Remove 2023 Remove Forecasting Remove Internet of Things Remove Reporting
article thumbnail

Updated Outlook of the AI Software Development Career Landscape

Smart Data Collective

In this article, we take a look at what the AI software development landscape looks like in 2023. In October, Gaurav Tewari of the Forbes Business Council reported that AI breakthroughs have had a monumental impact on modern business and consumer life. Take the Internet of Things as an example. The numbers are improving.

Software 101
article thumbnail

The future of 5G: What to expect from this transformational technology

IBM Big Data Hub

The number of networks also continues to grow, with many popular Internet Service Providers (ISPs) like Verizon, Google and AT&T, offering 5G connectivity in both homes and businesses. By 2027, the final year covered in the report, 155 million units are expected to ship, representing a compound annual growth rate (CAGR) of 7.4%.

Insiders

Sign Up for our Newsletter

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

article thumbnail

5G advantages and disadvantages: What business leaders need to know

IBM Big Data Hub

In the four years since it burst onto the market, 5G has been widely touted as a disruptive technology, capable of transformation on a similar scale to artificial intelligence (AI) , the Internet of Things (IoT) and machine learning (ML).

IoT 105
article thumbnail

Leading innovation in digital infrastructure for a digital and sustainable APAC

CIO Business Intelligence

Oxford Economics, a leader in global forecasting and quantitative analysis, teamed up with Huawei to develop a new approach to measuring the impact of digital technology on economic performance. IDC predicts that the digital economy will continue to accelerate, with over 65% of Asia Pacific (APAC) GDP expected to be digitalized by 2023.

article thumbnail

Top 10 Analytics And Business Intelligence Trends For 2020

datapine

The development of business intelligence to analyze and extract value from the countless sources of data that we gather at a high scale, brought alongside a bunch of errors and low-quality reports: the disparity of data sources and data types added some more complexity to the data integration process. 3) Artificial Intelligence.