IDC announces top ten predictions for the global IT industry in 2023
International Data Corporation (IDC) recently announced its global information technology (IT) industry forecast for 2023 and beyond.
IDC’s top ten predictions for the global IT industry in 2023 have the following findings:
1. The rise of as-a-service (aaS) processes and smart products
IDC believes that the number of technology-centric organizations in the global G500 will double in the next five years. Their increasing emphasis on adding as-a-service (aaS) elements, such as enhanced customer experience and intelligent process automation towards digitally enhanced physical and virtual products, will dominate future IT spending.
2. The as-a-service business model will promote the development of wire control technology (Tech-by-Wire)
In the next few years, one of the most obvious developments in the IT industry will be through wire control technology (i.e. self-contained systems, software-defined functions, AI-assisted cloud-based control systems, data-driven decision-making) Expand technology delivery. While cost will be the primary driver for wired technology adoption, other benefits include increased digital resilience, faster adoption of innovative technologies at scale, system simplification and reduction of technical debt.
3. The shortage of key skills will limit the benefits of IT investment
Most companies will struggle to retain and find employees with the right skills, which actually brings greater difficulties to the remaining employees. pressure to meet expanding digital business demands. Businesses and IT providers alike need to invest in developing the right technology, collaboration and critical thinking skills.
4. Digital sovereignty will impact employees, budgets, and operational processes
Cloud and as-a-service offerings will be core to the development of digital sovereignty, as claims about assurance and residency will push some IaaS/PaaS Workloads are pushed to local cloud providers, and mandates for sustainable operations will spark interest in sovereign offerings (with local partners) from global cloud providers.
5. Rapid growth in aaS spending will come under greater scrutiny
While cost is a major concern for most businesses, it hides the most important benefits of effectively leveraging aaS: significant and Continuously reduce operational burdens and innovate faster. Efforts to control spending must focus on assessing which services deliver the promised operational and innovation value.
6. Service providers will be better able to provide expertise
With the shift to more standardized control plane aaS offerings and greater use of artificial intelligence and automation, security, data and Providers of key industry-specific knowledge and processes will be able to cost-effectively disseminate the cost and knowledge base of high-value experts to more customers in an easy-to-consume manner.
7. Technology supply chain will remain a key issue
IDC predicts that in 2025, due to global or regional chip and code supply chain issues, the supply chain of many high-profile digital products will decline. The rollout will face significant delays. To avoid this delay, policymakers will push cloud providers to achieve quantifiable results, invest in supply chain intelligence, and adopt a multi-channel strategy.
8. Transitioning to a control plane-based system is not easy
One of the biggest challenges facing IT teams in the next few years is the maturation of control plane design and the gradual integration of basic control systems onto several standard platforms. IDC predicts that more than half of the companies trying to use wire-controlled technology products will face the dilemma of the proliferation of independent control systems.
9. Building trust in automation is the key to success
Building trust in automation requires paying more attention to human/organizational behavioral dynamics in programs where automation plays an important role. Furthermore, while significant risks arising from a lack of trust seem unlikely, the impact on branding and the need to restart trust building will be significant.
10. Machine vision will greatly improve the experience of physical locations
Those companies that are leading the way in adopting machine-enhanced vision technology in digitally optimized work/entertainment/health areas will be the first to acquire and There are long-term advantages in retaining customer loyalty and improving business results based on the intelligent use of data.
The above is the detailed content of IDC announces top ten predictions for the global IT industry in 2023. For more information, please follow other related articles on the PHP Chinese website!

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