Test & fix bugs of sleep intraday features

pull/134/head
Meng Li 2021-04-25 23:35:14 -04:00
parent 7c7f34ec45
commit 809845143f
47 changed files with 541 additions and 169 deletions

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@ -321,19 +321,19 @@ FITBIT_DATA_STREAMS:
# AVAILABLE:
fitbitjson_mysql:
DATABASE_GROUP: MY_GROUP
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after the midnight. By default, 660 (11:00).
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after midnight. By default, 660 (11:00).
fitbitparsed_mysql:
DATABASE_GROUP: MY_GROUP
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after the midnight. By default, 660 (11:00).
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after midnight. By default, 660 (11:00).
fitbitjson_csv:
FOLDER: data/external/fitbit_csv
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after the midnight. By default, 660 (11:00).
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after midnight. By default, 660 (11:00).
fitbitparsed_csv:
FOLDER: data/external/fitbit_csv
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after the midnight. By default, 660 (11:00).
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after midnight. By default, 660 (11:00).
# Sensors ------
@ -400,15 +400,12 @@ FITBIT_SLEEP_INTRADAY:
LEVELS_AND_TYPES: [countepisode, sumduration, maxduration, minduration, avgduration, medianduration, stdduration]
RATIOS_TYPE: [count, duration]
RATIOS_SCOPE: [ACROSS_LEVELS, ACROSS_TYPES, WITHIN_LEVELS, WITHIN_TYPES]
ROUTINE: [starttimefirstmainsleep, endtimelastmainsleep, starttimefirstnap, endtimelastnap]
SLEEP_LEVELS:
INCLUDE_ALL_GROUPS: True
CLASSIC: [awake, restless, asleep]
STAGES: [wake, deep, light, rem]
UNIFIED: [awake, asleep]
SLEEP_TYPES: [main, nap, all]
LAST_NIGHT_END: 0 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after the midnight
ROUTINE_REFERENCE_TIME: MIDNIGHT # chosen from "MIDNIGHT" and "START_OF_THE_SEGMENT"
SRC_SCRIPT: src/features/fitbit_sleep_intraday/rapids/main.py
PRICE:
@ -420,7 +417,7 @@ FITBIT_SLEEP_INTRADAY:
STAGES: [wake, deep, light, rem]
UNIFIED: [awake, asleep]
DAY_TYPES: [WEEKEND, WEEK, ALL]
LAST_NIGHT_END: 660 # number of minutes after the midnight (11:00) 11*60
LAST_NIGHT_END: 660 # number of minutes after midnight (11:00) 11*60
SRC_SCRIPT: src/features/fitbit_sleep_intraday/price/main.py
# See https://www.rapids.science/latest/features/fitbit-steps-summary/

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@ -24,10 +24,13 @@ The following is a list of the sensors that testing is currently available.
| Phone Screen | RAPIDS | Y | N | N |
| Phone WiFi Connected | RAPIDS | Y | Y | N |
| Phone WiFi Visible | RAPIDS | Y | Y | N |
| Fitbit Calories Intraday | RAPIDS | Y | Y | Y |
| Fitbit Data Yield | RAPIDS | N | N | N |
| Fitbit Heart Rate Summary | RAPIDS | N | N | N |
| Fitbit Heart Rate Intraday | RAPIDS | N | N | N |
| Fitbit Sleep Summary | RAPIDS | N | N | N |
| Fitbit Sleep Intraday | RAPIDS | Y | Y | Y |
| Fitbit Sleep Intraday | PRICE | Y | Y | Y |
| Fitbit Steps Summary | RAPIDS | N | N | N |
| Fitbit Steps Intraday | RAPIDS | N | N | N |
@ -242,3 +245,51 @@ Checklist
|weekend|OK|OK|fitbit|
|beforeMarchEvent|OK|OK|fitbit|
|beforeNovemberEvent|OK|OK|fitbit|
## Fitbit Sleep Summary
Description
- A main sleep episode that starts on Fri 20:00:00 and ends on Sat 02:00:00. This episode starts after 11am (Last Night End) which will be considered as today's (Fri) data.
- A nap that starts on Sat 04:00:00 and ends on Sat 06:00:00. This episode starts before 11am (Last Night End) which will be considered as yesterday's (Fri) data.
- A nap that starts on Sat 13:00:00 and ends on Sat 15:00:00. This episode starts after 11am (Last Night End) which will be considered as today's (Sat) data.
- A main sleep that starts on Sun 01:00:00 and ends on Sun 12:00:00. This episode starts before 11am (Last Night End) which will be considered as yesterday's (Sat) data.
- A main sleep that starts on Sun 23:00:00 and ends on Mon 07:00:00. This episode starts after 11am (Last Night End) which will be considered as today's (Sun) data.
- Any segment shorter than one day will be ignored for sleep RAPIDS features.
Checklist
|time segment| single tz | multi tz|platform|
|-|-|-|-|
|30min|OK|OK|fitbit|
|morning|OK|OK|fitbit|
|daily|OK|OK|fitbit|
|threeday|OK|OK|fitbit|
|weekend|OK|OK|fitbit|
|beforeMarchEvent|OK|OK|fitbit|
|beforeNovemberEvent|OK|OK|fitbit|
## Fitbit Sleep Intraday
Description
- A five-minute main sleep episode with asleep-classic level on Fri 11:00:00.
- An eight-hour main sleep episode on Fri 17:00:00. It is split into 2 parts for daily segment: a seven-hour sleep episode on Fri 17:00:00 and an one-hour sleep episode on Sat 00:00:00.
- A two-hour nap on Sat 01:00:00 that will be ignored for main sleep features.
- An one-hour nap on Sat 13:00:00 that will be ignored for main sleep features.
- An eight-hour main sleep episode on Sat 22:00:00. This episode ends on Sun 08:00:00 (NY) for March and Sun 06:00:00 (NY) for Novembers due to daylight savings. It will be considered for `beforeMarchEvent` segment and ignored for `beforeNovemberEvent` segment.
- A nine-hour main sleep episode on Sun 11:00:00. Start time will be assigned as NY time zone and converted to 14:00:00.
- A seven-hour main sleep episode on Mon 06:00:00. This episode will be split into two parts: a five-hour sleep episode on Mon 06:00:00 and a two-hour sleep episode on Mon 11:00:00. The first part will be discarded as it is before 11am (Last Night End)
- Any segment shorter than one day will be ignored for sleep PRICE features.
Checklist
|time segment| single tz | multi tz|platform|
|-|-|-|-|
|30min|OK|OK|fitbit|
|morning|OK|OK|fitbit|
|daily|OK|OK|fitbit|
|threeday|OK|OK|fitbit|
|weekend|OK|OK|fitbit|
|beforeMarchEvent|OK|OK|fitbit|
|beforeNovemberEvent|OK|OK|fitbit|

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@ -9,7 +9,7 @@ Sensor parameters description for `[FITBIT_SLEEP_INTRADAY]`:
## RAPIDS provider
!!! hint "Understanding RAPIDS features"
[This diagram](../../img/sleep_intraday_rapids.png) will help you understand how sleep episodes are chunked and grouped within time segments and `LNE-LNE` intervals for the RAPIDS provider.
[This diagram](../../img/sleep_intraday_rapids.png) will help you understand how sleep episodes are chunked and grouped within time segments for the RAPIDS provider.
!!! info "Available time segments"
@ -35,8 +35,6 @@ Parameters description for `[FITBIT_SLEEP_INTRADAY][PROVIDERS][RAPIDS]`:
|`[FEATURES]` | Features to be computed from sleep intraday data, see table below |
|`[SLEEP_LEVELS]` | Fitbits sleep API Version 1 only provides `CLASSIC` records. However, Version 1.2 provides 2 types of records: `CLASSIC` and `STAGES`. `STAGES` is only available in devices with a heart rate sensor and even those devices will fail to report it if the battery is low or the device is not tight enough. While `CLASSIC` contains 3 sleep levels (`awake`, `restless`, and `asleep`), `STAGES` contains 4 sleep levels (`wake`, `deep`, `light`, `rem`). To make it consistent, RAPIDS groups them into 2 `UNIFIED` sleep levels: `awake` (`CLASSIC`: `awake` and `restless`; `STAGES`: `wake`) and `asleep` (`CLASSIC`: `asleep`; `STAGES`: `deep`, `light`, and `rem`). In this section, there is a boolean flag named `INCLUDE_ALL_GROUPS` that if set to TRUE, computes LEVELS_AND_TYPES features grouping all levels together in a single `all` category.
|`[SLEEP_TYPES]` | Types of sleep to be included in the feature extraction computation. There are three sleep types: `main`, `nap`, and `all`. The `all` type means both main sleep and naps are considered.
|`[LAST_NIGHT_END]`| All resampled sleep rows (bin interval: one minute) that started after this time will be included in the feature computation. It ranges from 0 (midnight) to 1439 (23:59) which denotes the number of minutes after midnight. If a segment is longer than one day, this value is applied every day.
|`[ROUTINE_REFERENCE_TIME]`| The reference point from which the `[ROUTINE]` features are computed, it can be `MIDNIGHT` or `START_OF_THE_SEGMENT`, default is `MIDNIGHT`. If you have multiple time segments per day it might be more informative to set this flag to `START_OF_THE_SEGMENT`.
Features description for `[FITBIT_SLEEP_INTRADAY][PROVIDERS][RAPIDS][LEVELS_AND_TYPES]`:
@ -72,8 +70,8 @@ Features description for `[FITBIT_SLEEP_INTRADAY][PROVIDERS][RAPIDS]` RATIOS `[W
|Feature                            |Units |Description |
|--------------------------------- |-------------- |-------------------------------------------------------------|
|ratiocount`[TYPE]`within`[LEVEL]` |- |Ratio between the **count** of episodes of a single sleep `[LEVEL]` during `main` sleep divided by the **count** of episodes of a single sleep `[LEVEL]` during `main` **and** `nap`. This answers the question: are `rem` episodes more frequent during `main` than `nap` sleep? We do not provide the ratio for `nap` because is complementary. ($countepisode[remstages][main] / countepisode[remstages][all]$)
|ratioduration`[TYPE]`within`[LEVEL]` |- |Ratio between the **duration** of episodes of a single sleep `[LEVEL]` during `main` sleep divided by the **duration** of episodes of a single sleep `[LEVEL]` during `main` **and** `nap`. This answers the question: is `rem` time more frequent during `main` than `nap` sleep? We do not provide the ratio for `nap` because is complementary. ($countepisode[remstages][main] / countepisode[remstages][all]$)
|ratiocountmainwithin`[LEVEL]` |- |Ratio between the **count** of episodes of a single sleep `[LEVEL]` during `main` sleep divided by the **count** of episodes of a single sleep `[LEVEL]` during `main` **and** `nap`. This answers the question: are `rem` episodes more frequent during `main` than `nap` sleep? We do not provide the ratio for `nap` because is complementary. ($countepisode[remstages][main] / countepisode[remstages][all]$)
|ratiodurationmainwithin`[LEVEL]` |- |Ratio between the **duration** of episodes of a single sleep `[LEVEL]` during `main` sleep divided by the **duration** of episodes of a single sleep `[LEVEL]` during `main` **and** `nap`. This answers the question: is `rem` time more frequent during `main` than `nap` sleep? We do not provide the ratio for `nap` because is complementary. ($countepisode[remstages][main] / countepisode[remstages][all]$)
Features description for `[FITBIT_SLEEP_INTRADAY][PROVIDERS][RAPIDS]` RATIOS `[WITHIN_TYPES]`:
@ -84,27 +82,15 @@ Features description for `[FITBIT_SLEEP_INTRADAY][PROVIDERS][RAPIDS]` RATIOS `[W
|ratioduration`[LEVEL]`within`[TYPE]` |-|Ratio between the **duration** of episodes of a single sleep `[LEVEL]` and the **duration** of all episodes of all levels during either `main` or `nap` sleep types. This answers the question: what percentage of all `wake`, `deep`, `light`, and `rem` time was `rem` during `main`/`nap` sleep time? (e.g., $sumduration[remstages][main] / sumduration[all][main]$)
Features description for `[FITBIT_SLEEP_INTRADAY][PROVIDERS][RAPIDS][ROUTINE]`:
|Feature |Units |Description |
|--------------------------------- |-------------- |-------------------------------------------------------------|
|starttimefirstmainsleep |minutes |Start time (in minutes since `ROUTINE_REFERENCE_TIME`) of the first main sleep episode after `INCLUDE_EPISODES_LATER_THAN`.
|endtimelastmainsleep |minutes |End time (in minutes since `ROUTINE_REFERENCE_TIME`) of the last main sleep episode after `INCLUDE_EPISODES_LATER_THAN`.
|starttimefirstnap |minutes |Start time (in minutes since `ROUTINE_REFERENCE_TIME`) of the first nap episode after `INCLUDE_EPISODES_LATER_THAN`.
|endtimelastnap |minutes |End time (in minutes since `ROUTINE_REFERENCE_TIME`) of the last nap episode after `INCLUDE_EPISODES_LATER_THAN`.
!!! note "Assumptions/Observations"
1. [This diagram](../../img/sleep_intraday_rapids.png) will help you understand how sleep episodes are chunked and grouped within time segments and `LNE-LNE` intervals for the RAPIDS provider.
1. [This diagram](../../img/sleep_intraday_rapids.png) will help you understand how sleep episodes are chunked and grouped within time segments for the RAPIDS provider.
1. Features listed in `[LEVELS_AND_TYPES]` are computed for any levels and types listed in `[SLEEP_LEVELS]` or `[SLEEP_TYPES]`. For example if `STAGES` only contains `[rem, light]` you will not get `countepisode[wake|deep][TYPE]` or sum, max, min, avg, median, or std `duration`. Levels or types in these lists do not influence `RATIOS` or `ROUTINE` features.
2. Any `[LEVEL]` grouping is done within the elements of each class `CLASSIC`, `STAGES`, and `UNIFIED`. That is, we never combine `CLASSIC` or `STAGES` types to compute features.
3. The categories for `all` levels (when `INCLUDE_ALL_GROUPS` is `True`) and `all` `SLEEP_TYPES` are not considered for `RATIOS` features as they are always 1.
3. These features can be computed in time segments of any length, but only the 1-minute sleep chunks within each segment instance will be used.
4. Within any time segment instance, any chunks with a local time before `LAST_NIGHT_END` will be discarded. The default `LNE` is 00:00 so no chunks are ignored.
5. `ROUTINE_REFERENCE_TIME` influences all the `[ROUTINE]` features. If `MIDNIGHT`, the reference for these times is 00:00, if `START_OF_THE_SEGMENT`, the reference time is the start of each segment instance.
## PRICE provider

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@ -5,7 +5,7 @@ import numpy as np
def mergeSleepEpisodes(sleep_data, cols_for_groupby):
sleep_episodes = pd.DataFrame(columns=["device_id", "type_episode_id", "level_episode_id", "level", "unified_level", "is_main_sleep", "type", "timestamp", "duration"])
if not sleep_data.empty:
sleep_data = sleep_data.groupby(by=cols_for_groupby)
sleep_data = sleep_data.groupby(by=cols_for_groupby, sort=False)
sleep_episodes = sleep_data[["timestamp"]].first()
sleep_episodes["duration"] = sleep_data["duration"].sum()

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@ -34,7 +34,7 @@ def mergeSleepEpisodes(sleep_data, cols_for_groupby, base_sleep_levels):
sleep_episodes = pd.DataFrame(columns=["local_segment", "durationinbed", "start_timestamp", "end_timestamp", "local_start_date_time", "local_end_date_time"] + ["duration" + x for x in sleep_level_with_group])
if cols_for_groupby and (not sleep_data.empty):
sleep_data = sleep_data.groupby(by=cols_for_groupby)
sleep_data = sleep_data.groupby(by=cols_for_groupby, sort=False)
sleep_episodes = sleep_data[["duration"]].sum().rename(columns={"duration": "durationinbed"})
sleep_episodes["start_timestamp"] = sleep_data["start_timestamp"].first()
@ -64,6 +64,9 @@ def extractDailyFeatures(sleep_data):
daily_features["ratio" + col + "withinmain"] = daily_features[col + "main"] / daily_features["durationinbedmain"]
daily_features.reset_index(inplace=True)
# Only keep one row per fake_date
daily_features.drop_duplicates(subset=["fake_date"], keep="first", inplace=True)
# The day of the week with Monday=0, Sunday=6. Set Friday and Saturday as Weekend, others as Weekday.
daily_features["is_weekend"] = pd.to_datetime(daily_features["fake_date"]).dt.dayofweek.apply(lambda x: 1 if (x == 4 or x == 5) else 0)
@ -71,9 +74,9 @@ def extractDailyFeatures(sleep_data):
def statsOfDailyFeatures(daily_features, day_type, sleep_levels, intraday_features_to_compute, sleep_intraday_features, levels_include_all_groups):
if day_type == "WEEKEND":
daily_features = daily_features[daily_features["is_weekend"] == 0]
elif day_type == "WEEK":
daily_features = daily_features[daily_features["is_weekend"] == 1]
elif day_type == "WEEK":
daily_features = daily_features[daily_features["is_weekend"] == 0]
elif day_type == "ALL":
pass
else:
@ -190,10 +193,11 @@ def price_features(sensor_data_files, time_segment, provider, filter_data_by_seg
return sleep_intraday_features
# Discard segments shorter than one day
sleep_intraday_data["segment_length"] = (sleep_intraday_data["segment_end_timestamp"] - sleep_intraday_data["segment_start_timestamp"]) / 1000 # in seconds
sleep_intraday_data[["segment_start_datetime", "segment_end_datetime"]] = sleep_intraday_data["local_segment"].str.split("#", expand=True)[1].str.split(",", expand=True).astype("datetime64[ns]")
sleep_intraday_data["segment_length"] = (sleep_intraday_data["segment_end_datetime"] - sleep_intraday_data["segment_start_datetime"]).dt.total_seconds()
sleep_intraday_data = sleep_intraday_data[sleep_intraday_data["segment_length"] >= 24 * 60 * 60 - 1]
del sleep_intraday_data["segment_length"]
for col in ["segment_start_datetime", "segment_end_datetime", "segment_length"]:
del sleep_intraday_data[col]
# Select main sleep records
sleep_intraday_data = sleep_intraday_data[sleep_intraday_data["is_main_sleep"] == 1]

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@ -19,11 +19,11 @@ def featuresFullNames(intraday_features_to_compute, sleep_levels_to_compute, sle
features_fullname.extend(["ratio" + x[0] + x[1] for x in itertools.product(intraday_features_to_compute["RATIOS_TYPE"], sleep_level_with_group)])
if "ACROSS_TYPES" in intraday_features_to_compute["RATIOS_SCOPE"] and "main" in sleep_types_to_compute:
features_fullname.extend(["ratio" + x + "main" for x in intraday_features_to_compute["RATIOS_TYPE"]])
if "WITHIN_LEVELS" in intraday_features_to_compute["RATIOS_SCOPE"]:
features_fullname.extend(["ratio" + x[0] + x[1] + "within" + x[2] for x in itertools.product(intraday_features_to_compute["RATIOS_TYPE"], set(sleep_types_to_compute) & set(["main", "nap"]), sleep_level_with_group)])
if "WITHIN_LEVELS" in intraday_features_to_compute["RATIOS_SCOPE"] and "main" in sleep_types_to_compute:
features_fullname.extend(["ratio" + x[0] + "mainwithin" + x[1] for x in itertools.product(intraday_features_to_compute["RATIOS_TYPE"], sleep_level_with_group)])
if "WITHIN_TYPES" in intraday_features_to_compute["RATIOS_SCOPE"]:
features_fullname.extend(["ratio" + x[0] + x[1] + "within" + x[2] for x in itertools.product(intraday_features_to_compute["RATIOS_TYPE"], sleep_level_with_group, set(sleep_types_to_compute) & set(["main", "nap"]))])
features_fullname.extend(intraday_features_to_compute["ROUTINE"])
return features_fullname
def mergeSleepEpisodes(sleep_data, cols_for_groupby):
@ -31,7 +31,7 @@ def mergeSleepEpisodes(sleep_data, cols_for_groupby):
sleep_episodes = pd.DataFrame(columns=["local_segment", "duration", "start_timestamp", "end_timestamp", "local_start_date_time", "local_end_date_time"])
if cols_for_groupby and (not sleep_data.empty):
sleep_data = sleep_data.groupby(by=cols_for_groupby)
sleep_data = sleep_data.groupby(by=cols_for_groupby, sort=False)
sleep_episodes = sleep_data[["duration"]].sum()
sleep_episodes["start_timestamp"] = sleep_data["start_timestamp"].first()
sleep_episodes["end_timestamp"] = sleep_data["end_timestamp"].last()
@ -93,6 +93,8 @@ def allStatsFeatures(sleep_data, base_sleep_levels, base_sleep_types, features,
sleep_episodes_none = sleep_data[sleep_data["is_main_sleep"] == (1 if sleep_type == "main" else 0)] if sleep_type != "all" else sleep_data
sleep_episodes_none = mergeSleepEpisodes(sleep_episodes_none, ["local_segment", "type_episode_id"])
sleep_intraday_features = pd.concat([sleep_intraday_features, statsFeatures(sleep_episodes_none, features, "all" + sleep_type)], axis=1)
sleep_intraday_features.fillna(0, inplace=True)
return sleep_intraday_features
@ -134,6 +136,7 @@ def ratiosFeatures(sleep_intraday_features, ratios_types, ratios_scopes, sleep_l
if "ACROSS_TYPES" in ratios_scopes:
for ratios_type in ratios_types:
agg_func = "countepisode" if ratios_type == "count" else "sumduration"
# We do not provide the ratio for nap because is complementary.
across_types = (sleep_intraday_features[agg_func + "allmain"] / sleep_intraday_features[agg_func + "allall"]).to_frame().rename(columns={0: "ratio" + ratios_type + "main"})
sleep_intraday_features = pd.concat([sleep_intraday_features, across_types], axis=1)
@ -162,7 +165,7 @@ def ratiosFeatures(sleep_intraday_features, ratios_types, ratios_scopes, sleep_l
agg_func = "countepisode" if ratios_type == "count" else "sumduration"
# WITHIN LEVELS
if "WITHIN_LEVELS" in ratios_scopes:
if ("WITHIN_LEVELS" in ratios_scopes) and (sleep_type == "main"): # We do not provide the ratio for nap because is complementary.
within_levels = (sleep_intraday_features[agg_func + sleep_level + sleep_level_group + sleep_type] / sleep_intraday_features[agg_func + sleep_level + sleep_level_group + "all"]).to_frame().rename(columns={0: "ratio" + ratios_type + sleep_type + "within" + sleep_level + sleep_level_group})
sleep_intraday_features = pd.concat([sleep_intraday_features, within_levels], axis=1)
@ -174,47 +177,11 @@ def ratiosFeatures(sleep_intraday_features, ratios_types, ratios_scopes, sleep_l
return sleep_intraday_features
def singleSleepTypeRoutineFeatures(sleep_intraday_data, routine, routine_reference_time, sleep_type, sleep_intraday_features):
sleep_intraday_data = sleep_intraday_data[sleep_intraday_data["is_main_sleep"] == (1 if sleep_type == "mainsleep" else 0)]
if "starttimefirst" + sleep_type in routine:
grouped_first = sleep_intraday_data.groupby(["local_segment"]).first()
if routine_reference_time == "MIDNIGHT":
sleep_intraday_features["starttimefirst" + sleep_type] = grouped_first["local_start_date_time"].apply(lambda x: x.hour * 60 + x.minute + x.second / 60)
elif routine_reference_time == "START_OF_THE_SEGMENT":
sleep_intraday_features["starttimefirst" + sleep_type] = (grouped_first["start_timestamp"] - grouped_first["segment_start_timestamp"]) / (60 * 1000)
else:
raise ValueError("Please check FITBIT_SLEEP_INTRADAY section of config.yaml: ROUTINE_REFERENCE_TIME can only be MIDNIGHT or START_OF_THE_SEGMENT.")
if "endtimelast" + sleep_type in routine:
grouped_last = sleep_intraday_data.groupby(["local_segment"]).last()
if routine_reference_time == "MIDNIGHT":
sleep_intraday_features["endtimelast" + sleep_type] = grouped_last["local_end_date_time"].apply(lambda x: x.hour * 60 + x.minute + x.second / 60)
elif routine_reference_time == "START_OF_THE_SEGMENT":
sleep_intraday_features["endtimelast" + sleep_type] = (grouped_last["end_timestamp"] - grouped_last["segment_start_timestamp"]) / (60 * 1000)
else:
raise ValueError("Please check FITBIT_SLEEP_INTRADAY section of config.yaml: ROUTINE_REFERENCE_TIME can only be MIDNIGHT or START_OF_THE_SEGMENT.")
return sleep_intraday_features
def routineFeatures(sleep_intraday_data, routine, routine_reference_time, sleep_type, sleep_intraday_features):
if "starttimefirstmainsleep" in routine or "endtimelastmainsleep" in routine:
sleep_intraday_features = singleSleepTypeRoutineFeatures(sleep_intraday_data, routine, routine_reference_time, "mainsleep", sleep_intraday_features)
if "starttimefirstnap" in routine or "endtimelastnap" in routine:
sleep_intraday_features = singleSleepTypeRoutineFeatures(sleep_intraday_data, routine, routine_reference_time, "nap", sleep_intraday_features)
return sleep_intraday_features
def rapids_features(sensor_data_files, time_segment, provider, filter_data_by_segment, *args, **kwargs):
sleep_intraday_data = pd.read_csv(sensor_data_files["sensor_data"])
last_night_end = provider["LAST_NIGHT_END"]
routine_reference_time = provider["ROUTINE_REFERENCE_TIME"]
requested_intraday_features = provider["FEATURES"]
levels_include_all_groups = provider["SLEEP_LEVELS"]["INCLUDE_ALL_GROUPS"]
requested_sleep_levels = provider["SLEEP_LEVELS"]
@ -223,8 +190,7 @@ def rapids_features(sensor_data_files, time_segment, provider, filter_data_by_se
# Name of the features this function can compute
base_intraday_features = {"LEVELS_AND_TYPES": ["countepisode", "sumduration", "maxduration", "minduration", "avgduration", "medianduration", "stdduration"],
"RATIOS_TYPE": ["count", "duration"],
"RATIOS_SCOPE": ["ACROSS_LEVELS", "ACROSS_TYPES", "WITHIN_LEVELS", "WITHIN_TYPES"],
"ROUTINE": ["starttimefirstmainsleep", "endtimelastmainsleep", "starttimefirstnap", "endtimelastnap"]}
"RATIOS_SCOPE": ["ACROSS_LEVELS", "ACROSS_TYPES", "WITHIN_LEVELS", "WITHIN_TYPES"]}
base_sleep_levels = {"CLASSIC": ["awake", "restless", "asleep"],
"STAGES": ["wake", "deep", "light", "rem"],
"UNIFIED": ["awake", "asleep"]}
@ -238,12 +204,6 @@ def rapids_features(sensor_data_files, time_segment, provider, filter_data_by_se
# Full names
features_fullnames = featuresFullNames(intraday_features_to_compute, sleep_levels_to_compute, sleep_types_to_compute, levels_include_all_groups)
sleep_intraday_features = pd.DataFrame(columns=features_fullnames)
# Any 1-minute sleep chuncks with a local time before LAST_NIGHT_END will be discarded.
start_minutes = sleep_intraday_data.groupby("start_timestamp").first()["local_time"].apply(lambda x: int(x.split(":")[0]) * 60 + int(x.split(":")[1]) + int(x.split(":")[2]) / 60).to_frame().rename(columns={"local_time": "start_minutes"}).reset_index()
sleep_intraday_data = sleep_intraday_data.merge(start_minutes, on="start_timestamp", how="left")
sleep_intraday_data = sleep_intraday_data[sleep_intraday_data["start_minutes"] >= last_night_end]
del sleep_intraday_data["start_minutes"]
sleep_intraday_data = filter_data_by_segment(sleep_intraday_data, time_segment)
@ -260,9 +220,6 @@ def rapids_features(sensor_data_files, time_segment, provider, filter_data_by_se
# RATIOS: only compute requested features
sleep_intraday_features = ratiosFeatures(sleep_intraday_features, intraday_features_to_compute["RATIOS_TYPE"], intraday_features_to_compute["RATIOS_SCOPE"], sleep_levels_to_compute, sleep_types_to_compute)
# ROUTINE: only compute requested features
sleep_intraday_features = routineFeatures(sleep_intraday_data, intraday_features_to_compute["ROUTINE"], routine_reference_time, sleep_types_to_compute, sleep_intraday_features)
# Reset index and discard features which are not requested by user
sleep_intraday_features.index.name = "local_segment"
sleep_intraday_features.reset_index(inplace=True)

View File

@ -71,7 +71,7 @@ def chunk_episodes(sensor_episodes):
# Merge episodes
cols_for_groupby = [col for col in sensor_episodes.columns if col not in ["timestamps_segment", "timestamp", "assigned_segments", "start_datetime", "end_datetime", "start_timestamp", "end_timestamp", "duration", "chunked_start_timestamp", "chunked_end_timestamp"]]
sensor_episodes_grouped = sensor_episodes.groupby(by=cols_for_groupby)
sensor_episodes_grouped = sensor_episodes.groupby(by=cols_for_groupby, sort=False)
merged_sensor_episodes = sensor_episodes_grouped[["duration"]].sum()
merged_sensor_episodes["start_timestamp"] = sensor_episodes_grouped["chunked_start_timestamp"].first()

View File

@ -0,0 +1,23 @@
timestamp,device_id,type_episode_id,duration,level,is_main_sleep,type,local_date_time
0,fitbit,0,300,asleep,1,classic,2020-03-06 11:00:00
0,fitbit,1,14400,deep,1,stages,2020-03-06 17:00:00
0,fitbit,1,7200,wake,1,stages,2020-03-06 21:00:00
0,fitbit,1,7200,light,1,stages,2020-03-06 23:00:00
0,fitbit,2,3600,restless,0,classic,2020-03-07 01:00:00
0,fitbit,2,3600,asleep,0,classic,2020-03-07 02:00:00
0,fitbit,3,3600,restless,0,classic,2020-03-07 13:00:00
0,fitbit,4,3600,rem,1,stages,2020-03-07 22:00:00
0,fitbit,4,28800,deep,1,stages,2020-03-07 23:00:00
0,fitbit,5,32400,deep,1,stages,2020-03-08 11:00:00
0,fitbit,6,25200,deep,1,stages,2020-03-09 06:00:00
0,fitbit,0,300,asleep,1,classic,2020-10-30 11:00:00
0,fitbit,1,14400,deep,1,stages,2020-10-30 17:00:00
0,fitbit,1,7200,wake,1,stages,2020-10-30 21:00:00
0,fitbit,1,7200,light,1,stages,2020-10-30 23:00:00
0,fitbit,2,3600,restless,0,classic,2020-10-31 01:00:00
0,fitbit,2,3600,asleep,0,classic,2020-10-31 02:00:00
0,fitbit,3,3600,restless,0,classic,2020-10-31 13:00:00
0,fitbit,4,3600,rem,1,stages,2020-10-31 22:00:00
0,fitbit,4,28800,deep,1,stages,2020-10-31 23:00:00
0,fitbit,5,32400,deep,1,stages,2020-11-01 11:00:00
0,fitbit,6,25200,deep,1,stages,2020-11-02 06:00:00
1 timestamp device_id type_episode_id duration level is_main_sleep type local_date_time
2 0 fitbit 0 300 asleep 1 classic 2020-03-06 11:00:00
3 0 fitbit 1 14400 deep 1 stages 2020-03-06 17:00:00
4 0 fitbit 1 7200 wake 1 stages 2020-03-06 21:00:00
5 0 fitbit 1 7200 light 1 stages 2020-03-06 23:00:00
6 0 fitbit 2 3600 restless 0 classic 2020-03-07 01:00:00
7 0 fitbit 2 3600 asleep 0 classic 2020-03-07 02:00:00
8 0 fitbit 3 3600 restless 0 classic 2020-03-07 13:00:00
9 0 fitbit 4 3600 rem 1 stages 2020-03-07 22:00:00
10 0 fitbit 4 28800 deep 1 stages 2020-03-07 23:00:00
11 0 fitbit 5 32400 deep 1 stages 2020-03-08 11:00:00
12 0 fitbit 6 25200 deep 1 stages 2020-03-09 06:00:00
13 0 fitbit 0 300 asleep 1 classic 2020-10-30 11:00:00
14 0 fitbit 1 14400 deep 1 stages 2020-10-30 17:00:00
15 0 fitbit 1 7200 wake 1 stages 2020-10-30 21:00:00
16 0 fitbit 1 7200 light 1 stages 2020-10-30 23:00:00
17 0 fitbit 2 3600 restless 0 classic 2020-10-31 01:00:00
18 0 fitbit 2 3600 asleep 0 classic 2020-10-31 02:00:00
19 0 fitbit 3 3600 restless 0 classic 2020-10-31 13:00:00
20 0 fitbit 4 3600 rem 1 stages 2020-10-31 22:00:00
21 0 fitbit 4 28800 deep 1 stages 2020-10-31 23:00:00
22 0 fitbit 5 32400 deep 1 stages 2020-11-01 11:00:00
23 0 fitbit 6 25200 deep 1 stages 2020-11-02 06:00:00

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@ -0,0 +1,12 @@
test_time,device_id,type_episode_id,duration,level,is_main_sleep,type
Fri 11:00:00,fitbit,0,300,asleep,1,classic
Fri 17:00:00,fitbit,1,14400,deep,1,stages
Fri 21:00:00,fitbit,1,7200,wake,1,stages
Fri 23:00:00,fitbit,1,7200,light,1,stages
Sat 01:00:00,fitbit,2,3600,restless,0,classic
Sat 02:00:00,fitbit,2,3600,asleep,0,classic
Sat 13:00:00,fitbit,3,3600,restless,0,classic
Sat 22:00:00,fitbit,4,3600,rem,1,stages
Sat 23:00:00,fitbit,4,28800,deep,1,stages
Sun 11:00:00,fitbit,5,32400,deep,1,stages
Mon 06:00:00,fitbit,6,25200,deep,1,stages
1 test_time device_id type_episode_id duration level is_main_sleep type
2 Fri 11:00:00 fitbit 0 300 asleep 1 classic
3 Fri 17:00:00 fitbit 1 14400 deep 1 stages
4 Fri 21:00:00 fitbit 1 7200 wake 1 stages
5 Fri 23:00:00 fitbit 1 7200 light 1 stages
6 Sat 01:00:00 fitbit 2 3600 restless 0 classic
7 Sat 02:00:00 fitbit 2 3600 asleep 0 classic
8 Sat 13:00:00 fitbit 3 3600 restless 0 classic
9 Sat 22:00:00 fitbit 4 3600 rem 1 stages
10 Sat 23:00:00 fitbit 4 28800 deep 1 stages
11 Sun 11:00:00 fitbit 5 32400 deep 1 stages
12 Mon 06:00:00 fitbit 6 25200 deep 1 stages

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@ -324,19 +324,19 @@ FITBIT_DATA_STREAMS:
# AVAILABLE:
fitbitjson_mysql:
DATABASE_GROUP: MY_GROUP
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after the midnight. By default, 660 (11:00).
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after midnight. By default, 660 (11:00).
fitbitparsed_mysql:
DATABASE_GROUP: MY_GROUP
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after the midnight. By default, 660 (11:00).
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after midnight. By default, 660 (11:00).
fitbitjson_csv:
FOLDER: data/external/fitbit_csv
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after the midnight. By default, 660 (11:00).
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after midnight. By default, 660 (11:00).
fitbitparsed_csv:
FOLDER: tests/data/external/aware_csv
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after the midnight. By default, 660 (11:00).
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after midnight. By default, 660 (11:00).
# Sensors ------
FITBIT_CALORIES_INTRADAY:
@ -393,27 +393,24 @@ FITBIT_SLEEP_SUMMARY:
# See https://www.rapids.science/latest/features/fitbit-sleep-intraday/
FITBIT_SLEEP_INTRADAY:
CONTAINER: sleep_intraday
CONTAINER: fitbit_sleep_intraday_raw.csv
PROVIDERS:
RAPIDS:
COMPUTE: False
COMPUTE: True
FEATURES:
LEVELS_AND_TYPES: [countepisode, sumduration, maxduration, minduration, avgduration, medianduration, stdduration]
RATIOS_TYPE: [count, duration]
RATIOS_SCOPE: [ACROSS_LEVELS, ACROSS_TYPES, WITHIN_LEVELS, WITHIN_TYPES]
ROUTINE: [starttimefirstmainsleep, endtimelastmainsleep, starttimefirstnap, endtimelastnap]
SLEEP_LEVELS:
INCLUDE_ALL_GROUPS: True
CLASSIC: [awake, restless, asleep]
STAGES: [wake, deep, light, rem]
UNIFIED: [awake, asleep]
SLEEP_TYPES: [main, nap, all]
LAST_NIGHT_END: 0 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after the midnight
ROUTINE_REFERENCE_TIME: MIDNIGHT # chosen from "MIDNIGHT" and "START_OF_THE_SEGMENT"
SRC_SCRIPT: src/features/fitbit_sleep_intraday/rapids/main.py
PRICE:
COMPUTE: False
COMPUTE: True
FEATURES: [avgduration, avgratioduration, avgstarttimeofepisodemain, avgendtimeofepisodemain, avgmidpointofepisodemain, stdstarttimeofepisodemain, stdendtimeofepisodemain, stdmidpointofepisodemain, socialjetlag, rmssdmeanstarttimeofepisodemain, rmssdmeanendtimeofepisodemain, rmssdmeanmidpointofepisodemain, rmssdmedianstarttimeofepisodemain, rmssdmedianendtimeofepisodemain, rmssdmedianmidpointofepisodemain]
SLEEP_LEVELS:
INCLUDE_ALL_GROUPS: True
@ -421,7 +418,7 @@ FITBIT_SLEEP_INTRADAY:
STAGES: [wake, deep, light, rem]
UNIFIED: [awake, asleep]
DAY_TYPES: [WEEKEND, WEEK, ALL]
LAST_NIGHT_END: 660 # number of minutes after the midnight (11:00) 11*60
LAST_NIGHT_END: 660 # number of minutes after midnight (11:00) 11*60
SRC_SCRIPT: src/features/fitbit_sleep_intraday/price/main.py
# See https://www.rapids.science/latest/features/fitbit-steps-summary/

View File

@ -324,19 +324,19 @@ FITBIT_DATA_STREAMS:
# AVAILABLE:
fitbitjson_mysql:
DATABASE_GROUP: MY_GROUP
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after the midnight. By default, 660 (11:00).
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after midnight. By default, 660 (11:00).
fitbitparsed_mysql:
DATABASE_GROUP: MY_GROUP
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after the midnight. By default, 660 (11:00).
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after midnight. By default, 660 (11:00).
fitbitjson_csv:
FOLDER: data/external/fitbit_csv
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after the midnight. By default, 660 (11:00).
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after midnight. By default, 660 (11:00).
fitbitparsed_csv:
FOLDER: tests/data/external/aware_csv
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after the midnight. By default, 660 (11:00).
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after midnight. By default, 660 (11:00).
# Sensors ------
@ -394,27 +394,24 @@ FITBIT_SLEEP_SUMMARY:
# See https://www.rapids.science/latest/features/fitbit-sleep-intraday/
FITBIT_SLEEP_INTRADAY:
CONTAINER: sleep_intraday
CONTAINER: fitbit_sleep_intraday_raw.csv
PROVIDERS:
RAPIDS:
COMPUTE: False
COMPUTE: True
FEATURES:
LEVELS_AND_TYPES: [countepisode, sumduration, maxduration, minduration, avgduration, medianduration, stdduration]
RATIOS_TYPE: [count, duration]
RATIOS_SCOPE: [ACROSS_LEVELS, ACROSS_TYPES, WITHIN_LEVELS, WITHIN_TYPES]
ROUTINE: [starttimefirstmainsleep, endtimelastmainsleep, starttimefirstnap, endtimelastnap]
SLEEP_LEVELS:
INCLUDE_ALL_GROUPS: True
CLASSIC: [awake, restless, asleep]
STAGES: [wake, deep, light, rem]
UNIFIED: [awake, asleep]
SLEEP_TYPES: [main, nap, all]
LAST_NIGHT_END: 0 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after the midnight
ROUTINE_REFERENCE_TIME: MIDNIGHT # chosen from "MIDNIGHT" and "START_OF_THE_SEGMENT"
SRC_SCRIPT: src/features/fitbit_sleep_intraday/rapids/main.py
PRICE:
COMPUTE: False
COMPUTE: True
FEATURES: [avgduration, avgratioduration, avgstarttimeofepisodemain, avgendtimeofepisodemain, avgmidpointofepisodemain, stdstarttimeofepisodemain, stdendtimeofepisodemain, stdmidpointofepisodemain, socialjetlag, rmssdmeanstarttimeofepisodemain, rmssdmeanendtimeofepisodemain, rmssdmeanmidpointofepisodemain, rmssdmedianstarttimeofepisodemain, rmssdmedianendtimeofepisodemain, rmssdmedianmidpointofepisodemain]
SLEEP_LEVELS:
INCLUDE_ALL_GROUPS: True
@ -422,7 +419,7 @@ FITBIT_SLEEP_INTRADAY:
STAGES: [wake, deep, light, rem]
UNIFIED: [awake, asleep]
DAY_TYPES: [WEEKEND, WEEK, ALL]
LAST_NIGHT_END: 660 # number of minutes after the midnight (11:00) 11*60
LAST_NIGHT_END: 660 # number of minutes after midnight (11:00) 11*60
SRC_SCRIPT: src/features/fitbit_sleep_intraday/price/main.py
# See https://www.rapids.science/latest/features/fitbit-steps-summary/

View File

@ -324,19 +324,19 @@ FITBIT_DATA_STREAMS:
# AVAILABLE:
fitbitjson_mysql:
DATABASE_GROUP: MY_GROUP
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after the midnight. By default, 660 (11:00).
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after midnight. By default, 660 (11:00).
fitbitparsed_mysql:
DATABASE_GROUP: MY_GROUP
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after the midnight. By default, 660 (11:00).
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after midnight. By default, 660 (11:00).
fitbitjson_csv:
FOLDER: data/external/fitbit_csv
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after the midnight. By default, 660 (11:00).
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after midnight. By default, 660 (11:00).
fitbitparsed_csv:
FOLDER: tests/data/external/aware_csv
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after the midnight. By default, 660 (11:00).
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after midnight. By default, 660 (11:00).
# Sensors ------
FITBIT_CALORIES_INTRADAY:
@ -393,27 +393,24 @@ FITBIT_SLEEP_SUMMARY:
# See https://www.rapids.science/latest/features/fitbit-sleep-intraday/
FITBIT_SLEEP_INTRADAY:
CONTAINER: sleep_intraday
CONTAINER: fitbit_sleep_intraday_raw.csv
PROVIDERS:
RAPIDS:
COMPUTE: False
COMPUTE: True
FEATURES:
LEVELS_AND_TYPES: [countepisode, sumduration, maxduration, minduration, avgduration, medianduration, stdduration]
RATIOS_TYPE: [count, duration]
RATIOS_SCOPE: [ACROSS_LEVELS, ACROSS_TYPES, WITHIN_LEVELS, WITHIN_TYPES]
ROUTINE: [starttimefirstmainsleep, endtimelastmainsleep, starttimefirstnap, endtimelastnap]
SLEEP_LEVELS:
INCLUDE_ALL_GROUPS: True
CLASSIC: [awake, restless, asleep]
STAGES: [wake, deep, light, rem]
UNIFIED: [awake, asleep]
SLEEP_TYPES: [main, nap, all]
LAST_NIGHT_END: 0 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after the midnight
ROUTINE_REFERENCE_TIME: MIDNIGHT # chosen from "MIDNIGHT" and "START_OF_THE_SEGMENT"
SRC_SCRIPT: src/features/fitbit_sleep_intraday/rapids/main.py
PRICE:
COMPUTE: False
COMPUTE: True
FEATURES: [avgduration, avgratioduration, avgstarttimeofepisodemain, avgendtimeofepisodemain, avgmidpointofepisodemain, stdstarttimeofepisodemain, stdendtimeofepisodemain, stdmidpointofepisodemain, socialjetlag, rmssdmeanstarttimeofepisodemain, rmssdmeanendtimeofepisodemain, rmssdmeanmidpointofepisodemain, rmssdmedianstarttimeofepisodemain, rmssdmedianendtimeofepisodemain, rmssdmedianmidpointofepisodemain]
SLEEP_LEVELS:
INCLUDE_ALL_GROUPS: True
@ -421,7 +418,7 @@ FITBIT_SLEEP_INTRADAY:
STAGES: [wake, deep, light, rem]
UNIFIED: [awake, asleep]
DAY_TYPES: [WEEKEND, WEEK, ALL]
LAST_NIGHT_END: 660 # number of minutes after the midnight (11:00) 11*60
LAST_NIGHT_END: 660 # number of minutes after midnight (11:00) 11*60
SRC_SCRIPT: src/features/fitbit_sleep_intraday/price/main.py
# See https://www.rapids.science/latest/features/fitbit-steps-summary/

View File

@ -324,19 +324,19 @@ FITBIT_DATA_STREAMS:
# AVAILABLE:
fitbitjson_mysql:
DATABASE_GROUP: MY_GROUP
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after the midnight. By default, 660 (11:00).
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after midnight. By default, 660 (11:00).
fitbitparsed_mysql:
DATABASE_GROUP: MY_GROUP
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after the midnight. By default, 660 (11:00).
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after midnight. By default, 660 (11:00).
fitbitjson_csv:
FOLDER: data/external/fitbit_csv
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after the midnight. By default, 660 (11:00).
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after midnight. By default, 660 (11:00).
fitbitparsed_csv:
FOLDER: tests/data/external/aware_csv
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after the midnight. By default, 660 (11:00).
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after midnight. By default, 660 (11:00).
# Sensors ------
FITBIT_CALORIES_INTRADAY:
@ -393,27 +393,24 @@ FITBIT_SLEEP_SUMMARY:
# See https://www.rapids.science/latest/features/fitbit-sleep-intraday/
FITBIT_SLEEP_INTRADAY:
CONTAINER: sleep_intraday
CONTAINER: fitbit_sleep_intraday_raw.csv
PROVIDERS:
RAPIDS:
COMPUTE: False
COMPUTE: True
FEATURES:
LEVELS_AND_TYPES: [countepisode, sumduration, maxduration, minduration, avgduration, medianduration, stdduration]
RATIOS_TYPE: [count, duration]
RATIOS_SCOPE: [ACROSS_LEVELS, ACROSS_TYPES, WITHIN_LEVELS, WITHIN_TYPES]
ROUTINE: [starttimefirstmainsleep, endtimelastmainsleep, starttimefirstnap, endtimelastnap]
SLEEP_LEVELS:
INCLUDE_ALL_GROUPS: True
CLASSIC: [awake, restless, asleep]
STAGES: [wake, deep, light, rem]
UNIFIED: [awake, asleep]
SLEEP_TYPES: [main, nap, all]
LAST_NIGHT_END: 0 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after the midnight
ROUTINE_REFERENCE_TIME: MIDNIGHT # chosen from "MIDNIGHT" and "START_OF_THE_SEGMENT"
SRC_SCRIPT: src/features/fitbit_sleep_intraday/rapids/main.py
PRICE:
COMPUTE: False
COMPUTE: True
FEATURES: [avgduration, avgratioduration, avgstarttimeofepisodemain, avgendtimeofepisodemain, avgmidpointofepisodemain, stdstarttimeofepisodemain, stdendtimeofepisodemain, stdmidpointofepisodemain, socialjetlag, rmssdmeanstarttimeofepisodemain, rmssdmeanendtimeofepisodemain, rmssdmeanmidpointofepisodemain, rmssdmedianstarttimeofepisodemain, rmssdmedianendtimeofepisodemain, rmssdmedianmidpointofepisodemain]
SLEEP_LEVELS:
INCLUDE_ALL_GROUPS: True
@ -421,7 +418,7 @@ FITBIT_SLEEP_INTRADAY:
STAGES: [wake, deep, light, rem]
UNIFIED: [awake, asleep]
DAY_TYPES: [WEEKEND, WEEK, ALL]
LAST_NIGHT_END: 660 # number of minutes after the midnight (11:00) 11*60
LAST_NIGHT_END: 660 # number of minutes after midnight (11:00) 11*60
SRC_SCRIPT: src/features/fitbit_sleep_intraday/price/main.py
# See https://www.rapids.science/latest/features/fitbit-steps-summary/

View File

@ -324,19 +324,19 @@ FITBIT_DATA_STREAMS:
# AVAILABLE:
fitbitjson_mysql:
DATABASE_GROUP: MY_GROUP
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after the midnight. By default, 660 (11:00).
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after midnight. By default, 660 (11:00).
fitbitparsed_mysql:
DATABASE_GROUP: MY_GROUP
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after the midnight. By default, 660 (11:00).
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after midnight. By default, 660 (11:00).
fitbitjson_csv:
FOLDER: data/external/fitbit_csv
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after the midnight. By default, 660 (11:00).
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after midnight. By default, 660 (11:00).
fitbitparsed_csv:
FOLDER: tests/data/external/aware_csv
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after the midnight. By default, 660 (11:00).
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after midnight. By default, 660 (11:00).
# Sensors ------
@ -394,27 +394,24 @@ FITBIT_SLEEP_SUMMARY:
# See https://www.rapids.science/latest/features/fitbit-sleep-intraday/
FITBIT_SLEEP_INTRADAY:
CONTAINER: sleep_intraday
CONTAINER: fitbit_sleep_intraday_raw.csv
PROVIDERS:
RAPIDS:
COMPUTE: False
COMPUTE: True
FEATURES:
LEVELS_AND_TYPES: [countepisode, sumduration, maxduration, minduration, avgduration, medianduration, stdduration]
RATIOS_TYPE: [count, duration]
RATIOS_SCOPE: [ACROSS_LEVELS, ACROSS_TYPES, WITHIN_LEVELS, WITHIN_TYPES]
ROUTINE: [starttimefirstmainsleep, endtimelastmainsleep, starttimefirstnap, endtimelastnap]
SLEEP_LEVELS:
INCLUDE_ALL_GROUPS: True
CLASSIC: [awake, restless, asleep]
STAGES: [wake, deep, light, rem]
UNIFIED: [awake, asleep]
SLEEP_TYPES: [main, nap, all]
LAST_NIGHT_END: 0 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after the midnight
ROUTINE_REFERENCE_TIME: MIDNIGHT # chosen from "MIDNIGHT" and "START_OF_THE_SEGMENT"
SRC_SCRIPT: src/features/fitbit_sleep_intraday/rapids/main.py
PRICE:
COMPUTE: False
COMPUTE: True
FEATURES: [avgduration, avgratioduration, avgstarttimeofepisodemain, avgendtimeofepisodemain, avgmidpointofepisodemain, stdstarttimeofepisodemain, stdendtimeofepisodemain, stdmidpointofepisodemain, socialjetlag, rmssdmeanstarttimeofepisodemain, rmssdmeanendtimeofepisodemain, rmssdmeanmidpointofepisodemain, rmssdmedianstarttimeofepisodemain, rmssdmedianendtimeofepisodemain, rmssdmedianmidpointofepisodemain]
SLEEP_LEVELS:
INCLUDE_ALL_GROUPS: True
@ -422,7 +419,7 @@ FITBIT_SLEEP_INTRADAY:
STAGES: [wake, deep, light, rem]
UNIFIED: [awake, asleep]
DAY_TYPES: [WEEKEND, WEEK, ALL]
LAST_NIGHT_END: 660 # number of minutes after the midnight (11:00) 11*60
LAST_NIGHT_END: 660 # number of minutes after midnight (11:00) 11*60
SRC_SCRIPT: src/features/fitbit_sleep_intraday/price/main.py
# See https://www.rapids.science/latest/features/fitbit-steps-summary/

View File

@ -324,19 +324,19 @@ FITBIT_DATA_STREAMS:
# AVAILABLE:
fitbitjson_mysql:
DATABASE_GROUP: MY_GROUP
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after the midnight. By default, 660 (11:00).
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after midnight. By default, 660 (11:00).
fitbitparsed_mysql:
DATABASE_GROUP: MY_GROUP
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after the midnight. By default, 660 (11:00).
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after midnight. By default, 660 (11:00).
fitbitjson_csv:
FOLDER: data/external/fitbit_csv
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after the midnight. By default, 660 (11:00).
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after midnight. By default, 660 (11:00).
fitbitparsed_csv:
FOLDER: tests/data/external/aware_csv
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after the midnight. By default, 660 (11:00).
SLEEP_SUMMARY_LAST_NIGHT_END: 660 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after midnight. By default, 660 (11:00).
# Sensors ------
FITBIT_CALORIES_INTRADAY:
@ -393,27 +393,24 @@ FITBIT_SLEEP_SUMMARY:
# See https://www.rapids.science/latest/features/fitbit-sleep-intraday/
FITBIT_SLEEP_INTRADAY:
CONTAINER: sleep_intraday
CONTAINER: fitbit_sleep_intraday_raw.csv
PROVIDERS:
RAPIDS:
COMPUTE: False
COMPUTE: True
FEATURES:
LEVELS_AND_TYPES: [countepisode, sumduration, maxduration, minduration, avgduration, medianduration, stdduration]
RATIOS_TYPE: [count, duration]
RATIOS_SCOPE: [ACROSS_LEVELS, ACROSS_TYPES, WITHIN_LEVELS, WITHIN_TYPES]
ROUTINE: [starttimefirstmainsleep, endtimelastmainsleep, starttimefirstnap, endtimelastnap]
SLEEP_LEVELS:
INCLUDE_ALL_GROUPS: True
CLASSIC: [awake, restless, asleep]
STAGES: [wake, deep, light, rem]
UNIFIED: [awake, asleep]
SLEEP_TYPES: [main, nap, all]
LAST_NIGHT_END: 0 # a number ranged from 0 (midnight) to 1439 (23:59) which denotes number of minutes after the midnight
ROUTINE_REFERENCE_TIME: MIDNIGHT # chosen from "MIDNIGHT" and "START_OF_THE_SEGMENT"
SRC_SCRIPT: src/features/fitbit_sleep_intraday/rapids/main.py
PRICE:
COMPUTE: False
COMPUTE: True
FEATURES: [avgduration, avgratioduration, avgstarttimeofepisodemain, avgendtimeofepisodemain, avgmidpointofepisodemain, stdstarttimeofepisodemain, stdendtimeofepisodemain, stdmidpointofepisodemain, socialjetlag, rmssdmeanstarttimeofepisodemain, rmssdmeanendtimeofepisodemain, rmssdmeanmidpointofepisodemain, rmssdmedianstarttimeofepisodemain, rmssdmedianendtimeofepisodemain, rmssdmedianmidpointofepisodemain]
SLEEP_LEVELS:
INCLUDE_ALL_GROUPS: True
@ -421,7 +418,7 @@ FITBIT_SLEEP_INTRADAY:
STAGES: [wake, deep, light, rem]
UNIFIED: [awake, asleep]
DAY_TYPES: [WEEKEND, WEEK, ALL]
LAST_NIGHT_END: 660 # number of minutes after the midnight (11:00) 11*60
LAST_NIGHT_END: 660 # number of minutes after midnight (11:00) 11*60
SRC_SCRIPT: src/features/fitbit_sleep_intraday/price/main.py
# See https://www.rapids.science/latest/features/fitbit-steps-summary/

View File

@ -973,7 +973,7 @@ properties:
- properties:
FEATURES:
type: object
required: [LEVELS_AND_TYPES, RATIOS_TYPE, RATIOS_SCOPE, ROUTINE]
required: [LEVELS_AND_TYPES, RATIOS_TYPE, RATIOS_SCOPE]
properties:
LEVELS_AND_TYPES:
type: array
@ -993,12 +993,6 @@ properties:
items:
type: string
enum: [ACROSS_LEVELS, ACROSS_TYPES, WITHIN_LEVELS, WITHIN_TYPES]
ROUTINE:
type: array
uniqueItems: True
items:
type: string
enum: [starttimefirstmainsleep, endtimelastmainsleep, starttimefirstnap, endtimelastnap]
SLEEP_LEVELS:
type: object
required: [INCLUDE_ALL_GROUPS, CLASSIC, STAGES, UNIFIED]
@ -1029,13 +1023,6 @@ properties:
items:
type: string
enum: [main, nap, all]
LAST_NIGHT_END:
type: number
minimum: 0
maximum: 1439
ROUTINE_REFERENCE_TIME:
type: string
enum: [MIDNIGHT, START_OF_THE_SEGMENT]
PRICE:
allOf:
- $ref: "#/definitions/PROVIDER"