Google: gemma-3n-e4b-it:free

gemma-3n-e4b-it:free
32.8K contextoEstructurado
Lanzado May 20, 2025Corte de conocimiento 2024Actualizado May 20, 2025

Gemma 3n E4B-it is optimized for efficient execution on mobile and low-resource devices, such as phones, laptops, and tablets. It supports multimodal inputs—including text, visual data, and audio—enabling diverse tasks such as text generation, speech recognition, translation, and image analysis. Leveraging innovations like Per-Layer Embedding (PLE) caching and the MatFormer architecture, Gemma 3n dynamically manages memory usage and computational load by selectively activating model parameters, significantly reducing runtime resource requirements. This model supports a wide linguistic range (trained in over 140 languages) and features a flexible 32K token context window. Gemma 3n can selectively load parameters, optimizing memory and computational efficiency based on the task or device capabilities, making it well-suited for privacy-focused, offline-capable applications and on-device AI solutions. Read more in the blog post

Tokenizador Othergoogle/gemma-3n-E4B-it

Precios

Precio de entrada
$0.00/ 1 M tokens
Precio de salida
$0.00/ 1 M tokens
Ventana de contexto 32.8K tokensEndpoints compatibles openaiProveedor Google

Rendimiento

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Uso y clasificación

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Parámetros compatibles

Todos los proveedores = compatible en todos los upstreams que sirven este modelo. Algunos proveedores = depende del upstream que atienda la solicitud. Predeterminado = el valor enviado cuando no lo configuras.

ParámetroProveedoresPredeterminado
frequency_penaltyTodos los proveedores-
logit_biasTodos los proveedores-
max_tokensTodos los proveedores-
min_pTodos los proveedores-
presence_penaltyTodos los proveedores-
repetition_penaltyTodos los proveedores-
response_formatTodos los proveedores-
stopTodos los proveedores-
structured_outputsTodos los proveedores-
temperatureTodos los proveedores-
top_kTodos los proveedores-
top_pTodos los proveedores-

Preguntas frecuentes

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