Files
Timmy-time-dashboard/config/providers.yaml
Alexander Payne 72a58f1f49 feat: Multi-modal support with automatic model fallback
- Add MultiModalManager with capability detection for vision/audio/tools
- Define fallback chains: vision (llama3.2:3b -> llava:7b -> moondream)
                       tools (llama3.1:8b-instruct -> qwen2.5:7b)
- Update CascadeRouter to detect content type and select appropriate models
- Add model pulling with automatic fallback in agent creation
- Update providers.yaml with multi-modal model configurations
- Update OllamaAdapter to use model resolution with vision support

Tests: All 96 infrastructure tests pass
2026-02-26 22:29:44 -05:00

178 lines
5.9 KiB
YAML

# Cascade LLM Router Configuration
# Providers are tried in priority order (1 = highest)
# On failure, automatically falls back to next provider
cascade:
# Timeout settings
timeout_seconds: 30
# Retry settings
max_retries_per_provider: 2
retry_delay_seconds: 1
# Circuit breaker settings
circuit_breaker:
failure_threshold: 5 # Open circuit after 5 failures
recovery_timeout: 60 # Try again after 60 seconds
half_open_max_calls: 2 # Allow 2 test calls when half-open
providers:
# Primary: Local Ollama (always try first for sovereignty)
- name: ollama-local
type: ollama
enabled: true
priority: 1
url: "http://localhost:11434"
models:
# Text + Tools models
- name: llama3.1:8b-instruct
default: true
context_window: 128000
capabilities: [text, tools, json, streaming]
- name: llama3.2:3b
context_window: 128000
capabilities: [text, tools, json, streaming, vision]
- name: qwen2.5:14b
context_window: 32000
capabilities: [text, tools, json, streaming]
- name: deepseek-r1:1.5b
context_window: 32000
capabilities: [text, json, streaming]
# Vision models
- name: llava:7b
context_window: 4096
capabilities: [text, vision, streaming]
- name: qwen2.5-vl:3b
context_window: 32000
capabilities: [text, vision, tools, json, streaming]
- name: moondream:1.8b
context_window: 2048
capabilities: [text, vision, streaming]
# Secondary: Local AirLLM (if installed)
- name: airllm-local
type: airllm
enabled: false # Enable if pip install airllm
priority: 2
models:
- name: 70b
default: true
capabilities: [text, tools, json, streaming]
- name: 8b
capabilities: [text, tools, json, streaming]
- name: 405b
capabilities: [text, tools, json, streaming]
# Tertiary: OpenAI (if API key available)
- name: openai-backup
type: openai
enabled: false # Enable by setting OPENAI_API_KEY
priority: 3
api_key: "${OPENAI_API_KEY}" # Loaded from environment
base_url: null # Use default OpenAI endpoint
models:
- name: gpt-4o-mini
default: true
context_window: 128000
capabilities: [text, vision, tools, json, streaming]
- name: gpt-4o
context_window: 128000
capabilities: [text, vision, tools, json, streaming]
# Quaternary: Anthropic (if API key available)
- name: anthropic-backup
type: anthropic
enabled: false # Enable by setting ANTHROPIC_API_KEY
priority: 4
api_key: "${ANTHROPIC_API_KEY}"
models:
- name: claude-3-haiku-20240307
default: true
context_window: 200000
capabilities: [text, vision, streaming]
- name: claude-3-sonnet-20240229
context_window: 200000
capabilities: [text, vision, tools, streaming]
# ── Capability-Based Fallback Chains ────────────────────────────────────────
# When a model doesn't support a required capability (e.g., vision),
# the system falls back through these chains in order.
fallback_chains:
# Vision-capable models (for image understanding)
vision:
- llama3.2:3b # Fast, good vision
- qwen2.5-vl:3b # Excellent vision, small
- llava:7b # Classic vision model
- moondream:1.8b # Tiny, fast vision
# Tool-calling models (for function calling)
tools:
- llama3.1:8b-instruct # Best tool use
- qwen2.5:7b # Reliable tools
- llama3.2:3b # Small but capable
# General text generation (any model)
text:
- llama3.1:8b-instruct
- qwen2.5:14b
- deepseek-r1:1.5b
- llama3.2:3b
# ── Custom Models ───────────────────────────────────────────────────────────
# Register custom model weights for per-agent assignment.
# Supports GGUF (Ollama), safetensors, and HuggingFace checkpoint dirs.
# Models can also be registered at runtime via the /api/v1/models API.
#
# Roles: general (default inference), reward (PRM scoring),
# teacher (distillation), judge (output evaluation)
custom_models: []
# Example entries:
# - name: my-finetuned-llama
# format: gguf
# path: /path/to/model.gguf
# role: general
# context_window: 8192
# description: "Fine-tuned Llama for code tasks"
#
# - name: reward-model
# format: ollama
# path: deepseek-r1:1.5b
# role: reward
# context_window: 32000
# description: "Process reward model for scoring outputs"
# ── Agent Model Assignments ─────────────────────────────────────────────────
# Map persona agent IDs to specific models.
# Agents without an assignment use the global default (ollama_model).
agent_model_assignments: {}
# Example:
# persona-forge: my-finetuned-llama
# persona-echo: deepseek-r1:1.5b
# ── Multi-Modal Settings ────────────────────────────────────────────────────
multimodal:
# Automatically pull models when needed
auto_pull: true
# Timeout for model pulling (seconds)
pull_timeout: 300
# Maximum fallback depth (how many models to try before giving up)
max_fallback_depth: 3
# Prefer smaller models for vision when available (faster)
prefer_small_vision: true
# Cost tracking (optional, for budget monitoring)
cost_tracking:
enabled: true
budget_daily_usd: 10.0 # Alert if daily spend exceeds this
alert_threshold_percent: 80 # Alert at 80% of budget
# Metrics retention
metrics:
retention_hours: 168 # Keep 7 days of metrics
purge_interval_hours: 24