How to use from
llama.cpp
Install (macOS, Linux)
curl -LsSf https://llama.app/install.sh | sh
# Start a local OpenAI-compatible server with a web UI:
llama serve -hf forlop/microdata-copilot-v3:Q4_K_M
# Run inference directly in the terminal:
llama cli -hf forlop/microdata-copilot-v3:Q4_K_M
Install from WinGet (Windows)
winget install llama.cpp
# Start a local OpenAI-compatible server with a web UI:
llama serve -hf forlop/microdata-copilot-v3:Q4_K_M
# Run inference directly in the terminal:
llama cli -hf forlop/microdata-copilot-v3:Q4_K_M
Use pre-built binary
# Download pre-built binary from:
# https://github.com/ggerganov/llama.cpp/releases
# Start a local OpenAI-compatible server with a web UI:
./llama-server -hf forlop/microdata-copilot-v3:Q4_K_M
# Run inference directly in the terminal:
./llama-cli -hf forlop/microdata-copilot-v3:Q4_K_M
Build from source code
git clone https://github.com/ggerganov/llama.cpp.git
cd llama.cpp
cmake -B build
cmake --build build -j --target llama-server llama-cli
# Start a local OpenAI-compatible server with a web UI:
./build/bin/llama-server -hf forlop/microdata-copilot-v3:Q4_K_M
# Run inference directly in the terminal:
./build/bin/llama-cli -hf forlop/microdata-copilot-v3:Q4_K_M
Use Docker
docker model run hf.co/forlop/microdata-copilot-v3:Q4_K_M
Quick Links

microdata.no copilot — v3.0 (q4_k_m GGUF)

A small, locally-deployable AI assistant fine-tuned to help users write microdata.no scripts and answer questions about Norwegian register-data variables published by SSB (Statistics Norway).

This repo hosts the deployed q4_k_m quantised GGUF (2.7 GB) and the companion Ollama Modelfile. Full source (training, RAG, eval, deploy) and the technical note: https://github.com/forlop/microdata-no-copilot (branch v3).

What's new in v3

  • Response-masking SFT — trains on the assistant completion only.
  • Variable/command hallucination eliminated — a retrieval-backed guardrail plus cleaner training data; 0 fictional commands across the 126-prompt eval (this was v2's dominant failure mode).
  • Deduplicated training set (1,667 cards) and small LoRA dropout.
  • Deployment fixes — GGUF metadata corrected for Qwen3.5's hybrid SSM+attention architecture (NextN/MTP layer) so Ollama loads it; the RAG layer recovers answers Ollama routes into its thinking field.

Evaluation (v3)

Metric Value
Training eval_loss 0.274
Deterministic eval (46-prompt) 78.3%
LLM-judge, deployed q4 + RAG (80-prompt) 56.2% (95% CI 45–67%)
Fictional commands 0 / 126

On the LLM-judge metric v3 is on par with v2 (53.8%) within confidence intervals; the decisive, measurable gain is the elimination of hallucinated variables/commands. The judge rubric is claude-haiku-graded (unvalidated against human labels — see the repo's TECHNICAL_NOTE).

Quick start

# 1. Pull the GGUF from this repo (~2.7 GB, one-time)
ollama pull hf.co/forlop/microdata-copilot-v3:Q4_K_M

# 2. Clone the GitHub repo (Modelfile + RAG layer) and apply the SYSTEM prompt
git clone -b v3 https://github.com/forlop/microdata-no-copilot
cd microdata-no-copilot
ollama create microdata-copilot -f deploy/Modelfile

# 3. Try it
ollama run microdata-copilot "What is INNTEKT_LONN?"

License & data note

Model weights released under MIT. The assistant was trained with material derived from SSB's microdata.no documentation; users are responsible for complying with SSB's terms when using outputs. The RAG index (containing manual text) is not distributed here.

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