Quick! Need a faster way to prototype and deploy analytics?
If you’re in IT, and are struggling to get analytics deployed in a timely fashion, then you know it’s driving costs up and your business analyst partners are disengaging and getting discouraged. The project backlog expands, and impatience can trigger unauthorized, unregulated “shadow analytics” efforts from analysts. Does this sound familiar? Unfortunately, shadow analytics activities usually involve inadequate data security controls and non-standard technology, data, and processes, but you’ve got to admire the “do-it-yourself” resolve from those analysts.
What if you could refocus their efforts into a faster, more effective process, while maintaining control and scoring some “quick wins”? It turns out that you can, but you’ve got to give the shadow analytics process a better environment in which to operate and create a path.
ENTER: THE DATA DISCOVERY ZONE
That improved environment is called a Data Discovery Zone, or “DZ”, an analytical “sandbox” in which to experiment with analytical use cases and prototype solutions. The DZ houses all of the data necessary for business units to iterate through use cases. As a sandbox environment, it provides analysts adequate flexibility to assess data relevance, define initial and ongoing skill sets, process transformations and determine supporting technology needs, before pushing a use case into production.
The steps below show how a DZ operationalizes an analytics process:
1. Initially, feed raw data into a data lake or other repository where it’s staged and lightly processed to provide basic cleansing. This lightly cleansed data is pushed to the DZ, a structure that reflects the previous repository, but enables business analysts to conduct the needed analysis.
2. The analysts, with moderate IT support, use corporate data management tools to analyze the data with the sole purpose of understanding the data, refining business requirements and building prototype data integration and analytics components (e.g., data feeds, transformation structures, and data discovery tools).
3. Upon business approval, the prototyped solution(s) is turned over to IT to implement in Production.
THE DZ PATH TO BETTER REQUIREMENTS, RAPID PROTOTYPING, AND QUICKER WINS HAS SIGNIFICANT ADVANTAGES:
BEFORE YOU START, A FEW BEST PRACTICES
Correctly planning and constructing a DZ process takes time and effort. While we can’t possibly cover all the related “how-tos”, here are some of the most critical principles:
WANT TO TALK SOME DZ?
Maybe a DZ won’t take you instantaneously to “Analytics Nirvana”, but it can significantly increase the speed-to-value and quality of deploying analytics. If you have any questions, or would like to discuss best practices in standing up DZs / or other components of an effective data supply chain, please connect with Babu Mathew at babu.m@worldlink-us.com
ABOUT WORLDLINK US — WorldLink is a global technology firm that delivers three distinct areas of Solutions – Talent, Data & Analytics Consulting, and Managed Services. We provide unmatched subject matter expertise in our Talent, Cloud, and Data/Analytics practices. In addition, our focus on strategy and vision leads to strong relationships with our diverse client base. WorldLink fulfills the unique client vision instead of offering standard “out-of-the-box” solutions. We’re building what’s next. We want you to be a part of it.
For more information about WorldLink US, please visit https://www.worldlink-us.com/.