Files
school_compare/backend/models.py
Tudor ca351e9d73 feat: migrate backend to marts schema, update EES tap for verified datasets
Pipeline:
- EES tap: split KS4 into performance + info streams, fix admissions filename
  (SchoolLevel keyword match), fix census filename (yearly suffix), remove
  phonics (no school-level data on EES), change endswith → in for matching
- stg_ees_ks4: rewrite to filter long-format data and extract Attainment 8,
  Progress 8, EBacc, English/Maths metrics; join KS4 info for context
- stg_ees_admissions: map real CSV columns (total_number_places_offered, etc.)
- stg_ees_census: update source reference, stub with TODO for data columns
- Remove stg_ees_phonics, fact_phonics (no school-level EES data)
- Add ees_ks4_performance + ees_ks4_info sources, remove ees_ks4 + ees_phonics
- Update int_ks4_with_lineage + fact_ks4_performance with new KS4 columns
- Annual EES DAG: remove stg_ees_phonics+ from selector

Backend:
- models.py: replace all models to point at marts.* tables with schema='marts'
  (DimSchool, DimLocation, KS2Performance, FactOfstedInspection, etc.)
- data_loader.py: rewrite load_school_data_as_dataframe() using raw SQL joining
  dim_school + dim_location + fact_ks2_performance; update get_supplementary_data()
- database.py: remove migration machinery, keep only connection setup
- app.py: remove check_and_migrate_if_needed, remove /api/admin/reimport-ks2
  endpoints (pipeline handles all imports)

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-03-27 09:29:27 +00:00

217 lines
7.1 KiB
Python

"""
SQLAlchemy models — all tables live in the marts schema, built by dbt.
Read-only: the pipeline writes to these tables; the backend only reads.
"""
from sqlalchemy import Column, Integer, String, Float, Boolean, Date, Text, Index
from .database import Base
MARTS = {"schema": "marts"}
class DimSchool(Base):
"""Canonical school dimension — one row per active URN."""
__tablename__ = "dim_school"
__table_args__ = MARTS
urn = Column(Integer, primary_key=True)
school_name = Column(String(255), nullable=False)
phase = Column(String(100))
school_type = Column(String(100))
academy_trust_name = Column(String(255))
academy_trust_uid = Column(String(20))
religious_character = Column(String(100))
gender = Column(String(20))
age_range = Column(String(20))
capacity = Column(Integer)
total_pupils = Column(Integer)
headteacher_name = Column(String(200))
website = Column(String(255))
telephone = Column(String(30))
status = Column(String(50))
nursery_provision = Column(Boolean)
admissions_policy = Column(String(50))
# Denormalised Ofsted summary (updated by monthly pipeline)
ofsted_grade = Column(Integer)
ofsted_date = Column(Date)
ofsted_framework = Column(String(20))
class DimLocation(Base):
"""School location — address, lat/lng from easting/northing (BNG→WGS84)."""
__tablename__ = "dim_location"
__table_args__ = MARTS
urn = Column(Integer, primary_key=True)
address_line1 = Column(String(255))
address_line2 = Column(String(255))
town = Column(String(100))
county = Column(String(100))
postcode = Column(String(20))
local_authority_code = Column(Integer)
local_authority_name = Column(String(100))
parliamentary_constituency = Column(String(100))
urban_rural = Column(String(50))
easting = Column(Integer)
northing = Column(Integer)
latitude = Column(Float)
longitude = Column(Float)
# geom is a PostGIS geometry — not mapped to SQLAlchemy (accessed via raw SQL)
class KS2Performance(Base):
"""KS2 attainment — one row per URN per year (includes predecessor data)."""
__tablename__ = "fact_ks2_performance"
__table_args__ = (
Index("ix_ks2_urn_year", "urn", "year"),
MARTS,
)
urn = Column(Integer, primary_key=True)
year = Column(Integer, primary_key=True)
source_urn = Column(Integer)
total_pupils = Column(Integer)
eligible_pupils = Column(Integer)
# Core attainment
rwm_expected_pct = Column(Float)
rwm_high_pct = Column(Float)
reading_expected_pct = Column(Float)
reading_high_pct = Column(Float)
reading_avg_score = Column(Float)
reading_progress = Column(Float)
writing_expected_pct = Column(Float)
writing_high_pct = Column(Float)
writing_progress = Column(Float)
maths_expected_pct = Column(Float)
maths_high_pct = Column(Float)
maths_avg_score = Column(Float)
maths_progress = Column(Float)
gps_expected_pct = Column(Float)
gps_high_pct = Column(Float)
gps_avg_score = Column(Float)
science_expected_pct = Column(Float)
# Absence
reading_absence_pct = Column(Float)
writing_absence_pct = Column(Float)
maths_absence_pct = Column(Float)
gps_absence_pct = Column(Float)
science_absence_pct = Column(Float)
# Gender
rwm_expected_boys_pct = Column(Float)
rwm_high_boys_pct = Column(Float)
rwm_expected_girls_pct = Column(Float)
rwm_high_girls_pct = Column(Float)
# Disadvantaged
rwm_expected_disadvantaged_pct = Column(Float)
rwm_expected_non_disadvantaged_pct = Column(Float)
disadvantaged_gap = Column(Float)
# Context
disadvantaged_pct = Column(Float)
eal_pct = Column(Float)
sen_support_pct = Column(Float)
sen_ehcp_pct = Column(Float)
stability_pct = Column(Float)
class FactOfstedInspection(Base):
"""Full Ofsted inspection history — one row per inspection."""
__tablename__ = "fact_ofsted_inspection"
__table_args__ = (
Index("ix_ofsted_urn_date", "urn", "inspection_date"),
MARTS,
)
urn = Column(Integer, primary_key=True)
inspection_date = Column(Date, primary_key=True)
inspection_type = Column(String(100))
framework = Column(String(20))
overall_effectiveness = Column(Integer)
quality_of_education = Column(Integer)
behaviour_attitudes = Column(Integer)
personal_development = Column(Integer)
leadership_management = Column(Integer)
early_years_provision = Column(Integer)
sixth_form_provision = Column(Integer)
rc_safeguarding_met = Column(Boolean)
rc_inclusion = Column(Integer)
rc_curriculum_teaching = Column(Integer)
rc_achievement = Column(Integer)
rc_attendance_behaviour = Column(Integer)
rc_personal_development = Column(Integer)
rc_leadership_governance = Column(Integer)
rc_early_years = Column(Integer)
rc_sixth_form = Column(Integer)
report_url = Column(Text)
class FactParentView(Base):
"""Ofsted Parent View survey — latest per school."""
__tablename__ = "fact_parent_view"
__table_args__ = MARTS
urn = Column(Integer, primary_key=True)
survey_date = Column(Date)
total_responses = Column(Integer)
q_happy_pct = Column(Float)
q_safe_pct = Column(Float)
q_behaviour_pct = Column(Float)
q_bullying_pct = Column(Float)
q_communication_pct = Column(Float)
q_progress_pct = Column(Float)
q_teaching_pct = Column(Float)
q_information_pct = Column(Float)
q_curriculum_pct = Column(Float)
q_future_pct = Column(Float)
q_leadership_pct = Column(Float)
q_wellbeing_pct = Column(Float)
q_recommend_pct = Column(Float)
class FactAdmissions(Base):
"""School admissions — one row per URN per year."""
__tablename__ = "fact_admissions"
__table_args__ = (
Index("ix_admissions_urn_year", "urn", "year"),
MARTS,
)
urn = Column(Integer, primary_key=True)
year = Column(Integer, primary_key=True)
school_phase = Column(String(50))
published_admission_number = Column(Integer)
total_applications = Column(Integer)
first_preference_applications = Column(Integer)
first_preference_offers = Column(Integer)
first_preference_offer_pct = Column(Float)
oversubscribed = Column(Boolean)
admissions_policy = Column(String(100))
class FactDeprivation(Base):
"""IDACI deprivation index — one row per URN."""
__tablename__ = "fact_deprivation"
__table_args__ = MARTS
urn = Column(Integer, primary_key=True)
lsoa_code = Column(String(20))
idaci_score = Column(Float)
idaci_decile = Column(Integer)
class FactFinance(Base):
"""FBIT financial benchmarking — one row per URN per year."""
__tablename__ = "fact_finance"
__table_args__ = (
Index("ix_finance_urn_year", "urn", "year"),
MARTS,
)
urn = Column(Integer, primary_key=True)
year = Column(Integer, primary_key=True)
per_pupil_spend = Column(Float)
staff_cost_pct = Column(Float)
teacher_cost_pct = Column(Float)
support_staff_cost_pct = Column(Float)
premises_cost_pct = Column(Float)