paper
referenced-only
1988
paper:s-matching-language-and-hardware-for-paral-1988Matching language and hardware for parallel computation in the Linda machine
ByS. Ahuja·N. Carriero·D. Gelernter
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Similar preprints — Semantic Scholar
Cited by (1)
- Linda in context
Linda's tuple-space model of parallel programming — embodying just 4 primitive operations (eval, out, in, rd) — demonstrably solves canonical concurrency problems more simply and flexibly than Parlog8