×

:

Not a valid Time
This is a required field.

Intel Core Ultra 9 285K Arrow Lake Socket LGA 1851 Processor | BX80768285K

AED 3,699.00
in UAE Pay as low as 308.25 AED per month
In stock
SKU
BX80768285K
  • 5.5 GHz Maximum Turbo Boost Frequency
  • Dual-Channel DDR5-6400 Memory
  • Integrated Intel Graphics & NPU
  • 3.7 GHz P-Core Clock Speed
  • Unlocked for Overclocking
  • Arrow Lake-S Architecture
  • Hybrid Core Architecture
  • 24 Cores & 24 Threads
  • 36MB Cache Memory
  • LGA 1851 Socket
Intel Core Ultra 9 285K Arrow Lake Socket LGA 1851 Processor | BX80768285K
 
Hybrid Core Design
Performance-cores provide the speed to handle high-end games and demanding applications while low-priority and background tasks such as streaming video, playing music, and encoding media are handled by the processor's Efficient-cores.
 
Intel Thread Director
The Intel Thread Director is built into the CPU's cores, working with the operating system to ensure each of the 24 threads are assigned to the right core at the right time.
 
AI Ready
An integrated NPU can handle up to 13 trillion operations per second (TOPs), providing accelerated performance for AI applications and features.
 
PCIe 4.0 & 5.0
This processor supports PCIe 4.0 and PCIe 5.0 technologies, providing a combined total of 24 lanes for exceptional data throughput with compatible devices.
 
Thermal Velocity Boost
Intel Thermal Velocity Boost (TVB) is a technology that unlocks extra CPU performance by pushing the maximum frequency to 5.7 GHz when thermal headroom and turbo power budget are available. It is ideal for burst workloads that have sudden spikes in CPU utilization, providing a temporary performance boost to help avoid slowdowns.
 
Integrated Graphics
The integrated Intel Graphics delivers fast, rich 3D performance for high-quality visuals.
 
Gaussian & Neural Accelerator
Gaussian and Neural Accelerator 3.5 (GNA) technology helps with noise suppression while enhancing background blurring during video chats.
 
Intel Deep Learning Boost
Accelerates AI inference to improve performance for deep learning workloads.