Asia Continues to Lead Global Surge in QR Code Payments
The value of QR code payments in Asia Pacific will grow by 300% by 2029, up from $290 billion this year, according to Juniper Research.
Gartner published the top strategic technology trends in software engineering for 2023 and beyond. According to the analytics firm, those trends are Inner Source, Developer Experience, AI-Augmented Software Engineering Teams, AI-Empowered Applications, Platform Engineering, And Digital Immune Systems.
“Software engineering leaders are under continuous pressure to adopt modern architectures and technologies. To do this well, they need to know which trends have the greatest potential impact for their digital business efforts within an actionable planning horizon,” said Joachim Herschmann, VP Analyst at Gartner. “Gartner’s top trends represent a set of approaches and technologies that software engineering leaders must leverage over the next two to three years to stay ahead of the curve, innovate, and thrive in an environment of constant disruption.”
The top strategic technology trends for software engineering fall into three distinct categories. The developer enablement theme brings together trends for enabling developer teams to release their full potential. The second theme focuses on enhancing teams with AI technologies and the third theme focuses on trends in scaling software development.
InnerSource:
InnerSource is a software development strategy that applies open-source practices to proprietary code. By adopting an open-source mindset to software development, organizations can close gaps and break down silos, leading to a stronger and tighter software development lifecycle.
Developer Experience:
Developer experience refers to all aspects of interactions between developers and the tools, platforms, processes, and people they work with to develop and deliver software products and services. Improving developer experience is critical to succeeding with digital initiatives and building high-performing teams. Gartner believes that developer experience extends beyond developer tools and technologies.
AI-Augmented Software Engineering Teams:
AI-augmented software engineering leverages AI technologies to aid software engineering teams in creating and delivering applications faster. They can quickly generate different types of artifacts including design elements, application code, or test cases that they can then refine and reuse thereby accelerating the overall process.
AI-Empowered Applications:
The combination of available enterprise data, advanced model-building capabilities, and generative AI services will result in data-enhanced applications that drive better business decisions. AI-empowered applications can enrich the information available in enterprises and applications, automate workflows, and build models that assess risk or recommend the next best actions. For success when using AI, software engineering leaders should treat AI model development differently from application development and coordinate activities between development and model-building teams.
Platform Engineering:
Platform engineering is the discipline of building and operating self-service internal developer platforms for software delivery and life cycle management. It helps developers discover, operate, secure, improve, and build upon complex, distributed IT systems — especially when they are not technical experts in the underlying systems. Platforms improve the overall developer experience with a curated set of tools and services. They also improve the consistency and quality of IT solutions reduce redundant tools and processes, consolidate parallel efforts by multiple teams, enforce security and compliance standards, and include pervasive automation.
Digital Immune System:
Digital Immunity interlinks practices from the areas of observability, software testing, chaos engineering, software development, site reliability engineering, and software supply chain security to ensure high resiliency and quality of applications.