Remove benefits-data-virtualization-data-scientists
article thumbnail

Benefits of Data Virtualization to Data Scientists

Data Virtualization

The business value of applying data science in organizations is incontestable. Data science work can be divided into analytical and data preparation work. Examples of data preparation activities. Prescriptive and descriptive models can help improve business and decision making processes.

article thumbnail

Will enterprises soon keep their best gen AI use cases under wraps?

CIO Business Intelligence

The retail industry has no shortage of cases on display where generative AI has shown tangible benefits. They had ChatGPT write the script, and other gen AI tools to create a digital person who reads the script, a scalable process with at least one measurable benefit: speed. And software code is a language.”

Insiders

Sign Up for our Newsletter

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

article thumbnail

To understand the risks posed by AI, follow the money

O'Reilly on Data

Time and again, leading scientists, technologists, and philosophers have made spectacularly terrible guesses about the direction of innovation. But a lack of data portability, and an inability to independently audit Facebook’s algorithms, meant that Facebook continued to benefit from its surveillance system for longer than it should have.

Risk 221
article thumbnail

Serverless Kubernetes Has Become Invaluable to Data Scientists

Smart Data Collective

Data science is a growing profession. Standards and expectations are rapidly changing, especially in regards to the types of technology used to create data science projects. Most data scientists are using some form of DevOps interface these days. There are a lot of important nuances for data scientists using Kubernetes.

article thumbnail

Start DataOps Today with ‘Lean DataOps’

DataKitchen

Data organizations don’t always have the budget or schedule required for DataOps when conceived as a top-to-bottom, enterprise-wide transformational change. DataOps can and should be implemented in small steps that complement and build upon existing workflows and data pipelines. Figure 1: The four phases of Lean DataOps. production).

Testing 246
article thumbnail

Insurance IT leaders herald new era for digital customer experience

CIO Business Intelligence

In the last few years, the [insurance industry] has taken us in some new directions, being more remote and virtual and changing behaviors than we would have seen in 2019 or before,” Harris-Ferrante says. Aflac’s Virtual Enrollment Experience fully utilized the cloud and SaaS solutions in its construction, Gilbert says. “We

Insurance 132
article thumbnail

Take Your SQL Skills To The Next Level With These Popular SQL Books

datapine

Business leaders, developers, data heads, and tech enthusiasts – it’s time to make some room on your business intelligence bookshelf because once again, datapine has new books for you to add. We have already given you our top data visualization books , top business intelligence books , and best data analytics books.