pixie-rune-v1 GGUF

GGUF format of telepix/PIXIE-Rune-v1.0 for use with CrispEmbed.

PIXIE-Rune v1.0. 74-language embedding model, 1024-dimensional CLS-pooled.

Files

File Quantization Size
pixie-rune-v1-q4_k.gguf Q4_K 437 MB
pixie-rune-v1-q8_0.gguf Q8_0 582 MB
pixie-rune-v1.gguf F32 2171 MB

Quick Start

# Download
huggingface-cli download cstr/pixie-rune-v1-GGUF pixie-rune-v1-q4_k.gguf --local-dir .

# Run with CrispEmbed
./crispembed -m pixie-rune-v1-q4_k.gguf "Hello world"

# Or with auto-download
./crispembed -m pixie-rune-v1 "Hello world"

Model Details

Property Value
Architecture XLM-R
Parameters 560M
Embedding Dimension 1024
Layers 24
Pooling CLS
Tokenizer SentencePiece
Base Model telepix/PIXIE-Rune-v1.0

Verification

Verified bit-identical to HuggingFace sentence-transformers (cosine similarity >= 0.999 on test texts).

Usage with CrispEmbed

CrispEmbed is a lightweight C/C++ text embedding inference engine using ggml. No Python runtime, no ONNX. Supports BERT, XLM-R, Qwen3, and Gemma3 architectures.

# Build CrispEmbed
git clone https://github.com/CrispStrobe/CrispEmbed
cd CrispEmbed
cmake -S . -B build && cmake --build build -j

# Encode
./build/crispembed -m pixie-rune-v1-q4_k.gguf "query text"

# Server mode
./build/crispembed-server -m pixie-rune-v1-q4_k.gguf --port 8080
curl -X POST http://localhost:8080/v1/embeddings \
    -d '{"input": ["Hello world"], "model": "pixie-rune-v1"}'

Credits

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Architecture
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Hardware compatibility
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