Data Insights
Definition, illustrations, and ideal procedures. This guide offers definitions, illustrations, and
helpful suggestions
to assist you in deriving business-enhancing insights from data.
What are Data Insights?
Data insights refers to the deep understanding an individual or organization gains from analyzing
information on a
particular issue. This deep understanding helps organizations make better decisions than by relying on gut instinct.
Related terms:
Related terms:
Actionable data insights refer to insights that are specific and relevant enough that they lead
to
actions which can
increase efficiency, revenue and profits.
Active intelligence refers to having in-the-moment awareness about every aspect of your business
from
real-time data
designed to trigger immediate insights and actions.
How to Get Data Insights
The process to obtain actionable data insights typically involves defining objectives, collecting,
integrating and
managing the data, analyzing the data to gain insights and then sharing these insights.
-
Define business objectives
Stakeholders initiate the process by clearly defining objectives such as improving production processes or
determining
which marketing campaigns are most effective, like in the example above.
-
Data collection
Ideally, systems have already been put in place to collect and store raw source data. If not, the organization
needs to
establish a systematic process to gather the data.
-
Data integration & management
Once collected, source data must be transformed into clean, analytics-ready information via data integration.
This
process includes data replication, ingestion and transformation to combine different types of data into
standardized
formats which are then stored in a repository such as a data lake or data warehouse.
Data analysis
Data analytics software or BI tools allow users to explore the data and collaborate with others to
develop data insights
that answer specific questions. Users can then share their findings via dashboards and reports. Some modern tools
offer
self-service analytics, which enables any user to analyze data without writing code. This capability promotes data
literacy, which means that more users can work with and get insights from their data. Here are three key aspects of
modern analysis tools that lead to greater data insights:
Data visualization and dashboards
People better understand and collaborate on data when it’s on interactive digital dashboards.
Augmented analytics
AI and machine learning enhance your intuition by suggesting insights and analyses for you to perform.
Embedded analytics
People find actionable data insights faster if analysis capabilities are embedded within the apps &
workflows they regularly use.
Content Marketing is an efficient method to achieve this goal. This process can attract and engage
your target audience
with a low-cost investment.