| 1. Gemini-Powered Solutions Deployed |
Design, develop, and deploy at least two Gemini-based AI solutions (e.g., document summarization, chat agent, or data extraction automation) using Vertex AI + Gemini APIs. |
Delivered to production with >90% accuracy and <2s response time. |
| 2. Scalable Cloud Architecture |
Build a modular AI microservices framework using Cloud Run / Cloud Functions with integrated authentication, logging, and monitoring. |
Reusable components adopted in at least 3 future use cases. |
| 3. RAG / Context-Aware Workflows |
Implement Retrieval-Augmented Generation (RAG) pipelines combining Gemini + BigQuery or vector databases for knowledge grounding. |
Demonstrated 25% reduction in hallucination or response variance. |
| 4. Cross-Team Enablement |
Partner with Data, Automation, and AppDev teams to integrate Gemini AI into existing business workflows (e.g., UiPath, Power Platform, or ServiceNow). |
Minimum of 2 successful integrations with documented ROI. |
| 5. Continuous Optimization |
Monitor, retrain, and improve AI models via Vertex AI pipelines and Model Monitoring. |
Demonstrated 15% performance gain over baseline models. |