What are the responsibilities and job description for the Senior AI Data Architect with Google Cloud Platform position at Jobs via Dice?
Dice is the leading career destination for tech experts at every stage of their careers. Our client, Swanktek, is seeking the following. Apply via Dice today!
Senior AI Data Architect role, you should focus on these 5 high-impact skill clusters. These combine the "must-have" Google Cloud Platform technical stack with the emerging "Agentic" requirements that define this specific job.
Senior AI Data Architect role, you should focus on these 5 high-impact skill clusters. These combine the "must-have" Google Cloud Platform technical stack with the emerging "Agentic" requirements that define this specific job.
- Agentic AI & Orchestration Frameworks
- Key Keywords: Vertex AI Agent Builder, LangChain, LangGraph, CrewAI, AutoGen.
- What to look for: Experience building multi-step workflows where an AI agent uses APIs (tools) to complete a task, rather than just generating text.
- Vertex AI & MLOps Lifecycle
- Key Keywords: Vertex AI Pipelines, Model Registry, Feature Store, Model Monitoring, CI/CD for ML.
- What to look for: Candidates who have experience with "Model Drift" detection and automated retraining pipelines (MLOps).
- Google Cloud Platform Data Lakehouse Architecture
- Key Keywords: BigQuery (specifically BigQuery ML and BigLake), Dataproc, Dataflow, Medallion Architecture (Bronze/Silver/Gold).
- What to look for: Experience unifying "Data Lakes" (unstructured storage) with "Data Warehouses" (structured SQL) into a single Lakehouse on Google Cloud Platform.
- Generative AI & RAG (Retrieval-Augmented Generation)
- Key Keywords: Gemini (Pro/Flash), Vector Databases (Vertex AI Search & Conversation), Prompt Engineering, Embeddings.
- What to look for: Evidence of building RAG architectures where an LLM retrieves real-time data from a database to provide accurate, non-hallucinated answers.
- Cross-Functional Technical Leadership
- Key Keywords: Reference Architectures, Stakeholder Management, Solution Blueprints, Cost Optimization (FinOps).
- What to look for: Experience presenting to CXOs, mentoring data engineering teams, and performing "Vendor/Tool Evaluations" for GenAI.