Provides predictive analytics on future demand for healthcare services by service line and geography, using AI models on historical and current data.
Analyzes data on healthcare consumer behavior, preferences, and decision-making drivers, segmenting populations by clinical, social, and economic factors.
Compares hospital and physician group performance across metrics like volume, market share, and efficiency against local and national peers.
Visualizes healthcare supply, demand, and consumer data on interactive maps down to the ZIP code or census tract level.
Tracks longitudinal changes in the ratio of healthcare providers to population needs for specific services over multi-year periods.
A large hospital system uses Trilliant Health to identify underserved geographic areas for new outpatient surgery centers or specialty clinics. By analyzing forecasted demand for orthopedics or cardiology against existing provider supply in target ZIP codes, the strategy team can prioritize investments with the highest potential ROI and lowest competitive saturation, leading to more successful market entries.
A health insurance company utilizes the platform to assess provider performance and market concentration. By benchmarking cost and quality metrics across physician groups in a region, the plan can design narrower, high-value networks and negotiate more favorable contracts, ultimately controlling costs while maintaining member access to quality care.
A private equity firm evaluating an acquisition of a physician practice management company uses Trilliant Health to validate the target's market position and growth potential. The firm analyzes historical volume trends, competitive landscape, and consumer demographics in the practice's service areas to assess investment risk and forecast future revenue, informing valuation and deal structure.
An academic medical center employs the platform to evaluate the performance and future viability of its clinical service lines. By comparing its market share and growth rates in neurology or oncology against regional competitors and national trends, leadership can decide where to invest in faculty recruitment, facility upgrades, or marketing to strengthen leading services or divest from declining ones.
A consulting firm leverages Trilliant Health as a primary data source for client engagements. Consultants rapidly generate custom analyses on hospital consolidation impacts, consumer migration patterns, or the effects of new retail health entrants, providing clients with evidence-based recommendations backed by a comprehensive, AI-enhanced dataset that would be prohibitively expensive to assemble independently.
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15Five operates in the people analytics and employee experience space, where platforms aggregate HR and feedback data to give organizations insight into their workforce. These tools typically support engagement surveys, performance or goal tracking, and dashboards that help leaders interpret trends. They are intended to augment HR and management decisions, not to replace professional judgment or context. For specific information about 15Five's metrics, integrations, and privacy safeguards, you should refer to the vendor resources published at https://www.15five.com.
20-20 Technologies is a comprehensive interior design and space planning software platform primarily serving kitchen and bath designers, furniture retailers, and interior design professionals. The company provides specialized tools for creating detailed 3D visualizations, generating accurate quotes, managing projects, and streamlining the entire design-to-sales workflow. Their software enables designers to create photorealistic renderings, produce precise floor plans, and automatically generate material lists and pricing. The platform integrates with manufacturer catalogs, allowing users to access up-to-date product information and specifications. 20-20 Technologies focuses on bridging the gap between design creativity and practical business needs, helping professionals present compelling visual proposals while maintaining accurate costing and project management. The software is particularly strong in the kitchen and bath industry, where precision measurements and material specifications are critical. Users range from independent designers to large retail chains and manufacturing companies seeking to improve their design presentation capabilities and sales processes.
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