Skip to content
View eensaydn's full-sized avatar
🎯
Focusing
🎯
Focusing

Block or report eensaydn

Block user

Prevent this user from interacting with your repositories and sending you notifications. Learn more about blocking users.

You must be logged in to block users.

Maximum 250 characters. Please don’t include any personal information such as legal names or email addresses. Markdown is supported. This note will only be visible to you.
Report abuse

Contact GitHub support about this user’s behavior. Learn more about reporting abuse.

Report abuse
eensaydn/README.md

Enes Aydın

AI/ML Engineer

LinkedIn HuggingFace Email


AI/ML Engineer with experience across LLM evaluation, AI data operations, and applied generative AI. I evaluate and improve large language models as a contractor at Anthropic, and lead AI data quality operations at Turing for clients including Apple and OpenAI delivering SFT, RLHF, function calling, and agentic datasets at scale.

My main focus areas are prompt engineering, AI data labeling and quality (SFT/RLHF), and multi-agent systems. I also deliver corporate AI training programs and freelance on AI/ML projects.

Pursuing a thesis-based M.S. in Artificial Intelligence & Data Engineering at Ankara University.

Currently

  • Evaluating LLM code generation and reasoning at Anthropic (benchmark-driven assessment, human preference data)
  • Leading a distributed team at Turing on AI training data for Apple (RLHF, SFT, function calling, agentic data)
  • Building multi-agent pipelines with OpenAI Agents SDK, CrewAI, and smolagents
  • Expanding cloud skills into GCP (Cloud Run) alongside existing AWS infrastructure

Tech Stack

Python PyTorch TensorFlow LangChain HuggingFace OpenAI FAISS AWS GCP Docker Streamlit Groq

Featured Projects

CreativeOps Agent — Multi-agent system for AI creative content pipelines. Orchestrates agents for script, image, and video generation using OpenAI Agents SDK, Langfuse, Modal, and GCP Cloud Run.

RAG Hybrid Search — RAG implementation combining dense and sparse retrieval for improved document Q&A.

YouTube-to-Blog CrewAI — Multi-agent pipeline that converts YouTube videos into blog posts using CrewAI.

PDF Translator Agent — Translates English academic PDFs into Turkish while preserving structure and terminology.

AWS Bedrock RAG — Document Q&A system using AWS Bedrock with Claude, LLaMA, Mistral, and FAISS vector search.

YouTube Summarizer Pro — Multilingual video summarization with sentiment analysis and performance dashboards.

GitHub Stats

Certifications

  • AI Fluency: Framework and Foundations — Anthropic
  • AI Agents Fundamentals — HuggingFace
  • Complete Generative AI with LangChain and HuggingFace (+50h) — Udemy
  • Introduction to Generative AI, Cloud 101 — AWS
  • SAP Certified Specialist — S/4HANA Cloud Private Edition

Get in Touch

Open to freelance AI/ML engineering, prompt engineering consulting, and collaborations on multi-agent systems or RAG architectures.

eensaydn@icloud.com · LinkedIn · HuggingFace

Pinned Loading

  1. BlogGeneration-AI-AWS BlogGeneration-AI-AWS Public

    Python 1