toogeza - AI Agent Architect
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Requirements
• AI Systems & Agent Architecture • Strong experience building multi-agent systems, including: • intent and sub-intent modeling • agent orchestration • agent communication and transport layers • summarization pipelines • context passing between agents • Workflow Orchestration • Agent tool-calling • Experience designing complex automation pipelines is essential. • Strong practical coding skills with vibe coding mindset: • Primary languages: • ComfyUI custom nodes • lightweight APIs (e.g., HuggingFace Spaces or inference endpoints) • Multimodal Tooling Knowledge • Ability to quickly navigate API documentation and integrate tools for: • image generation • video generation • speech synthesis • audio generation • multimodal analysis • You should know where and how to obtain the best generation quality for each modality. • Creative Thinking • Strong sense of visual rhythm and composition • Creative intuition and storytelling awareness • Good taste in video structure and montage • Ability to evaluate AI-generated output not only by metrics, but also by creative quality and narrative coherence • Video & Media Processing • video processing pipelines • image processing workflows • The following qualifications are not mandatory, but will significantly strengthen a candidate’s profile during the evaluation process: • Agentic Frameworks • Deep understanding of frameworks such as LangGraph and LangChain for building complex cyclic state graphs and stateful agent systems. • Advanced RAG & Memory Management • Experience designing long-term memory systems for agents, including mechanisms for storing and retrieving successful execution patterns or scenarios to improve future performance through experience-based retrieval. • Self-Correction & Reflection • Experience building agents with feedback loops such as self-reflection, self-critique, or strategy correction, enabling them to verify their own actions and adapt execution logic dynamically. • Evaluation & Observability • Experience with tools for monitoring, debugging, and evaluating agent chains and prompt behavior, such as LangSmith, Arize Phoenix, or Promptfoo, with the ability to identify logical failures, quality regressions, and orchestration bottlenecks. • You enjoy designing systems where AI agents collaborate to produce meaningful creative outputs. • If this role sounds like a fit — we’d love to hear from you! Just send over your CV and anything else you’d like us to consider.
Responsibilities
• AI Agent Architecture • Design and implement the architecture of a multi-agent video editing system including agents responsible for: • video analysis • narrative generation • editing orchestration • production and output synthesis • Define system prompts, behavioral rules, and structured instructions for agents interacting within the pipeline. • Pipeline Orchestration (n8n) • Develop and maintain complex orchestration pipelines in n8n, including: • multi-agent workflows • tool-calling logic • dynamic routing between tools and models • context passing between agents • Pipelines must be capable of selecting the most appropriate models, tools, and strategies depending on the task. • Multimodal Data Processing • Design robust pipelines for handling: • video materials • user text prompts • structured metadata • Ensure proper data transformation and context transfer across the pipeline stages. • Tool & API Integration • Integrate both external and internal APIs for multimodal generation and processing, including: • image generation • video generation • speech synthesis • audio generation • video processing services • Rapidly evaluate available APIs and select the best quality tools and models for each task. • Model Orchestration & Optimization • Tune and optimize model interactions, primarily based on Gemini models, including: • prompt engineering • structured outputs • tool-calling workflows • agent collaboration logic • Optimize pipelines for quality, reliability, and execution efficiency. • Future Architecture (RAG & Knowledge Systems) • Design systems that support: • vector databases • retrieval-augmented generation (RAG) • memory and contextual reasoning between agents • EXPECTED OUTCOMES: • The pipeline system should be capable of: • 1. Taking an idea + references as input • 2. Analyzing the content • 3. Generating a coherent narrative structure • 4. Selecting appropriate visual and audio elements • 5. Producing a high-quality, structured video output
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