정보에 대해서Wan2.1-T2V-14B (Turbo)
Wan2.1-T2V-14B-T는 Wan2.1-T2V-14B 모델의 TeaCache 가속 버전으로, 비디오 생성 시간을 30% 단축합니다. Wan2.1-T2V-14B 모델은 오픈 소스와 클로즈드 소스 모델 모두에서 최첨단 성능 벤치마크를 확립하여, 뛰어난 품질의 시각 콘텐츠를 생성할 수 있는 동적 효과를 제공할 수 있습니다. 이 모델은 유일하게 중국어와 영어로 동시에 텍스트를 생성할 수 있는 비디오 모델이며, 480P와 720P 해상도로 비디오 생성이 가능합니다. 모델은 확산 변환기 아키텍처를 채택하였으며, 혁신적인 시공간 변이 오토인코더(VAE), 확장 가능한 훈련 전략 및 대규모 데이터 구축을 통해 생성 능력을 향상시킵니다.
Explore how DeepSeek-V3's advanced reasoning and coding capabilities translate into real-world applications.
Automated Code Generation & Debugging
Generate, optimize, and debug complex code snippets across various programming languages. The model's strong reasoning helps identify logical errors and suggest efficient solutions.
Use Case Example:
"A software engineer used DeepSeek-V3 to refactor a legacy Python module, resulting in a 40% reduction in code complexity and a 25% improvement in execution speed."
Scientific & Mathematical Research
Assist researchers by solving complex mathematical problems, formulating hypotheses, and analyzing data. Its ability to reason through abstract concepts makes it a powerful tool for scientific discovery.
Use Case Example:
"A physicist modeled a complex quantum mechanics problem, and the model provided a step-by-step derivation that led to a novel insight, which was later verified experimentally."
Intelligent Agent & Tool Integration
Build sophisticated AI agents that can understand user requests, select the appropriate tools (e.g., APIs, databases), and execute multi-step tasks autonomously.
Use Case Example:
"An automated travel assistant powered by DeepSeek-V3 booked a complete itinerary by interacting with flight, hotel, and car rental APIs based on a single natural language request from the user."
Advanced Conversational AI
Create highly engaging and context-aware chatbots, virtual assistants, or role-playing characters for gaming and entertainment. The model excels at maintaining coherent and natural-sounding dialogue.
Use Case Example:
"A gaming company implemented an NPC (Non-Player Character) using the model, which provided dynamic, unscripted interactions that significantly enhanced player immersion."
메타데이터
사양
주
Deprecated
건축
교정된
아니요
전문가의 혼합
아니요
총 매개변수
14B
활성화된 매개변수
추론
아니요
Precision
FP8
콘텍스트 길이
0K
Max Tokens
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