This collection includes both ASU Theses and Dissertations, submitted by graduate students, and the Barrett, Honors College theses submitted by undergraduate students. 

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The object of the present study is to examine methods in which the company can optimize their costs on third-party suppliers whom oversee other third-party trade labor. The third parties in scope of this study are suspected to overstaff their workforce, thus overcharging the company. We will introduce a complex

The object of the present study is to examine methods in which the company can optimize their costs on third-party suppliers whom oversee other third-party trade labor. The third parties in scope of this study are suspected to overstaff their workforce, thus overcharging the company. We will introduce a complex spreadsheet model that will propose a proper project staffing level based on key qualitative variables and statistics. Using the model outputs, the Thesis team proposes a headcount solution for the company and problem areas to focus on, going forward. All sources of information come from company proprietary and confidential documents.
ContributorsLoo, Andrew (Co-author) / Brennan, Michael (Co-author) / Sheiner, Alexander (Co-author) / Hertzel, Michael (Thesis director) / Simonson, Mark (Committee member) / Barrett, The Honors College (Contributor) / Department of Information Systems (Contributor) / Department of Finance (Contributor) / Department of Supply Chain Management (Contributor) / WPC Graduate Programs (Contributor) / School of Accountancy (Contributor)
Created2014-05
Description

As Clive Humby said, “Data is the new oil” and is becoming ever more important to every industry, profession, and business with incredible applications like artificial intelligence and machine learning. Looking specifically at the Small and Medium Businesses (SMB) market segment, there is a significant gap in the use of

As Clive Humby said, “Data is the new oil” and is becoming ever more important to every industry, profession, and business with incredible applications like artificial intelligence and machine learning. Looking specifically at the Small and Medium Businesses (SMB) market segment, there is a significant gap in the use of data analytics. Only 15% of SMBs have a “data-driven” culture. Companies that leverage data to drive decision-making have seen increased revenue, profit, and employee output. Despite the benefits, SMB owners run into three main issues. First, a lack of bandwidth as time and human capital are stretched thin. Second, technical expertise as many analytics tools require coding expertise or knowledge of systems and tools which many SMBs do not possess. Lastly, many SMBs lack the finances to invest in costly tools or subject matter experts. Enterprise-level organizations will continue to invest in analytics leaving SMBs behind and increasing economic inequality. Our solution is DataMate, a Data as a Service (DaaS) no-code, low-cost, and low-time intensive platform designed to provide end-to-end analytics solutions for SMB owners. The platform allows users to automatically pull data from sources (ex. point of sale, customer relationship management, etc.), store data in a centralized location, and lastly, visualize data through dashboards to enable SMBs with data-driven decision-making capabilities. Once at scale, we will be able to create models and deliver advanced predictive and prescriptive analytics. The global data-as-a-service industry market was valued at $5.5B in 2021 and is expected to grow at a CAGR of 36.9% until 2030. SMBs account for a minority of global revenue share but are expected to grow faster than large enterprises. The Total Addressable Market (TAM) for the data-as-a-service industry of small and medium-sized businesses in the United States is roughly $1.02B and the Serviceable Obtainable Market (SOM) is roughly $2.6M. The DaaS industry is highly competitive with high customer bargaining power and large growth potential. Some direct competitors to DataMate are FiveTran, Looker, Domo, and Alteryx. While offering similar data infrastructure services, no solution can achieve DataMate’s unique product value proposition. A fully operational platform will require considerable technical investment. Our go-to-market strategy consists of a manual and automated phase. To start, leveraging the expertise of data/business analysts to manually build end-to-end analytics solutions. Concurrently, we plan to build an automated platform. By starting to manually build, we can bring revenue on day one while solidifying template dashboards and ETL flows. Additionally, DataMate will start building data solutions only in the restaurant vertical given its large market segment and homogeneity of tools. Given the numerous variations in data needs between SMB industries, a step-by-step rollout allows for quality integration. Eventually, the platform will expand to all industries.

ContributorsRamakumar, Kiran (Author) / Sidhwa, Zain (Co-author) / Byrne, Jared (Thesis director) / Ferrara, Justin (Committee member) / McCreless, Tam (Committee member) / Barrett, The Honors College (Contributor) / Department of Information Systems (Contributor) / Department of Supply Chain Management (Contributor)
Created2023-05
Description

As Clive Humby said, “Data is the new oil” and is becoming ever more important to every industry, profession, and business with incredible applications like artificial intelligence and machine learning. Looking specifically at the Small and Medium Businesses (SMB) market segment, there is a significant gap in the use of

As Clive Humby said, “Data is the new oil” and is becoming ever more important to every industry, profession, and business with incredible applications like artificial intelligence and machine learning. Looking specifically at the Small and Medium Businesses (SMB) market segment, there is a significant gap in the use of data analytics. Only 15% of SMBs have a “data-driven” culture. Companies that leverage data to drive decision-making have seen increased revenue, profit, and employee output. Despite the benefits, SMB owners run into three main issues. First, a lack of bandwidth as time and human capital are stretched thin. Second, technical expertise as many analytics tools require coding expertise or knowledge of systems and tools which many SMBs do not possess. Lastly, many SMBs lack the finances to invest in costly tools or subject matter experts. Enterprise-level organizations will continue to invest in analytics leaving SMBs behind and increasing economic inequality. Our solution is DataMate, a Data as a Service (DaaS) no-code, low-cost, and low-time intensive platform designed to provide end-to-end analytics solutions for SMB owners. The platform allows users to automatically pull data from sources (ex. point of sale, customer relationship management, etc.), store data in a centralized location, and lastly, visualize data through dashboards to enable SMBs with data-driven decision-making capabilities. Once at scale, we will be able to create models and deliver advanced predictive and prescriptive analytics.

ContributorsSidhwa, Zain (Author) / Ramakumar, Kiran (Co-author) / Byrne, Jared (Thesis director) / McCreless, Tam (Committee member) / Ferrara, Justin (Committee member) / Barrett, The Honors College (Contributor) / Department of Supply Chain Management (Contributor) / Department of Information Systems (Contributor)
Created2023-05
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Description
This thesis examines real experiences of how small businesses responded to the COVID-19 pandemic in order to generate recommendations for said businesses post pandemic from a finance and supply chain perspective. A literature review finds that several trends that emerged over the pandemic, such as supply and demand changes, workforce

This thesis examines real experiences of how small businesses responded to the COVID-19 pandemic in order to generate recommendations for said businesses post pandemic from a finance and supply chain perspective. A literature review finds that several trends that emerged over the pandemic, such as supply and demand changes, workforce difficulties, financing struggles, and the effectiveness of the Payment Protection Program. Next, we conducted a survey of local small businesses based on the findings in the literature review. The survey aimed to examine managers’ struggles, strategies, and responses to the pandemic. The survey responses were examined and then analyzed to find how they compare to the statistics from the literature review. The findings from the results and other sources served as the basis for which small business recommendations are made on how to prepare for future unprecedented economic crises and better situate themselves to respond.
ContributorsThomas, Ryan (Author) / Onyszchuk, Ethan (Co-author) / Printezis, Antonios (Thesis director) / Simonson, Mark (Committee member) / Barrett, The Honors College (Contributor) / Department of Supply Chain Management (Contributor) / Department of Information Systems (Contributor)
Created2022-05