Files
cortex/cortex.example.toml
rob thijssen 3cccc2c56b refactor(neuron): cut mistralrs/llamacpp, scaffold candle harness
Stage 1 of the candle-native pivot. Replaces the external-process
harness model (mistralrs over HTTP, llamacpp placeholder) with an
in-process Harness trait whose sole implementation is candle. The
trait keeps its shape so future engines slot in additively, but
start/stop default to no-ops and HarnessConfig drops endpoint and
systemd_unit since no harness needs external supervision.

Behaviour is unchanged on the wire: load_model returns a "not
implemented yet (Stage 2)" error and list_models is empty. The
gateway-side proxy, poller, and router are untouched.

CLAUDE.md Phase 11 (llama.cpp) and Phase 12 (mistral.rs COPR) are
marked superseded; the staged plan lives in
~/.claude/plans/create-a-more-aggressive-calm-naur.md.

Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
2026-05-18 15:53:04 +03:00

46 lines
1.2 KiB
TOML

# cortex.example.toml — example configuration
#
# Copy to cortex.toml and adjust for your environment.
#
# Environment variable overrides use CORTEX_ prefix with __ separators:
# CORTEX_GATEWAY__LISTEN=0.0.0.0:31313
[gateway]
listen = "0.0.0.0:31313"
metrics_listen = "0.0.0.0:31314"
[eviction]
strategy = "lru"
# Restart neurons after this many load/unload cycles to defragment VRAM.
# Set to 0 to disable.
defrag_after_cycles = 50
# -- Nodes ---------------------------------------------------------------
# Each [[nodes]] entry declares a neuron daemon in the fleet.
# Models are discovered by polling the neuron's /models endpoint.
# Pinned models (see models.toml) are never evicted.
[[nodes]]
name = "gpu-large"
endpoint = "http://gpu-large.internal:8080"
vram_mb = 49152 # e.g. 2x RTX 4090 (48 GB combined)
pinned = [
"your-org/large-model",
]
[[nodes]]
name = "gpu-medium"
endpoint = "http://gpu-medium.internal:8080"
vram_mb = 24576 # e.g. RTX 4090 (24 GB)
pinned = [
"your-org/medium-model",
]
[[nodes]]
name = "gpu-small"
endpoint = "http://gpu-small.internal:8080"
vram_mb = 12288 # e.g. RTX 3060 (12 GB)
pinned = [
"your-org/embedding-model",
]