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cortex/neuron.example.toml
rob thijssen d4e1b05956
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feat(neuron,cortex-core): source-aware loader (scheme:org/name)
Phase 1 of plan-source-aware-loader-preflight. Makes neuron's
loader treat `huggingface:org/name` and `helexa:org/name` as
first-class distinct sources with per-source endpoint + cache,
while staying backwards-compatible with bare `org/name` ids.
Zero behavior change for existing operator configs.

Motivation: helexa is adding an EU-hosted registry
(`registry.helexa.ai`) alongside HF. Both speak HF-compatible
wire format, but the bytes, jurisdiction, trust root, and cache
namespace are distinct. The loader needs to disambiguate which
registry serves a given model id, and to keep their caches from
colliding on disk when both happen to host the same `org/name`.

What lands:

- `cortex-core::source` — new module. `ModelSourceId { scheme,
  org, name }` with `FromStr` accepting both `scheme:org/name`
  and bare `org/name`. `Display` round-trips. `repo_path()`
  emits the `org/name` half for the hf-hub `Api::model(...)`
  call regardless of which scheme/endpoint we're hitting.
  Rejects malformed input with typed `ParseError` variants
  (empty scheme, missing slash, scheme with `/`, name with
  `:`, etc.).

- `neuron::config::CandleHarnessConfig` gains
  `default_source: Option<String>` and
  `sources: HashMap<String, SourceConfig>`. `SourceConfig`
  mirrors what `hf_hub::ApiBuilder` consumes: endpoint URL,
  optional `auth_env` (env var name read at startup so secrets
  stay out of TOML), and optional cache_dir. Defaults
  synthesise a `huggingface` entry pointing at
  `https://huggingface.co` with the legacy `hf_cache` field as
  its cache_dir — so existing configs that only set `hf_cache`
  keep working unchanged.

- `CandleHarness::new(bind_url, &CandleHarnessConfig)` replaces
  `CandleHarness::new(bind_url, hf_cache)`. Resolves every
  configured source's auth env var and cache dir up front so
  `hf_api_for(scheme)` is a pure HashMap lookup on the hot
  load path. Only the `huggingface` scheme gets the legacy
  `HF_HUB_CACHE`/`HF_HOME` env-var fallback chain; other
  schemes resolve to whatever the operator typed.

- `hf_api()` -> `hf_api_for(scheme)`. Builds an
  `hf_hub::Api` with the source's endpoint, cache_dir, and
  auth token. Errors with a useful message naming the
  configured schemes when an unknown scheme is requested.

- `CandleHarness::load_model` parses `spec.model_id` into a
  `ModelSourceId`, substitutes `default_source` for bare ids,
  and threads the parsed source through `preflight`,
  `resolve_files`, `resolve_dense_files`, `load_arch_gguf`,
  `load_arch_dense`, and `load_tp`. The hf-hub `Api::model()`
  call now uses `source_id.repo_path()` so registry calls hit
  the right URL shape regardless of scheme.

- `preflight()` signature gains a `&ModelSourceId` parameter
  (it's the canonical id for log lines and error display);
  `RepoFetchFailed.model_id` etc. now carry the
  scheme-qualified form so operator-visible errors echo
  exactly what was configured.

- `neuron.example.toml` documents the new
  `[harness.candle.sources.*]` table with commented-out
  examples for `huggingface` (explicit override) and `helexa`.

Tests:

- 13 new unit tests in `cortex-core::source` covering parse /
  display round-trip, default-scheme substitution semantics,
  and every `ParseError` variant.
- 6 new unit tests in `neuron::config` covering the
  `effective_sources` synth (legacy `hf_cache` carry-through,
  explicit override preservation, helexa-alongside-huggingface)
  and `effective_default_source` fallback.
- 2 new unit tests in `harness::candle::tests` covering
  multi-scheme `hf_api_for` routing, including the
  "unknown scheme" error path naming configured schemes.
- Preflight integration tests updated to construct
  `ModelSourceId` and assert against the scheme-qualified
  error form.

CI gate: cargo fmt --check, cargo clippy --workspace
--all-targets -- -D warnings, cargo test --workspace (all 24
test groups ok, zero failures).

Out of scope (Phase 3):
- Cortex catalogue `source` field — independent of Phase 1+2,
  ships when the registry comes online.
- `helexa` source endpoint itself — separate project; this
  PR adds the client-side rails only.

Co-Authored-By: Claude Opus 4.7 <noreply@anthropic.com>
2026-06-01 13:42:11 +03:00

82 lines
3.3 KiB
TOML

# neuron.example.toml — example configuration
#
# Copy to /etc/neuron/neuron.toml and adjust for your environment.
#
# Environment variable overrides use NEURON_ prefix with __ separators:
# NEURON_PORT=13131
port = 13131
# -- Harnesses ---------------------------------------------------------------
# Each [[harnesses]] entry enables an inference engine. Currently only
# "candle" is supported — it runs in-process and uses huggingface/candle
# for inference on local CUDA devices (or CPU when CUDA is unavailable).
[[harnesses]]
name = "candle"
# -- Candle harness settings -------------------------------------------------
# Optional tuning for the candle harness.
[harness.candle]
# HuggingFace cache directory for model weights.
#
# Resolution order (first hit wins):
# 1. `hf_cache` here in this file (applies to the synth `huggingface`
# source only — see [harness.candle.sources.*] below for explicit
# per-source paths).
# 2. `HF_HUB_CACHE` env var — same convention as the Python
# `huggingface_hub` library, so an existing cache directory shared
# with other tooling can be reused without per-tool config.
# 3. `HF_HOME` env var (cache appended as `$HF_HOME/hub`).
# 4. hf-hub's default (`~/.cache/huggingface/hub`).
#
# For per-host overrides (e.g. one neuron has an SSD with prefetched
# weights), prefer a systemd drop-in over editing this file:
# /etc/systemd/system/neuron.service.d/local.conf:
# [Service]
# Environment=HF_HUB_CACHE=/archive/hf-cache
# hf_cache = "/var/lib/neuron/hf-cache"
# Default scheme applied to bare `org/name` model ids (those without a
# `scheme:` prefix). Defaults to "huggingface" when unset. Set to
# "helexa" to make `default_models = [{ model_id = "Helexa/Foo" }]`
# resolve via the helexa registry without prefixing every entry.
# default_source = "huggingface"
# Per-scheme source endpoints. Each scheme maps to an HF-compatible
# registry. The `huggingface` source is auto-synthesised pointing at
# `https://huggingface.co` when omitted; declare it explicitly here to
# override the endpoint, auth env, or cache dir.
#
# [harness.candle.sources.huggingface]
# endpoint = "https://huggingface.co"
# auth_env = "HF_TOKEN" # optional bearer token via env var
# cache_dir = "/archive3/llm-cache/huggingface"
#
# Add helexa (or any operator-run mirror speaking the HF-compatible
# wire format) by adding another sources entry. Caches are
# disambiguated per scheme so a mirror serving the same `org/name` as
# HF cannot collide on disk.
#
# [harness.candle.sources.helexa]
# endpoint = "https://registry.helexa.ai"
# auth_env = "HELEXA_TOKEN"
# cache_dir = "/archive3/llm-cache/helexa"
# -- Default models ----------------------------------------------------------
# Models listed here are loaded automatically when the neuron service
# activates. Loading is sequential — a slow or failing entry doesn't
# block the rest of the fleet, but it does push out the time before
# neuron starts serving HTTP, so keep the list short. Operators can
# load additional models on demand via POST /models/load.
#
# Make sure data/neuron.service's TimeoutStartSec is generous enough to
# cover the slowest entry's first-time download + materialisation.
# [[default_models]]
# model_id = "Qwen/Qwen3-0.6B-GGUF"
# harness = "candle"
# quant = "Q4_K_M"
# devices = [0]