Senior AI Implementer & Automation Architect — Role Overview A Senior AI Implementer & Automation Architect is a hybrid strategic–technical leader responsible for designing, deploying, and optimizing AI-driven systems that automate business processes, improve efficiency, and enable data-powered decisions. They combine expertise in AI models, automation platforms, systems integration, and business process engineering. Core Responsibilities 1. AI Strategy & Architecture Identify opportunities for AI and automation across the organization. Build end-to-end AI solution architectures (LLMs, agents, RPA, workflows, APIs). Evaluate and select AI technologies, tools, and platforms. Align AI initiatives with business goals and ROI targets. 2. AI Model Implementation Deploy and fine-tune LLMs, predictive models, and generative AI tools. Integrate models into existing systems (CRMs, ERPs, websites, mobile apps). Design prompt engineering frameworks and multi-agent systems. Develop retrieval-augmented generation (RAG) pipelines for knowledge use. 3. Workflow Automation Architecture Map out current business processes to identify automation opportunities. Build scalable automated workflows using: RPA (UiPath, Automation Anywhere, Robocorp) No-code/low-code tools (Zapier, Make, Power Automate) Custom scripts or API integrations Ensure automations are reliable, scalable, and maintainable. 4. Systems Integration Connect apps, databases, AI models, and cloud infrastructure into unified workflows. Design API-based communication between multiple systems. Ensure real-time data syncing and error handling. 5. Data Engineering & Preparation Prepare structured and unstructured data for AI use. Oversee ETL pipelines and data quality processes. Build vector databases or embeddings pipelines for search and retrieval. 6. Agentic AI Development Build autonomous or semi-autonomous AI agents for: Lead generation Customer service Research Internal operations Design fail-safes and decision-making logic. 7. Governance, Security & Compliance Implement responsible AI frameworks. Ensure data privacy, security, and regulatory compliance. Manage model monitoring, drift detection, and version controls. 8. Cross-Functional Collaboration Work with product teams, IT, executives, and operations. Translate business problems into technical AI solutions. Deliver documentation, training, and change-management support. 9. Performance Monitoring & Optimization Measure ROI and operational impact of AI systems. Optimize models, workflows, and integrations over time. Troubleshoot issues and lead continuous improvement cycles. 10. Leadership & Mentorship Guide junior engineers, data scientists, and automation developers. Lead AI implementation roadmaps and best practices. Act as a high-level subject matter expert across the company. Key Skills Technical Skills Large Language Models (OpenAI, Anthropic, open-source) RPA platforms API integration Cloud architecture (AWS, Azure, GCP) Python/JavaScript scripting Vector databases (Pinecone, Chroma, FAISS) Orchestration tools (Airflow, Dagster) Automation platforms (Zapier, Make, n8n, Power Automate) Business Skills Process engineering ROI modeling for automation AI use-case identification Project + stakeholder management Soft Skills Communication & teaching Cross-team leadership Strategic thinking Problem solving In Simple Terms A Senior AI Implementer & Automation Architect is the person who: Designs the AI solutions Builds the systems Integrates all the tools Automates workflows Ensures everything runs smoothly And aligns the tech with the company’s business goals They’re the “architect + engineer + strategist” responsible for making AI actually work in a company.