dgx-spark-playbooks/skills/dgx-spark-multi-modal-inference/SKILL.md
Jason Kneen a680d0472b feat: scaffold skills plugin from DGX Spark playbooks
Adds a Claude Code plugin structure that exposes each NVIDIA DGX Spark
playbook as a triggerable skill, with an index skill ('dgx-spark') that
routes users to the right leaf based on intent and encodes the
relationship graph between playbooks (prerequisites, alternatives,
composes-with, upgrade paths).

Structure:
- overrides/*.md       hand-curated frontmatter + Related sections
- scripts/generate.mjs zero-dep Node generator: nvidia + overrides → skills
- scripts/install.sh   symlinks skills into ~/.claude/skills (--plugin mode available)
- skills/              committed, browsable, installable without Node
- .github/workflows/   auto-regenerates skills/ when playbooks/overrides change

Initial curated leaves: ollama, open-webui, vllm, connect-to-your-spark.
Remaining 37 leaves use generator fallback (title + tagline + summary
extracted from README) and can be curated incrementally via overrides/.
2026-04-19 10:22:08 +01:00

24 lines
1.2 KiB
Markdown

---
name: dgx-spark-multi-modal-inference
description: Setup multi-modal inference with TensorRT — on NVIDIA DGX Spark. Use when setting up multi-modal-inference on Spark hardware.
---
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# Multi-modal Inference
> Setup multi-modal inference with TensorRT
Multi-modal inference combines different data types, such as **text, images, and audio**, within a single model pipeline to generate or interpret richer outputs.
Instead of processing one input type at a time, multi-modal systems have shared representations that **text-to-image generation**, **image captioning**, or **vision-language reasoning**.
On GPUs, this enables **parallel processing across modalities** for faster, higher-fidelity results for tasks that combine language and vision.
**Outcome**: You'll deploy GPU-accelerated multi-modal inference capabilities on NVIDIA Spark using TensorRT to run
Flux.1 and SDXL diffusion models with optimized performance across multiple precision formats (FP16,
FP8, FP4).
Duration: 45-90 minutes depending on model downloads and optimization steps
**Full playbook**: `/Users/jkneen/Documents/GitHub/dgx-spark-playbooks/nvidia/multi-modal-inference/README.md`
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