NVIDIA DGX Spark is a pint-sized “AI supercomputer” for your desk. Built around NVIDIA’s GB10 Grace Blackwell Superchip, it’s designed to let developers and researchers prototype, fine-tune, and run inference on large AI models locally without booking time on a data center cluster. It offers up to 1 petaFLOP (FP4) of AI performance and 128GB of unified memory in a compact form factor, with NVIDIA’s AI software stack preinstalled.
DGX Spark is built for the “make it work on my desk” phase of AI:
No, DGX Spark is a hardware system, while Apache Spark is a distributed data processing framework. The nice part is that if you do use Apache Spark, NVIDIA’s RAPIDS Accelerator for Apache Spark can offload parts of your pipelines to the GPU, and DGX Spark supports that stack.
NVIDIA’s official product page for DGX Spark focuses on specs and signups, while availability runs through NVIDIA and partner OEMs. NVIDIA announced that Acer, ASUS, Dell, GIGABYTE, HP, Lenovo, and MSI will offer DGX Spark systems, with availability starting in July (regional rollout varies).
As for pricing, reports suggest configurations starting at around $3,999, though final prices depend on the OEM and storage options. Some retail pages still show “coming soon,” so check partner listings for current pricing and stock.
If DGX Spark is your deskside development box, DGX Station is the desktop AI powerhouse. DGX Station (GB300 Ultra) targets the most demanding training and fine-tuning jobs, delivering up to ~20 petaFLOPs (FP4) and hundreds of gigabytes of unified memory. It is much larger and designed for teams or shared lab environments.
Yes if you’re an AI developer, data scientist, or researcher who constantly iterates on LLMs, agents, or multimodal models and needs fast local turnaround, private data handling, and a software stack that maps cleanly to the data center or cloud.
Maybe not, if your needs are limited to GPU rendering or gaming, or if you already have steady access to cluster or HPC time. In that case, a traditional workstation or cloud credits could be more cost effective.