
Resources
Collection of news, articles and features on all things data, from the infoboss team…
#nocode (1) advanced technology (1) ai (1) AI foundations (1) AI ready (1) Artificial Intelligence (5) Case study (13) Charity (1) Cloud migration (17) Custom data solution (43) Data compliance (56) data foundations (2) Data migration (1) data preparation (1) Data quality (58) Data Wiki (6) DSAR search (1) Feature (11) Food & beverage (3) Government (4) Hospitality (2) Infographic (5) Insurance (1) legacy data (1) Legal (9) News (5) Partnering (34) Pharmaceuticals (1) Ports & maritime (1) Search and discovery (32) Social Housing (14) Transport & logistics (3) Unstructured data (18) Video (7)
Selected tag:
Data quality
-

Data Lakehouse Solutions
Organisations are adopting Data Lakehouse solutions to harness the combined strengths of data lakes and data warehouses, enabling them to handle a broader range of data types and analytical workloads while maintaining cost efficiency, scalability, and robust data governance. This unified approach helps organisations drive innovation, improve decision-making, and stay competitive in an increasingly data-driven…
-

Does your organisation munge or root cause fix its data?
Data munging, also known as data wrangling, is the process of transforming and cleaning raw data into a more usable and structured format for analysis. This involves tasks such as removing inconsistencies, handling missing values, standardising formats, and correcting errors. The goal of data munging is to prepare data for more effective and accurate analysis.…
-

“I know quality data is important, but where do I start?”
By breaking it down into a straightforward three-step process – Assess, Resolve, and Monitor – we can efficiently organise and safeguard your valuable data.
-

You get OUT what you put IN!
Data quality is paramount when considering artificial intelligence (AI) or business intelligence (BI) initiatives within a business. Their success and effectiveness heavily rely on the quality of the data being used for analysis, decision-making, and training AI models.
-

Five steps to improving the quality of your data assets
There are several ways to improve the quality of your data assets, including the following: Overall, improving the quality of your data assets requires a combination of clear guidelines, regular maintenance, and the use of established methods and tools. By following these steps, you can ensure that your data is accurate, reliable, and useful for…
-

Are you playing data whac-a-mole?
I like to highlight the similarity of familiar everyday things to enterprise data quality and compliance management. Today I’ve been thinking about the game of whac-a-mole! Whac-a-mole (Mogura Taiji) was invented in 1975 by Kazuo Yamada of the Japanese amusement ride company, TOGO. A typical Whac-A-Mole machine consists of a waist-level cabinet with a play…
-

How to increase trust in your data and maximise its value
“Trusted Data”, regardless of the level of trust, is data you can rely on to process information from. Its information used to gain knowledge, make decisions and act upon. Bloomberg LP say, “Because data affects the entire enterprise, solutions that deliver trusted, reliable data have similarly wide-reaching benefits. Firms that figure out how to improve…
-

Automated data processing and management
Let’s party with your data. The coolest moves on the dance floor relating to data. Experience it all in this uplifting dance track video of the infoboss data platform being put through its paces!
-

4 steps to successful data migration
Anyone who has ever been involved in a data migration will tell you how important it is to have data that is fit for purpose ahead of starting the process. They will also tell you how important it is to be able to generate the metrics by which you will measure and gauge success of…
-

Don’t you want good data
(To the tune of “Don’t you want me baby” by the Human League) You were working as a Data Quality ManagerWhen infoboss met youWe put your data quality metrics in place,And turned your data quality around,Transformed it into something new.Now five years later on you’ve got quality data at your feet,Success has been so easy…
