mig-configure

द्वारा nvidia

Configure NVIDIA MIG (Multi-Instance GPU) partitions on the DGX Station GB300, including enabling MIG mode, choosing a profile layout, creating instances, and…

npx skills add https://github.com/nvidia/dgx-spark-playbooks --skill mig-configure

MIG Configuration on DGX Station

Configure MIG (Multi-Instance GPU) partitions on the DGX Station GB300.

Steps

  1. Find the GB300 GPU index. Run:

    nvidia-smi --query-gpu=index,name --format=csv,noheader
    
  2. Check current MIG state:

    nvidia-smi -i <GB300_INDEX> -q | grep -i "MIG Mode"
    
  3. If MIG is already enabled, show current instances:

    nvidia-smi mig -lgi -i <GB300_INDEX>
    nvidia-smi mig -lci -i <GB300_INDEX>
    

    If the user wants to reconfigure, destroy existing instances first (step 6).

  4. If MIG is not enabled, enable it. All GPU processes must be stopped first:

    # Check for running GPU processes
    sudo fuser -v /dev/nvidia*
    
    # Enable MIG
    sudo nvidia-smi -i <GB300_INDEX> -mig 1
    
    # Verify
    nvidia-smi -i <GB300_INDEX> -q | grep -i "MIG Mode"
    
  5. Show available profiles and help the user choose a layout:

    nvidia-smi mig -lgip -i <GB300_INDEX>
    

    Common GB300 MIG profiles:

    IDProfile name (driver-dependent)Approx. memoryUse case
    191g.35gb (59x) · 1g.31gb (61x)~30 GBSmall models (7-8B), dev/test
    201g.35gb+me · 1g.31gb+me~30 GBSame + media extensions
    151g.70gb~68 GBSlightly larger inference
    142g.70gb~68 GBMedium models (14-30B)
    93g.139gb (59x) · 3g.126gb (61x)~137 GBLarge models (70B quantized)
    54g.139gb · 4g.126gb~137 GBLarge models, more compute
    07g.278gb (59x) · 7g.251gb (61x)~276 GBFull GPU as single instance

    Profile names depend on your driver version; the profile IDs do not. Always read the exact names and sizes on your box with nvidia-smi mig -lgip -i <GB300_INDEX>, and create instances by ID. (Driver 59x reports the …35gb/139gb/278gb names; 61x reports …31gb/126gb/251gb for the same IDs.)

    Suggest layouts based on the user's workload (use the stable IDs). Examples:

    • Two models (70B + smaller): one 3g + two 1g.70gb → IDs 9,15,15
    • Many small models: three 1g → IDs 19,19,19
    • One large model with isolation: the full 7g → ID 0

    MIG layouts are constrained by fixed memory-slice placement, not just total memory — never sum nominal GB and assume any combination fits. A 3g + 2g + 2g layout (9,14,14) is not realizable, for example, because the second 2g has no legal placement after a 3g. And nvidia-smi mig -lgip Free/Total tracks compute (GPC) slices, so it overstates the number of instances you can actually create (QA observed only 3 creatable 1g instances on a 61x Station even though Free/Total reported 7). Always validate a specific layout with nvidia-smi mig -lgipp before relying on it.

    Ask the user what models they want to run before suggesting a layout.

  6. Create (or recreate) instances:

    If reconfiguring, destroy existing instances first:

    sudo nvidia-smi mig -dci -i <GB300_INDEX>
    sudo nvidia-smi mig -dgi -i <GB300_INDEX>
    

    Then create the new layout:

    sudo nvidia-smi mig -cgi <PROFILE_IDS> -C -i <GB300_INDEX>
    
  7. Get the MIG device UUIDs:

    nvidia-smi -L
    

    Note the MIG-<uuid> entries — these are used to target specific MIG instances.

  8. Show the user how to use MIG devices:

    # Bare metal
    export CUDA_VISIBLE_DEVICES=MIG-<uuid>
    
    # Docker
    docker run --gpus '"device=MIG-<uuid>"' ...
    
  9. Report the final layout to the user with UUIDs and suggested docker commands for each instance.

Disabling MIG

If the user wants to return to full-GPU mode:

# Stop all workloads using MIG instances first
sudo nvidia-smi mig -dci -i <GB300_INDEX>
sudo nvidia-smi mig -dgi -i <GB300_INDEX>
sudo nvidia-smi -i <GB300_INDEX> -mig 0

Do not run nvidia-fabricmanager on DGX Station. It has a single GB300 over NVLink-C2C (no NVSwitch fabric), so Fabric Manager is not installed and systemctl start nvidia-fabricmanager fails with "Unit not found." NVLink-C2C re-initializes automatically after MIG is disabled. If MIG mode is stuck in a "pending" state, reset the GPU instead: sudo nvidia-smi -i <GB300_INDEX> --gpu-reset.

nvidia की और Skills

compileiq-debug
nvidia
Use when something is wrong: Search() hangs, all evaluations return INVALID_SCORE, scores aren't improving, every config returns the same number, ptxas errors…
official
create-github-pr
nvidia
Create GitHub pull requests using the gh CLI. Use when the user wants to create a new PR, submit code for review, or open a pull request. Trigger keywords -…
official
diagnose-perf
nvidia
First-responder performance triage for Isaac Sim and Isaac Lab. Identifies bottleneck category (GPU-bound, CPU-bound, VRAM, loading) using nvidia-smi and…
official
eagle3-review-logs
nvidia
Review EAGLE3 pipeline experiment logs from the launcher's experiments/ directory. Summarizes pass/fail status for all 4 tasks, diagnoses failures with root…
official
nemoclaw-maintainer-cross-issue-sweep
nvidia
Scans other open issues to find ones a given PR may also fix or accidentally break. Outputs adjacent-fix opportunities and contradiction risks with file:line…
official
karpathy-guidelines
nvidia
सामान्य LLM कोडिंग गलतियों को कम करने के लिए व्यवहार संबंधी दिशानिर्देश। कोड लिखते, समीक्षा करते या रिफैक्टर करते समय उपयोग करें ताकि अत्यधिक जटिलता से बचा जा सके, सर्जिकल बदलाव किए जा सकें,…
official
fhir-basics
nvidia
Teaches agents how FHIR R4 APIs work, what resources are available, how to query them with search parameters, and how to correctly parse all response formats…
official
underdeclared-agent
nvidia
A helpful assistant agent
official