AI DATA CLOUDFUNDAMENTALS

Learn about some of the most relevant topics around cloud data warehousing, AI, data lakes, data engineering and other areas of interest related to cloud data analytics, AI and cloud data platforms.

Results

Newest - Oldest
Newest - Oldest
Oldest - Newest
Z - A
A - Z
filter

Filter

Product Categories

How Predictive Analytics Drives Smarter Marketing

Artificial intelligence is redefining investment banking by unlocking new efficiencies and decision-making capabilities across the industry. From personalized client insights to real-time risk forecasting, AI technologies — especially generative AI — are enabling banks to turn vast data stores into competitive advantage at unprecedented speed and scale.

What Is Online Analytical Processing (OLAP)? Use Cases and Examples

Designed for speed, scalability and flexibility, OLAP helps teams explore data across multiple dimensions to uncover trends, outliers and actionable insights — powering smarter decisions in today’s data-driven organizations.

What Is Generative AI and How Is It Used Today?

Generative AI is ushering in a new era of creativity, automation and problem-solving. Unlike traditional AI systems that focus on classification or prediction, generative AI creates entirely new content — text, images, code, even product designs — based on the patterns it learns from existing data.

The Role of Feature Extraction in Machine Learning

Feature extraction is a core component of modern machine learning workflows. By isolating and transforming the most relevant variables in a dataset, it helps reduce noise, improve model accuracy and make more efficient use of compute resources.

Building a Scalable Data Ingestion Framework

A well-designed data ingestion framework forms the foundation of scalable data architecture, enabling businesses to collect, move and prepare data for analysis at speed and scale.

How AI Is Shaping the Future of Investment Banking

Artificial intelligence is redefining investment banking by unlocking new efficiencies and decision-making capabilities across the industry. From personalized client insights to real-time risk forecasting, AI technologies — especially generative AI — are enabling banks to turn vast data stores into competitive advantage at unprecedented speed and scale.

Data Analytics for Manufacturing: Key Use Cases

Manufacturers are under constant pressure to do more with less—streamline operations, cut costs, and meet evolving customer expectations. With modern data analytics, manufacturers can unlock hidden efficiencies across the supply chain, enhance production quality, and make smarter, faster decisions powered by real-time insights.

Data Masking: A Guide to Protecting Sensitive Data

As organizations collect more sensitive information, protecting that data becomes a top priority. Data masking helps teams safely use real data for development, testing, and analytics—without exposing private or regulated information.

Python vs. Java: A Comparison of Key Differences & Use Cases

Python and Java are two of the most widely used programming languages in the world—versatile, time-tested, and each with its own strengths. Whether you're building web apps, processing big data, or running machine learning workloads, understanding how they compare helps you choose the right tool for the job.

What Is a Transactional Database? Properties and Use Cases

Transactional databases keep the digital world running smoothly behind the scenes. From online banking to retail checkouts and healthcare records, these systems are built for speed, accuracy, and reliability—ensuring every transaction is processed securely and without error, even under heavy load."

What Is a Large Language Model? LLM Meaning & Use Cases

Large language models (LLMs) are changing how data scientists interact with data—enabling faster search, deeper insights, and more intuitive ways to ask and answer complex questions. As these models evolve, they’re reshaping core workflows across the entire data science lifecycle.

Data Anonymization: A Guide to Protecting Sensitive Data

As data privacy becomes both a regulatory requirement and a competitive advantage, organizations are turning to data anonymization to responsibly use sensitive information. By removing or modifying personal identifiers, anonymization allows teams to unlock insights while safeguarding individual privacy.

Previous

1

2

3

4

5

...

7

Next