NameScout
Search domains, package registries, code hosts, and plugin marketplaces from one practical report. No hype. Just the collisions that matter.
Provider coverage
Live checks across the registries developers actually publish to. Two more on the way.
Report
stridel.com
domain · DNS records found
GitHub org/user
code · GitHub namespace exists
Docker Hub
distribution · Docker namespace exists
stridel.dev
domain · No DNS record found
npm
package · Exact package name is clear
PyPI
package · Exact project name is clear
Recommended actions
Full report
stridel.com
high confidence · DNS records found
stridel.dev
medium confidence · No DNS record found
stridel.io
medium confidence · No DNS record found
stridel.app
medium confidence · No DNS record found
stridel.ai
medium confidence · No DNS record found
stridel.co
medium confidence · No DNS record found
npm
high confidence · Exact package name is clear
PyPI
high confidence · Exact project name is clear
crates.io
high confidence · No exact crate found
RubyGems
high confidence · Gem name is clear
Packagist
high confidence · No vendor packages found
GitHub org/user
high confidence · GitHub namespace exists
VS Code
medium confidence · No matching publisher or extension
Docker Hub
high confidence · Docker namespace exists
Homebrew
high confidence · No formula or cask found
Near matches
Even when your exact name is free, these are close enough to cause confusion.
TheKeyblader/Stridelonia
GitHubStride plugin which allows running Avalonia on Stride
Archeries/StrideLengthEstimation
GitHubThe lack of benchmarking datasets for pedestrian stride length estimation makes it hard to pinpoint differences of published methods. Existing datasets either lack the ground-truth of each stride or are limited to small spaces with single scene or motion pattern. To fully evaluate the performance of proposed ASLE algorithm, we conducted benchmark dataset for natural pedestrian dead reckoning using smartphone sensors and FM-INS module. we leveraged the FM-INS module to provide the ground-truth of each stride with motion distance errors in 0.3% of the entire travel distance. The datasets were obtained from a group of healthy adults with natural motion patterns (fast walking, normal walking, slow walking, running, jumping). The datasets contained more than 22 km, 10000 strides of gait measurements. The datasets cover both indoor and outdoor cases, including: stairs, escalators, elevators, office environments, shopping mall, streets and metro station. To make it easier for readers to replicate experiment, we shared the sampling software.
Xisrith/StrideLOD
GitHubWorking on a new LOD system for the Stride 3D game engine. Note, this repo is very volatile.
aluqhof/stridelab
GitHubAdvanced Strava dashboard with race predictions, performance analytics, and training insights