International audienceIn the context of capacity planning, forecasting the evolution of informatics servers usage enables companies to better manage their computational resources. We address this problem by collecting key indicator time series and propose to forecast their evolution a day-ahead. Our method assumes that data is structured by a daily seasonality, but also that there is typical evolution of indicators within a day. Then, it uses the combination of a clustering algorithm and Markov Models to produce day-ahead forecasts. Our experiments on real datasets show that the data satisfies our assumption and that, in the case study, our method outperforms classical approaches (AR, Holt-Winters)
International audienceIn this article, we propose a framework for seasonal time series probabilistic...
Research on forecasting has traditionally focused on building more accurate statistical models for a...
Most operations decisions are based on some kind of forecast of future demand. Thus, forecasting is ...
International audienceIn the context of capacity planning, forecasting the evolution of informatics ...
International audienceSeasonal behaviours are widely encountered in various applications. For instan...
International audienceWorkload predictions in cloud computing is obviously an important topic. Most ...
Accurate demand forecasting is integral for data-driven revenue management decisions of hotels, but ...
This project presents a new approach to forecast the behavior of time series based on similarity of ...
In a cloud computing environment, companies have the ability to allocate resources according to dema...
Forecasting demand is challenging. Various products exhibit different demand patterns. While demand ...
International audienceIn this article, we propose a framework for seasonal time series probabilistic...
Research on forecasting has traditionally focused on building more accurate statistical models for a...
Most operations decisions are based on some kind of forecast of future demand. Thus, forecasting is ...
International audienceIn the context of capacity planning, forecasting the evolution of informatics ...
International audienceSeasonal behaviours are widely encountered in various applications. For instan...
International audienceWorkload predictions in cloud computing is obviously an important topic. Most ...
Accurate demand forecasting is integral for data-driven revenue management decisions of hotels, but ...
This project presents a new approach to forecast the behavior of time series based on similarity of ...
In a cloud computing environment, companies have the ability to allocate resources according to dema...
Forecasting demand is challenging. Various products exhibit different demand patterns. While demand ...
International audienceIn this article, we propose a framework for seasonal time series probabilistic...
Research on forecasting has traditionally focused on building more accurate statistical models for a...
Most operations decisions are based on some kind of forecast of future demand. Thus, forecasting is ...