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Fusing Weather Data into Machine Learning Predictions
Weather has a high impact on operations in many industries, and therefore is of great value to integrate into strategic decision making. Mosaic has roots in aviation research & development, giving us deep expertise in combining weather data streams with planning applications to facilitate efficient resource allocation.
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Data Science and Design Thinking
Mosaic writes an in-depth view on the synergies between design thinking & data science. We also examine how these two disciplines can be used together.
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Detecting Airport Layouts with Computer Vision
Computer vision is a powerful AI technique with vast business applications. In this white paper, Mosaic examines how to use machine vision for detecting airport layouts from the sky.
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Workforce Planning Prediction
Optimizing seasonal staffing and resourcing is a key challenge for many industries, especially when the exact timing of high-volume activity can change based on complex factors.
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Revamping Airline Demand Forecasting
In our white paper, Mosaic examines fresh machine learning based approaches to more accurately forecast airline seat demand.
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B2B Sales & Marketing Machine Learning
This whitepaper reviews an approach for applying machine learning and predictive analytics in a B2B sales & marketing environment.
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Advanced Statistics for Email A/B Testing
Applying statistical inference is a great way for businesses to get more value out of there email marketing programs.
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Machine Learning for Customer Experience
We examine how businesses can apply machine learning to propensity modeling, CLV, segmentation, attribution, and churn.
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Dispatch Routing Optimization
In this whitepaper, we examine how different companies can attack the dispatch routing optimization problem using ML & AI.
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Data Science for Utilities
The Energy industry holds multiple predictive analytics and data science opportunities. One large utility hired a management consulting firm to study their data process. The management consultants identified over $300 Million of value by utilizing the data this utility had already collected over many years.