Search Results - Big data
-
1
Majority of NCAA Div. 1 football players at specific institute show patellar tendon blood flow post-exercise
Schaugaard, B. T., Hinkle, L. J, Davidson, G., Mortensen, B. B., Johnson, A. W.Published in International Journal of Exercise Science Conference Proceedings (2025)“…METHODS: Preexisting ultrasound images and data from 133 Div. 1 college football players (Ht 189 ± 6.1 cm; Wt 105 ± 19.8 kg) were analyzed for PDI intensity using a previously validated clinical scale of 0-5. …”
-
2
Correlation between body weight and eccentric hamstring strength in american football players
Hacking, T. K., Wilwand, M., Johnson, A. W., Mortensen, B. B.Published in International Journal of Exercise Science Conference Proceedings (2025)“…The average max force exerted from the right and left leg from 3 trials was recorded for data analysis. RESULTS: Overall, we noted a weak correlation between players BW and their max eccentric HS (r = 0.34, p = <0.0008, Force: 451.6 ± 83.5 N). …”
-
3
Künstliche Intelligenz und maschinelles Lernen in der Sportwissenschaft (Artificial intelligence and machine learning in sports science)
D. MemmertPublished 2025“…Durch die Integration von Big Data können Spielergebnisse, Fitnessparameter und individuelle Leistungen eingehend analysiert werden, was zu neuen Entwicklungen in der Forschung führt. …”
-
4
Lower extremity muscle volume as a prediction for sprint speed in collegiate football players
Wilwand, M., Sponbeck, J., Allen, S. P., Snow, G., Hunter, I., Johnson, A. W.Published in International Journal of Exercise Science Conference Proceedings (2025)“…The study included NCAA Division I AF players aged 18 and older who were active on the roster and not injured at the time of data collection. Positions were grouped as follows: the combo group (linebackers and tight ends), the big group (offensive and defensive linemen), and the skill group (defensive backs, kickers, wide receivers, quarterbacks, and running backs). …”
-
5
Evaluating external load responses to cumulative playing time and position in the European Handball Federation Women`s Euro 2022 through an IoT and Big Data architecture approach
Karcher, C., Font, R., Marcos-Jorquera, D., Gilart-Iglesias, V., Manchado, C.Published in Biology of Sport (2025)“…Auswertung externer Belastungsreaktionen auf kumulative Spielzeit und Position bei der Handball-Europameisterschaft der Frauen 2022 durch einen IoT- und Big-Data-Architekturansatz…”
-
6
Strategic impact: Technical fouls and momentum shifts in basketball games - unveiling insights across quarters of two decades of NBA data
Lev, A., Maymon, Y. K., Zion, T. B., Tenenbaum, G.Published in International Journal of Sports Science & Coaching (2025)“…Spanning two decades (2000-2021), this study examines the frequency and timing of technical fouls (TFs) committed by NBA coaches, and their relationship with momentum shifts throughout the quarters of a basketball game. A big data of 4,196TFs calls of NBA coaches was used to elucidate TFs association with momentum shifts, considering location, scoring position, and quarter. …”
-
7
Eis-Insights (Ice insights)
Redaktion Zeitschrift LEISTUNGSSPORTPublished in Leistungssport (2025)“…Erfahren Sie, wie innovative Technologien helfen, Spielstrategien zu optimieren sowie die Performance der Spieler zu verbessern und welche Rolle Big Data dabei spielt.…”
-
8
Monitoring external load during real competition in male handball players through big data analytics: Differences by playing positions
Manchado, C., Tortosa-Martinez, J., Marcos-Jorquera, D., Gilart-Iglesias, V., Pueo, B., Chirosa-Rios, L. J.Published in Kinesiology (2024)“…Überwachung der externen Belastung während des realen Wettkampfs bei männlichen Handballspielern durch Big-Data-Analytik: Unterschiede nach Spielpositionen…”
-
9
Positional differences in the efficacy of critical end-of-game possessions in EuroLeague basketball
Foteinakis, P., Pavlidou, S.Published in SportMont (2024)“…Therefore, the study aimed to identify play type actions during end-of-game possessions across player positions (guard, forward, and big) that directly influence the possession`s outcome. …”
-
10
-
11
-
12
How winning teams kick for success in Rugby Union: A big data approach
Scott, G. A., Bezodis, N. E., Bennett, M., Church, S., Waldron, M., Kilduff, L. P., Brown, M. R.Published in 28th Annual Congress of the European College of Sport Science, 4-7 July 2023, Paris, France (2023)“…Wie siegreiche Teams im Rugby Union erfolgreich kicken: Ein Big-Data-Ansatz…”
-
13
Worst-case scenario analysis of physical demands in elite men handball players by playing position through big data analytics
Cartón-Llorente, A., Lozano, D., Iglisias, V. G., Jorquera, D. M., Manchado, C.Published in Biology of Sport (2023)“…Worst-Case-Szenario-Analyse der körperlichen Beanspruchung von Elite-Handballspielern nach Spielposition durch Big-Data-Analytik…”
-
14
Personality profile of amateur team handball referees
Dodt, M., Fasold, F., Memmert, D.Published in German Journal of Exercise and Sport Research (2023)“…This study, therefore, examines the personality profile of amateur handball referees (n = 582) for the first time using the German version of the Big Five Inventory 2 (BFI-2). Current data from German handball referees at the expert level and the German general population were used to compare and discuss the results. …”
-
15
Metabolic power and success in men's handball in the European Championship
Venzke, J., Schäfer, R., Niederer, D., Manchado, C., Platen, P.Published in 27th Annual Congress of the European College of Sport Science (ECSS), Sevilla, 30. Aug - 2. Sep 2022 (2022)“…During 65 matches of the EURO 2020, local positioning system data (Kinexon Precision Technologies) were collected (16.6 Hz), yielding 1853 datasets. …”
-
16
Performance prediction of basketball players using automated personality mining with twitter data
Siemon, D., Wessels, J.Published in Sport, Business and Management (2023)“…Design/methodology/approach: Automated personality mining and robotic process automation were used to gather data (player statistics and big five personality traits) of n = 185 professional basketball players. …”
-
17
BioHelm smart hockey helmet: a conceptual wearable system for protecting and empowering female athletes
Parrucci, A.Published 2022“…The system combines physical biomarkers with player input in a multi-layered, systematic approach and to consider the potential of AI and "big data" gathered from the wearable technology athletic equipment to design the future for elite women`s sports.…”
-
18
Relationships between personality traits and perception of tactical knowledge in Brazilian female field hockey players
Nogueira da Gama, D. R., Máximo de Souza, C. A., Praxedes dos Santos, J. L., do Espírito Santo, W. R., Brandão Pinto de Castro, J., Gomes de Souza Vale, R.Published in Kinesiology (2022)“…The data were treated according to descriptive and correlational statistics. …”
-
19
Optimizing the best play in basketball using deep learning
Javadpour, L., Blakeslee, J., Khazaeli, M., Schroeder, P.Published in Journal of Sports Analytics (2020)“…Deep learning is a branch of machine learning that finds patterns within big data and can predict future decisions. The process relies on a raw dataset for training purposes. …”
-
20