Senior AI Solution Architect
Listed on 2026-03-05
-
IT/Tech
AI Engineer, Data Engineer
JD below:
Senior AI Solution 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.
1. Agentic AI & Orchestration Frameworks
The JD specifically mentions Agentic AI and autonomous agents
. Look for candidates who move beyond basic chatbots and can build systems that 'think' and 'act.'
- Key Keywords: Vertex AI Agent Builder, Lang Chain, Lang Graph, CrewAI, Auto Gen.
- 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.
2. Vertex AI & MLOps Lifecycle
Since this is a Google Cloud Platform-centric role, the candidate must be an expert in the Vertex AI suite. They need to demonstrate they can product ionize models, not just build them.
- 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).
3. Google Cloud Platform Data Lakehouse Architecture
The 'Data' half of the title requires a deep understanding of how to store and process the massive datasets that fuel AI.
- Key Keywords: Big Query (specifically Big Query ML and Big Lake), 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.
4. Generative AI & RAG (Retrieval-Augmented Generation)
The role requires architecting solutions using LLMs like Gemini
. The candidate must understand how to 'ground' these models in company-specific data.
- 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.
5. Cross-Functional Technical Leadership
At the 1015%2B year level, this person is a 'Senior Visionary.' They need to bridge the gap between business ROI and technical implementation.
- Key Keywords: Reference Architectures, Stakeholder Management, Solution Blueprints, Cost Optimization (Fin Ops).
- What to look for: Experience presenting to CXOs, mentoring data engineering teams, and performing 'Vendor/Tool Evaluations' for GenAI.
(If this job is in fact in your jurisdiction, then you may be using a Proxy or VPN to access this site, and to progress further, you should change your connectivity to another mobile device or PC).