Tgbox-bench - Simple TGBOX upload speed benchmark

Overview

TGBOX Benchmark

This script will benchmark upload speed to TGBOX storage.

Build

If you're on Linux

git clone https://github.com/NotStatilko/tgbox-bench
cd tgbox-bench & python3 -m pip install -r requirements.txt
./bench.py # Run benchmark, close all network apps before this

If you're on Windows

Simplest way is download executable from TGBOX Telegram channel, but you can build by yourself, see Linux guide.

Report

Please, send your results to me, they are anonymized, thank you.

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