AI Automation Internship (n8n, RAG & LLMs)
Job Description
- Design and build smart automation workflows using n8n, Zapier, and Make.com.
- Integrate APIs and connect third-party apps to streamline business processes.
- Use LLMs (e.g., OpenAI, Cohere) for tasks like summarization, data extraction, and decision logic.
- Build RAG pipelines with vector databases like Pinecone, ChromaDB, or Weaviate.
- Develop and test autonomous agents using LangChain, AutoGen, or similar frameworks.
- Write clean, modular code in Python or JavaScript to support custom workflow logic.
- Prototype ideas quickly and ship real features used in production environments.
- Document your workflows and collaborate with developers, consultants, and product teams.
Key Skills
- Final-year students: Only final year students in Computer Science, AI/ML, Data Science, Information Systems, or related fields., who are willing to work full time after internship.
- Curiosity & Initiative: You love experimenting with new tools/technologies and aren’t afraid to break things to learn.
- Basic to Intermediate Coding Skills: Comfortable writing Python or JavaScript/TypeScript. Able to read API docs and write modular code.
- Familiarity (or willingness to learn) Workflow Platforms: Exposure to n8n, Zapier, Make.com, or similar; if you haven’t used n8n yet, we’ll help you onboard.
- API Knowledge: Understanding of RESTful APIs, JSON, authentication mechanisms.
- Interest in AI/LLMs: You know the basics of LLMs or are eager to dive in—prompt engineering, embeddings, RAG concepts.
- Problem-Solving Mindset: You can break down complex tasks into smaller steps, map flows, and foresee edge cases.
- Communication & Documentation: You can explain your workflows, document steps, and write clean README/instructions.
- Team Player: Open to feedback, collaborate in agile/scrum-like setups, and help peers troubleshoot.