climpred: analysis of ensemble forecast models for climate prediction

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Version 1 Release

v1.0.1 of climpred is our first bare-bones release to the community. We currently only support annual forecasts, but our focus is to support sub-annual (e.g., seasonal, monthly, weekly, daily) in our next major release. We provide a host of deterministic metrics, as well as some probabilistic metrics, although the latter have not been tested rigorously. We support both perfect-model and hindcast prediction ensembles, and provide PerfectModelEnsemble and HindcastEnsemble classes to make analysis easier.

See quick start and our examples to get started.

Installation

You can install the latest release of climpred using pip or conda:

pip install climpred
conda install -c conda-forge climpred

You can also install the bleeding edge (pre-release versions) by cloning this repository and running pip install . --upgrade in the main directory

Getting Started

User Guide

Help & Reference