Remove B2B Remove Big Data Remove Structured Data
article thumbnail

Big Data Ingestion: Parameters, Challenges, and Best Practices

datapine

This pace suggests that 90% of the data in the world is generated over the past two years alone. A large part of this enormous growth of data is fuelled by digital economies that rely on a multitude of processes, technologies, systems, etc. to perform B2B operations. Data has grown not only in terms of size but also variety.

Big Data 100
article thumbnail

Leading Trends of Fintech Development Services in 2022

Smart Data Collective

They are using big data technology to offer even bigger benefits to their fintech customers. More and more fintech startups are focusing not only on the B2B but also on the B2C segment, which is facilitated by the growth of the overall financial literacy of the target audience and the increase in the number of private investors.

Insiders

Sign Up for our Newsletter

This site is protected by reCAPTCHA and the Google Privacy Policy and Terms of Service apply.

article thumbnail

Reference guide to analyze transactional data in near-real time on AWS

AWS Big Data

With this zero-ETL approach, Amazon Redshift Streaming Ingestion enables you to connect to multiple Kinesis data streams or Amazon Managed Streaming for Apache Kafka (Amazon MSK) data streams and pull data directly to Amazon Redshift without staging data in Amazon Simple Storage Service (Amazon S3).

article thumbnail

How smava makes loans transparent and affordable using Amazon Redshift Serverless

AWS Big Data

The Data Platform team is responsible for supporting data-driven decisions at smava by providing data products across all departments and branches of the company. Branches range by products, namely B2C loans, B2B loans, and formerly also B2C mortgages. The departments include teams from engineering to sales and marketing.

Data Lake 103
article thumbnail

Get maximum value out of your cloud data warehouse with Amazon Redshift

AWS Big Data

Different departments within an organization can place data in a data lake or within their data warehouse depending on the type of data and usage patterns of that department. She focuses on educating customers about the impact of data warehousing and analytics and sharing AWS customer stories.