import { defineConfig } from 'vitepress'; export default defineConfig({ title: "Aphrodite Engine", head: [['link', { rel: 'icon', href: '/favicon.ico' }]], description: "User and Developer Documentation", themeConfig: { // nav: [{ text: "Home", link: "/" }], sidebar: [ { text: "Installation", link: "/pages/installation", items: [ { text: "NVIDIA GPU", link: "/pages/installation/installation", }, { text: "Microsoft Windows", link: "/pages/installation/installation-windows", }, { text: "AMD GPU", link: "/pages/installation/installation-rocm", }, { text: "CPU", link: "/pages/installation/installation-cpu", }, { text: "AWS Trainium1 & Inferentia2", link: "/pages/installation/installation-neuron", }, { text: "Google TPU", link: "/pages/installation/installation-tpu", }, { text: "Intel XPU", link: "/pages/installation/installation-xpu", }, ], }, { text: "Usage", link: "/pages/usage", items: [ { text: "Quick Start", link: "/pages/usage/getting-started", }, { text: "Debugging Instructions", link: "/pages/usage/debugging", }, { text: "OpenAI API", link: "/pages/usage/openai", }, { text: "Vision Language Models", link: "/pages/usage/vlm", }, { text: "Encoder-Decoder Models", link: "/pages/usage/encoder-decoder", }, { text: "Distributed Inference", link: "/pages/usage/distributed", }, { text: "Production Metrics", link: "/pages/usage/metrics", }, { text: "Supported Models", link: "/pages/usage/models", }, ] }, { text: "Quantization", link: "/pages/quantization", items: [ { text: "Support Overview", link: "/pages/quantization/support-matrix", }, { text: "Quantization Methods", link: "/pages/quantization/quantization-methods", }, { text: "KV Cache Quantization", link: "/pages/quantization/kv-cache", }, ], }, { text: "Prompt Caching", link: "/pages/prompt-caching", items: [ { text: "Overview", link: "/pages/prompt-caching/introduction", }, { text: "Implementation", link: "/pages/prompt-caching/implementation", }, ], }, { text: "Speculative Decoding", link: "/pages/spec-decoding", items: [ { text: "Overview", link: "/pages/spec-decoding/overview", }, { text: "Draft Model Decoding", link: "/pages/spec-decoding/draft-model", }, { text: "Ngram Prompt Lookup", link: "/pages/spec-decoding/ngram", }, { text: "MLPSpeculator", link: "/pages/spec-decoding/mlpspeculator", }, ], }, { text: "Model Adapters", link: "/pages/adapters", items: [ { text: "LoRA", link: "/pages/adapters/lora", }, { text: "Soft Prompts", link: "/pages/adapters/soft-prompts", }, ] }, { text: "Developer Documentation", link: "/pages/developer", items: [ { text: "Adding a New Model", link: "/pages/developer/adding-model", }, { text: "Adding Multimodal Capabilities", link: "/pages/developer/multimodal", }, { text: "Input Processing", link: "/pages/developer/input-processing", }, { text: "Paged Attention", link: "/pages/developer/paged-attention", }, { text: "NVIDIA CUTLASS Epilogues", link: "/pages/developer/cutlass-epilogue", }, { text: "Adding a Custom Class in PyTorch", link: "/pages/developer/torch-custom-class" }, ], }, ], socialLinks: [ { icon: "github", link: "https://github.com/PygmalionAI/aphrodite-engine" }, ], search: { provider: "local", options: { detailedView: true, }, }, }, markdown: { math: true } })