Search Results for author: Willian T. Lunardi

Found 3 papers, 1 papers with code

TII-SSRC-23 Dataset: Typological Exploration of Diverse Traffic Patterns for Intrusion Detection

no code implementations14 Sep 2023 Dania Herzalla, Willian T. Lunardi, Martin Andreoni Lopez

The effectiveness of network intrusion detection systems, predominantly based on machine learning, are highly influenced by the dataset they are trained on.

Anomaly Detection Binary Classification +3

ARCADE: Adversarially Regularized Convolutional Autoencoder for Network Anomaly Detection

no code implementations3 May 2022 Willian T. Lunardi, Martin Andreoni Lopez, Jean-Pierre Giacalone

With a convolutional \ac{AE}, ARCADE automatically builds a profile of the normal traffic using a subset of raw bytes of a few initial packets of network flows so that potential network anomalies and intrusions can be efficiently detected before they cause more damage to the network.

Anomaly Detection

Metaheuristics for the Online Printing Shop Scheduling Problem

1 code implementation22 Jun 2020 Willian T. Lunardi, Ernesto G. Birgin, Débora P. Ronconi, Holger Voos

This challenging real scheduling problem, that emerged in the nowadays printing industry, corresponds to a flexible job shop scheduling problem with sequencing flexibility; and it presents several complicating specificities such as resumable operations, periods of unavailability of the machines, sequence-dependent setup times, partial overlapping between operations with precedence constraints, and fixed operations, among others.

Job Shop Scheduling Scheduling

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