feat(ees): rewrite EES tap and KS2 models for actual data structure
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- Fix publication slugs (KS4, Phonics, Admissions were wrong) - Split KS2 into two streams: ees_ks2_attainment (long format) and ees_ks2_info (wide format context data) - Target specific filenames instead of keyword matching - Handle school_urn vs urn column naming - Pivot KS2 attainment from long to wide format in dbt staging - Add all ~40 KS2 columns the backend needs (GPS, absence, gender, disadvantaged breakdowns, context demographics) - Pass through all columns in int_ks2_with_lineage and fact_ks2 Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
This commit is contained in:
@@ -1,4 +1,10 @@
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"""EES Singer tap — extracts KS2, KS4, Census, Admissions, Phonics data."""
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"""EES Singer tap — extracts KS2, KS4, Census, Admissions, Phonics data.
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Each stream targets a specific CSV file within an EES release ZIP.
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The EES data uses 'school_urn' for school-level records and 'z' for
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suppressed values. Column names vary by file — schemas declare all
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columns needed by downstream dbt staging models.
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"""
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from __future__ import annotations
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@@ -12,7 +18,6 @@ from singer_sdk import typing as th
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CONTENT_API_BASE = (
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"https://content.explore-education-statistics.service.gov.uk/api"
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)
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STATS_API_BASE = "https://api.education.gov.uk/statistics/v1"
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TIMEOUT = 120
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@@ -37,7 +42,8 @@ class EESDatasetStream(Stream):
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replication_key = None
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_publication_slug: str = ""
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_file_keyword: str = ""
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_target_filename: str = "" # exact filename within the ZIP
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_urn_column: str = "school_urn" # column name for URN in the CSV
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def get_records(self, context):
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import pandas as pd
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@@ -50,84 +56,153 @@ class EESDatasetStream(Stream):
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)
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zf = download_release_zip(release_id)
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# Find the CSV matching our keyword
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csv_names = [n for n in zf.namelist() if n.endswith(".csv")]
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# Find the target file
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all_files = zf.namelist()
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target = None
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for name in csv_names:
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if self._file_keyword.lower() in name.lower():
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for name in all_files:
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if name.endswith(self._target_filename):
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target = name
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break
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if not target and csv_names:
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target = csv_names[0]
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if not target:
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self.logger.warning("No CSV found in release ZIP")
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self.logger.error(
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"File '%s' not found in ZIP. Available: %s",
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self._target_filename,
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[n for n in all_files if n.endswith(".csv")],
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)
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return
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self.logger.info("Reading %s from ZIP", target)
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with zf.open(target) as f:
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df = pd.read_csv(f, dtype=str, keep_default_na=False)
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# Filter to school-level data
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# Filter to school-level data if the column exists
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if "geographic_level" in df.columns:
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df = df[df["geographic_level"] == "School"]
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self.logger.info("Emitting %d school-level rows", len(df))
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for _, row in df.iterrows():
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yield row.to_dict()
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record = row.to_dict()
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# Normalise URN column to 'school_urn' for consistency
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if self._urn_column in record and self._urn_column != "school_urn":
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record["school_urn"] = record.pop(self._urn_column)
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yield record
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class EESKS2Stream(EESDatasetStream):
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name = "ees_ks2"
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primary_keys = ["urn", "time_period"]
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# ── KS2 Attainment (long format: one row per school × subject × breakdown) ──
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class EESKS2AttainmentStream(EESDatasetStream):
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name = "ees_ks2_attainment"
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primary_keys = ["school_urn", "time_period", "subject", "breakdown_topic", "breakdown"]
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_publication_slug = "key-stage-2-attainment"
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_file_keyword = "school"
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_target_filename = "ks2_school_attainment_data.csv"
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schema = th.PropertiesList(
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th.Property("urn", th.StringType, required=True),
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th.Property("time_period", th.StringType, required=True),
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th.Property("school_urn", th.StringType, required=True),
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th.Property("school_laestab", th.StringType),
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th.Property("school_name", th.StringType),
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th.Property("breakdown_topic", th.StringType, required=True),
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th.Property("breakdown", th.StringType, required=True),
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th.Property("subject", th.StringType, required=True),
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th.Property("expected_standard_pupil_percent", th.StringType),
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th.Property("higher_standard_pupil_percent", th.StringType),
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th.Property("average_scaled_score", th.StringType),
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th.Property("progress_measure_score", th.StringType),
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th.Property("progress_measure_lower_conf_interval", th.StringType),
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th.Property("progress_measure_upper_conf_interval", th.StringType),
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th.Property("absent_or_not_able_to_access_percent", th.StringType),
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th.Property("working_towards_expected_standard_pupil_percent", th.StringType),
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th.Property("absent_or_disapplied_percent", th.StringType),
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th.Property("higher_standard", th.StringType),
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th.Property("progress_measure_unadjusted", th.StringType),
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th.Property("progress_measure_description", th.StringType),
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).to_dict()
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# ── KS2 Information (wide format: one row per school, context/demographics) ──
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class EESKS2InfoStream(EESDatasetStream):
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name = "ees_ks2_info"
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primary_keys = ["school_urn", "time_period"]
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_publication_slug = "key-stage-2-attainment"
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_target_filename = "ks2_school_information_data.csv"
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schema = th.PropertiesList(
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th.Property("time_period", th.StringType, required=True),
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th.Property("school_urn", th.StringType, required=True),
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th.Property("school_laestab", th.StringType),
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th.Property("school_name", th.StringType),
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th.Property("nftype", th.StringType),
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th.Property("reldenom", th.StringType),
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th.Property("agerange", th.StringType),
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th.Property("totpups", th.StringType),
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th.Property("telig", th.StringType),
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th.Property("belig", th.StringType),
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th.Property("gelig", th.StringType),
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th.Property("ptfsm6cla1a", th.StringType),
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th.Property("ptnotfsm6cla1a", th.StringType),
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th.Property("ptealgrp2", th.StringType),
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th.Property("ptmobn", th.StringType),
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th.Property("psenelk", th.StringType),
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th.Property("psenele", th.StringType),
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th.Property("psenelek", th.StringType),
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th.Property("telig_3yr", th.StringType),
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).to_dict()
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# ── KS4 Attainment ──────────────────────────────────────────────────────────
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class EESKS4Stream(EESDatasetStream):
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name = "ees_ks4"
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primary_keys = ["urn", "time_period"]
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_publication_slug = "key-stage-4-performance-revised"
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_file_keyword = "school"
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primary_keys = ["school_urn", "time_period"]
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_publication_slug = "key-stage-4-performance"
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_target_filename = "school" # Will be refined once we see the actual ZIP contents
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schema = th.PropertiesList(
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th.Property("urn", th.StringType, required=True),
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th.Property("time_period", th.StringType, required=True),
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th.Property("school_urn", th.StringType, required=True),
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).to_dict()
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# ── Census (school-level pupil characteristics) ─────────────────────────────
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class EESCensusStream(EESDatasetStream):
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name = "ees_census"
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primary_keys = ["urn", "time_period"]
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_publication_slug = "school-pupils-and-their-characteristics"
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_file_keyword = "school"
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_target_filename = "spc_school_level_underlying_data_2025.csv"
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_urn_column = "urn"
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schema = th.PropertiesList(
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th.Property("urn", th.StringType, required=True),
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th.Property("time_period", th.StringType, required=True),
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th.Property("urn", th.StringType, required=True),
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th.Property("school_name", th.StringType),
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th.Property("laestab", th.StringType),
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th.Property("phase_type_grouping", th.StringType),
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).to_dict()
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# ── Admissions ───────────────────────────────────────────────────────────────
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class EESAdmissionsStream(EESDatasetStream):
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name = "ees_admissions"
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primary_keys = ["urn", "time_period"]
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_publication_slug = "secondary-and-primary-school-applications-and-offers"
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_file_keyword = "school"
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primary_keys = ["school_urn", "time_period"]
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_publication_slug = "primary-and-secondary-school-applications-and-offers"
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_target_filename = "school" # Will be refined once we see the actual ZIP contents
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schema = th.PropertiesList(
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th.Property("urn", th.StringType, required=True),
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th.Property("time_period", th.StringType, required=True),
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th.Property("school_urn", th.StringType, required=True),
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).to_dict()
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# ── Phonics ──────────────────────────────────────────────────────────────────
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class EESPhonicsStream(EESDatasetStream):
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name = "ees_phonics"
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primary_keys = ["urn", "time_period"]
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_publication_slug = "phonics-screening-check-and-key-stage-1-assessments"
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_file_keyword = "school"
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primary_keys = ["school_urn", "time_period"]
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_publication_slug = "phonics-screening-check-attainment"
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_target_filename = "school" # Will be refined once we see the actual ZIP contents
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schema = th.PropertiesList(
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th.Property("urn", th.StringType, required=True),
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th.Property("time_period", th.StringType, required=True),
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th.Property("school_urn", th.StringType, required=True),
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).to_dict()
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@@ -142,7 +217,8 @@ class TapUKEES(Tap):
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def discover_streams(self):
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return [
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EESKS2Stream(self),
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EESKS2AttainmentStream(self),
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EESKS2InfoStream(self),
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EESKS4Stream(self),
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EESCensusStream(self),
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EESAdmissionsStream(self),
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@@ -5,21 +5,16 @@ with current_ks2 as (
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select
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urn as current_urn,
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urn as source_urn,
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year,
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total_pupils,
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rwm_expected_pct,
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reading_expected_pct,
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writing_expected_pct,
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maths_expected_pct,
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rwm_high_pct,
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reading_high_pct,
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writing_high_pct,
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maths_high_pct,
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reading_progress,
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writing_progress,
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maths_progress,
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reading_avg_score,
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maths_avg_score
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year, total_pupils, eligible_pupils,
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rwm_expected_pct, rwm_high_pct,
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reading_expected_pct, reading_high_pct, reading_avg_score, reading_progress,
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writing_expected_pct, writing_high_pct, writing_progress,
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maths_expected_pct, maths_high_pct, maths_avg_score, maths_progress,
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gps_expected_pct, gps_high_pct, gps_avg_score, science_expected_pct,
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reading_absence_pct, writing_absence_pct, maths_absence_pct, gps_absence_pct, science_absence_pct,
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rwm_expected_boys_pct, rwm_high_boys_pct, rwm_expected_girls_pct, rwm_high_girls_pct,
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rwm_expected_disadvantaged_pct, rwm_expected_non_disadvantaged_pct, disadvantaged_gap,
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disadvantaged_pct, eal_pct, sen_support_pct, sen_ehcp_pct, stability_pct
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from {{ ref('stg_ees_ks2') }}
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),
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@@ -27,25 +22,19 @@ predecessor_ks2 as (
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select
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lin.current_urn,
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ks2.urn as source_urn,
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ks2.year,
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ks2.total_pupils,
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ks2.rwm_expected_pct,
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ks2.reading_expected_pct,
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ks2.writing_expected_pct,
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ks2.maths_expected_pct,
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ks2.rwm_high_pct,
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ks2.reading_high_pct,
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ks2.writing_high_pct,
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ks2.maths_high_pct,
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ks2.reading_progress,
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ks2.writing_progress,
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ks2.maths_progress,
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ks2.reading_avg_score,
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ks2.maths_avg_score
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ks2.year, ks2.total_pupils, ks2.eligible_pupils,
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ks2.rwm_expected_pct, ks2.rwm_high_pct,
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ks2.reading_expected_pct, ks2.reading_high_pct, ks2.reading_avg_score, ks2.reading_progress,
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ks2.writing_expected_pct, ks2.writing_high_pct, ks2.writing_progress,
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ks2.maths_expected_pct, ks2.maths_high_pct, ks2.maths_avg_score, ks2.maths_progress,
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ks2.gps_expected_pct, ks2.gps_high_pct, ks2.gps_avg_score, ks2.science_expected_pct,
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ks2.reading_absence_pct, ks2.writing_absence_pct, ks2.maths_absence_pct, ks2.gps_absence_pct, ks2.science_absence_pct,
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ks2.rwm_expected_boys_pct, ks2.rwm_high_boys_pct, ks2.rwm_expected_girls_pct, ks2.rwm_high_girls_pct,
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ks2.rwm_expected_disadvantaged_pct, ks2.rwm_expected_non_disadvantaged_pct, ks2.disadvantaged_gap,
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ks2.disadvantaged_pct, ks2.eal_pct, ks2.sen_support_pct, ks2.sen_ehcp_pct, ks2.stability_pct
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from {{ ref('stg_ees_ks2') }} ks2
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inner join {{ ref('int_school_lineage') }} lin
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on ks2.urn = lin.predecessor_urn
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-- Only include predecessor data for years before the current URN has data
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where not exists (
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select 1 from {{ ref('stg_ees_ks2') }} curr
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where curr.urn = lin.current_urn
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@@ -6,17 +6,50 @@ select
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source_urn,
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year,
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total_pupils,
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eligible_pupils,
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-- Core attainment
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rwm_expected_pct,
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reading_expected_pct,
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writing_expected_pct,
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maths_expected_pct,
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rwm_high_pct,
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reading_expected_pct,
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reading_high_pct,
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writing_high_pct,
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maths_high_pct,
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reading_progress,
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writing_progress,
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maths_progress,
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reading_avg_score,
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maths_avg_score
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reading_progress,
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writing_expected_pct,
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writing_high_pct,
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writing_progress,
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maths_expected_pct,
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maths_high_pct,
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maths_avg_score,
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maths_progress,
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gps_expected_pct,
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gps_high_pct,
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gps_avg_score,
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science_expected_pct,
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-- Absence
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reading_absence_pct,
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writing_absence_pct,
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maths_absence_pct,
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gps_absence_pct,
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science_absence_pct,
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-- Gender
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rwm_expected_boys_pct,
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rwm_high_boys_pct,
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rwm_expected_girls_pct,
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rwm_high_girls_pct,
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-- Disadvantaged
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rwm_expected_disadvantaged_pct,
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rwm_expected_non_disadvantaged_pct,
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disadvantaged_gap,
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-- Context
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disadvantaged_pct,
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eal_pct,
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sen_support_pct,
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sen_ehcp_pct,
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stability_pct
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from {{ ref('int_ks2_with_lineage') }}
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@@ -24,8 +24,11 @@ sources:
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- name: ofsted_inspections
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description: Ofsted Management Information inspection records
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- name: ees_ks2
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description: KS2 attainment data from Explore Education Statistics
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- name: ees_ks2_attainment
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description: KS2 school attainment (long format — one row per school × subject × breakdown)
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- name: ees_ks2_info
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description: KS2 school information (wide format — context/demographics per school)
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- name: ees_ks4
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description: KS4 attainment data from Explore Education Statistics
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@@ -1,31 +1,185 @@
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-- Staging model: KS2 attainment data from EES
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-- Column names depend on the EES dataset schema; these will be finalised
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-- once the tap-uk-ees extractor resolves the actual column names.
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-- Staging model: KS2 attainment + information
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-- Pivots long-format attainment data (one row per subject × breakdown) into
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-- wide format (one row per school per year) and joins context from info table.
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-- EES uses 'z' for suppressed values — cast to null via nullif.
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with source as (
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select * from {{ source('raw', 'ees_ks2') }}
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with attainment as (
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select * from {{ source('raw', 'ees_ks2_attainment') }}
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where school_urn is not null
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),
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renamed as (
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-- Pivot: extract metrics for each subject where breakdown = 'Total'
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all_pupils as (
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select
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cast(urn as integer) as urn,
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cast(time_period as integer) as year,
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cast(t_pupils as integer) as total_pupils,
|
||||
cast(pt_rwm_met_expected_standard as numeric) as rwm_expected_pct,
|
||||
cast(pt_read_met_expected_standard as numeric) as reading_expected_pct,
|
||||
cast(pt_write_met_expected_standard as numeric) as writing_expected_pct,
|
||||
cast(pt_maths_met_expected_standard as numeric) as maths_expected_pct,
|
||||
cast(pt_rwm_met_higher_standard as numeric) as rwm_high_pct,
|
||||
cast(pt_read_met_higher_standard as numeric) as reading_high_pct,
|
||||
cast(pt_write_met_higher_standard as numeric) as writing_high_pct,
|
||||
cast(pt_maths_met_higher_standard as numeric) as maths_high_pct,
|
||||
cast(read_progress as numeric) as reading_progress,
|
||||
cast(write_progress as numeric) as writing_progress,
|
||||
cast(maths_progress as numeric) as maths_progress,
|
||||
cast(read_average_score as numeric) as reading_avg_score,
|
||||
cast(maths_average_score as numeric) as maths_avg_score
|
||||
from source
|
||||
where urn is not null
|
||||
school_urn,
|
||||
time_period,
|
||||
subject,
|
||||
nullif(expected_standard_pupil_percent, 'z') as expected_pct,
|
||||
nullif(higher_standard_pupil_percent, 'z') as higher_pct,
|
||||
nullif(average_scaled_score, 'z') as avg_score,
|
||||
nullif(progress_measure_score, 'z') as progress,
|
||||
nullif(absent_or_not_able_to_access_percent, 'z') as absence_pct
|
||||
from attainment
|
||||
where breakdown_topic = 'All pupils'
|
||||
and breakdown = 'Total'
|
||||
),
|
||||
|
||||
pivoted as (
|
||||
select
|
||||
cast(school_urn as integer) as urn,
|
||||
cast(time_period as integer) as year,
|
||||
|
||||
-- RWM combined
|
||||
max(case when subject = 'Reading, writing and maths' then cast(expected_pct as numeric) end) as rwm_expected_pct,
|
||||
max(case when subject = 'Reading, writing and maths' then cast(higher_pct as numeric) end) as rwm_high_pct,
|
||||
|
||||
-- Reading
|
||||
max(case when subject = 'Reading' then cast(expected_pct as numeric) end) as reading_expected_pct,
|
||||
max(case when subject = 'Reading' then cast(higher_pct as numeric) end) as reading_high_pct,
|
||||
max(case when subject = 'Reading' then cast(avg_score as numeric) end) as reading_avg_score,
|
||||
max(case when subject = 'Reading' then cast(progress as numeric) end) as reading_progress,
|
||||
max(case when subject = 'Reading' then cast(absence_pct as numeric) end) as reading_absence_pct,
|
||||
|
||||
-- Writing
|
||||
max(case when subject = 'Writing' then cast(expected_pct as numeric) end) as writing_expected_pct,
|
||||
max(case when subject = 'Writing' then cast(higher_pct as numeric) end) as writing_high_pct,
|
||||
max(case when subject = 'Writing' then cast(progress as numeric) end) as writing_progress,
|
||||
max(case when subject = 'Writing' then cast(absence_pct as numeric) end) as writing_absence_pct,
|
||||
|
||||
-- Maths
|
||||
max(case when subject = 'Maths' then cast(expected_pct as numeric) end) as maths_expected_pct,
|
||||
max(case when subject = 'Maths' then cast(higher_pct as numeric) end) as maths_high_pct,
|
||||
max(case when subject = 'Maths' then cast(avg_score as numeric) end) as maths_avg_score,
|
||||
max(case when subject = 'Maths' then cast(progress as numeric) end) as maths_progress,
|
||||
max(case when subject = 'Maths' then cast(absence_pct as numeric) end) as maths_absence_pct,
|
||||
|
||||
-- GPS
|
||||
max(case when subject ilike '%grammar%' or subject = 'GPS' then cast(expected_pct as numeric) end) as gps_expected_pct,
|
||||
max(case when subject ilike '%grammar%' or subject = 'GPS' then cast(higher_pct as numeric) end) as gps_high_pct,
|
||||
max(case when subject ilike '%grammar%' or subject = 'GPS' then cast(avg_score as numeric) end) as gps_avg_score,
|
||||
max(case when subject ilike '%grammar%' or subject = 'GPS' then cast(absence_pct as numeric) end) as gps_absence_pct,
|
||||
|
||||
-- Science
|
||||
max(case when subject = 'Science' then cast(expected_pct as numeric) end) as science_expected_pct,
|
||||
max(case when subject = 'Science' then cast(absence_pct as numeric) end) as science_absence_pct
|
||||
|
||||
from all_pupils
|
||||
group by school_urn, time_period
|
||||
),
|
||||
|
||||
-- Gender breakdown for RWM
|
||||
gender_boys as (
|
||||
select
|
||||
school_urn,
|
||||
time_period,
|
||||
nullif(expected_standard_pupil_percent, 'z') as rwm_expected_boys_pct,
|
||||
nullif(higher_standard_pupil_percent, 'z') as rwm_high_boys_pct
|
||||
from attainment
|
||||
where subject = 'Reading, writing and maths'
|
||||
and breakdown = 'Boys'
|
||||
),
|
||||
|
||||
gender_girls as (
|
||||
select
|
||||
school_urn,
|
||||
time_period,
|
||||
nullif(expected_standard_pupil_percent, 'z') as rwm_expected_girls_pct,
|
||||
nullif(higher_standard_pupil_percent, 'z') as rwm_high_girls_pct
|
||||
from attainment
|
||||
where subject = 'Reading, writing and maths'
|
||||
and breakdown = 'Girls'
|
||||
),
|
||||
|
||||
-- Disadvantaged breakdown for RWM
|
||||
disadv as (
|
||||
select
|
||||
school_urn,
|
||||
time_period,
|
||||
nullif(expected_standard_pupil_percent, 'z') as rwm_expected_disadvantaged_pct
|
||||
from attainment
|
||||
where subject = 'Reading, writing and maths'
|
||||
and breakdown = 'Disadvantaged'
|
||||
),
|
||||
|
||||
not_disadv as (
|
||||
select
|
||||
school_urn,
|
||||
time_period,
|
||||
nullif(expected_standard_pupil_percent, 'z') as rwm_expected_non_disadvantaged_pct
|
||||
from attainment
|
||||
where subject = 'Reading, writing and maths'
|
||||
and breakdown = 'Not disadvantaged'
|
||||
),
|
||||
|
||||
-- School info (context/demographics)
|
||||
info as (
|
||||
select
|
||||
cast(school_urn as integer) as urn,
|
||||
cast(time_period as integer) as year,
|
||||
cast(nullif(totpups, 'z') as integer) as total_pupils,
|
||||
cast(nullif(telig, 'z') as integer) as eligible_pupils,
|
||||
cast(nullif(ptfsm6cla1a, 'z') as numeric) as disadvantaged_pct,
|
||||
cast(nullif(ptealgrp2, 'z') as numeric) as eal_pct,
|
||||
cast(nullif(psenelk, 'z') as numeric) as sen_support_pct,
|
||||
cast(nullif(psenele, 'z') as numeric) as sen_ehcp_pct,
|
||||
cast(nullif(ptmobn, 'z') as numeric) as stability_pct
|
||||
from {{ source('raw', 'ees_ks2_info') }}
|
||||
where school_urn is not null
|
||||
)
|
||||
|
||||
select * from renamed
|
||||
select
|
||||
p.urn,
|
||||
p.year,
|
||||
i.total_pupils,
|
||||
i.eligible_pupils,
|
||||
|
||||
-- Core attainment
|
||||
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,
|
||||
|
||||
-- Absence
|
||||
p.reading_absence_pct,
|
||||
p.writing_absence_pct,
|
||||
p.maths_absence_pct,
|
||||
p.gps_absence_pct,
|
||||
p.science_absence_pct,
|
||||
|
||||
-- Gender
|
||||
cast(gb.rwm_expected_boys_pct as numeric) as rwm_expected_boys_pct,
|
||||
cast(gb.rwm_high_boys_pct as numeric) as rwm_high_boys_pct,
|
||||
cast(gg.rwm_expected_girls_pct as numeric) as rwm_expected_girls_pct,
|
||||
cast(gg.rwm_high_girls_pct as numeric) as rwm_high_girls_pct,
|
||||
|
||||
-- Disadvantaged
|
||||
cast(d.rwm_expected_disadvantaged_pct as numeric) as rwm_expected_disadvantaged_pct,
|
||||
cast(nd.rwm_expected_non_disadvantaged_pct as numeric) as rwm_expected_non_disadvantaged_pct,
|
||||
cast(d.rwm_expected_disadvantaged_pct as numeric) - cast(nd.rwm_expected_non_disadvantaged_pct as numeric) as disadvantaged_gap,
|
||||
|
||||
-- Context
|
||||
i.disadvantaged_pct,
|
||||
i.eal_pct,
|
||||
i.sen_support_pct,
|
||||
i.sen_ehcp_pct,
|
||||
i.stability_pct
|
||||
|
||||
from pivoted p
|
||||
left join info i on p.urn = i.urn and p.year = i.year
|
||||
left join gender_boys gb on p.urn = cast(gb.school_urn as integer) and p.year = cast(gb.time_period as integer)
|
||||
left join gender_girls gg on p.urn = cast(gg.school_urn as integer) and p.year = cast(gg.time_period as integer)
|
||||
left join disadv d on p.urn = cast(d.school_urn as integer) and p.year = cast(d.time_period as integer)
|
||||
left join not_disadv nd on p.urn = cast(nd.school_urn as integer) and p.year = cast(nd.time_period as integer)
|
||||
|
||||
Reference in New Issue
Block a user