article thumbnail

Should you build or buy generative AI?

CIO

To get good output, you need to create a data environment that can be consumed by the model,” he says. You need to have data engineering skills, and be able to recalibrate these models, so you probably need machine learning capabilities on your staff, and you need to be good at prompt engineering.

article thumbnail

Nominations Now Open for the Sixth Annual Cloudera Data Impact Awards

Cloudera

Click to tweet : Nominations are now open for the sixth annual Cloudera Data Impact Awards! With advancements in exploratory data science, machine learning, predictive analytics, AI, and data engineering, the world is increasingly driven by data. Read how to get nominated. link] #DataImpactAwards.

Data 41
Insiders

Sign Up for our Newsletter

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

Trending Sources

article thumbnail

Azure vs AWS: How to Choose the Cloud Service Provider?

Existek

Along with meeting customer needs for computing and storage, they continued extending services by presenting products dealing with analytics, Big Data, and IoT. The next big step in advancing Azure was introducing the container strategy, as containers and microservices took the industry to a new level. Data Engineer $130 000.

Azure 52
article thumbnail

Atlanta Tech Events and Startup Hubs You Need to Visit

Altexsoft

Tech Alpharetta hosts regular events for tech-focused executives, with engineering-related activities. The events cover domains such as big data, cybersecurity, blockchain, and cryptocurrency. CAPRE’s Annual Greater Atlanta Data Center and Cloud Infrastructure Summit 2020. TechAlpharetta.

article thumbnail

Less is More: The Benefits of Streamlining Your Data Integration Workflow

Datavail

Big data presents challenges in terms of volume, velocity, and variety—but that doesn’t mean you have to suffer from a bloated IT ecosystem to address these challenges. In fact, many businesses can realize significant advantages from streamlining their data integration pipelines, trimming away unnecessary tools and services.

Data 40