Matching Items (48)
Description

The right to cast a meaningful vote, equal in value to other votes, is a fundamental tenet US elections. Despite the 1964 Supreme Court decision formally establishing the one person, one vote principle as a legal requirement of elections, our democracy consistently falls short of it. With mechanisms including the

The right to cast a meaningful vote, equal in value to other votes, is a fundamental tenet US elections. Despite the 1964 Supreme Court decision formally establishing the one person, one vote principle as a legal requirement of elections, our democracy consistently falls short of it. With mechanisms including the winner-take-all format in the Electoral College, disproportioned geographic allocation of senators, extreme partisan gerrymandering in the House of Representatives, and first-past-the-post elections, many voters experience severe vote dilution. <br/><br/>In order to legitimize our democratic structures, American elections should be reformed so every person’s vote has equal weight, ensuring that the election outcomes reflect the will of the people. Altering the current election structure to include more proportional structures including rank choice voting and population-based representation, will result in a democracy more compatible with the one person, one vote principle.

ContributorsSluga, Allison Leigh (Author) / Hinojosa, Magda (Thesis director) / Gartner, David (Committee member) / School of International Letters and Cultures (Contributor) / School of Politics and Global Studies (Contributor, Contributor, Contributor) / School of Public Affairs (Contributor) / Sandra Day O'Connor College of Law (Contributor) / Barrett, The Honors College (Contributor)
Created2021-05
Description

University Devils is a Founders Lab Thesis group looking to find a way for post-secondary institutions to increase the number of and diversity of incoming applications through the utilization of gaming and gaming approaches in the recruitment process while staying low-cost. This propelling question guided the group through their work.

University Devils is a Founders Lab Thesis group looking to find a way for post-secondary institutions to increase the number of and diversity of incoming applications through the utilization of gaming and gaming approaches in the recruitment process while staying low-cost. This propelling question guided the group through their work. The team’s work primarily focused on recruitment efforts at Arizona State University, but the concept can be modified and applied at other post-secondary institutions. The initial research showed that Arizona State University’s recruitment focused on visiting the high schools of prospective students and providing campus tours to interested students. A proposed alternative solution to aid in recruitment efforts through the utilization of gaming was to create an online multiplayer game that prospective students could play from their own homes. The basic premise of the game is that one player is selected to be “the Professor” while the other players are part of “the Students.” To complete the game, The Students must complete a set of tasks while the Professor applies various obstacles to prevent the Students from winning. When a Student completes their objectives, they win and the game ends. The game was created using Unity. The group has completed a proof-of-concept of the proposed game and worked to advertise and market the game to students via social media. The team’s efforts have gained traction and the group continues to work to gain traction and bring the idea to more prospective students.

ContributorsCole, Tyler Phillip (Co-author) / Ouellette, Abigail (Co-author) / Dong, Edmund E. (Co-author) / Byrne, Jared (Thesis director) / Pierce, John (Committee member) / Software Engineering (Contributor) / Department of Finance (Contributor) / Barrett, The Honors College (Contributor)
Created2021-05
Description

Speedsolving, the art of solving twisty puzzles like the Rubik's Cube as fast as possible, has recently benefitted from the arrival of smartcubes which have special hardware for tracking the cube's face turns and transmitting them via Bluetooth. However, due to their embedded electronics, existing smartcubes cannot be used in

Speedsolving, the art of solving twisty puzzles like the Rubik's Cube as fast as possible, has recently benefitted from the arrival of smartcubes which have special hardware for tracking the cube's face turns and transmitting them via Bluetooth. However, due to their embedded electronics, existing smartcubes cannot be used in competition, reducing their utility in personal speedcubing practice. This thesis proposes a sound-based design for tracking the face turns of a standard, non-smart speedcube consisting of an audio processing receiver in software and a small physical speaker configured as a transmitter. Special attention has been given to ensuring that installing the transmitter requires only a reversible centercap replacement on the original cube. This allows the cube to benefit from smartcube features during practice, while still maintaining compliance with competition regulations. Within a controlled test environment, the software receiver perfectly detected a variety of transmitted move sequences. Furthermore, all components required for the physical transmitter were demonstrated to fit within the centercap of a Gans 356 speedcube.

ContributorsHale, Joseph (Author) / Heinrichs, Robert (Thesis director) / Li, Baoxin (Committee member) / Barrett, The Honors College (Contributor) / Software Engineering (Contributor) / School of International Letters and Cultures (Contributor)
Created2022-05
Description

Artificial intelligence is one of the biggest topics being discussed in the realm of Computer Science and it has made incredible breakthroughs possible in so many different industries. One of the largest issues with utilizing computational resources in the health industry historically is centered around the quantity of data, the

Artificial intelligence is one of the biggest topics being discussed in the realm of Computer Science and it has made incredible breakthroughs possible in so many different industries. One of the largest issues with utilizing computational resources in the health industry historically is centered around the quantity of data, the specificity of conditions for accurate results, and the general risks associated with being incorrect in an analysis. Although these all have been major issues in the past, the application of artificial intelligence has opened up an entirely different realm of possibilities because accessing massive amounts of patient data, is essential for generating an extremely accurate model in machine learning. The goal of this project is to analyze tools and algorithm design techniques used in recent times to accelerate data processing in the realm of healthcare, but one of the most important discoveries is that the standardization of conditioned data being fed into the models is almost more important than the algorithms or tools being used combined.

ContributorsJanes, Jacob (Author) / Bansal, Ajay (Thesis director) / Baron, Tyler (Committee member) / Barrett, The Honors College (Contributor) / Software Engineering (Contributor)
Created2022-05
Description
This thesis paper outlines Nova-six company, an honors thesis project conducted through the Founder’s Lab program at Arizona State University. Nova-six is a multimedia company centered around the space industry. Nova-six’s mission is to ignite Generation Z’s passion for space by reimagining it through the lens of contemporary culture. To

This thesis paper outlines Nova-six company, an honors thesis project conducted through the Founder’s Lab program at Arizona State University. Nova-six is a multimedia company centered around the space industry. Nova-six’s mission is to ignite Generation Z’s passion for space by reimagining it through the lens of contemporary culture. To this end, Nova-six has developed its brand to be a space-themed streetwear, pop art, and entertainment venture. Through its innovative approach, Nova-six aims to transform the space industry's narrative, making it a central part of today's cultural conversations and inspiring a new generation to explore the final frontier.
ContributorsReynolds, Timothy (Author) / Guttilla, Joshua (Co-author) / Everett, Ryan (Co-author) / Gomez, Dominic (Co-author) / Kovalcik, Richard (Co-author) / Byrne, Jared (Thesis director) / Giles, Charles (Committee member) / Barrett, The Honors College (Contributor) / Software Engineering (Contributor)
Created2024-05
Description
In this project, our team researched and developed a puzzle box that tests personal attributes. Our mission is to provide a valuable experience for the everyday consumer that both tests personal attributes, like logic or memory, and is also legitimately fun. We want our product to be a hands-on, exciting

In this project, our team researched and developed a puzzle box that tests personal attributes. Our mission is to provide a valuable experience for the everyday consumer that both tests personal attributes, like logic or memory, and is also legitimately fun. We want our product to be a hands-on, exciting puzzle box experience that anybody can use. Our goal is to become a leading brand of puzzle boxes and be able to provide fun, educational experiences to everyone. We also would like to serve schools by providing learning experiences all over the world at an affordable price.
ContributorsWallace, Dallin (Author) / Lynch, Aiden (Co-author) / Schultz, Tanner (Co-author) / Phanindra, Tarang (Co-author) / Burruss, Peyton (Co-author) / Byrne, Jared (Thesis director) / Giles, Charles (Committee member) / Barrett, The Honors College (Contributor) / Software Engineering (Contributor)
Created2024-05
Description

In this thesis, several different methods for detecting and removing satellite streaks from astronomic images were evaluated and compared with a new machine learning based approach. Simulated data was generated with a variety of conditions, and the performance of each method was evaluated both quantitatively, using Mean Absolute Error (MAE)

In this thesis, several different methods for detecting and removing satellite streaks from astronomic images were evaluated and compared with a new machine learning based approach. Simulated data was generated with a variety of conditions, and the performance of each method was evaluated both quantitatively, using Mean Absolute Error (MAE) against a ground truth detection mask and processing throughput of the method, as well as qualitatively, examining the situations in which each model performs well and poorly. Detection methods from existing systems Pyradon and ASTRiDE were implemented and tested. A machine learning (ML) image segmentation model was trained on simulated data and used to detect streaks in test data. The ML model performed favorably relative to the traditional methods tested, and demonstrated superior robustness in general. However, the model also exhibited some unpredictable behavior in certain scenarios which should be considered. This demonstrated that machine learning is a viable tool for the detection of satellite streaks in astronomic images, however special care must be taken to prevent and to minimize the effects of unpredictable behavior in such models.

ContributorsJeffries, Charles (Author) / Acuna, Ruben (Thesis director) / Martin, Thomas (Committee member) / Bansal, Ajay (Committee member) / Barrett, The Honors College (Contributor) / Software Engineering (Contributor)
Created2023-05
Description

College student mental health has been a prominent issue in the US. However, solutions to address this issue are oftentimes not free or convenient for students. This project seeks to aid in improving student mental health by identifying and addressing the most commonly faced stress factors that contribute to poor

College student mental health has been a prominent issue in the US. However, solutions to address this issue are oftentimes not free or convenient for students. This project seeks to aid in improving student mental health by identifying and addressing the most commonly faced stress factors that contribute to poor mental health. These stress factors will be addressed via a free iOS application made available on the Apple App Store. A free iOS application that addresses commonly faced stress factors will provide students with a free and easily accessible resource to aid in their mental health journey.

ContributorsSuman, Faith (Author) / Sandy, Douglas (Thesis director) / Bansal, Srividya (Committee member) / Barrett, The Honors College (Contributor) / Watts College of Public Service & Community Solut (Contributor) / Software Engineering (Contributor)
Created2023-05
Description

This thesis proposes a new steering system for agricultural machinery with the aim of improving the automation capabilities of farming robots. Accurate and reliable autonomous machinery has the potential to provide significant benefits to the efficiency of farming operations, but the existing systems for performing one of the most essential

This thesis proposes a new steering system for agricultural machinery with the aim of improving the automation capabilities of farming robots. Accurate and reliable autonomous machinery has the potential to provide significant benefits to the efficiency of farming operations, but the existing systems for performing one of the most essential automation functions, autonomous steering to keep machinery on the proper course, each have drawbacks that impact their usability in various scenarios. In order to address these issues, a new lidar-based system was developed for automatic steering in a typical farm field. This approach uses a two-dimensional lidar unit to scan the ground in front of the robot to detect and steer based on farm tracks, a common feature in many farm fields. This system was implemented and evaluated, with results demonstrating that the system is capable of providing accurate steering corrections.

ContributorsBrauer, Jude (Author) / Mehlhase, Alexandra (Thesis director) / Heinrichs, Robert (Committee member) / Barrett, The Honors College (Contributor) / Software Engineering (Contributor) / College of Integrative Sciences and Arts (Contributor)
Created2023-05
Description

The aim of this project is to understand the basic algorithmic components of the transformer deep learning architecture. At a high level, a transformer is a machine learning model based off of a recurrent neural network that adopts a self-attention mechanism, which can weigh significant parts of sequential input data

The aim of this project is to understand the basic algorithmic components of the transformer deep learning architecture. At a high level, a transformer is a machine learning model based off of a recurrent neural network that adopts a self-attention mechanism, which can weigh significant parts of sequential input data which is very useful for solving problems in natural language processing and computer vision. There are other approaches to solving these problems which have been implemented in the past (i.e., convolutional neural networks and recurrent neural networks), but these architectures introduce the issue of the vanishing gradient problem when an input becomes too long (which essentially means the network loses its memory and halts learning) and have a slow training time in general. The transformer architecture’s features enable a much better “memory” and a faster training time, which makes it a more optimal architecture in solving problems. Most of this project will be spent producing a survey that captures the current state of research on the transformer, and any background material to understand it. First, I will do a keyword search of the most well cited and up-to-date peer reviewed publications on transformers to understand them conceptually. Next, I will investigate any necessary programming frameworks that will be required to implement the architecture. I will use this to implement a simplified version of the architecture or follow an easy to use guide or tutorial in implementing the architecture. Once the programming aspect of the architecture is understood, I will then Implement a transformer based on the academic paper “Attention is All You Need”. I will then slightly tweak this model using my understanding of the architecture to improve performance. Once finished, the details (i.e., successes, failures, process and inner workings) of the implementation will be evaluated and reported, as well as the fundamental concepts surveyed. The motivation behind this project is to explore the rapidly growing area of AI algorithms, and the transformer algorithm in particular was chosen because it is a major milestone for engineering with AI and software. Since their introduction, transformers have provided a very effective way of solving natural language processing, which has allowed any related applications to succeed with high speed while maintaining accuracy. Since then, this type of model can be applied to more cutting edge natural language processing applications, such as extracting semantic information from a text description and generating an image to satisfy it.

ContributorsCereghini, Nicola (Author) / Acuna, Ruben (Thesis director) / Bansal, Ajay (Committee member) / Barrett, The Honors College (Contributor) / Software Engineering (Contributor)
Created2023-05