Commit graph

15 commits

Author SHA1 Message Date
Khalim Conn-Kowlessar
0bd2db4f03 feat(modelling_e2e): price gap measures via overlay + broaden prediction to nearby postcodes
Two reconciliations to make the modelling_e2e Lambda handler production-ready.

1. Price through the off-catalogue overlay, drop the workarounds
   The handler priced through a plain ProductPostgresRepository and excluded
   secondary_heating_removal / system_tune_up / system_tune_up_zoned to dodge
   ProductNotFound (and a poisoning pgEnum DataError). Those measures are now
   priced by catalogue_with_off_catalogue_overrides (already used by the e2e
   runner and PostgresUnitOfWork), so the exclusions are removed and ALL measure
   types are considered. This also fixes gas-boiler / single-glazed properties,
   which Dan's handler never excluded and so still crashed (the standard
   system_tune_up option is built unconditionally — the considered-measures
   exclusion never actually gated it).

2. Broaden the EPC-Prediction cohort to nearby real postcodes (ADR-0031)
   A property with no lodged EPC and no same-type comparable in its own postcode
   (e.g. the only flat among houses) used to gate out and fail the subtask. The
   gov EPC API cannot search by radius/outcode, so we resolve the real unit
   postcodes physically nearest the target via postcodes.io (keyless; already a
   trusted in-repo dependency) and walk them nearest-first until enough same-type
   comparables surface. New PostcodesIoClient (transient-failure retry with
   exponential backoff, soft-failing to the seed so broadening never breaks
   prediction) and EpcComparablePropertiesRepository.candidates_near. Wired into
   the handler and e2e runner; broadening is lazy (only on gate-out) and memoised
   per (postcode, property_type).

Validated live: property 728476 (gas boiler) prices system_tune_up at GBP295;
property 718580 (lone flat in BR6 6BS) now predicts via nearby BR6 postcodes.

Co-Authored-By: Claude Opus 4.8 (1M context) <noreply@anthropic.com>
2026-06-23 16:25:18 +00:00
Khalim Conn-Kowlessar
c3422704f5 revert epc timeout to 10s 2026-06-23 11:19:23 +00:00
Daniel Roth
7e5af6c8f4 process multiple properties in one message 2026-06-22 15:46:18 +00:00
Jun-te Kim
ad3b1f15a8 Classify the landlord Hot Water and Heating columns into categories 🟥
Co-Authored-By: Claude Opus 4.8 (1M context) <noreply@anthropic.com>
2026-06-19 14:07:14 +00:00
Jun-te Kim
fc591c6550 Classify the landlord Age column into a construction-age-band category 🟥
Co-Authored-By: Claude Opus 4.8 (1M context) <noreply@anthropic.com>
2026-06-19 13:43:47 +00:00
Jun-te Kim
0b782bd1a6 Classify the landlord Glazing column into a glazing category 🟥
Co-Authored-By: Claude Opus 4.8 (1M context) <noreply@anthropic.com>
2026-06-19 13:35:39 +00:00
Jun-te Kim
fd922a26c2 Satisfy strict type-checking for the main_fuel classifier wiring 🟪
Co-Authored-By: Claude Opus 4.8 (1M context) <noreply@anthropic.com>
2026-06-19 13:01:07 +00:00
Jun-te Kim
04dd2dd222 Classify the landlord Main Fuel column into a fuel category 🟥
Co-Authored-By: Claude Opus 4.8 (1M context) <noreply@anthropic.com>
2026-06-19 12:43:54 +00:00
Daniel Roth
dcd5204b54 put db engine construction inside handler to avoid import errors in test 2026-06-09 15:18:42 +00:00
Daniel Roth
a1d09aa880 Audit generator populates XLSX, uploads to S3, and records UploadedFile row 🟥
Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-06-09 11:59:09 +00:00
Daniel Roth
e84de954fb define MagicPlanConfig class to get environment variables 2026-06-05 15:46:32 +00:00
Daniel Roth
8e349704b1 move magic plan handler to applications/ 2026-06-05 14:33:26 +00:00
Daniel Roth
174ef26075 refactor magicplan in ddd structure 2026-06-03 17:20:20 +00:00
Khalim Conn-Kowlessar
305bffd284 refactor(ara): rename FirstRunPipeline → AraFirstRunPipeline (PR #1139 review)
Aligns the composition with its entry point (the `ara_first_run` lambda +
`AraFirstRunTriggerBody`): clearer what the file does.

- orchestration/first_run_pipeline.py → ara_first_run_pipeline.py
- FirstRunPipeline → AraFirstRunPipeline; FirstRunCommand → AraFirstRunCommand
- test files renamed to match

Co-Authored-By: Claude Opus 4.8 <noreply@anthropic.com>
2026-06-01 15:00:33 +00:00
Khalim Conn-Kowlessar
75fbba60fc feat(ara): AraFirstRunTriggerBody + ara_first_run lambda skeleton (#1130)
Stage-2 entry point for the First Run use case. Adds the
`ara_first_run` Lambda package mirroring the `postcode_splitter`
template, its typed trigger contract, and a stub `FirstRunPipeline`.

- `AraFirstRunTriggerBody`: thin command of five fields — `task_id`,
  `sub_task_id` (UUID, lifecycle), `portfolio_id`, `property_ids`,
  `scenario_ids` (int business IDs). No `model_config` override, so
  Pydantic's default `extra="ignore"` lets the FastAPI backend add
  fields without breaking deployed lambdas. UPRNs / Scenario defs are
  deliberately off the event — read from source-of-truth tables.
- Thin `handler.py`: validate-and-delegate only, via a named
  `dispatch_first_run` seam (testable without the Lambda runtime).
  Subtask status (in-progress/complete/failed) + CloudWatch log URL
  come for free from the existing `@subtask_handler()` decorator.
- `FirstRunPipeline` (orchestration/) stub: `run(command)` receives the
  validated command. Declares a structural `FirstRunCommand` Protocol
  (the three business fields) that `AraFirstRunTriggerBody` satisfies,
  so orchestration needs no application-layer import — rhymes with the
  `EpcFetcher`/`SolarFetcher` Protocols on IngestionOrchestrator
  (ADR-0011). Full Ingestion→Baseline→Modelling composition lands in
  #1136.
- Dockerfile / requirements.txt / local_handler/ mirror postcode_splitter.

TDD: 7 new tests (trigger-body validation incl. forward-compat +
id-types, pipeline seam, handler delegation). pyright strict clean.

Co-Authored-By: Claude Opus 4.8 <noreply@anthropic.com>
2026-05-30 20:38:15 +00:00