The Promise and Reality of Generative AI
ChatGPT’s energy consumption is mind-boggling, but that’s not all.
Mass adoption of generative AI hinges on improving processing efficiency and lowering total cost of ownership. Similar to the internet and the invention of its World Wide Web application, generative AI has seized the public’s imagination. ChatGPT, the most popular AI chatbot launched a mere eight months ago, caught the world by surprise, reported to be the fastest growing app in history, reaching 100 million users within the first two months of its existence.
Generative AI is gaining attention across all industry sectors with the promise of unleashing a wave of unparalleled productivity. The potential is massive, from assisting drug discovery and increasing the veracity of a doctor’s medical opinion to improving the accuracy of order delivery estimates and helping programmers write more efficient software code. It is expected to be deployed in about 70% of all work activities, supplementing revenues in excess of US$4 trillion.
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 Blogs
- The Evolution of AI and ML- Enhanced Advanced Driver Systems
- MIPS and GlobalFoundries: Powering the Next Wave of Physical AI
- UEC-LLR: The Future of Loss Recovery in Ethernet for AI and HPC
- CNNs and Transformers: Decoding the Titans of AI
Latest Blogs
- AI in Design Verification: Where It Works and Where It Doesn’t
- PCIe 7.0 fundamentals: Baseline ordering rules
- Ensuring reliability in Advanced IC design
- A Closer Look at proteanTecs Health and Performance Management Solutions Portfolio
- Enabling Memory Choice for Modern AI Systems: Tenstorrent and Rambus Deliver Flexible, Power-Efficient Solutions