Start-up Tools Start-ups are always short on time: here are some tools that can save you time and avoid reinventing the wheel. This list is focused on technical tools to save development time. List of Contributors Other ListsOfStartupTools Startup Tools is sponsored by the Bootstrappers Breakfast. Here is a list of February 2024 events for bootstrappers. We offer online and face to face Bootstrapp
Localtunnel allows you to easily share a web service on your local development machine without messing with DNS and firewall settings. Localtunnel will assign you a unique publicly accessible url that will proxy all requests to your locally running webserver. Quickstart Install Localtunnel globally (requires NodeJS) to make it accessible anywhere: npm install -g localtunnel Start a webserver on so
Hello, I’m Kristof, a human being like you, and an easy to work with, friendly guy. I've been a programmer, a consultant, CIO in startups, head of software development in government, and built two software companies. Some days I’m coding Golang in the guts of a system and other days I'm wearing a suit to help clients with their DevOps practices. A little collection of cool unix terminal/console/cu
ハドルミーティングでチームの連携力をアップまるでオフィスの隣の席にいる同僚と一緒に働くような感覚を、バーチャルスペースで再現。リアルタイムで協力して仕事に取り組めます。
Check your DNS against over 1500 global DNS servers Download .zip Download .tar.gz View on GitHub DNSYO AALLLLL THE DNS DNSYO is a little tool I built to help me keep track of DNS propagation. In short, it's nslookup, if nslookup queried over 1500 servers and collated their results. Here's what it does $ dnsyo -t 100 -q ALL example.com Status: Queried 1804 of 1804 servers, duration: 0:00:09.334441
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Data science is OSEMN (pronounced as awesome). That is, it involves Obtaining, Scrubbing, Exploring, Modelling, and iNterpreting data. As a data scientist, I spend quite a bit of time on the command-line, especially when there’s data to be obtained, scrubbed, or explored. And I’m not alone in this. Recently, Greg Reda discussed how the classics (e.g., head, cut, grep, sed, and awk) can be used for
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