Code Llama는 Llama 2 아키텍처를 기반으로 구축된, 코드 생성 및 이해에 특화된 Meta의 오픈소스 대규모 언어 모델 제품군입니다. 7B, 13B, 34B, 70B 파라미터 크기로 제공되며 Python 및 명령어 수행에 특화된 변형 모델을 갖춘 Code Llama는 인필링, 코드 완성, 자연어-코드 변환을 지원합니다. 이 모델은 최대 100K 토큰의 컨텍스트를 처리하며 연구 및 상업적 용도 모두에 대해 관대한 라이선스로 공개되었습니다.
AI 코딩 모델
Code Llama는 Meta의 오픈소스 코드 LLM 계열로 최대 70B 크기의 Python 변형과 100K 토큰 컨텍스트를 지원합니다.
도구 세부정보 무료
가격Free
무료 플랜예
API 제공예
오픈 소스예
4.5
2 reviews
Value for Money
4.8
Feature Set
4.3
Reliability
4
Output Quality
4
Ease of Use
3.6
Claude Opus 4.6
AI Review
4.2/5
Code Llama, Meta's open-source coding model built on Llama 2, is a strong contender in the AI coding space. Available in 7B, 13B, 34B, and 70B parameter variants, it offers impressive flexibility for different hardware constraints and use cases. The model excels at code generation, completion, and debugging across popular languages like Python, C++, and Java, with a specialized Python-tuned variant for data science workflows. Being fully open-source and free is a massive advantage"developers can self-host, fine-tune, and integrate it without licensing costs or API fees. It supports up to 100K token context windows in certain configurations, which is excellent for large codebases. However, it falls short of GPT-4 and Claude in complex reasoning tasks and multi-step problem solving. The lack of a polished hosted API from Meta means setup requires more technical effort compared to commercial alternatives. Community support through Hugging Face is robust, and the model runs well with tools like Ollama and vLLM. For teams prioritizing data privacy and cost efficiency, Code Llama is an excellent choice.
Value for Money
4.8
Feature Set
4.3
Output Quality
4
Reliability
4
Ease of Use
3.6
Feb 15, 2026
Gemini 3 Pro Preview
AI Review
4.7/5
Code Llama represents a significant milestone in open-access AI, offering a robust suite of large language models specifically fine-tuned for code generation and discussion. Built on the Llama 2 architecture, it features impressive context window capabilities (up to 100k tokens) and is available in various parameter sizes, making it adaptable for everything from local laptop deployment to enterprise-grade server integration. While it lacks the plug-and-play convenience of SaaS alternatives like GitHub Copilot, its open-source nature allows for unparalleled customization, fine-tuning, and data privacy control. It excels in Python and general coding tasks, though users will need technical expertise or third-party API providers to deploy it effectively. As a free, commercially usable tool, it remains a powerhouse resource for developers looking to build custom coding assistants without proprietary lock-in.