Pinned Repositories
abhishekpatel-lpu
Config files for my GitHub profile.
Book_Recommendation_system
Book Recommendation System based upon a Book Review
Boston-Housing-Dataset
The Housing data set which contains information about different houses in Boston. This data was originally a part of UCI Machine Learning Repository and has been removed now. We can also access this data from the scikit-learn library. There are 506 samples and 13 feature variables in this data set. The objective is to predict the value of prices of the house using the given features.
CICIDS-2017-intrution-detection-
Intrusion Detection Systems (IDSs) and Intrusion Prevention Systems (IPSs) are the most important defense tools against the sophisticated and ever-growing network attacks. Due to the lack of reliable test and validation datasets, anomaly-based intrusion detection approaches are suffering from consistent and accurate performance evolutions. Our evaluations of the existing eleven datasets since 1998 show that most are out of date and unreliable. Some of these datasets suffer from the lack of traffic diversity and volumes, some do not cover the variety of known attacks, while others anonymize packet payload data, which cannot reflect the current trends. Some are also lacking feature set and metadata. CICIDS2017 dataset contains benign and the most up-to-date common attacks, which resembles the true real-world data (PCAPs). It also includes the results of the network traffic analysis using CICFlowMeter with labeled flows based on the time stamp, source, and destination IPs, source and destination ports, protocols and attack (CSV files). Also available is the extracted features definition. Generating realistic background traffic was our top priority in building this dataset. We have used our proposed B-Profile system (Sharafaldin, et al. 2016) to profile the abstract behavior of human interactions and generates naturalistic benign background traffic. For this dataset, we built the abstract behaviour of 25 users based on the HTTP, HTTPS, FTP, SSH, and email protocols. The data capturing period started at 9 a.m., Monday, July 3, 2017 and ended at 5 p.m. on Friday July 7, 2017, for a total of 5 days. Monday is the normal day and only includes the benign traffic. The implemented attacks include Brute Force FTP, Brute Force SSH, DoS, Heartbleed, Web Attack, Infiltration, Botnet and DDoS. They have been executed both morning and afternoon on Tuesday, Wednesday, Thursday and Friday.
Dataset_Csv
E-signing-the-loan-based-on-Financial-History
E-signing the loan based on Financial History
Image-Processing
Machine-Learning-in-Health-Care
Prostate-Cancer-Detection
Detection Of Prostate Cancer On thee basic of DICOM image files.
Stock-Price-Prediction
Using Machine Learning and Deep Learning model for prediction the stock price
abhishekpatel-lpu's Repositories
abhishekpatel-lpu/CICIDS-2017-intrution-detection-
Intrusion Detection Systems (IDSs) and Intrusion Prevention Systems (IPSs) are the most important defense tools against the sophisticated and ever-growing network attacks. Due to the lack of reliable test and validation datasets, anomaly-based intrusion detection approaches are suffering from consistent and accurate performance evolutions. Our evaluations of the existing eleven datasets since 1998 show that most are out of date and unreliable. Some of these datasets suffer from the lack of traffic diversity and volumes, some do not cover the variety of known attacks, while others anonymize packet payload data, which cannot reflect the current trends. Some are also lacking feature set and metadata. CICIDS2017 dataset contains benign and the most up-to-date common attacks, which resembles the true real-world data (PCAPs). It also includes the results of the network traffic analysis using CICFlowMeter with labeled flows based on the time stamp, source, and destination IPs, source and destination ports, protocols and attack (CSV files). Also available is the extracted features definition. Generating realistic background traffic was our top priority in building this dataset. We have used our proposed B-Profile system (Sharafaldin, et al. 2016) to profile the abstract behavior of human interactions and generates naturalistic benign background traffic. For this dataset, we built the abstract behaviour of 25 users based on the HTTP, HTTPS, FTP, SSH, and email protocols. The data capturing period started at 9 a.m., Monday, July 3, 2017 and ended at 5 p.m. on Friday July 7, 2017, for a total of 5 days. Monday is the normal day and only includes the benign traffic. The implemented attacks include Brute Force FTP, Brute Force SSH, DoS, Heartbleed, Web Attack, Infiltration, Botnet and DDoS. They have been executed both morning and afternoon on Tuesday, Wednesday, Thursday and Friday.
abhishekpatel-lpu/Book_Recommendation_system
Book Recommendation System based upon a Book Review
abhishekpatel-lpu/Prostate-Cancer-Detection
Detection Of Prostate Cancer On thee basic of DICOM image files.
abhishekpatel-lpu/Stock-Price-Prediction
Using Machine Learning and Deep Learning model for prediction the stock price
abhishekpatel-lpu/abhishekpatel-lpu
Config files for my GitHub profile.
abhishekpatel-lpu/Boston-Housing-Dataset
The Housing data set which contains information about different houses in Boston. This data was originally a part of UCI Machine Learning Repository and has been removed now. We can also access this data from the scikit-learn library. There are 506 samples and 13 feature variables in this data set. The objective is to predict the value of prices of the house using the given features.
abhishekpatel-lpu/Dataset_Csv
abhishekpatel-lpu/E-signing-the-loan-based-on-Financial-History
E-signing the loan based on Financial History
abhishekpatel-lpu/Image-Processing
abhishekpatel-lpu/Machine-Learning-in-Health-Care
abhishekpatel-lpu/python_basic
abhishekpatel-lpu/Student_Performace_Prediction
abhishekpatel-lpu/TV-Commercials-data-set-
The aim of this project is to recognized the commercial and non-commercial adds in different Tv news channels.