Evolving Challenges for DevOps Amid Rising AI Workloads

Rising Challenges in DevOps Due to AI Expansion
As artificial intelligence (AI) seamlessly integrates into business operations, the wave of GenAI workloads is no longer just theoretical; it's a pressing reality affecting enterprise infrastructures. A recent report from ControlMonkey highlights that while AI brings vast potential, it also imposes significant challenges on development and operational teams.
AI Workloads Are Set to Surge
A Rapid Increase in Expectations
According to ControlMonkey's findings, a staggering 83% of cloud and DevOps leaders anticipate a sharp growth in AI-driven workloads over the coming 12 to 24 months, with predictions suggesting an average increase of 50%. This meteoric rise poses a unique challenge for enterprises struggling to keep pace with the demands of new technology.
Challenges Faced by DevOps Teams
Despite optimistic forecasts, 46% of enterprise leaders reveal that their DevOps teams currently lack the necessary bandwidth for innovation. This limitation is a pressing concern, suggesting that many teams will soon find themselves caught between managing daily operations and preparing for the incoming surge of AI workloads. Many organizations acknowledge hitting fundamental barriers when it comes to scaling their infrastructure to accommodate AI.
Top Challenges Identified by the Report
Existing Infrastructure Issues
The report highlights that organizations face familiar hurdles: 37% cite rising costs, while 36% struggle with a lack of real-time visibility into their operations. Furthermore, 32% report difficulties in scaling and allocating resources effectively. These problems are more about infrastructure than AI itself; unaddressed, they can transition from minor issues to major obstructions.
The Importance of Automation
Another significant insight from the report indicates that 54% of leaders recognize automation readiness as essential for scaling AI effectively. Obstacles such as reliability concerns (43%), skill gaps (39%), and limitations in scalability (36%) could hinder teams from fully realizing their AI potential. These pressing factors demonstrate that despite the excitement surrounding AI, foundational challenges persist.
Governance and Management Concerns
Future Preparedness
The report further reveals governance as an emerging choke point: 29% of respondents identified security governance as a critical challenge. Additionally, 29% cited complexities related to compliance and 20% expressed the need for standardized governance policies to compete effectively in an AI-dominated landscape.
Deciphering What Leaders Need
To navigate this evolving landscape successfully, 45% of leaders spotlight better training and visibility as essential to managing AI workloads. Other requirements include effective cost control (21%), governance frameworks (20%), and automation solutions (14%). Without these key components, organizations may struggle to harness AI's full potential.
Looking Ahead
Aharon Twizer, CEO of ControlMonkey, emphasizes the urgency of the situation: "The AI wave isn’t coming; it’s here. Cloud teams don’t get a time-out. Most are still patching the basics, and the next twelve months will decide who scales and who sinks." This statement underscores a fundamental truth: organizations must address their technological foundations to succeed in an increasingly AI-driven future.
Frequently Asked Questions
What is the focus of ControlMonkey's 2025 Gen AI Readiness Report?
The report focuses on the readiness of DevOps and Cloud teams to handle the anticipated surge in AI workloads, providing vital insights into the challenges and needs organizations face.
What are the main challenges highlighted in the report?
The report identifies barriers related to rising costs, real-time visibility, scaling issues, and the need for better governance and automation in managing AI workloads.
How many leaders participated in the ControlMonkey survey?
A total of 300 senior leaders from various enterprises with over 1,000 employees participated in the survey conducted by ControlMonkey.
What percentage of leaders expect a growth in AI workloads?
83% of cloud and DevOps leaders expect AI-driven workloads to rise over the next 12 to 24 months, with an average growth forecast of 50%.
What do leaders consider a priority for managing AI workloads?
Better training and visibility are considered the top priorities by 45% of leaders for effectively managing increasing AI workloads.
About The Author
Contact Henry Turner privately here. Or send an email with ATTN: Henry Turner as the subject to contact@investorshangout.com.
About Investors Hangout
Investors Hangout is a leading online stock forum for financial discussion and learning, offering a wide range of free tools and resources. It draws in traders of all levels, who exchange market knowledge, investigate trading tactics, and keep an eye on industry developments in real time. Featuring financial articles, stock message boards, quotes, charts, company profiles, and live news updates. Through cooperative learning and a wealth of informational resources, it helps users from novices creating their first portfolios to experts honing their techniques. Join Investors Hangout today: https://investorshangout.com/
The content of this article is based on factual, publicly available information and does not represent legal, financial, or investment advice. Investors Hangout does not offer financial advice, and the author is not a licensed financial advisor. Consult a qualified advisor before making any financial or investment decisions based on this article. This article should not be considered advice to purchase, sell, or hold any securities or other investments. If any of the material provided here is inaccurate, please contact us for corrections.