Repository Summary
Checkout URI | https://github.com/aws-robotics/lex-ros1.git |
VCS Type | git |
VCS Version | master |
Last Updated | 2022-02-08 |
Dev Status | UNMAINTAINED |
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 |
---|---|
lex_common_msgs | 2.0.2 |
lex_node | 2.0.2 |
README
lex_node
Overview
The ROS lex_node
node enables a robot to comprehend natural language commands by voice or textual input and respond through a set of actions, which an AWS Lex Bot maps to ROS messages. Out of the box this node provides a ROS interface to communicate with a specified Amazon Lex bot (configured via lex_config.yaml) and requires configuration of AWS credentials. The Amazon Lex bot needs to be defined with responses and slots for customer prompts. A set of default slots and mappings are demonstrated in the sample app and include actions as “Create
Delivering a voice-enabled customer experience (e.g. “Robot, go to x”) will require dialog facilitation, wake word, and offline processing which are not yet provided by this integration. A wake word would trigger the dialog facilitation node to start recording and send the audio to Amazon Lex, then prompt the user for more information should Amazon Lex require it.
The ROS lex_node
wraps the aws-sdk-c++ in a ROS service API.
Amazon Lex Summary: Amazon Lex is a service for building conversational interfaces into any application using voice and text. Amazon Lex provides the advanced deep learning functionality of automatic speech recognition (ASR) for converting speech to text, and natural language understanding (NLU) to recognize the intent of the text, to enable you to build applications with highly engaging user experiences and lifelike conversational interactions. With Amazon Lex, the same deep learning technologies that power Amazon Alexa are now available to any developer, enabling you to quickly and easily build sophisticated, natural language, conversational bots (“chatbots”).
License
The source code is released under an Apache 2.0.
Author: AWS RoboMaker
Affiliation: Amazon Web Services (AWS)
RoboMaker cloud extensions rely on third-party software licensed under open-source licenses and are provided for demonstration purposes only. Incorporation or use of RoboMaker cloud extensions in connection with your production workloads or commercial product(s) or devices may affect your legal rights or obligations under the applicable open-source licenses. License information for this repository can be found here. AWS does not provide support for this cloud extension. You are solely responsible for how you configure, deploy, and maintain this cloud extension in your workloads or commercial product(s) or devices.
Supported ROS Distributions
- Kinetic
- Melodic
Installation
AWS Credentials
You will need to create an AWS Account and configure the credentials to be able to communicate with AWS services. You may find AWS Configuration and Credential Files helpful.
This node requires an IAM User with the following permission policy:
AmazonLexRunBotsOnly
Building from Source
To build from source you’ll need to create a new workspace, clone and checkout the latest release branch of this repository, install all the dependencies, and compile. If you need the latest development features you can clone from the master
branch instead of the latest release branch. While we guarantee the release branches are stable, the master
should be considered to have an unstable build due to ongoing development.
-
Install build tool: please refer to
colcon
installation guide -
Create a ROS workspace and a source directory
mkdir -p ~/ros-workspace/src
-
Clone the package into the source directory .
cd ~/ros-workspace/src git clone https://github.com/aws-robotics/lex-ros1.git -b release-latest
-
Install dependencies
cd ~/ros-workspace sudo apt-get update && rosdep update rosdep install --from-paths src --ignore-src -r -y
Note: If building the master branch instead of a release branch you may need to also checkout and build the master branches of the packages this package depends on.
-
Build the packages
cd ~/ros-workspace && colcon build
-
Configure ROS library Path
source ~/ros-workspace/install/setup.bash
-
Build and run the unit tests
colcon build --packages-select lex_node --cmake-target tests colcon test --packages-select lex_node && colcon test-result --all
Launch Files
An example launch file called sample_application.launch
is provided.
Usage
Resource Setup
- Go to Amazon Lex
- Create sample bot: BookTrip
- Select publish, create a new alias
- Modify the configuration file in
config/sample_configuration.yaml
to reflect the new alias (rebuild the package if not modifying the configuration in the install space).
Run the node
-
With launch file using parameters in .yaml format (example provided)
- ROS:
roslaunch lex_node sample_application.launch
- ROS:
Send a test voice message
`rosservice call /lex_node/lex_conversation "{content_type: 'text/plain; charset=utf-8', accept_type: 'text/plain; charset=utf-8', text_request: 'make a reservation', audio_request: {data: ''}}"`
Verify the test voice was received
- Receive response from Amazon Lex and continue conversation
Configuration File and Parameters
An example configuration file called sample_configuration.yaml
is provided.
Client Configuration
Namespace:
Name | Type |
---|---|
region | String |
userAgent | String |
endpointOverride | String |
proxyHost | String |
proxyUserName | String |
proxyPassword | String |
caPath | String |
caFile | String |
requestTimeoutMs | int |
connectTimeoutMs | int |
maxConnections | int |
proxyPort | int |
useDualStack | bool |
enableClockSkewAdjustment | bool |
followRedirects | bool |
Amazon Lex Configuration
Namespace:
Key | Type | Description |
---|---|---|
user_id | string | e.g. “lex_node” |
bot_name | string | e.g. “BookTrip” (corresponds to Amazon Lex bot) |
bot_alias | string | e.g. “Demo” |
Performance and Benchmark Results
We evaluated the performance of this node by runnning the followning scenario on a Raspberry Pi 3 Model B:
- Launch a baseline graph containing the talker and listener nodes from the roscpp_tutorials package, plus two additional nodes that collect CPU and memory usage statistics. Allow the nodes to run for 60 seconds.
- Launch the ROS
lex_node
using the launch filelex_node.launch
as described above. At the same time, make calls to the/lex_node/lex_conversation
service by running the following script in the background:
rosservice call /lex_node/set_logger_level "{logger: 'ros.lex_node', level: 'debug'}"
rosservice call /lex_node/lex_conversation "{content_type: 'text/plain; charset=utf-8', accept_type: 'text/plain; charset=utf-8', text_request: 'Make a reservation', audio_request: {data: ''}}" && sleep 1
rosservice call /lex_node/lex_conversation "{content_type: 'text/plain; charset=utf-8', accept_type: 'text/plain; charset=utf-8', text_request: 'Seattle, WA', audio_request: {data: ''}}" && sleep 1
rosservice call /lex_node/lex_conversation "{content_type: 'text/plain; charset=utf-8', accept_type: 'text/plain; charset=utf-8', text_request: 'Tomorrow', audio_request: {data: ''}}" && sleep 1
rosservice call /lex_node/lex_conversation "{content_type: 'text/plain; charset=utf-8', accept_type: 'text/plain; charset=utf-8', text_request: 'Next Monday', audio_request: {data: ''}}" && sleep 1
rosservice call /lex_node/lex_conversation "{content_type: 'text/plain; charset=utf-8', accept_type: 'text/plain; charset=utf-8', text_request: '40', audio_request: {data: ''}}" && sleep 1
rosservice call /lex_node/lex_conversation "{content_type: 'text/plain; charset=utf-8', accept_type: 'text/plain; charset=utf-8', text_request: 'economy', audio_request: {data: ''}}" && sleep 1
rosservice call /lex_node/lex_conversation "{content_type: 'text/plain; charset=utf-8', accept_type: 'text/plain; charset=utf-8', text_request: 'yes', audio_request: {data: ''}}"
- Allow the nodes to run for 180 seconds.
- Terminate the ROS
lex_node
, and allow the remaining nodes to run for 60 seconds.
The following graph shows the CPU usage during that scenario. The 1 minute average CPU usage starts at 15% during the launch of the baseline graph, and stabilizes around 9%. When we launch the lex_node
node around second 85 the 1 minute average CPU increases up to a peak of 27.75%, and stabilizes around 24% while the lex_node
node serves the service calls. After that the 1 minute average CPU usage is kept around 12% until we stop the lex_node
node around second 360.
The following graph shows the memory usage during that scenario. We start with a memory usage of around 253 MB for the baseline graph, that increases to a around 280 MB (+10.67%) after launching the lex_node
node around second 85, and increases again to a peak of 300 (+18.58% wrt initial value) while the lex_node
node serves the service calls. After that the memory usage decreases to around 278 MB, and keeps this way until going back to 253 MB after we stop the lex_node
node.
Node
lex_node
Enables a robot to comprehend natural language commands by voice or textual input and respond through a set of actions.
Services
Topic: ~/lex_conversation
AudioTextConversation
Request:
Key | Type | Description |
---|---|---|
content_type | string | The input data type to request Amazon Lex |
accept_type | string | The Amazon Lex output data type desired |
text_request | string | Input text data for Lex |
audio_request | uint8[] | Common audio msg format, input audio data for Lex |
Response:
Key | Type | Description |
---|---|---|
text_response | string | Output text from Lex, if accept type was text |
audio_response | uint8[] | Output audio data from Lex, if accept type was audio |
slots | KeyValuePair[] | Slots returned from Lex |
intent_name | string | The intent Amazon Lex is attempting to fulfill |
message_format_type | string | Format of output data from Lex |
dialog_state | string | Amazon Lex internal dialog_state |
Subscribed Topics
None
Published Topics
None
Bugs & Feature Requests
Please contact the team directly if you would like to request a feature.
Please report bugs in Issue Tracker.
CONTRIBUTING
Contributing Guidelines
Thank you for your interest in contributing to our project. Whether it’s a bug report, new feature, correction, or additional documentation, we greatly value feedback and contributions from our community.
Please read through this document before submitting any issues or pull requests to ensure we have all the necessary information to effectively respond to your bug report or contribution.
Reporting Bugs/Feature Requests
We welcome you to use the GitHub issue tracker to report bugs or suggest features.
When filing an issue, please check existing open, or recently closed, issues to make sure somebody else hasn’t already reported the issue. Please try to include as much information as you can. Details like these are incredibly useful:
- A reproducible test case or series of steps
- The version of our code being used
- Any modifications you’ve made relevant to the bug
- Anything unusual about your environment or deployment
Contributing via Pull Requests
Contributions via pull requests are much appreciated. Before sending us a pull request, please ensure that:
- You are working against the latest source on the master branch.
- You check existing open, and recently merged, pull requests to make sure someone else hasn’t addressed the problem already.
- You open an issue to discuss any significant work - we would hate for your time to be wasted.
To send us a pull request, please:
- Fork the repository.
- Modify the source; please focus on the specific change you are contributing. If you also reformat all the code, it will be hard for us to focus on your change.
- Ensure local tests pass.
- Commit to your fork using clear commit messages.
- Send us a pull request, answering any default questions in the pull request interface.
- Pay attention to any automated CI failures reported in the pull request, and stay involved in the conversation.
GitHub provides additional document on forking a repository and creating a pull request.
Finding contributions to work on
Looking at the existing issues is a great way to find something to contribute on. As our projects, by default, use the default GitHub issue labels ((enhancement/bug/duplicate/help wanted/invalid/question/wontfix), looking at any ‘help wanted’ issues is a great place to start.
Code of Conduct
This project has adopted the Amazon Open Source Code of Conduct. For more information see the Code of Conduct FAQ or contact opensource-codeofconduct@amazon.com with any additional questions or comments.
Security issue notifications
If you discover a potential security issue in this project we ask that you notify AWS/Amazon Security via our vulnerability reporting page. Please do not create a public github issue.
Licensing
See the LICENSE file for our project’s licensing. We will ask you to confirm the licensing of your contribution.
We may ask you to sign a Contributor License Agreement (CLA) for larger changes.