hass.tibber_prices/custom_components/tibber_prices/sensor/helpers.py
Julian Pawlowski abb02083a7 feat(sensors): always show both mean and median in average sensor attributes
Implemented configurable display format (mean/median/both) while always
calculating and exposing both price_mean and price_median attributes.

Core changes:
- utils/average.py: Refactored calculate_mean_median() to always return both
  values, added comprehensive None handling (117 lines changed)
- sensor/attributes/helpers.py: Always include both attributes regardless of
  user display preference (41 lines)
- sensor/core.py: Dynamic _unrecorded_attributes based on display setting
  (55 lines), extracted helper methods to reduce complexity
- Updated all calculators (rolling_hour, trend, volatility, window_24h) to
  use new always-both approach

Impact: Users can switch display format in UI without losing historical data.
Automation authors always have access to both statistical measures.
2025-12-18 15:12:30 +00:00

195 lines
6.6 KiB
Python

"""
Sensor platform-specific helper functions.
This module contains helper functions specific to the sensor platform:
- aggregate_price_data: Calculate average price from window data
- aggregate_level_data: Aggregate price levels from intervals
- aggregate_rating_data: Aggregate price ratings from intervals
- aggregate_window_data: Unified aggregation based on value type
- get_hourly_price_value: Get price for specific hour with offset
For shared helper functions (used by both sensor and binary_sensor platforms),
see entity_utils/helpers.py:
- get_price_value: Price unit conversion
- translate_level: Price level translation
- translate_rating_level: Rating level translation
- find_rolling_hour_center_index: Rolling hour window calculations
"""
from __future__ import annotations
from datetime import timedelta
from typing import TYPE_CHECKING
if TYPE_CHECKING:
from custom_components.tibber_prices.coordinator.time_service import TibberPricesTimeService
from homeassistant.config_entries import ConfigEntry
from custom_components.tibber_prices.const import get_display_unit_factor
from custom_components.tibber_prices.coordinator.helpers import get_intervals_for_day_offsets
from custom_components.tibber_prices.entity_utils.helpers import get_price_value
from custom_components.tibber_prices.utils.average import calculate_mean, calculate_median
from custom_components.tibber_prices.utils.price import (
aggregate_price_levels,
aggregate_price_rating,
)
if TYPE_CHECKING:
from collections.abc import Callable
def aggregate_average_data(
window_data: list[dict],
config_entry: ConfigEntry,
) -> tuple[float | None, float | None]:
"""
Calculate average and median price from window data.
Args:
window_data: List of price interval dictionaries with 'total' key.
config_entry: Config entry to get display unit configuration.
Returns:
Tuple of (average price, median price) in display currency units,
or (None, None) if no prices.
"""
prices = [float(i["total"]) for i in window_data if "total" in i]
if not prices:
return None, None
# Calculate both mean and median
mean = calculate_mean(prices)
median = calculate_median(prices)
# Convert to display currency unit based on configuration
factor = get_display_unit_factor(config_entry)
return round(mean * factor, 2), round(median * factor, 2) if median is not None else None
def aggregate_level_data(window_data: list[dict]) -> str | None:
"""
Aggregate price levels from window data.
Args:
window_data: List of price interval dictionaries with 'level' key
Returns:
Aggregated price level (lowercase), or None if no levels
"""
levels = [i["level"] for i in window_data if "level" in i]
if not levels:
return None
aggregated = aggregate_price_levels(levels)
return aggregated.lower() if aggregated else None
def aggregate_rating_data(
window_data: list[dict],
threshold_low: float,
threshold_high: float,
) -> str | None:
"""
Aggregate price ratings from window data.
Args:
window_data: List of price interval dictionaries with 'difference' and 'rating_level'
threshold_low: Low threshold for rating calculation
threshold_high: High threshold for rating calculation
Returns:
Aggregated price rating (lowercase), or None if no ratings
"""
differences = [i["difference"] for i in window_data if "difference" in i and "rating_level" in i]
if not differences:
return None
aggregated, _ = aggregate_price_rating(differences, threshold_low, threshold_high)
return aggregated.lower() if aggregated else None
def aggregate_window_data(
window_data: list[dict],
value_type: str,
threshold_low: float,
threshold_high: float,
config_entry: ConfigEntry,
) -> str | float | None:
"""
Aggregate data from multiple intervals based on value type.
Unified helper that routes to appropriate aggregation function.
NOTE: This function is legacy code - rolling_hour calculator has its own implementation.
Args:
window_data: List of price interval dictionaries.
value_type: Type of value to aggregate ('price', 'level', or 'rating').
threshold_low: Low threshold for rating calculation.
threshold_high: High threshold for rating calculation.
config_entry: Config entry to get display unit configuration.
Returns:
Aggregated value (price as float, level/rating as str), or None if no data.
"""
# Map value types to aggregation functions
aggregators: dict[str, Callable] = {
"price": lambda data: aggregate_average_data(data, config_entry)[0], # Use only average from tuple
"level": lambda data: aggregate_level_data(data),
"rating": lambda data: aggregate_rating_data(data, threshold_low, threshold_high),
}
aggregator = aggregators.get(value_type)
if aggregator:
return aggregator(window_data)
return None
def get_hourly_price_value(
coordinator_data: dict,
*,
hour_offset: int,
in_euro: bool,
time: TibberPricesTimeService,
) -> float | None:
"""
Get price for current hour or with offset.
Legacy helper for hourly price access (not used by Calculator Pattern).
Kept for potential backward compatibility.
Args:
coordinator_data: Coordinator data dict
hour_offset: Hour offset from current time (positive=future, negative=past)
in_euro: If True, return price in base currency (EUR), else minor (cents/øre)
time: TibberPricesTimeService instance (required)
Returns:
Price value, or None if not found
"""
# Use TimeService to get the current time in the user's timezone
now = time.now()
# Calculate the exact target datetime (not just the hour)
# This properly handles day boundaries
target_datetime = now.replace(microsecond=0) + timedelta(hours=hour_offset)
target_hour = target_datetime.hour
target_date = target_datetime.date()
# Get all intervals (yesterday, today, tomorrow) via helper
all_intervals = get_intervals_for_day_offsets(coordinator_data, [-1, 0, 1])
# Search through all intervals to find the matching hour
for price_data in all_intervals:
# Parse the timestamp and convert to local time
starts_at = time.get_interval_time(price_data)
if starts_at is None:
continue
# Compare using both hour and date for accuracy
if starts_at.hour == target_hour and starts_at.date() == target_date:
return get_price_value(float(price_data["total"]), in_euro=in_euro)
return None