Exploratory analysis of IDS ML model training with data generation techniques using the CIC-UNSW-NB15 dataset for cyberattack detection. Trabajo de grado

En esta tesis se encontró que, para evaluar la efectividad de la generación de datos sintéticos, el dataset CIC-UNSW-NB15 IDS puede analizarse en el contexto de un escenario de caja blanca para entrenar un clasificador binario Random Forest. Al disminuir consecutivamente el tamaño del dataset de ent...

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Autores:
Gomez Ospina, Emmanuel
Tipo de recurso:
Trabajo de grado de pregrado
Fecha de publicación:
2025
Institución:
Universidad de Antioquia
Repositorio:
Repositorio UdeA
Idioma:
eng
OAI Identifier:
oai:bibliotecadigital.udea.edu.co:10495/46626
Acceso en línea:
https://hdl.handle.net/10495/46626
Palabra clave:
Generative adversarial networks (Computer networks)
IDS (Computer program language)
ML (Computer program language)
DL (Computer program language)
Computer security
Seguridad informática
Traffic Flow
Tráfico
http://id.loc.gov/authorities/subjects/sh2024001883
http://id.loc.gov/authorities/subjects/sh85064184
http://id.loc.gov/authorities/subjects/sh87004533
http://id.loc.gov/authorities/subjects/sh85038672
http://id.loc.gov/authorities/subjects/sh90001862
http://id.loc.gov/authorities/subjects/sh85136769
Rights
openAccess
License
http://creativecommons.org/licenses/by-nc-sa/4.0/
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oai_identifier_str oai:bibliotecadigital.udea.edu.co:10495/46626
network_acronym_str UDEA2
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repository_id_str
dc.title.none.fl_str_mv Exploratory analysis of IDS ML model training with data generation techniques using the CIC-UNSW-NB15 dataset for cyberattack detection. Trabajo de grado
title Exploratory analysis of IDS ML model training with data generation techniques using the CIC-UNSW-NB15 dataset for cyberattack detection. Trabajo de grado
spellingShingle Exploratory analysis of IDS ML model training with data generation techniques using the CIC-UNSW-NB15 dataset for cyberattack detection. Trabajo de grado
Generative adversarial networks (Computer networks)
IDS (Computer program language)
ML (Computer program language)
DL (Computer program language)
Computer security
Seguridad informática
Traffic Flow
Tráfico
http://id.loc.gov/authorities/subjects/sh2024001883
http://id.loc.gov/authorities/subjects/sh85064184
http://id.loc.gov/authorities/subjects/sh87004533
http://id.loc.gov/authorities/subjects/sh85038672
http://id.loc.gov/authorities/subjects/sh90001862
http://id.loc.gov/authorities/subjects/sh85136769
title_short Exploratory analysis of IDS ML model training with data generation techniques using the CIC-UNSW-NB15 dataset for cyberattack detection. Trabajo de grado
title_full Exploratory analysis of IDS ML model training with data generation techniques using the CIC-UNSW-NB15 dataset for cyberattack detection. Trabajo de grado
title_fullStr Exploratory analysis of IDS ML model training with data generation techniques using the CIC-UNSW-NB15 dataset for cyberattack detection. Trabajo de grado
title_full_unstemmed Exploratory analysis of IDS ML model training with data generation techniques using the CIC-UNSW-NB15 dataset for cyberattack detection. Trabajo de grado
title_sort Exploratory analysis of IDS ML model training with data generation techniques using the CIC-UNSW-NB15 dataset for cyberattack detection. Trabajo de grado
dc.creator.fl_str_mv Gomez Ospina, Emmanuel
dc.contributor.advisor.none.fl_str_mv Vergara Tejada, Jaime Alberto
dc.contributor.author.none.fl_str_mv Gomez Ospina, Emmanuel
dc.contributor.researchgroup.none.fl_str_mv Grupo de Investigación en Telecomunicaciones Aplicadas (GITA)
dc.subject.lcsh.none.fl_str_mv Generative adversarial networks (Computer networks)
IDS (Computer program language)
ML (Computer program language)
DL (Computer program language)
Computer security
Seguridad informática
Traffic Flow
Tráfico
topic Generative adversarial networks (Computer networks)
IDS (Computer program language)
ML (Computer program language)
DL (Computer program language)
Computer security
Seguridad informática
Traffic Flow
Tráfico
http://id.loc.gov/authorities/subjects/sh2024001883
http://id.loc.gov/authorities/subjects/sh85064184
http://id.loc.gov/authorities/subjects/sh87004533
http://id.loc.gov/authorities/subjects/sh85038672
http://id.loc.gov/authorities/subjects/sh90001862
http://id.loc.gov/authorities/subjects/sh85136769
dc.subject.lcshuri.none.fl_str_mv http://id.loc.gov/authorities/subjects/sh2024001883
http://id.loc.gov/authorities/subjects/sh85064184
http://id.loc.gov/authorities/subjects/sh87004533
http://id.loc.gov/authorities/subjects/sh85038672
http://id.loc.gov/authorities/subjects/sh90001862
http://id.loc.gov/authorities/subjects/sh85136769
description En esta tesis se encontró que, para evaluar la efectividad de la generación de datos sintéticos, el dataset CIC-UNSW-NB15 IDS puede analizarse en el contexto de un escenario de caja blanca para entrenar un clasificador binario Random Forest. Al disminuir consecutivamente el tamaño del dataset de entrenamiento, se comprobó que debía reducirse drásticamente en número de muestras, debido a que el modelo obtuvo un buen desempeño usando datos de una sola columna y el 10% del total de filas. Con el objetivo de poder observar resultados notables tras la adición de datos sintéticos, se estableció una nueva partición base con solo un 0,01% (9 muestras por clase binaria). Luego, bajo estas condiciones de escasez de datos, con un enfoque de modelo de caja blanca fue posible mejorar el rendimiento de un clasificador binario Random Forest, uti- lizando los modelos WGAN-GP y CTGAN, introduciendo muestras sintéticas gener- adas a partir de un pequeño subconjunto de muestras del conjunto de datos CIC-UNSW- NB15 disponible en la división de datos de entrenamiento (9 muestras por clase binaria).
publishDate 2025
dc.date.accessioned.none.fl_str_mv 2025-07-01T16:35:35Z
dc.date.issued.none.fl_str_mv 2025
dc.type.none.fl_str_mv Trabajo de grado - Pregrado
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dc.identifier.citation.none.fl_str_mv Gomez Ospina E. (2025). Exploratory analysis of IDS ML model training with data generation techniques using CIC-UNSW-NB15 dataset for traffic classification in cybersecurity. Trabajo de grado, Ingeniería Electrónica, Universidad de Antioquia, Medellín, 2025.
dc.identifier.uri.none.fl_str_mv https://hdl.handle.net/10495/46626
identifier_str_mv Gomez Ospina E. (2025). Exploratory analysis of IDS ML model training with data generation techniques using CIC-UNSW-NB15 dataset for traffic classification in cybersecurity. Trabajo de grado, Ingeniería Electrónica, Universidad de Antioquia, Medellín, 2025.
url https://hdl.handle.net/10495/46626
dc.language.iso.none.fl_str_mv eng
language eng
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dc.rights.accessrights.none.fl_str_mv info:eu-repo/semantics/openAccess
dc.rights.license.en.fl_str_mv Attribution-NonCommercial-ShareAlike 4.0 International
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eu_rights_str_mv openAccess
dc.format.extent.none.fl_str_mv 44 páginas
dc.format.mimetype.none.fl_str_mv application/pdf
dc.publisher.none.fl_str_mv Universidad de Antioquia
dc.publisher.program.none.fl_str_mv Ingeniería Electrónica
dc.publisher.place.none.fl_str_mv Medellín, Colombia
dc.publisher.faculty.none.fl_str_mv Facultad de Ingeniería
dc.publisher.branch.none.fl_str_mv Campus Medellín - Ciudad Universitaria
publisher.none.fl_str_mv Universidad de Antioquia
institution Universidad de Antioquia
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spelling Vergara Tejada, Jaime AlbertoGomez Ospina, EmmanuelGrupo de Investigación en Telecomunicaciones Aplicadas (GITA)2025-07-01T16:35:35Z2025Gomez Ospina E. (2025). Exploratory analysis of IDS ML model training with data generation techniques using CIC-UNSW-NB15 dataset for traffic classification in cybersecurity. Trabajo de grado, Ingeniería Electrónica, Universidad de Antioquia, Medellín, 2025.https://hdl.handle.net/10495/46626En esta tesis se encontró que, para evaluar la efectividad de la generación de datos sintéticos, el dataset CIC-UNSW-NB15 IDS puede analizarse en el contexto de un escenario de caja blanca para entrenar un clasificador binario Random Forest. Al disminuir consecutivamente el tamaño del dataset de entrenamiento, se comprobó que debía reducirse drásticamente en número de muestras, debido a que el modelo obtuvo un buen desempeño usando datos de una sola columna y el 10% del total de filas. Con el objetivo de poder observar resultados notables tras la adición de datos sintéticos, se estableció una nueva partición base con solo un 0,01% (9 muestras por clase binaria). Luego, bajo estas condiciones de escasez de datos, con un enfoque de modelo de caja blanca fue posible mejorar el rendimiento de un clasificador binario Random Forest, uti- lizando los modelos WGAN-GP y CTGAN, introduciendo muestras sintéticas gener- adas a partir de un pequeño subconjunto de muestras del conjunto de datos CIC-UNSW- NB15 disponible en la división de datos de entrenamiento (9 muestras por clase binaria).In this thesis, we found that to evaluate the effectiveness of synthetic data generation, the CIC-UNSW-NB15 IDS dataset can be analyzed in the context of a white-box scenario for training a Random Forest binary classifier. After trying several splits, it was found that the training dataset needed to be severely depleted of samples, due to the fact that the model performed well enough with data from a single column and 10% of the available dataset. In order to see notable results after augmenting the data, a new baseline split with only 0.01% (9 samples per binary class) was established for experimentation. Then, under the mentioned data scarcity conditions, with a white-box model approach, it was possible to enhance the performance of a Random Forest binary classifier, using WGAN-GP and CTGAN models, introducing synthetic samples generated from a small subset of entries of the CIC-UNSW-NB15 dataset available in the training split (9 samples per binary class).1 Abstract 2 Resumen 3 Introduction 4 Objectives 4.1 General Objective 4.2 Specific Objectives 5 Background 5.1 Network Traffic 5.2 Dataset 5.3 Machine Learning (ML) 5.3.1 Data Cleaning 5.3.2 Exploratory Data Analysis (EDA) 5.3.3 Feature Engineering (FE) 5.3.4 Trees and Random Forests 5.3.5 ML training techniques: Pipelines and Cross Validation 5.3.6 Scores and performance metrics of ML models 5.4 Techniques for generating synthetic data 5.4.1 Generative Adversarial Networks (GANs) 5.4.2 Conditional Tabular GAN (CTGAN) 5.4.3 Wasserstein GAN with Gradient Penalty (WGAN-GP) 5.5 State-of-the-art 6 Methodology 6.1 Cleaning 6.2 EDA 6.3 FE and preprocessing 6.4 Baseline models 6.5 Synthetic data generation 6.6 RF model retraining with data augmentation 7 Results 7.1 Baseline 7.2 Synthetic Data 7.3 Augmented Models 8 Conclusions 9 Discussion 10 BibliographyIDS and MLCOL0044448PregradoIngeniero Electrónico44 páginasapplication/pdfengUniversidad de AntioquiaIngeniería ElectrónicaMedellín, ColombiaFacultad de IngenieríaCampus Medellín - Ciudad Universitariahttp://creativecommons.org/licenses/by-nc-sa/4.0/info:eu-repo/semantics/openAccessAttribution-NonCommercial-ShareAlike 4.0 Internationalhttp://purl.org/coar/access_right/c_abf2Generative adversarial networks (Computer networks)IDS (Computer program language)ML (Computer program language)DL (Computer program language)Computer securitySeguridad informáticaTraffic FlowTráficohttp://id.loc.gov/authorities/subjects/sh2024001883http://id.loc.gov/authorities/subjects/sh85064184http://id.loc.gov/authorities/subjects/sh87004533http://id.loc.gov/authorities/subjects/sh85038672http://id.loc.gov/authorities/subjects/sh90001862http://id.loc.gov/authorities/subjects/sh85136769Exploratory analysis of IDS ML model training with data generation techniques using the CIC-UNSW-NB15 dataset for cyberattack detection. 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ltbywgc2kgZnVlcmUgYXBsaWNhYmxlKSwgeS9vIChpaSkgZWwgbm9tYnJlIGRlIGxhIHBhcnRlIG8gbGFzIHBhcnRlcyBxdWUgZWwgQXV0b3IgT3JpZ2luYWwgeS9vIGVsIExpY2VuY2lhbnRlIGh1YmllcmVuIGRlc2lnbmFkbyBwYXJhIGxhIGF0cmlidWNpw7NuICh2LmcuLCB1biBpbnN0aXR1dG8gcGF0cm9jaW5hZG9yLCBlZGl0b3JpYWwsIHB1YmxpY2FjacOzbikgZW4gbGEgaW5mb3JtYWNpw7NuIGRlIGxvcyBkZXJlY2hvcyBkZSBhdXRvciBkZWwgTGljZW5jaWFudGUsIHTDqXJtaW5vcyBkZSBzZXJ2aWNpb3MgbyBkZSBvdHJhcyBmb3JtYXMgcmF6b25hYmxlczsgZWwgdMOtdHVsbyBkZSBsYSBPYnJhIHNpIGVzdMOhIHByb3Zpc3RvOyBlbiBsYSBtZWRpZGEgZGUgbG8gcmF6b25hYmxlbWVudGUgZmFjdGlibGUgeSwgc2kgZXN0w6EgcHJvdmlzdG8sIGVsIElkZW50aWZpY2Fkb3IgVW5pZm9ybWUgZGUgUmVjdXJzb3MgKFVuaWZvcm0gUmVzb3VyY2UgSWRlbnRpZmllcikgcXVlIGVsIExpY2VuY2lhbnRlIGVzcGVjaWZpY2EgcGFyYSBzZXIgYXNvY2lhZG8gY29uIGxhIE9icmEsIHNhbHZvIHF1ZSB0YWwgVVJJIG5vIHNlIHJlZmllcmEgYSBsYSBub3RhIHNvYnJlIGxvcyBkZXJlY2hvcyBkZSBhdXRvciBvIGEgbGEgaW5mb3JtYWNpw7NuIHNvYnJlIGVsIGxpY2VuY2lhbWllbnRvIGRlIGxhIE9icmE7IHkgZW4gZWwgY2FzbyBkZSB1bmEgT2JyYSBEZXJpdmFkYSwgYXRyaWJ1aXIgZWwgY3LDqWRpdG8gaWRlbnRpZmljYW5kbyBlbCB1c28gZGUgbGEgT2JyYSBlbiBsYSBPYnJhIERlcml2YWRhICh2LmcuLCAiVHJhZHVjY2nDs24gRnJhbmNlc2EgZGUgbGEgT2JyYSBkZWwgQXV0b3IgT3JpZ2luYWwsIiBvICJHdWnDs24gQ2luZW1hdG9ncsOhZmljbyBiYXNhZG8gZW4gbGEgT2JyYSBvcmlnaW5hbCBkZWwgQXV0b3IgT3JpZ2luYWwiKS4gVGFsIGNyw6lkaXRvIHB1ZWRlIHNlciBpbXBsZW1lbnRhZG8gZGUgY3VhbHF1aWVyIGZvcm1hIHJhem9uYWJsZTsgZW4gZWwgY2Fzbywgc2luIGVtYmFyZ28sIGRlIE9icmFzIERlcml2YWRhcyB1IE9icmFzIENvbGVjdGl2YXMsIHRhbCBjcsOpZGl0byBhcGFyZWNlcsOhLCBjb21vIG3DrW5pbW8sIGRvbmRlIGFwYXJlY2UgZWwgY3LDqWRpdG8gZGUgY3VhbHF1aWVyIG90cm8gYXV0b3IgY29tcGFyYWJsZSB5IGRlIHVuYSBtYW5lcmEsIGFsIG1lbm9zLCB0YW4gZGVzdGFjYWRhIGNvbW8gZWwgY3LDqWRpdG8gZGUgb3RybyBhdXRvciBjb21wYXJhYmxlLiAgCmQuIFBhcmEgZXZpdGFyIHRvZGEgY29uZnVzacOzbiwgZWwgTGljZW5jaWFudGUgYWNsYXJhIHF1ZSwgY3VhbmRvIGxhIG9icmEgZXMgdW5hIGNvbXBvc2ljacOzbiBtdXNpY2FsOgoKaS4gUmVnYWzDrWFzIHBvciBpbnRlcnByZXRhY2nDs24geSBlamVjdWNpw7NuIGJham8gbGljZW5jaWFzIGdlbmVyYWxlcy4gRWwgTGljZW5jaWFudGUgc2UgcmVzZXJ2YSBlbCBkZXJlY2hvIGV4Y2x1c2l2byBkZSBhdXRvcml6YXIgbGEgZWplY3VjacOzbiBww7pibGljYSBvIGxhIGVqZWN1Y2nDs24gcMO6YmxpY2EgZGlnaXRhbCBkZSBsYSBvYnJhIHkgZGUgcmVjb2xlY3Rhciwgc2VhIGluZGl2aWR1YWxtZW50ZSBvIGEgdHJhdsOpcyBkZSB1bmEgc29jaWVkYWQgZGUgZ2VzdGnDs24gY29sZWN0aXZhIGRlIGRlcmVjaG9zIGRlIGF1dG9yIHkgZGVyZWNob3MgY29uZXhvcyAocG9yIGVqZW1wbG8sIFNBWUNPKSwgbGFzIHJlZ2Fsw61hcyBwb3IgbGEgZWplY3VjacOzbiBww7pibGljYSBvIHBvciBsYSBlamVjdWNpw7NuIHDDumJsaWNhIGRpZ2l0YWwgZGUgbGEgb2JyYSAocG9yIGVqZW1wbG8gV2ViY2FzdCkgbGljZW5jaWFkYSBiYWpvIGxpY2VuY2lhcyBnZW5lcmFsZXMsIHNpIGxhIGludGVycHJldGFjacOzbiBvIGVqZWN1Y2nDs24gZGUgbGEgb2JyYSBlc3TDoSBwcmltb3JkaWFsbWVudGUgb3JpZW50YWRhIHBvciBvIGRpcmlnaWRhIGEgbGEgb2J0ZW5jacOzbiBkZSB1bmEgdmVudGFqYSBjb21lcmNpYWwgbyB1bmEgY29tcGVuc2FjacOzbiBtb25ldGFyaWEgcHJpdmFkYS4KaWkuIFJlZ2Fsw61hcyBwb3IgRm9ub2dyYW1hcy4gRWwgTGljZW5jaWFudGUgc2UgcmVzZXJ2YSBlbCBkZXJlY2hvIGV4Y2x1c2l2byBkZSByZWNvbGVjdGFyLCBpbmRpdmlkdWFsbWVudGUgbyBhIHRyYXbDqXMgZGUgdW5hIHNvY2llZGFkIGRlIGdlc3Rpw7NuIGNvbGVjdGl2YSBkZSBkZXJlY2hvcyBkZSBhdXRvciB5IGRlcmVjaG9zIGNvbmV4b3MgKHBvciBlamVtcGxvLCBsb3MgY29uc2FncmFkb3MgcG9yIGxhIFNBWUNPKSwgdW5hIGFnZW5jaWEgZGUgZGVyZWNob3MgbXVzaWNhbGVzIG8gYWxnw7puIGFnZW50ZSBkZXNpZ25hZG8sIGxhcyByZWdhbMOtYXMgcG9yIGN1YWxxdWllciBmb25vZ3JhbWEgcXVlIFVzdGVkIGNyZWUgYSBwYXJ0aXIgZGUgbGEgb2JyYSAo4oCcdmVyc2nDs24gY292ZXLigJ0pIHkgZGlzdHJpYnV5YSwgZW4gbG9zIHTDqXJtaW5vcyBkZWwgcsOpZ2ltZW4gZGUgZGVyZWNob3MgZGUgYXV0b3IsIHNpIGxhIGNyZWFjacOzbiBvIGRpc3RyaWJ1Y2nDs24gZGUgZXNhIHZlcnNpw7NuIGNvdmVyIGVzdMOhIHByaW1vcmRpYWxtZW50ZSBkZXN0aW5hZGEgbyBkaXJpZ2lkYSBhIG9idGVuZXIgdW5hIHZlbnRhamEgY29tZXJjaWFsIG8gdW5hIGNvbXBlbnNhY2nDs24gbW9uZXRhcmlhIHByaXZhZGEuCiAgICAgIAplLiBHZXN0acOzbiBkZSBEZXJlY2hvcyBkZSBBdXRvciBzb2JyZSBJbnRlcnByZXRhY2lvbmVzIHkgRWplY3VjaW9uZXMgRGlnaXRhbGVzIChXZWJDYXN0aW5nKS4gUGFyYSBldml0YXIgdG9kYSBjb25mdXNpw7NuLCBlbCBMaWNlbmNpYW50ZSBhY2xhcmEgcXVlLCBjdWFuZG8gbGEgb2JyYSBzZWEgdW4gZm9ub2dyYW1hLCBlbCBMaWNlbmNpYW50ZSBzZSByZXNlcnZhIGVsIGRlcmVjaG8gZXhjbHVzaXZvIGRlIGF1dG9yaXphciBsYSBlamVjdWNpw7NuIHDDumJsaWNhIGRpZ2l0YWwgZGUgbGEgb2JyYSAocG9yIGVqZW1wbG8sIHdlYmNhc3QpIHkgZGUgcmVjb2xlY3RhciwgaW5kaXZpZHVhbG1lbnRlIG8gYSB0cmF2w6lzIGRlIHVuYSBzb2NpZWRhZCBkZSBnZXN0acOzbiBjb2xlY3RpdmEgZGUgZGVyZWNob3MgZGUgYXV0b3IgeSBkZXJlY2hvcyBjb25leG9zIChwb3IgZWplbXBsbywgQUNJTlBSTyksIGxhcyByZWdhbMOtYXMgcG9yIGxhIGVqZWN1Y2nDs24gcMO6YmxpY2EgZGlnaXRhbCBkZSBsYSBvYnJhIChwb3IgZWplbXBsbywgd2ViY2FzdCksIHN1amV0YSBhIGxhcyBkaXNwb3NpY2lvbmVzIGFwbGljYWJsZXMgZGVsIHLDqWdpbWVuIGRlIERlcmVjaG8gZGUgQXV0b3IsIHNpIGVzdGEgZWplY3VjacOzbiBww7pibGljYSBkaWdpdGFsIGVzdMOhIHByaW1vcmRpYWxtZW50ZSBkaXJpZ2lkYSBhIG9idGVuZXIgdW5hIHZlbnRhamEgY29tZXJjaWFsIG8gdW5hIGNvbXBlbnNhY2nDs24gbW9uZXRhcmlhIHByaXZhZGEuCiAgCjUuIFJlcHJlc2VudGFjaW9uZXMsIEdhcmFudMOtYXMgeSBMaW1pdGFjaW9uZXMgZGUgUmVzcG9uc2FiaWxpZGFkLgpBIE1FTk9TIFFVRSBMQVMgUEFSVEVTIExPIEFDT1JEQVJBTiBERSBPVFJBIEZPUk1BIFBPUiBFU0NSSVRPLCBFTCBMSUNFTkNJQU5URSBPRlJFQ0UgTEEgT0JSQSAoRU4gRUwgRVNUQURPIEVOIEVMIFFVRSBTRSBFTkNVRU5UUkEpIOKAnFRBTCBDVUFM4oCdLCBTSU4gQlJJTkRBUiBHQVJBTlTDjUFTIERFIENMQVNFIEFMR1VOQSBSRVNQRUNUTyBERSBMQSBPQlJBLCBZQSBTRUEgRVhQUkVTQSwgSU1QTMONQ0lUQSwgTEVHQUwgTyBDVUFMUVVJRVJBIE9UUkEsIElOQ0xVWUVORE8sIFNJTiBMSU1JVEFSU0UgQSBFTExBUywgR0FSQU5Uw41BUyBERSBUSVRVTEFSSURBRCwgQ09NRVJDSUFCSUxJREFELCBBREFQVEFCSUxJREFEIE8gQURFQ1VBQ0nDk04gQSBQUk9Qw5NTSVRPIERFVEVSTUlOQURPLCBBVVNFTkNJQSBERSBJTkZSQUNDScOTTiwgREUgQVVTRU5DSUEgREUgREVGRUNUT1MgTEFURU5URVMgTyBERSBPVFJPIFRJUE8sIE8gTEEgUFJFU0VOQ0lBIE8gQVVTRU5DSUEgREUgRVJST1JFUywgU0VBTiBPIE5PIERFU0NVQlJJQkxFUyAoUFVFREFOIE8gTk8gU0VSIEVTVE9TIERFU0NVQklFUlRPUykuIEFMR1VOQVMgSlVSSVNESUNDSU9ORVMgTk8gUEVSTUlURU4gTEEgRVhDTFVTScOTTiBERSBHQVJBTlTDjUFTIElNUEzDjUNJVEFTLCBFTiBDVVlPIENBU08gRVNUQSBFWENMVVNJw5NOIFBVRURFIE5PIEFQTElDQVJTRSBBIFVTVEVELgogIAo2LiBMaW1pdGFjacOzbiBkZSByZXNwb25zYWJpbGlkYWQuCkEgTUVOT1MgUVVFIExPIEVYSUpBIEVYUFJFU0FNRU5URSBMQSBMRVkgQVBMSUNBQkxFLCBFTCBMSUNFTkNJQU5URSBOTyBTRVLDgSBSRVNQT05TQUJMRSBBTlRFIFVTVEVEIFBPUiBEQcORTyBBTEdVTk8sIFNFQSBQT1IgUkVTUE9OU0FCSUxJREFEIEVYVFJBQ09OVFJBQ1RVQUwsIFBSRUNPTlRSQUNUVUFMIE8gQ09OVFJBQ1RVQUwsIE9CSkVUSVZBIE8gU1VCSkVUSVZBLCBTRSBUUkFURSBERSBEQcORT1MgTU9SQUxFUyBPIFBBVFJJTU9OSUFMRVMsIERJUkVDVE9TIE8gSU5ESVJFQ1RPUywgUFJFVklTVE9TIE8gSU1QUkVWSVNUT1MgUFJPRFVDSURPUyBQT1IgRUwgVVNPIERFIEVTVEEgTElDRU5DSUEgTyBERSBMQSBPQlJBLCBBVU4gQ1VBTkRPIEVMIExJQ0VOQ0lBTlRFIEhBWUEgU0lETyBBRFZFUlRJRE8gREUgTEEgUE9TSUJJTElEQUQgREUgRElDSE9TIERBw5FPUy4gQUxHVU5BUyBMRVlFUyBOTyBQRVJNSVRFTiBMQSBFWENMVVNJw5NOIERFIENJRVJUQSBSRVNQT05TQUJJTElEQUQsIEVOIENVWU8gQ0FTTyBFU1RBIEVYQ0xVU0nDk04gUFVFREUgTk8gQVBMSUNBUlNFIEEgVVNURUQuCiAgCjcuIFTDqXJtaW5vLgkKYS4gRXN0YSBMaWNlbmNpYSB5IGxvcyBkZXJlY2hvcyBvdG9yZ2Fkb3MgZW4gdmlydHVkIGRlIGVsbGEgdGVybWluYXLDoW4gYXV0b23DoXRpY2FtZW50ZSBzaSBVc3RlZCBpbmZyaW5nZSBhbGd1bmEgY29uZGljacOzbiBlc3RhYmxlY2lkYSBlbiBlbGxhLiBTaW4gZW1iYXJnbywgbG9zIGluZGl2aWR1b3MgbyBlbnRpZGFkZXMgcXVlIGhhbiByZWNpYmlkbyBPYnJhcyBEZXJpdmFkYXMgbyBDb2xlY3RpdmFzIGRlIFVzdGVkIGRlIGNvbmZvcm1pZGFkIGNvbiBlc3RhIExpY2VuY2lhLCBubyB2ZXLDoW4gdGVybWluYWRhcyBzdXMgbGljZW5jaWFzLCBzaWVtcHJlIHF1ZSBlc3RvcyBpbmRpdmlkdW9zIG8gZW50aWRhZGVzIHNpZ2FuIGN1bXBsaWVuZG8gw61udGVncmFtZW50ZSBsYXMgY29uZGljaW9uZXMgZGUgZXN0YXMgbGljZW5jaWFzLiBMYXMgU2VjY2lvbmVzIDEsIDIsIDUsIDYsIDcsIHkgOCBzdWJzaXN0aXLDoW4gYSBjdWFscXVpZXIgdGVybWluYWNpw7NuIGRlIGVzdGEgTGljZW5jaWEuCmIuIFN1amV0YSBhIGxhcyBjb25kaWNpb25lcyB5IHTDqXJtaW5vcyBhbnRlcmlvcmVzLCBsYSBsaWNlbmNpYSBvdG9yZ2FkYSBhcXXDrSBlcyBwZXJwZXR1YSAoZHVyYW50ZSBlbCBwZXLDrW9kbyBkZSB2aWdlbmNpYSBkZSBsb3MgZGVyZWNob3MgZGUgYXV0b3IgZGUgbGEgb2JyYSkuIE5vIG9ic3RhbnRlIGxvIGFudGVyaW9yLCBlbCBMaWNlbmNpYW50ZSBzZSByZXNlcnZhIGVsIGRlcmVjaG8gYSBwdWJsaWNhciB5L28gZXN0cmVuYXIgbGEgT2JyYSBiYWpvIGNvbmRpY2lvbmVzIGRlIGxpY2VuY2lhIGRpZmVyZW50ZXMgbyBhIGRlamFyIGRlIGRpc3RyaWJ1aXJsYSBlbiBsb3MgdMOpcm1pbm9zIGRlIGVzdGEgTGljZW5jaWEgZW4gY3VhbHF1aWVyIG1vbWVudG87IGVuIGVsIGVudGVuZGlkbywgc2luIGVtYmFyZ28sIHF1ZSBlc2EgZWxlY2Npw7NuIG5vIHNlcnZpcsOhIHBhcmEgcmV2b2NhciBlc3RhIGxpY2VuY2lhIG8gcXVlIGRlYmEgc2VyIG90b3JnYWRhICwgYmFqbyBsb3MgdMOpcm1pbm9zIGRlIGVzdGEgbGljZW5jaWEpLCB5IGVzdGEgbGljZW5jaWEgY29udGludWFyw6EgZW4gcGxlbm8gdmlnb3IgeSBlZmVjdG8gYSBtZW5vcyBxdWUgc2VhIHRlcm1pbmFkYSBjb21vIHNlIGV4cHJlc2EgYXRyw6FzLiBMYSBMaWNlbmNpYSByZXZvY2FkYSBjb250aW51YXLDoSBzaWVuZG8gcGxlbmFtZW50ZSB2aWdlbnRlIHkgZWZlY3RpdmEgc2kgbm8gc2UgbGUgZGEgdMOpcm1pbm8gZW4gbGFzIGNvbmRpY2lvbmVzIGluZGljYWRhcyBhbnRlcmlvcm1lbnRlLgogIAo4LiBWYXJpb3MuCmEuIENhZGEgdmV6IHF1ZSBVc3RlZCBkaXN0cmlidXlhIG8gcG9uZ2EgYSBkaXNwb3NpY2nDs24gcMO6YmxpY2EgbGEgT2JyYSBvIHVuYSBPYnJhIENvbGVjdGl2YSwgZWwgTGljZW5jaWFudGUgb2ZyZWNlcsOhIGFsIGRlc3RpbmF0YXJpbyB1bmEgbGljZW5jaWEgZW4gbG9zIG1pc21vcyB0w6lybWlub3MgeSBjb25kaWNpb25lcyBxdWUgbGEgbGljZW5jaWEgb3RvcmdhZGEgYSBVc3RlZCBiYWpvIGVzdGEgTGljZW5jaWEuCmIuIFNpIGFsZ3VuYSBkaXNwb3NpY2nDs24gZGUgZXN0YSBMaWNlbmNpYSByZXN1bHRhIGludmFsaWRhZGEgbyBubyBleGlnaWJsZSwgc2Vnw7puIGxhIGxlZ2lzbGFjacOzbiB2aWdlbnRlLCBlc3RvIG5vIGFmZWN0YXLDoSBuaSBsYSB2YWxpZGV6IG5pIGxhIGFwbGljYWJpbGlkYWQgZGVsIHJlc3RvIGRlIGNvbmRpY2lvbmVzIGRlIGVzdGEgTGljZW5jaWEgeSwgc2luIGFjY2nDs24gYWRpY2lvbmFsIHBvciBwYXJ0ZSBkZSBsb3Mgc3VqZXRvcyBkZSBlc3RlIGFjdWVyZG8sIGFxdcOpbGxhIHNlIGVudGVuZGVyw6EgcmVmb3JtYWRhIGxvIG3DrW5pbW8gbmVjZXNhcmlvIHBhcmEgaGFjZXIgcXVlIGRpY2hhIGRpc3Bvc2ljacOzbiBzZWEgdsOhbGlkYSB5IGV4aWdpYmxlLgpjLiBOaW5nw7puIHTDqXJtaW5vIG8gZGlzcG9zaWNpw7NuIGRlIGVzdGEgTGljZW5jaWEgc2UgZXN0aW1hcsOhIHJlbnVuY2lhZGEgeSBuaW5ndW5hIHZpb2xhY2nDs24gZGUgZWxsYSBzZXLDoSBjb25zZW50aWRhIGEgbWVub3MgcXVlIGVzYSByZW51bmNpYSBvIGNvbnNlbnRpbWllbnRvIHNlYSBvdG9yZ2FkbyBwb3IgZXNjcml0byB5IGZpcm1hZG8gcG9yIGxhIHBhcnRlIHF1ZSByZW51bmNpZSBvIGNvbnNpZW50YS4KZC4gRXN0YSBMaWNlbmNpYSByZWZsZWphIGVsIGFjdWVyZG8gcGxlbm8gZW50cmUgbGFzIHBhcnRlcyByZXNwZWN0byBhIGxhIE9icmEgYXF1w60gbGljZW5jaWFkYS4gTm8gaGF5IGFycmVnbG9zLCBhY3VlcmRvcyBvIGRlY2xhcmFjaW9uZXMgcmVzcGVjdG8gYSBsYSBPYnJhIHF1ZSBubyBlc3TDqW4gZXNwZWNpZmljYWRvcyBlbiBlc3RlIGRvY3VtZW50by4gRWwgTGljZW5jaWFudGUgbm8gc2UgdmVyw6EgbGltaXRhZG8gcG9yIG5pbmd1bmEgZGlzcG9zaWNpw7NuIGFkaWNpb25hbCBxdWUgcHVlZGEgc3VyZ2lyIGVuIGFsZ3VuYSBjb211bmljYWNpw7NuIGVtYW5hZGEgZGUgVXN0ZWQuIEVzdGEgTGljZW5jaWEgbm8gcHVlZGUgc2VyIG1vZGlmaWNhZGEgc2luIGVsIGNvbnNlbnRpbWllbnRvIG11dHVvIHBvciBlc2NyaXRvIGRlbCBMaWNlbmNpYW50ZSB5IFVzdGVkLgo=