Automation has ceased to be merely a tool for accelerating tests. Today, it is the backbone of continuous delivery pipelines. However, many organizations are still trapped in fragile frameworks or those that are overly dependent on manual maintenance.
While companies worldwide are already integrating Artificial Intelligence (AI) into their operations, many organizations in Latin America are still grappling with the same questions: Where do I start? How do I pay for it? Who can help me implement it without putting the business at risk?

The idea that software quality consists only of checking that "everything works" just before deployment is already obsolete. Today, quality is as critical as development itself, and organizations that fail to recognize this are running a high risk. In a context where a bug can cost millions or compromise the security of millions of users, transforming quality into a strategic capability is not an option, but an imperative.
The profound digital transformation sweeping across all sectors has elevated the role of QA (Quality Assurance) teams from a tactical testing function to an essential role in the architecture, security, performance, and now, the validation of complex systems driven by artificial intelligence. But how are companies and professionals adapting to this new paradigm? We explore that in depth here.
Automation has ceased to be merely a tool for accelerating tests. Today, it is the backbone of continuous delivery pipelines. However, many organizations are still trapped in fragile frameworks or those that are overly dependent on manual maintenance. What is at stake is not just efficiency, but the sustainability of the development cycle.
Data from Capgemini (2024) shows that 74% of companies acknowledge limitations in their automation capabilities. Therefore, the SDET (Software Development Engineer in Test) profile has evolved into true Automation Architects, responsible for building environments capable of sustaining multiple cycles, integrations, and simultaneous validations. And the market is responding: roles like "Automation Architect" saw a 38% year-over-year growth in Latin America, according to LinkedIn.
In the face of a growing landscape of cyberattacks and more demanding regulation, integrating security from the software design stage has become the norm. In this model, known as DevSecOps, security is not a final stage, but a component woven throughout the entire process. This has profoundly changed the work of QA.
Today, specialized testers are required for threat analysis, validation of automated controls, and vulnerability testing integrated into CI/CD cycles. Emerging profiles, such as Security QA Engineer or Automation Security Tester, are being highly sought after in sectors where digital risk exposure is high. Gartner estimates that by 2026, 70% of projects operating with continuous delivery will include automated security testing as part of the basic standard.
With industries like fintech, digital health, and e-commerce operating in real-time, performance can no longer be evaluated as a pre-launch phase. Performance must be monitored in production, using observability tools and techniques such as shift-right testing or chaos engineering, where controlled failures are induced to test the system's resilience.
This shift requires QA to be more aligned with operations and infrastructure areas, and to have mastery over metrics related to user experience, concurrent load, tolerated latency, and response to unexpected peaks.
Modern architectures, based on containers, hybrid clouds, and distributed microservices, require a completely new approach to testing. Validating that environments are deployed correctly under Infrastructure as Code (IaC) schemes, managing consistency across multiple zones, and ensuring API stability are new mandates for the contemporary QA professional.
Forrester estimates that 67% of errors in distributed applications originate from API integration failures or incorrect cloud configurations. Tools like Postman, REST Assured, and K6 have become essential. The demand for testers with knowledge of Kubernetes, Terraform, and Docker is projected to grow 30% annually until 2027.
Testing algorithms that learn, adapt, and define behaviors is one of the greatest current technical and ethical challenges. It is no longer enough to validate flows; now, QA must ensure that intelligent systems operate without bias, with accuracy, and, above all, with interpretability.
This involves approving the quality of datasets, guaranteeing fairness toward diverse populations, and demonstrating that it is understood how and why the AI makes certain decisions. Companies like Google and IBM have already developed validation frameworks for AI systems. Meanwhile, startups in regulated sectors test their models right from data collection to comply with bioethics and regulatory frameworks.
New roles such as AI Test Engineer, AI QA Specialist, or Data Quality Analyst specialized in QA are strongly emerging, opening up an immense professional opportunity, especially in Latin America where there is still a shortage of talent in this mix of skills.
Software quality is no longer a checkpoint, but a cross-functional organizational capability. While users demand flawless experiences and systems operate in increasingly dynamic environments, QA becomes the silent driver of performance, reliability, security, and technological ethics.
Companies must prepare for this new scenario with concrete actions:
Redefine QA roles as strategic, not just operational, engineers.
Invest in specialized training in automation, AI testing, security, and cloud-native environments.
Include QA from the design stage, promoting mature DevOps cycles where quality and delivery are shared responsibilities.
Foster multicultural teams that include testers, data scientists, legal experts, and ethics specialists.
The future of QA is not defined merely by well-executed tests, but by the ability to anticipate design flaws, prevent risks, and operate with excellence in dynamic contexts. Quality, in this next decade, will be synonymous with technological trust. And those who lead this transition will become architects of solid, reliable, and sustainable digital ecosystems.






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