Supplier eBooks

Micron - 5 Experts on Addressing the Hidden Challenges of Embedding Edge AI into End Products

Issue link: https://resources.mouser.com/i/1529106

Contents of this Issue

Navigation

Page 12 of 21

Overall, the right balance between all these variables depends largely on the type of AI inference being performed at the edge. For example, complex image recognition or natural language processing inference may require more sophisticated neural networks and larger model sizes, necessitating higher memory bandwidth and capacity. In contrast, simpler sensor-based inference tasks may have lower memory requirements but demand faster response times. Ultimately, when selecting memory solutions and designing overall system architectures for edge AI applications, designers must carefully consider the specific inference workload, its performance requirements, and operational constraints. Micron is helping designers navigate the design considerations of edge AI systems by • Offering a comprehensive range of high- performance, low-power memory solutions optimized for edge AI applications • Collaborating with leading chipset manufacturers to ensure memory compatibility and performance optimization for next-generation AI platforms • Providing expertise on memory technology selection and balancing factors like bandwidth, capacity, and power efficiency for specific AI workloads • Developing ruggedized memory options that meet the stringent reliability and longevity requirements of industrial edge AI deployments C h a p t e r 2 | D e s i g n C o n s i d e r a t i o n s f o r E m b e d d e d A I Many factors need to be considered when designing edge AI solutions, including careful overview of integration complexity, scalability, and market considerations, to name a few." Mark Harvey Principal FAE, SiMa.ai 13 5 Experts on Addressing the Hidden Challenges of Embedding Edge AI into End Products

Articles in this issue

Links on this page

view archives of Supplier eBooks - Micron - 5 Experts on Addressing the Hidden Challenges of Embedding Edge AI into End Products