Madrid, Castellana 85 • Madrid, Parque Empresarial Pta del Este • Madrid, Torre Chamartin • Madrid
Experience
Entry
Posted
Jul 10, 2026
Apply by
August 9, 2026
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Job Description
**We are:**
A forward-thinking services company at the forefront of AI-native innovation. We partner with enterprise clients to create next-generation, agent-powered workflows engineered to scale in real-world settings. Our engineers embed deeply with customers, moving projects beyond experimentation into operational reality.
**You are**
An AI Native Engineer with a strong foundation in building cloud-native solutions and hands-on experience designing and deploying agentic systems, especially for enterprise environments. You’re a critical thinker who thrives in ambiguity, delivering concrete results by designing, building, and running AI agents that augment workflows and scale across modern infrastructure.
You'll shape how enterprises adopt AI-native engineering - either by leading complex agentic solutions and developing engineering talent, or by owning critical technical areas end-to-end as a senior IC
**The Work**
You’ll partner directly with client stakeholders — acting as both technologist and trusted advisor. You’ll partner with stakeholders to define use cases, rapidly prototype, and deploy agentic workflows that are robust, secure, and operational in complex enterprise domains. Often, these will be net-new platforms and systems that need to be stitched together in our clients’ environments alongside our ecosystem partners.
**Agent Architecture & Engineering**
- Design and build enterprise-ready AI agents incorporating retrieval, orchestration, policy-based routing, tool invocation, evaluation harnesses, and lifecycle observability.
- Implement resilient, testable, and maintainable agentic workflows that can be iterated on quickly.
**AI Platform Integration**
- Develop and/or extend abstraction layers across AI providers (Anthropic, Google, OpenAI, etc.) to enable seamless integration and multi-provider enablement.
- Contribute to shared libraries, SDKs, and patterns that can be reused across clients.
**Cloud-Native Engineering**
- Leverage containerization (Kubernetes, Docker), microservices, serverless, event-driven architectures, CI/CD, and observability stacks to deliver scalable AI-native systems.
- Own deployment, monitoring, and troubleshooting for your services in production.
**Domain-Specific Workflows**
- Tailor and deploy agentic applications across verticals (e.g., finance, healthcare, retail), adapting to domain-specific processes and constraints.
- Work closely with client SMEs to translate business workflows into agentic solutions.
**Client Engagement**
- Participate in and/or lead design workshops, POCs, and code-with sessions to shape data-driven agent workflows with stakeholders, fostering trust and adoption.
- Communicate trade-offs, risks, and recommendations clearly to both technical and non-technical audiences.
**Measure & Improve**
- Define and use key metrics, test harnesses, and evaluation plans to measure agent accuracy, latency, safety, and cost effectiveness.
- Iterate rapidly based on data, feedback, and changing requirements.
**Knowledge Sharing**
- Craft reusable patterns, documentation, and best practices that influence internal assets and client roadmaps.
- Contribute to internal communities of practice around AI-native and agentic engineering.
Travel may be required for this role. The amount of travel will vary from 25% to 75% depending on business need and client requirements.
## Key Responsibilities
- Use AI coding assistants daily as a standard part of delivery, actively, frequently, and with demonstrable impact on productivity and output quality
- Integrate LLM APIs into applications in production: calling AI provider APIs in live code, managing token limits and latency, and building initial abstraction layers
- Apply AI across the full software delivery lifecycle: AI-generated tests, AI-assisted debugging, AI-accelerated code review, and prompt engineering for development tasks
- Own the quality of AI-generated outputs in your delivery scope, exercise engineering judgment about reliability, limitations, and failure modes; know when AI output is production-ready and when it is not
- Define and track KPIs to evaluate the effectiveness and ROI of AI-assisted workflows; present AI productivity and quality metrics to project stakeholders
- Own delivery end-to-end — from design through to production support — in Agile sprint cycles alongside client engineering teams
- Contribute to shared knowledge bases, reusable components, and internal AI tooling standards that benefit the wider team
- Build and integrate the application layers, APIs, and interfaces that connect full-stack systems to agentic backends — understanding data flows, context handoffs, and integration points between your code and AI pipelines
## Basic Qualifications
- Bachelor's degree in Computer Science, Computer Engineering, Software Engineering, or a related field
- Comercial software engineering experience in production environments (or equivalent demonstrated through academic projects, internships, or shipped personal projects)
- Proficiency in at least one primary backend language: Python, Java, or TypeScript
- Demonstrated hands-on experience using AI tools actively in day-to-day engineering work — with practical examples of how AI was used to solve real problems, iterate on outputs, and improve delivery; including direct experience calling LLM APIs in production code with an understanding of token management, latency, and cost tradeoffs
- Basic understanding of web technologies including JavaScript, HTML, and CSS
- Familiarity with cloud fundamentals (AWS, Azure, or GCP), containers (Docker), and CI/CD pipelines
- Understanding of Agile delivery fundamentals
- Experience with databases — SQL or NoSQL
- Ability to validate, evaluate, and improve AI-generated outputs; understanding of AI limitations and responsible use
- Familiarity with agentic system concepts — awareness of orchestration frameworks (LangChain, LangGraph, or equivalent), RAG pipelines, and how full-stack applications connect to agent-based architecture; production experience preferred, conceptual understanding required
**About Accenture**
Accenture is a leading global professional services company that helps the world’s leading businesses, governments and other organizations build their digital core, optimize their operations, accelerate revenue growth and enhance citizen services—creating tangible value at speed and scale. We are a talent- and innovation-led company with approximately 791,000 people serving clients in more than 120 countries. Technology is at the core of change today, and we are one of the world’s leaders in helping drive that change, with strong ecosystem relationships. We combine our strength in technology and leadership in cloud, data and AI with unmatched industry experience, functional expertise and global delivery capability. Our broad range of services, solutions and assets across Strategy & Consulting, Technology, Operations, Industry X and Song, together with our culture of shared success and commitment to creating 360° value, enable us to help our clients reinvent and build trusted, lasting relationships. We measure our success by the 360° value we create for our clients, each other, our shareholders, partners and communities.
Visit us at [www.accenture.com](http://www.accenture.com/)
**Declaración de igualdad de oportunidades en el empleo**
Creemos que nadie debe ser discriminado por sus diferencias. Todas las decisiones de empleo se tomarán sin importar la edad, raza, credo, color, religión, sexo, origen nacional, ascendencia, discapacidad, condición de veterano militar, orientación sexual, identidad o expresión de género, información genética, estado civil, ciudadanía ni ningún otro criterio protegido por la legislación aplicable. Nuestra rica diversidad nos hace más innovadores, competitivos y creativos, lo que nos ayuda a servir mejor a nuestros clientes y comunidades.
Key Responsibilities
Design and build enterprise-ready AI agents with retrieval, orchestration, and policy-based routing.
Implement resilient agentic workflows that can be iterated on quickly.
Develop abstraction layers across AI providers to enable seamless integration.
Leverage containerization, microservices, and serverless architectures for scalable systems.
Tailor and deploy agentic applications across verticals like finance and healthcare.
Participate in design workshops and POCs to shape data-driven agent workflows.
Define and track KPIs to evaluate the effectiveness and ROI of AI-assisted workflows.
Own delivery end-to-end from design through to production support in Agile cycles.
Build and integrate application layers and APIs connecting full-stack systems to agentic backends.
Requirements
Bachelor's degree in Computer Science
Computer Engineering
Software Engineering
or a related field
Skills Required
PythonJavaTypeScriptJavaScriptHTMLCSSAWSAzureGCPDockerCI/CDSQLNoSQLLLM APIsAgileAgentic systemsOrchestration frameworksRAG pipelinesCritical thinkingCommunicationProblem solvingAdaptabilityCollaborationAnthropicGoogleOpenAILangChainLangGraphFull-stack application development
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