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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. | Anomaly AI is a data analytics tool designed to handle large data sets. The platform is engineered with AI capabilities to automate the analysis of data and provide insightful, actionable outcomes. Via its comprehensive interface, users can create interactive and easily shareable dashboards. Anomaly AI supports various data upload formats including spreadsheets like Excel and CSV, and also connects with different databases like BigQuery and GA4. The platform is built to deal with significant data volumes, ensuring enterprise-grade security and intelligent data type detection. It optimizes data handling by scanning for quality issues, inconsistencies and anomalies in the data, facilitating the removal of duplicates, standardizing date formats and normalizing text fields among other operations. Transforming raw data into understandable insights is further enhanced by the platform's ability to discover patterns, calculate key performance indicators, identify trends and correlations, and generate statistical summaries. The resultant outputs can be visualized through the use of interactive dashboards, fostering real-time collaboration with teams. This tool can be useful across various departments in an organization including sales, marketing, finance, accounting, product management, human resources and more, delivering metrics that drive decision making. In addition to its data handling and insight generation capabilities, Anomaly AI offers support and assistance for setup and usage of the platform. |
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 | All Connectors, BigQuery Analysis, Excel Analysis, GA4 Analysis, Snowflake Analysis |
Statistics | |
GitHub Stars 1.8K | GitHub Stars - |
GitHub Forks 105 | GitHub Forks - |
Stacks 1 | Stacks 0 |
Followers 8 | Followers 1 |
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