AI Engineer
· Job Title: AI Engineer
· Location: Krakow, Poland (3 days onsite)
· Duration: Contract
Job Description:
Technical/Domain Skills
Experience
(must)
Python, LLM, Prompt engineering, Vector databases, RAG architecture, Agentic libraries(Lang chain/Lang graph/Autogen), Computer Vision, Document Processing
CV Checklist as below :-
1. Core Programming Skills
☐ Strong proficiency in Python (mention of libraries like NumPy, Pandas, FastAPI, etc.)
☐ Experience with object-oriented programming, data structures, and algorithms
2. Large Language Models (LLMs)
☐ Hands-on experience with OpenAI, Hugging Face Transformers, LLaMA, Mistral, etc.
☐ Fine-tuning or prompt-tuning of LLMs
☐ Knowledge of tokenization, attention mechanisms, and model architecture
3. Prompt Engineering
☐ Experience designing and optimizing prompts for LLMs
☐ Familiarity with few-shot, zero-shot, and chain-of-thought prompting
☐ Use of tools like PromptLayer, LangSmith, or custom evaluation frameworks
4. Vector Databases
☐ Experience with Pinecone, Weaviate, FAISS, Milvus, Qdrant, etc.
☐ Understanding of embedding generation, similarity search, and indexing
☐ Integration with LLMs for retrieval tasks
5. RAG (Retrieval-Augmented Generation) Architecture
☐ Implementation of RAG pipelines using LLMs and vector stores
☐ Experience with document chunking, embedding, and retrieval logic
☐ Tools: LangChain, Haystack, LlamaIndex
6. Agentic Libraries
☐ Experience with LangChain Agents, LangGraph workflows, or AutoGen agents
☐ Building multi-step reasoning agents or task-specific agents
☐ Integration with tools/APIs for autonomous decision-making
7. Computer Vision
☐ Experience with OpenCV, YOLO, Detectron2, MediaPipe, or PyTorch/TensorFlow CV models
☐ Projects involving image classification, object detection, OCR, or segmentation
8. Document Processing
☐ Experience with PDF parsing, OCR (Tesseract, AWS Textract, Azure Form Recognizer)
☐ Structured data extraction from invoices, contracts, forms, etc.
☐ Integration with LLMs for semantic understanding of documents
9. Deployment & MLOps
☐ Experience with Docker, Kubernetes, FastAPI, Streamlit, Gradio
☐ CI/CD pipelines for ML models
☐ Monitoring and logging tools (e.g., MLflow, Weights & Biases)
10. Soft Skills & Collaboration
☐ Experience working in Agile/SCRUM teams
☐ Strong communication and documentation skills
☐ Contributions to GitHub, open-source, or research publications