Why AI Requires a New Chip Architecture
According to Allied Market Research, the global artificial intelligence (AI) chip market is projected to reach $263.6 billion by 2031. The AI chip market is vast and can be segmented in a variety of different ways, including chip type, processing type, technology, application, industry vertical, and more. However, the two main areas where AI chips are being used are at the edge (such as the chips that power your phone and smartwatch) and in data centers (for deep learning inference and training).
No matter the application, however, all AI chips can be defined as integrated circuits (ICs) that have been engineered to run machine learning workloads and may consist of FPGAs, GPUs, or custom-built ASIC AI accelerators. They work very much like how our human brains operate and process decisions and tasks in our complicated and fast-moving world. The true differentiator between a traditional chip and an AI chip is how much and what type of data it can process and how many calculations it can do at the same time. At the same time, new software AI algorithmic breakthroughs are driving new AI chip architectures to enable efficient deep learning computation.
Read on to learn more about the unique demands of AI, the many benefits of an AI chip architecture, and finally the applications and future of the AI chip architecture.
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
- LPDDR6: A New Standard and Memory Choice for AI Data Center Applications
- A Hybrid Subsystem Architecture to Elevate Edge AI
- Why What Where DIFI and the new version 1.3
- Rethinking Edge AI Interconnects: Why Multi-Protocol Is the New Standard
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