Remove Data Collection Remove Data Ingestion Remove Raw Data Remove Utilities
article thumbnail

Digital Transformation is a Data Journey From Edge to Insight

Cloudera

The data journey is not linear, but it is an infinite loop data lifecycle – initiating at the edge, weaving through a data platform, and resulting in business imperative insights applied to real business-critical problems that result in new data-led initiatives. Data Collection Challenge. Factory ID.

article thumbnail

How to Build a Data Pipeline in 6 Steps

Ascend.io

The key differentiation lies in the transformational steps that a data pipeline includes to make data business-ready. Ultimately, the core function of a pipeline is to take raw data and turn it into valuable, accessible insights that drive business growth. How will the data be accessed by different tools and applications?

Insiders

Sign Up for our Newsletter

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

article thumbnail

AI Implementation: The Roadmap to Leveraging AI in Your Organization

Ascend.io

The McKinsey Global Survey on AI in 2023 highlights this evolution, revealing that despite the nascent stage of generative AI, its use is already widespread, with a third of respondents saying their organizations are utilizing generative AI in at least one function. It requires a well-thought-out strategy. Why is this important?

article thumbnail

Spatial Data Science: Elements, Use Cases, Applications

Knowledge Hut

Industries, where the application of spatial data science will expand have a wide range of verticals, including real estat e, cities and governments, management consulting, utilities, retails, telecommunication, green energy, and many more. What Makes Spatial Data Science Important for Data scientists?

article thumbnail

What is Data Ingestion? Types, Frameworks, Tools, Use Cases

Knowledge Hut

An end-to-end Data Science pipeline starts from business discussion to delivering the product to the customers. One of the key components of this pipeline is Data ingestion. It helps in integrating data from multiple sources such as IoT, SaaS, on-premises, etc., What is Data Ingestion?

article thumbnail

How a modern data platform supports government fraud detection

Cloudera

Robust online systems have streamlined interactions and generated a wealth of new data to support mission success and enhanced citizen engagements. However, this rapid scaling up of data across government agencies brings with it new challenges. The modeling process begins with data collection.

article thumbnail

Data Pipeline Architecture: Understanding What Works Best for You

Ascend.io

Data pipeline architecture is a framework that outlines the flow and management of data from its original source to its final destination within a system. This framework encompasses the steps of data ingestion, transformation, orchestration, and sharing.