---
title: README
emoji: ๐ป
colorFrom: yellow
colorTo: blue
sdk: static
pinned: false
short_description: Small, local models distilled from frontier teachers
---
Advanced Data Intelligence
Small, local, open models โ distilled from frontier teachers.
ADI is a line of compact language models built at theLAB (Learning. Algorithms. Breakthroughs.). Each model is a knowledge distillation: a strong frontier "teacher" generates high-quality answers across thousands of prompts, and a small "student" model is fine-tuned to imitate them โ producing a model that reasons and responds like something much larger, while staying small enough to run on a single consumer GPU.
Every model here is built end-to-end on theLAB hardware โ no cloud training โ then quantized to GGUF and shipped ready to run in Ollama or any llama.cpp-based runtime.
Links:
Website ยท
theLAB ยท
YouTube โ Advanced Data Intelligence ยท
YouTube โ ADI Online
### ๐ฑ adi-qwen3.5-4b-glm5.2-general
General-purpose local assistant. Qwen3.5-4B distilled from **glm-5.2**. Reasons and explains like a frontier model on general topics. Native tool-calling, 262K context, ~2.7 GB.
```bash
ollama run hf.co/AdvancedDataIntelligence/adi-qwen3.5-4b-glm5.2-general-GGUF:Q4_K_M
```
### ๐ฑ adi-qwen3-8b-glm5.2-general
General-purpose local assistant. Qwen3-8B distilled from **glm-5.2**. Reasons and explains like a frontier model on general topics, with more headroom than the 4B. Native tool-calling, 128K context, ~5 GB.
```bash
ollama run hf.co/AdvancedDataIntelligence/adi-qwen3-8b-glm5.2-general-GGUF:Q4_K_M
```
### ๐ฑ adi-qwen3.5-9b-glm5.2-general
General-purpose local assistant. Qwen3.5-9B distilled from **glm-5.2**. The most capable general student in the line โ more parametric headroom for nuanced reasoning while still fitting a single consumer GPU. Native tool-calling, 262K context, ~5.6 GB.
```bash
ollama run hf.co/AdvancedDataIntelligence/adi-qwen3.5-9b-glm5.2-general-GGUF:Q4_K_M
```
### ๐ฑ adi-qwen2.5-coder-7b-kimi2.7-code
Local coding assistant. Qwen2.5-Coder-7B distilled from **kimi-k2.7-code**. Writes, explains, and debugs code with frontier-style quality. Native tool-calling, 128K context, ~4.4 GB.
```bash
ollama run hf.co/AdvancedDataIntelligence/adi-qwen2.5-coder-7b-kimi2.7-code-GGUF:Q4_K_M
```
---
Browse the whole line
ADI Models Lab โ the full lineup in one place. Pick a student from the rail (Qwen3.5 4B, Qwen3.5 9B, Qwen3 8B, Coder 7B, and the hey-adi wakeword), read its teacher, context, and size at a glance, then copy a ready-to-paste run command. Includes the live in-browser demo โ no install to try, no sign-in to copy.
Pick a student. Copy a command. Run offline.
โถ Open ADI Models Lab
---
Try it live
A hosted demo is available as a Hugging Face Space โ chat with the model directly in your browser, no install required.
โถ Launch the demo
---
## How to run
**Ollama (recommended).** Pull and run any model directly from this org โ no manual download needed. Ollama fetches the GGUF from Hugging Face on first run:
```bash
ollama run hf.co/AdvancedDataIntelligence/adi-qwen3-8b-glm5.2-general-GGUF:Q4_K_M
```
Swap `:Q4_K_M` for another quant tag if a model ships multiple. To pull without running:
```bash
ollama pull hf.co/AdvancedDataIntelligence/adi-qwen3-8b-glm5.2-general-GGUF:Q4_K_M
```
**Manual download (llama.cpp or offline).** Grab the raw GGUF with the Hugging Face CLI:
```bash
huggingface-cli download AdvancedDataIntelligence/adi-qwen3-8b-glm5.2-general-GGUF adi-qwen3-8b-glm5.2-q4_k_m.gguf --local-dir .
```
Then point any llama.cpp-based runtime at the downloaded file.
## The approach
- **Distillation, not retraining.** We transfer a teacher's reasoning style and answer quality into a small student โ not net-new facts. For raw recall, pair these with retrieval (RAG).
- **Local-first.** Every model runs fully offline on consumer hardware. No API, no data leaving the machine.
- **Open.** Apache-2.0 where the base license allows, with full training details on each model card so the work is reproducible.
---
## Coming next
In the pipeline, distilled the same way and headed here soon:
- **adi-qwen2.5-14b-glm5.2-general** โ a larger general student with more parametric headroom.
- **adi-gemma3-12b-glm5.2-general** โ a Gemma-based general distill, broadening the lineup beyond Qwen.
Follow the org to catch them on release.
## Naming
Models follow the pattern `adi----` โ so the name tells you the student base, its size, the teacher it learned from, and what it's tuned for.
Built at theLAB โ Learning. Algorithms. Breakthroughs.