The introduction of the new multi-user linearly-separable distributed computing framework, has recently revealed how a parallel treatment of users can yield large parallelization gains with relatively low computation and communication costs. These gains stem from a new approach that converts the computing problem into a sparse matrix factorization problem; a matrix F that describes the users' requests, is decomposed as (F = DE), where a (gamma)-sparse (E) defines the task allocation across N servers, and a (delta)-sparse (D) defines the connectivity between (N) servers and (K) users as well as the decoding process. While this approach provides near-optimal performance, its linear nature has raised data secrecy concerns.
We here adopt an information-theoretic secrecy framework, seeking guarantees that each user can learn nothing more than its own requested function. In this context, our main result provides two necessary and sufficient secrecy criteria; (i) for each user (k) who observes alpha_k server responses, the common randomness visible to that user must span a subspace of dimension exactly alpha_k-1,
and (ii) for each user, removing from (mathbf) the columns corresponding to the servers it observes must leave a matrix of rank at least (K-1). With these conditions in place, we design a general scheme -- that applies to finite and non-finite fields alike -- which is based on appending to (mathbf) a basis of (mathrm(mathbf)) and by carefully injecting shared randomness. In many cases, this entails no additional costs. The scheme, while maintaining performance, guarantees perfect information-theoretic secrecy in the case of finite fields, while in the real case, the conditions yield an explicit mutual-information bound that can be made arbitrarily small by increasing the variance of Gaussian common randomness.
Secure multi-user linearly-separable distributed computing
Submitted to ArXiV, 2 February 2026
Type:
Rapport
Date:
2026-02-02
Department:
Systèmes de Communication
Eurecom Ref:
8621
Copyright:
© EURECOM. Personal use of this material is permitted. The definitive version of this paper was published in Submitted to ArXiV, 2 February 2026 and is available at :
See also:
PERMALINK : https://www.eurecom.fr/publication/8621