Welcome to the SmallBusiness.com WIKI
The free sourcebook of small business knowledge from SmallBusiness.com
Currently with 29,735 entries and growing.

WIKI Welcome Page
Local | Glossaries | How-to's | Guides | Start-up | Links | Technology | All Hubs
About · Help Hub · Register to Edit · Editing Help
Twitter: @smallbusiness | Facebook | Pinterest | Google+

SmallBusiness-com-logo.jpeg

In addition to the information found on the SmallBusiness.com/WIKI,
you may find more information and help on a topic
by clicking over to SmallBusiness.com and searching there.


Note | Editorial privileges have been turned off temporarily.
You can still use the Wiki but cannot edit existing posts or add new posts.
You can e-mail us at [email protected].


Data as a service

SmallBusiness.com: The free small business resource
Jump to: navigation, search

Data as a service, or DaaS, is a cousin of software as a service[1]. Like all members of the "as a Service" (aaS) family, DaaS is based on the concept that the product, data in this case, can be provided on demand[2] to the user regardless of geographic or organizational separation of provider and consumer. Additionally, the emergence of service-oriented architecture (SOA) has rendered the actual platform on which the data resides also irrelevant[3]. This development has enabled the recent emergence of the relatively new concept of DaaS.

Data provided as a service was at first primarily used in web mashups, but now is being increasingly employed both commercially and, less commonly, within organisations such as the UN[4].

Traditionally, most enterprises have used data stored in a self-contained repository, for which software was specifically developed to access and present the data in a human-readable form. One result of this paradigm is the bundling of both the data and the software needed to interpret it into a single package, sold as a consumer product. As the number of bundled software/data packages proliferated and required interaction among one another, another layer of interface was required. These interfaces, collectively known as enterprise application integration (EAI), often tended to encourage vendor lock-in, as it is generally easy to integrate applications that are built upon the same foundation technology[5].

The result of the combined software/data consumer package and required EAI middleware has been an increased amount of software for organizations to manage and maintain, simply for the use of particular data. In addition to routine maintenance costs, a cascading amount of software updates are required as the format of the data changes. The existence of this situation contributes to the attractiveness of DaaS to data consumers because it allows for the separation of data cost and usage from that of a specific software or platform.

Benefits

Data as a Service brings the notion that data quality can happen in a centralized place, cleansing and enriching data and offering it to different systems, applications or users, irrespective of where they were in the organization or on the network[3]. As such, Data as a Service solutions provide the following advantages:

  • Agility – Customers can move quickly due to the simplicity of the data access and the fact that they don’t need extensive knowledge of the underlying data. If customers require a slightly different data structure or has location specific requirements, the implementation is easy because the changes are minimal.
  • Cost-effectiveness – Providers can build the base with the data experts and outsource the presentation layer, which makes for very cost effective user interfaces and makes change requests at the presentation layer much more feasible.
  • Data quality – Access to the data is controlled through the data services, which tends to improve data quality because there is a single point for updates. Once those services are tested thoroughly, they only need to be regression tested if they remain unchanged for the next deployment.

Pricing models

There are hundreds of DaaS vendors on the web and the pricing models by which they charge their customers fall mainly into two major categories[6].

  1. Volume-based model which has two approaches:
    1. Quantity-based pricing: This is the simplest model to implement. The vendors charge their customers based on the amount of data they want to use.Subscriptions for an unlimited amount of data is referred to as the fire-hose approach.
    2. Pay per call: in this approach vendors charge for each call from the customer to the API.
  2. Data type-based model: in this model vendors charge based on the type or attribute of data that customer needs. For example, geographic, financial and historical data necessary for customer business are examples of types of data upon which pricing may be based. Some vendors such as Microsoft Azure store the data in three different types (blobs, queues and tables)[7]

Some DaaS vendors have restrictions on subscription, such as minimum or maximum space and time (monthly or yearly).

Criticism

The drawbacks of data as a service are generally similar to those associated with any type of cloud computing, such as the reliance of the customer on the service provider's ability to avoid server downtime. Specific to the DaaS model, a common criticism is that when compared to traditional data delivery, the consumer is really just "renting" the data, using it to produce a graph, chart or map, or possibly perform analysis, but generally the data is not available for download[8].

References

  1. "DaaS:The New Information Goldmine". Wall Street Journal. http://online.wsj.com/article/SB125071202052143965.html. Retrieved 2010-06-09. "Unfortunately, the business world has given this baby a jargony name: data as a service, or its diminutive, DaaS. It rhymes with SaaS, its better-known cousin that stands for Software as a Service." 
  2. "Data as a Service: Are We in the Clouds?". Journal of Map & Geography Libraries 6 (1): 76–78. January 2010. http://www.informaworld.com/smpp/title~db=all~content=g918168567~tab=toc~order=page. Retrieved 2010-06-09. 
  3. 3.0 3.1 Dyche, Jill. "Data-as-a-service, explained and defined". SearchDataManagement.com. http://searchdatamanagement.techtarget.com/answer/Data-as-a-service-explained-and-defined. Retrieved October 24, 2010. 
  4. "Statistical Data as a Service and Internet Mashups". Zoltan Nagy, United Nations. http://unstats.un.org/unsd/statcom/statcom_2010/Seminars/Communication/Data%20as%20a%20Service.ppt. Retrieved 2010-06-09. 
  5. Cagle, Kurt. "Why Data as a Service Will Reshape EAI". DevX.com. http://www.devx.com/enterprise/Article/44245. Retrieved October 24, 2010. 
  6. "Data as a Service: Pricing Models for the Future of Data". programmableweb.com. http://blog.programmableweb.com/2010/08/26/data-as-a-service-pricing-models-for-the-future-of-data. Retrieved October 29, 2010. 
  7. Redkar, Tejaswi. "Chapter 4 – Windows Azure Storage Part I — Blobs". Windows Azure Platform. Apress, 2009.
  8. "Exploring PBBI’s Vision for Geospatial Data as a Service (podcast)". Directions Magazine. http://www.directionsmag.com/podcasts/exploring-pbbis-vision-for-geospatial-data-as-a-service/125191. Retrieved November 14, 2010.