Addressing the challenges of embedded analytics
Mark Nadeski, Texas Instruments
August 31, 2015
Analytics are often touted as the solution to many problems across a variety of embedded applications such as surveillance, automotive, industrial, and even purpose-built high-performance compute servers. While there are a variety of processing solutions to run the many analytic algorithms that exist, it’s important that designers pick the technology that will be the most efficient and effective for their design. This is even more important in the area of embedded analytics where solutions are often extremely size and power constrained. In these embedded spaces especially, the real-time, math intensive architecture of digital signal processors (DSPs) are proving to be an extremely efficient processing solution.
Embedded analytics are all around us. They’re in our cars and our places of work and in our homes. Most new automobiles are great examples of intelligent analytics systems. Whether helping people to parallel park or automatically accelerating and braking as part of an adaptive cruise control system, advanced driver assistance systems (ADAS) are becoming increasingly commonplace.
To read the full article, click here
Related Semiconductor IP
- Band-Gap Voltage Reference with dual 2µA Current Source - X-FAB XT018
- 250nA-88μA Current Reference - X-FAB XT018-0.18μm BCD-on-SOI CMOS
- UCIe D2D Adapter & PHY Integrated IP
- Low Dropout (LDO) Regulator
- 16-Bit xSPI PSRAM PHY
Related Articles
- Bigger Chips, More IPs, and Mounting Challenges in Addressing the Growing Complexity of SoC Design
- The evolution of embedded devices: Addressing complex design challenges
- The Future of Embedded FPGAs - eFPGA: The Proof is in the Tape Out
- How Low Can You Go? Pushing the Limits of Transistors - Deep Low Voltage Enablement of Embedded Memories and Logic Libraries to Achieve Extreme Low Power
Latest Articles
- SCENIC: Stream Computation-Enhanced SmartNIC
- Agentic AI-based Coverage Closure for Formal Verification
- Microarchitectural Co-Optimization for Sustained Throughput of RISC-V Multi-Lane Chaining Vector Processors
- RISC-V Functional Safety for Autonomous Automotive Systems: An Analytical Framework and Research Roadmap for ML-Assisted Certification
- Emulation-based System-on-Chip Security Verification: Challenges and Opportunities