Customer data platform

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A customer data platform (CDP) is a collection of software which creates a persistent, unified customer database that is accessible to other systems. Data is pulled from multiple sources, cleaned and combined to create a single customer profile. This structured data is then made available to other marketing systems.[1] According to Gartner, customer data platforms have evolved from a variety of mature markets, "including multichannel campaign management, tag management and data integration."[2]

The CDP market is currently a $300 million industry and projected to reach $1 billion by 2019.[3][needs update]

Capabilities[]

In addition, some CDPs provide additional functions such as marketing performance measurement analytics, predictive modeling, and content marketing.

Commonalities across CDPs:

  • marketer-managed;
  • unified, persistent, single database for customer behavioral, profile and other data, from any internal or external source;
  • consistent identifier that links all of a customer's data;
  • accessible by external systems and structured to support marketers' needs for campaign management, marketing analyses and business intelligence;[4]
  • provide a 360-degree view of the customer;
  • group customers into audience segments;[5] and
  • allow users the capability to predict the optimum next move with a customer.[6]

Data Collection[]

A main advantage of a CDP is its ability to collect data from a variety of sources (both online and offline, with a variety of formats and structures) and convert that disparate data into a standardized form. Some of the data types a standard CDP should work with include:

  • Customer events: Browsing activity, actions on a website or in an app, clicks on a banner, etc.
  • Transactional data: Data including purchases, returns, data from a POS terminal.
  • Customer attributes: Age, gender, birthday, date of first purchase, segmentation data, customer predictions
  • Campaign evaluation data: Impressions, clicks, reach, engagement, etc.
  • Customer-company history: data from interactions with customer service, NPS scores, data from chatbots, social media posts, survey verbatims, focus group transcripts, call centre audio files etc.

Marketing automation systems[]

A CDP is fundamentally different in design and function when compared with marketing automation systems, though CDPs provide some of the functionality of marketing systems and customer engagement platforms. CDP tools are designed to talk to other systems. They retain details from other systems that the engagement or automation tool does not. This is valuable for trend analysis, predictive analytics, and recommendations that can leverage historical data.[7] Marketing campaigns using predictive recommendations are 116% more effective than those that do not[8] which leads to increased ROI of a CDP.

CDP vs DMP[]

A Data Management Platform (DMP) collects anonymous web and digital data. CDPs collect data that is tied to an identifiable individual. Users of CDP can leverage the intelligence to provide more personalized content and delivery.

A data warehouse or data lake collects data, usually from the same source and with the same structure of information. While this information can be manually synthesized, neither type of system delivers the identity resolution needed to build a consolidated single customer view. Data warehouses are often updated at scheduled intervals whereas CDPs ingest and make available data in real-time. In practice, most CDPs use the same technologies as data lakes; the difference is the CDP has built-in features to do additional processing to make the data usable, while a data lake may not.[9]

Main differences between a customer data platforms (CDP) vs. data management platforms (DMP):[6]

Attribute CDPs DMPs
Customer data management Provide a comprehensive, unified, persistent view of known and anonymous customers. Combine historic and real-time customer data, including customer profile, behavioral, transactional, and brand interaction data.[10] Manage segments of customers with anonymous profiles.
Data sources Work with both anonymous data (Cookie, device IDs and IP address) and known individual data (e.g. names, addresses, email, phone). Work mainly with anonymous data (cookies, device IDs and IP addresses).
Data unification methods Use sophisticated cleansing and matching algorithms to provide high-quality unified customer profiles. Use deterministic key matching to track customers and build anonymous profiles across digital channels.
Data updates Continuously processes batch and streaming data to keep profiles up to date and accurate. Updates customer profiles via batch process every one or two days.
Data maintenance Maintains customer golden records that persist over time. Maintains an anonymous customer record for a short period of time.

History of the CDP Industry[]

Although similar tools existed in the past, the term Customer Data Platform was first used in 2010. It was meant to describe a marketing software that could build a single customer view (a collection of all of a customer's data and events into one file).

These databases were originally used to power some other type of software, such as a marketing automation suite, a personalization engine, or a campaign management tool.

The power of the database behind these systems eventually became desirable in its own right. They evolved to become full-fledged software. Simultaneously, some tag management and web analytics providers also transformed their platforms into similar solutions, creating CDPs with a different origin but the same use.

These platforms became successful, and by 2016 they had become the CDP industry. This industry experienced quick growth, due to marketers recognizing the shortcomings of alternatives like DMPs and data lakes, as well as the capabilities a CDP could offer them.[11]

References[]

  1. ^ "CDP Basics". Customer Data Platform Institute. Retrieved June 22, 2018.
  2. ^ "The Marketer's Guide to Customer Data Platforms". Gartner. Retrieved May 22, 2018.
  3. ^ Greenberg, Paul. "How customer data platforms can benefit your business". ZDNet. Retrieved March 23, 2017.
  4. ^ "What is a Customer Data Platform (CDP)? - MarTech Landscape". MarTech Today. November 1, 2016. Retrieved February 3, 2018.
  5. ^ "Navigating Regulatory Challenges in Analytics, Data Science and AI" (PDF). Sia Partners. Retrieved March 27, 2019.
  6. ^ a b "What's the Difference Between CDPs and DMPs?". CMSWire. Retrieved April 12, 2019.
  7. ^ Earley, S. (2018). "The Role of a Customer Data Platform". IT Professional, 20(1), pp. 69–76. https://doi.org/10.1109/MITP.2018.011301803
  8. ^ "Get Our Benchmark Report 2020: Trigger-Based Marketing". Blueshift. Retrieved 2020-07-28.
  9. ^ "Mastering the Marketing Stack" (PDF). IBECC. Retrieved May 9, 2019.
  10. ^ "The Rise of Customer Data Platforms: How CDPs Move Beyond Data Warehouses, DMPs and CRMs". Blueshift. Retrieved 2020-07-27.
  11. ^ "Customer Data Platform Industry Update: July 2019". CDP Institute. Retrieved July 15, 2019.
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