Custom Lux Data Science and Deep Learning Workstation

$24,999.99

 

 

-

Description

Custom Lux Data Science and Deep Learning Workstation

 

Unrivaled Performance for Your AI and Deep Learning Needs

Build your AI future on a foundation of power and reliability with the Custom Lux Deep Learning Workstation. Engineered to handle the most demanding deep learning training and inference tasks, this workstation combines cutting-edge hardware optimized for machine learning, neural networks, and AI research.


Top-Tier Processor for Deep Learning Workloads

  • AMD Ryzen Threadripper PRO 7975WX — 32-Core / 64-Thread CPU @ 2.5GHz (Boost to 5.3GHz)

  • Designed for intensive multitasking and parallel deep learning workloads, delivering blazing-fast CPU performance.


Enterprise-Grade Motherboard for Maximum Expandability

  • ASUS Pro WS TRX50-SAGE WIFI sTR5 CEB Motherboard

  • Supports PCIe Gen 5.0, enabling next-gen GPU configurations critical for high-performance AI.


High-Capacity, High-Speed Memory for Large Dataset Processing

  • 256GB DDR5 5600MHz ECC RAM

  • Provides the bandwidth and capacity required for handling massive datasets and complex model training.


Blazing-Fast Storage with NVMe SSD for AI Data Access

  • 4TB Samsung Gen 4 990 Pro M.2 NVMe SSD

  • Ensures rapid loading, saving, and processing of AI training data and model checkpoints.


Powerful NVIDIA RTX 6000 Blackwell GPUs for Deep Learning

  • Supports up to 4 NVIDIA RTX 6000 Blackwell Workstation GPUs

  • Offers unparalleled parallel processing power for deep neural network training and AI inferencing.


Advanced Cooling and Efficient Power Supply for Stability

  • Custom air cooling optimized for Threadripper PRO CPU

  • Corsair 2000W 80+ Gold Fully Modular PSU with 10-Year Warranty

  • Maintains peak performance with reliable cooling and power delivery during extended training sessions.


Customizable Deep Learning Workstation Solutions

  • Flexible configuration options for GPU count, memory, storage, and chassis

  • Server rack mounting and enhanced cooling solutions available for enterprise deployments


Why Choose Custom Lux for Your Deep Learning Workstation?

  • Optimized for AI and Machine Learning: Tailored to accelerate TensorFlow, PyTorch, JAX, and other deep learning frameworks.

  • Scalable Multi-GPU Support: Perfect for training large models faster and handling data-heavy tasks.

  • Reliable & Future-Proof: Built with enterprise-grade components ensuring stability and longevity for demanding research.


Order Your Custom Lux Deep Learning Workstation Today

Elevate your AI research and machine learning capabilities with a workstation engineered for performance, reliability, and expandability.
Contact us now to customize your perfect Deep Learning Workstation!

Request a Build for Customizations (Recommended)

 

Text us Before You Order

 

Key Applications:

  • Deep Learning Training
  • Artificial Intelligence Training
  • Animation and Modeling
  • Virtualization and Cloud Computing
  • High-Performance Computing (HPC)

 

Custom Lux Data Science and Deep Learning Workstation Specifications:

Processor: AMD Ryzen Threadripper PRO 7975WX 2.5 Ghz 32-core sTR5 Processor

Motherboard: ASUS Pro WS TRX50-SAGE WIFI sTR5 CED Motherboard

RAM: 256 GB DDR5 5600 Mhz ECC 

Solid State Drive: 4 TB Samsung Gen 4 990 Pro M.2 NVMe SSD (Ask for modifications)

Graphics card: NVIDIA RTX Pro 6000 Blackwell Workstation Edition (Up to 4 GPUs, A4000 – A6000 Ada, NVIDIA Tesla, and more!)

Case: E-ATX case with maximum cooling (Ask for server rack and more)

Power Supply: 2000W Power Supply 80+ Gold with 10 year warranty

Cooler: Custom Ryzen Threadripper air cooling

 

Features: Wifi, Windows or Linux Office Suite (Word, Excel, PowerPoint), all drivers and updates installed, lifetime warranty, free lifetime tech support

 

Customize this build further by filling out the “request a build” form or email us at customluxpc@gmail.com with any questions! We respond very quickly and are happy to help you give you the best bang for your buck.