Repository Summary
Checkout URI | https://github.com/PickNikRobotics/data_tamer.git |
VCS Type | git |
VCS Version | main |
Last Updated | 2024-11-10 |
Dev Status | MAINTAINED |
CI status | No Continuous Integration |
Released | RELEASED |
Tags | No category tags. |
Contributing |
Help Wanted (0)
Good First Issues (0) Pull Requests to Review (0) |
Packages
Name | Version |
---|---|
data_tamer_cpp | 1.0.0 |
data_tamer_msgs | 1.0.0 |
README
DataTamer is a library to log/trace numerical variables over time and takes periodic “snapshots” of their values, to later visualize them as timeseries.
It works great with PlotJuggler, the timeseries visualization tool (note: you will need PlotJuggler 3.8.2 or later).
DataTamer is “fearless data logger” because you can record hundreds or thousands of variables: even 1 million points per second should have a fairly small CPU overhead.
Since all the values are aggregated in a single “snapshot”, it is usually meant to record data in a periodic loop (a very frequent use case, in robotics applications).
Kudos to pal_statistics, for inspiring this project.
How it works
DataTamer can be used to monitor multiple variables in your applications.
Channels are used to take “snapshots” of a subset of variables at a given time. If you want to record at different frequencies, you can use different channels.
DataTamer will forward the collected data to 1 or multiple sinks; a sink may save the information immediately in a file (currently, we support MCAP) or publish it using an inter-process communication, for instance, a ROS2 publisher.
You can easily create your own, specialized sinks.
Use PlotJuggler to visualize your logs offline or in real-time.
Features
- Serialization schema is created at run-time: no need to do code generation.
- Suitable for real-time applications: very low latency (on the side of the callee).
- Multi-sink architecture: recorded data can be forwarded to multiple “backends”.
- Very low serialization overhead, in the order of 1 bit per traced value.
- The user can enable/disable traced variables at run-time.
Limitations
- Traced variables can not be added (registered) once the recording starts (first
takeSnapshot
). - Focused on periodic recording. Not the best option for sporadic, asynchronous events.
- If you use
DataTamer::registerValue
you must be careful about the lifetime of the object. If you prefer a safer RAII interface, useDataTamer::createLoggedValue
instead.
Examples
Basic example
#include "data_tamer/data_tamer.hpp"
#include "data_tamer/sinks/mcap_sink.hpp"
int main()
{
// Multiple channels can use this sink. Data will be saved in mylog.mcap
auto mcap_sink = std::make_shared<DataTamer::MCAPSink>("mylog.mcap");
// Create a channel and attach a sink. A channel can have multiple sinks
auto channel = DataTamer::LogChannel::create("my_channel");
channel->addDataSink(mcap_sink);
// You can register any arithmetic value. You are responsible for their lifetime!
double value_real = 3.14;
int value_int = 42;
auto id1 = channel->registerValue("value_real", &value_real);
auto id2 = channel->registerValue("value_int", &value_int);
// If you prefer to use RAII, use this method instead
// logged_real will unregister itself when it goes out of scope.
auto logged_real = channel->createLoggedValue<float>("my_real");
// Store the current value of all the registered values
channel->takeSnapshot();
// You can disable (i.e., stop recording) a value like this
channel->setEnabled(id1, false);
// or, in the case of a LoggedValue
logged_real->setEnabled(false);
// The next snapshot will contain only [value_int], i.e. [id2],
// since the other two were disabled
channel->takeSnapshot();
}
How to register custom types
Containers such as std::vector
and std::array
are supported out of the box.
You can also register a custom type, as shown in the example below.
#include "data_tamer/data_tamer.hpp"
#include "data_tamer/sinks/mcap_sink.hpp"
#include "data_tamer/custom_types.hpp"
// a custom type
struct Point3D
{
double x;
double y;
double z;
};
namespace DataTamer
{
template <> struct TypeDefinition<Point3D>
{
// Provide the name of the type
std::string typeName() const { return "Point3D"; }
// List all the member variables that you want to be saved (including their name)
template <class Function> void typeDef(Function& addField)
{
addField("x", &Point3D::x);
addField("y", &Point3D::y);
addField("z", &Point3D::z);
}
}
} // end namespace DataTamer
int main()
{
auto channel = DataTamer::LogChannel::create("my_channel");
channel->addDataSink(std::make_shared<DataTamer::MCAPSink>("mylog.mcap"));
// Array/vectors are supported natively
std::vector<double> values = {1, 2, 3, 4};
channel->registerValue("values", &values);
// Requires the implementation of DataTamer::TypeDefinition<Point3D>
Point3D position = {0.1, -0.2, 0.3};
channel->registerValue("position", &position);
// save the data as usual ...
channel->takeSnapshot();
}
Compilation
Compiling with ROS2
Just use colcon :)
Compiling with Conan (not ROS2 support)
Note that the ROS2 publisher will NOT be built when using this method.
Assuming conan 2.x installed. From the source directory.
Release:
conan install . -s compiler.cppstd=gnu17 --build=missing -s build_type=Release
cmake -S . -B build/Release -DCMAKE_BUILD_TYPE=Release \
-DCMAKE_TOOLCHAIN_FILE="build/Release/generators/conan_toolchain.cmake"
cmake --build build/Release --parallel
Debug:
conan install . -s compiler.cppstd=gnu17 --build=missing -s build_type=Debug
cmake -S . -B build/Debug -DCMAKE_BUILD_TYPE=Debug \
-DCMAKE_TOOLCHAIN_FILE="build/Debug/generators/conan_toolchain.cmake"
cmake --build build/Debug --parallel
How to deserialize data recorded with DataTamer
I will write more extensively about the serialization format used by DataTamer, but for the time being I created a single header file without external dependencies that you can just copy into your project: data_tamer_parser.hpp
You can see how it is used in this example: mcap_reader
CONTRIBUTING
Repository Summary
Checkout URI | https://github.com/PickNikRobotics/data_tamer.git |
VCS Type | git |
VCS Version | main |
Last Updated | 2024-11-10 |
Dev Status | MAINTAINED |
CI status | No Continuous Integration |
Released | RELEASED |
Tags | No category tags. |
Contributing |
Help Wanted (0)
Good First Issues (0) Pull Requests to Review (0) |
Packages
Name | Version |
---|---|
data_tamer_cpp | 1.0.0 |
data_tamer_msgs | 1.0.0 |
README
DataTamer is a library to log/trace numerical variables over time and takes periodic “snapshots” of their values, to later visualize them as timeseries.
It works great with PlotJuggler, the timeseries visualization tool (note: you will need PlotJuggler 3.8.2 or later).
DataTamer is “fearless data logger” because you can record hundreds or thousands of variables: even 1 million points per second should have a fairly small CPU overhead.
Since all the values are aggregated in a single “snapshot”, it is usually meant to record data in a periodic loop (a very frequent use case, in robotics applications).
Kudos to pal_statistics, for inspiring this project.
How it works
DataTamer can be used to monitor multiple variables in your applications.
Channels are used to take “snapshots” of a subset of variables at a given time. If you want to record at different frequencies, you can use different channels.
DataTamer will forward the collected data to 1 or multiple sinks; a sink may save the information immediately in a file (currently, we support MCAP) or publish it using an inter-process communication, for instance, a ROS2 publisher.
You can easily create your own, specialized sinks.
Use PlotJuggler to visualize your logs offline or in real-time.
Features
- Serialization schema is created at run-time: no need to do code generation.
- Suitable for real-time applications: very low latency (on the side of the callee).
- Multi-sink architecture: recorded data can be forwarded to multiple “backends”.
- Very low serialization overhead, in the order of 1 bit per traced value.
- The user can enable/disable traced variables at run-time.
Limitations
- Traced variables can not be added (registered) once the recording starts (first
takeSnapshot
). - Focused on periodic recording. Not the best option for sporadic, asynchronous events.
- If you use
DataTamer::registerValue
you must be careful about the lifetime of the object. If you prefer a safer RAII interface, useDataTamer::createLoggedValue
instead.
Examples
Basic example
#include "data_tamer/data_tamer.hpp"
#include "data_tamer/sinks/mcap_sink.hpp"
int main()
{
// Multiple channels can use this sink. Data will be saved in mylog.mcap
auto mcap_sink = std::make_shared<DataTamer::MCAPSink>("mylog.mcap");
// Create a channel and attach a sink. A channel can have multiple sinks
auto channel = DataTamer::LogChannel::create("my_channel");
channel->addDataSink(mcap_sink);
// You can register any arithmetic value. You are responsible for their lifetime!
double value_real = 3.14;
int value_int = 42;
auto id1 = channel->registerValue("value_real", &value_real);
auto id2 = channel->registerValue("value_int", &value_int);
// If you prefer to use RAII, use this method instead
// logged_real will unregister itself when it goes out of scope.
auto logged_real = channel->createLoggedValue<float>("my_real");
// Store the current value of all the registered values
channel->takeSnapshot();
// You can disable (i.e., stop recording) a value like this
channel->setEnabled(id1, false);
// or, in the case of a LoggedValue
logged_real->setEnabled(false);
// The next snapshot will contain only [value_int], i.e. [id2],
// since the other two were disabled
channel->takeSnapshot();
}
How to register custom types
Containers such as std::vector
and std::array
are supported out of the box.
You can also register a custom type, as shown in the example below.
#include "data_tamer/data_tamer.hpp"
#include "data_tamer/sinks/mcap_sink.hpp"
#include "data_tamer/custom_types.hpp"
// a custom type
struct Point3D
{
double x;
double y;
double z;
};
namespace DataTamer
{
template <> struct TypeDefinition<Point3D>
{
// Provide the name of the type
std::string typeName() const { return "Point3D"; }
// List all the member variables that you want to be saved (including their name)
template <class Function> void typeDef(Function& addField)
{
addField("x", &Point3D::x);
addField("y", &Point3D::y);
addField("z", &Point3D::z);
}
}
} // end namespace DataTamer
int main()
{
auto channel = DataTamer::LogChannel::create("my_channel");
channel->addDataSink(std::make_shared<DataTamer::MCAPSink>("mylog.mcap"));
// Array/vectors are supported natively
std::vector<double> values = {1, 2, 3, 4};
channel->registerValue("values", &values);
// Requires the implementation of DataTamer::TypeDefinition<Point3D>
Point3D position = {0.1, -0.2, 0.3};
channel->registerValue("position", &position);
// save the data as usual ...
channel->takeSnapshot();
}
Compilation
Compiling with ROS2
Just use colcon :)
Compiling with Conan (not ROS2 support)
Note that the ROS2 publisher will NOT be built when using this method.
Assuming conan 2.x installed. From the source directory.
Release:
conan install . -s compiler.cppstd=gnu17 --build=missing -s build_type=Release
cmake -S . -B build/Release -DCMAKE_BUILD_TYPE=Release \
-DCMAKE_TOOLCHAIN_FILE="build/Release/generators/conan_toolchain.cmake"
cmake --build build/Release --parallel
Debug:
conan install . -s compiler.cppstd=gnu17 --build=missing -s build_type=Debug
cmake -S . -B build/Debug -DCMAKE_BUILD_TYPE=Debug \
-DCMAKE_TOOLCHAIN_FILE="build/Debug/generators/conan_toolchain.cmake"
cmake --build build/Debug --parallel
How to deserialize data recorded with DataTamer
I will write more extensively about the serialization format used by DataTamer, but for the time being I created a single header file without external dependencies that you can just copy into your project: data_tamer_parser.hpp
You can see how it is used in this example: mcap_reader
CONTRIBUTING
Repository Summary
Checkout URI | https://github.com/PickNikRobotics/data_tamer.git |
VCS Type | git |
VCS Version | main |
Last Updated | 2024-11-10 |
Dev Status | MAINTAINED |
CI status | No Continuous Integration |
Released | RELEASED |
Tags | No category tags. |
Contributing |
Help Wanted (0)
Good First Issues (0) Pull Requests to Review (0) |
Packages
Name | Version |
---|---|
data_tamer_cpp | 1.0.0 |
data_tamer_msgs | 1.0.0 |
README
DataTamer is a library to log/trace numerical variables over time and takes periodic “snapshots” of their values, to later visualize them as timeseries.
It works great with PlotJuggler, the timeseries visualization tool (note: you will need PlotJuggler 3.8.2 or later).
DataTamer is “fearless data logger” because you can record hundreds or thousands of variables: even 1 million points per second should have a fairly small CPU overhead.
Since all the values are aggregated in a single “snapshot”, it is usually meant to record data in a periodic loop (a very frequent use case, in robotics applications).
Kudos to pal_statistics, for inspiring this project.
How it works
DataTamer can be used to monitor multiple variables in your applications.
Channels are used to take “snapshots” of a subset of variables at a given time. If you want to record at different frequencies, you can use different channels.
DataTamer will forward the collected data to 1 or multiple sinks; a sink may save the information immediately in a file (currently, we support MCAP) or publish it using an inter-process communication, for instance, a ROS2 publisher.
You can easily create your own, specialized sinks.
Use PlotJuggler to visualize your logs offline or in real-time.
Features
- Serialization schema is created at run-time: no need to do code generation.
- Suitable for real-time applications: very low latency (on the side of the callee).
- Multi-sink architecture: recorded data can be forwarded to multiple “backends”.
- Very low serialization overhead, in the order of 1 bit per traced value.
- The user can enable/disable traced variables at run-time.
Limitations
- Traced variables can not be added (registered) once the recording starts (first
takeSnapshot
). - Focused on periodic recording. Not the best option for sporadic, asynchronous events.
- If you use
DataTamer::registerValue
you must be careful about the lifetime of the object. If you prefer a safer RAII interface, useDataTamer::createLoggedValue
instead.
Examples
Basic example
#include "data_tamer/data_tamer.hpp"
#include "data_tamer/sinks/mcap_sink.hpp"
int main()
{
// Multiple channels can use this sink. Data will be saved in mylog.mcap
auto mcap_sink = std::make_shared<DataTamer::MCAPSink>("mylog.mcap");
// Create a channel and attach a sink. A channel can have multiple sinks
auto channel = DataTamer::LogChannel::create("my_channel");
channel->addDataSink(mcap_sink);
// You can register any arithmetic value. You are responsible for their lifetime!
double value_real = 3.14;
int value_int = 42;
auto id1 = channel->registerValue("value_real", &value_real);
auto id2 = channel->registerValue("value_int", &value_int);
// If you prefer to use RAII, use this method instead
// logged_real will unregister itself when it goes out of scope.
auto logged_real = channel->createLoggedValue<float>("my_real");
// Store the current value of all the registered values
channel->takeSnapshot();
// You can disable (i.e., stop recording) a value like this
channel->setEnabled(id1, false);
// or, in the case of a LoggedValue
logged_real->setEnabled(false);
// The next snapshot will contain only [value_int], i.e. [id2],
// since the other two were disabled
channel->takeSnapshot();
}
How to register custom types
Containers such as std::vector
and std::array
are supported out of the box.
You can also register a custom type, as shown in the example below.
#include "data_tamer/data_tamer.hpp"
#include "data_tamer/sinks/mcap_sink.hpp"
#include "data_tamer/custom_types.hpp"
// a custom type
struct Point3D
{
double x;
double y;
double z;
};
namespace DataTamer
{
template <> struct TypeDefinition<Point3D>
{
// Provide the name of the type
std::string typeName() const { return "Point3D"; }
// List all the member variables that you want to be saved (including their name)
template <class Function> void typeDef(Function& addField)
{
addField("x", &Point3D::x);
addField("y", &Point3D::y);
addField("z", &Point3D::z);
}
}
} // end namespace DataTamer
int main()
{
auto channel = DataTamer::LogChannel::create("my_channel");
channel->addDataSink(std::make_shared<DataTamer::MCAPSink>("mylog.mcap"));
// Array/vectors are supported natively
std::vector<double> values = {1, 2, 3, 4};
channel->registerValue("values", &values);
// Requires the implementation of DataTamer::TypeDefinition<Point3D>
Point3D position = {0.1, -0.2, 0.3};
channel->registerValue("position", &position);
// save the data as usual ...
channel->takeSnapshot();
}
Compilation
Compiling with ROS2
Just use colcon :)
Compiling with Conan (not ROS2 support)
Note that the ROS2 publisher will NOT be built when using this method.
Assuming conan 2.x installed. From the source directory.
Release:
conan install . -s compiler.cppstd=gnu17 --build=missing -s build_type=Release
cmake -S . -B build/Release -DCMAKE_BUILD_TYPE=Release \
-DCMAKE_TOOLCHAIN_FILE="build/Release/generators/conan_toolchain.cmake"
cmake --build build/Release --parallel
Debug:
conan install . -s compiler.cppstd=gnu17 --build=missing -s build_type=Debug
cmake -S . -B build/Debug -DCMAKE_BUILD_TYPE=Debug \
-DCMAKE_TOOLCHAIN_FILE="build/Debug/generators/conan_toolchain.cmake"
cmake --build build/Debug --parallel
How to deserialize data recorded with DataTamer
I will write more extensively about the serialization format used by DataTamer, but for the time being I created a single header file without external dependencies that you can just copy into your project: data_tamer_parser.hpp
You can see how it is used in this example: mcap_reader