1-832-478-9159 Monday - Friday 9 am - 5 pm

Lenovo ThinkAgile VX3575-G GPU Upgrades

Increase and update your business infrastructure by upgrading the GPU of your Lenovo ThinkAgile VX3575-G server. Upgrading to a pro NVIDIA GPU enhances your workflow with faster perfomance, superior graphics, and essential AI capabilities for business applications like data analytics, AI/ML platforms, design and engineering software, and video content creation tools.

  • Number of GPUs: 8
  • VRAM Technology: GDDR6, HBM2e
  • PCIe Generation: PCIe4.0

CONTACT FOR INQUIRES:
sales@cloudninjas.com

Lenovo ThinkAgile VX3575-G GPU Upgrades
filter icon Filters

Lenovo ThinkAgile VX3575-G Compatible GPUs

1 Items
  • $3,279.00

Lenovo ThinkAgile VX3575-G GPU Configuration

The Lenovo ThinkAgile VX3575-G is a dual-processor server designed for high density acceleration workloads, offering up to 3 PCIe4.0 x16 double-slot GPUs for maximum compute expansion. The system provides abundant PCIe lanes and bandwidth to drive multiple enterprise-grade GPUs simultaneously, making it ideal for AI/ML training, data analytics, rendering, and other GPU-accelerated business applications. The Lenovo ThinkAgile VX3575-G delivers the reliability, throughput, and scalability required for modern compute-intensive workflows in enterprise and datacenter environments.

Technical Guide
Lenovo ThinkAgile VX3575-G GPU server

Cloud Ninjas Lenovo ThinkAgile VX3575-G GPU Upgrade Tips

  •  Lenovo ThinkAgile VX3575-G GPU slots The total number of GPU slots for the Lenovo ThinkAgile VX3575-G workstation are up to 8 single-slot GPUs or 3 dual-slot GPUs. It is important to ensure that the PCIe generation is identical to the generation supported by the CPU.
  •  Lenovo ThinkAgile VX3575-G GPU interface The Lenovo ThinkAgile VX3575-G server supports PCIe4.0 x16 slots for the dual-slot and single-slot GPUs. GPUs that use PCIe5.0 will run at PCIe4.0 speeds.
  •  Lenovo ThinkAgile VX3575-G GPU compatibility validation Ensure your chassis supports full-length / full-height or double-wide GPUs if needed. Note that some servers only support passive-cooled (blower) data-center GPUs such as NVIDIA A100/T4/L40
  •  Lenovo ThinkAgile VX3575-G GPU from Cloud Ninjas Buy “Lenovo ThinkAgile VX3575-G” GPUs today from Cloud Ninjas!
  •  Lenovo ThinkAgile VX3575-G system compatibility We recommend that you confirm the power supply and CPU and can support the newer GPU to avoid botlenecks or installation issues. The Lenovo ThinkAgile VX3575-G has 2 hot swap Redundant 500W to 1100W 80 Plus Platinum or Titanium Power supplies that will only support GPUs that in total use less than the PSU's full capacity.
  •  Lenovo ThinkAgile VX3575-G Memory Generations The memory generations supported by the Lenovo ThinkAgile VX3575-G is GDDR6, and HBM2e.
  •  Lenovo ThinkAgile VX3575-G video modeling tips Upgrade to NVIDIA GPUs built for real-time ray tracing and high-speed viewports to speed up rendering and design workflows in apps like Blender, Maya, SolidWorks, and AI content creation.
  •  Lenovo ThinkAgile VX3575-G VRAM Sizes The Lenovo ThinkAgile VX3575-G can support GPUs that have 16GB to 64GB of VRAM, keep in mind some GPUs have NVLink bridges as perform much better than non NVLink GPUs, hence the higher the VRAM the more performance you get on your AI GPU cluster.

Cloud Ninjas's Lenovo ThinkAgile VX3575-G Q&A

1. What are the benefits of upgrading to a enterprise NVIDIA GPU?
2. How do I know if I need a GPU upgrade?
3. Which NVIDIA GPU is best for AI and machine learning?
4. How much VRAM do I need for professional workloads?
5. Will upgrading my GPU improve 4K or 8K video editing?
6. What hardware do i need to check before upgrading my GPU?
7. Can an older CPU bottleneck a new GPU?
8. Are NVIDIA enterprise GPUs better for business software?
9. Do GPU upgrades help with engineering simulations?
10. How often should businesses upgrade their GPUs?
11. What's the difference between consumer and professional NVIDIA GPUs?
12. Do I need multiple GPUs for AI or rendering?
13. Will uprading my GPU reduce downtime?
14. Do I need to update drivers after installing a new GPU?