Semi-visible Jets may occur from strongly coupled hidden sectors produced at the Large Hadron Collider, as suggested in the Hidden Valley models. While dark hadrons interact strongly with each other, they interact only weakly with visible states through the portal, which will undergo a QCD-like shower and ultimately hadronize, producing collimated sprays of dark hadrons. These states are invisible to colliders’ detectors unless they are able to decay to the Standard Model. A portion of these states are likely to be stable, providing good dark-matter candidates. Yet, many of the hadrons should decay back to the visible sector through the portal coupling, which result in a spray of stable invisible dark matter along with unstable states that decay back to the Standard Model. The signature of such Semi-visible Jets is characterized by the missing energy aligned along the direction of one of the jets. In this research, we generated the Semi-visible Jets s-channel samples using standalone MadGraph5, Pythia8, and Delphes and conducted data analysis using uproot and pyjet package in Python. We analyzed the kinematics of Semi-visible Jets with different parameter settings such as event selection cuts and jet clustering algorithms by creating kinematic plots of physical quantities including jet momentum, invariant mass, transverse mass, and missing energy using Python. Also, we have created the ATLAS JobOption, which has already been used for sample generation in the CERN ATLAS framework. We have noticed differences in kinematic distribution with different event selection and jet clustering algorithms and we expect to find the parameter settings for them that will optimize the Semi-visible Jets signal. By applying optimized parameter settings, we can locate the possible region where Semi-visible Jets can be observed in the Large Hadron Collider, which is a significant step forward in the discovery of dark matter.