All checks were successful
build-prerelease / Resolve version stamps (push) Successful in 33s
CI / Format (push) Successful in 38s
CI / Clippy (push) Successful in 2m19s
build-prerelease / Build neuron-blackwell (push) Successful in 3m32s
CI / Test (push) Successful in 4m34s
CI / Build cortex SRPM (push) Has been skipped
CI / Build neuron SRPM (push) Has been skipped
CI / Publish cortex to COPR (push) Has been skipped
CI / Publish neuron to COPR (push) Has been skipped
CI / Bump version in source (push) Has been skipped
build-prerelease / Build cortex binary (push) Successful in 4m16s
build-prerelease / Package cortex RPM (push) Successful in 1m18s
build-prerelease / Build neuron-ampere (push) Successful in 4m55s
build-prerelease / Build neuron-ada (push) Successful in 5m11s
build-prerelease / Package helexa-neuron-ampere RPM (push) Successful in 2m50s
build-prerelease / Package helexa-neuron-ada RPM (push) Successful in 2m52s
build-prerelease / Package helexa-neuron-blackwell RPM (push) Successful in 3m35s
build-prerelease / Publish to rpm.lair.cafe (unstable) (push) Successful in 1m0s
Caught by live validation against Qwen/Qwen3-1.7B on beast:
HTTP 500 "unexpected rank, expected: 1, got: 2 ([1, 151936])"
Candle's qwen3::ModelForCausalLM::forward returns shape [B, 1, V]
(no final squeeze) while quantized_qwen3::ModelWeights::forward
returns [B, V] (with squeeze(1) at the end). My match arms applied
a single squeeze(0) uniformly, which is correct for the quantized
[1, V] → [V] but leaves the dense at [1, V] → which then trips
apply_repeat_penalty::to_vec1() expecting rank 1.
Dense match arms now strip both batch and seq dims:
model.forward(&input, offset)?.squeeze(0)?.squeeze(0)?
Also fixes validate-neuron.sh's `${3:-Q4_K_M}` → `${3-Q4_K_M}`
(no colon) so passing an explicit empty third arg now drives the
dense path instead of falling back to Q4_K_M.
Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
163 lines
5.9 KiB
Bash
Executable File
163 lines
5.9 KiB
Bash
Executable File
#!/bin/env bash
|
|
#
|
|
# End-to-end smoke test for a deployed neuron.
|
|
#
|
|
# Confirms the daemon is reachable, loads a small public Qwen3 GGUF,
|
|
# fires a reasoning probe at /v1/chat/completions, and prints the
|
|
# answer. Used to validate the candle harness on a real GPU host
|
|
# before trusting it for production traffic, and as a regression test
|
|
# after pushing new neuron builds.
|
|
#
|
|
# Usage:
|
|
# script/validate-neuron.sh [host] [model_id] [quant]
|
|
#
|
|
# Defaults:
|
|
# host = beast.hanzalova.internal
|
|
# model_id = unsloth/Qwen3-0.6B-GGUF (official Qwen3-*-GGUF repos
|
|
# ship Q8_0 only; unsloth's mirror ships the full Q-spectrum
|
|
# including Q4_K_M)
|
|
# quant = Q4_K_M
|
|
|
|
set -euo pipefail
|
|
|
|
HOST="${1:-beast.hanzalova.internal}"
|
|
MODEL_ID="${2:-unsloth/Qwen3-0.6B-GGUF}"
|
|
# `${3-Q4_K_M}` (no colon) only uses the default when the arg is
|
|
# UNSET — passing an explicit empty string drives the dense path.
|
|
QUANT="${3-Q4_K_M}"
|
|
PORT="${NEURON_PORT:-13131}"
|
|
BASE="http://${HOST}:${PORT}"
|
|
|
|
# Reasoning probe — concrete, low-temperature answer that small models
|
|
# can still get right. "Paris" is a strong signal of basic competence
|
|
# beyond gibberish.
|
|
PROBE_PROMPT='What is the capital of Georgia (Caucasus)? Respond with the city name only, no punctuation.'
|
|
EXPECT_SUBSTR='Tbilisi'
|
|
# Qwen3 prepends <think>...</think> reasoning before the answer when the
|
|
# chat template enables thinking mode, which eats most of a small token
|
|
# budget. 256 leaves enough room for thinking + final answer.
|
|
MAX_TOKENS=256
|
|
|
|
# /models/load is synchronous — neuron blocks the response until the
|
|
# hf-hub download + GGUF parse + tensor materialisation is done. A
|
|
# fresh 0.6B-Q4_K_M is ~400 MB; on a slow link or cold cache that's
|
|
# easily a minute. Pick a generous ceiling.
|
|
LOAD_TIMEOUT=600
|
|
INFER_TIMEOUT=120
|
|
|
|
# Status messages go to stderr so command substitutions like
|
|
# `raw=$(run_probe)` capture only the function's intended return value
|
|
# (an HTTP body), not the progress chatter.
|
|
say() { printf '[%s] %s\n' "${HOST}" "$*" >&2; }
|
|
die() { say "FAIL: $*"; exit 1; }
|
|
|
|
probe_health() {
|
|
curl --silent --fail --max-time 5 "${BASE}/health" >/dev/null \
|
|
|| die "neuron not reachable at ${BASE}/health"
|
|
}
|
|
|
|
list_loaded_ids() {
|
|
# The manifest is YAML and uses yq; HTTP responses are JSON and use
|
|
# jq directly. pip-yq parses input as YAML by default, which trips
|
|
# on JSON content that happens to look like YAML aliases (chatcmpl
|
|
# ids, escaped quotes inside `<think>...</think>` blocks, etc.).
|
|
curl --silent --fail "${BASE}/models" | jq -r '.[].id'
|
|
}
|
|
|
|
is_loaded() {
|
|
list_loaded_ids 2>/dev/null | grep -Fxq "${MODEL_ID}"
|
|
}
|
|
|
|
trigger_load() {
|
|
say "POST /models/load ${MODEL_ID} (quant=${QUANT:-<dense>}, device=[0])"
|
|
say " (synchronous; may take a minute on first run while HF downloads)"
|
|
# Build the payload via jq so the optional `quant` field is
|
|
# omitted entirely when empty — that's the signal to the harness
|
|
# to take the dense safetensors load path rather than GGUF.
|
|
local payload
|
|
if [[ -z "${QUANT}" ]]; then
|
|
payload=$(jq -n -c \
|
|
--arg id "${MODEL_ID}" \
|
|
'{model_id: $id, harness: "candle", devices: [0]}')
|
|
else
|
|
payload=$(jq -n -c \
|
|
--arg id "${MODEL_ID}" \
|
|
--arg q "${QUANT}" \
|
|
'{model_id: $id, harness: "candle", quant: $q, devices: [0]}')
|
|
fi
|
|
# --write-out captures the response code on a separate line so we
|
|
# can surface a real diagnostic instead of relying on --fail.
|
|
local resp http_code body
|
|
resp=$(curl --silent --show-error --max-time "${LOAD_TIMEOUT}" \
|
|
--write-out '\n__HTTP__%{http_code}' \
|
|
-X POST "${BASE}/models/load" \
|
|
-H 'content-type: application/json' \
|
|
--data "${payload}") || die "curl /models/load failed: $?"
|
|
http_code=$(echo "${resp}" | grep -oP '(?<=__HTTP__)\d+$' | tail -1)
|
|
body=$(echo "${resp}" | sed '$ s/__HTTP__.*$//')
|
|
if [[ "${http_code}" != "200" ]]; then
|
|
die "load returned HTTP ${http_code}: ${body}"
|
|
fi
|
|
say "load returned ${http_code}: ${body}"
|
|
}
|
|
|
|
run_probe() {
|
|
say "POST /v1/chat/completions (probe: ${PROBE_PROMPT})"
|
|
local payload
|
|
payload=$(jq -n -c \
|
|
--arg model "${MODEL_ID}" \
|
|
--arg content "${PROBE_PROMPT}" \
|
|
--argjson tokens "${MAX_TOKENS}" \
|
|
'{
|
|
model: $model,
|
|
messages: [{role: "user", content: $content}],
|
|
temperature: 0.1,
|
|
max_tokens: $tokens
|
|
}')
|
|
local resp http_code body
|
|
resp=$(curl --silent --show-error --max-time "${INFER_TIMEOUT}" \
|
|
--write-out '\n__HTTP__%{http_code}' \
|
|
-X POST "${BASE}/v1/chat/completions" \
|
|
-H 'content-type: application/json' \
|
|
--data "${payload}") || die "curl /v1/chat/completions failed: $?"
|
|
http_code=$(echo "${resp}" | grep -oP '(?<=__HTTP__)\d+$' | tail -1)
|
|
body=$(echo "${resp}" | sed '$ s/__HTTP__.*$//')
|
|
if [[ "${http_code}" != "200" ]]; then
|
|
die "inference returned HTTP ${http_code}: ${body}"
|
|
fi
|
|
echo "${body}"
|
|
}
|
|
|
|
say "validating neuron at ${BASE}"
|
|
probe_health
|
|
say "/health OK"
|
|
|
|
if is_loaded; then
|
|
say "${MODEL_ID} already loaded"
|
|
else
|
|
trigger_load
|
|
fi
|
|
|
|
raw=$(run_probe)
|
|
echo "---"
|
|
# Dump the raw JSON. Don't pipe through `yq -r '.'` — yq's default
|
|
# YAML output mode chokes on JSON strings that contain `<` (and the
|
|
# `<think>` markers Qwen3 emits during reasoning are a perfect
|
|
# example). The targeted `yq -r '.path'` calls below work fine
|
|
# because jq's path filter mode bypasses the YAML re-emit.
|
|
echo "${raw}"
|
|
echo "---"
|
|
|
|
content=$(echo "${raw}" | jq -r '.choices[0].message.content // empty')
|
|
if [[ -z "${content}" ]]; then
|
|
die "no content in chat completion response"
|
|
fi
|
|
say "assistant said: ${content}"
|
|
|
|
if echo "${content}" | grep -qiF "${EXPECT_SUBSTR}"; then
|
|
say "PASS — response contains expected substring '${EXPECT_SUBSTR}'"
|
|
exit 0
|
|
else
|
|
die "response did not contain '${EXPECT_SUBSTR}'"
|
|
fi
|