refactor(phase): merge KS2+KS4 into fact_performance, fix all phase inconsistencies
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Root cause: the UNION ALL query in data_loader.py produced two rows per
all-through school per year (one KS2, one KS4), with drop_duplicates()
silently discarding the KS4 row. Fixes:

- New dbt mart `fact_performance`: FULL OUTER JOIN of fact_ks2_performance
  and fact_ks4_performance on (urn, year). One row per school per year.
  All-through schools have both KS2 and KS4 columns populated.
- data_loader.py: replace 175-line UNION ALL with a simple JOIN to
  fact_performance. No more duplicate rows or drop_duplicates needed.
- sync_typesense.py: single LATERAL JOIN to fact_performance instead of
  two separate KS2/KS4 joins.
- app.py: remove drop_duplicates (no longer needed); add PHASE_GROUPS
  constant so all-through/middle schools appear in primary and secondary
  filter results (were previously invisible to both); scope result_filters
  gender/admissions_policies to secondary schools only.
- HomeView.tsx: isSecondaryView is now majority-based (not "any secondary")
  and isMixedView shows both sort option sets for mixed result sets.
- school/[slug]/page.tsx: all-through schools route to SchoolDetailView
  (renders both SATs + GCSE sections) instead of SecondarySchoolDetailView
  (KS4-only). Dedicated SEO metadata for all-through schools.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
This commit is contained in:
2026-03-30 14:07:30 +01:00
parent 695a571c1f
commit 6e5249aa1e
7 changed files with 227 additions and 216 deletions

View File

@@ -35,6 +35,14 @@ from .utils import clean_for_json
# Values to exclude from filter dropdowns (empty strings, non-applicable labels)
EXCLUDED_FILTER_VALUES = {"", "Not applicable", "Does not apply"}
# Maps user-facing phase filter values to the GIAS PhaseOfEducation values they include.
# All-through schools appear in both primary and secondary results.
PHASE_GROUPS: dict[str, set[str]] = {
"primary": {"primary", "middle deemed primary", "all-through"},
"secondary": {"secondary", "middle deemed secondary", "all-through", "16 plus"},
"all-through": {"all-through"},
}
BASE_URL = "https://schoolcompare.co.uk"
MAX_SLUG_LENGTH = 60
@@ -343,20 +351,13 @@ async def get_schools(
)
df_latest = df_latest.merge(prev_rwm, on="urn", how="left")
# Phase filter
# Phase filter — uses PHASE_GROUPS so all-through/middle schools appear
# in the correct phase(s) rather than being invisible to both filters.
if phase:
phase_lower = phase.lower()
if phase_lower in ("primary", "secondary", "all-through", "all_through"):
# Map param values to GIAS phase strings (partial match)
phase_map = {
"primary": "primary",
"secondary": "secondary",
"all-through": "all-through",
"all_through": "all-through",
}
phase_substr = phase_map[phase_lower]
schools_df_phase_mask = df_latest["phase"].str.lower().str.contains(phase_substr, na=False)
df_latest = df_latest[schools_df_phase_mask]
phase_lower = phase.lower().replace("_", "-")
allowed = PHASE_GROUPS.get(phase_lower)
if allowed:
df_latest = df_latest[df_latest["phase"].str.lower().isin(allowed)]
# Secondary-specific filters (after phase filter)
if gender:
@@ -389,7 +390,8 @@ async def get_schools(
for c in SCHOOL_COLUMNS + location_cols + result_cols
if c in df_latest.columns
]
schools_df = df_latest[available_cols].drop_duplicates(subset=["urn"])
# fact_performance guarantees one row per (urn, year); df_latest has one row per urn.
schools_df = df_latest[available_cols]
# Location-based search (uses pre-geocoded data from database)
search_coords = None
@@ -458,13 +460,16 @@ async def get_schools(
schools_df["school_type"].str.lower() == school_type.lower()
]
# Compute result-scoped filter values (before pagination)
# Compute result-scoped filter values (before pagination).
# Gender and admissions are secondary-only filters — scope them to schools
# with KS4 data so they don't appear for purely primary result sets.
_sec_mask = schools_df["attainment_8_score"].notna() if "attainment_8_score" in schools_df.columns else pd.Series(False, index=schools_df.index)
result_filters = {
"local_authorities": clean_filter_values(schools_df["local_authority"]) if "local_authority" in schools_df.columns else [],
"school_types": clean_filter_values(schools_df["school_type"]) if "school_type" in schools_df.columns else [],
"phases": clean_filter_values(schools_df["phase"]) if "phase" in schools_df.columns else [],
"genders": clean_filter_values(schools_df["gender"]) if "gender" in schools_df.columns else [],
"admissions_policies": clean_filter_values(schools_df["admissions_policy"]) if "admissions_policy" in schools_df.columns else [],
"genders": clean_filter_values(schools_df.loc[_sec_mask, "gender"]) if "gender" in schools_df.columns and _sec_mask.any() else [],
"admissions_policies": clean_filter_values(schools_df.loc[_sec_mask, "admissions_policy"]) if "admissions_policy" in schools_df.columns and _sec_mask.any() else [],
}
# Pagination

View File

@@ -109,11 +109,12 @@ def haversine_distance(lat1: float, lon1: float, lat2: float, lon2: float) -> fl
# =============================================================================
# MAIN DATA LOAD — joins dim_school + dim_location + fact_ks2_performance
# MAIN DATA LOAD — joins dim_school + dim_location + fact_performance
# fact_performance is a merged KS2+KS4 table (one row per URN per year).
# All-through schools have both KS2 and KS4 columns populated in the same row.
# =============================================================================
_MAIN_QUERY = text("""
-- Branch 1: Primary schools (KS2 data; KS4 columns NULL)
SELECT
s.urn,
s.school_name,
@@ -139,155 +140,67 @@ _MAIN_QUERY = text("""
l.postcode,
l.latitude,
l.longitude,
k.year,
k.source_urn,
k.total_pupils,
k.eligible_pupils,
-- KS2 columns
k.rwm_expected_pct,
k.rwm_high_pct,
k.reading_expected_pct,
k.reading_high_pct,
k.reading_avg_score,
k.reading_progress,
k.writing_expected_pct,
k.writing_high_pct,
k.writing_progress,
k.maths_expected_pct,
k.maths_high_pct,
k.maths_avg_score,
k.maths_progress,
k.gps_expected_pct,
k.gps_high_pct,
k.gps_avg_score,
k.science_expected_pct,
k.reading_absence_pct,
k.writing_absence_pct,
k.maths_absence_pct,
k.gps_absence_pct,
k.science_absence_pct,
k.rwm_expected_boys_pct,
k.rwm_high_boys_pct,
k.rwm_expected_girls_pct,
k.rwm_high_girls_pct,
k.rwm_expected_disadvantaged_pct,
k.rwm_expected_non_disadvantaged_pct,
k.disadvantaged_gap,
k.disadvantaged_pct,
k.eal_pct,
k.sen_support_pct,
k.sen_ehcp_pct,
k.stability_pct,
-- KS4 columns (NULL for primary)
NULL::numeric AS attainment_8_score,
NULL::numeric AS progress_8_score,
NULL::numeric AS progress_8_lower_ci,
NULL::numeric AS progress_8_upper_ci,
NULL::numeric AS progress_8_english,
NULL::numeric AS progress_8_maths,
NULL::numeric AS progress_8_ebacc,
NULL::numeric AS progress_8_open,
NULL::numeric AS english_maths_strong_pass_pct,
NULL::numeric AS english_maths_standard_pass_pct,
NULL::numeric AS ebacc_entry_pct,
NULL::numeric AS ebacc_strong_pass_pct,
NULL::numeric AS ebacc_standard_pass_pct,
NULL::numeric AS ebacc_avg_score,
NULL::numeric AS gcse_grade_91_pct,
NULL::numeric AS prior_attainment_avg
p.year,
p.source_urn,
p.total_pupils,
p.eligible_pupils,
-- KS2 columns (NULL for pure secondary schools)
p.rwm_expected_pct,
p.rwm_high_pct,
p.reading_expected_pct,
p.reading_high_pct,
p.reading_avg_score,
p.reading_progress,
p.writing_expected_pct,
p.writing_high_pct,
p.writing_progress,
p.maths_expected_pct,
p.maths_high_pct,
p.maths_avg_score,
p.maths_progress,
p.gps_expected_pct,
p.gps_high_pct,
p.gps_avg_score,
p.science_expected_pct,
p.reading_absence_pct,
p.writing_absence_pct,
p.maths_absence_pct,
p.gps_absence_pct,
p.science_absence_pct,
p.rwm_expected_boys_pct,
p.rwm_high_boys_pct,
p.rwm_expected_girls_pct,
p.rwm_high_girls_pct,
p.rwm_expected_disadvantaged_pct,
p.rwm_expected_non_disadvantaged_pct,
p.disadvantaged_gap,
p.disadvantaged_pct,
p.eal_pct,
p.stability_pct,
-- KS4 columns (NULL for pure primary schools)
p.attainment_8_score,
p.progress_8_score,
p.progress_8_lower_ci,
p.progress_8_upper_ci,
p.progress_8_english,
p.progress_8_maths,
p.progress_8_ebacc,
p.progress_8_open,
p.english_maths_strong_pass_pct,
p.english_maths_standard_pass_pct,
p.ebacc_entry_pct,
p.ebacc_strong_pass_pct,
p.ebacc_standard_pass_pct,
p.ebacc_avg_score,
p.gcse_grade_91_pct,
p.prior_attainment_avg,
-- SEN (coalesced KS2+KS4 in fact_performance)
p.sen_support_pct,
p.sen_ehcp_pct
FROM marts.dim_school s
JOIN marts.dim_location l ON s.urn = l.urn
JOIN marts.fact_ks2_performance k ON s.urn = k.urn
UNION ALL
-- Branch 2: Secondary schools (KS4 data; KS2 columns NULL)
SELECT
s.urn,
s.school_name,
s.phase,
s.school_type,
s.academy_trust_name AS trust_name,
s.academy_trust_uid AS trust_uid,
s.religious_character AS religious_denomination,
s.gender,
s.age_range,
s.admissions_policy,
s.capacity,
s.headteacher_name,
s.website,
s.ofsted_grade,
s.ofsted_date,
s.ofsted_framework,
l.local_authority_name AS local_authority,
l.local_authority_code,
l.address_line1 AS address1,
l.address_line2 AS address2,
l.town,
l.postcode,
l.latitude,
l.longitude,
k4.year,
k4.source_urn,
k4.total_pupils,
k4.eligible_pupils,
-- KS2 columns (NULL for secondary)
NULL::numeric AS rwm_expected_pct,
NULL::numeric AS rwm_high_pct,
NULL::numeric AS reading_expected_pct,
NULL::numeric AS reading_high_pct,
NULL::numeric AS reading_avg_score,
NULL::numeric AS reading_progress,
NULL::numeric AS writing_expected_pct,
NULL::numeric AS writing_high_pct,
NULL::numeric AS writing_progress,
NULL::numeric AS maths_expected_pct,
NULL::numeric AS maths_high_pct,
NULL::numeric AS maths_avg_score,
NULL::numeric AS maths_progress,
NULL::numeric AS gps_expected_pct,
NULL::numeric AS gps_high_pct,
NULL::numeric AS gps_avg_score,
NULL::numeric AS science_expected_pct,
NULL::numeric AS reading_absence_pct,
NULL::numeric AS writing_absence_pct,
NULL::numeric AS maths_absence_pct,
NULL::numeric AS gps_absence_pct,
NULL::numeric AS science_absence_pct,
NULL::numeric AS rwm_expected_boys_pct,
NULL::numeric AS rwm_high_boys_pct,
NULL::numeric AS rwm_expected_girls_pct,
NULL::numeric AS rwm_high_girls_pct,
NULL::numeric AS rwm_expected_disadvantaged_pct,
NULL::numeric AS rwm_expected_non_disadvantaged_pct,
NULL::numeric AS disadvantaged_gap,
NULL::numeric AS disadvantaged_pct,
NULL::numeric AS eal_pct,
k4.sen_support_pct,
k4.sen_ehcp_pct,
NULL::numeric AS stability_pct,
-- KS4 columns
k4.attainment_8_score,
k4.progress_8_score,
k4.progress_8_lower_ci,
k4.progress_8_upper_ci,
k4.progress_8_english,
k4.progress_8_maths,
k4.progress_8_ebacc,
k4.progress_8_open,
k4.english_maths_strong_pass_pct,
k4.english_maths_standard_pass_pct,
k4.ebacc_entry_pct,
k4.ebacc_strong_pass_pct,
k4.ebacc_standard_pass_pct,
k4.ebacc_avg_score,
k4.gcse_grade_91_pct,
k4.prior_attainment_avg
FROM marts.dim_school s
JOIN marts.dim_location l ON s.urn = l.urn
JOIN marts.fact_ks4_performance k4 ON s.urn = k4.urn
ORDER BY school_name, year
JOIN marts.fact_performance p ON s.urn = p.urn
ORDER BY s.school_name, p.year
""")

View File

@@ -30,19 +30,28 @@ export async function generateMetadata({ params }: SchoolPageProps): Promise<Met
const { school_info } = data;
const canonicalPath = schoolUrl(urn, school_info.school_name);
const isSecondary = (school_info.phase ?? '').toLowerCase().includes('secondary')
|| (data.yearly_data ?? []).some((d: any) => d.attainment_8_score != null);
const phaseStr = (school_info.phase ?? '').toLowerCase();
const isAllThrough = phaseStr === 'all-through';
const isSecondary = !isAllThrough && (
phaseStr.includes('secondary')
|| (data.yearly_data ?? []).some((d: any) => d.attainment_8_score != null)
);
const la = school_info.local_authority ? ` in ${school_info.local_authority}` : '';
const title = `${school_info.school_name} | ${school_info.local_authority || 'England'}`;
const description = isSecondary
? `View GCSE results, Attainment 8, Progress 8 and school statistics for ${school_info.school_name}${school_info.local_authority ? ` in ${school_info.local_authority}` : ''}.`
: `View KS2 performance data, results, and statistics for ${school_info.school_name}${school_info.local_authority ? ` in ${school_info.local_authority}` : ''}. Compare reading, writing, and maths results.`;
const description = isAllThrough
? `View KS2 SATs and GCSE results for ${school_info.school_name}${la}. All-through school covering primary and secondary education.`
: isSecondary
? `View GCSE results, Attainment 8, Progress 8 and school statistics for ${school_info.school_name}${la}.`
: `View KS2 performance data, results, and statistics for ${school_info.school_name}${la}. Compare reading, writing, and maths results.`;
return {
title,
description,
keywords: isSecondary
? `${school_info.school_name}, GCSE results, secondary school, ${school_info.local_authority}, Attainment 8, Progress 8`
: `${school_info.school_name}, KS2 results, primary school, ${school_info.local_authority}, school performance, SATs results`,
keywords: isAllThrough
? `${school_info.school_name}, KS2 results, GCSE results, all-through school, ${school_info.local_authority}, SATs, Attainment 8`
: isSecondary
? `${school_info.school_name}, GCSE results, secondary school, ${school_info.local_authority}, Attainment 8, Progress 8`
: `${school_info.school_name}, KS2 results, primary school, ${school_info.local_authority}, school performance, SATs results`,
openGraph: {
title,
description,
@@ -95,8 +104,14 @@ export default async function SchoolPage({ params }: SchoolPageProps) {
redirect(`/school/${canonicalSlug}`);
}
const isSecondary = (school_info.phase ?? '').toLowerCase().includes('secondary')
|| yearly_data.some((d: any) => d.attainment_8_score != null);
const phaseStr = (school_info.phase ?? '').toLowerCase();
const isAllThrough = phaseStr === 'all-through';
// All-through schools go to SchoolDetailView (renders both KS2 + KS4 sections).
// SecondarySchoolDetailView is KS4-only, so all-through schools would lose SATs data.
const isSecondary = !isAllThrough && (
phaseStr.includes('secondary')
|| yearly_data.some((d: any) => d.attainment_8_score != null)
);
// Generate JSON-LD structured data for SEO
const structuredData = {

View File

@@ -45,8 +45,11 @@ export function HomeView({ initialSchools, filters, totalSchools }: HomeViewProp
const isLocationSearch = !!searchParams.get('postcode');
const isSearchActive = !!(hasSearch || searchParams.get('local_authority') || searchParams.get('school_type'));
const currentPhase = searchParams.get('phase') || '';
const hasSecondaryResults = allSchools.some(s => s.attainment_8_score != null);
const isSecondaryView = currentPhase.toLowerCase().includes('secondary') || hasSecondaryResults;
const secondaryCount = allSchools.filter(s => s.attainment_8_score != null).length;
const primaryCount = allSchools.filter(s => s.rwm_expected_pct != null).length;
const isSecondaryView = currentPhase.toLowerCase().includes('secondary')
|| (!currentPhase && secondaryCount > primaryCount);
const isMixedView = primaryCount > 0 && secondaryCount > 0 && !currentPhase;
// Reset pagination state when search params change
useEffect(() => {
@@ -79,13 +82,13 @@ export function HomeView({ initialSchools, filters, totalSchools }: HomeViewProp
.finally(() => setIsLoadingMap(false));
}, [resultsView, searchParams]);
// Fetch LA averages when secondary schools are visible
// Fetch LA averages when secondary or mixed schools are visible
useEffect(() => {
if (!isSecondaryView) return;
if (!isSecondaryView && !isMixedView) return;
fetchLAaverages({ cache: 'force-cache' })
.then(data => setLaAverages(data.secondary.attainment_8_by_la))
.catch(() => {});
}, [isSecondaryView]);
}, [isSecondaryView, isMixedView]);
const handleLoadMore = async () => {
if (isLoadingMore || !hasMore) return;
@@ -209,10 +212,10 @@ export function HomeView({ initialSchools, filters, totalSchools }: HomeViewProp
className={styles.sortSelect}
>
<option value="default">Sort: Relevance</option>
{!isSecondaryView && <option value="rwm_desc">Highest R, W &amp; M %</option>}
{!isSecondaryView && <option value="rwm_asc">Lowest R, W &amp; M %</option>}
{isSecondaryView && <option value="att8_desc">Highest Attainment 8</option>}
{isSecondaryView && <option value="att8_asc">Lowest Attainment 8</option>}
{(!isSecondaryView || isMixedView) && <option value="rwm_desc">Highest R, W &amp; M %</option>}
{(!isSecondaryView || isMixedView) && <option value="rwm_asc">Lowest R, W &amp; M %</option>}
{(isSecondaryView || isMixedView) && <option value="att8_desc">Highest Attainment 8</option>}
{(isSecondaryView || isMixedView) && <option value="att8_asc">Lowest Attainment 8</option>}
{isLocationSearch && <option value="distance">Nearest first</option>}
<option value="name_asc">Name AZ</option>
</select>

View File

@@ -58,24 +58,14 @@ QUERY_BASE = """
LEFT JOIN marts.dim_location l ON s.urn = l.urn
"""
QUERY_KS2_JOIN = """
QUERY_PERFORMANCE_JOIN = """
LEFT JOIN LATERAL (
SELECT rwm_expected_pct
FROM marts.fact_ks2_performance
SELECT rwm_expected_pct, progress_8_score
FROM marts.fact_performance
WHERE urn = s.urn
ORDER BY year DESC
LIMIT 1
) ks2 ON true
"""
QUERY_KS4_JOIN = """
LEFT JOIN LATERAL (
SELECT progress_8_score
FROM marts.fact_ks4_performance
WHERE urn = s.urn
ORDER BY year DESC
LIMIT 1
) ks4 ON true
) p ON true
"""
@@ -136,30 +126,23 @@ def sync(typesense_url: str, api_key: str):
schema = {**COLLECTION_SCHEMA, "name": collection_name}
client.collections.create(schema)
# Fetch data from marts — dynamically include KS2/KS4 joins if tables exist
# Fetch data from marts — join fact_performance if it exists
conn = get_db_connection()
with conn.cursor(cursor_factory=psycopg2.extras.RealDictCursor) as cur:
# Check which fact tables exist
# Check whether the merged fact table exists
cur.execute("""
SELECT table_name FROM information_schema.tables
WHERE table_schema = 'marts' AND table_name IN ('fact_ks2_performance', 'fact_ks4_performance')
WHERE table_schema = 'marts' AND table_name = 'fact_performance'
""")
existing_tables = {r["table_name"] for r in cur.fetchall()}
select_extra = []
joins = ""
if "fact_ks2_performance" in existing_tables:
select_extra.append("ks2.rwm_expected_pct")
joins += QUERY_KS2_JOIN
if "fact_ks4_performance" in existing_tables:
select_extra.append("ks4.progress_8_score")
joins += QUERY_KS4_JOIN
has_fact_performance = cur.fetchone() is not None
query = QUERY_BASE
if select_extra:
# Insert extra select columns before FROM
query = query.replace("l.longitude as lng", "l.longitude as lng,\n " + ",\n ".join(select_extra))
query += joins
if has_fact_performance:
query = query.replace(
"l.longitude as lng",
"l.longitude as lng,\n p.rwm_expected_pct,\n p.progress_8_score",
)
query += QUERY_PERFORMANCE_JOIN
cur.execute(query)
rows = cur.fetchall()

View File

@@ -34,6 +34,17 @@ models:
- name: urn
tests: [not_null]
- name: fact_performance
description: Merged KS2 + KS4 performance — one row per URN per year via FULL OUTER JOIN. All-through schools have both KS2 and KS4 columns populated; pure primary schools have NULL KS4 columns; pure secondary schools have NULL KS2 columns.
columns:
- name: urn
tests: [not_null]
- name: year
tests: [not_null]
tests:
- unique:
column_name: "urn || '-' || year"
- name: fact_ks2_performance
description: KS2 attainment — one row per URN per year
columns:

View File

@@ -0,0 +1,81 @@
-- Mart: Merged KS2 + KS4 performance — one row per URN per year
-- FULL OUTER JOIN so all-through schools have both KS2 and KS4 columns populated.
-- Pure primary schools have NULL KS4 columns; pure secondary schools have NULL KS2 columns.
with ks2 as (
select * from {{ ref('fact_ks2_performance') }}
),
ks4 as (
select * from {{ ref('fact_ks4_performance') }}
)
select
-- Join keys (coalesced so neither side is dropped)
coalesce(ks2.urn, ks4.urn) as urn,
coalesce(ks2.source_urn, ks4.source_urn) as source_urn,
coalesce(ks2.year, ks4.year) as year,
coalesce(ks2.total_pupils, ks4.total_pupils) as total_pupils,
coalesce(ks2.eligible_pupils, ks4.eligible_pupils) as eligible_pupils,
-- KS2 columns (NULL for pure secondary schools)
ks2.rwm_expected_pct,
ks2.rwm_high_pct,
ks2.reading_expected_pct,
ks2.reading_high_pct,
ks2.reading_avg_score,
ks2.reading_progress,
ks2.writing_expected_pct,
ks2.writing_high_pct,
ks2.writing_progress,
ks2.maths_expected_pct,
ks2.maths_high_pct,
ks2.maths_avg_score,
ks2.maths_progress,
ks2.gps_expected_pct,
ks2.gps_high_pct,
ks2.gps_avg_score,
ks2.science_expected_pct,
ks2.reading_absence_pct,
ks2.writing_absence_pct,
ks2.maths_absence_pct,
ks2.gps_absence_pct,
ks2.science_absence_pct,
ks2.rwm_expected_boys_pct,
ks2.rwm_high_boys_pct,
ks2.rwm_expected_girls_pct,
ks2.rwm_high_girls_pct,
ks2.rwm_expected_disadvantaged_pct,
ks2.rwm_expected_non_disadvantaged_pct,
ks2.disadvantaged_gap,
ks2.disadvantaged_pct,
ks2.eal_pct,
ks2.stability_pct,
-- KS4 columns (NULL for pure primary schools)
ks4.attainment_8_score,
ks4.progress_8_score,
ks4.progress_8_lower_ci,
ks4.progress_8_upper_ci,
ks4.progress_8_english,
ks4.progress_8_maths,
ks4.progress_8_ebacc,
ks4.progress_8_open,
ks4.english_maths_strong_pass_pct,
ks4.english_maths_standard_pass_pct,
ks4.ebacc_entry_pct,
ks4.ebacc_strong_pass_pct,
ks4.ebacc_standard_pass_pct,
ks4.ebacc_avg_score,
ks4.gcse_grade_91_pct,
ks4.prior_attainment_avg,
ks4.sen_pct,
-- Shared SEN columns — KS2 preferred, fall back to KS4
coalesce(ks2.sen_support_pct, ks4.sen_support_pct) as sen_support_pct,
coalesce(ks2.sen_ehcp_pct, ks4.sen_ehcp_pct) as sen_ehcp_pct
from ks2
full outer join ks4
on ks2.urn = ks4.urn
and ks2.year = ks4.year