Two concurrent chat_completion requests against the same single-GPU model could interleave their `clear_kv_cache → forward(chunk0) → forward(chunk1) → ...` sequences. The device-worker channel serialises individual jobs but not the sequence boundary, so the cache could end up holding tokens from one request while another's mask was sized for its own prompt — producing a shape mismatch mid-prefill. Observed on benjy 2026-05-27 18:41:05: agent-zero's `memorize memories` and `memorize solutions` extensions fired 4ms apart against Qwen/Qwen3-8B (a0's utility model). Both prefilled into the same KV cache, and request a08b4a's chunk 0 forward produced scores of shape [1, 32, 512, 1024] against a mask of [1, 1, 512, 512] — broadcast_add failed, both requests bubbled the error up, both flipped the model to poisoned. Add `LoadedModel.inference_lock: tokio::sync::Mutex<()>`, mirroring the TpLoadedModel.pool lock that the TP path already held. Acquire it at the start of `chat_completion` and inside the spawned task of `chat_completion_stream` (so the role chunk goes out immediately and only the inference work queues behind the lock). The CPU branch uses `blocking_lock` from inside spawn_blocking; the CUDA branch uses async `.lock().await` inside tokio::spawn. Throughput impact: zero. The GPU was already serialised at the device-worker channel — multiple requests just produced corrupt KV cache state instead of clean serial throughput. The lock makes the existing serialisation honest. Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
cortex
A Rust reverse-proxy and fleet management layer for multi-node GPU inference
clusters. Cortex sits in front of one or more neuron daemons (each running
candle-based inference on a local GPU host) and presents a unified OpenAI +
Anthropic compatible API surface.
Problem
Running local LLMs across multiple GPU nodes (different VRAM tiers, different model affinities) requires a unified API surface that:
- Presents a single
/v1/modelscatalogue merging every model that can be served by any neuron in the fleet. - Routes requests to the correct node based on where a model is loaded (or can be loaded), handling cold-load and eviction transparently.
- Manages model lifecycle — load on demand, unload cold models, pin
critical ones — by calling each neuron's
/models/{load,unload}API. - Translates between OpenAI and Anthropic request/response envelopes so every client speaks whichever dialect it prefers.
- Captures per-request metrics (tokens, tok/s, TTFT, latency) and exposes them as Prometheus counters/histograms.
Architecture
┌──────────────┐ ┌──────────┐ ┌────────────┐ ┌────────────┐
│ Claude Code │ │ Zed/IDE │ │ Tidal / mm │ │ curl / etc │
└──────┬───────┘ └─────┬────┘ └──────┬─────┘ └──────┬─────┘
│ │ │ │
└────────────────┴──────┬───────┴───────────────┘
│
┌──────────▼──────────┐
│ cortex │
│ (cortex-gateway) │
│ │
│ Router · Metrics │
│ Evictor · Translate│
└──┬──────┬────────┬──┘
│ │ │
┌──────────▼┐ ┌──▼─────┐ ┌▼──────────┐
│ neuron │ │ neuron │ │ neuron │
│ :13131 │ │ :13131 │ │ :13131 │
│ candle │ │ candle │ │ candle │
└───────────┘ └────────┘ └───────────┘
private network (.internal)
Crates
| Crate | Purpose |
|---|---|
cortex-core |
Shared types: config, node/model state, metrics, OpenAI/Anthropic envelopes, harness trait, discovery types |
cortex-gateway |
Axum HTTP server: proxy, router, evictor, poller, metrics exporter |
neuron |
Per-node daemon: GPU discovery, in-process candle inference, model lifecycle API |
cortex-cli |
CLI entrypoint (cortex serve, cortex status, etc.) |
Node setup
Each GPU node runs neuron (listening on :13131). Neuron uses
huggingface/candle for in-process inference — there is no external
inference subprocess to manage.
Inside the daemon, every CUDA device gets one dedicated OS thread
(named cuda-dev-N) that owns the device's CUDA context for the
daemon's lifetime. Model loads, forward passes, KV-cache resets,
NCCL collectives, VRAM queries, and unloads all route through that
thread via a job channel; tensors never escape it alive. This pins
context binding to a known thread, makes the CUDA Drop contract
structurally safe, and isolates driver-error poisoning to one worker
rather than the whole process. See CLAUDE.md for the design
rationale and crates/neuron/src/harness/device_worker/ for the code.
The neuron RPM (helexa-neuron) ships a systemd unit:
dnf copr enable helexa/helexa
dnf install helexa-neuron
systemctl enable --now neuron
Gateway config
# /etc/cortex/cortex.toml
[gateway]
listen = "0.0.0.0:31313"
metrics_listen = "0.0.0.0:31314"
[eviction]
strategy = "lru" # lru | priority
defrag_after_cycles = 50
[[neurons]]
name = "beast"
endpoint = "http://beast.internal:13131"
[[neurons]]
name = "benjy"
endpoint = "http://benjy.internal:13131"
Model placement profiles live in models.toml — see models.example.toml.
Building
cargo build --release
CI
Every push triggers format, lint, and test checks. Ensure these pass locally before pushing:
cargo fmt --check --all # must be clean
cargo clippy --workspace -- -D warnings # warnings are errors
cargo test --workspace # all tests must pass
Tagged releases (v*) additionally build SRPMs for both cortex and
helexa-neuron and publish to COPR.
Running
# start the gateway
cortex serve --config /etc/cortex/cortex.toml
# check fleet status
cortex status
# list all models across nodes
curl http://localhost:31313/v1/models
License
GPL-3.0