ASUS Tinker Board T - Yhden piirilevyn tietokone - NXP i.MX 8M 1,5 GHz - RAM 1 GB - Flash 8 GB - 802.11a/b/g/g/n/n/ac, Bluetooth 4.2
FBAC4895-B52C-4E03-B099-A6A8F8B8017B Created with sketchtool. 706D6907-81E1-46A2-B8F9-7B702A1EF2C7 Created with sketchtool. 6A870209-E7F5-44F5-A66F-09E20C85A0DC Created with sketchtool. 0BB04D6C-A9AB-4913-BF4F-5A23954E68E1 Created with sketchtool. 501E26C7-66C1-4DAA-B740-6CFAF55A1B39 Created with sketchtool. C105F7D3-D5EE-43C9-9EE8-05CC42B296D4 Created with sketchtool. D94689D8-7CBB-41C8-AC06-F79D81FF82D5 Created with sketchtool. DA4C7ED9-2512-4D52-94F0-92800F2A6E04 Created with sketchtool. 42E133FD-828F-4CF4-A0BF-560014487A57 Created with sketchtool. F52D9745-4BFD-4506-BEEF-630FD09EF2D9 Created with sketchtool.
Etävarasto (16-23 päivää)
Tuotetta on etävarastossa. Toimitusaika 16-23 arkipäivää. Lisätietoja

Bring - Toimitus huoltopisteeseen

Katso kuljetusvaihtoehdot
Bring - Toimitus huoltopisteeseenGratis
Bring - Kotiinkuljetus -arkisin.25,10
EUR 338,80
ilman ALV 269,96
Kokonaishinta sis. toimitus 338,80
The ASUS Tinker Board T is a versatile single-board computer designed for artificial intelligence applications. It features a powerful 5-core i.MX 8M processor that operates at a clock speed of 1.5 GHz, ensuring efficient performance for complex tasks. With 1 GB of LPDDR4 SDRAM and an integrated Google Edge TPU ML accelerator coprocessor, this device is well-suited for machine learning workloads and real-time processing. Its compact form factor is paired with extensive connectivity options including HDMI, Gigabit Ethernet, USB 3.2 Gen 1, and multiple GPIO ports, making it ideal for both development and deployment in various AI projects. Equipped with 8 GB flash memory that supports microSD, microSDHC, and microSDXC cards, the ASUS Tinker Board T offers flexibility in storage expansion. This ensures that users can run diverse applications and store sufficient data without limitation. Additionally, it supports a wide array of networking protocols such as Gigabit Ethernet, Bluetooth 4.2, and multiple Wi-Fi standards, enhancing its connectivity and usability in networked environments. The integration of TensorFlow Lite and Debian Linux adds convenience for developers looking to implement machine learning models and applications directly on the board.