Arguably the biggest strength of the functional programming language Erlang is how straightforward it is to implement concurrent and distributed programs with it. Numerical computing, on the other hand, is not necessarily seen as one of its strengths. The recent introduction of Federated Learning, a concept according to which edge devices are leveraged for decentralized machine learning tasks, while a central server only updates and distributes a global model, provided the motivation for exploring how well Erlang was suited to such a use case. We present a framework for Federated Learning in Erlang, written in a purely functional style, and compare two versions of it: one that has been exclusively written in Erlang, and one in which Erlang...
iAbstract This thesis deals with two important topics: The use of the best possible technology in t...
The complexity in designing, coding, and testing WSN applications is considered among the most relev...
Federated learning (FL) is a decentralized machine learning (ML) method that enables model training ...
Arguably the biggest strength of the functional programming language Erlang is how straightforward i...
A modern connected car produces gigabytes to terabytes of data per day. Collecting data generated by...
Federated learning algorithms are gaining increasing interest, and their effective exploitation asks...
This paper addresses the problem of using functional programming (FP) languages for research and edu...
This paper addresses the problem of using functional programming (FP) languages for research and edu...
Abstract. In this paper, we present the experience of teaching functional programming in the Compute...
The functional programming language Erlang was developed by the Ericsson cor-poration to address the...
Along with the development of multicore architectures and cloud computing, concurrent programming an...
In the last decade, research in AI (artificial intelligence) related technologies have been evolving...
This paper presents an interactive framework for pupils to learn the basic concepts of programming b...
Federated Learning is a machine learning paradigm for decentralized training over different clients....
High-performance Technical Computing (HPTC) is a branch of HPC (High-performance Computing) that dea...
iAbstract This thesis deals with two important topics: The use of the best possible technology in t...
The complexity in designing, coding, and testing WSN applications is considered among the most relev...
Federated learning (FL) is a decentralized machine learning (ML) method that enables model training ...
Arguably the biggest strength of the functional programming language Erlang is how straightforward i...
A modern connected car produces gigabytes to terabytes of data per day. Collecting data generated by...
Federated learning algorithms are gaining increasing interest, and their effective exploitation asks...
This paper addresses the problem of using functional programming (FP) languages for research and edu...
This paper addresses the problem of using functional programming (FP) languages for research and edu...
Abstract. In this paper, we present the experience of teaching functional programming in the Compute...
The functional programming language Erlang was developed by the Ericsson cor-poration to address the...
Along with the development of multicore architectures and cloud computing, concurrent programming an...
In the last decade, research in AI (artificial intelligence) related technologies have been evolving...
This paper presents an interactive framework for pupils to learn the basic concepts of programming b...
Federated Learning is a machine learning paradigm for decentralized training over different clients....
High-performance Technical Computing (HPTC) is a branch of HPC (High-performance Computing) that dea...
iAbstract This thesis deals with two important topics: The use of the best possible technology in t...
The complexity in designing, coding, and testing WSN applications is considered among the most relev...
Federated learning (FL) is a decentralized machine learning (ML) method that enables model training ...