Raspberry Pi, the beloved manufacturer of affordable, single-board computers, has been on a roll lately, rapidly expanding its product lineup. This week, the company took another bold step by introducing several new products that enhance the versatility of its latest flagship device, the Raspberry Pi 5. The most exciting additions? A suite of AI-focused add-ons that elevate the Raspberry Pi’s performance in the realm of artificial intelligence and machine learning.
A Quick Look at Raspberry Pi’s Legacy and the Power of the Pi 5
For years, Raspberry Pi has carved a niche as the go-to option for hobbyists, educational institutions, and industrial manufacturers alike. Whether for DIY electronics projects, classroom learning, or product prototyping, these tiny, cost-effective computers have become a staple in tech and education circles. The recent release of the Raspberry Pi 5 pushed boundaries even further, boasting a PCIe 3.0 interface, exposed through a 16-pin connector that has opened up a new world of possibilities.
But Raspberry Pi isn’t stopping there. With the growing demand for AI processing at the edge, the company is now venturing into specialized AI hardware to meet the needs of developers and enthusiasts looking to push the limits of their Pi.
Extending Functionality with HAT+ Cards and SSD Support
A key feature of the Raspberry Pi 5 is its PCIe 3.0 interface, which can be converted to a traditional M.2 connector using the company’s M.2 HAT+ extension cards. HAT, short for “Hardware Attached on Top,” refers to extension cards that can be stacked onto the Raspberry Pi to enhance its capabilities. This clever acronym has become synonymous with the modular flexibility of Raspberry Pi systems, allowing users to customize their Pi to fit their specific needs.
One popular use of the M.2 HAT+ is to add NVMe SSD storage, offering a significant speed boost over traditional storage options. This capability enables faster data access, ideal for applications requiring higher performance, such as media streaming, gaming emulation, and data-heavy machine learning models.
AI on the Raspberry Pi: Hailo-Powered AI HAT+ for Edge Inference
Raspberry Pi has been leaning into AI for some time, and earlier this year, they released an AI Kit — an M.2 extension card equipped with a Hailo neural network inference accelerator. Today, they’ve taken things a step further with the release of a dedicated AI HAT+ add-on board, integrating Hailo’s inference accelerator directly into a sleek, standalone package.
Available in two configurations, the AI HAT+ is capable of performing 13 tera-operations per second (TOPS) or 26 TOPS, priced at $70 and $110, respectively. The 13 TOPS version uses the same Hailo module found in the original AI Kit, providing consistent and reliable performance for edge AI applications. These modules make it easier to deploy AI models on the Raspberry Pi for tasks such as image recognition, object detection, and other neural network-based inference tasks.
Although the Raspberry Pi’s hardware is far from capable of training large AI models like GPT, these AI add-ons offer a low-cost, efficient solution for deploying pre-trained models. With the AI HAT+, developers can bring advanced AI functionalities to edge devices without breaking the bank — making this a powerful tool for smart home projects, robotics, and even industrial automation.
M.2 Storage for Pi 5: Raspberry Pi’s Branded NVMe SSDs
Beyond AI capabilities, Raspberry Pi has introduced its own line of branded NVMe SSDs designed to complement the M.2 HAT+ extension cards. These SSDs are tailored to work seamlessly with the Raspberry Pi 5, ensuring maximum compatibility and performance. The new SSDs are available in two capacities: 256GB for $30 and 512GB for $45.
To put this in context, comparable off-the-shelf SSDs typically cost between $20 and $30 for the 256GB variant, making Raspberry Pi’s offering competitively priced while ensuring that users can trust the drive’s performance and compatibility with their Pi systems.
For those looking for a convenient, all-in-one solution, Raspberry Pi also offers SSD Kit bundles that include both the M.2 HAT+ and an NVMe SSD in a single package. The 256GB SSD Kit is priced at $40, while the 512GB kit is available for $55 — providing a convenient way to upgrade your Pi without the hassle of hunting down compatible components.
Why This Matters for Raspberry Pi Users
While these updates may not seem revolutionary at first glance, they represent an important shift in Raspberry Pi’s ecosystem. The introduction of AI-focused hardware opens up new opportunities for hobbyists, developers, and professionals alike to experiment with machine learning on the edge — all while maintaining the affordability and flexibility that Raspberry Pi is known for.
The SSD upgrades are another step forward, particularly for users who need faster storage options for more demanding applications. Whether you’re tinkering with AI models or simply want quicker access to large datasets, these new storage solutions ensure that your Raspberry Pi 5 can handle the task.
In essence, Raspberry Pi is continuously evolving, adding powerful tools to its growing ecosystem and opening new doors for creativity and innovation. Whether you’re diving into AI or just need a little more power from your tiny computer, these new add-ons make the Pi more versatile than ever.
The Future of Raspberry Pi: Smarter, Faster, and More Capable
As the world moves towards more edge computing and AI-driven applications, Raspberry Pi’s latest releases show that the company is committed to keeping its hardware relevant and up to the challenge. The AI HAT+ and M.2 storage options are just the beginning of a broader push to make Raspberry Pi a go-to platform not only for hobbyists and educators but for advanced developers working on cutting-edge technology.
So, whether you’re experimenting with machine learning or just upgrading your Raspberry Pi 5 setup, Raspberry Pi’s latest offerings promise to deliver more performance, more speed, and more AI capabilities — all without breaking the bank. This is what the future of computing on the edge looks like, and Raspberry Pi is leading the way.