Democratizes access to IoT edge AI technology and enables developers to contribute to ongoing advances for AI at the extreme edge
SensiML™ Corporation, a leader in AI software for IoT and a subsidiary of QuickLogic, is excited to announce the official launch of its highly anticipated open-source initiative Piccolo AI™. Developers, researchers, and AI enthusiasts can now access the first open-source AutoML solution for IoT edge AI, designed to streamline the creation of intelligent sensor algorithms at the edge.
The initiative, which was announced earlier last month, is now live and includes a suite of resources to support the involvement of the broader developer community. The new open-source project website, available at sensiml.org, serves as the central hub for all project-related information, updates, and documentation. Additionally, SensiML has launched a dedicated community forum at forum.sensiml.org to facilitate discussions, collaborations, and knowledge sharing among developers.
The heart of the initiative, the GitHub repository at github.com/sensiml/piccolo, offers free access to the AutoML codebase. This repository empowers users to not only utilize cutting-edge technology for their own projects but also to contribute to the continuous improvement and innovation of the solution. By becoming active contributors, developers can play a vital role in advancing the capabilities of edge AI.
Also Read: embedUR Systems launches ModelNova, revolutionizing AI application development for small devices.
“We are thrilled to make our AutoML solution available as an open-source project,” said Chris Rogers, CEO of SensiML. “This launch is a significant milestone in our mission to democratize access to AI technology and enable developers to create powerful, intelligent edge solutions with greater ease and efficiency. We believe that the collaborative power of the open-source community will drive rapid advancements in edge AI technology.”
Key Features of the SensiML Open-Source AutoML Solution:
- Automated Machine Learning: Simplifies the creation of machine learning models for sensor data with minimal manual intervention.
- Edge Optimization: Tailored for the constraints of embedded systems, ensuring efficient performance and low power consumption.
- Comprehensive Documentation: Detailed guides, tutorials, and API references to help developers get started quickly and effectively.
- Community Support: Engage with fellow developers, share insights, and seek advice on the SensiML Forum.
- Active Contribution: Collaborate on the GitHub Repository to enhance and expand the AutoML solution.
Source: PRNewswire