Redefining the future of software engineering
Software engineering has experienced two seismic shifts this century. First was the rise of the open source movement, which gradually made code accessible to developers and engineers everywhere. Second, the adoption of development operations (DevOps) and agile methodologies took software from siloed to collaborative development and from batch to continuous delivery. Now, a third such…
Software engineering has experienced two seismic shifts this century. First was the rise of the open source movement, which gradually made code accessible to developers and engineers everywhere. Second, the adoption of development operations (DevOps) and agile methodologies took software from siloed to collaborative development and from batch to continuous delivery. Now, a third such shift looks to be taking shape with the adoption of agentic AI in software engineering. Thus far, engineering teams have mainly used AI to assist with coding, testing, and other individual tasks, within tightly designed parameters. But with agentic capabilities, AI agents become reasoning, self-directing entities that can manage not just discrete tasks but entire software projects—and do so largely autonomously. If adopted and fully embraced by engineering teams, agentic AI will usher in end-to-end software process automation and, ultimately, agent-managed development and product lifecycle automation. DOWNLOAD THE REPORT This report, which is based on a survey of 300 engineering and technology executives, finds that software engineering teams are seeing the potential in agentic AI and are beginning to put it to use, but so far in a mainly limited fashion. Their ambitions for it are high, but most realize it will take time and effort to reduce the barriers to its full diffusion in software operations. As with DevOps and agile, reaping the full benefits of agentic AI in engineering will require sometimes difficult organizational and process change to accompany technology adoption. But the gains to be won in speed, efficiency, and quality promise to make any such pain well worthwhile. Key findings include the following: Adoption momentum is building. While half of organizations deem agentic AI a top investment priority for software engineering today, it will be a leading investment for over four-fifths in two years. That spending is driving accelerated adoption. Agentic AI is in (mostly limited) use by 51% of software teams today, and 45% have plans to adopt it within the next 12 months. Early gains will be incremental. It will take time for software teams’ investments in agentic AI to start bearing fruit. Over the next two years, most expect the improvements from agent use to be slight (14%) or at best moderate (52%). But around one-third (32%) have higher expectations, and 9% think the improvements will be game changing. Agents will accelerate time-to-market. The chief gains from agentic AI use over that two-year time frame will come from greater speed. Nearly all respondents (98%) expect their teams’ delivery of software projects from pilot to production to accelerate, with the anticipated increase in speed averaging 37% across the group. The goal for most is full agentic lifecycle management. Teams’ ambitions for scaling agentic AI are high. Most aim for AI agents to be managing the product development and software development lifecycles (PDLC and SDLC) end to end relatively quickly. At 41% of organizations, teams aim to achieve this for most or all products in 18 months. That figure will rise to 72% two years from now, if expectations are met. Compute costs and integration pose key early challenges. For all survey respondents—but especially in early-adopter verticals such as media and entertainment and technology hardware—integrating agents with existing applications and the cost of computing resources are the main challenges they face with agentic AI in software engineering. The experts we interviewed, meanwhile, emphasize the bigger change management difficulties teams will face in changing workflows. Download the report This content was produced by Insights, the custom content arm of MIT Technology Review. It was not written by MIT Technology Review’s editorial staff. It was researched, designed, and written by human writers, editors, analysts, and illustrators. This includes the writing of surveys and collection of data for surveys. AI tools that may have been used were limited to secondary production processes that passed thorough human review.
Pontos-chave
- A IA agentiva pode acelerar o desenvolvimento de software e melhorar a qualidade dos produtos no Brasil.
- Desafios culturais e estruturais devem ser superados para integrar efetivamente a IA nas operações das empresas.
- A governança de dados e as implicações éticas da IA precisam ser consideradas durante a adoção dessa tecnologia.
Análise editorial
A ascensão da IA agentiva no setor de engenharia de software representa uma oportunidade significativa para o mercado brasileiro de tecnologia, que já se destaca na adoção de práticas ágeis e na cultura de código aberto. Com a crescente demanda por soluções que acelerem o desenvolvimento e melhorem a qualidade do software, as empresas brasileiras podem se beneficiar enormemente da automação de processos proporcionada por essa nova geração de inteligência artificial. Isso não apenas pode aumentar a competitividade das empresas locais, mas também atrair investimentos e talentos para o país.
No entanto, a transição para um modelo de desenvolvimento gerido por IA não será isenta de desafios. As organizações precisarão enfrentar barreiras culturais e estruturais para integrar efetivamente a IA agentiva em suas operações. Isso inclui a necessidade de requalificação de equipes, adaptação de processos e, possivelmente, uma reavaliação das estruturas organizacionais existentes. O sucesso nessa jornada dependerá da disposição das empresas em investir tempo e recursos na transformação necessária.
Além disso, o cenário regulatório e ético em torno da IA ainda está em desenvolvimento no Brasil. A adoção de tecnologias avançadas como a IA agentiva exigirá uma atenção cuidadosa às implicações éticas e à governança de dados. As empresas devem estar preparadas para navegar por essas questões, garantindo que a implementação da IA não apenas traga eficiência, mas também respeite os direitos dos usuários e a privacidade dos dados.
Por fim, é crucial observar como as empresas brasileiras se posicionarão em relação a essa tendência global. A velocidade com que a IA agentiva será adotada e integrada nas práticas de engenharia de software pode determinar a capacidade do Brasil de se manter competitivo em um mercado cada vez mais globalizado e tecnológico. As próximas etapas incluem a monitorização das iniciativas de adoção e a análise dos resultados obtidos, que servirão como indicadores para o futuro do setor no país.
O que esta cobertura entrega
- Atribuicao clara de fonte com link para a publicacao original.
- Enquadramento editorial sobre relevancia, impacto e proximos desdobramentos.
- Revisao de legibilidade, contexto e duplicacao antes da publicacao.
Fonte original:
MIT Technology Review AISobre este artigo
Este artigo foi curado e publicado pelo AIDaily como parte da nossa cobertura editorial sobre desenvolvimentos em inteligência artificial. O conteúdo é baseado na fonte original citada abaixo, enriquecido com contexto e análise editorial. Ferramentas automatizadas podem auxiliar tradução e estruturação inicial, mas a decisão de publicar, a revisão factual e o enquadramento de contexto seguem responsabilidade editorial.
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