Command Palette

Search for a command to run...

UnylyUnyly
Browse all

Inference AIops

FreeNot checked

Enables governance-grade AIops for GPU inference clusters with root-cause analysis, metrics, and policy-governed operations for vLLM and Ray.

GitHubEmbed

About

Enables governance-grade AIops for GPU inference clusters with root-cause analysis, metrics, and policy-governed operations for vLLM and Ray.

README

Inference AIops (preview)

Disclaimer: Community-maintained open-source project. Not affiliated with, endorsed by, or sponsored by the vLLM or Ray projects or any inference-serving vendor. Product and trademark names belong to their owners. MIT licensed.

Governed AI-ops for GPU inference clustersvLLM (OpenAI API + Prometheus /metrics) and Ray Serve / Ray Jobs (Ray dashboard) — with a built-in governance harness: unified audit log, policy engine, token/runaway budget guard, undo-token recording, and graduated-autonomy risk tiers. It parses vLLM's Prometheus /metrics directly (no Prometheus server required) and probes the Ray dashboard independently. A bearer token is optional (many stacks run open). Preview — mock-validated only, not yet verified against a live cluster.

What it does

The flagship value is root-cause analysis, wrapped in guarded reads and writes:

  • diagnose_latency_spike (flagship RCA) — when TTFT/TPOT/e2e latency climbs, it correlates queue depth (running vs waiting), KV-cache pressure / preemptions, and prefix-cache locality into a ranked cause plus the specific knob to turn (add replicas, raise max-num-seqs, fix routing, enlarge KV cache). Every flag is a number, not a black-box verdict.
  • diagnose_low_utilization — the inverse: idle GPUs, over-provisioned replicas, or routing that strands a cache-warm replica → what to scale down.
  • Prometheus-native — reads vLLM's /metrics endpoint directly; no Prometheus/Grafana deployment needed.
  • Governance-grade — the first governance-grade entrant in this niche: audit + budget + risk-tier approval + undo-token + prompt-injection sanitize, with dry-run + double-confirm on the fragile prod ops (scale-down, scale-to-zero, drain, redeploy, hot-swap) the community reports as dangerous.
  • Laptop self-test — ~80% of the tool self-tests free: vLLM on a single GPU or CPU-mock + Ray in one local container (ray start --head).

Capability matrix (30 MCP tools)

Group Tools Count R/W (risk)
Metrics & RCA request_metrics, queue_depth, kv_cache_stats, diagnose_latency_spike, diagnose_low_utilization 5 read
Ray Serve (read) serve_deployment_list, deployment_status, replica_list, autoscale_config_get 4 read
Ray Serve (write) scale_replicas_up, scale_replicas_down, scale_to_zero, autoscale_config_update, drain_replica 5 write (med / high)
Models / vLLM model_list, model_info, lora_load, lora_unload, model_hot_swap 5 read + write (med / high)
Ray cluster / jobs / GPU ray_cluster_resources, ray_dashboard_status, ray_job_list, gpu_utilization, ray_job_cancel, replica_restart 6 read + write (med / high)
Deploy lifecycle model_deploy, model_undeploy, deployment_redeploy, routing_policy_update 4 write (med / high)
Cost cost_per_token 1 read

16 read, 14 write. High-risk writes (scale_replicas_down, scale_to_zero, drain_replica, lora_unload, model_hot_swap, replica_restart, model_undeploy, deployment_redeploy) all support dry_run + double-confirm; reversible writes record an undo descriptor.

Install

uv tool install inference-aiops          # or: pipx install inference-aiops

Quick start

inference-aiops init                     # wizard: host + ray_port + vllm_port + scheme
inference-aiops doctor                   # probes BOTH the Ray dashboard and vLLM independently
inference-aiops overview                 # deployments + total replicas + queue backpressure
inference-aiops metrics diagnose         # why is inference slow? ranked RCA + the knob to turn
inference-aiops serve list               # Ray Serve deployments + replica counts

Run as an MCP server (stdio) for the full 30-tool surface:

export INFERENCE_AIOPS_MASTER_PASSWORD=...   # only if a bearer token is stored
inference-aiops mcp

The CLI is a convenience subset (init, overview, serve …, metrics …, secret …, doctor, mcp); the full 30 tools are exposed via the MCP server.

Governance

Every MCP tool passes through the bundled @governed_tool harness:

  • Audit — every call (params, result, status, duration, risk tier, approver, rationale) logged to ~/.inference-aiops/audit.db (relocatable via INFERENCE_AIOPS_HOME).
  • Budget / runaway guard — token and call budgets trip a circuit breaker on tight poll/retry loops.
  • Risk tiers — graduated autonomy; high-risk ops can require a named approver (INFERENCE_AUDIT_APPROVED_BY / INFERENCE_AUDIT_RATIONALE).
  • Undo recording — reversible writes (scale, autoscale-config, routing, hot-swap, LoRA load) record an inverse descriptor.

Supported scope + limitations

Preview / mock-only. All behaviour is validated against mocked vLLM /metrics, vLLM OpenAI API, and Ray dashboard responses. ~80% of the tool self-tests on a laptop — vLLM on a single GPU or CPU-mock plus a local one-node Ray head. Not yet verified against a live production cluster.

Unverified against real hardware / topology:

  • multi-GPU tensor-parallel / pipeline-parallel deployments,
  • real GPU thermal / throttle telemetry (utilisation is best-effort from the Ray dashboard's /api/nodes),
  • multi-node drain and node-reboot orchestration.

The fastest live check is inference-aiops doctor.

Missing a capability?

This is the GPU-inference member of the AIops-tools family (governed AI-ops with audit + budget + undo + risk tiers). If a vLLM or Ray capability you need is missing, or your stack speaks a dialect these tools don't yet handle — open an issue or a PR. Contributions welcome.

from github.com/AIops-tools/Inference-AIops

Install Inference AIops in Claude Desktop, Claude Code & Cursor

Recommended · one command, every IDE
unyly install inference-aiops

Installs into Claude Desktop, Claude Code, Cursor & VS Code — handles npx, uvx and build-from-source repos for you.

First time? Get the CLI: curl -fsSL https://unyly.org/install | sh

Or configure manually

Run in your terminal:

claude mcp add inference-aiops -- uvx inference-aiops

FAQ

Is Inference AIops MCP free?

Yes, Inference AIops MCP is free — one-click install via Unyly at no cost.

Does Inference AIops need an API key?

No, Inference AIops runs without API keys or environment variables.

Is Inference AIops hosted or self-hosted?

A hosted option is available: Unyly runs the server in the cloud, no local setup required.

How do I install Inference AIops in Claude Desktop, Claude Code or Cursor?

Open Inference AIops on unyly.org, pick your client tab (Claude Desktop, Claude Code, Cursor) and press Install — the config is generated automatically, no JSON editing.

Related MCPs

Compare Inference AIops with

Not sure what to pick?

Find your stack in 60 seconds

Author?

Embed badge for your README

Browse similar

All development MCPs