Single app which offers seamless parking experience for all parking needs of a car driver.
ParkRobo aims to be a single app for all parking needs of a car driver, right from locating an available parking place, pay and exit parking without hassles. The main aim is to offer seamless user experience to its users across multiple car parks.
Visit Website Visit Twitter Page Visit Facebook PageSimple Caching, Built for Developers Cloud Based Caching Solution for Developers
Section.io is a service for developers to deploy caching on the cloud. Designed to speed up and provide caching without all the administration and technical nightmares.
Section.io provides a simple way to spin up and manage a complete Varnish Cache solution for your web application in just a few minutes. Developed by a team of web engineers that have seen a gap in the market for a self-managed product for controlling caching.
Currently most of our users are using Section.io for
- Magneto and e-Commerce Caching
- Instantly Deploy, Test and Real-Time Stats on Caching
- For projects which require caching separate from the application/project
Section.io launched in April 2015 its parent company Squixa a web acceleration platform/service was founded in May 2012 in Sydney Australia.
Employees: Currently 7, soon to be 8. https://www.section.io/about/
Founders: Stewart Mcgrath & Dan Bartholomew
ParkRobo - Complete Parking App vs Deel
ParkRobo - Complete Parking App vs Secret
ParkRobo - Complete Parking App vs mails.wtf
ParkRobo - Complete Parking App vs Channel Mobile
ParkRobo - Complete Parking App vs PatrolServer
ParkRobo - Complete Parking App vs unroole
ParkRobo - Complete Parking App vs DateJasmin
ParkRobo - Complete Parking App vs ideel
ParkRobo - Complete Parking App vs Nice Threads Carpet Cleaning
ParkRobo - Complete Parking App vs Texting.io
Testing Cell and Overall Health
Simple do-it-yourself SEO for startups + small business owners.
A digital wallet for your photos.
We help founders and leaders of startups build a growth enabling company culture by using culture data and our 3-stage model.