API Client:
- Changed async_get_price_info() to accept home_ids parameter
- Implemented _get_price_info_for_specific_homes() using GraphQL aliases
(home0: home(id: "abc") { ... }) for efficient multi-home queries
- Extended async_get_viewer_details() with comprehensive home metadata
(owner, address, meteringPointData, subscription, features)
- Removed deprecated async_get_data() method (combined query no longer needed)
- Updated _is_data_empty() to handle aliased response structure
Coordinator:
- Added _get_configured_home_ids() to collect all active config entries
- Modified _fetch_all_homes_data() to only query configured homes
- Added refresh_user_data() forcing user data refresh (bypasses cache)
- Improved get_user_profile() with detailed user info (name, login, accountType)
- Fixed get_user_homes() to extract from viewer object
Binary Sensors:
- Added has_ventilation_system sensor (home metadata)
- Added realtime_consumption_enabled sensor (features check)
- Refactored state getter mapping to dictionary pattern
Diagnostic Sensors (12 new):
- Home metadata: home_type, home_size, main_fuse_size, number_of_residents,
primary_heating_source
- Metering point: grid_company, grid_area_code, price_area_code,
consumption_ean, production_ean, energy_tax_type, vat_type,
estimated_annual_consumption
- Subscription: subscription_status
- Added available property override to hide diagnostic sensors with no data
Config Flow:
- Fixed subentry flow to exclude parent home_id from available homes
- Added debug logging for home title generation
Entity:
- Made attribution translatable (get_translation("attribution"))
- Removed hardcoded user name suffix from subentry device names
Impact: Enables multi-home setups with dedicated subentries. Each home gets
its own set of sensors and only configured homes are queried (reduces API
load). New diagnostic sensors provide comprehensive home metadata from Tibber
API. Users can track ventilation systems, heating types, metering point info,
and subscription status.
Split binary_sensor.py (645 lines) into binary_sensor/ package with
4 modules following the established sensor/ pattern for consistency
and maintainability.
Package structure:
- binary_sensor/__init__.py (32 lines): Platform setup
- binary_sensor/definitions.py (46 lines): ENTITY_DESCRIPTIONS, constants
- binary_sensor/attributes.py (443 lines): Attribute builder functions
- binary_sensor/core.py (282 lines): TibberPricesBinarySensor class
Changes:
- Created binary_sensor/ package with __init__.py importing from .core
- Extracted ENTITY_DESCRIPTIONS and constants to definitions.py
- Moved 13 attribute builders to attributes.py (get_price_intervals_attributes,
build_async/sync_extra_state_attributes, add_* helpers)
- Moved TibberPricesBinarySensor class to core.py with state logic and
icon handling
- Used keyword-only parameters to satisfy Ruff PLR0913 (too many args)
- Applied absolute imports (custom_components.tibber_prices.*) in modules
All 4 binary sensors tested and working:
- peak_price_period
- best_price_period
- connection
- tomorrow_data_available
Documentation updated:
- AGENTS.md: Architecture Overview, Component Structure, Common Tasks
- binary-sensor-refactoring-plan.md: Marked ✅ COMPLETED with summary
Impact: Symmetric platform structure (sensor/ ↔ binary_sensor/). Easier
to add new binary sensors following documented pattern. No user-visible
changes.