364 lines
9.0 KiB
Markdown
364 lines
9.0 KiB
Markdown
---
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name: ollama-stack
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description: Run local LLM workloads with Ollama, Open WebUI, and GPU-aware tuning for private development environments. Use when setting up private inference, local AI dev environments, or air-gapped LLM deployments.
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license: MIT
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metadata:
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author: devops-skills
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version: "1.0"
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---
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# Ollama Stack
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Deploy a local LLM stack for offline and privacy-first workflows.
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## When to Use This Skill
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Use this skill when:
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- Setting up private/local LLM inference for development
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- Building air-gapped AI environments
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- Running models on personal hardware (Mac, Linux, Windows with GPU)
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- Creating team-shared inference endpoints
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- Prototyping before committing to cloud LLM APIs
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## Prerequisites
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- 8 GB+ RAM (16 GB+ recommended for 7B+ models)
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- For GPU acceleration: NVIDIA GPU with 6 GB+ VRAM, or Apple Silicon Mac
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- Docker (for containerized deployment)
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- 20 GB+ disk for model storage
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## Quick Start
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```bash
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# Install Ollama
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curl -fsSL https://ollama.com/install.sh | sh
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# Start the server
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ollama serve
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# Pull and run a model
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ollama pull llama3.1:8b
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ollama run llama3.1:8b "Explain Kubernetes pods in one paragraph"
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# List available models
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ollama list
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# Pull specific quantization
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ollama pull llama3.1:8b-instruct-q4_K_M
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```
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## Model Selection Guide
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| Model | Size | VRAM | Best For |
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|-------|------|------|----------|
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| `llama3.1:8b` | 4.7 GB | 6 GB | General chat, coding |
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| `llama3.1:70b` | 40 GB | 48 GB | Complex reasoning |
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| `codellama:13b` | 7.4 GB | 10 GB | Code generation |
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| `mistral:7b` | 4.1 GB | 6 GB | Fast general tasks |
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| `mixtral:8x7b` | 26 GB | 32 GB | High-quality MoE |
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| `nomic-embed-text` | 274 MB | 1 GB | Embeddings for RAG |
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| `llava:13b` | 8 GB | 10 GB | Vision + text |
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| `deepseek-coder-v2:16b` | 9 GB | 12 GB | Code generation |
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| `qwen2.5:14b` | 9 GB | 12 GB | Multilingual, reasoning |
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## Docker Compose — Full Stack
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```yaml
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# docker-compose.yml
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services:
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ollama:
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image: ollama/ollama:latest
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container_name: ollama
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restart: unless-stopped
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ports:
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- "11434:11434"
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volumes:
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- ollama_data:/root/.ollama
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environment:
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- OLLAMA_HOST=0.0.0.0
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- OLLAMA_NUM_PARALLEL=4
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- OLLAMA_MAX_LOADED_MODELS=2
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- OLLAMA_FLASH_ATTENTION=1
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deploy:
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resources:
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reservations:
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devices:
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- driver: nvidia
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count: all
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capabilities: [gpu]
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healthcheck:
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test: ["CMD", "curl", "-f", "http://localhost:11434/api/tags"]
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interval: 30s
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timeout: 10s
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retries: 3
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open-webui:
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image: ghcr.io/open-webui/open-webui:main
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container_name: open-webui
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restart: unless-stopped
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ports:
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- "3000:8080"
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volumes:
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- webui_data:/app/backend/data
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environment:
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- OLLAMA_BASE_URL=http://ollama:11434
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- WEBUI_AUTH=true
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- WEBUI_SECRET_KEY=${WEBUI_SECRET_KEY:-change-me-in-production}
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- DEFAULT_MODELS=llama3.1:8b
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depends_on:
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ollama:
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condition: service_healthy
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litellm:
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image: ghcr.io/berriai/litellm:main-latest
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container_name: litellm
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restart: unless-stopped
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ports:
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- "4000:4000"
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volumes:
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- ./litellm-config.yaml:/app/config.yaml
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command: ["--config", "/app/config.yaml"]
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depends_on:
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ollama:
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condition: service_healthy
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volumes:
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ollama_data:
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webui_data:
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```
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### LiteLLM Proxy Config
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```yaml
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# litellm-config.yaml
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model_list:
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- model_name: llama3
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litellm_params:
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model: ollama/llama3.1:8b
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api_base: http://ollama:11434
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- model_name: codellama
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litellm_params:
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model: ollama/codellama:13b
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api_base: http://ollama:11434
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- model_name: embeddings
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litellm_params:
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model: ollama/nomic-embed-text
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api_base: http://ollama:11434
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general_settings:
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master_key: sk-local-dev-key
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max_budget: 0 # unlimited for local
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```
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## API Usage
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Ollama exposes an OpenAI-compatible API:
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```bash
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# Chat completion
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curl http://localhost:11434/v1/chat/completions \
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-H "Content-Type: application/json" \
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-d '{
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"model": "llama3.1:8b",
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"messages": [{"role": "user", "content": "Hello"}],
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"stream": false
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}'
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# Embeddings
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curl http://localhost:11434/v1/embeddings \
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-H "Content-Type: application/json" \
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-d '{
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"model": "nomic-embed-text",
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"input": "The quick brown fox"
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}'
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# List models
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curl http://localhost:11434/api/tags
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```
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### Python Client
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```python
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# pip install ollama
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import ollama
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# Chat
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response = ollama.chat(
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model="llama3.1:8b",
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messages=[{"role": "user", "content": "Explain Docker in 3 sentences"}],
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)
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print(response["message"]["content"])
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# Streaming
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for chunk in ollama.chat(
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model="llama3.1:8b",
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messages=[{"role": "user", "content": "Write a haiku about containers"}],
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stream=True,
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):
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print(chunk["message"]["content"], end="", flush=True)
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# Embeddings
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result = ollama.embed(model="nomic-embed-text", input="Hello world")
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print(f"Embedding dimensions: {len(result['embeddings'][0])}")
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```
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### OpenAI SDK Compatibility
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```python
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from openai import OpenAI
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client = OpenAI(base_url="http://localhost:11434/v1", api_key="unused")
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response = client.chat.completions.create(
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model="llama3.1:8b",
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messages=[{"role": "user", "content": "Hello"}],
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)
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print(response.choices[0].message.content)
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```
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## Custom Modelfiles
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Create specialized models with custom system prompts and parameters:
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```dockerfile
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# Modelfile.devops-assistant
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FROM llama3.1:8b
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SYSTEM """You are a DevOps expert assistant. You provide concise, production-ready
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advice about infrastructure, CI/CD, containers, and cloud services.
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Always include relevant commands and config examples."""
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PARAMETER temperature 0.3
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PARAMETER top_p 0.9
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PARAMETER num_ctx 8192
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PARAMETER repeat_penalty 1.1
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```
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```bash
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# Build and use custom model
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ollama create devops-assistant -f Modelfile.devops-assistant
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ollama run devops-assistant "Set up a GitHub Actions workflow for Docker builds"
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```
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## GPU Configuration
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### NVIDIA
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```bash
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# Verify GPU access
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nvidia-smi
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ollama run llama3.1:8b --verbose # Shows GPU layers loaded
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# Environment tuning
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export OLLAMA_NUM_PARALLEL=4 # Concurrent requests
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export OLLAMA_MAX_LOADED_MODELS=2 # Models in VRAM
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export OLLAMA_FLASH_ATTENTION=1 # Faster attention
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export CUDA_VISIBLE_DEVICES=0,1 # Multi-GPU
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```
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### Apple Silicon
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```bash
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# Metal acceleration is automatic on macOS
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# Verify with:
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ollama run llama3.1:8b --verbose
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# Look for: "metal" in the output
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# Optimize for unified memory
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export OLLAMA_NUM_PARALLEL=2 # Keep memory headroom
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export OLLAMA_MAX_LOADED_MODELS=1 # One model at a time on 16GB
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```
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## Monitoring
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```bash
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# Check running models and memory usage
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curl http://localhost:11434/api/ps
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# Prometheus metrics (if enabled)
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curl http://localhost:11434/metrics
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# Quick health check script
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#!/bin/bash
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response=$(curl -s -o /dev/null -w "%{http_code}" http://localhost:11434/api/tags)
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if [ "$response" = "200" ]; then
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echo "Ollama is healthy"
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curl -s http://localhost:11434/api/ps | python3 -m json.tool
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else
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echo "Ollama is down (HTTP $response)"
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exit 1
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fi
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```
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## Systemd Service
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```ini
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# /etc/systemd/system/ollama.service
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[Unit]
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Description=Ollama LLM Server
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After=network-online.target
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Wants=network-online.target
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[Service]
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ExecStart=/usr/local/bin/ollama serve
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User=ollama
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Group=ollama
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Restart=always
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RestartSec=3
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Environment="OLLAMA_HOST=0.0.0.0"
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Environment="OLLAMA_NUM_PARALLEL=4"
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Environment="OLLAMA_FLASH_ATTENTION=1"
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LimitNOFILE=65535
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[Install]
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WantedBy=default.target
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```
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```bash
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sudo useradd -r -s /bin/false -m -d /usr/share/ollama ollama
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sudo systemctl daemon-reload
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sudo systemctl enable --now ollama
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sudo systemctl status ollama
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```
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## Security
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- Bind to `127.0.0.1` in production (default), use reverse proxy for remote access
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- Set `WEBUI_AUTH=true` on Open WebUI
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- Use nginx with TLS for remote access:
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```nginx
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server {
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listen 443 ssl;
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server_name llm.internal.example.com;
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ssl_certificate /etc/ssl/certs/llm.pem;
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ssl_certificate_key /etc/ssl/private/llm.key;
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location / {
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proxy_pass http://127.0.0.1:11434;
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proxy_set_header Host $host;
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proxy_buffering off; # Required for streaming
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proxy_read_timeout 600s; # Long model responses
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allow 10.0.0.0/8;
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deny all;
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}
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}
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```
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## Troubleshooting
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| Issue | Solution |
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| Model too slow | Use smaller quantization (`q4_K_M`), enable flash attention |
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| Out of memory | Reduce `num_ctx`, use smaller model, set `OLLAMA_MAX_LOADED_MODELS=1` |
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| GPU not detected | Check `nvidia-smi`, reinstall CUDA drivers, verify Docker GPU runtime |
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| Connection refused | Check `OLLAMA_HOST` setting, verify firewall rules |
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| Model download fails | Check disk space, retry with `ollama pull --insecure` for self-signed registries |
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## Related Skills
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- [mac-mini-llm-lab](../mac-mini-llm-lab/) — Apple Silicon optimization
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- [docker-compose](../../../devops/containers/docker-compose/) — Service orchestration
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- [vllm-server](../vllm-server/) — High-throughput production inference
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- [llm-gateway](../../../infrastructure/networking/llm-gateway/) — Unified API routing
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