Jobs at Scrobits Technologies

Generative AI Engineer (Python + RAG + Agentic AI)

at Scrobits Technologies • Full-time

Location

hybrid

Posted 28d ago

by
Profile Picture of Bhuwan

Bhuwan Purohit

About this Opportunity

We are looking for an experienced Generative AI Engineer who can blend strong Python backend engineering with modern AI frameworks to build scalable, production-grade AI systems. The ideal candidate has hands-on expertise with LangChain, LangGraph, FastAPI, RAG pipelines, vector databases, and agentic workflows, and can translate complex business problems into reliable AI-driven solutions.


Responsibilities

Generative AI & LLM Engineering

  • Build and optimize RAG pipelines using vector DBs like Pinecone, Weaviate, Supabase, PGVector, etc.

  • Develop AI workflows using LangChain, LangGraph, and modern model orchestration tools.

  • Implement prompt engineering, prompt templates, response validation, and LLM optimisation.

  • Work with embeddings, similarity search, and text-to-vector processing for personalized retrieval.

  • Build agentic AI workflows capable of multi-step reasoning, tool usage, and autonomous task execution.

  • Handle multimodal workloads involving text, images, or video for processing or generation.

  • Integrate observability tools for tracking latency, cost, accuracy, and model behavior.

Backend Engineering (Python)

  • Build scalable backend services using FastAPI (preferred), Django, or Flask.

  • Design RESTful APIs and backend pipelines for AI workloads, streaming, and multimodal data.

  • Implement asynchronous programming and background job execution (Celery, cron, or equivalents).

  • Work with relational DBs (PostgreSQL, MySQL) and integrate vector DBs for AI workflows.

  • Consume 3rd-party SDKs/APIs, ensuring secure and seamless system integrations.

  • Deploy services using Docker, containerized pipelines, and production-grade best practices.

  • Implement secure coding practices, RBAC, API security, and scalable architectures.


Required Skills

  • Strong proficiency in Python and backend frameworks (FastAPI preferred).

  • Deep experience with LangChain, LangGraph, RAG pipelines, vector databases, embeddings.

  • Hands-on knowledge of LLMs, prompt engineering, multimodal models, and AI agents.

  • Experience deploying AI services with Docker, job schedulers, and scalable backend design.

  • Strong understanding of relational DBs + vector DBs.

  • Experience with asynchronous programming and writing robust unit/integration tests (Pytest).

  • Ability to debug, optimize, and productionize AI applications.

Preferred Skills

  • Experience with cloud platforms: AWS, GCP, Azure.

  • Basic understanding of frontend technologies (HTML/CSS/JS) for collaboration.

  • Familiarity with FastMCP or other model-context-protocol integrations.

  • Experience with model monitoring, observability, and performance dashboards.

  • Awareness of current trends in generative AI, agentic systems, and multimodal architectures.

Who Will Succeed in This Role?

Someone who:

  • Can think end-to-end — from data ingestion to retrieval to orchestration to deployment.

  • Enjoys solving complex AI problems with clean, scalable backend design.

  • Is hands-on with modern AI tooling, not just theoretical knowledge.

  • Thrives in a fast-paced environment where innovation and ownership matter.

 

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