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GPU Computing - NVIDIA GPUs for Ultimate Computing Performance

In modern computer systems, the CPU no longer handles every processing step. With ever new developments in the field of graphics processors, modern graphics cards offer not only a multitude of cores, but above all a tremendous computing power.

GPU computing makes use of this computing power for comprehensive graphics computations, which benefit programmes for video editing, image processing, and 3D animation in particular.

Use the full computing power of your GPU – whether it’s for complex computer simulations, medical procedures, or static calculations. Experience powerful GPU computing solutions from HAPPYWARE.

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Here you'll find GPU Computing

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  • Up to 6 years warranty
  • Individual configuration
  • Used Rack Servers
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  • 5U/Full-Tower Workstation, up to 350W CPU TDP
  • Dual Socket E, 5th/4th Gen Intel Xeon Scalable Processors
  • 16x DIMM slots, up to 2TB RAM DDR5-5600MHz
  • 8x 2.5 Inch hot-swap drive bays
  • 6x PCI-E 5.0 x16 Expansion slots
  • 2x 10GbE RJ45 LAN ports
  • 2x 2200W redundant Power Supplies (Titanium Level)
From €20,999.00 *
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Supermicro AS-8125GS-TNHR | Dual AMD EPYC 8U GPU/HPC Server Supermicro AS-8125GS-TNHR 8U HPC/GPU Server

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8 NIC for GPU direct RDMA (1:1 GPU Ratio)

  • 8U Rackmount Server, 128 Cores/400W cTDP
  • Dual Sockel SP5, AMD EPYC 9004 Series Processors
  • 24x DIMM slots, up to 6TB RAM DDR5-4800MHz
  • 18x 2.5 Inch hot-swap drive bays
  • 8 GPUs, flexible networking options
  • 10x PCI-E 5.0 x16 Expansion slots
  • 6x 3000W redundant Power supplies (Titanium Level)
From €22,819.00 *
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Supermicro AS-2124GQ-NART-LCC | 2U Dual AMD EPYC GPU Server Supermicro AS -2124GQ-NART-LCC GPU Server 4 GPUs

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Liquid Cooling GPU Server

  • 2U Rackmount Server, up to 280W TDP
  • Dual Socket SP3, AMD EPYC 7003 Series Processors
  • 32x DIMM slots, up to 8TB RAM DDR4-3200MHz
  • 4x NVIDIA GPU cards
  • 4x 2.5 hot-swap SATA/NVMe/SAS drive bays
  • 4x PCI-E 4.0 x16 LP slots
  • 2x 2200W redundant power supplies (Platinum Level)
on request
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Supermicro SYS-220HE-FTNR-US | Dual Xeon Hyper-E 2U Rack Server Supermicro SYS-220HE-FTNR-US Server Dual Xeon CPU

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Up to 4 GPUs in Edge Server

32 DIMMs, up to 8TB RAM

  • 2U Rackmount Server, up to 270W TDP
  • Dual Socket P+, 3rd Gen Intel Xeon Scalable Processors
  • 32x DIMM slots, up to 12TB RAM DDR4-3200MHz
  • 6x 2.5 hot-swap NVMe/SATA drive bays
  • 4x PCI-E 4.0 x16 slots with GPU/Accelerator support
  • 6x heavy duty hot-swap fans
  • 2000W redundant AC Power Supplies with PMBus
on request
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Supermicro SYS-420GP-TNAR+-US | Dual Xeon 4U GPU Server Supermicro SYS-420GP-TNAR+-US 4U Server X12 CPU

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8x HGX A100 GPU SXM4

NVIDIA® NVLink™ with NVSwitch™

 
  • 4U Rackmount Server, up to 270W TDP
  • Dual Socket P+, 3rd Gen Intel Xeon Scalable Processors
  • 32x DIMM slots, up to 12TB RAM DDR4-3200MHz
  • 8x NVIDIA HGX A100 GPU and 6x NVIDIA NVSwitch
  • 6x 2.5 Inch hot-swap NVMe/SATA/SAS drive bays
  • 10x PCI-E 4.0 x16 LP slots
  • 4x 3000W redundant Power supplies (Titanium Level)
on request
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Gigabyte G593-ZX1 | Dual AMD EPYC 5U Mainstream HPC/AI Server Gigabyte G593-ZX1 5U AI/HPC Server

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Supports AMD Instinct™ MI300X Accelerators

 
  • 5U Rackmount Server, up to 300W cTDP
  • Dual Socket SP5, AMD EPYC 9004 Series processors
  • 24x DIMM slots, up to 6TB RAM DDR4-4800MHz
  • 8x 2.5 hot-swap drive bays
  • 12x PCI-E 5.0 Expansion slots & 2x M.2
  • Support 8x AMD Instinct™ MI300X OAM GPUs, 2x 10G LAN
  • 6x 3000W redundant power supplies (Titanium Level)
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Gigabyte G593-ZX2 | Dual AMD EPYC 5U Mainstream HPC/AI Server Gigabyte G593-ZX2 5U AI/HPC Server

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Supports AMD Instinct™ MI300X Accelerators

  • 5U Rackmount Server, up to 300W cTDP
  • Dual Socket SP5, AMD EPYC 9004 Series processors
  • 24x DIMM slots, up to 6TB RAM DDR4-4800MHz
  • 8x 2.5 hot-swap drive bays
  • 12x PCI-E 5.0 Expansion slots & 2x M.2
  • Support 8x AMD Instinct™ MI300X OAM GPUs, 2x 10G LAN
  • 6x 3000W redundant power supplies (Titanium Level)
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Gigabyte G383-R80 | AMD Instinct MI300A APU 3U HPC/AI Server Gigabyte G383-R80 3U AI/HPC Server

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Integrated APU, CPU + GPU + Memory

  • 3U Rackmount Server, up to 550W TDP
  • Socket SH5, 4x AMD Instinct™ MI300A APUs
  • 128GB HBM3 unified memory per APU
  • 8x 2.5 hot-swap drive bays
  • 12x PCI-E 5.0 Expansion slots & 1x M.2
  • 4x GPUs, 2x 10G LAN
  • 4x 2200W redundant power supplies (Titanium Level)
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  • 4U Rackmount Server, 72 Cores up to 500W TDP
  • Dual Socket BR, Intel Xeon 6900 Series CPU with P-cores
  • 24x DIMM slots, up to 6TB RAM DDR5-8800MHz
  • 8x E1.S NVMe hot-swap drive bays
  • 1x 1GbE RJ45 LAN
  • 8x PCIe FH, 4x PCIe HHHL slots
  • 4x 3200W redundant power supplies (Titanium Level)
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  • 5U Rackmount Server, 330W cTDP
  • 2x Intel Xeon Platinum 8558 Processors
  • 8x NVIDIA HGX H200 Baseboard with heatsink
  • 32x 64GB DDR5-6400 MHz RDIMM
  • 4x 3840GB PCIe Gen5 PM9D3a 2.5 (15360GB)
  • 8x NVIDIA ConnectX-7 (MCX75310AAS-NEAT*) 200GbE
  • 6x 3000W redundant power supplies (Titanium Level)
From €314,209.00 *
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GPU Computing with NVIDIA GPUs – What Can Modern GPUs Do?

The top models of the NVIDIA H100 series, also known as Hopper GPUs, are among the most powerful graphics cards on the market. They are specifically designed for compute-intensive tasks such as large language models (LLMs) and enterprise AI training.

With up to 16,896 CUDA cores and 1,024 Tensor Cores, the NVIDIA H100 delivers impressive computing power:

  • FP32 peak performance: up to 67 TFLOPS
  • FP64 peak performance: up to 34 TFLOPS
  • Tensor peak performance (TF32): up to 989
  • TFLOPS training performance (FP16 Tensor): up to 3,958 TFLOPS

This makes the H100 ideal for models with more than 175 billion parameters – such as those used in AI research or generative AI.

With a power consumption of up to 700 watts, H100 GPUs are among the most energy-intensive models. For reliable operation, purpose-built servers and cooling solutions tailored to GPU performance are strongly recommended.

Use Cases for GPU Computing

As described above, the top-tier GPU model contains various computing units. This allows GPU computing servers to be used in the following areas:

  • High-Performance Computing: For complex scientific and engineering simulations that require massive parallel processing of large datasets.
  • High-Frequency Trading: In the financial sector, particularly in algorithmic trading, where split-second decisions can determine profit. GPUs are used to analyze vast amounts of real-time market data, calculate advanced predictive models, and execute trades with ultra-low latency to gain a competitive edge.
  • GPU Rendering: For 3D artists, architects, and animation studios creating photorealistic images and animations. GPUs cut render times from hours to minutes and enable real-time visualizations.
  • Video Transcoding: In professional video editing and format conversion (transcoding), GPU computing enables smooth handling of high-resolution material (4K/8K) and significantly faster export times.
  • Deep Learning: The massively parallel architecture of GPUs is optimized for the matrix and tensor operations that underpin deep learning algorithms. This dramatically accelerates both training and inference processes for AI models.

Frequently Asked Questions about GPU Computing

What is GPU Computing?

GPU computing (also known as GPGPU – General Purpose Computation on Graphics Processing Units) refers to the use of a GPU’s massively parallel architecture to accelerate general-purpose computational tasks. Instead of processing tasks sequentially, a GPU can perform thousands of calculations simultaneously, making it ideal for data-intensive applications.

Why is GPU computing critical for AI and deep learning?

Training AI models—especially in deep learning—requires extremely compute-heavy matrix and tensor operations. The architecture of a GPU is designed specifically for these types of parallel mathematical operations. Specialized units further accelerate these tasks, reducing the training time for complex neural networks from months to days. Without GPU computing, modern AI development would be virtually impossible.

Do I need specialized solutions for professional GPU computing?

Yes. While consumer graphics cards already offer high performance, professional applications often require purpose-built GPU solutions. GPU systems from HAPPYWARE are designed for continuous operation and offer key advantages:

  • Specialized GPUs: Deployment of NVIDIA GPUs such as the H100, optimized for compute workloads and equipped with features like increased VRAM and Tensor Cores.
  • Power & Cooling: High-end GPUs have a high power draw (up to 700 watts). Our servers and workstations ensure stable power supply and adequate cooling to maintain consistent performance without throttling.
  • Scalability: Our GPU servers and clusters support up to 16 or more GPUs in a single system for maximum computational performance.

GPU Computing Systems from HAPPYWARE

We are happy to provide tailored GPU computing solutions to meet your specific needs. Here’s an overview of our offerings:

  • GPU Servers: Leverage dedicated computing power with custom-configured GPU servers to supercharge your graphics and compute applications.
  • GPU Clusters: With our expert support, design powerful GPU clusters that execute GPU computing tasks efficiently across distributed systems.
  • GPU Workstations: Massive computing power in a compact form – a custom-built GPU workstation is a flexible and powerful solution for local GPU computing.

HAPPYWARE offers GPU workstations and GPU servers based on platforms from Supermicro, ASUS, Tyan, and GIGABYTE – configurable with up to 16 NVIDIA GPUs. We also provide rack systems ranging from 1U with 4 GPUs to 10U supporting 16 GPUs. Using single-width GPUs, we can even build GPU computing systems with up to 20 cards.

High-End GPU Workstations – Powerful, Scalable, and Versatile

For demanding computational tasks, high-end GPU workstations are available in tower configurations with up to four GPUs. These systems are ideal for AI, deep learning, simulation, and high-performance rendering applications.

Networking options can be flexibly tailored to your infrastructure – from Gigabit Ethernet to FDR InfiniBand, offering bandwidths from 1 Gbit/s to 10 Gbit/s, depending on your application and performance requirements.

GPU Computing – Compute Power for Matrix Operations

Anyone working with GPU computing or graphics programming knows: many calculations are based on matrix operations. This is where GPUs shine – performing such operations in massively parallel fashion directly within the server.

In traditional graphics processing, each pixel or pixel region is assigned a compute core – the higher the resolution, the more shader or compute units are needed. This architecture, designed for graphics output, can be adapted with special software for general-purpose calculations – such as scientific simulations or AI workloads. In this context, we speak of GPGPU (General-Purpose Graphics Processing Unit).

GPU Computing Solutions from HAPPYWARE – Expert Advice and Implementation

Would you like to learn more about GPU computing or explore our custom solutions? Then feel free to contact our GPU computing specialist, Jürgen Kabelitz. He’ll be happy to assist you with tailored advice and expert support.