Bringing Power Efficiency to TinyML, ML-DSP and Deep Learning Workloads
In recent times, the need for real-time decision making, reduced data throughput, and privacy concerns, has moved a substantial portion of AI processing to the edge. This shift has given rise to a multitude of Edge AI applications, each introducing its unique set of requirements and challenges. And a $50B AI SoC market is forecast for 2025 [Source: Pitchbook Emerging Tech Research], with Edge AI chips expected to make up a significant portion of this market.
The Shift of AI processing to the edge and its Power Efficiency Imperative
The shift of AI processing to the edge marks a new era of real-time decision-making across a range of applications, from IoT sensors to autonomous systems. This shift helps reduce latency which is critical for instant responses, enhances data privacy through local processing, enables offline functionality, and ensures uninterrupted operation in remote or challenging environments. As these edge applications run under energy constrained conditions and battery powered devices, power efficiency takes center stage in this transformative landscape.
To read the full article, click here
Related Semiconductor IP
- nQrux Secure Boot
- 4K/8K Multiformat IP supporting AV2 decoder
- Ultra Ethernet MAC & PCS 100G/200G/400G/800G
- Ethernet PCS 100G/200G/400G/800G/1.6T
- Ethernet MAC 100G/200G/400G/800G/1.6T
Related Blogs
- Powering Up Efficiency: A Deep Dive into CXL L0p and its Verification
- Neoverse CSS N3: Fastest Path to Market Leading Power Efficiency
- Revolutionizing Power Efficiency in PCIe 6.x: L0p and Flit Mode in Action
- Bringing Silicon Agility to Life with eFPGA and Intel’s 18A Technology
Latest Blogs
- A Repeatable Framework for Hardware Security Assurance
- Inside the SiFive Performance™ P570 Gen 3: High Performance Efficiency for Next-Generation Consumer and Commercial Applications
- What the steam engine can teach us about modern chip design
- Automotive silicon in the era of AI, functional safety, and cybersecurity
- JPEG XS Officially Joins GenICam, The Machine Vision Standard Managed By EMVA