Files
breakpilot-compliance/backend-compliance/compliance/onboarding/hypotheses.py
T
Benjamin Admin 98d616d82b feat: Observation Model — the empirical learning unit, defined BEFORE persistence (Task 59a)
The learning point is not the hypothesis, it is the QUESTION — and confirmed/refuted is too coarse.
"partial, only critical suppliers" or "certified but not lived" are not "wrong", they are valuable
knowledge. So the chain is Hypothesis -> Question -> Observation -> (Review) -> Hypothesis, and the
observation model must be defined cleanly before any store/API (else thousands of too-coarse
observations get migrated later).

compliance/onboarding/observations.py:
  - ObservationType: confirmed / partial / refuted / not_applicable / unknown (richer than binary).
  - Observation: {hypothesis_id, capability, question, answer (free text), observation_type,
    scope_note ("only critical suppliers"), evidence_uploaded, reviewed, reviewed_by}.
  - empirical_distribution() -> a DISTRIBUTION (confirmed 61 / partial 31 / refuted 8), not one %.
  - empirical_confidence() -> (confirmed + 0.5*partial) / (confirmed+partial+refuted); n.a./unknown
    excluded; None until calibrated.
  - REVIEW GATE: only reviewed observations calibrate — a raw answer never changes a hypothesis (no
    learning from outliers).

Refactor: the hypothesis is now PURE curated knowledge — the binary observations counter and any
confidence are removed from CapabilityHypothesis and the YAML; confidence is COMPUTED from the separate
reviewed observation stream. Pure, mypy --strict clean. Persistence/aggregation/calibration are 59b/c/d.
Non-runtime -> no deploy. 12 tests pass, check-loc 0.
2026-06-28 13:31:43 +02:00

55 lines
2.5 KiB
Python

"""Certification Capability Hypotheses — capability-centric, with EMPIRICAL (computed) confidence.
Each hypothesis is its own knowledge object: "IF a company holds one of `supported_by` certs, we EXPECT
`capability` (verification required)" — Welt-1, never "erfüllt". Written ONCE per capability with a list
of supporting certs (reuse, not redundancy), so multi-certification merges AUTOMATICALLY.
`confidence` is NOT an expert/LLM score: it is COMPUTED from real-onboarding observations
(confirmed / (confirmed+refuted)), `None` until any are seen. This is the empirical learning loop — the
long-term moat. The library is DATA, loaded outside this module and injected. Python 3.9 compatible.
"""
from __future__ import annotations
from typing import Dict, List, Sequence
from pydantic import BaseModel, Field
class CapabilityHypothesis(BaseModel):
"""Curated knowledge only. Confidence is NOT stored here — it is computed from the reviewed
observation stream (see observations.py); a raw answer never changes a hypothesis (review gate)."""
id: str
capability: str
supported_by: List[str] = Field(default_factory=list) # certifications that suggest this capability
relationship: str = "supports" # supports / partially_supports
verification_required: bool = True # Welt-1: never auto-satisfied
question_intent: str = "verify_existence"
expected_evidence: List[str] = Field(default_factory=list)
kind: str = "shared" # shared / specific
def inferred_hypotheses(
certifications: Sequence[str], library: Sequence[CapabilityHypothesis]
) -> List[CapabilityHypothesis]:
"""Every hypothesis whose `supported_by` intersects the company's certs — the auto multi-cert merge."""
certs = set(certifications)
return [h for h in library if certs & set(h.supported_by)]
def resolve_for_certifications(
certifications: Sequence[str], library: Sequence[CapabilityHypothesis]
) -> Dict[str, List[str]]:
"""Adapt the capability-centric library to the Advisor's `cert -> [capability]` input.
For each held certification, the capabilities its hypotheses suggest (deduped, deterministic order).
"""
certs = set(certifications)
out: Dict[str, List[str]] = {}
for h in library:
for cert in h.supported_by:
if cert in certs and h.capability not in out.setdefault(cert, []):
out[cert].append(h.capability)
return {c: out[c] for c in sorted(out)}