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It is a forecast library that allows you to do exploratory data analysis (EDA), forecast pipeline, model tuning, benchmarking, etc. It includes the Silverkite model, a forecast model developed by Linkedin, which allows feature engineering, automatic changepoint detection, holiday effects, various machine learning fitting methods, statitical prediction bands, etc. | It is a differentiable computer vision library for PyTorch. It consists of a set of routines and differentiable modules to solve generic computer vision problems. At its core, the package uses PyTorch as its main backend both for efficiency and to take advantage of the reverse-mode auto-differentiation to define and compute the gradient of complex functions. |
Provides time series regressors to capture trend, seasonality, holidays, changepoints, and autoregression, and lets you add your own;
Fits the forecast using a machine learning model of your choice;
Provides powerful plotting tools to explore seasonality, interactions, changepoints, etc;
Provides model templates (default parameters) that work well based on data characteristics and forecast requirements (e.g. daily long-term forecast);
Produces interpretable output, with model summary to examine individual regressors, and component plots to visually inspect the combined effect of related regressors;
Facilitates interactive prototyping, grid search, and benchmarking. Grid search is useful for model selection and semi-automatic forecasting of multiple metrics;
Exposes multiple forecast algorithms in the same interface, making it easy to try algorithms from different libraries and compare results;
The same pipeline provides preprocessing, cross-validation, backtest, forecast, and evaluation with any algorithm | Perform feature detection; Perform data augmentation in the GPU;
Perform image filtering and edge detection;
Differentiable computer vision library |
Statistics | |
GitHub Stars 1.8K | GitHub Stars 10.8K |
GitHub Forks 105 | GitHub Forks 1.1K |
Stacks 1 | Stacks 14 |
Followers 8 | Followers 6 |
Votes 0 | Votes 0 |
Integrations | |

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