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Implements a procedure for forecasting time series data based on an additive model where non-linear trends are fit with yearly, weekly, and daily seasonality, plus holiday effects. It works best with time series that have strong seasonal effects and several seasons of historical data. Prophet is robust to missing data and shifts in the trend, and typically handles outliers well.

Uploaded Mon Mar 31 01:00:04 2025
md5 checksum 47b528410cf258be030be9f506c1dc67
arch x86_64
build py39hdb19cb5_0
depends cmdstanpy >=1.0.4, holidays >=0.25.0, importlib_resources, libgcc-ng >=11.2.0, libstdcxx-ng >=11.2.0, matplotlib-base >=2.0.0, numpy >=1.15.4,<2.0a0, pandas >=1.0.4, python >=3.9,<3.10.0a0, tbb >=2021.8.0, tqdm >=4.36.1
license MIT
license_family MIT
md5 47b528410cf258be030be9f506c1dc67
name prophet
platform linux
sha1 3bb58903c7d17e594b0a161a4819784de60fccdf
sha256 2f00f1c6eea854b78396249b361cbf74c8bdb87e18f430a2824b9ab72b63740d
size 899467
subdir linux-64
timestamp 1718023441214
version 1.1.5