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19,090 case studies
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Avant Democratizes Data Science with DataRobot - DataRobot Industrial IoT Case Study
Avant Democratizes Data Science with DataRobot
Avant, an online lending platform, has been using data and machine learning to make smart loan decisions. However, as the company wanted to scale its business, it faced the challenge of maintaining the quality and sophistication of its analytics. The company needed a solution that would allow its analysts and business users to access data science tools that could be leveraged by the business teams. Avant was looking for a solution that was easy to use, statistically sound, supported by a reliable company, and simple to integrate with production systems.
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Speeding up the Predictive Analytics Process with Automated Machine Learning - DataRobot Industrial IoT Case Study
Speeding up the Predictive Analytics Process with Automated Machine Learning
Evariant, a rapidly growing SaaS company in the healthcare provider market, delivers a suite of innovative CRM solutions that help healthcare systems identify and execute on the most important strategic growth initiatives. However, the company faced a challenge in building and deploying predictive analytics, which can be costly and time-consuming. The complexity of their healthcare data demanded a high level of hands-on data preparation, making their existing solution adequate, but not optimal. They needed high-quality predictive analytics that could be generated both automated and semi-automated — and with an extremely high degree of reliability and validity.
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Lenovo Computes Supply Chain and Retail Success with DataRobot - DataRobot Industrial IoT Case Study
Lenovo Computes Supply Chain and Retail Success with DataRobot
Lenovo, a multinational technology company, was facing a challenge in balancing supply and demand for its products among Brazilian retailers. The company aimed to predict the sell-out volume, the number of units of a product that retailers sell to customers, but was constrained by resources. The team had started developing R code to predict sell-out volume, with a goal to have it updated weekly for their top ten retail customers. However, with only 2 people writing 1,500 lines of R code for one customer each week, reaching their target of predictions for ten customers each week was impossible. The team needed to either invest in more data scientists or find a tool that could automate all the modeling and forecasting steps.
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Teaching Predictive Analytics at the University of Colorado - DataRobot Industrial IoT Case Study
Teaching Predictive Analytics at the University of Colorado
Predictive analytics is reshaping business and society, raising serious questions about how colleges and universities should prepare graduates. One answer may be to teach predictive analytics to all business school students. What would it take to implement this important vision and why is it not currently being done? As a business analytics professor, Kai Larsen’s goal is to teach a mixed range of students: those who immediately understand how predictive analytics has reshaped their future jobs (Information Management and Marketing), those for whom different flavors of business analytics have long since infused into the core of their fields (Operations Management and Finance), and those for whom predictive analytics currently is reshaping “only” a small part of their discipline (Accounting). It is becoming clear that all of these students must, at a minimum, understand predictive analytics conceptually to make decisions that will affect the future of their companies as machine learning tools continue to provide business insights and drive change within and outside the enterprise.
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How the Philadelphia 76ers Win Off the Court Using Machine Learning from DataRobot - DataRobot Industrial IoT Case Study
How the Philadelphia 76ers Win Off the Court Using Machine Learning from DataRobot
The Philadelphia 76ers, a professional basketball team in the NBA, is part of a new wave of sports franchises that are leveraging data analytics to optimize both their on-court performance and business operations. The organization has a strong focus on using data to inform decision-making processes across all levels. One of the key challenges faced by the 76ers' Analytics Team was improving the efficiency of their season ticket renewal process. The team had been using data science and simple modeling techniques, but lacked a dynamic machine learning tool that could adapt and learn as more data was collected. This meant that the team had to do a lot of work in the offseason to produce a static model. The goal was to transform the renewal process from a once-a-year event into a year-round retention process.
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DataRobot Helps D&G Find Success When the Price Is Right - DataRobot Industrial IoT Case Study
DataRobot Helps D&G Find Success When the Price Is Right
Domestic & General (D&G), a specialist in providing warranties for household appliances, was facing a challenge in personalizing and delivering relevant offers to its customers. With 9 million customers in the UK and 16 million globally, the company was resource-constrained for the scale of personalized customer service and offerings they were trying to reach. The company's pricing team had to build a lot of models for each customer, which was a laborious and time-consuming process. D&G wanted to predict the likelihood of churn when customers are up for renewal and determine the price point at which customers are most likely to be happy with the warranty coverage they receive and renew their policies. However, delivering this level of personalization to individual customers required building a lot of pricing models, which was not scalable with their existing resources.
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Independent Model Validation through DataRobot’s AI Services - DataRobot Industrial IoT Case Study
Independent Model Validation through DataRobot’s AI Services
The fintech company, based in the US, was facing challenges in aligning their business process to regulatory compliance requirements. They were using machine learning models for decision-making, which increased the stakes due to the highly regulated nature of the industry. The company was already using DataRobot’s Enterprise AI platform to improve their model-building, but they needed to accelerate the alignment of their business process to model risk management regulation. They had several models built on DataRobot’s platform and deployed into production, including an internal credit score model, a fraud score model, and a dealer score model. However, they needed an independent model validation after partnering with a bank, which was a critical component of their partnership.
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Predicting Carpark Capacity at Ascendas-Singbridge Using Machine Learning - DataRobot Industrial IoT Case Study
Predicting Carpark Capacity at Ascendas-Singbridge Using Machine Learning
Ascendas-Singbridge Group (ASG), a leading sustainable urban and business space solutions provider in Asia, was facing a challenge with parking capacity at their properties. In densely populated cities like Singapore, parking capacity is a major issue. Despite having high-rise buildings with carparks or garages, parking capacity remained a challenge for both property managers and drivers. ASG wanted to forecast and predict parking lot capacity to optimize their parking services, improve the experience for visitors and drivers, and potentially increase revenue. They had previously used a different platform for model building, but it was costly and did not deliver the accurate predictions they needed.
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Snowflake + DataRobot Unlock the Value of Data at Beacon Street Services - DataRobot Industrial IoT Case Study
Snowflake + DataRobot Unlock the Value of Data at Beacon Street Services
Beacon Street Services, the services division of Stansberry Holdings, provides subscription-based publications of financial information and software to millions of investors globally. The company had a vision to have one single source of truth for all of its data, housed within Snowflake, to ensure consistency and accuracy across all applications of that data. Having migrated from AWS Redshift to Snowflake several years ago, the company had collected and stored great volumes of data within Snowflake. However, the company realized there was value to applying a data science approach to this data, especially for its marketing and sales teams. There was an opportunity to improve on previous tactics and processes of selling subscriptions, with a clearer feedback loop and signal for marketers to optimize their campaigns.
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Innovation in Investment Banking Through AutoML - DataRobot Industrial IoT Case Study
Innovation in Investment Banking Through AutoML
Tommy Tan, CEO of TC Capital, a leading Pan-Asian boutique investment firm specializing in M&A and negotiated capital investments, was dissatisfied with the traditional methods of valuing firms used in investment banking. These methods, which include comparing past mergers and acquisitions, looking at stock market valuations of similar companies, and discounted cash flow models, were manually intensive and carried a high risk of human error. They could also lead to highly subjective valuations. Tommy and his team wanted to build their own valuation methodology, one that utilized cutting edge technology and took advantage of the amount of data available to bankers today.
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The National Association of REALTORS® Brokers Value for Members with DataRobot - DataRobot Industrial IoT Case Study
The National Association of REALTORS® Brokers Value for Members with DataRobot
The National Association of REALTORS® (NAR) is America’s largest trade association, representing over 1.4 million members around the country. Their members include brokers, salespeople, property managers, counselors, and others engaged in all aspects of the real estate industry. With so many members from unique backgrounds with varying professional interests, each looking for something different out of their membership, delivering value to them requires NAR to truly know their members well. To do that, NAR turned to the data. However, the association was trying to become more data-driven, and so was focused on higher-level objectives like understanding its members better and solving business problems that impacted its members. But because of the nature of how the two data scientists operated — without a centralized team or the appropriate resources - communication and feedback loops around data science projects were inefficient, and negatively impacted the ability of the data scientists to deliver value.
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How Florida International University Predicts the Future to Help At-Risk Students - DataRobot Industrial IoT Case Study
How Florida International University Predicts the Future to Help At-Risk Students
Florida International University (FIU), one of the largest universities in Florida, was facing a challenge in identifying and assisting at-risk students. Many of their students come from low-income areas, are the first in their family to go to college, or are the first of their family to enter the country. These factors often present obstacles that make it difficult for these students to progress. The university's analysis was more reactive than proactive, identifying students who had already faced academic or financial obstacles. The university wanted to be more proactive with data to better serve their students.
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DataRobot In the Classroom - DataRobot Industrial IoT Case Study
DataRobot In the Classroom
Smith School of Business at Queen’s University in Canada is known for its innovative approach to business education, including creating ground-breaking programs and courses in emerging areas including artificial intelligence, fintech, analytics, cultural diversity, team dynamics, social impact and more. Anton Ovchinnikov, Distinguished Professor of Management Analytics at the Smith School of Business, teaches courses in predictive modeling, data science and machine learning. His students are typically working professionals who are consumers of analytics, not producers. Many of them are, or will soon be, managers of analytical projects and teams. As part of Anton’s courses, he wants his students to familiarize themselves with the raw coding, at least at a basic level, in order to fully understand what’s behind the curtain of what they’re trying to predict. However, the manual coding process can be time-consuming and complex, leading to a need for a more efficient solution.
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How Consensus, a Target subsidiary, simplified data wrangling for machine learning - DataRobot Industrial IoT Case Study
How Consensus, a Target subsidiary, simplified data wrangling for machine learning
Consensus Corporation, a subsidiary of Target, simplifies the complex process of selling connected devices. However, a major risk for retailers selling expensive devices and services is fraudulent customer activity. To address this risk, Consensus adopted fraud prevention as one of its core services. Through its automated machine learning-powered online engine, Consensus can alert its retailer clients to high-risk consumers before they purchase expensive devices. To identify potential fraud, Consensus built an advanced data model that leverages huge volumes of disparate data and undergoes routine updates. In order to be able to constantly refine its predictive models and alert their retailer clients faster to potential fraud, Consensus sought out technologies that would allow it to prepare this data faster for use in its machine learning models. The painstaking process of re-engineering SQL scripts took Consensus up to six weeks (on average) to update its fraud detection machine learning model. In addition, the data preparation process required sophisticated knowledge of data science techniques, leaving the company’s product and business intelligence teams unable to perform data preparation tasks on their own.
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Using Explainable AI to Revolutionize the Recruitment Industry and Candidate Experience - DataRobot Industrial IoT Case Study
Using Explainable AI to Revolutionize the Recruitment Industry and Candidate Experience
The Adecco Group, UK & Ireland, a part of the Global 500 ranked company, The Adecco Group, was facing an efficiency problem in their recruitment process. The traditional recruitment process involved multiple manual interventions, which were prone to mistakes and human interpretation. Recruiters had to sift through high volumes of CVs, making it difficult to match the right candidates to the right job. With recruiters working full throttle, it was easy for data-driven insights to remain hidden. The company was looking for a solution to reduce time and speed to fill open positions and improve their hiring attraction pipeline for client talent pools.
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UCSF-BASIC uses DataRobot and Operating Room Data to Predict the Outcomes of Patients with Traumatic Spinal Cord Injuries - DataRobot Industrial IoT Case Study
UCSF-BASIC uses DataRobot and Operating Room Data to Predict the Outcomes of Patients with Traumatic Spinal Cord Injuries
The University of California, San Francisco's Transforming Research and Clinical Knowledge in Spinal Cord Injury (TRACK-SCI) team is dedicated to improving patient care for individuals with traumatic spinal cord injuries. Each year, there are 17,000 cases of spinal cord injury (SCI) in the United States, often resulting in permanent challenges such as paralysis and sensory dysfunction. The estimated lifetime costs for each individual patient can range from just over $1 million to nearly $5 million. Acute clinical decisions made throughout SCI patient care, such as during surgery and ICU management, are critical for setting a patient up for recovery. However, clinicians lack guidance developed through data-driven research. One area of particular interest to the TRACK-SCI team is how blood pressure management during operating procedures affects a patient’s likelihood to recover.
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Kiva Uses DataRobot to Increase Microloan Funding Rate - DataRobot Industrial IoT Case Study
Kiva Uses DataRobot to Increase Microloan Funding Rate
Kiva is a financial services nonprofit that uses crowdfunding to underwrite loans for people who are underserved by traditional channels. The World Bank estimates that approximately 1.7 billion people are unbanked, meaning they do not have access to financial services offered by retail banks. This leaves many people without access to the financial instruments that much of the world takes for granted, such as credit cards and loans. Alternative banking methods tend to have high fees that can put them out of reach for the people that need them. This lack of capital hinders economic growth, opportunity, and equality in the places that need it the most. The key to Kiva’s mission is to ensure that those who apply for loans are successfully funded.
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Anacostia Riverkeeper Uses DataRobot to Predict Water Quality in the Anacostia River - DataRobot Industrial IoT Case Study
Anacostia Riverkeeper Uses DataRobot to Predict Water Quality in the Anacostia River
Anacostia Riverkeeper is a nonprofit organization dedicated to protecting and restoring the Anacostia River, which runs through Washington, DC and parts of Maryland. The river is heavily polluted, and swimming has been illegal since the 1970s due to health concerns about pollution. The current methods for testing water quality take days to return results, creating a delay between when the water is tested and when the results are shared with the public. Moreover, water quality can rapidly change with weather conditions, such as rain, making test results outdated before they’re even returned. Anacostia Riverkeeper needed a more efficient and timely way to monitor and predict water quality in the Anacostia River.
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US Foods Analyzes Transactions from 300,000 Customers with Snowflake and DataRobot - DataRobot Industrial IoT Case Study
US Foods Analyzes Transactions from 300,000 Customers with Snowflake and DataRobot
US Foods, one of America's largest food companies, was facing significant challenges with its legacy, on-premises data warehouse. The system required constant maintenance, experienced frequent resource contention, and could not affordably store more than two years’ worth of data. Business analysts took weeks to prepare a single report due to the system’s counterintuitive user interface, inability to load large data sets, and limited BI features. Reporting delays led some business users to seek insights from siloed Microsoft Access databases and Excel spreadsheets. Data science modeling to predict customer loyalty and churn rate was simply impossible. US Foods evaluated several cloud data management solutions, but none offered the right mix of performance and affordability.
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Harris Farm Markets Taps DataRobot for Demand Forecasting - DataRobot Industrial IoT Case Study
Harris Farm Markets Taps DataRobot for Demand Forecasting
Harris Farm Markets, a grocery retailer in New South Wales, Australia, faced significant challenges in managing its perishable inventory due to unpredictable supply caused by wildfires and sudden spikes in demand due to COVID. With over two dozen stores and an expanding geographic footprint, the chain needed a way to consistently meet consumers’ demand for variety and freshness. The task of predicting demand for their 20,000 SKUs, including a subset of concurrent fresh produce running at 1200, was too vast for a manual approach. The company sought a solution that could provide accurate predictions with minimal labor on the part of the IT team.
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Optimizing Loan Predictions with DataRobot AI Apps - DataRobot Industrial IoT Case Study
Optimizing Loan Predictions with DataRobot AI Apps
The fintech company provides consumer financing to merchants and consumers at point-of-sale through more adaptable alternatives to traditional lending programs. They built models to support the company’s projects in various departments including underwriting, accounting, and collections. However, they faced a challenge in the collections department. With tens of thousands of delinquent loans at any given time, there are a lot of calls for the Collections team to make. The more successful calls they have — measured by an industry metric called Right Party Contact (RPC) — the more likely they are to be able to successfully collect on these delinquent loans, and thus bring in revenue for the company. However, with such a great volume of target calls to make and generally low connection rates in terms of reaching the right person or party, any type of optimization or efficiency can make a big difference.
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Empowering Life Insurers with Epigenetics and AI - DataRobot Industrial IoT Case Study
Empowering Life Insurers with Epigenetics and AI
FOXO Technologies is a biotechnology company that aims to make longevity accessible to all using epigenetic science. They use machine learning to examine thousands of models to find patterns of DNA methylation that classify human health, wellness, disease, and aging. Their mission is to help people live longer, healthier lives. However, the data science team at FOXO found it challenging to scale as they looked to build thousands of predictive models based on 860,000 DNA probes. They needed a solution that could help them build, fine-tune, deploy, and manage models in production at scale.
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OYAK Cement Boosts Alternative Fuel Usage from 4% to 30% — for Savings of Around $39M - DataRobot Industrial IoT Case Study
OYAK Cement Boosts Alternative Fuel Usage from 4% to 30% — for Savings of Around $39M
OYAK Cement, a leading Turkish cement maker, was facing a significant challenge. The company operates 18 plants in six countries with a production capacity of 33 million tons of cement each year. It was estimated that up to eight percent of CO2 emissions stem from manufacturing cement, the raw material needed for concrete. This was a major concern for OYAK Cement as it was contributing to the environmental problem and also risking costly penalties from exceeding government emissions limits. The company recognized that increasing operational efficiency by five percent would result in four to five percent cost-savings, along with reducing CO2 output by two percent — preventing the release of nearly 200,000 tons of CO2 emissions and eliminating $10M+ worth of CO2-related social impact costs per year.
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Florida International University Triples Graduation Rates by Aiding At-Risk Students - DataRobot Industrial IoT Case Study
Florida International University Triples Graduation Rates by Aiding At-Risk Students
Florida International University (FIU) is a top-50 public university that serves a diverse student body of more than 58,000 and 260,000 Panther alumni. Many of these students come from low-income areas or may be the first generation to attend college. The university has a proactive approach to keep students in school, which depends on spotting signs of trouble. However, the previous modeling tools used by FIU produced inaccurate results and required exhaustive manual input. The out-of-the-box solutions weren’t tailored to the nuances of their institution, they would flag students that weren’t actually at-risk.
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Euskaltel Attracts, Keeps Customers with AI-Powered Offers - DataRobot Industrial IoT Case Study
Euskaltel Attracts, Keeps Customers with AI-Powered Offers
Euskaltel Group, a leading telecommunications company in Spain, was planning a nationwide expansion. The company needed a scalable way to use AI and machine learning to attract and retain customers, reduce the incidence of default, and identify cross-selling opportunities. Their business intelligence team had experimented with AI on a limited basis but still spent considerable time writing code. The challenge was to find a more efficient and effective way to use AI and machine learning in their workflow.
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Valley Bank Reduces Anti-Money Laundering False Positive Alerts by 22% - DataRobot Industrial IoT Case Study
Valley Bank Reduces Anti-Money Laundering False Positive Alerts by 22%
Valley Bank, a regional bank with approximately $50 billion in assets, was facing a challenge in its Anti-Money Laundering (AML) department. The bank was dealing with an overwhelming volume of false positives in its effort to uncover money laundering activities across millions of transactions. The bank's AML team was seeking to reduce the manual work involved in predictive modeling. The process of creating models manually was time-consuming, taking weeks to complete. The bank was looking for a solution that could automate its fraud detection process and manage the volume of false positives in a realistic way.
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Matmut Derives Data Insights 3 Times Faster - DataRobot Industrial IoT Case Study
Matmut Derives Data Insights 3 Times Faster
Matmut, a major player in the French insurance market, relies heavily on data to elevate nearly every area of the company. However, the company was facing challenges in deriving insights within the limits of stringent privacy regulations. Matmut’s data lab was building predictive models with a single Jupyter notebook, a process that was manual and required considerable coding. This approach was not efficient and did not foster collaboration between data scientists and the business. The company was in need of a single solution that could reduce the effort and enable collaboration.
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World’s Largest Car-Sharing Marketplace Maximizes Guest, Host Experience with AI - DataRobot Industrial IoT Case Study
World’s Largest Car-Sharing Marketplace Maximizes Guest, Host Experience with AI
Turo, the world’s largest car-sharing marketplace, sought to optimize its operations by leveraging data insights. The company connects guests and vehicle owners for mutual benefit across the US, Canada, and the UK. With over 1.3 million active guests and over 85,000 active hosts powering more than 160,000 active vehicles across 1,300 unique makes and models, Turo needed a way to efficiently manage its vast operations. The company aimed to optimize pricing, risk, and marketing strategies using data insights. However, the sheer scale of its operations presented a significant challenge in terms of data management and analysis.
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U.S. Army Increases Financial Agility with AI by Reclaiming Funds for High Priority Projects $2.2B+ in excess funds identified at a 3x higher yield - DataRobot Industrial IoT Case Study
U.S. Army Increases Financial Agility with AI by Reclaiming Funds for High Priority Projects $2.2B+ in excess funds identified at a 3x higher yield
The U.S. Army was facing a challenge of identifying funds that were potentially going to be lost due to expiring contracts. They needed an innovative AI solution that could help contracting officers accurately predict the contracts most likely to underspend their funding so they could quickly deobligate and reallocate these funds to other high priority projects. The Unliquidated Obligation (ULO) project was born out of the Army’s HQ Analytics Lab (HAL) and Deep Green OBT initiatives.
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Profitable Sustained Growth Aided by AI and Machine Learning - DataRobot Industrial IoT Case Study
Profitable Sustained Growth Aided by AI and Machine Learning
MinterEllison, a multinational top-tier law and professional services firm, was looking to grow profitably and sustainably as part of its 2025 strategy. The firm, which operates in five countries, needed a more sophisticated, predictive lens to understand what might happen, especially in the wake of the COVID-19 pandemic. The firm's existing data analytics platform was not sufficient for this task. The firm's Head of Data and Analytics, Shaheen Saud, emphasized the need for a good understanding of performance and opportunities, which prompted MinterEllison to take an innovative look at its IT and digital services infrastructure.
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