There’s no doubt that automation is changing, for the better, business performances in Finance. Automating data extraction and ingestion adds value to finance departments and institutions.
A recent survey by Dun & Bradstreet of finance operations in the US and the UK found that improved process speed was the leading motivator for automation, followed by cost savings.
The study concluded that when driven by analytics, automation could reduce operational costs, boost efficiency, and open more avenues of growth for finance teams by scaling and pulling in data from multiple sources at once.
Not only that, the report said enterprises that were driven by data and insights were 39 percent more likely to report year-over-year revenue growth of 15 percent or more.
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Indeed, data automation can bring to the fore the true potential of humans, machines, and data.
Yet studies like the one mentioned above, and others, have shown that the pace of automatic data extraction and ingestion has not picked up as much as one would have liked.
Surprisingly, one would believe that businesses tend to lean towards such “digital robotization” to get ahead in the game.
Also, using data scientists or analysts to perform repetitive tasks that can be automated is a waste of resources.
Quick Primer on Data Ingestion
Data extraction is crucial to automating the extraction of structured data for analysis. It provides data from multiple sources, such as balance sheets, invoices, timesheets, contracts, and more.
Data extraction is also the process of converting unstructured data into a more formal form, since it is such structured data that yields meaningful insights for analytics. But the cycle does not stop at merely mining data.
The data ingestion layer is the backbone of an analytics architecture.
There are many types of data ingestion; extract, transform, load (ETL) is one of them. It has the following steps:
- Data extraction: Mining data from sources like databases or websites.
How does data ingestion power extensive data set usage in finance? >>>> Learn more
Why Automated Data Extraction and Data Ingestion
Compared to other sectors, Finance places a high priority on improved analyses, which, in turn, means data integration must occur more frequently than in other sectors.
FinTech operations are about continuously imbibing a constant stream of information. Such ingestion has to meet a high standard of quality control because an undetected mistake can quickly lead to losses of millions of dollars.
Fundraising, reporting, and management systems are critical to the business of any FII and banking institution.
Here, the manual process of tracking investors and their investment choices wastes time on low-value activities and is ideally suited to automation. The benefits of this are many, some of which we enumerate here:
- Quicker Decision-Making: To reiterate, automation enables users to extract insights from unstructured data more quickly than manual ingestion.
In Part 2 of this post, we will detail the benefits of automatic data ingestion.



