MacStadium(link is external) announced the extended availability of Orka(link is external) Cluster 3.2, establishing the market’s first enterprise-grade macOS virtualization solution available across multiple deployment options.
Observability brings value to organizations as they look for ways to improve DevOps transformations. By "observing" a system, an organization can better understand the internal and external state through observability.
As we look into the future direction of observability, we are paying attention to the rise of artificial intelligence, machine learning, security, and more. I asked top industry experts — DevOps Institute Ambassadors — to offer their predictions for the future of observability. Below are 10 predictions:
Helen Beal(link is external), Chief Ambassador, DevOps Institute
I want to see a nexus between observability and value stream management. There is a duality in VSM that observability can help with; it's about flow and value realization. Value outcomes for customers are typically measured in terms of P&L, NPS ore reviews and referrals. But these are all lagging indicators. Observability has the ability to provide leading indicators, real-time data that tells us what a customer is experiencing right now and how it's about to affect their behaviour.
The use cases for AIOps are expanding beyond incident management and into customer experience, hence the call from Eveline Oerhlich(link is external) to rename the segment predictive analytics. It's moving into the realm of RUM (real user monitoring) and value stream teams can use the data to prioritize their work based on direct customer feedback.
Mark Peters(link is external), Technical Lead, Novetta
Observability changes with systems. Containers through Docker, Kubernetes and orchestration systems improve the ability to monitor individual events and create observability. The future of observability lies not in more observability but in using better processes through ML and AI functions to observe the results of observability, finding and fixing issues faster than human monitoring can handle.
Ryan Sheldrake(link is external), Field CTO, Lacework
I think when we can truly map GitOps back from runtime and entirely correlate and verify (not simulate) that what is running is still exactly what passed all the automated verification and tests on the way to deployment and feedback is instant/automated, we can consider the system to be close to "self-healing."
Tiffany Jachja(link is external), Engineering Manager, Vox Media
Machine Learning observability is the future of observability. For example, today, only a few programming language runtimes support auto-instrumentation in distributed tracing. As a result, most developers in organizations adopting tracing practices for their software services are coupling business logic to infrastructure configurations in their code. This leads to code staleness, additional development time, and more requirements to continuously deliver.
Parveen Arora(link is external), Co-founder and Director, VVnT SeQuor
Observability is looked upon as a priority for DevOps-driven, agile development methodologies in the hopes of driving faster release cycles and delivering higher-quality software.
Supratip Banerjee(link is external), Solutions Architect, Principal Global Services
The Rise of AI in Observability — We can obtain the knowledge we require by applying AI to your observability data, automating monitoring practices, and surfacing actionable information to improve the customer experience. Automating every step of the way from creating the data to informing us of what we actually need to do, effectively reduces mountains of data to actionable information.
Vishnu Vasudevan(link is external), Head of Product Engineering and Development, Opsera
The future of observability will require a preventive problem ID using historical data patterns that can be easily identified. Emerging security and data protection incidents are creating toil. If observability practices can get teams to build stories around the translation of data analysis to easily understand the insights and influence action on any business decision — that's going to help significantly. Therefore, building a value-driven strategy for future iterations, especially around the customer data and relationship to different app features within the product, will help evolve observability over time. Continuously evaluating the business strategy through the context of observability is where the future needs to go.
Jose Adan Ortiz(link is external),Solutions Engineer, Akamai Technologies
As far as new developments in the open telemetry field, it is important to consider another fundamental pillar that is getting more and more significant for development teams, SREs, and stakeholders: security.
Security data, events, and CVEs must be integrated in the near future to provide a deep correlation with logs, metrics, and traces in order to maintain software components secure and free of vulnerabilities.
Maciek Jarosz(link is external), DevOps and Process Expert
As time passes and we learn more and more regarding good engineering practices, tops and flops of any given technology, and all that jazz. I'd say there will emerge some players who will possibly dominate the observability market.
Maybe those would be the big names of today, maybe some brave business people who dared to try their crazy ideas on the market — only time will tell.
Neelan Choksi(link is external), President and COO, Tasktop
Continuous improvement of fast feedback and flow will be key to fast learning and understanding — if decisions that have been made are making an impact on customer experience. The faster our design and development cycles, the faster we learn. The ability to rapidly develop minimal delightful products will continue to be a key factor to successfully launch new and innovative products.
Anshul Lalit(link is external), Head of Technology and Transformation, Kongsberg Digital
We're in the midst of a data revolution and observability is a growing demand field. It is quickly becoming a skill sought after due to the ever-increasing number of distributed systems and the operational complexity that goes along with that. In the foreseeable future, we can expect observability to become more commonplace in our lives. With the increasing sophistication of IoT devices, it is becoming more challenging to troubleshoot and debug issues with these devices. In response to this, we can expect observability to be developed to keep pace with IoT technology. As a result, we can expect observability to be a nearly ubiquitous service that will be delivered in a multitude of ways. It will be used to send data from IoT devices up to backend analytics processing and to visualize data analysis. We may even see this service as a standard feature for IoT devices or included with a smartphone or personal computer operating system.
Join DevOps Institute for SKILup Day: Observability(link is external), for how-to sessions to expand your observability knowledge.
Industry News
JFrog is partnering with Hugging Face, host of a repository of public machine learning (ML) models — the Hugging Face Hub — designed to achieve more robust security scans and analysis forevery ML model in their library.
Copado launched DevOps Automation Agent on Salesforce's AgentExchange, a global ecosystem marketplace powered by AppExchange for leading partners building new third-party agents and agent actions for Agentforce.
Harness completed its merger with Traceable, effective March 4, 2025.
JFrog released JFrog ML, an MLOps solution as part of the JFrog Platform designed to enable development teams, data scientists and ML engineers to quickly develop and deploy enterprise-ready AI applications at scale.
Progress announced the addition of Web Application Firewall (WAF) functionality to Progress® MOVEit® Cloud managed file transfer (MFT) solution.
Couchbase launched Couchbase Edge Server, an offline-first, lightweight database server and sync solution designed to provide low latency data access, consolidation, storage and processing for applications in resource-constrained edge environments.
Sonatype announced end-to-end AI Software Composition Analysis (AI SCA) capabilities that enable enterprises to harness the full potential of AI.
Aviatrix® announced the launch of the Aviatrix Kubernetes Firewall.
ScaleOps announced the general availability of their Pod Placement feature, a solution that helps companies manage Kubernetes infrastructure.
Cloudsmith raised a $23 million Series B funding round led by TCV, with participation from Insight Partners and existing investors.
IBM has completed its acquisition of HashiCorp, whose products automate and secure the infrastructure that underpins hybrid cloud applications and generative AI.
Veeam® Software announces Veeam Kasten for Kubernetes v7.5, designed to deliver Kubernetes-native data resilience for enterprises.
DeepSource released Globstar, an open-source project bringing code security tooling to the AppSec community, with no restrictions on commercial usage.
Google Cloud announced the public preview of Gemini Code Assist for individuals, a free version of Gemini Code Assist that will give students an easy-to-use free AI coding assistant with the highest usage limits available