Which service provides a fully managed platform for time-series forecasting using machine learning?

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Multiple Choice

Which service provides a fully managed platform for time-series forecasting using machine learning?

Explanation:
Fully managed time-series forecasting with machine learning is about a service that handles the end-to-end forecasting workflow for time-based data, from data preparation to model training and generating forecasts, all without you managing infrastructure. Amazon Forecast is built for this purpose: you supply historical time-series data (and optional related data like holidays or promotions), and it provides multiple forecasting models, automates feature engineering and model selection, trains predictors, evaluates accuracy, and returns forecast outputs. It abstracts away the heavy lifting of building and tuning ML models, scaling, and deployment, making it ideal for demand planning, inventory optimization, and capacity forecasting. The other services focus on completely different capabilities—chatbots, IoT edge computing, or natural language processing—so they don’t provide a dedicated, fully managed platform for time-series forecasting.

Fully managed time-series forecasting with machine learning is about a service that handles the end-to-end forecasting workflow for time-based data, from data preparation to model training and generating forecasts, all without you managing infrastructure. Amazon Forecast is built for this purpose: you supply historical time-series data (and optional related data like holidays or promotions), and it provides multiple forecasting models, automates feature engineering and model selection, trains predictors, evaluates accuracy, and returns forecast outputs. It abstracts away the heavy lifting of building and tuning ML models, scaling, and deployment, making it ideal for demand planning, inventory optimization, and capacity forecasting. The other services focus on completely different capabilities—chatbots, IoT edge computing, or natural language processing—so they don’t provide a dedicated, fully managed platform for time-series forecasting.

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