About this Agentic AI Engineer (Google ADK / GCP) role at Ttecdigital
What You'll Be Doing
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Architect Multi-Agent Systems: Design and implement structured multi-agent architectures (Sequential Pipelines, Parallel Fan-out/Gather, and Loop-based self-correction) using Google ADK.
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Develop Core Agentic Logic: Build deterministic graph workflows that effectively weave adaptive AI reasoning with explicit execution paths to ensure predictable outcomes.
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Tool & Skill Integration: Create, map, and integrate custom Agent Skills and third-party tools (including Google Maps MCP, Search tools, and custom enterprise APIs).
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Evaluation & Debugging: Use ADK evaluation tools to test execution trajectories, manage loop limits, avoid key collisions, and drastically mitigate production hallucinations.
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Scale and Deploy: Deploy optimized agents to Agent Engine (via Cloud Run / Google Cloud Platform) and maintain high availability, security, and low latency.
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Collaborate across Ecosystems: Work alongside product managers and core AI researchers to optimize the implementation of Gemini models ($Gemini\ 2.5\ Flash$, Pro, etc.) within agentic frameworks.
What You'll Bring to the Role
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Bachelor’s degree in Computer Science, a related technical field, or equivalent practical experience.
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2+ years of experience building and deploying production-grade LLM applications or Agentic AI systems.
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Strong proficiency in at least one primary language supported by ADK: Python (e.g., managing virtual environments using uv or pip) or TypeScript/Node.js.
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Experience with the Google Cloud Platform (GCP) ecosystem, including Cloud Run, Vertex AI, Secret Manager, and Cloud Storage.
What Will Help You Succeed
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Hands-on experience developing with the official open-source Google Agent Development Kit (ADK 2.0+).
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Deep understanding of multi-agent orchestration patterns, state graph architectures, and deterministic routing.
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Familiarity with Model Context Protocol (MCP) and integrating external tools seamlessly into LLM context windows.
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Experience implementing rigorous CI/CD pipelines for AI applications (e.g., GitHub Actions, Terraform).
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Strong background in evaluation frameworks for AI agents to benchmark precision, recall, and tool-calling accuracy.