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AI Toolkits in IoT Ecosystem: Mainlining Network Intelligence and High-Performance
Introducing AI features to IoT devices result in uncovering the unexplored benefits in terms of processing time, cost of workforce, and software updates.
FREMONT, CA: Partnering with Neurosense, SensiML Corporation introduces SensiML AI Analytics Toolkit, which is a combined solution for developers seeking to build small intelligent factors for IoT. SensiML, provider of AI tools for IoT, contributes to the building of the innovative tools suite as independent software suppliers. It focuses on expending the support to a broad array of IoT microcontrollers and SoCs.
SensiML AI Analytics Toolkit provides a solution to develop intelligent endpoint devices shortly and more efficiently. It optimizes and generates a predictive algorithm automatically after detecting the captured data. The saved time and energy in coding, testing, and re-coding of the redundant data can be focused on extending algorithm capabilities of the smart devices. The optimized algorithms are executed locally on the embedded sensor node, eliminating the need for any gateway or cloud; the application benefits from the real-time processing and service delivery.
The toolkit can efficiently streamline initial prototyping and proof-of-concept work, which addresses the entire workflow for data-driven algorithm design. It allows the developers to test the sensor applications quickly and avoid any future issues. The machine learning capabilities of the tool makes the devices move much faster for the customer use and allows the developers to update over time through crowd-sourced data feedbacks.
SensiML builds a network which handles steps to progress the initial sensor data collections with prototype hardware and generate optimized code for validation and testing for updates and learning simultaneously. The developed analytical engine delivers an AI algorithm optimized to the devices, which balances the accuracy with the resource constraints of the target hardware. SensiML provides software solution to implement AI methods in ultra-low IoT endpoints to transform raw sensor data into a productive insight.