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利用物联网和数据可视化应对 COVID-19:i-sense 和 CARTO 案例研究
i-sense 是一个由工程和物理科学研究委员会 (EPSRC) 资助的跨学科研究合作组织 (IRC),旨在构建数字传感系统来识别和预防传染病和抗菌素耐药性的爆发。然而,他们在解读英格兰公共卫生部门、国民医疗服务体系 (NHS) 和国家统计局 (ONS) 发布的与 COVID-19 大流行应对相关的每日或每周数据时面临挑战。数据通常难以理解,因此评估现有系统的有效性具有挑战性。
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利用地理空间分析进行业务扩展:Instacart 案例研究
Instacart 是一家杂货配送和提货服务公司,其业务扩张战略面临挑战。该公司连接零售商与客户的方法较为保守,限制了其增长潜力。该公司没有充分利用其应用程序的潜力将客户与他们喜欢的杂货店联系起来,这影响了客户的参与度和支出。此外,该公司没有充分利用这个机会来帮助其零售合作伙伴接触新的客户群。我们面临的挑战是找到一种更积极的增长战略、提高客户参与度和支出并帮助零售商吸引新客户的方法。
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利用地理空间分析进行投资决策:杰富瑞案例研究
Jefferies 是一家全球投资银行公司,正在努力应对做出明智的投资决策并有效为客户提供建议的挑战。传统的数据策略和研究并未正式融入他们的大部分研究中,常常被视为事后的想法。该公司还面临着耗时的信息收集过程,这可能需要数月甚至数年的时间。此外,该公司正试图从做出假设转向基于扎实的基本面观察做出决策。面临的挑战是找到一个关键问题,驱动人类认为非常重要的关键变量,并将其从以前假设的东西转变为可能仍然有一些假设但至少可以基于的东西扎根的基本观察。
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绘制隔离图:麻省理工学院的不平等地图集
挑战围绕着理解城市中的社会隔离,特别是在美国。对隔离的传统理解是基于地理位置,通常表现为邻近的富裕地区和贫困地区之间的鲜明对比。然而,这种观点没有考虑隔离背后的“原因”,而只关注“地点”。我们面临的挑战是通过使用高频位置数据来了解隔离背后的原因,从而挑战这种传统的隔离概念。从美国 11 个人口最稠密的大都市区收集的数据显示,平均而言,我们每天接触的人中约有 75% 居住在 15 公里以外的地方。这表明,要理解种族隔离,我们需要超越地理位置并开始考虑其背后的原因。
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Case Study: CARTO for City Development Vizonomy: Assesing Climate Risk
Vizonomy, a computer software company, was faced with the challenge of making natural risk assessments and hazard mitigation plans accessible to a wider range of stakeholders. Traditionally, these assessments were only available to a select number of government stakeholders who could afford the costs associated with the process. As a result, few communities were able to develop a plan and thereby become eligible for federal resources should a natural disaster occur. Additionally, the traditional risk assessment process was built on a static model, where datasets quickly become out-of-date and new assessments cannot be developed easily without external assistance.
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Case Study: CARTO for Media & Agencies - Tecnilógica Uses Location Intelligence for A Viral Visualization
Tecnilógica, a digital agency, wanted to leverage a timely, newsworthy event to generate brand awareness and drive traffic to their platform. The Ashley Madison data leak provided an opportunity to create a data-driven visualization that would attract a global audience. However, the challenge was to clean up the dataset, removing any identifying information to protect users, and then find a way to visualize the data in a compelling and insightful manner.
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CARTO for Telecoms & Big Data: Crowdx Analyzing Big Data for Even Bigger Customer Returns
The telecommunications industry has limited visibility of the end customer quality experience. Assessing mobile phone users' needs is challenging due to barriers of access to actual, accurate customer experience related information. The two standard methods of collecting network quality information, through a drive test and by collecting data within the network from nodes, are either costly and inefficient or only provide an estimation and a very limited network centric view of the customer experience. Telecoms struggled to analyze trends and variances in traditional formats. In some cases, they lacked pertinent information to make timely decisions and take corrective action.
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Case Study: CARTO for Social Engagement - Spotify, Increasing Brand Visibility with Data-Driven Visualizations
Spotify, a digital music service with over 100 million active users, sought to increase its brand visibility and user traffic through data-driven visualizations. After an original data-driven visualization increased traffic to the music platform by 2 million in just 11 days, Spotify aimed to repeat that success. However, this time the map needed to be customized with Spotify branding to underscore the company’s global reach and further brand awareness, while driving even more user traffic to the platform. The new visualization needed to embody Spotify as a brand, and provide insights on distinct musical preferences.
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Case Study: CARTO for Media - Le Télégramme Leverages Data Visualizations for an Engaging Online Presence
Le Télégramme, a French regional daily newspaper, was looking for a new way to visualize data in a timely manner to increase brand awareness and drive more traffic to its platform. They wanted to use visualizations that could be customizable and allow for easy adoption by non-coders. The collapse of the traditional business model of print newspapers has led many publications to establish themselves with original reporting, rather than just commentary or summaries of reporting from other publications to attract and retain readers and advertisers.
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Smart Site Planning for the Healthcare Industry with Location Intelligence
As Sanitas, a healthcare provider based in Spain, grows and diversifies its offerings, it needs to ensure it's expanding in the right places and in the right ways. Being a part of Bupa’s massive operation, which touches 190 countries, finding locations best suited to new healthcare centers is a complex endeavor—as is uncovering the healthcare needs of local populations. Sanitas prides itself on serving clients throughout every stage of life; doing this well across a growing variety of facilities requires a wealth of demographic and location information—as well as the means to organize and understand that data in actionable ways. To fulfill its mission, Sanitas needed location intelligence that could provide dual functions: helping the company make wise choices for future development, and enabling the company to provide exceptional care to local demographics.
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Using Location in Real Estate Market Analysis Applications
JLL, a global leader in real estate services, was looking to scale their Gea solution in key countries such as the US, Australia, the UK, Italy, and France. The Gea platform brings together thousands of data types on Real Estate assets to ensure accurate valuations and analyses are provided to their clients. Connecting to their Big Data Cloud infrastructure (JLL DataHub) would be fundamental in order to ensure high-quality, automated data pipelines could support frequent updates to the billions of data points that would be available in the solution. However, they faced challenges in localization for different markets, handling big data, and ensuring the final application would be user-friendly for consultants with more commercial profiles.
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Driving Spatial Insights for Outlet Network Optimization
Renault needed national level georeporting for local and regional analysis of their network. The goals of the Renault France team are threefold: optimization, standardization, and a more granular analysis. With 4000 outlets across the country, Renault’s presence in France is extremely significant. Each regional manager is looking for the opportunity to look into coverage levels, local competitive landscape, and outlet by outlet performance data. Having a unified system where their regional leaders can look at their own data to make decisions around resourcing and geomarketing, while standardizing language and process via a single platform across the country, would help meet KPIs for sales and aftersales outlets.
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Unlocking Consumer Insights at Scale with Cloud Native Spatial Analytics
Faraday, a marketer's choice for consumer prediction infrastructure, faced several challenges in predicting the future of an ever-evolving industry. The task required a holistic approach to gathering, visualizing, and segmenting data from a variety of sources. The task became increasingly difficult if the objective was to make these predictions with minimum or no requirements for user technical expertise. Faraday needed a way to visualize vast amounts of data to bring customer personas, segments, and predictions to life and drive faster business decisions. Another challenge was ensuring that these large volumes of data or the level of sophistication of each analytical use case did not impact the speed of the end-user experience. Faraday ingests data from 200 integrations into BigQuery. Therefore, in order to take its predictive analysis solution to the next level, Faraday needed a BigQuery- native Location Intelligence platform capable of seamlessly analyzing and visualizing the vast amounts of consumer household data stored there.
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How ING use spatial analysis to drive Residential Real Estate decisions
ING’s marketing team wanted to provide an added-value service that would allow consumers to select their neighborhood with more location-based context, based on their own individual needs and characteristics. They noticed that their clients were often focusing on key property information such as square meters, the number of rooms, recency of renovation, or even how much sun it gets, rather than focusing on the location. They wanted to create a neighborhood selection solution, that would allow their existing and potential clients to find the perfect neighborhood for them, based on their needs, preferences and budget. The challenge was to gather and present information in a clear way for consumers, allowing the user to gain new insights from high volumes of spatial data in 5 cities, going beyond simply displaying Points of Interest on a map. The solution also needed to work seamlessly on mobile devices, creating a design that would ensure the mobile experience would be just as intuitive for users.
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Workplace Social Distancing with Indoor Mapping Software
Perkins and Will, an interdisciplinary, research-based architecture and design firm, faced the challenge of ensuring the safety of their employees as they returned to work amidst the COVID-19 pandemic. The firm needed a comprehensive guide to facilitate the transition back to the workplace, taking into account factors such as employee readiness, distance analysis, and new protocols. The firm had to support the return of 2,600 employees across 21 studios in North America. The process of planning resource allocation in the workspace needed to be three times faster to meet the demands of the situation.
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Full Stack Geomarketing App Development
Anagraph, a Montreal-based company specializing in building custom geospatial solutions, identified a gap in the market for small, online businesses. Many of these businesses lacked information about the market and tools to provide insights into buyer personas. Geomarketing solutions have been around for decades, but due to complexity and cost, they have long been accessible only to large enterprises. Anagraph saw an opportunity to bridge this gap and provide a greater range of retail insights to smaller operations, allowing online retailers to build a more comprehensive geomarketing strategy.
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Identifying Real Estate Investment Opportunities with Location Data
Grupo Lar’s asset management and development team were looking for ways to use new types of data, and in particular location data to understand potential investment opportunities - considering more spatial factors in their decision-making. Spain is Grupo Lar’s main market, where it has consolidated a dominant position in the real estate sector, combining investment, management, and promotion. As an independent company with a sole focus on real estate, Grupo Lar is able to establish a strategy based on the best investment opportunity moments, thanks to its extensive knowledge of the sector as well as its ability to access local resources. This position allows them to gather large amounts of insights on a daily basis. Therefore, the main challenge of this project was to provide a solution that enabled them to analyze and visualize all their business KPIs in a simple and intuitive way, while processing the data in real time, in order to streamline the decision making process.
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