⯠GenAI & Applied AI Systems
⢠LLMs: GPT, Mistral, LLaMA, Falcon, Kimi, Qwen-VL
⢠RAG: LangChain, LangGraph, FAISS, Chroma, Weaviate, Pinecone
⢠Vector DBs: Qdrant, Milvus, ChromaDB
⢠Agents: ReAct, AutoGPTQ, OpenAgents
⢠Fine-Tuning: LoRA, QLoRA, PEFT, bitsandbytes
⢠Formats: GGUF, llama.cpp
ā AI Modeling & Training
⢠Frameworks: PyTorch, Transformers, scikit-learn, XGBoost
⢠Workflows: Training pipelines, quantization, distillation, eval metrics
⢠Vision: OpenCV, YOLOv8, CLIP, BLIP, ViT, Stable Diffusion, SDXL
⦠NLP & Data Intelligence
⢠Embeddings: SentenceTransformers, Cohere, OpenAI, HF models
⢠Processing: spaCy, NLTK, Regex, custom pipelines
⢠Graph Reasoning: GraphRAG, LangGraph memory
⤠Backend Engineering
⢠Languages: Python (Advanced)
⢠APIs: FastAPI, Flask, WebSocket
⢠Auth & Security: JWT, OAuth2, RBAC, Multi-Tenant
⢠DBs: PostgreSQL, MySQL, SQLite, MongoDB
⢠Observability: Logging, Prometheus, Grafana
ā§ MLOps & Deployment
⢠Hosting: Hugging Face, Ollama, Replicate, Triton, ggml
⢠CI/CD: GitHub Actions, Railway, Docker Compose, Make
⢠Cloud: AWS, GCP
⢠Monitoring: LangSmith, inference logs, custom APIs
š Full-Stack & UI Dev
⢠Frontend: Gradio, Streamlit, HTML5, CSS3, JS, TailwindCSS
⢠UX: Prompt UIs, streaming interfaces, agents-as-apps
⢠Interfaces: Jinja2, Markdown rendering
Data & Analytics
⢠Tools: NumPy, Pandas, Seaborn, UMAP, Matplotlib
⢠Visualization: Embedding plots, attention maps, token analysis
⢠Workspaces: Jupyter, Google Colab
ā End-to-End AI system design: from dataset to API & UI
ā Multimodal & RAG-based systems in production
ā Strong blend of backend engineering, ML, and DevOps
ā Obsessed with tooling, benchmarks, and real-world reliability
Click to expand full list
- IBM AI & Machine Learning Professional Certificate
- IBM Generative AI Foundations
- Mathematics for Machine Learning ā Duke University
- Deep Learning ā IBM
- Advanced Machine Learning and Signal Processing ā IBM
- Intro to Computer Vision and Image Processing ā IBM
- Python for Data Science, AI & Development ā IBM
- Databases and SQL for Data Science ā IBM
- Tools for Data Science ā IBM
- Data Visualization with Python ā IBM
- Data Analysis with Python ā IBM
- Machine Learning with Python (with Honors) ā IBM
- Deep Neural Networks with PyTorch ā IBM
- Deep Learning with TensorFlow ā IBM
- Machine Learning with Python ā IBM Developer Skills Network
Full record available on LinkedIn: linkedin.com/in/gonzalo-romero-b9b5b4355





