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YZ Sözlüğü

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kategoriler
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alt kategoriler
23.060
terimler
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terimler

Work-item

Basic execution unit in OpenCL, analogous to a thread in other parallelism models. Each work-item executes an instance of the kernel with unique identifiers to access different portions of data.

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Work-group

Collection of work-items that share specific resources and can synchronize their execution via barriers. Work-groups constitute the scheduling unit for OpenCL compute units and optimize the use of local memory.

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NDRange

N-dimensional indexing space defining the complete grid of work-items to execute for a kernel. The NDRange determines how data is partitioned into work-groups and work-items for parallel computation.

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Context

OpenCL execution environment containing devices, memory objects, and associated commands. The context ensures consistency of shared resources between devices on the same OpenCL platform.

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Command Queue

Mechanism ordering OpenCL operations (memory transfers, kernel executions) to a specific device. Commands can be executed in-order or out-of-order depending on the queue creation parameters.

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Memory Model

Hierarchical memory structure in OpenCL comprising global, local, private, and constant spaces. This model optimizes data access based on location and frequency of use by work-items.

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Local Memory

Memory shared between work-items of the same work-group, offering very fast access for cooperation. It enables implementation of efficient algorithms like reductions and irregular access patterns.

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Private Memory

Memory space exclusive to each work-item, typically implemented with registers or local stack. It stores temporary variables and ensures isolation between concurrent work-items.

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Event Objects

Fine-grained synchronization of OpenCL commands allowing to define dependencies between operations. Events facilitate parallelism optimization by creating complex execution graphs.

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Platform Model

OpenCL abstraction defining a host connected to one or more devices via a driver. The platform model standardizes the interaction between host CPU and accelerators to ensure code portability.

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Buffer Object

OpenCL memory container for storing linear data accessible by kernels. Buffers support various allocation and transfer strategies between host and device to optimize performance.

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SVM (Shared Virtual Memory)

OpenCL 2.0 extension allowing pointer sharing between host and device with a single virtual address space. SVM eliminates explicit transfers and simplifies programming for embedded architectures.

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SPIR (Standard Portable Intermediate Representation)

OpenCL binary intermediate format allowing kernel distribution without source code. SPIR ensures portability between different OpenCL implementations while preserving device-specific optimizations.

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Vector Types

Native OpenCL SIMD data types (float4, int8, etc.) optimizing vector operations on parallel architectures. Vector types natively exploit GPU SIMD units to maximize computational throughput.

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Barrier Synchronization

Synchronization primitive forcing all work-items in a work-group to reach a point before continuing. Barriers guarantee the consistency of shared data in local memory during cooperative algorithms.

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