Wave of Wellness is a mobile application meticulously designed to bridge the gap between technology and healthcare, focusing on enhancing the quality of life for the elderly and their caregivers. The app is embedded with the capability to monitor and…
Wave of Wellness is a mobile application meticulously designed to bridge the gap between technology and healthcare, focusing on enhancing the quality of life for the elderly and their caregivers. The app is embedded with the capability to monitor and track vital signs and biometric data, utilizing integrated sensors to provide real-time health insights. The primary objective of this project is to explore and answer the pivotal question: How can technology be utilized to uplift the living standards of the elderly and caregivers? This is achieved by promoting independence among the elderly, averting unnecessary hospitalizations, and offering valuable health data that can be crucial in medical interventions and lifestyle adjustments.
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Energy poverty is a pressing issue in agricultural areas that affects the livelihoods of millions of people worldwide. The lack of access to modern energy services in rural communities hinders the development of the agricultural sector and limits economic opportunities.…
Energy poverty is a pressing issue in agricultural areas that affects the livelihoods of millions of people worldwide. The lack of access to modern energy services in rural communities hinders the development of the agricultural sector and limits economic opportunities. To address this issue, this thesis aims to develop a predictive modeling framework using machine learning techniques to identify feasible interventions that can improve energy access in specific rural agricultural regions.
Machine learning plays a pivotal role in addressing energy poverty in rural agricultural regions. By leveraging the power of advanced data analytics and predictive modeling, machine learning algorithms can analyze vast datasets related to energy usage, agricultural practices, geographic factors, and socioeconomic conditions. These algorithms can uncover valuable insights and patterns that are not readily apparent through traditional analytical methods. Moreover, machine learning enables the development of predictive models that can forecast energy demand and identify optimal strategies for improving energy access in rural areas. These models can take into account various variables, such as crop cycles, weather conditions, and community needs, to recommend interventions that are tailored to the specific requirements of each region.
Date Created
The date the item was original created (prior to any relationship with the ASU Digital Repositories.)
This project seeks to motivate runners by creating an application that selectively plays music based on smartwatch metrics. This is done by analyzing metrics collected through a person’s smartwatch such as heart rate or running power and then selecting the…
This project seeks to motivate runners by creating an application that selectively plays music based on smartwatch metrics. This is done by analyzing metrics collected through a person’s smartwatch such as heart rate or running power and then selecting the music that best fits their workout’s intensity. This way, as the workout becomes harder for the user, increasingly motivating music is played.
Date Created
The date the item was original created (prior to any relationship with the ASU Digital Repositories.)
This project seeks to motivate runners by creating an application that selectively plays music based on smartwatch metrics. This is done by analyzing metrics collected through a person’s smartwatch such as heart rate or running power and then selecting the…
This project seeks to motivate runners by creating an application that selectively plays music based on smartwatch metrics. This is done by analyzing metrics collected through a person’s smartwatch such as heart rate or running power and then selecting the music that best fits their workout’s intensity. This way, as the workout becomes harder for the user, increasingly motivating music is played.
Date Created
The date the item was original created (prior to any relationship with the ASU Digital Repositories.)