# Model Routing Service Demo Plano is an AI-native proxy and data plane for agentic apps — with built-in orchestration, safety, observability, and intelligent LLM routing. ``` ┌───────────┐ ┌─────────────────────────────────┐ ┌──────────────┐ │ Client │ ───► │ Plano │ ───► │ OpenAI │ │ (any │ │ │ │ Anthropic │ │ language)│ │ Arch-Router (1.5B model) │ │ Any Provider│ └───────────┘ │ analyzes intent → picks model │ └──────────────┘ └─────────────────────────────────┘ ``` - **One endpoint, many models** — apps call Plano using standard OpenAI/Anthropic APIs; Plano handles provider selection, keys, and failover - **Intelligent routing** — a lightweight 1.5B router model classifies user intent and picks the best model per request - **Cost & latency ranking** — models are ranked by live cost (DigitalOcean pricing API) or latency (Prometheus) before returning the fallback list - **Platform governance** — centralize API keys, rate limits, guardrails, and observability without touching app code - **Runs anywhere** — single binary; self-host the router for full data privacy ## How Routing Works Routing is configured in top-level `routing_preferences` (requires `version: v0.4.0`): ```yaml version: v0.4.0 routing_preferences: - name: complex_reasoning description: complex reasoning tasks, multi-step analysis, or detailed explanations models: - openai/gpt-4o - openai/gpt-4o-mini selection_policy: prefer: cheapest # rank by live cost data - name: code_generation description: generating new code, writing functions, or creating boilerplate models: - anthropic/claude-sonnet-4-20250514 - openai/gpt-4o selection_policy: prefer: fastest # rank by Prometheus p95 latency ``` ### `selection_policy.prefer` values | Value | Behavior | |---|---| | `cheapest` | Sort models by ascending cost. Requires `cost_metrics` or `digitalocean_pricing` in `model_metrics_sources`. | | `fastest` | Sort models by ascending P95 latency. Requires `prometheus_metrics` in `model_metrics_sources`. | | `random` | Shuffle the model list on each request. | | `none` | Return models in definition order — no reordering. | When a request arrives, Plano: 1. Sends the conversation + route descriptions to Arch-Router for intent classification 2. Looks up the matched route and ranks its candidate models by cost or latency 3. Returns an ordered list — client uses `models[0]`, falls back to `models[1]` on 429/5xx ``` 1. Request arrives → "Write binary search in Python" 2. Arch-Router classifies → route: "code_generation" 3. Rank by latency → claude-sonnet (0.85s) < gpt-4o (1.2s) 4. Response → models: ["anthropic/claude-sonnet-4-20250514", "openai/gpt-4o"] ``` No match? Arch-Router returns `null` route → client falls back to the model in the original request. The `/routing/v1/*` endpoints return the routing decision **without** forwarding to the LLM — useful for testing routing behavior before going to production. ## Setup Make sure you have Plano CLI installed (`pip install planoai` or `uv tool install planoai`). ```bash export OPENAI_API_KEY= export ANTHROPIC_API_KEY= ``` Start Prometheus and the mock latency metrics server: ```bash cd demos/llm_routing/model_routing_service docker compose up -d ``` Then start Plano: ```bash planoai up config.yaml ``` On startup you should see logs like: ``` fetched digitalocean pricing: N models fetched prometheus latency metrics: 3 models ``` If a model in `routing_preferences` has no matching pricing or latency data, Plano logs a warning at startup — the model is still included but ranked last. ## Run the demo ```bash ./demo.sh ``` ## Endpoints All three LLM API formats are supported: | Endpoint | Format | |---|---| | `POST /routing/v1/chat/completions` | OpenAI Chat Completions | | `POST /routing/v1/messages` | Anthropic Messages | | `POST /routing/v1/responses` | OpenAI Responses API | ## Example ```bash curl http://localhost:12000/routing/v1/chat/completions \ -H "Content-Type: application/json" \ -d '{ "model": "gpt-4o-mini", "messages": [{"role": "user", "content": "Write a Python function for binary search"}] }' ``` Response: ```json { "models": ["anthropic/claude-sonnet-4-20250514", "openai/gpt-4o"], "route": "code_generation", "trace_id": "c16d1096c1af4a17abb48fb182918a88" } ``` The response contains the ranked model list — your client should try `models[0]` first and fall back to `models[1]` on 429 or 5xx errors. ## Metrics Sources ### DigitalOcean Pricing (`digitalocean_pricing`) Fetches public model pricing from the DigitalOcean Gen-AI catalog (no auth required). Model IDs are normalized as `lowercase(creator)/model_id`. Cost scalar = `input_price_per_million + output_price_per_million`. ```yaml model_metrics_sources: - type: digitalocean_pricing refresh_interval: 3600 # re-fetch every hour ``` ### Prometheus Latency (`prometheus_metrics`) Queries a Prometheus instance for P95 latency. The PromQL expression must return an instant vector with a `model_name` label matching the model names in `routing_preferences`. ```yaml model_metrics_sources: - type: prometheus_metrics url: http://localhost:9090 query: model_latency_p95_seconds refresh_interval: 60 ``` The demo's `metrics_server.py` exposes mock latency data; `docker compose up -d` starts it alongside Prometheus. ### Custom Cost Endpoint (`cost_metrics`) ```yaml model_metrics_sources: - type: cost_metrics url: https://my-internal-pricing-api/costs auth: type: bearer token: $PRICING_TOKEN refresh_interval: 300 ``` Expected response format: ```json { "anthropic/claude-sonnet-4-20250514": { "input_per_million": 3.0, "output_per_million": 15.0 }, "openai/gpt-4o": { "input_per_million": 5.0, "output_per_million": 20.0 } } ``` ## Kubernetes Deployment (Self-hosted Arch-Router on GPU) To run Arch-Router in-cluster using vLLM instead of the default hosted endpoint: **0. Check your GPU node labels and taints** ```bash kubectl get nodes --show-labels | grep -i gpu kubectl get node -o jsonpath='{.spec.taints}' ``` GPU nodes commonly have a `nvidia.com/gpu:NoSchedule` taint — `vllm-deployment.yaml` includes a matching toleration. If you have multiple GPU node pools and need to pin to a specific one, uncomment and set the `nodeSelector` in `vllm-deployment.yaml` using the label for your cloud provider. **1. Deploy Arch-Router and Plano:** ```bash # arch-router deployment kubectl apply -f vllm-deployment.yaml # plano deployment kubectl create secret generic plano-secrets \ --from-literal=OPENAI_API_KEY=$OPENAI_API_KEY \ --from-literal=ANTHROPIC_API_KEY=$ANTHROPIC_API_KEY kubectl create configmap plano-config \ --from-file=plano_config.yaml=config_k8s.yaml \ --dry-run=client -o yaml | kubectl apply -f - kubectl apply -f plano-deployment.yaml ``` **3. Wait for both pods to be ready:** ```bash # Arch-Router downloads the model (~1 min) then vLLM loads it (~2 min) kubectl get pods -l app=arch-router -w kubectl rollout status deployment/plano ``` **4. Test:** ```bash kubectl port-forward svc/plano 12000:12000 ./demo.sh ``` To confirm requests are hitting your in-cluster Arch-Router (not just health checks): ```bash kubectl logs -l app=arch-router -f --tail=0 # Look for POST /v1/chat/completions entries ``` **Updating the config:** ```bash kubectl create configmap plano-config \ --from-file=plano_config.yaml=config_k8s.yaml \ --dry-run=client -o yaml | kubectl apply -f - kubectl rollout restart deployment/plano ```