Forecasts future values from historical time series data using ARIMA, Prophet models; analyzes trends, seasonality, autocorrelation; outputs predictions with confidence intervals. For sales, traffic, stock forecasts.
npx claudepluginhub jeremylongshore/claude-code-plugins-plus-skills --plugin time-series-forecasterThis skill is limited to using the following tools:
Forecast future values from historical time series data using ARIMA, Prophet, and other models with trend, seasonality, and confidence interval analysis.
Generates time-series forecasts for key metrics using naive baselines, seasonality detection, exponential smoothing, and Holt-Winters. Useful for projecting revenue, DAU; auto-triggers on 'forecast DAU' or '/forecast'.
Analyzes time series data for trends, seasonality, autocorrelation, decomposition, stationarity testing, and forecasting with ARIMA, SARIMA, and statsmodels in Python.
Generates forecast generator operations for data analytics tasks including SQL queries, data visualization, statistical analysis, and business intelligence. Useful for forecast functionality.
Share bugs, ideas, or general feedback.
Forecast future values from historical time series data using ARIMA, Prophet, and other models with trend, seasonality, and confidence interval analysis.
This skill empowers Claude to perform time series forecasting, providing insights into future trends and patterns. It automates the process of data analysis, model selection, and prediction generation, delivering valuable information for decision-making.
This skill activates when you need to:
User request: "Forecast sales for the next quarter based on the past 3 years of monthly sales data."
The skill will:
User request: "Predict weekly website traffic for the next month based on the last 6 months of data."
The skill will:
This skill can be integrated with other data analysis and visualization tools within the Claude Code ecosystem to provide a comprehensive solution for time series analysis and forecasting.
The skill produces structured output relevant to the task.