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Health Metrics and Activity Analysis Based on Gym Data

Zaidaan Shiraz, Sahil ., Soumyajit Hazra, Swarmin ., Deepak N R, Kavitha Vasanth

Abstract


In today's busy world, staying physically healthy is more important than ever. Many people have inactive lifestyles and hectic schedules, leading to various health issues. To address this, there's a growing awareness of the need for a healthy lifestyle, and technology is playing a big role in making our life easy and hassle free to track and understand our wellness. This study looks at the data and the information from gym workouts, which was obtained from Kaggle, using machine learning to find important health patterns. The research involves analyzing data, recognizing patterns, and making predictions to help people improve their fitness. We focus on understanding gym-goers' activities, like the type of workouts they do, how often, and how intense these workouts are. This information is very helpful for the population to make better and healthy decisions  about their fitness plans. We use machine learning to predict things like how likely someone is to accomplish their fitness goals with their current workout routine. These predictions can be immensely helpful for those looking to get fitter and want advice on how to make their workouts more effective. The research follows a detailed process, starting with cleaning up the data and getting it ready for analysis. We then explore the data to find initial trends and connections, using visuals like graphs to see how different parts of the data relate. For example, we might look at how the length of a workout affects calorie burning to find the most effective exercises. Machine learning is the heart of this study. We use different algorithms, like decision trees and neural networks, to analyze the data. These models are trained and tested to ensure they provide accurate and reliable results. We evaluate and benchmark their performance using metrics like accuracy and recall finding the best model for making fitness-related predictions, such as suggesting the best exercises or predicting when someone might hit a plateau.


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References


Kaggle. Gym Exercise Dataset

K. Kooiman, M. Dontje, N. Sprenger et al., “Reliability and validity of ten consumer activity trackers,” BMC Sports Science, Medicine and Rehabilitation, vol. 7, no. 24, 2015.

M. Patel, D. Asch, and K. Volpp, “Wearable Devices as Facilitators, Not Drivers, of Health Behaviour Change, 2015.

Warburton, D. E., and Bredin, S. S., “Health benefits of physical activity: a systematic review of current systematic reviews,” Current Opinion in Cardiology, 2017.

B, Omprakash & Metan, Jyoti & Konar, Anisha & Patil, Kavitha & KK, Chiranthan. (2024). Unravelling Malware Using Co-Existence Of Features. 1-6. 10.1109/ICAIT61638.2024.10690795.

Rezni S and Deepak N R, “Challenges and Innovations in Routing for Flying Ad Hoc Networks: A Survey of Current Protocols”, Journal of Computational Analysis and Applications (JoCAAA), vol. 33, no. 2, pp. 64–74, Sep. 2024.

N. R. Deepak and S. Balaji, "Performance analysis of MIMO-based transmission techniques for image quality in 4G wireless network," 2015 IEEE International Conference on Computational Intelligence and Computing Research (ICCIC), 2015, pp. 1-5, doi: 10.1109/ICCIC.2015.7435774.

N R, Deepak & Sriramulu, Balaji. (2015). A Review of Techniques used in EPS and 4G-LTE in Mobility Schemes. International Journal of Computer Applications. 109. 30-38. 10.5120/19219-1018.

Patil, Kavitha S et al. “Hybrid and Adaptive Cryptographic- based secure authentication approach in Io T based applications using hybrid encryption.” Pervasive Mob. Comput. 82 (2022): 101552.

N. R. Deepak, "Health Metrics and Analysis Based on Gym Data Using Deep Learning Techniques," 2024 IEEE International Conference on Artificial Intelligence and Data Science (ICAIDS), 2024, pp. 1-5, doi: 10.xxxx/ICAIDS.2024.xxxxxx.

Deepak, N.R. (2024). Health Metrics and Analysis Based on Gym Data. In: Silhavy, R., Senkerik, R., Oplatkova, Z., Silhavy, P., Prokopova, Z. (eds) Data Science and Applications in Modern Systems. DSAMS 2024. Advances in Intelligent Systems and

Computing, vol 550. Springer, Cham. https://doi.org/10.xxxx/978- 3-319-33622-0_xx.


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