Truncation fix: call_llm() in _llm_client.py now accepts max_tokens (default 2048) and passes it in both the cf-orch task payload and the OpenAI-compat fallback body. Hypothesizer uses max_tokens=1024 (JSON array output); synthesizer and legacy summarize use 2048 (structured 5-section narrative). Without this, backends use their own default (often 512 tokens), causing mid-sentence truncation of the diagnosis output. UI fix: reasoning card changed from bg-accent/5 border-accent/30 (opacity modifiers on CSS variables don't compose reliably across themes) to the callout pattern: bg-surface-raised with a solid border-l-4 border-accent. Header label changed from text-text-dim to text-accent for visual anchoring. Text remains text-text-primary for guaranteed contrast on both light and dark themes. Tracks: #56 (technical-level post-processor, filed as follow-on feature)
167 lines
6 KiB
Python
167 lines
6 KiB
Python
"""Stage 3: Root-Cause Hypothesizer — LLM + RAG context."""
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from __future__ import annotations
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import json
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import logging
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from uuid import uuid4
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from app.context.retriever import RetrievedContext
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from app.services.diagnose._llm_client import call_llm, extract_first_json_array, strip_json_fences
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from app.services.diagnose.models import (
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ClassifiedTimeline,
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EventCluster,
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Hypothesis,
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SeverityLabel,
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)
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logger = logging.getLogger(__name__)
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_VALID_SEVERITIES: frozenset[str] = frozenset({"CRITICAL", "ERROR", "WARN", "INFO", "DEBUG"})
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_SYSTEM_PROMPT = (
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"You are a Linux sysadmin log analyst. Analyze the following clustered log timeline "
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"and generate 2-4 root cause hypotheses as a JSON array.\n\n"
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"Each hypothesis must follow this exact JSON schema:\n"
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'{"title": str (≤80 chars), "description": str (2-4 sentences), '
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'"confidence": float (0.0-1.0), "severity": str (one of: CRITICAL, ERROR, WARN, INFO), '
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'"supporting_clusters": [str list of cluster IDs]}\n\n'
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"Return ONLY a valid JSON array. No prose, no markdown, no explanation outside the JSON."
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)
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def _coerce_float(val: object, default: float) -> float:
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"""Safely coerce LLM output to float, returning default on failure."""
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try:
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return float(val) # type: ignore[arg-type]
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except (TypeError, ValueError):
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return default
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def _validate_severity(s: str) -> SeverityLabel:
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"""Map a raw severity string to a valid SeverityLabel, defaulting to ERROR."""
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upper = s.upper()
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if upper == "WARNING":
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return "WARN"
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return upper if upper in _VALID_SEVERITIES else "ERROR" # type: ignore[return-value]
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def _cluster_summary(cluster: EventCluster, severity: str) -> str:
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"""Build a condensed single-line summary of a cluster for the prompt."""
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sources = ", ".join(list(cluster.source_ids)[:3])
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patterns = ", ".join(list(cluster.pattern_tags)[:5])
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text_preview = cluster.representative_text[:200]
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summary = (
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f"[{severity}] {cluster.start_iso or 'unknown'} "
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f"({sources}) — {text_preview}"
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)
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if patterns:
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summary += f" [patterns: {patterns}]"
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return summary
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class RootCauseHypothesizer:
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"""Generate ranked root-cause hypotheses from a classified log timeline."""
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def __init__(self, max_hypotheses: int = 4) -> None:
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self._max_hypotheses = max_hypotheses
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def hypothesize(
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self,
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classified: ClassifiedTimeline,
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ctx: RetrievedContext,
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query: str,
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llm_url: str | None = None,
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llm_model: str | None = None,
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llm_api_key: str | None = None,
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) -> list[Hypothesis]:
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"""Generate hypotheses from a classified timeline and RAG context.
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Returns an empty list when no LLM is configured or there are no
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clusters to analyse.
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"""
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if not llm_url or not llm_model:
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return []
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clusters = classified.timeline.clusters
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if not clusters:
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return []
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cluster_lines = [
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_cluster_summary(c, classified.cluster_severities.get(c.cluster_id, c.severity))
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for c in clusters
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]
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cluster_block = "\n".join(cluster_lines)
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context_parts: list[str] = []
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for chunk in ctx.chunks[:5]:
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filename = chunk.get("filename", "unknown")
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text = chunk.get("text", "")[:300]
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context_parts.append(f"[{filename}] {text}")
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context_block = "\n".join(context_parts) if context_parts else "(none)"
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user_message = (
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f"Query: {query}\n\n"
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f"Context from runbooks and known patterns:\n{context_block}\n\n"
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f"Log timeline (clustered, {len(clusters)} clusters):\n{cluster_block}\n\n"
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f"Generate up to {self._max_hypotheses} hypotheses. Return JSON array only."
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)
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messages = [
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{"role": "system", "content": _SYSTEM_PROMPT},
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{"role": "user", "content": user_message},
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]
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raw_response = call_llm(
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llm_url=llm_url,
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llm_model=llm_model,
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llm_api_key=llm_api_key,
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messages=messages,
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max_tokens=1024, # JSON array of 2-4 hypotheses; 1024 is sufficient
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)
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if raw_response is None:
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return []
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return self._parse_response(raw_response)
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def _parse_response(self, raw: str) -> list[Hypothesis]:
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"""Parse the LLM JSON response into a list of Hypothesis objects.
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Strips markdown code fences before parsing — some LLMs wrap JSON in
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triple-backtick fences despite being instructed not to.
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"""
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try:
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# extract_first_json_array handles reasoning models that emit valid
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# JSON then repeat it inside a markdown fence block.
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data = json.loads(extract_first_json_array(strip_json_fences(raw)))
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except json.JSONDecodeError:
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logger.warning(
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"Hypothesizer: invalid JSON from LLM (truncated): %.120s", raw
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)
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return []
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if not isinstance(data, list):
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logger.warning(
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"Hypothesizer: expected JSON array, got %s", type(data).__name__
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)
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return []
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hypotheses: list[Hypothesis] = []
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for item in data[: self._max_hypotheses]:
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if not isinstance(item, dict):
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continue
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severity_raw = item.get("severity", "ERROR")
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severity = _validate_severity(str(severity_raw))
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hypothesis = Hypothesis(
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hypothesis_id=str(uuid4()),
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title=str(item.get("title", "Unknown"))[:80],
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description=str(item.get("description", "")),
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confidence=_coerce_float(item.get("confidence"), 0.5),
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supporting_cluster_ids=tuple(
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str(x) for x in (item.get("supporting_clusters") or [])
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),
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runbook_refs=(),
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severity=severity,
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)
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hypotheses.append(hypothesis)
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return hypotheses
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