IA / ML

GPU Compute (Decentralized)

Blockchain-coordinated networks that aggregate GPU resources for AI training and inference. Projects like Render Network and io.net on Solana allow GPU owners to rent out compute to AI researchers and developers. This democratizes access to expensive GPU hardware needed for AI workloads. Token incentives align supply (GPU providers) with demand (AI developers).

IDgpu-compute

Lectura rápida

Empieza por la explicación más corta y útil antes de profundizar.

Blockchain-coordinated networks that aggregate GPU resources for AI training and inference. Projects like Render Network and io.net on Solana allow GPU owners to rent out compute to AI researchers and developers. This democratizes access to expensive GPU hardware needed for AI workloads. Token incentives align supply (GPU providers) with demand (AI developers).

Modelo mental

Usa primero la analogía corta para razonar mejor sobre el término cuando aparezca en código, docs o prompts.

Piensa en esto como una pieza de la pila de contexto o inferencia usada en productos con agentes o LLMs.

Contexto técnico

Ubica el término dentro de la capa de Solana en la que vive para razonar mejor sobre él.

LLMs, RAG, embeddings, inferencia y primitivas orientadas a agentes.

Por qué le importa a un builder

Convierte el término de vocabulario en algo operacional para producto e ingeniería.

Este término desbloquea conceptos adyacentes rápido, así que funciona mejor cuando lo tratas como un punto de conexión y no como una definición aislada.

Handoff para IA

Handoff para IA

Usa este bloque compacto cuando quieras dar contexto sólido a un agente o asistente sin volcar toda la página.

GPU Compute (Decentralized) (gpu-compute)
Categoría: IA / ML
Definición: Blockchain-coordinated networks that aggregate GPU resources for AI training and inference. Projects like Render Network and io.net on Solana allow GPU owners to rent out compute to AI researchers and developers. This democratizes access to expensive GPU hardware needed for AI workloads. Token incentives align supply (GPU providers) with demand (AI developers).
Relacionados: DePIN (Redes de Infraestructura Física Descentralizada), Training (ML), Inference
Glossary Copilot

Haz preguntas de Solana con contexto aterrizado sin salir del glosario.

Usa contexto del glosario, relaciones entre términos, modelos mentales y builder paths para recibir respuestas estructuradas en vez de output genérico.

Abrir workspace completa del Copilot
Explicar este código

Opcional: pega código Anchor, Solana o Rust para que el Copilot mapee primitivas de vuelta al glosario.

Haz una pregunta aterrizada en el glosario

Haz una pregunta aterrizada en el glosario

El Copilot responderá usando el término actual, conceptos relacionados, modelos mentales y el grafo alrededor del glosario.

Grafo conceptual

Ve el término como parte de una red, no como una definición aislada.

Estas ramas muestran qué conceptos toca este término directamente y qué existe una capa más allá de ellos.

Rama

DePIN (Redes de Infraestructura Física Descentralizada)

Blockchain protocols that coordinate and incentivize physical infrastructure through token rewards. DePIN projects on Solana include: Helium (wireless networks), Render (GPU rendering), Hivemapper (mapping), and io.net (distributed GPU compute for AI). Contributors provide physical resources (hardware, bandwidth) and earn tokens. DePIN bridges blockchain economics with real-world infrastructure.

Rama

Training (ML)

The process of optimizing a model's parameters by exposing it to data and adjusting weights to minimize a loss function. Pre-training on large datasets creates foundation models. Training LLMs requires massive compute (thousands of GPUs, weeks/months). Training data quality, diversity, and size directly impact model capabilities. Distinguished from fine-tuning (smaller scale, specific domain).

Rama

Inference

The process of running a trained model on new inputs to generate predictions or outputs. Inference is the 'using' phase (vs. training). Inference cost depends on model size, input/output token count, and hardware (GPUs/TPUs). API providers (Anthropic, OpenAI) charge per token for inference. On-device inference (llama.cpp, GGUF) runs locally without API calls.

Siguientes conceptos para explorar

Mantén la cadena de aprendizaje en movimiento en lugar de parar en una sola definición.

Estos son los siguientes conceptos que vale la pena abrir si quieres que este término tenga más sentido dentro de un workflow real de Solana.

IA / ML

DePIN (Redes de Infraestructura Física Descentralizada)

Blockchain protocols that coordinate and incentivize physical infrastructure through token rewards. DePIN projects on Solana include: Helium (wireless networks), Render (GPU rendering), Hivemapper (mapping), and io.net (distributed GPU compute for AI). Contributors provide physical resources (hardware, bandwidth) and earn tokens. DePIN bridges blockchain economics with real-world infrastructure.

IA / ML

Training (ML)

The process of optimizing a model's parameters by exposing it to data and adjusting weights to minimize a loss function. Pre-training on large datasets creates foundation models. Training LLMs requires massive compute (thousands of GPUs, weeks/months). Training data quality, diversity, and size directly impact model capabilities. Distinguished from fine-tuning (smaller scale, specific domain).

IA / ML

Inference

The process of running a trained model on new inputs to generate predictions or outputs. Inference is the 'using' phase (vs. training). Inference cost depends on model size, input/output token count, and hardware (GPUs/TPUs). API providers (Anthropic, OpenAI) charge per token for inference. On-device inference (llama.cpp, GGUF) runs locally without API calls.

IA / ML

Grass

A DePIN protocol on Solana where users share unused internet bandwidth through a browser extension, contributing to a decentralized data pipeline for AI training datasets. Participants earn GRASS tokens for bandwidth contributions, which are used to scrape and structure publicly available web data. Grass addresses the growing demand for high-quality training data by creating an incentivized, distributed web crawling network.

Comúnmente confundido con

Términos cercanos en vocabulario, acrónimo o vecindad conceptual.

Estas entradas son fáciles de mezclar cuando lees rápido, haces prompting a un LLM o estás entrando en una nueva capa de Solana.

IA / MLdecentralized-inference

Decentralized Inference

Running AI model inference across distributed networks of GPU providers rather than centralized cloud infrastructure, using blockchain for coordination, payment, and verification. Key verification approaches include ZKML (zero-knowledge proofs of correct inference) and trusted execution environments (TEEs). Projects include Bittensor, Render Network, and io.net on Solana.

AliasProof of InferenceAliasZKML
Términos relacionados

Sigue los conceptos que realmente le dan contexto a este término.

Las entradas del glosario se vuelven útiles cuando están conectadas. Estos enlaces son el camino más corto hacia ideas adyacentes.

IA / MLdepin

DePIN (Redes de Infraestructura Física Descentralizada)

Blockchain protocols that coordinate and incentivize physical infrastructure through token rewards. DePIN projects on Solana include: Helium (wireless networks), Render (GPU rendering), Hivemapper (mapping), and io.net (distributed GPU compute for AI). Contributors provide physical resources (hardware, bandwidth) and earn tokens. DePIN bridges blockchain economics with real-world infrastructure.

IA / MLtraining

Training (ML)

The process of optimizing a model's parameters by exposing it to data and adjusting weights to minimize a loss function. Pre-training on large datasets creates foundation models. Training LLMs requires massive compute (thousands of GPUs, weeks/months). Training data quality, diversity, and size directly impact model capabilities. Distinguished from fine-tuning (smaller scale, specific domain).

IA / MLinference

Inference

The process of running a trained model on new inputs to generate predictions or outputs. Inference is the 'using' phase (vs. training). Inference cost depends on model size, input/output token count, and hardware (GPUs/TPUs). API providers (Anthropic, OpenAI) charge per token for inference. On-device inference (llama.cpp, GGUF) runs locally without API calls.

Más en la categoría

Quédate en la misma capa y sigue construyendo contexto.

Estas entradas viven junto al término actual y ayudan a que la página se sienta parte de un grafo de conocimiento más amplio en lugar de un callejón sin salida.

IA / ML

LLM (Modelo de Lenguaje Grande)

A neural network trained on vast text corpora to understand and generate human language. LLMs (GPT-4, Claude, Llama, Gemini) use transformer architectures with billions of parameters. They power chatbots, code generation, summarization, and reasoning tasks. In blockchain development, LLMs assist with smart contract writing, audit review, documentation, and code explanation.

IA / ML

Transformer

The neural network architecture underlying modern LLMs, introduced in 'Attention Is All You Need' (2017). Transformers use self-attention mechanisms to process input sequences in parallel (unlike recurrent networks). Key components: multi-head attention, positional encoding, feedforward layers, and layer normalization. Variants include encoder-only (BERT), decoder-only (GPT), and encoder-decoder (T5).

IA / ML

Attention Mechanism

A neural network component that allows models to weigh the relevance of different parts of the input when producing output. Self-attention computes query-key-value dot products across all positions, enabling each token to 'attend' to every other token. Multi-head attention runs multiple attention functions in parallel. Attention is O(n²) in sequence length, driving context window research.

IA / ML

Foundation Model

A large AI model trained on broad data that can be adapted for many downstream tasks. Foundation models (GPT-4, Claude, Llama 3, Gemini) are pre-trained on internet-scale text/code and can be fine-tuned, prompted, or used via APIs for specific applications. The term emphasizes that one base model serves as the foundation for diverse use cases rather than training task-specific models.