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For our collaborative thesis we explored the US electric utility market and how the Internet of Things technology movement could capture a possible advancement of the current existing grid. Our objective of this project was to successfully understand the market trends in the utility space and identify where a semiconductor

For our collaborative thesis we explored the US electric utility market and how the Internet of Things technology movement could capture a possible advancement of the current existing grid. Our objective of this project was to successfully understand the market trends in the utility space and identify where a semiconductor manufacturing company, with a focus on IoT technology, could penetrate the market using their products. The methodology used for our research was to conduct industry interviews to formulate common trends in the utility and industrial hardware manufacturer industries. From there, we composed various strategies that The Company should explore. These strategies were backed up using qualitative reasoning and forecasted discounted cash flow and net present value analysis. We confirmed that The Company should use specific silicon microprocessors and microcontrollers that pertained to each of the four devices analytics demand. Along with a silicon strategy, our group believes that there is a strong argument for a data analytics software package by forming strategic partnerships in this space.
ContributorsLlazani, Loris (Co-author) / Ruland, Matthew (Co-author) / Medl, Jordan (Co-author) / Crowe, David (Co-author) / Simonson, Mark (Thesis director) / Hertzel, Mike (Committee member) / Department of Economics (Contributor) / Department of Finance (Contributor) / Department of Supply Chain Management (Contributor) / Department of Information Systems (Contributor) / Hugh Downs School of Human Communication (Contributor) / Barrett, The Honors College (Contributor)
Created2016-05
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Only an Executive Summary of the project is included.
The goal of this project is to develop a deeper understanding of how machine learning pertains to the business world and how business professionals can capitalize on its capabilities. It explores the end-to-end process of integrating a machine and the tradeoffs

Only an Executive Summary of the project is included.
The goal of this project is to develop a deeper understanding of how machine learning pertains to the business world and how business professionals can capitalize on its capabilities. It explores the end-to-end process of integrating a machine and the tradeoffs and obstacles to consider. This topic is extremely pertinent today as the advent of big data increases and the use of machine learning and artificial intelligence is expanding across industries and functional roles. The approach I took was to expand on a project I championed as a Microsoft intern where I facilitated the integration of a forecasting machine learning model firsthand into the business. I supplement my findings from the experience with research on machine learning as a disruptive technology. This paper will not delve into the technical aspects of coding a machine model, but rather provide a holistic overview of developing the model from a business perspective. My findings show that, while the advantages of machine learning are large and widespread, a lack of visibility and transparency into the algorithms behind machine learning, the necessity for large amounts of data, and the overall complexity of creating accurate models are all tradeoffs to consider when deciding whether or not machine learning is suitable for a certain objective. The results of this paper are important in order to increase the understanding of any business professional on the capabilities and obstacles of integrating machine learning into their business operations.
ContributorsVerma, Ria (Author) / Goegan, Brian (Thesis director) / Moore, James (Committee member) / Department of Information Systems (Contributor) / Department of Supply Chain Management (Contributor) / Department of Economics (Contributor) / Barrett, The Honors College (Contributor)
Created2019-05
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The United States has an institutional prison system built on the principle of retributive justice combined with racial prejudice that despite countless efforts for reform currently holds 2.3 million individuals, primarily minorities, behind bars. This institution has remained largely unchanged, meanwhile 83.4% of those who enter the system will return

The United States has an institutional prison system built on the principle of retributive justice combined with racial prejudice that despite countless efforts for reform currently holds 2.3 million individuals, primarily minorities, behind bars. This institution has remained largely unchanged, meanwhile 83.4% of those who enter the system will return within one decade and it currently costs nearly $39 billion each year (Alper 4). Because the prison institution consistently fails to address the core root of crime, there is a great need to reconsider the approach taken towards those who break our nation’s laws with the dual purpose of enhancing freedom and reducing crime. This paper outlines an original theoretical framework being implemented by Project Resolve that can help to identify and implement solutions for our prison system without reliance on political, institutional, or societal approval. The method focuses on three core goals, the first is to connect as much of the data surrounding prisoners and the formerly incarcerated as possible, the second is to use modern analytic approaches to analyze and propose superior solutions for rehabilitation, the third is shifting focus to public interest technology both inside prisons and the parole process. The combination of these objectives has the potential to reduce recidivism to significantly, deter criminals before initial offense, and to implement a truly equitable prison institution.
ContributorsGilchrist, Troy (Author) / Martin, Thomas (Thesis director) / Wenrick, Lukas (Committee member) / Department of Economics (Contributor) / Barrett, The Honors College (Contributor)
Created2020-05