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Version 0.6.2 of nixtlar is now available! (2024-10-28)

We are happy to announce the release of nixtlar version 0.6.2, introducing support for TimeGEN-1, TimeGPT optimized for Azure.

Key updates include:

Thank you for your continued support and feedback, which help us make nixtlar better. We encourage you to update to the latest version to take advantage of these improvements.

TimeGPT-1

The first foundation model for time series forecasting and anomaly detection

TimeGPT is a production-ready, generative pretrained transformer for time series forecasting, developed by Nixtla. It is capable of accurately predicting various domains such as retail, electricity, finance, and IoT, with just a few lines of code. Additionally, it can detect anomalies in time series data.

TimeGPT was initially developed in Python but is now available to R users through the nixtlar package.

Table of Contents

Installation

nixtlar is available on CRAN, so you can install the latest stable version using install.packages.

# Install nixtlar from CRAN
install.packages("nixtlar")

# Then load it 
library(nixtlar)

Alternatively, you can install the development version of nixtlar from GitHub with devtools::install_github.

# install.packages("devtools")
devtools::install_github("Nixtla/nixtlar")

Forecast Using TimeGPT in 3 Easy Steps

library(nixtlar)
  1. Set your API key. Get yours at dashboard.nixtla.io
nixtla_set_api_key(api_key = "Your API key here")
  1. Load sample data
df <- nixtlar::electricity
head(df)
#>   unique_id                  ds     y
#> 1        BE 2016-10-22 00:00:00 70.00
#> 2        BE 2016-10-22 01:00:00 37.10
#> 3        BE 2016-10-22 02:00:00 37.10
#> 4        BE 2016-10-22 03:00:00 44.75
#> 5        BE 2016-10-22 04:00:00 37.10
#> 6        BE 2016-10-22 05:00:00 35.61
  1. Forecast the next 8 steps ahead
nixtla_client_fcst <- nixtla_client_forecast(df, h = 8, level = c(80,95))
#> Frequency chosen: h
head(nixtla_client_fcst)
#>   unique_id                  ds  TimeGPT TimeGPT-lo-95 TimeGPT-lo-80
#> 1        BE 2016-12-31 00:00:00 45.19045      30.49691      35.50842
#> 2        BE 2016-12-31 01:00:00 43.24445      28.96423      35.37463
#> 3        BE 2016-12-31 02:00:00 41.95839      27.06667      35.34079
#> 4        BE 2016-12-31 03:00:00 39.79649      27.96751      32.32625
#> 5        BE 2016-12-31 04:00:00 39.20454      24.66072      30.99895
#> 6        BE 2016-12-31 05:00:00 40.10878      23.05056      32.43504
#>   TimeGPT-hi-80 TimeGPT-hi-95
#> 1      54.87248      59.88399
#> 2      51.11427      57.52467
#> 3      48.57599      56.85011
#> 4      47.26672      51.62546
#> 5      47.41012      53.74836
#> 6      47.78252      57.16700

Optionally, plot the results

nixtla_client_plot(df, nixtla_client_fcst, max_insample_length = 200)

Anomaly Detection Using TimeGPT in 3 Easy Steps

Do anomaly detection with TimeGPT, also in 3 easy steps! Follow steps 1 and 2 from the previous section and then use the nixtla_client_detect_anomalies and the nixtla_client_plot functions.

nixtla_client_anomalies <- nixtlar::nixtla_client_detect_anomalies(df) 
#> Frequency chosen: h
head(nixtla_client_anomalies)
#>   unique_id                  ds     y anomaly  TimeGPT TimeGPT-lo-99
#> 1        BE 2016-10-27 00:00:00 52.58   FALSE 56.07623     -28.58337
#> 2        BE 2016-10-27 01:00:00 44.86   FALSE 52.41973     -32.23986
#> 3        BE 2016-10-27 02:00:00 42.31   FALSE 52.81474     -31.84486
#> 4        BE 2016-10-27 03:00:00 39.66   FALSE 52.59026     -32.06934
#> 5        BE 2016-10-27 04:00:00 38.98   FALSE 52.67297     -31.98662
#> 6        BE 2016-10-27 05:00:00 42.31   FALSE 54.10659     -30.55301
#>   TimeGPT-hi-99
#> 1      140.7358
#> 2      137.0793
#> 3      137.4743
#> 4      137.2499
#> 5      137.3326
#> 6      138.7662
nixtlar::nixtla_client_plot(df, nixtla_client_anomalies, plot_anomalies = TRUE)

Features and Capabilities

nixtlar provides access to TimeGPT’s features and capabilities, such as:

Documentation

For comprehensive documentation, please refer to our vignettes, which cover a wide range of topics to help you effectively use nixtlar. The current documentation includes guides on how to:

The documentation is an ongoing effort, and we are working on expanding its coverage.

API Support

Are you a Python user? If yes, then check out the Python SDK for TimeGPT. You can also refer to our API reference for support in other programming languages.

How to Cite

If you find TimeGPT useful for your research, please consider citing the TimeGPT-1 paper. The associated reference is shown below.

Garza, A., Challu, C., & Mergenthaler-Canseco, M. (2024). TimeGPT-1. arXiv preprint arXiv:2310.03589. Available at https://arxiv.org/abs/2310.03589

License

TimeGPT is closed source. However, this SDK is open source and available under the Apache 2.0 License, so feel free to contribute!

Get in Touch

We welcome your input and contributions to the nixtlar package!

These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.