Remove Architecture Remove Business Continuity Remove Microservices Remove Software Engineering
article thumbnail

14 in-demand cloud roles companies are hiring for

CIO

Skills: Skills for this role include knowledge of application architecture, automation, ITSM, governance, security, and leadership. Role growth: 20% of businesses have added cloud systems engineer roles as part of their cloud investments.

Cloud 292
article thumbnail

The 10 most in-demand IT jobs in finance

CIO

Software engineer. Software engineers are one of the most sought-after roles in the US finance industry, with Dice citing a 28% growth in job postings from January to May. Full-stack software engineer. Back-end software engineer.

Insiders

Sign Up for our Newsletter

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

article thumbnail

The 10 most in-demand IT jobs in finance

CIO

Software engineer. Software engineers are one of the most sought-after roles in the US finance industry, with Dice citing a 28% growth in job postings from January to May. Full-stack software engineer. Back-end software engineer.

article thumbnail

15 Books by leading software architects

Apiumhub

As you may already know, Apiumhub team is software architecture-oriented and reads books for software architects on a weekly basis. This year Apiumhub organizes Global Software Architecture Summit 10th of october, which will take place in Barcelona. “ Essential Software Architecture ” by Ian Gorton.

article thumbnail

CloudBank’s Journey from Mainframe to Streaming with Confluent Cloud

Confluent

When Genesis was merely an on-prem application, that usually was not a problem because each bank could keep the data in a central location—usually a corporate database instance—where the software installed on each branch would simply point to that location. This architecture is functional but has lots of drawbacks.

Cloud 88
article thumbnail

Designing generative AI workloads for resilience

AWS Machine Learning - AI

There are unique considerations when engineering generative AI workloads through a resilience lens. Understanding and prioritizing resilience is crucial for generative AI workloads to meet organizational availability and business continuity requirements. He entered the big data space in 2013 and continues to explore that area.