NVIDIA 900-2G610-0000-000

NVIDIA Tesla P40 Passive Cooling GPU Instruction Manual

Model: 900-2G610-0000-000

1. Okwu mmalite

The NVIDIA Tesla P40 is a high-performance GPU accelerator designed for deep learning deployment and artificial intelligence applications. Built on the NVIDIA Pascal architecture, it provides significant computational power for accelerating demanding workloads. This manual provides essential information for the proper installation, operation, and maintenance of your Tesla P40 GPU.

NVIDIA Tesla P40 GPU, front angled view showing the passive heatsink and PCIe bracket.

Ọgụgụ 1: Nkuku ihu view of the NVIDIA Tesla P40 GPU, highlighting its passive cooling design and PCIe interface.

2. Atụmatụ igodo

  • Usoro: Tesla P40, Model: 900-2G610-0000-000
  • Ihe owuwu GPU: NVIDIA Pascal
  • Arụmọrụ otu ziri ezi: 12 TeraFLOPS
  • Integer Operations (INT8): 47 TOPS (Tera-Operations per Second)
  • Ebe nchekwa GPU: 24 GB GDDR5
  • Bandwit ebe nchekwa: 346 GB / s
  • Ngwa ngwa sistemụ: PCI Express 3.0 x16
  • Oke ike: 250W
  • Enhanced Programmability: With Page Migration Engine
  • ECC Protection: Ee
  • Server-Optimized: For Data Center Deployment
  • Hardware-Accelerated Video Engine: 1x Decode Engine, 2x Encode Engine

3. Ntuziaka Nhazi

3.1 Nleba anya nwụnye

  • Ndakọrịta sistemụ: Ensure your server or workstation has an available PCI Express 3.0 x16 slot.
  • Ịnye ọkụ: A robust power supply unit (PSU) capable of providing sufficient power (up to 250W for the GPU) and equipped with the necessary 8-pin CPU power cable (EPS12V) is required. Standard PCIe power cables may not be compatible or sufficient.
  • Na-ajụ oyi: The Tesla P40 features passive cooling and requires adequate system airflow within the server chassis to dissipate heat effectively. Ensure your server has sufficient fan configuration for proper cooling.
  • Ntọala BIOS: Verify that your motherboard BIOS supports and has "Above 4G decoding" enabled, typically found under boot options or PCIe settings.

3.2 Nwụnye anụ ahụ

  1. Power down your system and disconnect all power cables.
  2. Open your computer case and locate an available PCI Express 3.0 x16 slot.
  3. Carefully insert the NVIDIA Tesla P40 into the PCIe slot, ensuring it is fully seated. Secure the card with the retaining clip or screw.
  4. Connect the 8-pin CPU power cable (EPS12V) from your power supply to the power connector on the Tesla P40. Ensure a secure connection.
NVIDIA Tesla P40 GPU, top view showing the power connector and NVIDIA branding.

Foto 2: Top view of the NVIDIA Tesla P40, illustrating the location of the 8-pin power connector.

3.3 Nwụnye ọkwọ ụgbọala

  1. After physical installation, close your computer case and reconnect power.
  2. Boot your system.
  3. Download the appropriate NVIDIA drivers for the Tesla P40 from the official NVIDIA website. It is crucial to select drivers compatible with the Pascal architecture. For optimal compatibility, consider using NVIDIA driver version 580 or earlier, as newer versions (e.g., 590 and later) may have dropped support for Pascal devices.
  4. Follow the on-screen instructions to install the drivers. A system reboot may be required.
  5. For Linux systems, if you encounter issues after enabling >4G decoding, you may need to boot into a rescue disk, mount your main OS, chroot into it, and run `mkinitcpio -P` or similar commands to regenerate your kernel image and grub configuration.

4. Ntuziaka ọrụ

4.1 Software Environment Setup

  • CUDA Toolkit: Install the NVIDIA CUDA Toolkit, which provides the development environment for GPU-accelerated applications. Ensure the CUDA version is compatible with your installed NVIDIA drivers.
  • Deep Learning Frameworks: Configure your preferred deep learning frameworks (e.g., TensorFlow, PyTorch) to utilize the NVIDIA Tesla P40. Refer to the documentation of your chosen framework for specific setup instructions.

4.2 Monitoring and Performance

  • Use NVIDIA's `nvidia-smi` utility (available after driver installation) to monitor GPU utilization, memory usage, temperature, and power consumption.
  • Ensure GPU temperatures remain within safe operating limits, typically below 90°C under load. Due to passive cooling, maintaining adequate system airflow is critical for thermal management.

5. Nlekọta

  • Mwepụ uzuzu: Periodically inspect your server chassis and the GPU for dust accumulation. Dust can impede airflow and reduce cooling efficiency. Use compressed air to gently clean the heatsink fins and surrounding areas.
  • Njikwa gburugburu: Operate the system in a clean, temperature-controlled environment to prevent overheating and prolong component lifespan.
  • Mmelite ọkwọ ụgbọala: While keeping drivers updated is generally recommended, exercise caution with Tesla P40. Refer to NVIDIA's official support channels for recommended driver versions to avoid compatibility issues with older Pascal architecture.

6. Nchọpụta nsogbu

  • System Not Recognizing GPU:
    • Verify the GPU is fully seated in the PCIe slot.
    • Ensure the 8-pin CPU power cable is securely connected.
    • Check BIOS settings for "Above 4G decoding" and ensure it is enabled.
    • Reinstall or update NVIDIA drivers.
  • Okwu ekpo oke ọkụ:
    • Confirm adequate airflow within the server chassis. Ensure all system fans are functioning correctly and are configured to provide sufficient cooling for passive components.
    • Clean any dust accumulation from the GPU heatsink and server vents.
    • Belata okpomọkụ gburugburu ma ọ bụrụ na ọ ga-ekwe omume.
  • Okwu eriri ọkụ: Some users have reported issues with included power cables. Ensure you are using a high-quality 8-pin EPS12V CPU power cable that can safely deliver the required wattage. If issues persist, consider replacing the cable with a verified compatible one.
  • Mmebi arụrụ arụ:
    • Check GPU utilization and temperature using `nvidia-smi`. Thermal throttling can reduce performance.
    • Ensure your software environment (CUDA, deep learning frameworks) is correctly configured and optimized for the Tesla P40.

If troubleshooting steps do not resolve the issue, please contact NVIDIA support for further assistance.

7. Nkọwapụta

Close-up of the NVIDIA Tesla P40 label showing model number 900-2G610-0000-000 and other regulatory information.

Figure 3: Product label displaying the model number and other identification details.

NjirimaraNkọwa
Nọmba nlereanya900-2G610-0000-000
GPU ArchitectureNVIDIA Pascal
Ihe eserese esereseNVIDIA Tesla P40
Ịrụ otu-nkenke12 TeraFLOPS
Integer Operations (INT8)47 TOPS (Tera-Operations per Second)
Ebe nchekwa GPU24 GB GDDR5
Bandwit ebe nchekwa346 GB / s
Usoro interfacePCI Express 3.0 x16
Oke ike oriri250W
ECC ProtectionEe
Hardware-Accelerated Video Engine1x Decode Engine, 2x Encode Engine
Akụkụ ngwugwu17.05 x 8.66 x 3.19 sentimita asatọ
Ibu Ibu3.14 pound
Ụbọchị mbụ dịJulaị 7, 2017

8. Akwụkwọ ikike na nkwado

For information regarding product warranty, technical support, and service, please refer to the official NVIDIA website or contact your point of purchase. NVIDIA provides comprehensive resources and support for its products.

Akwụkwọ ndị emetụtara - 900-2G610-0000-000

Tupuview Ntuziaka onye ọrụ NVIDIA AI Enterprise: Nwụnye, nhazi na njikwa
Ntuziaka onye ọrụ zuru oke maka NVIDIA AI Enterprise, na-akọwa nrụnye, nhazi, na njikwa nke NVIDIA vGPU, AI frameworks, na ngwanrọ n'ofe hypervisors dị iche iche na sistemụ arụmọrụ.
Tupuview NVIDIA TensorRT Support Matrix v4.0.1 - Platform and Layer Compatibility
Comprehensive support matrix for NVIDIA TensorRT version 4.0.1, detailing compatibility across platforms (Linux, Android, QNX) and software versions (CUDA, cuDNN), along with a detailed breakdown of supported features for each TensorRT layer.
Tupuview NVIDIA Jetson Xavier NX Series Product Marking Specification
This document specifies the product markings for the NVIDIA Jetson Xavier NX series modules, including details on part numbers, serial numbers, barcodes, and country of origin.
Tupuview CUDA on WSL User Guide - NVIDIA
NVIDIA's comprehensive guide to setting up and using CUDA with the Windows Subsystem for Linux (WSL) for GPU-accelerated computing, AI, and machine learning development.
Tupuview NVIDIA Data Center GPU Manager ntuziaka onye ọrụ
Ntuziaka onye ọrụ a na-enye ozi zuru oke na NVIDIA's Data Center GPU Manager (DCGM), ngwá ọrụ emebere iji mee ka nchịkwa, nlekota na njikwa nke NVIDIA Tesla GPU dị mfe na ụyọkọ na gburugburu ebe datacenter. Ọ na-ekpuchi nrụnye, nhazi, njirimara n'eluviews, mwekota na ngwaọrụ nleba anya dị ka Prometheus na Grafana, yana ike nyocha.
Tupuview Ntuziaka Nwụnye Ọbá Akwụkwọ Nkwukọrịta NVIDIA (NCCL)
Comprehensive guide for installing and using the NVIDIA Collective Communication Library (NCCL), a high-performance multi-GPU communication primitive library for deep learning and parallel computing.