Developer Documentation | Available Properties
Introduction
This project contains 51Degrees Device Detection engines that can be used with the Pipeline API.
The Pipeline is a generic web request intelligence and data processing solution with the ability to add a range of 51Degrees and/or custom plug ins (Engines)
This git repository uses submodules, to clone the git repository run:
or if already cloned run the following to obtain all sub modules:
Dependencies
For runtime dependencies, see our dependencies page. The tested versions page shows the Python versions that we currently test against. The software may run fine against other versions, but additional caution should be applied.
Data
The API can either use our cloud service to get its data or it can use a local (on-premise) copy of the data.
Cloud
You will require a resource key to use the Cloud API. You can create resource keys using our configurator, see our documentation on how to use this.
On-Premise
In order to perform device detection on-premise, you will need to use a 51Degrees data file. This repository includes a free, 'lite' file in the 'device-detection-data' sub-module that has a significantly reduced set of properties. To obtain a file with a more complete set of device properties see the 51Degrees website. If you want to use the lite file, you will need to install GitLFS:
Then, navigate to 'src/fiftyone_devicedetection_onpremise/cxx/device-detection-data' and execute:
Folders
fiftyone_devicedetection
- references both cloud and on-premise packages, contains generic Device-Detection Pipeline Builder.examples
- examples for switching between cloud and on-premise.
fiftyone_devicedetection_cloud
- cloud implementation of the engines.tests
- tests for the cloud engine and examples.
fiftyone_devicedetection_onpremise
- uses a native library which is built during setup to provide optimal performance and low latency device detections.tests
- tests for the on-premise engine.
fiftyone_devicedetection_shared
- common components used by the cloud and on-premise packages.fiftyone_devicedetection_examples
- cloud and on-premise examples.tests
- tests for the examples.
Installation
PyPi
To install all packages, run:
The fiftyone-devicedetection
package references both cloud and on-premise packages. If you do not want the on-premise engine or cannot meet the requirements for installing on-premise then install the cloud package on its own:
or
See the cloud and onpremise package readmes for more detail.
Build from Source
Device detection on-premise uses a native binary. (i.e. compiled from C code to target a specific platform/architecture) This section explains how to build this binary.
Pre-requisites
- Install C build tools:
- Windows:
- You will need either Visual Studio 2019 or the C++ Build Tools installed.
- Minimum platform toolset version is
v142
- Minimum Windows SDK version is
10.0.18362.0
- Minimum platform toolset version is
- You will need either Visual Studio 2019 or the C++ Build Tools installed.
- Linux/MacOS:
sudo apt-get install g++ make libatomic1
- Windows:
- If you have not already done so, pull the git submodules that contain the native code:
git submodule update --init --recursive
Build steps
It is recommended to use Pipenv when building packages. Pipenv will ensure all the required packages for building and testing are available e.g. cython
and flask
.
We use make
to manage the build process. There are several targets for the make process. If unsure, you probably want to use the install
target:
other make targets:
cloud
- only setup packages required for cloudonpremise
- only setup packages required for onpremisetest
- run package testsclean
- remove temporary files created when building extensions
Make can be installed on Windows. Alternatively, there is also a powershell setup script called setup.ps1
. To run it, you may need to update the execution policy to allow unsigned scripts to execute:
Finally, if the make or powershell scripts fail, or you want to perform the steps manually for some other reason, these are the commands to build the native on-premise library and install the packages.
Examples
Prerequisites
Please install the pre-requisites listed above as well as the examples themselves as a package:
Running examples
To run an example - run a corresponding Python module specifying its full namespace.
For cloud examples please provide a resource_key
as an environment variable, f.e.:
For some of the onpremise examples you might need to provide a license_key
as an environment variable, f.e.:
Please see a full list of provided cloud and onpremise examples below.
Cloud
Example | Description |
gettingstarted_console | How to use the 51Degrees Cloud service to determine details about a device based on its User-Agent and User-Agent Client Hints HTTP header values. |
gettingstarted_web | How to use the 51Degrees Cloud service to determine details about a device as part of a simple ASP.NET website. |
taclookup_console | How to get device details from a TAC (Type Allocation Code) using the 51Degrees cloud service. |
nativemodellookup_console | How to get device details from a native model name using the 51Degrees cloud service. |
failuretomatch | Demonstrate the features that are available when a match cannot be found. |
metadata_console | How to access the meta-data for the device detection data model. For example, information about the available properties. |
useragentclienthints-web | Legacy example. Retained for the associated automated tests. See GettingStarted-Web instead. |
On-Premise
Example | Description |
gettingstarted_console | How to use the 51Degrees on-premise device detection API to determine details about a device based on its User-Agent and User-Agent Client Hints HTTP header values. |
gettingstarted_web | How to use the 51Degrees Cloud service to determine details about a device as part of a simple ASP.NET website. |
failuretomatch | Demonstrate the features that are available when a match cannot be found. |
match_metrics | How to access the metrics that relate to the device detection algorithm. |
metadata_console | How to access the meta-data for the device detection data model. For example, information about the available properties. |
offlineprocessing | Example showing how to ingest a file containing data from web requests and perform detection against the entries. |
performance | How to configure the various performance options and run a simple performance test. |
useragentclienthints-web | Legacy example. Retained for the associated automated tests. See GettingStarted-Web instead. |
datafileupdate_console | How to automatically update data file |