Web - google/XNNPACK
#css #cpu_monitoring #dashboard #java #linux #monitoring #monitoring_tool #server #spring #spring_boot #web
https://github.com/B-Software/Ward
https://github.com/B-Software/Ward
GitHub
GitHub - Rudolf-Barbu/Ward: Server dashboard that enables you to monitor and track the status of your server.
Server dashboard that enables you to monitor and track the status of your server. - Rudolf-Barbu/Ward
#javascript #browser_detection #cpu_detection #device_detection #engine_detection #gpu_detection #javascript_library #jquery_plugin #os_detection #user_agent #user_agent_parser
https://github.com/faisalman/ua-parser-js
https://github.com/faisalman/ua-parser-js
GitHub
GitHub - faisalman/ua-parser-js: UAParser.js - The Essential Web Development Tool for User-Agent Detection. Detect Browsers, OS…
UAParser.js - The Essential Web Development Tool for User-Agent Detection. Detect Browsers, OS, Devices, Bots, Apps, AI Crawlers, and more. Run in Browser (client-side) or Node.js (server-side). - ...
#swift #battery #bluetooth #cpu #disk #fans #gpu #macos #menubar #monitor #network #sensors #stats #temperature
https://github.com/exelban/stats
https://github.com/exelban/stats
GitHub
GitHub - exelban/stats: macOS system monitor in your menu bar
macOS system monitor in your menu bar. Contribute to exelban/stats development by creating an account on GitHub.
#other #control #cpu #curves #fan #fancontrol #gpu #pwm #speed #temperature
https://github.com/Rem0o/FanControl.Releases
https://github.com/Rem0o/FanControl.Releases
GitHub
GitHub - Rem0o/FanControl.Releases: This is the release repository for Fan Control, a highly customizable fan controlling software…
This is the release repository for Fan Control, a highly customizable fan controlling software for Windows. - Rem0o/FanControl.Releases
#c_lang #amd #cpu_cache #cpu_monitoring #cpu_temperature #cpu_topology #cpu_voltage #cpuid #cpuinfo #epyc #intel #multi_core #overclocking #process_monitor #processor #processor_architecture #ram_info #ryzen #threadripper #timings #turbo_boost
https://github.com/cyring/CoreFreq
https://github.com/cyring/CoreFreq
GitHub
GitHub - cyring/CoreFreq: CoreFreq : CPU monitoring and tuning software designed for the 64-bit processors.
CoreFreq : CPU monitoring and tuning software designed for the 64-bit processors. - cyring/CoreFreq
#java #cpu #deep_learning #docker #gpu #kubernetes #machine_learning #metrics #mlops #optimization #pytorch #serving
https://github.com/pytorch/serve
https://github.com/pytorch/serve
GitHub
GitHub - pytorch/serve: Serve, optimize and scale PyTorch models in production
Serve, optimize and scale PyTorch models in production - pytorch/serve
#java #cpu_usage #disk_utilization #hacktoberfest #hardware_information #jna #memory_usage #operating_system #process_list #processor #serialnumbers #system_monitoring #usb_devices
https://github.com/oshi/oshi
https://github.com/oshi/oshi
GitHub
GitHub - oshi/oshi: Native Operating System and Hardware Information
Native Operating System and Hardware Information. Contribute to oshi/oshi development by creating an account on GitHub.
#swift #battery #bluetooth #clock #cpu #disk #fans #gpu #macos #menubar #monitor #network #sensors #stats #temperature
Stats is a tool that helps you monitor your macOS system from the menu bar. It shows you important information like CPU and GPU usage, memory and disk utilization, network activity, battery level, and more. You can install it manually or using Homebrew. Stats supports many languages and is efficient, though you can disable some modules to reduce energy impact. This tool is beneficial because it keeps you informed about your system's performance without needing to open multiple apps, helping you manage your computer better.
https://github.com/exelban/stats
Stats is a tool that helps you monitor your macOS system from the menu bar. It shows you important information like CPU and GPU usage, memory and disk utilization, network activity, battery level, and more. You can install it manually or using Homebrew. Stats supports many languages and is efficient, though you can disable some modules to reduce energy impact. This tool is beneficial because it keeps you informed about your system's performance without needing to open multiple apps, helping you manage your computer better.
https://github.com/exelban/stats
GitHub
GitHub - exelban/stats: macOS system monitor in your menu bar
macOS system monitor in your menu bar. Contribute to exelban/stats development by creating an account on GitHub.
#assembly #cpu #fpga #riscv #soc #softcore #spinalhdl #verilog #vhdl
This repository provides a highly configurable RISC-V CPU implementation written in SpinalHDL. Here are the key benefits and features The CPU can be customized with various plugins to add or remove features such as instruction and data caches, multiplication and division units, floating-point units, and more.
- **Performance** It includes a debug module that allows for Eclipse debugging via GDB, OpenOCD, and JTAG connections.
- **Compatibility** The CPU can be optimized for different FPGA targets, and it does not use any vendor-specific IP blocks.
- **Extensibility**: New instructions and peripherals can be added easily through the plugin system, making it highly extensible.
Overall, this implementation offers a flexible and powerful RISC-V CPU solution that can be tailored to various needs and applications.
https://github.com/SpinalHDL/VexRiscv
This repository provides a highly configurable RISC-V CPU implementation written in SpinalHDL. Here are the key benefits and features The CPU can be customized with various plugins to add or remove features such as instruction and data caches, multiplication and division units, floating-point units, and more.
- **Performance** It includes a debug module that allows for Eclipse debugging via GDB, OpenOCD, and JTAG connections.
- **Compatibility** The CPU can be optimized for different FPGA targets, and it does not use any vendor-specific IP blocks.
- **Extensibility**: New instructions and peripherals can be added easily through the plugin system, making it highly extensible.
Overall, this implementation offers a flexible and powerful RISC-V CPU solution that can be tailored to various needs and applications.
https://github.com/SpinalHDL/VexRiscv
GitHub
GitHub - SpinalHDL/VexRiscv: A FPGA friendly 32 bit RISC-V CPU implementation
A FPGA friendly 32 bit RISC-V CPU implementation. Contribute to SpinalHDL/VexRiscv development by creating an account on GitHub.
#c_lang #convolutional_neural_network #convolutional_neural_networks #cpu #inference #inference_optimization #matrix_multiplication #mobile_inference #multithreading #neural_network #neural_networks #simd
XNNPACK is a powerful tool that helps make neural networks run faster on various devices like smartphones, computers, and Raspberry Pi boards. It supports many different types of processors and operating systems, making it very versatile. XNNPACK doesn't work directly with users but instead helps other machine learning frameworks like TensorFlow Lite, PyTorch, and ONNX Runtime to perform better. This means your apps and programs that use these frameworks can run neural networks more quickly and efficiently, which is beneficial because it saves time and improves performance.
https://github.com/google/XNNPACK
XNNPACK is a powerful tool that helps make neural networks run faster on various devices like smartphones, computers, and Raspberry Pi boards. It supports many different types of processors and operating systems, making it very versatile. XNNPACK doesn't work directly with users but instead helps other machine learning frameworks like TensorFlow Lite, PyTorch, and ONNX Runtime to perform better. This means your apps and programs that use these frameworks can run neural networks more quickly and efficiently, which is beneficial because it saves time and improves performance.
https://github.com/google/XNNPACK
GitHub
GitHub - google/XNNPACK: High-efficiency floating-point neural network inference operators for mobile, server, and Web
High-efficiency floating-point neural network inference operators for mobile, server, and Web - google/XNNPACK