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Cube Hub, Inc.
Sr Generative AI Engineer AWS Bedrock, Databricks & AI Agents
Job summary
Work model
Job Details
- Location: Remote Position Offsite
- Duration: 6 months
Description
We are seeking an AI Consultant (hands-on) to support rapid experimentation, proofs of concept (PoCs), and pilot AI solutions that accelerate priority business use cases.
This role is focused on building quickly, testing ideas, and demonstrating value, leveraging existing internal platforms such as AWS, Databricks, Copilot studio & Power Automate rather than heavy production engineering. The ideal candidate is hands-on, pragmatic, and comfortable working in early-stage, exploratory AI efforts where speed and learning matter most.
Key Responsibilities
Rapid PoCs & Pilots
Build and iterate on quick-turn AI PoCs, pilots, and demos to validate ideas, workflows, and agent-based experiences. Emphasis is on speed, usability, and learning—not production hardening.
Agentic Experimentation
Familiar with agentic harness to configure and test AI agents in a controlled, repeatable way. This includes:
- Defining agent roles, prompts, tools, lightweight orchestration, and simple memory/state handling.
- Running structured experiments to test agent behaviors across scenarios.
- Iterating on configurations to improve usefulness, reliability, and clarity.
- Comparing different agent patterns (e.g., single vs. multi-step flows) and capturing learnings.
AWS Usage
Use AWS Bedrock & Agentcore to build AI agents with foundation models, agents, and knowledge integrations to support use cases such as summarization, insight generation, content drafting, and workflow assistance.
Databricks Based Prototyping
Leverage Databricks to build AI agents, lightweight data exploration, preparation, and integration into AI experiments—using notebooks and existing datasets to move fast.
Low Code / Config Driven Workflows
Favor low-code or configuration-based approaches (prompt templates, reusable configs, simple orchestration patterns) to accelerate development and iteration.
Lightweight Orchestration
Connect AI components across tools (e.g., Bedrock, Databricks APIs, multiple agents within the same environment) using simple orchestration patterns sufficient for pilots and demonstrations.
Stakeholder Collaboration
Partner closely with product, analytics, and business teams to shape ideas, demo solutions, gather feedback, and refine concepts.
Documentation & Readouts
Clearly document PoCs, agent behaviors, findings, and recommendations so successful pilots can be evaluated for future scale-up.
Required Qualifications
- 7 years of experience in AI engineering, data engineering, AI enablement, or applied technology roles.
- Hands-on experience working with AWS (including AWS Bedrock or similar managed AI services).
- Working experience with Databricks (Genie spaces, Playground, etc.).
- Strong Python and SQL skills; comfortable working in notebooks and lightweight scripts.
- Experience building quick prototypes and explaining technical concepts clearly to non-technical stakeholders.
- Ability to work independently and move quickly in a remote, fast-paced environment.
Good to Have
- Familiarity with core AI/ML concepts (e.g., LLMs, embeddings, prompt engineering).
- Exposure to agent-based AI patterns or evaluation frameworks.
- Basic understanding of orchestration or automation tools.
- Prior experience supporting early-stage AI pilots or innovation programs.
Success Metrics
- Delivery of multiple working PoCs or pilots within the first 4-8 weeks.
- Clear stakeholder signal on which ideas are viable and worth further investment.
- Demonstrated acceleration of workflows, insights, or decision-making through AI experimentation.
- Well-documented outcomes and recommendations to support next-phase scaling.