Skip to main content

A time-series forecasting extension for pydexcom using Google's TimesFM

Project description

forecose

PyPI Python versions Tests

A time-series forecasting extension for pydexcom using Google's TimesFM. Readings from the previous 24 hours are captured from the Dexcom Share API service are fed into the model to forecast blood glucose values over the next hour.

All modelling and forecasting is performed locally on your device. The only external connections made are with:

  • Dexcom Share API: fetching CGM readings following the pydexcom approach.
  • HuggingFace: one-time download of the forecasting model weights on the first run.

Quick Start

  1. Ensure that you have installed the pydexcom package and enabled the Share service within your Dexcom G7 / G6 / G5 / G4.

pip install pydexcom

  1. Initialise pydexcom with your Dexcom credentials (below shows the simplist route, refer to pydexcom for further instruction).
>>> from pydexcom import Dexcom
>>> dexcom = Dexcom(username="username", password="password")
  1. Generate a prediction.
>>> from forecose import DexcomForecast
>>> predictions = DexcomForecast().get_forecast(dexcom)
>>> print(predictions)
                          timestamp  predicted_glucose    q10    q25    q50    q75    q90
0  2026-06-30 11:56:43.332500+01:00              156.0  156.0  147.0  155.0  159.0  162.0
1  2026-06-30 12:01:43.332000+01:00              159.0  159.0  142.0  156.0  165.0  169.0
2  2026-06-30 12:06:43.331500+01:00              160.0  159.0  137.0  156.0  169.0  176.0
3  2026-06-30 12:11:43.331000+01:00              160.0  161.0  132.0  155.0  172.0  180.0
4  2026-06-30 12:16:43.330500+01:00              162.0  161.0  128.0  156.0  176.0  185.0
5  2026-06-30 12:21:43.330000+01:00              162.0  162.0  125.0  155.0  177.0  188.0
6  2026-06-30 12:26:43.329500+01:00              163.0  164.0  120.0  155.0  180.0  192.0
7  2026-06-30 12:31:43.329000+01:00              162.0  162.0  116.0  153.0  181.0  194.0
8  2026-06-30 12:36:43.328500+01:00              162.0  162.0  113.0  152.0  183.0  197.0
9  2026-06-30 12:41:43.328000+01:00              161.0  161.0  109.0  151.0  183.0  197.0
10 2026-06-30 12:46:43.327500+01:00              162.0  162.0  107.0  151.0  186.0  201.0
11 2026-06-30 12:51:43.327000+01:00              161.0  160.0  104.0  149.0  186.0  201.0

>>> print(predictions.mmol_l)
                          timestamp  predicted_glucose  q10  q25  q50   q75   q90
0  2026-06-30 11:56:43.332500+01:00                8.7  8.7  8.2  8.6   8.8   9.0
1  2026-06-30 12:01:43.332000+01:00                8.8  8.8  7.9  8.7   9.2   9.4
2  2026-06-30 12:06:43.331500+01:00                8.9  8.8  7.6  8.7   9.4   9.8
3  2026-06-30 12:11:43.331000+01:00                8.9  8.9  7.3  8.6   9.5  10.0
4  2026-06-30 12:16:43.330500+01:00                9.0  8.9  7.1  8.7   9.8  10.3
5  2026-06-30 12:21:43.330000+01:00                9.0  9.0  6.9  8.6   9.8  10.4
6  2026-06-30 12:26:43.329500+01:00                9.0  9.1  6.7  8.6  10.0  10.7
7  2026-06-30 12:31:43.329000+01:00                9.0  9.0  6.4  8.5  10.0  10.8
8  2026-06-30 12:36:43.328500+01:00                9.0  9.0  6.3  8.4  10.2  10.9
9  2026-06-30 12:41:43.328000+01:00                8.9  8.9  6.0  8.4  10.2  10.9
10 2026-06-30 12:46:43.327500+01:00                9.0  9.0  5.9  8.4  10.3  11.2
11 2026-06-30 12:51:43.327000+01:00                8.9  8.9  5.8  8.3  10.3  11.2

What do these predictions mean?

  • predicted-glucose: The most likely trajectory your blood sugar will take (centred baseline of the confidence bands).
  • q10 to q90: The range of confidence bands provide a realistic upper and lower estimate boundaries, showing the full probability distribution of predicted glucose values.

Event Modelling

To account for the key exogenous events (e.g., insulin administration or carbohydrate (carbs) intake) that act on blood glucose values without distorting the underlying TimesFM probability distribution, you can apply a deterministic overlay to your baseline forecast.

Drawing on mathematical frameworks utilised in closed-loop Artifical Pancreas systems and the Hovorka/Bergman meal submodels, event impacts are computed as a second-order linear delay process. Here, event unit rates (e.g., the absorption of insulin or carbs) are translated into a physiological curve that begins slowly, reaches a peak, and then gradually decays over time.

By default, forecose updates the forecast predictions using the standard clinical baselines (a 55-minute peak for insulin, and a 40-minute peak for carbs):

>>> carb_predictions = predictions.add_event(type="carbs", units=30, minutes_ago=0)
>>> print(carb_predictions.mmol_l)
                          timestamp  predicted_glucose   q10  q25   q50   q75   q90
0  2026-06-30 11:56:43.332500+01:00                8.7   8.7  8.2   8.7   8.9   9.0
1  2026-06-30 12:01:43.332000+01:00                9.0   9.0  8.0   8.8   9.3   9.5
2  2026-06-30 12:06:43.331500+01:00                9.3   9.2  8.0   9.0   9.8  10.2
3  2026-06-30 12:11:43.331000+01:00                9.5   9.5  7.9   9.2  10.2  10.6
4  2026-06-30 12:16:43.330500+01:00                9.9   9.8  8.0   9.5  10.7  11.2
5  2026-06-30 12:21:43.330000+01:00               10.2  10.2  8.1   9.8  11.0  11.6
6  2026-06-30 12:26:43.329500+01:00               10.5  10.5  8.1  10.0  11.4  12.1
7  2026-06-30 12:31:43.329000+01:00               10.8  10.8  8.2  10.3  11.8  12.5
8  2026-06-30 12:36:43.328500+01:00               11.0  11.0  8.3  10.5  12.2  13.0
9  2026-06-30 12:41:43.328000+01:00               11.3  11.3  8.4  10.8  12.5  13.3
10 2026-06-30 12:46:43.327500+01:00               11.7  11.7  8.6  11.0  13.0  13.8
11 2026-06-30 12:51:43.327000+01:00               11.9  11.8  8.7  11.2  13.3  14.1

>>> insulin_predictions = predictions.add_event(type="insulin", units=5, minutes_ago=0)
>>> print(insulin_predictions.mmol_l)
                          timestamp  predicted_glucose  q10  q25  q50  q75  q90
0  2026-06-30 11:56:43.332500+01:00                8.6  8.6  8.1  8.5  8.8  8.9
1  2026-06-30 12:01:43.332000+01:00                8.7  8.7  7.7  8.5  9.0  9.2
2  2026-06-30 12:06:43.331500+01:00                8.5  8.5  7.3  8.3  9.0  9.4
3  2026-06-30 12:11:43.331000+01:00                8.3  8.4  6.8  8.0  9.0  9.4
4  2026-06-30 12:16:43.330500+01:00                8.2  8.1  6.3  7.8  8.9  9.4
5  2026-06-30 12:21:43.330000+01:00                7.8  7.8  5.8  7.4  8.7  9.3
6  2026-06-30 12:26:43.329500+01:00                7.5  7.6  5.2  7.1  8.5  9.2
7  2026-06-30 12:31:43.329000+01:00                7.2  7.2  4.6  6.7  8.2  8.9
8  2026-06-30 12:36:43.328500+01:00                6.8  6.8  4.1  6.2  7.9  8.7
9  2026-06-30 12:41:43.328000+01:00                6.4  6.4  3.5  5.8  7.6  8.4
10 2026-06-30 12:46:43.327500+01:00                6.0  6.0  3.0  5.4  7.4  8.2
11 2026-06-30 12:51:43.327000+01:00                5.6  5.6  2.4  4.9  7.0  7.8

By default, sensitivity to insulin (ISF) and carbohydrates (CSF) is set at 40 mg/dL per 1U and 4 mg/dL per gram, respectively. These values are placeholders meant to represent reasonable values and should be adjusted through the add_event method using the sensitivity parameter. In future, I hope to develop a method for calculating estimate values from historic data.

>>> insensitive_insulin_predictions = predictions.add_event(type="insulin", units=5, minutes_ago=0, sensitivity=20.0)
>>> print(insensitive_insulin_predictions.mmol_l)
                          timestamp  predicted_glucose  q10  q25  q50  q75  q90
0  2026-06-30 11:56:43.332500+01:00                8.7  8.7  8.2  8.6  8.8  9.0
1  2026-06-30 12:01:43.332000+01:00                8.8  8.8  7.8  8.6  9.1  9.3
2  2026-06-30 12:06:43.331500+01:00                8.7  8.7  7.4  8.5  9.2  9.6
3  2026-06-30 12:11:43.331000+01:00                8.6  8.7  7.0  8.3  9.3  9.7
4  2026-06-30 12:16:43.330500+01:00                8.5  8.5  6.7  8.2  9.3  9.8
5  2026-06-30 12:21:43.330000+01:00                8.4  8.4  6.4  8.0  9.3  9.9
6  2026-06-30 12:26:43.329500+01:00                8.3  8.4  5.9  7.9  9.3  9.9
7  2026-06-30 12:31:43.329000+01:00                8.0  8.0  5.5  7.5  9.1  9.8
8  2026-06-30 12:36:43.328500+01:00                7.9  7.9  5.2  7.3  9.0  9.8
9  2026-06-30 12:41:43.328000+01:00                7.7  7.7  4.8  7.1  8.9  9.7
10 2026-06-30 12:46:43.327500+01:00                7.5  7.5  4.5  6.9  8.9  9.7
11 2026-06-30 12:51:43.327000+01:00                7.3  7.2  4.1  6.6  8.7  9.5

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

forecose-0.4.1.tar.gz (7.4 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

forecose-0.4.1-py3-none-any.whl (7.3 kB view details)

Uploaded Python 3

File details

Details for the file forecose-0.4.1.tar.gz.

File metadata

  • Download URL: forecose-0.4.1.tar.gz
  • Upload date:
  • Size: 7.4 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? Yes
  • Uploaded via: twine/6.1.0 CPython/3.13.12

File hashes

Hashes for forecose-0.4.1.tar.gz
Algorithm Hash digest
SHA256 626f1bc59c479cb00eb5d46d392da610c251e36db425b3cd072a607e350991e5
MD5 b8e77708bdcbeeb1a56578591724d7e0
BLAKE2b-256 8162999380d9b6aad60b93b09f14d5568eeaaa181b6f738d43155b88242656f1

See more details on using hashes here.

Provenance

The following attestation bundles were made for forecose-0.4.1.tar.gz:

Publisher: publish.yml on aes21/forecose

Attestations: Values shown here reflect the state when the release was signed and may no longer be current.

File details

Details for the file forecose-0.4.1-py3-none-any.whl.

File metadata

  • Download URL: forecose-0.4.1-py3-none-any.whl
  • Upload date:
  • Size: 7.3 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? Yes
  • Uploaded via: twine/6.1.0 CPython/3.13.12

File hashes

Hashes for forecose-0.4.1-py3-none-any.whl
Algorithm Hash digest
SHA256 b8f8b209fefd6c14922fa3bc88963af8dda198ba95f384177c8f66693ba74167
MD5 dce153fff364465a89f1d1eb4938f0d4
BLAKE2b-256 76dc8ee7b54dea6987f5e3a7c5644ba6b794603b08200a901316ec05a59913f8

See more details on using hashes here.

Provenance

The following attestation bundles were made for forecose-0.4.1-py3-none-any.whl:

Publisher: publish.yml on aes21/forecose

Attestations: Values shown here reflect the state when the release was signed and may no longer be current.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page