Second Brain: Crafted, Curated, Connected, Compounded on 10月02日 21:14
客户数据平台:整合客户信息,驱动业务洞察
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客户数据平台(CDP)是一种整合多渠道客户数据、提供统一客户视图的系统。它通过收集、分类、清洗数据,消除不准确信息,为业务提供关键洞察。CDP的出现是营销技术演进的产物,经历了从CRM、DMP的发展,克服了数据孤岛和集成难题。现代CDP已能集成AI和机器学习,并支持合规性要求,是现代营销技术栈的核心组成部分。与传统集中式CDP不同,可组合CDP(Composable CDP)更侧重于利用云数据仓库,通过数据收集、转换和激活的模块化方式,实现灵活的数据管理和应用。

🎯 **统一客户视图**: CDP的核心价值在于整合来自不同渠道和设备的海量客户数据,打破信息孤岛,形成一个全面、统一的客户画像。这有助于企业深入理解客户的需求、行为和偏好,从而为个性化营销和服务奠定基础。

📜 **历史演进与技术发展**: CDP并非凭空出现,而是营销技术(MarTech)不断演进的结果。从早期的CRM系统(如TeleMagic、Act!)到云端解决方案,再到DMP的出现与局限性,最终催生了能够解决数据集成和管理难题的CDP。David Raab在2013年首次提出CDP概念,至今已集成AI和机器学习技术。

🏗️ **可组合CDP的兴起**: 面对云数据仓库的崛起,可组合CDP(Composable CDP)提供了一种更灵活的解决方案。它不再是“一体化”平台,而是通过数据收集(如事件追踪、ETL)、数据转换(如dbt)和数据激活(如Hightouch)等模块化组件,与现有数据基础设施协同工作,实现高效的数据管理和应用。

💡 **数据管理与洞察生成**: CDP在功能上与数据仓库或数据工程平台有相似之处,但其核心在于为特定领域(客户数据)提供定制化的数据集成、存储和洞察生成能力。它简化了数据流,从数据集成到数据湖/仓库,最终实现有价值的业务洞察。

A customer Data Platform (CDP) is a system that collects large quantities of customer data from a variety of channels and devices, enhancing accessibility for those who need it. CDPs sort, categorize, and cleanse data, removing inaccuracies or outdated information.

From What’s a Customer Data Platform? The Ultimate Guide to CDPs:

The Customer Data Platform, or CDP, provides a unique, unified view into your customers’ minds and needs amid a world of a million customer touchpoints and interactions.

Interesting distinctions include the differences between Reverse ETL and ELT: Differences to (Reverse)ELT. CDPs are often compared with CDI (Customer Data Infrastructure).

Arpit Choudhury writes extensively on this topic.

# History

CDPs initially powered various software types like marketing automation suites, personalization engines, or campaign management tools.

The history of the customer data platform (CDP) begins with the evolution of marketing technologies, particularly with the development of customer relationship management (CRM) systems and data management platforms (DMP).

The first CRM software, TeleMagic, debuted in 1985, offering more than just simple contact database functionalities. This was soon followed by Act! in 1987, and GoldMine in 1990, which integrated contact management with sales and marketing tools.

The customer data management (CDM) market emerged in the 1990s, evolving from on-premises CRMs to cloud-based solutions by the late 1990s, with Salesforce pioneering the software subscription model in 1999. Over 50% of CRM installations were considered failures by 2006, leading to significant dissatisfaction.

To overcome integration challenges, vendors enhanced their databases with APIs, evolving them into what are now known as CDPs. These platforms connected with various martech tools to improve customer experience management.

DMPs, developed in the 2000s, focused on managing anonymous customer profiles for advertising but struggled with long-term data storage and known customer data management. This led to a demand for more versatile data management platforms.

By the early 2010s, the martech landscape was highly fragmented, leading to the need for unified customer data management. The term “customer data platform” was coined by David Raab in 2013. Since then, CDPs have evolved into sophisticated platforms incorporating AI and machine learning for advanced data analysis and management. Today, they are central to martech stacks, offering features for privacy regulation compliance and predictive customer insights. The market for CDPs is expected to see significant growth.

Further reading: The History of the Customer Data Platform (CDP) and CRM

# Legacy CDP according to Hightouch

In a legacy CDP, marketing teams could centralize customer data directly within the CDP as an all-in-one solution. What we initially missed was the rise of the cloud data warehouse and its impact on managing and activating customer data.

Hightouch now uses the term “composable CDP” to describe their new approach to customer data platforms RW Friends Don’t Let Friends Buy a CDP Hightouch:

Data Collection:

    Event tracking (often using tools like Snowplow or Segment/Rudderstack): Generate, enhance, and model high-quality behavioral data across all platforms and channels in a uniform format, streaming it into your data warehouse or lake.ETL (commonly Fivetran): Replicate data from your SaaS tools and databases across various domains such as marketing, sales, and finance into your data warehouse.

Data Transformation:

    dbt: Post data collection, use SQL to clean up and transform the raw data into usable tables/views within your data warehouse.

Data Activation:

    Hightouch: Sync data from the data warehouse into business-critical tools like Salesforce, Marketo, and Facebook Ads.

To me, CDPs are similar to data warehouses or data engineering platforms, tailored specifically for one domain. There’s no need for a new term or separate tools for what essentially involves data integration followed by a data lake or data warehouse and, ultimately, generating insights.

This image, though depicting a GTM stack and not a CDP, illustrates the similarity, starting with data integration, moving to a data lake or data warehouse, and culminating in inhttps://www.ssp.sh/brain/Pasted%20image%2020240130084558.png20240130084558.png"> Image from [Approaching Go-to-Market as a Data Engineer](

# Composable vs “Tradhttps://www.ssp.sh/brain/CDP%20<em>Customer%20Data%20Platform</em>-1740301371638.webpatform</em>-1740301371638.webp">
Oussama Ghanmi on LinkedIn: Traditional vs composable CDPs. Here are the 5 biggest differences (from… | 39 comments


Origin: Unbundling the CDP
References:
Created 2022-03-16

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客户数据平台 CDP 数据整合 客户洞察 营销技术 Customer Data Platform CDP Data Integration Customer Insights MarTech
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