Using Open-Source Hardware to Speed Product Development
By Robert Huntley, EETimes Europe (October 4, 2023 )
Can I build a commercial product based on Arduino? Can I utilize a board’s schematics and CAD files and create my own design? EE Times Europe spoke with Arduino’s Adriano Chinello to find out the licensing requirements.
Incorporating a commercially available open-source single board computer into an end product saves considerable time and non-recoverable engineering expenses. EE Times Europe spoke with Arduino’s PRO business unit lead Adriano Chinello to find out the licensing requirements.
Embedded systems are omnipresent. They quietly go about controlling and managing everything from the spin cycle of our washing machine to adjusting the position of our car seats. Also, as machine learning algorithms relieve us of some of the tedious tasks by adding automation to our digital relationships, embedded systems are inevitably becoming more complex.
To read the full article, click here
Related Semiconductor IP
- NPU IP Core for Mobile
- NPU IP Core for Edge
- Specialized Video Processing NPU IP
- HYPERBUS™ Memory Controller
- AV1 Video Encoder IP
Related News
- OpenHW Group Announces Tape Out of RISC-V-based CORE-V MCU Development Kit for IoT Built with Open-Source Hardware & Software
- Synopsys Introduces Virtualizer Native Execution on Arm Hardware to Accelerate Software-defined Product Development
- Samsung Accelerates New Product Ramp for 7nm Technology Node Using Synopsys' Yield Explorer
- UltraSoC collaborates with PDF Solutions to prevent in-life product failures using end-to-end analytics and advanced machine learning techniques
Latest News
- Jim Keller: ‘Whatever Nvidia Does, We’ll Do The Opposite’
- FlexGen Streamlines NoC Design as AI Demands Grow
- IntoPIX Presents Its New Titanium Software Suite: Empowering AV-Over-IP Workflows With Speed, Quality & Interoperability
- Global Semiconductor Sales Increase 2.5% Month-to-Month in April
- Speedata Raises $44M to Launch First-Ever Chip Designed Specifically for Accelerating Big Data Analytics - Compute's Second Largest Workload