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Project_Velocity/backend/oracle/plan_verifier.py

437 lines
16 KiB
Python

"""
oracle/plan_verifier.py
Verify planned SQL before execution and optionally repair common semantic errors.
"""
from __future__ import annotations
import json
import logging
import re
from dataclasses import dataclass, field
from typing import Any
from .semantic_catalog import VALID_QD_SCORE_TYPES, build_semantic_context_for_planner
logger = logging.getLogger(__name__)
_DESTRUCTIVE = re.compile(
r"\b(insert|update|delete|drop|alter|truncate|copy|create|grant|revoke|call|execute|do|merge)\b",
re.IGNORECASE,
)
_BAD_TIMESTAMP_PATTERNS: list[tuple[str, str]] = [
("edge_communication_events", "timestamp"),
("crm_property_interests", "last_discussed_at"),
("crm_property_interests", "last_interaction"),
]
_BAD_SCORE_PATTERNS: list[tuple[str, str]] = [
("crm_people", "engagement_score"),
("crm_leads", "engagement_score"),
("intel_interactions", "engagement_score"),
("crm_people", "qd_score"),
("crm_leads", "qd_score"),
]
_HALLUCINATED_COLUMNS: list[tuple[str, str]] = [
("intel_interactions", "broker_id"),
("intel_interactions", "sentiment"),
("crm_leads", "last_contacted_at"),
("crm_people", "last_contact"),
("read_last_contacted", "last_contacted_at"),
("read_last_contacted", "days_since_last_contact"),
("read_last_contacted", "staleness_label"),
]
_CONTACT_INTENTS = {"last_contacted", "timeline"}
def _extract_limit_from_prompt(prompt: str, default: int) -> int:
lowered = prompt.lower()
numeric_match = re.search(r"\b(?:top|last|latest|recent|first|show|which|give me)\s+(\d{1,4})\b", lowered)
if numeric_match:
return max(1, min(int(numeric_match.group(1)), default))
words = {
"one": 1,
"two": 2,
"three": 3,
"four": 4,
"five": 5,
"six": 6,
"seven": 7,
"eight": 8,
"nine": 9,
"ten": 10,
"eleven": 11,
"twelve": 12,
"fifteen": 15,
"twenty": 20,
}
word_match = re.search(
r"\b(?:top|last|latest|recent|first|show|which|give me)\s+"
r"(one|two|three|four|five|six|seven|eight|nine|ten|eleven|twelve|fifteen|twenty)\b",
lowered,
)
if word_match:
return max(1, min(words[word_match.group(1)], default))
return default
def _canonical_qd_sql(prompt: str, row_limit: int) -> str:
limit = _extract_limit_from_prompt(prompt, row_limit)
lowered = prompt.lower()
direction = "ASC" if any(token in lowered for token in ("lowest", "least", "bottom", "weakest")) else "DESC"
project_filter = ""
project_join = ""
project_match = re.search(r"\bin\s+([A-Za-z0-9][A-Za-z0-9 .&'-]{2,80})(?:\?|$)", prompt)
if project_match:
project_name = project_match.group(1).strip()
if not re.search(r"\b(last|month|months|week|weeks|day|days|year|years)\b", project_name, re.IGNORECASE):
project_join = "JOIN crm_property_interests pi ON pi.person_id = p.person_id "
escaped = project_name.replace("'", "''")
project_filter = f"AND pi.project_name ILIKE '%{escaped}%' "
return (
"SELECT p.full_name, p.primary_email, p.primary_phone, "
"q.current_value AS qd_score, q.score_type, q.computed_at "
"FROM intel_qd_scores q "
"JOIN crm_people p ON p.person_id = q.person_id "
f"{project_join}"
"WHERE q.score_type = 'overall' "
f"{project_filter}"
f"ORDER BY q.current_value {direction} "
f"LIMIT {limit}"
)
def _canonical_recent_contact_sql(prompt: str, row_limit: int) -> str:
limit = _extract_limit_from_prompt(prompt, row_limit)
interval = "3 months"
lowered = prompt.lower()
interval_match = re.search(r"\b(?:last|past|recent)\s+(\d{1,3})\s+(day|days|week|weeks|month|months|year|years)\b", lowered)
if interval_match:
count, unit = interval_match.groups()
interval = f"{int(count)} {unit}"
return (
"SELECT p.full_name, p.primary_email, p.primary_phone, "
"lc.last_contact_at, lc.last_channel, lc.days_since_contact, "
"q.current_value AS qd_score "
"FROM read_last_contacted lc "
"JOIN crm_people p ON p.person_id = lc.person_id "
"LEFT JOIN intel_qd_scores q ON q.person_id = p.person_id AND q.score_type = 'overall' "
f"WHERE lc.last_contact_at >= NOW() - INTERVAL '{interval}' "
"ORDER BY q.current_value DESC NULLS LAST, lc.last_contact_at DESC "
f"LIMIT {limit}"
)
def _semantic_rule_repair(
*,
prompt: str,
detected_intents: list[str],
row_limit: int,
violations: list[VerificationViolation],
) -> str | None:
violation_rules = {violation.rule for violation in violations}
if "qd_score" in detected_intents and violation_rules.intersection({"wrong_score_column", "impossible_score_type"}):
return _canonical_qd_sql(prompt, row_limit)
if set(detected_intents).intersection(_CONTACT_INTENTS) and violation_rules.intersection(
{"deprecated_timestamp", "hallucinated_column"}
):
return _canonical_recent_contact_sql(prompt, row_limit)
return None
def _extract_score_type_literals(sql: str) -> list[str]:
literals: list[str] = []
eq_pattern = re.compile(
r"(?:\b\w+\.)?score_type\s*=\s*'([^']+)'",
re.IGNORECASE,
)
in_pattern = re.compile(
r"(?:\b\w+\.)?score_type\s+in\s*\(([^)]*)\)",
re.IGNORECASE | re.DOTALL,
)
literals.extend(match.group(1) for match in eq_pattern.finditer(sql))
for match in in_pattern.finditer(sql):
literals.extend(re.findall(r"'([^']+)'", match.group(1)))
return literals
def _references_table(sql_lower: str, table: str) -> bool:
return bool(re.search(rf"\b(?:from|join)\s+(?:public\.)?{re.escape(table)}\b", sql_lower))
def _aliases_for_table(sql: str, table: str) -> set[str]:
aliases = {table}
pattern = re.compile(
rf"\b(?:from|join)\s+(?:public\.)?{re.escape(table)}(?:\s+(?:as\s+)?([a-zA-Z_][a-zA-Z0-9_]*))?",
re.IGNORECASE,
)
for match in pattern.finditer(sql):
alias = match.group(1)
if alias and alias.lower() not in {"on", "where", "join", "left", "right", "inner", "outer", "full", "cross"}:
aliases.add(alias)
return aliases
def _references_column(sql: str, sql_lower: str, table: str, column: str) -> bool:
if not _references_table(sql_lower, table):
return False
for alias in _aliases_for_table(sql, table):
qualified = re.compile(rf"\b{re.escape(alias)}\.{re.escape(column)}\b", re.IGNORECASE)
if qualified.search(sql):
return True
return False
@dataclass
class VerificationViolation:
rule: str
detail: str
severity: str
@dataclass
class VerificationResult:
passed: bool
sql: str
original_sql: str
violations: list[VerificationViolation] = field(default_factory=list)
was_repaired: bool = False
repair_attempted: bool = False
repair_failed: bool = False
notes: list[str] = field(default_factory=list)
class PlanVerifier:
def verify(self, sql: str, prompt: str, detected_intents: list[str], row_limit: int) -> VerificationResult:
del prompt
violations: list[VerificationViolation] = []
sql_lower = sql.lower()
intent_set = set(detected_intents)
if _DESTRUCTIVE.search(sql):
violations.append(
VerificationViolation(
rule="destructive_dml",
detail="SQL contains a write or DDL statement.",
severity="blocking",
)
)
for table, column in _BAD_TIMESTAMP_PATTERNS:
if intent_set.intersection(_CONTACT_INTENTS) and _references_column(sql, sql_lower, table, column):
violations.append(
VerificationViolation(
rule="deprecated_timestamp",
detail=(
f"SQL references {table}.{column}, which is sparse or deprecated. "
"Use intel_interactions.happened_at or read_last_contacted.last_contact_at."
),
severity="blocking",
)
)
valid_score_types = {value.lower() for value in VALID_QD_SCORE_TYPES}
for literal in _extract_score_type_literals(sql):
if literal.lower() not in valid_score_types:
violations.append(
VerificationViolation(
rule="impossible_score_type",
detail=(
f"SQL filters intel_qd_scores.score_type with impossible value '{literal}'. "
"Valid values are: " + ", ".join(VALID_QD_SCORE_TYPES) + ". "
"For generic QD prompts, use score_type = 'overall'."
),
severity="blocking",
)
)
for table, column in _BAD_SCORE_PATTERNS:
if _references_column(sql, sql_lower, table, column):
violations.append(
VerificationViolation(
rule="wrong_score_column",
detail=(
f"SQL references {table}.{column}, which is not the QD source of truth. "
"Use intel_qd_scores.current_value."
),
severity="blocking",
)
)
for table, column in _HALLUCINATED_COLUMNS:
if _references_column(sql, sql_lower, table, column):
violations.append(
VerificationViolation(
rule="hallucinated_column",
detail=f"SQL references {table}.{column}, which does not exist in the live schema.",
severity="blocking",
)
)
if "limit" not in sql_lower:
violations.append(
VerificationViolation(
rule="missing_limit",
detail=f"SQL has no LIMIT clause; executor will enforce row cap {row_limit}.",
severity="warning",
)
)
if re.search(r"\bselect\s+\*\b", sql_lower) and sql_lower.count("join") > 1:
violations.append(
VerificationViolation(
rule="select_star_join",
detail="SELECT * with multiple JOINs may create noisy wide rows.",
severity="warning",
)
)
blocking = [violation for violation in violations if violation.severity == "blocking"]
return VerificationResult(
passed=len(blocking) == 0,
sql=sql,
original_sql=sql,
violations=violations,
)
async def verify_and_repair(
self,
sql: str,
prompt: str,
detected_intents: list[str],
row_limit: int,
llm_service: Any | None = None,
) -> VerificationResult:
result = self.verify(sql, prompt, detected_intents, row_limit)
if result.passed:
return result
blocking = [violation for violation in result.violations if violation.severity == "blocking"]
if not blocking:
return result
result.repair_attempted = True
if llm_service is None:
result.repair_failed = True
result.notes.append("No LLM service available for SQL repair.")
return result
try:
repaired_sql = await self._repair_sql(
sql=sql,
prompt=prompt,
violations=blocking,
detected_intents=detected_intents,
row_limit=row_limit,
llm_service=llm_service,
)
except Exception as exc:
logger.warning("plan_verifier repair failed: %s", exc)
result.repair_failed = True
result.notes.append(f"Repair failed: {exc}")
return result
recheck = self.verify(repaired_sql, prompt, detected_intents, row_limit)
recheck.original_sql = sql
recheck.was_repaired = True
recheck.repair_attempted = True
recheck.notes.append(
"Repaired violations: " + ", ".join(violation.rule for violation in blocking)
)
if not recheck.passed:
semantic_repair = _semantic_rule_repair(
prompt=prompt,
detected_intents=detected_intents,
row_limit=row_limit,
violations=blocking,
)
if semantic_repair:
semantic_recheck = self.verify(semantic_repair, prompt, detected_intents, row_limit)
semantic_recheck.original_sql = sql
semantic_recheck.was_repaired = True
semantic_recheck.repair_attempted = True
semantic_recheck.notes.append(
"Semantic rule repair applied: " + ", ".join(violation.rule for violation in blocking)
)
return semantic_recheck
return recheck
async def _repair_sql(
self,
*,
sql: str,
prompt: str,
violations: list[VerificationViolation],
detected_intents: list[str],
row_limit: int,
llm_service: Any,
) -> str:
semantic_ctx = build_semantic_context_for_planner(detected_intents, max_concepts=4)
violation_text = "\n".join(f"- [{violation.rule}] {violation.detail}" for violation in violations)
hard_rules = (
"Hard repair rules:\n"
"- crm_people is identity only. It has no QD score source-of-truth column.\n"
"- For QD score prompts, use intel_qd_scores.current_value and join crm_people on person_id.\n"
"- Valid intel_qd_scores.score_type values are: "
+ ", ".join(VALID_QD_SCORE_TYPES)
+ ".\n"
"- Never use score_type = 'QD'. For generic QD prompts use score_type = 'overall'.\n"
"- For recent contact prompts, use read_last_contacted.last_contact_at or intel_interactions.happened_at.\n"
"- Never use edge_communication_events.timestamp or crm_property_interests.last_discussed_at for contact recency."
)
canonical_examples = (
"Canonical repair examples:\n"
"Generic QD ranking:\n"
"SELECT p.full_name, p.primary_email, p.primary_phone, q.current_value AS qd_score, q.score_type, q.computed_at "
"FROM intel_qd_scores q JOIN crm_people p ON p.person_id = q.person_id "
"WHERE q.score_type = 'overall' ORDER BY q.current_value DESC LIMIT 8;\n"
"Recent contact ranking:\n"
"SELECT p.full_name, p.primary_email, lc.last_contact_at, lc.last_channel, q.current_value AS qd_score "
"FROM read_last_contacted lc JOIN crm_people p ON p.person_id = lc.person_id "
"LEFT JOIN intel_qd_scores q ON q.person_id = p.person_id AND q.score_type = 'overall' "
"WHERE lc.last_contact_at >= NOW() - INTERVAL '3 months' "
"ORDER BY q.current_value DESC NULLS LAST LIMIT 10;"
)
response = await llm_service.chat(
provider_id="sglang",
model=None,
system_prompt=(
"You are Oracle's SQL repair agent. "
"Fix only the listed violations. Return strict JSON with key 'sql'."
),
messages=[
{
"role": "user",
"content": (
f"Original prompt: {prompt}\n\n"
f"Semantic catalog:\n{semantic_ctx}\n\n"
f"{hard_rules}\n\n"
f"{canonical_examples}\n\n"
f"Violations:\n{violation_text}\n\n"
f"Broken SQL:\n{sql}\n\n"
f"Row cap: {row_limit}\n\n"
"Return JSON: {\"sql\": \"<corrected SQL>\"}"
),
}
],
temperature=0.0,
response_format="json",
metadata={"agent": "oracle_plan_verifier_repair"},
)
message = response.get("message") or {}
parsed = message.get("parsedJson")
if not isinstance(parsed, dict):
content = message.get("content") or "{}"
parsed = json.loads(content) if isinstance(content, str) else {}
repaired = str(parsed.get("sql") or "").strip()
if not repaired:
raise ValueError("Repair LLM returned empty SQL.")
return repaired
plan_verifier = PlanVerifier()