Job Description
Role: Prompt Engineer Intern (Full-time Internship, Remote)
This is a remote full-time paid internship for an Prompt Engineer. You will help us push the boundaries of what LLMs can do by designing, testing, and optimizing prompts, building multi-step prompt pipelines, writing scaffolding code around LLM calls, benchmarking outputs, and integrating AI features into real-world products using Python and NLP techniques.
Responsibilities
- Prompt Crafting: Design, edit, and refine prompts for different use cases and models.
- Prompt Chaining: Break down complex tasks into smaller subtasks and build effective multi-step prompt workflows (e.g., summarization → critique → rewrite).
- Benchmarking & Evaluation: Use Python (scripts and notebooks) to run automated performance benchmarks based on KPIs like accuracy, cost, and latency.
- Feature Building: Write Python scaffolding to integrate LLM calls into usable product features and pipelines.
- Hybrid NLP: Use traditional NLP techniques (e.g., regex, spaCy, NLTK) alongside LLMs to improve output quality, preprocessing, or efficiency.
- Iterative Improvement: Run A/B tests, gather output samples, and tweak prompts or logic based on failure cases and edge conditions.
- KPI Optimization: Ensure prompt chains and model outputs meet goals like quality, relevance, length, and compute cost.
- Model Awareness: Stay updated with the latest in GPT, Claude, Gemini, and open-source LLMs.
- Tooling & Automation: Build or use lightweight tooling for prompt testing, logging, and result comparison.
- Documentation: Maintain a structured prompt and workflow logbook with evaluations, learnings, and architecture.
Salary : Rs.30,000/month
Duration : 6 months
Must-Have Qualifications
- Experience using OpenAI or other LLM APIs.
- Ability to build small-scale tools or workflows that integrate and manage prompt-based logic.
- Understanding of prompt chaining or multi-step reasoning with LLMs.
- Awareness of basic NLP techniques and when to combine them with LLM outputs.
- Comfort with debugging and improving outputs using test inputs and edge cases.
- Strong communication and analytical skills.
- Familiarity with basic evaluation techniques (BLEU, ROUGE, token count, etc.).
Nice-to-Have
- LangChain or similar framework experience.
- Experience working with vector DBs, RAG pipelines.
- Experience with Jupyter notebooks.
- Knowledge of managing context windows, formatting outputs, or chaining across models.
Ideal For
- Final-year students who have semester break for internship or recent grads ambitious about AI/LLMs and looking to develop real-world AI engineering, prompt design, and hybrid NLP-LLM skills. You’ll work closely with founders to build robust, high-performing AI workflows and features for production-grade products. PPO offer post successful internship.
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