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List of Minitab Salford Predictive Modeler Customers

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Logo Customer Industry Empl. Revenue Country Vendor Application Category When SI Insight
Bank of America Banking and Financial Services 213000 $101.9B United States Minitab Minitab Salford Predictive Modeler ML and Data Science Platforms 2017 n/a
In 2017, Bank of America implemented Minitab Salford Predictive Modeler within its analytics tooling to support finance, risk, and consumer-behavior analytics, and the vendor acquisition materials identify SPM as a key tool for predictive modeling and scoring at the bank. The record of usage highlights Minitab Salford Predictive Modeler as part of the bank's ML and Data Science Platforms footprint for consumer behavior and modeling tasks. Minitab Salford Predictive Modeler was applied to consumer behavior and modeling tasks, supporting classification and regression workflows, model validation, and production scoring pipelines. The implementation relied on SPM capabilities common to ML and Data Science Platforms, including tree based and ensemble modeling, variable selection, automated model fitting and scoring to generate deployable predictive models and scorecards for downstream processes. Operationally the solution was owned by analytics and risk modeling functions, where models fed consumer analytics and risk scoring workflows used across financial services use cases. Governance focused on model validation, iterative feature engineering and operational scoring, aligning outputs from Minitab Salford Predictive Modeler with existing risk and analytics processes.
DataLab USA Professional Services 130 $27M United States Minitab Minitab Salford Predictive Modeler ML and Data Science Platforms 2016 n/a
In 2016, DataLab USA implemented Minitab Salford Predictive Modeler as part of its ML and Data Science Platforms toolkit for marketing analytics. The team incorporated the Salford Predictive Modeler TreeNet algorithm into their predictive toolkit to support direct-marketing and customer value modeling for CRM driven campaigns. Deployment centered on embedding Minitab Salford Predictive Modeler into existing analytic workflows used by the marketing and CRM teams, delivering ensemble tree based predictive modeling, model selection and scoring capabilities aligned with ML and Data Science Platforms. The implementation was explicitly marketing and CRM focused, producing models for direct-marketing targeting and customer lifetime value segmentation. DataLab USA credited SPM TreeNet for superior predictive power and speed in competition models and the work contributed to winning the 2016 DMA Analytic Challenge.
Tate & Lyle Consumer Packaged Goods 4971 $2.4B United Kingdom Minitab Minitab Salford Predictive Modeler ML and Data Science Platforms 2020 n/a
In 2020 Tate & Lyle deployed Minitab Salford Predictive Modeler within its UK manufacturing organization to address particle size variation in corn sugar crystallization, using the application as an ML and Data Science Platforms solution for manufacturing process engineering and process analytics. The deployment placed predictive modeling capability into the hands of the corn sugar crystallization team to support root cause analysis and process insight generation. The project leveraged the TreeNet ensemble algorithm in Salford Predictive Modeler together with Minitab Statistical Software to perform high dimensional feature selection and model building. Analysis narrowed an initial set of more than 1,000 candidate predictors to eight key variables, with modeling workstreams emphasizing variable importance ranking and partial dependence style interpretation. Minitab Salford Predictive Modeler was used for tree based predictive modeling while Minitab Statistical Software was used for exploratory data analysis and statistical validation. Operational scope was focused on the UK corn sugar crystallization team, with activity at plant process level and involvement from manufacturing and process engineering stakeholders. Integrations were implemented between Salford Predictive Modeler workflows and Minitab Statistical Software to create a pipeline from statistical exploration to predictive model production. Data inputs supported plant operational decision making and process control analytics. Governance and rollout emphasized a model led root cause analysis process and a variable reduction governance workflow to ensure model interpretability and hand off to process engineers. According to the vendor case study created prior to 2021 the initiative delivered measurable process insights that reduced product variation.
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FAQ - APPS RUN THE WORLD Minitab Salford Predictive Modeler Coverage

Minitab Salford Predictive Modeler is a ML and Data Science Platforms solution from Minitab.

Companies worldwide use Minitab Salford Predictive Modeler, from small firms to large enterprises across 21+ industries.

Organizations such as Bank of America, Tate & Lyle and DataLab USA are recorded users of Minitab Salford Predictive Modeler for ML and Data Science Platforms.

Companies using Minitab Salford Predictive Modeler are most concentrated in Banking and Financial Services, Consumer Packaged Goods and Professional Services, with adoption spanning over 21 industries.

Companies using Minitab Salford Predictive Modeler are most concentrated in United States and United Kingdom, with adoption tracked across 195 countries worldwide. This global distribution highlights the popularity of Minitab Salford Predictive Modeler across Americas, EMEA, and APAC.

Companies using Minitab Salford Predictive Modeler range from small businesses with 0-100 employees - 0%, to mid-sized firms with 101-1,000 employees - 33.33%, large organizations with 1,001-10,000 employees - 33.33%, and global enterprises with 10,000+ employees - 33.33%.

Customers of Minitab Salford Predictive Modeler include firms across all revenue levels — from $0-100M, to $101M-$1B, $1B-$10B, and $10B+ global corporations.

Contact APPS RUN THE WORLD to access the full verified Minitab Salford Predictive Modeler customer database with detailed Firmographics such as industry, geography, revenue, and employee breakdowns as well as key decision makers in charge of ML and Data Science Platforms.