AI Engineer - Google AI & Generative Intelligence - Full Time Role
Saransh Inc · Paramus, NJ · 1 wk ago
On-siteEngineeringFull-time
Key Responsibilities
- AI Engineering
- Design, develop, and deploy Agents leveraging commercial LLMs such as Gemini (Google), GPT (OpenAI), and Claude Sonnet (Anthropic) for high-performance, large-context, and multimodal tasks.
- Google AI & Workspace Integration
- Lead the design and implementation of AI-powered solutions deeply integrated with Google Workspace (Docs, Sheets, Drive, Gmail, Meet), Big Query and Lakehouse.
- Architect and build intelligent agents and workflows using Google Agent Development Kit (ADK).
- Leverage Google AI Studio as the primary IDE, VSCode for AI application development and prototyping.
- Utilize Google Cloud Platform (GCP) Services Including Vertex AI for ML model training, tuning, and deployment Vertex AI Vector DBs for semantic search and retrieval.
- Design & Planning
- Lead requirements gathering using Confluence for documentation and team collaboration.
- Create detailed system architecture diagrams and AI workflows using Lucidchart.
- Manage project delivery and sprint planning using Jira.
- Development Frameworks & Tools
- Orchestrate LLM/SLM applications using LangChain, LlamaIndex, and LangGraph.
- Build multi-agent systems with Semantic Kernel, and LangGraph.
- Manage and optimize prompts using LangSmith and PromptLayer.
- Manage code and data versioning with Git.
- Vector Databases & Semantic Search
- Implement semantic search and Retrieval-Augmented Generation (RAG) pipelines using Vertex AI Vector DBs and ChromaDB.
- Design and optimize end-to-end RAG architectures for enterprise-grade knowledge retrieval.
- Backend Development
- Develop robust RESTful APIs using FastAPI (Python) or Express.js (Node.js).
- Manage and secure APIs using Mulesoft, Apigee.
- Frontend Development
- Drupal Content Management System (PHP Backend + JS Frontend) - Drupal 10.4, PHP 8.1
- Build modern user interfaces using React or Angular.
- Utilize Material-UI for consistent, accessible, and modern UI components.
- OAuth2 authentication.
- Development Tools & Code Quality
- Write and debug code in VS Code with Python and GitHub Copilot extensions.
- Manage source code with GitHub or GitLab.
- Enforce code quality and standards using SonarQube, ESLint, and Pylint.
- Testing & Quality Assurance
- Conduct LLM-specific testing using RAGAS and DeepEval for LLM/RAG pipeline evaluation.
- Use LangSmith Evaluators for prompt testing and hallucination detection.
- Write and execute unit tests using pytest.
- Ensure output quality and reliability using LangChain Evaluators and custom metrics.
- Deployment & Infrastructure
- Support on-premise, cloud (GCP/Vertex AI), and hybrid infrastructure deployments including edge devices for local inference.
Required Qualifications
- 10 15 years of overall software engineering experience.
- 3+ years of hands-on experience in Artificial Generative Intelligence, including LLMs, SLMs, RAG, and multi-agent systems.
- Deep expertise in Google AI ecosystem: Gemini, Vertex AI, Google ADK, Google AI Studio, and Google Workspace integrations.
- Proficiency in Python (primary) and familiarity with Node.js.
- Strong background in cloud-native development on GCP.
- Experience with multi-agent AI architectures using Semantic Kernel, or LangGraph.