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세 가지 간단한 단계로 제품 평가하기
Product Evals in Three Simple Steps
Label some data, align LLM-evaluators, and run the eval harness with each change.
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NVIDIA GTC 2025 - LLM 기반 애플리케이션 구축
NVIDIA GTC 2025 - Building LLM-Powered Applications
Chip Huyen and I share what we've learned, best practices, and insights at NVIDIA GTC 2025.
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ML 시스템 구축, 확장, 실행 등의 39가지 교훈
39 Lessons on Building ML Systems, Scaling, Execution, and More
ML systems, production & scaling, execution & collaboration, building for users, conference etiquette.
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Weights & Biases LLM 평가기 해커톤 - 해커톤 심사위원
Weights & Biases LLM-Evaluator Hackathon - Hackathon Judge
Being a human judge at the Weights & Biases LLM-as-a-Judge Hackathon
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ML/AI 엔지니어 면접 및 채용하는 방법
How to Interview and Hire ML/AI Engineers
What to interview for, how to structure the phone screen, interview loop, and debrief, and a few tips.
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LLM으로 1년간 구축하며 배운 것들
What We've Learned From A Year of Building with LLMs
From the tactical nuts & bolts to the operational day-to-day to the long-term business strategy.
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머신러닝 모델을 단위 테스트에서 모킹하지 마세요
Don't Mock Machine Learning Models In Unit Tests
How unit testing machine learning code differs from typical software practices
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파인튜닝을 위한 합성 데이터 생성 및 활용 방법
How to Generate and Use Synthetic Data for Finetuning
Overcoming the bottleneck of human annotations in instruction-tuning, preference-tuning, and pretraining.
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언어 모델링 논문 목록 (논문 클럽 시작하기)
Language Modeling Reading List (to Start Your Paper Club)
Some fundamental papers and a one-sentence summary for each; start your own paper club!