Embedded AI and Machine Learning - Adding New Advancements in the Tech Space
As sensor and MCU costs decreased, an ever-increasing number of organizations have attempted to exploit this by adding sensor-driven embedded AI to their products.
As sensor and MCU costs decreased, an ever-increasing number of organizations have attempted to exploit this by adding sensor-driven embedded AI to their products.
The more sophisticated machine learning tools that are optimized for signal problems and embedded deployment can cut months, or even years, from an R&D cycle.
A project is something created by an individual/small team in a lab and works in a limited range of conditions; a product works everywhere and in all kinds of unpredictable conditions.
Reality AI Tools 4.0 allows customers to use artificial intelligence to reduce the cost of developing, procuring and manufacturing smart devices.
Bias in a technical, statistical sense can be a good thing – or at least a useful thing – so long as you recognize it, understand the effect it has and manage it.
This post offers tips on collecting data from high-sample-rate sensors for use with machine learning.
Machine learning projects can be successful through understanding ground truth, curating the data and not overtraining a machine learning model.
Renesas released direct communication tool between customers and partners in Sep/2022. Customers can get high level solution proposal from R-Car Consortium partners to your problems and accelerate automotive development.
In this blog, we will present our work on solutions to facilitate the creation of remote development environments used in in-vehicle software development.
Efficient development using the security solution for Renesas' RL78 16-bit automotive microcontroller (Free sample software, Security Renesas Solution Starter Kit)!