GPU Comparison

Select up to 2 GPUs to analyze their pricing, performance, and specifications side-by-side.

Workstation Verdict

The Arc Pro A60 has more VRAM (24GB vs 16GB), making it better suited for large models and memory-intensive workloads. Its memory bandwidth is 33% higher (384 GB/s vs 288 GB/s), translating directly to faster inference throughput.

Maximum Capacity Reached. Remove a model to add another. (2/2)

VS
Price
Awaiting Data
VRAM
24 GB GDDR6
Mem. Speed
384 GB/s
FP32 Compute
14.7 TFLOPS
Key Specs Advantage
+50% Memory Bus (192-bit vs 128-bit)
+33% Bandwidth (384 GB/s vs 288 GB/s)
NVIDIA
RTX PRO 2000 Blackwell
Price
$840 USD
VRAM
16 GB GDDR7
Mem. Speed
288 GB/s
FP32 Compute
17 TFLOPS
Key Specs Advantage
+42% CUDA Cores (4,352 vs 3,072)
+16% FP32 (TFLOPS) (17 TFLOPS vs 14.7 TFLOPS)

Arc Pro A60 vs RTX PRO 2000 Blackwell: In-Depth Breakdown

VRAM: Arc Pro A60 vs RTX PRO 2000 Blackwell

The Arc Pro A60 carries 24GB of VRAM versus 16GB on the RTX PRO 2000 Blackwell. VRAM capacity is the primary constraint for running AI models without quantization — a 70B-parameter model in FP16 requires roughly 140GB, and even smaller models benefit from extra headroom. The 8GB advantage here means the Arc Pro A60 can run larger models natively and handle bigger batch sizes in production.

Inference Speed: Memory Bandwidth

Memory bandwidth determines how quickly data is fed to the compute units — it's the main bottleneck for autoregressive inference (token generation in LLMs). The Arc Pro A60 delivers 384 GB/s versus 288 GB/s on the RTX PRO 2000 Blackwell, a 33% edge. For models already loaded into VRAM, token generation speed scales closely with this number: the Arc Pro A60 will produce tokens proportionally faster in bandwidth-bound workloads.

AI Training & Compute

For model training, scientific simulation, and rendering, FP32 throughput is the key metric. The RTX PRO 2000 Blackwell delivers 17 TFLOPS against 14.7 TFLOPS for the Arc Pro A60 — a 16% compute advantage. Training runs and heavy matrix operations will complete proportionally faster on the RTX PRO 2000 Blackwell.

Which should you buy: Arc Pro A60 or RTX PRO 2000 Blackwell?

The Arc Pro A60 is the stronger choice for large-model workloads where VRAM is the bottleneck. The RTX PRO 2000 Blackwell is more economical, and sufficient if your models fit within its 16GB.

Frequently Asked Questions

Can the Arc Pro A60 or RTX PRO 2000 Blackwell run large language models?

Both can, but the Arc Pro A60 (24GB) handles larger models without quantization. The RTX PRO 2000 Blackwell (16GB) works well for smaller or heavily quantized models.

Which is faster for LLM inference, the Arc Pro A60 or the RTX PRO 2000 Blackwell?

The Arc Pro A60 is faster for token generation — its 384 GB/s memory bandwidth vs 288 GB/s on the RTX PRO 2000 Blackwell is the primary driver of inference throughput in autoregressive models.

Which is better for AI training?

The RTX PRO 2000 Blackwell has the advantage at 17 TFLOPS vs 14.7 TFLOPS, making training runs proportionally faster than on the Arc Pro A60.

Technical Specifications Comparison

Architecture & Cores

SpecificationArc Pro A60RTX PRO 2000 Blackwell
ArchitectureXe-HPGBlackwell
CUDA Cores (Shading Units / CUDA Cores)3,0724,352

Memory

SpecificationArc Pro A60RTX PRO 2000 Blackwell
VRAM Capacity24 GB16 GB
Memory TypeGDDR6GDDR7
Memory Bus192-bit128-bit
Bandwidth384 GB/s288 GB/s

Connectivity & Power

SpecificationArc Pro A60RTX PRO 2000 Blackwell
InterfacePCIe 4.0 x8PCIe 5.0 x8
TDP75 W70 W
ReleasedJun 2023Mar 2025

Workstation

SpecificationArc Pro A60RTX PRO 2000 Blackwell
FP32 (TFLOPS)14.7 TFLOPS17 TFLOPS
ECCYes
NVLinkNoNo
Form factordual-slotlow-profile