Garmin SSO auth + Connect client
Project description
Garth
Python client for Garmin SSO auth + Connect
Google Colabs
Stress: 28-day rolling average
Stress levels from one day to another can vary by extremes, but there's always a general trend. Using a scatter plot with a rolling average shows both the individual days and the trend. The Colab retrieves up to three years of daily data. If there's less than three years of data, it retrieves whatever is available.
Sleep stages over 90 days
The Garmin Connect app only shows a maximum of seven days for sleep
stages—making it hard to see trends. The Connect API supports retrieving
daily sleep quality in 28-day pages, but that doesn't show details. Using
SleedData.list()
gives us the ability to retrieve an arbitrary number of
day with enough detail to product a stacked bar graph of the daily sleep
stages.
Background
Garth is meant for personal use and follows the philosophy that your data is your data. You should be able to download it and analyze it in the way that you'd like. In my case, that means processing with Google Colab, Pandas, Matplotlib, etc.
There are already a few Garmin Connect libraries. Why write another?
Authentication and stability
The most important reasoning is to build a library with authentication that works on Google Colab and doesn't require tools like Cloudscraper. Garth, in comparison:
- Uses OAuth1 and OAuth2 token authentication after initial login
- OAuth tokens survive for a year
- Supports MFA
- Auto-refresh of OAuth2 token when expired
- OAuth1 token is valid for one year
- Works on Google Colab
- Uses Pydantic dataclasses to validate and simplify use of data
- Full test coverage
Python 3.10+
Google Colab, currently, uses 3.10. We should take advantage of all the goodies that come along with it. If you need to use an earlier version of Python, there are other libraries that will meet your needs. There's no intetion to backport.
JSON vs HTML
Using garth.connectapi()
allows you to make requests routed to the Connect API
and receive JSON vs needing to parse HTML. You can use the same endpoints the
mobile app uses.
This also goes back to authentication. Garth manages the necessary Bearer Authentication (along with auto-refresh) necessary to make requests routed to the Connect API.
Instructions
Install
python -m pip install garth
Authenticate and save session
import garth
from getpass import getpass
email = input("Enter email address: ")
password = getpass("Enter password: ")
# If there's MFA, you'll be prompted during the login
garth.login(email, password)
garth.save("~/.garth")
Configure
Set domain for China
garth.configure(domain="garmin.cn")
Proxy through Charles
garth.configure(proxies={"https": "http://localhost:8888"}, ssl_verify=False)
Attempt to resume session
import garth
from garth import GarthException
from requests import HTTPError
garth.resume("~/.garth")
try:
garth.client.auth_token.refresh()
except (GarthException, HTTPError):
# Session is expired. You'll need to log in again
Connect API
Daily details
sleep = garth.connectapi(
f"/wellness-service/wellness/dailySleepData/{garth.client.username}",
params={"date": "2023-07-05", "nonSleepBufferMinutes": 60),
)
list(sleep.keys())
[
"dailySleepDTO",
"sleepMovement",
"remSleepData",
"sleepLevels",
"sleepRestlessMoments",
"restlessMomentsCount",
"wellnessSpO2SleepSummaryDTO",
"wellnessEpochSPO2DataDTOList",
"wellnessEpochRespirationDataDTOList",
"sleepStress"
]
Stats
stress = garth.connectapi(f"/usersummary-service/stats/stress/weekly/2023-07-05/52")
{
"calendarDate": "2023-07-13",
"values": {
"highStressDuration": 2880,
"lowStressDuration": 10140,
"overallStressLevel": 33,
"restStressDuration": 30960,
"mediumStressDuration": 8760
}
}
Stats resources
Stress
Daily stress levels
DailyStress.list("2023-07-23", 2)
[
DailyStress(
calendar_date=datetime.date(2023, 7, 22),
overall_stress_level=31,
rest_stress_duration=31980,
low_stress_duration=23820,
medium_stress_duration=7440,
high_stress_duration=1500
),
DailyStress(
calendar_date=datetime.date(2023, 7, 23),
overall_stress_level=26,
rest_stress_duration=38220,
low_stress_duration=22500,
medium_stress_duration=2520,
high_stress_duration=300
)
]
Weekly stress levels
WeeklyStress.list("2023-07-23", 2)
[
WeeklyStress(calendar_date=datetime.date(2023, 7, 10), value=33),
WeeklyStress(calendar_date=datetime.date(2023, 7, 17), value=32)
]
Steps
Daily steps
garth.DailySteps.list(period=2)
[
DailySteps(
calendar_date=datetime.date(2023, 7, 28),
total_steps=6510,
total_distance=5552,
step_goal=8090
),
DailySteps(
calendar_date=datetime.date(2023, 7, 29),
total_steps=7218,
total_distance=6002,
step_goal=7940
)
]
Weekly steps
garth.WeeklySteps.list(period=2)
[
WeeklySteps(
calendar_date=datetime.date(2023, 7, 16),
total_steps=42339,
average_steps=6048.428571428572,
average_distance=5039.285714285715,
total_distance=35275.0,
wellness_data_days_count=7
),
WeeklySteps(
calendar_date=datetime.date(2023, 7, 23),
total_steps=56420,
average_steps=8060.0,
average_distance=7198.142857142857,
total_distance=50387.0,
wellness_data_days_count=7
)
]
Intensity Minutes
Daily intensity minutes
garth.DailyIntensityMinutes.list(period=2)
[
DailyIntensityMinutes(
calendar_date=datetime.date(2023, 7, 28),
weekly_goal=150,
moderate_value=0,
vigorous_value=0
),
DailyIntensityMinutes(
calendar_date=datetime.date(2023, 7, 29),
weekly_goal=150,
moderate_value=0,
vigorous_value=0
)
]
Weekly intensity minutes
garth.WeeklyIntensityMinutes.list(period=2)
[
WeeklyIntensityMinutes(
calendar_date=datetime.date(2023, 7, 17),
weekly_goal=150,
moderate_value=103,
vigorous_value=9
),
WeeklyIntensityMinutes(
calendar_date=datetime.date(2023, 7, 24),
weekly_goal=150,
moderate_value=101,
vigorous_value=105
)
]
HRV
Daily HRV
garth.DailyHRV.list(period=2)
[
DailyHRV(
calendar_date=datetime.date(2023, 7, 28),
weekly_avg=39,
last_night_avg=36,
last_night_5_min_high=52,
baseline=HRVBaseline(
low_upper=36,
balanced_low=39,
balanced_upper=51,
marker_value=0.25
),
status='BALANCED',
feedback_phrase='HRV_BALANCED_2',
create_time_stamp=datetime.datetime(2023, 7, 28, 12, 40, 16, 785000)
),
DailyHRV(
calendar_date=datetime.date(2023, 7, 29),
weekly_avg=40,
last_night_avg=41,
last_night_5_min_high=76,
baseline=HRVBaseline(
low_upper=36,
balanced_low=39,
balanced_upper=51,
marker_value=0.2916565
),
status='BALANCED',
feedback_phrase='HRV_BALANCED_8',
create_time_stamp=datetime.datetime(2023, 7, 29, 13, 45, 23, 479000)
)
]
Sleep
Daily sleep quality
garth.DailySleep.list("2023-07-23", 2)
[
DailySleep(calendar_date=datetime.date(2023, 7, 22), value=69),
DailySleep(calendar_date=datetime.date(2023, 7, 23), value=73)
]
Detailed sleep data
garth.SleepData.get("2023-07-20")
SleepData(
daily_sleep_dto=DailySleepDTO(
id=1689830700000,
user_profile_pk=2591602,
calendar_date=datetime.date(2023, 7, 20),
sleep_time_seconds=23700,
nap_time_seconds=0,
sleep_window_confirmed=True,
sleep_window_confirmation_type='enhanced_confirmed_final',
sleep_start_timestamp_gmt=datetime.datetime(2023, 7, 20, 5, 25, tzinfo=TzInfo(UTC)),
sleep_end_timestamp_gmt=datetime.datetime(2023, 7, 20, 12, 11, tzinfo=TzInfo(UTC)),
sleep_start_timestamp_local=datetime.datetime(2023, 7, 19, 23, 25, tzinfo=TzInfo(UTC)),
sleep_end_timestamp_local=datetime.datetime(2023, 7, 20, 6, 11, tzinfo=TzInfo(UTC)),
unmeasurable_sleep_seconds=0,
deep_sleep_seconds=9660,
light_sleep_seconds=12600,
rem_sleep_seconds=1440,
awake_sleep_seconds=660,
device_rem_capable=True,
retro=False,
sleep_from_device=True,
sleep_version=2,
awake_count=1,
sleep_scores=SleepScores(
total_duration=Score(
qualifier_key='FAIR',
optimal_start=28800.0,
optimal_end=28800.0,
value=None,
ideal_start_in_seconds=None,
deal_end_in_seconds=None
),
stress=Score(
qualifier_key='FAIR',
optimal_start=0.0,
optimal_end=15.0,
value=None,
ideal_start_in_seconds=None,
ideal_end_in_seconds=None
),
awake_count=Score(
qualifier_key='GOOD',
optimal_start=0.0,
optimal_end=1.0,
value=None,
ideal_start_in_seconds=None,
ideal_end_in_seconds=None
),
overall=Score(
qualifier_key='FAIR',
optimal_start=None,
optimal_end=None,
value=68,
ideal_start_in_seconds=None,
ideal_end_in_seconds=None
),
rem_percentage=Score(
qualifier_key='POOR',
optimal_start=21.0,
optimal_end=31.0,
value=6,
ideal_start_in_seconds=4977.0,
ideal_end_in_seconds=7347.0
),
restlessness=Score(
qualifier_key='EXCELLENT',
optimal_start=0.0,
optimal_end=5.0,
value=None,
ideal_start_in_seconds=None,
ideal_end_in_seconds=None
),
light_percentage=Score(
qualifier_key='EXCELLENT',
optimal_start=30.0,
optimal_end=64.0,
value=53,
ideal_start_in_seconds=7110.0,
ideal_end_in_seconds=15168.0
),
deep_percentage=Score(
qualifier_key='EXCELLENT',
optimal_start=16.0,
optimal_end=33.0,
value=41,
ideal_start_in_seconds=3792.0,
ideal_end_in_seconds=7821.0
)
),
auto_sleep_start_timestamp_gmt=None,
auto_sleep_end_timestamp_gmt=None,
sleep_quality_type_pk=None,
sleep_result_type_pk=None,
average_sp_o2_value=92.0,
lowest_sp_o2_value=87,
highest_sp_o2_value=100,
average_sp_o2_hr_sleep=53.0,
average_respiration_value=14.0,
lowest_respiration_value=12.0,
highest_respiration_value=16.0,
avg_sleep_stress=17.0,
age_group='ADULT',
sleep_score_feedback='NEGATIVE_NOT_ENOUGH_REM',
sleep_score_insight='NONE'
),
sleep_movement=[
SleepMovement(
start_gmt=datetime.datetime(2023, 7, 20, 4, 25),
end_gmt=datetime.datetime(2023, 7, 20, 4, 26),
activity_level=5.688743692980419
),
SleepMovement(
start_gmt=datetime.datetime(2023, 7, 20, 4, 26),
end_gmt=datetime.datetime(2023, 7, 20, 4, 27),
activity_level=5.318763075304898
),
...,
SleepMovement(
start_gmt=datetime.datetime(2023, 7, 20, 13, 10),
end_gmt=datetime.datetime(2023, 7, 20, 13, 11),
activity_level=7.088729101943337
)
]
)
sleep data over several nights
garth.SleepData.get(end="2023-07-20", days=30)
Project details
Release history Release notifications | RSS feed
Download files
Download the file for your platform. If you're not sure which to choose, learn more about installing packages.
Source Distribution
Built Distribution
File details
Details for the file garth-0.4.5.tar.gz
.
File metadata
- Download URL: garth-0.4.5.tar.gz
- Upload date:
- Size: 115.4 kB
- Tags: Source
- Uploaded using Trusted Publishing? No
- Uploaded via: twine/4.0.2 CPython/3.10.11
File hashes
Algorithm | Hash digest | |
---|---|---|
SHA256 | 5001dd3e99c0dd9d84f0481b0f41208806f2d73d7638134c36e4af57aa855d48 |
|
MD5 | 2b11efe029abd7a33a5815b68297af4e |
|
BLAKE2b-256 | fa78886b54b59c2aacb5ba8a95980ade6002cf79cba1306f83eb35f6674d6fb3 |
File details
Details for the file garth-0.4.5-py3-none-any.whl
.
File metadata
- Download URL: garth-0.4.5-py3-none-any.whl
- Upload date:
- Size: 15.7 kB
- Tags: Python 3
- Uploaded using Trusted Publishing? No
- Uploaded via: twine/4.0.2 CPython/3.10.11
File hashes
Algorithm | Hash digest | |
---|---|---|
SHA256 | d9ecb1a4be1b7d83ed26bbe43265458e54451f38893797befd15853a42236007 |
|
MD5 | b6c5e42c8effbba4e0fe4c8221f35c09 |
|
BLAKE2b-256 | 953bcd09f4435c9c58f14a10f91fb835e8d774cba5ca7cb1b2cfd45ff120f95a |