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Markerr Announces the Launch of RealRent Comps for Multifamily and Single Family Rental Properties

Markerr Announces the Launch of RealRent Comps for Multifamily and Single Family Rental Properties

Markerr宣布推出RealRent Comps,用于多家庭和单家庭租赁物业。
PR Newswire ·  06/12 06:30

Largest source of publicly aggregated, real-time rental comps covers 28m units and includes floor plan granularity, amenities and concessions

最大的公开聚合、实时租赁对比数据包括28m套房源,包括平面图,设施和优惠。

NEW YORK, June 12, 2024 /PRNewswire/ -- Markerr, a leader in data and AI for real estate, announces the launch of RealRent Comps, a new product delivering unique insight into rental markets for investors, owners, operators and property managers. Integrated within Markerr Data Studio, RealRent Comps provides unprecedented coverage, timeliness and granularity to comps analysis, setting new standards for investment and operational decision-making in the industry. Markerr clients are actively leveraging RealRent Comps to power a range of decisions across the asset life cycle including pricing, asset management, rent optimization and acquisitions and underwriting.

2024年6月12日,纽约/PRNewswire/——房地产数据和人工智能领军企业Markerr宣布推出RealRent Comps,这是一款为投资者、业主、运营商和物业管理公司提供租赁市场独特洞见的新产品。RealRent Comps已经融入Markerr Data Studio,为对比分析提供了前所未有的覆盖面积、时效性和细节,树立了该领域投资和运营决策制定的新标准。Markerr的客户正在积极利用RealRent Comps支持资产生命周期中的一系列决策,包括定价、资产管理、租金优化和收购和承保审核。

Largest source of publicly aggregated, real-time rental comparable, covering 28m units

最大的公开聚合、实时租赁对比数据,覆盖28m套房源。

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Markerr's Quantitative RealRent Comps Dashboard Offers the Largest Source of Public Rent Data.
Markerr的Quantitative RealRent Comps Dashboard 提供了最大范围的公共租金数据来源。

RealRent Comps, accessible via Markerr Data Studio, not only provides advanced search and analytical capabilities but also utilizes Markerr's broad data network to enhance our proprietary comps algorithm. This algorithm leverages machine learning to analyze key property and unit attributes, enabling clients to quickly identify and rank competitive properties. By integrating comprehensive, daily updated data at the floor plan level, users can make informed pricing decisions and evaluate investment potential with greater accuracy and insight.

RealRent Comps通过Markerr Data Studio可以实现高级搜索和分析能力,并利用Markerr广泛的数据网络来增强我们的专有对比算法。通过使用机器学习分析关键的物业和单元属性,该算法使客户能够快速识别和排名有竞争力的物业。将楼层平面图的全面、每日更新的数据融入其中,用户可以做出明智的定价决策,并以更精准、更深入的洞见评估投资潜力。

"Implementing Markerr's data has allowed us to build out proprietary analytics and insight to make data driven decisions at granular levels," said Charlie Garner, Principal, Fulton Peak Capital LLC. "We are excited to expand our relationship with Markerr with the addition of RealRent Comps, which will further enhance our real-time and innovative decision making."

"使用Markerr的数据使我们能够建立专有的分析和见解,以实现在细粒度上基于数据的决策," Fulton Peak Capital LLC的负责人Charlie Garner说。 "我们很高兴通过RealRent Comps扩大与Markerr的关系,从而进一步增强我们的实时和创新决策制定。"

The introduction of RealRent Comps arrives at a time when much of the industry is moving away from rental data sources aggregated via private data sharing and call centers. RealRent Comps provides clients with critical insight into rent trends, comps, pricing and concessions while mitigating risk from private data shared via "give and get" data aggregation models.

RealRent Comps的推出恰逢该行业许多公司正在远离租赁数据来源的私人数据共享和呼叫中心。RealRent Comps为客户提供了重要的租金趋势、对比、定价和优惠见解,同时通过“出让和获取”数据聚合模型减轻了通过私有数据共享产生的风险。

In creating the RealRent dataset, Markerr has developed a sophisticated and comprehensive approach to public data aggregation. By integrating data from diverse sources including marketplaces, aggregators, originators, community websites, and authoritative government datasets, Markerr ensures RealRent data is complete, accurate and timely. This rich mix of data, ranging from asking rental rates by floorplan to detailed property features, unit mix, concessions and availability, underpins RealRent's ability to offer real estate professionals, investors, and analysts a multifaceted view of the rental landscape.

在创建RealRent数据集时,Markerr采用了先进、全面的公共数据聚合方法。Markerr整合了来自各种来源的数据,包括市场、聚合器、创始人、社区网站和权威政府数据集,以确保RealRent数据完整、准确和及时。从要求按平面图询问的租金率到详细的物业功能、单元混合、优惠和可用性,这些数据综合体构成了RealRent向房地产专业人士、投资者和分析师提供多方面租赁景观洞见的基础。

Andrew Jenkins, Chief Product Officer at Markerr, highlighted the company's commitment to integrating advanced data science with practical real estate business applications. "Markerr RealRent Comps is steering pivotal decisions among top real estate industry leaders. The integration of AI with our publicly-sourced rental data empowers our client with critical rental insights that dramatically improve strategic decision-making while mitigating risk." Jenkins noted.

Markerr的首席产品官Andrew Jenkins强调了公司将先进数据科学与实用的房地产业务应用结合的承诺。"Markerr RealRent Comps正在引领顶尖房地产行业领袖做出重要决策。AI与我们的公开租赁数据融合,为客户提供关键的租赁洞见,从而显着提高了战略决策效率,同时减轻了风险。" Jenkins说。

Markerr RealRent Comps is immediately available to clients.

Markerr RealRent Comps已经对客户开放。

About Markerr:
Markerr is at the forefront of the real estate industry, offering innovative data products that empower investors to thrive in multifamily real estate investments. Leveraging real-time data, advanced machine learning, and generative AI, Markerr enables clients to gain a competitive edge and make more confident, efficient decisions. Trusted by leading institutional real estate owners and operators worldwide, Markerr is supported by top investors including RET Ventures, Pretium, and Bridge Investment Group. Visit for further details.

关于Markerr:
Markerr处于房地产行业的最前沿,提供创新数据产品,使投资者能够在多家庭房地产投资中获得成功。Markerr利用实时数据、先进的机器学习和生成AI,使客户获得竞争优势,并做出更有信心、更有效的决策。在全球领先的机构房地产业主和运营商的信任下,Markerr的支持者包括RET Ventures、Pretium和Bridge Investment Group。访问以获取更多细节。

SOURCE Markerr

信息来源:Markerr

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