Patents Assigned to CAPLAN SOFTWARE DEVELOPMENT S.R.L.
-
Publication number: 20160105327Abstract: Embodiments provide a method for performing an automatic execution of a Box and Jenkins method for forecasting the behavior of said dataset. The method may include pre-processing the dataset including providing one or more missing values to the dataset, removing level discontinuities and outliers, and removing one or more last samples from the dataset, obtaining a trend of the pre-processed dataset including identifying and filtering the trend out of the dataset based on a coefficient of determination methodology, detecting seasonality to obtain a resulting stationary series including computing an auto correlation function of the dataset, repeating the detecting step on an aggregate series of a previous dataset, and removing detected seasonality based on a seasonal differencing process, and modeling the resulting stationary series under an autoregressive-moving-average (ARMA) model.Type: ApplicationFiled: October 12, 2012Publication date: April 14, 2016Applicant: CAPLAN SOFTWARE DEVELOPMENT S.R.L.Inventors: Paolo Cremonesi, Kanika Dhyani, Stefano Visconti
-
Patent number: 9160634Abstract: Embodiments provide a method for performing an automatic execution of a Box and Jenkins method for forecasting the behavior of said dataset. The method may include pre-processing the dataset including providing one or more missing values to the dataset, removing level discontinuities and outliers, and removing one or more last samples from the dataset, obtaining a trend of the pre-processed dataset including identifying and filtering the trend out of the dataset based on a coefficient of determination methodology, detecting seasonality to obtain a resulting stationary series including computing an auto correlation function of the dataset, repeating the detecting step on an aggregate series of a previous dataset, and removing detected seasonality based on a seasonal differencing process, and modeling the resulting stationary series under an autoregressive-moving-average (ARMA) model.Type: GrantFiled: October 12, 2012Date of Patent: October 13, 2015Assignee: Caplan Software Development S.R.L.Inventors: Paolo Cremonesi, Kanika Dhyani, Stefano Visconti
-
Patent number: 9135076Abstract: According to one general aspect, a method may include monitoring, via a communications network, an actual system resource usage of each of a plurality of target computing devices configured to execute one or more respective workload tasks. The method may also include receiving a request for a suggestion for an assigned target computing device to be assigned a new workload task. The method may further include providing the suggestion regarding the assigned target computing device to be assigned a new workload task, wherein the suggestion suggests one or more target computing device(s) that is included in the plurality of target computing devices. The method may also include adjusting a system resource usage profile of the assigned target computing device to include an estimated system resource usage for the new workload task and an actual system resource usage of the assigned target computing device that was previously monitored.Type: GrantFiled: September 28, 2012Date of Patent: September 15, 2015Assignee: Caplan Software Development S.r.l.Inventors: Sudheer Apte, Marco Bertoli, Stefano Visconti, Kanika Dhyani, Gabriele Maggioni
-
Publication number: 20140095693Abstract: According to one general aspect, a method may include monitoring, via a communications network, an actual system resource usage of each of a plurality of target computing devices configured to execute one or more respective workload tasks. The method may also include receiving a request for a suggestion for an assigned target computing device to be assigned a new workload task. The method may further include providing the suggestion regarding the assigned target computing device to be assigned a new workload task, wherein the suggestion suggests one or more target computing device(s) that is included in the plurality of target computing devices. The method may also include adjusting a system resource usage profile of the assigned target computing device to include an estimated system resource usage for the new workload task and an actual system resource usage of the assigned target computing device that was previously monitored.Type: ApplicationFiled: September 28, 2012Publication date: April 3, 2014Applicant: CAPLAN SOFTWARE DEVELOPMENT S.R.L.Inventors: Sudheer Apte, Marco Bertoli, Stefano Visconti, Kanika Dhyani, Gabriele Maggioni
-
Publication number: 20130103826Abstract: Embodiments provide a method for upgrading resources in a system including normalizing a collected dataset, scattering data from the normalized dataset, obtaining a plurality of clusters based on the scattered data, discarding one or more clusters from the plurality of clusters with less than a percentage of a total number of observations, in each cluster, performing clusterwise regression and obtaining linear sub-clusters in a defined number, reducing one or more sub-clusters including applying a refinement procedure, removing one or more sub-clusters that fit to outliers and merging pairs of clusters that fit an equivalent model, updating one or more clusters with the reduced sub-clusters, removing one or more globular clusters, reducing a number of clusters with the refinement procedure, and de-normalizing one or more results.Type: ApplicationFiled: October 12, 2012Publication date: April 25, 2013Applicant: CAPLAN SOFTWARE DEVELOPMENT S.R.L.Inventor: Caplan Software Development S.r.I.
-
Publication number: 20130041644Abstract: Embodiments provide a method for performing an automatic execution of a Box and Jenkins method for forecasting the behavior of said dataset. The method may include pre-processing the dataset including providing one or more missing values to the dataset, removing level discontinuities and outliers, and removing one or more last samples from the dataset, obtaining a trend of the pre-processed dataset including identifying and filtering the trend out of the dataset based on a coefficient of determination methodology, detecting seasonality to obtain a resulting stationary series including computing an auto correlation function of the dataset, repeating the detecting step on an aggregate series of a previous dataset, and removing detected seasonality based on a seasonal differencing process, and modeling the resulting stationary series under an autoregressive-moving-average (ARMA) model.Type: ApplicationFiled: October 12, 2012Publication date: February 14, 2013Applicant: CAPLAN SOFTWARE DEVELOPMENT S.R.L.Inventor: Caplan Software Development S.r.l.