An Introduction to Data Solutions (2024)

An Introduction to Data Solutions (1)

At LeapFrogBI we use the term data solution to refer to the portion of the overall analytics system that acquires data and makes it report-ready. The data solution (not the reporting software) is the most important factor in determining what types of reporting can be produced, and by who.

We group data solutions into five categories to provide a framework for analyzing and discussing different aspects of data acquisition, integration and transformation. You can think of each category as a levels of a pyramid that increase in complexity and capability as you move toward the top.

At the bottom of the pyramid is what we call the System of Record solution. The defining characteristic of this solution is that you use a reporting tool to directly access data in the operational system of record. With this approach, any and all data processing must be handled by the report tool itself. It’s a common way to get started with analytics because it can be implemented quickly and affordably. But it is not without its disadvantages. It places significant demand on the operational system, it limits the types of analysis that can be done and it places a very high burden on the report author to manipulate the data until it is accurate and meaningful.

The second level is what we call the Persistent Staging Area solution. At this level you introduce a database where you can store historical data outside of the system of record. You also get the opportunity to do some limited data processing as data moves between the system of record and the reporting tool. A simple staging area takes computing pressure off the operational system, and potentially reduces the demands on the reporting tool and the report author. It also allows you to track changes to (customer/product/organizational) attributes and enables data re-naming to improve usability. Of course, the added complexity requiresadditional development time and resources, but this approach is still a relatively fast and affordable approach with tremendous benefits.

The third level is what we call the Operational Data Store solution. We use this term to refer to a reporting database that may integrate data from more than one system of record, incorporate data transformation based on business rules or include summarized data. At this level significant data processing is happening between the system(s) of record and the reporting tool. It offers complete flexibility and tremendous power, but requires even more development and significant involvement from business stakeholders. Also, as the volume of data and complexity of the data processing that’s taking place increase, the performance ofthe operational data store may suffer.

The fourth level is what we refer to as the Data Warehouse solution. We use this term to refer to a database that includes all of the same features of an operational data store, but one in which the data has been reorganized into a dimensional data model. This datastructure was developed specifically for reporting applications, and differs from the way data is organized in operational system databases. In operational systems the data is stored in a large number of tables which makes it very fast to add or modify a single record. But reporting queries typically require data from a large number of tables, thus requiring a a large number of table joins and resulting in very long processing times. The dimensional model uses a very small number of tables, reduces the number of joins in a query and significantly improves performance so most queries are resolved in just seconds. As an added benefit, dimensional models are logical and easily understood which further advances reporting initiatives by enabling self-service analysis by business users. A well-designed data warehouse can enable high-performance reporting against even the largest and most complex data sets, and is the gold standard for enterprise business intelligence.

At the top of the data solution pyramid is Artificial Intelligence. We use this term to refer additional data processing that occurs outside the data warehouse. This level allows for predictive and prescriptive models using traditional statistical techniques or newer self-learning tools. When such analysis is required, AI is the only solution, regardless of underlying data complexity or volume. While AI does not replace the data warehouse, it may produce scores and other data that gets loaded into the warehouse.

An Introduction to Data Solutions (2)

Adam Smithline

All Posts

  • January 12, 2017

An Introduction to Data Solutions (3)

Built to Spec
We design custom solutions.

An Introduction to Data Solutions (4)

Low Cost per User
Empower as many report users as you like.

An Introduction to Data Solutions (5)

You Own It
Everything from the data solution to reports is yours to keep.

Month-to-Month
No upfront costs and no long-term commitment.

An Introduction to Data Solutions (7)

Available 24/7
We monitor and maintain everything 7 days a week.

An Introduction to Data Solutions (8)

Support
Unlimited access to a team of data experts.

FIND OUT MORE

LeapFrogBI is on the Road in April

Read More »

Insurance Book of Business: Power BI Reports

Read More »

Product Cannibalization in Credit Unions and Regional Banks – Is your data ready to work for you in a high interest rate environment?

Read More »

Claim Denial Report

Read More »

An Introduction to Data Solutions (13)

Find out how
our clients
are getting

10x ROIwithin 6 months

CLICK HERE

An Introduction to Data Solutions (14)

Become Part of the LeapFrogBI Community

Join our newsletter to receive our latest insights and articles on automated, customized reporting in the healthcare industry.

An Introduction to Data Solutions (15)

LET’S TALK

Have any questions? Reach out to us, we would be happy to answer.

CLICK HERE

An Introduction to Data Solutions (2024)

FAQs

What is meant by data solutions? ›

Data Solution means any product, service or other solution which: (a) is modified or enhanced by, incorporated with, developed or created using, derived from or derives benefit from, or involves the supply or the making available of, the Data or any part of the Data; and.

Why do we need data solutions? ›

As organizations create and consume data at unprecedented rates, data management solutions become essential for making sense of the vast quantities of data. Today's leading data management software ensures that reliable, up-to-date data is always used to drive decisions.

What is a data solutions engineer? ›

Data engineers work in a variety of settings to build systems that collect, manage, and convert raw data into usable information for data scientists and business analysts to interpret. Their ultimate goal is to make data accessible so that organizations can use it to evaluate and optimize their performance.

How to write an introduction to data analysis? ›

Introduction. Good features for the Introduction include: Summary of the study and data, as well as any relevant substantive context, background, or framing issues. The “big questions” answered by your data analyses, and summaries of your conclusions about these questions.

What do data solutions companies do? ›

At their core, data analytics companies transform raw, often unstructured data into actionable insights. While theoretically, anyone can produce the same insights as data analytics companies, the reality is data analytics firms do it better, faster and more efficiently than anyone else.

What does a data solutions analyst do? ›

Key Responsibilities:

Supports implementation of data requirements and practices for an assigned area. Under supervision creates and executes standard visualization techniques. Uses visualization and analysis techniques to present findings of data exploration exercises to stakeholders based on requirements gleaned.

What problems does data solve? ›

Data analytics is the process of transforming, modeling, and visualizing data to generate insights and support decision making. It can help businesses solve various problems, such as improving customer satisfaction, increasing revenue, reducing costs, and optimizing operations.

What are the big data solutions? ›

Big Data solutions help detect customer sentiment about products or services of an organization and gain a deeper, visual understanding of the multichannel customer journey and then act on these insights to improve the customer experience.

Is data management a good career? ›

Data management can be a lucrative and rewarding career, but it also depends on the market demand, the industry sector, the employer size, and the level of experience and education.

Can you become a data engineer without a degree? ›

Answer: Yes, it is possible to become a Data Engineer without a traditional degree. Many employers value practical skills and experience in data engineering over formal education. Gaining these skills through self-study, online courses, bootcamps, and hands-on projects can lead to opportunities in the field.

What is a data engineering salary? ›

The average salary for Data Engineer is ₹10,87,500 per year in the India. The average additional cash compensation for a Data Engineer in the India is ₹1,00,000, with a range from ₹46,250 - ₹2,00,000. Salaries estimates are based on 10575 salaries submitted anonymously to Glassdoor by Data Engineer employees in India.

What does a data solutions manager do? ›

Make improvements, enhancements, or modifications to the Services through data analysis and research of usage trends, and feedback sessions. Conduct research on social, economic, and sectoral employment and hiring trends.

Can I teach myself data analysis? ›

Yes, it is possible to learn data analytics on your own. Many online resources are available for learning data analytics, including tutorials, courses, and online communities.

Does a data analyst require coding? ›

Coding is essential for Data Analysts to manipulate, clean, and analyse data efficiently. Programming languages such as Python, R, SQL, and others are widely used in Data Analytics. With coding skills, Data Analysts can automate repetitive tasks, develop custom algorithms, and implement complex statistical analyses.

What are data management solutions? ›

Today's organizations need a data management solution that provides an efficient way to manage data across a diverse but unified data tier. Data management systems are built on data management platforms and can include databases, data lakes and data warehouses, big data management systems, data analytics, and more.

What is meant by data driven solution? ›

When a company employs a “data-driven” approach, it means it makes strategic decisions based on data analysis and interpretation. A data-driven approach enables companies to examine and organise their data with the goal of better serving their customers and consumers.

What are data quality solutions? ›

IBM offers data quality solutions that help to optimize the key dimensions of data quality: accuracy, completeness, consistency, timeliness validity, and uniqueness. These robust data quality tools help you to identify, understand and correct data flaws to drive better decision making and governance.

Top Articles
Latest Posts
Article information

Author: Edwin Metz

Last Updated:

Views: 6069

Rating: 4.8 / 5 (78 voted)

Reviews: 85% of readers found this page helpful

Author information

Name: Edwin Metz

Birthday: 1997-04-16

Address: 51593 Leanne Light, Kuphalmouth, DE 50012-5183

Phone: +639107620957

Job: Corporate Banking Technician

Hobby: Reading, scrapbook, role-playing games, Fishing, Fishing, Scuba diving, Beekeeping

Introduction: My name is Edwin Metz, I am a fair, energetic, helpful, brave, outstanding, nice, helpful person who loves writing and wants to share my knowledge and understanding with you.