Accenture
AI

Agentic AI Engineer

Accenture · Budapest, PE, HU

Actively hiring Posted 4 months ago

At Accenture Industry X we are building an AI Hub to design and scale agentic AI solutions—multi‑agent systems that can reason, plan, and take action by combining LLMs, retrieval‑augmented generation (RAG), and external tools/APIs.

In this role, you will develop the core building blocks for reliable agent systems: orchestration patterns, agent‑to‑agent collaboration, state and memory management, and production‑minded testing/observability. The goal is to move from prototypes to repeatable, robust, and maintainable agentic workflows.

Responsibilities

  • Design and implement agent‑to‑agent communication patterns and multi‑agent collaboration workflows.
  • Integrate LLMs, RAG pipelines, and external APIs/tools into end‑to‑end agent systems.
  • Develop, test, and iterate on orchestration logic (routing, planning, tool selection, error handling, and structured execution).
  • Build prompt templates, memory/state management, and reusable workflow components to improve reliability and consistency.
  • Implement and optimize RAG + embedding workflows (retrieval strategy, chunking, evaluation, iteration).
  • Own testing & debugging for multi‑agent systems, including tracing, evaluation, and regression testing across workflows.

Required skills

Please submit a CV that highlights your proven experience, with detailed descriptions of relevant home or personal projects

  • Hands-on experience building LLM-based applications in Python, including structured prompting and multi-step workflows.
  • Practical experience with at least one agent framework or orchestration approach (e.g., LangChain or a comparable framework). Experience with LangGraph is a plus.
  • Working knowledge of prompt templates and basic memory/state concepts (e.g., session memory, conversation state, lightweight persistence).
  • RAG fundamentals with some implementation exposure: ability to build a basic retrieval flow (data chunking embeddings retrieval grounded answer) and iterate on quality.
  • Debugging mindset for agentic workflows: comfortable troubleshooting tool-calls, retrieval misses, and prompt/chain issues; familiar with logs/traces or basic observability practices.
  • Strong English language knowledge.

Nice to have

  • LangGraph experience (graph/state-machine orchestration) and/or multi-agent patterns.
  • Langfuse (or similar tracing/evaluation tooling) for prompt/version tracking, traces, and quality monitoring.
  • Experience improving RAG quality beyond the basics (evaluation, retrieval strategies, chunking experiments).
  • Exposure to testing practices for LLM apps (lightweight evaluation, regression checks, reproducibility habits).

Tags & focus areas

Used for matching and alerts on DevFound
Fulltime Ai Ai Engineer
Common Questions

Frequently asked questions

Quick answers about how DevFound's AI matching, resumes, and referrals work.

DevFound's AI Copilot ingests your profile, goals, and live job data to deliver curated matches in seconds. Every match includes a resume variant, suggested referrals, and interview prep so you can act immediately. The more feedback you provide, the sharper the Copilot becomes.

AI-led job searches shrink the hours spent sifting through boards and formatting resumes. DevFound pairs automation with your personal outreach, so you reserve energy for interviews and negotiation. Traditional networking still matters, but AI gives you a lift before you even send a message.

Modern AI roles expect comfort with production-grade code, data fluency, and practical ML tooling. The strongest candidates pair deep technical chops with storytelling—translating model impact to product, GTM, and exec partners. Continuous learning keeps you ahead as stacks evolve.

DevFound rewards active seekers. Keep your profile fresh, respond to match quality prompts, and enable alerts so you never miss a role. The AI prioritizes companies and teams that align with your feedback, accelerating both introductions and interview invites.

High-density tech hubs continue to host the deepest AI talent pools, yet distributed teams are catching up fast. Use DevFound filters to hone in on onsite, hybrid, or fully remote roles and watch openings expand across time zones.

DevFound aggregates thousands of remote AI openings and flags the nuances—core hours, async culture, and visa needs—up front. The Copilot also recommends how to position your distributed work experience so hiring managers know you can thrive on a remote team.