ARM, IBM team on low power analog AI chip
By Nick Flaherty, eeNews Europe (September 9, 2022)
Researchers at ARM and IBM have developed a 14nm analog compute in memory chip for low power always on machine learning.
These always-on perception tasks in IoT applications, dubbed TinyML, require very high energy efficiency. Analog compute-in-memory (CiM) using non-volatile memory (NVM) promises high energy efficiency and self-contained on-chip model storage.
However, analog CiM introduces new practical challenges, including conductance drift, read/write noise, fixed analog-to-digital (ADC) converter gain, etc. These must be addressed to achieve models that can be deployed on analog CiM with acceptable accuracy loss.
Researchers from ARM and IBM Research Zurich looked at the TinyML models for the popular always-on tasks of keyword spotting (KWS) and visual wake words (VWW). The model architectures are specifically designed for analog CiM, and detail a comprehensive training methodology, to retain accuracy in the face of analog issues and low-precision data converters at inference time.
To read the full article, click here
Related Semiconductor IP
- AXI to UCIe FDI Interface IP
- 45SPCLO UCIe-Class 1-32Gbps Low Power Receiver IP (NRZ)
- 45SPCLO UCIe-Class 1-32Gbps Low Power Transmitter IP (NRZ)
- Peripheral Sensor Interface (PSI5) Host Controller
- Link Acceleration Unit
Related News
- Blumind Harnesses Analog for Ultra Low Power Intelligence
- Arasan's ultra low power MIPI D-PHY IP achieves ISO26262 Certification
- Socionext to Showcase Leading-Edge Technologies at CES 2024, Featuring Custom SoC Solutions, Low Power Sensors, Smart Display Controller, and Advanced Image Processor
- Nordic Semiconductor and Arm reaffirm partnership with licensing agreement for latest low power processor designs, software platforms, and security IP
Latest News
- onsemi to Acquire Synaptics to Enable the Next Generation of Intelligent Systems for Physical AI
- EdgeAI Licensed Andes Technology CPU IP to Power Next-Generation Edge AI Neuromorphic Solution
- Jim Keller: ‘AI Still Obeys the Old Laws of Compute’
- OpenAI and Broadcom unveil LLM-optimized inference chip
- RAAAM Selects Avnet ASIC as its VCA Partner for TSMC’s 2nm GCRAM Development and Qualification