by Tetyana Lykhitska | December 24, 2025 12:45 pm
Across the tech industry, success is defined by how effectively companies balance speed, cost, quality, and risk, regardless of the year. What changes over time is how hard this balance becomes to maintain, as new technologies emerge, delivery cycles accelerate, and products grow more complex.
For this reason, testing has become more critical than ever. QA helps organizations maintain control during rapid change, support confident innovation, and translate technical complexity into measurable business value.
But, to continue delivering this support, QA practices must evolve as well. Below, we outline the key QA trends shaping 2026 and explain why adopting them matters for organizations focused on stability, scalable growth, and long-term product value.

AI continues to take a central role in QA, supporting teams by accelerating routine work such as test data generation, stabilizing flaky automation, and running repetitive checks at scale. This shift is not about replacing manual testers. The strongest results come from combining AI capabilities with human expertise. You can read more about our perspective on this topic here[1].
What is changing is how AI is used in QA. AI’s role is moving toward decision support. Modern AI systems analyze code changes, assess historical risk patterns, and help guide testing priorities. This shift positions AI as an active contributor to quality decisions, rather than a tool limited to task automation.
As AI-driven systems grow more complex, maintaining their reliability becomes increasingly challenging. Companies face issues such as unpredictable behavior, hallucinations, and inconsistent outputs that cannot be addressed by traditional testing alone. Covering these risks requires a dedicated testing approach tailored specifically to AI-based systems.
The traditional distinction between shift-left testing (focused on early validation) and shift-right testing (focused on production behavior) is no longer relevant. Modern QA integrates both approaches into a continuous quality loop.
Managing quality across all components using fragmented tools has become increasingly inefficient. End-to-end testing platforms address this by consolidating functional, regression, API, performance, accessibility, and security validation within a single environment. This integrated approach streamlines quality workflows, reduces operational overhead, and ensures that testing reflects real user experience rather than isolated checks.
The role of QA has expanded beyond traditional testing. Today, QA professionals design automation strategies, collaborate with AI systems, and interpret quality signals within a business context. Their focus is on turning AI-driven insights into outcomes that directly inform release decisions and deliver measurable results.
These capabilities are most commonly found at the senior level, which explains the growing demand for experienced QA engineers across the market. As this shift accelerates, organizations may face a new challenge in 2026: a shortage of specialists with the depth of expertise required to oversee AI-enabled quality processes confidently.
Quality can no longer be addressed at the final stage of delivery. Leading teams integrate QA directly into CI/CD workflows, where validation runs continuously as part of everyday development. By 2026, many large enterprises will use AI assistants within their pipelines to automate testing, analyze operational data, and support controlled-release strategies. In this model, QA functions as a core delivery capability. Each code change feeds a continuous learning cycle, enabling teams to identify issues earlier, adapt faster, and release with greater confidence.
Software quality is no longer viewed only as a technical metric and is increasingly treated as a business KPI. According to Gartner [1], 81% of executives now link software quality directly to customer satisfaction and revenue, changing how QA outcomes are evaluated and discussed.
In practice, this shift means quality reporting now focuses on experience-driven indicators such as uptime, performance, accessibility, and overall user experience. As these metrics become part of decision-making, product strategy grows more customer-centric and more closely connected to measurable business impact.
Test automation is moving into a more mature stage, shifting from isolated initiatives to coordinated, enterprise-wide strategies shaped by AI. This evolution enables organizations to shorten testing cycles, reduce operational costs, and gain greater confidence in product quality.
At the same time, AI-driven automation requires clear governance to ensure accuracy and alignment with business priorities. Without proper oversight, efficiency gains can introduce hidden risks. Companies that establish this balance in 2026 will build automation frameworks that scale with product complexity while remaining resilient and adaptable.
The growing adoption of connected devices is driving increased demand for IoT testing. As IoT ecosystems become more complex and widely used, ensuring reliable performance, security, and stability becomes critical for business operations.
IoT testing focuses on validating device behavior, connectivity, and system interactions under real conditions. By preventing unexpected failures and inefficiencies, it helps improve overall system productivity, enhances control over connected environments, and supports more efficient use of network and device resources.

We apply a comprehensive QA approach that combines traditional testing practices with AI-tailored validation[2] methods. This allows us to address the specific challenges of AI-powered products, including non-deterministic behavior, decision consistency, and evolving system logic.
We engage with partners from early ideation and design stages to identify risks, clarify quality scope, and align QA priorities before testing begins. At the same time, we support shift-right practices by validating product behavior in real conditions, using production data and usage insights. Through this approach, we help partners identify risks early and maintain consistent quality control throughout the product lifecycle.
We provide end-to-end testing that covers functionality[3], integrations[4], performance[5], and accessibility[6] across the whole user journey. This approach helps our clients gain a realistic view of product quality, identify risks across interconnected areas, and ensure that quality decisions reflect real usage scenarios and business priorities.
We always begin each engagement with a requirements analysis that covers business goals, client needs, and product context. These insights shape the QA approach we use throughout testing, enabling stronger, more consistent quality outcomes for our partners.
We integrate seamlessly into client workflows, including Agile frameworks, CI/CD pipelines, and custom delivery processes. This flexibility allows us to align QA activities with existing operations, minimize disruption, and provide continuous quality validation without slowing down delivery.
We provide end-to-end testing for IoT solutions, covering the whole path from edge devices to cloud platforms. Our teams validate real-world performance, data flow, connectivity, and scalability across the entire IoT ecosystem, helping ensure stability and reliability in complex connected environments.
As a new year approaches, it’s the right time to think about what will keep your product successful in 2026. As we’ve seen, testing practices that evolve alongside technology and business needs play a key role in ensuring stability, scalability, and confidence as products grow.
At QATestLab, we already apply modern QA approaches to meet evolving market demands. Moreover, we continuously monitor emerging trends and refine our practices to help our partners adapt with confidence and maintain consistent product quality.
If you require support with testing your product, our QA engineers are ready to apply proven and effective testing methods to keep your software competitive. Get in touch[7], and let’s work together toward long-term product success.
[8]Source URL: https://blog.qatestlab.com/2025/12/24/software-quality-trends-in-2026-key-changes-shaping-modern-qa/
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