4siDriven by several real-life case studies and in-lab developments, synthetic memory reference generation has a long tradition in computer science research. The goal is that of reproducing the running of an arbitrary program, whose generated traces can later be used for simulations and experiments. In this paper we investigate this research context and provide principles and algorithms of a Markov-Model-based framework for supporting real-time generation of synthetic memory references effectively and efficiently. Specifically, our approach is based on a novel Machine Learning algorithm we called Hierarchical Hidden/ non Hidden Markov Model (HHnHMM). Experimental results conclude this paper.partially_openopenCuzzocrea, Alfredo; ...
Abstract. We present a novel approach to learning predictive sequential models, called similarity-ba...
The hierarchical hidden Markov model (HHMM) is an extension of the hidden Markov model to include a ...
Many real-time applications consist of a cyclic execution of computation activities (jobs) with stoc...
Driven by several real-life case studies and in-lab developments, synthetic memory reference generat...
\u3cp\u3eIn this paper we introduce a technique for the synthetic generation of memory references wh...
Trace-driven simulation is a popular technique useful in many applications, as for example analysis ...
This paper proposes and experimentally assesses a machine learning approach for supporting the effec...
3siThis paper proposes and experimentally assesses a machine learning approach for supporting the e...
Abstract. Structured Hidden Markov Model (S-HMM) is a variant of Hierarchical Hidden Markov Model th...
We consider problems of sequence processing and propose a solution based on a discrete state model i...
Abstract In modern computer systems, the intermittent behaviour of infrequent, additional loads affe...
AbstractIn modern computer systems, the intermittent behaviour of infrequent, additional loads affec...
This thesis presents novel methods for creating and improving hierarchical hidden Markov models. Th...
Directly modeling the inherent hierarchy and shared structures of human behaviors, we present an app...
Abstract. We present a novel approach to learning predictive sequential models, called similarity-ba...
The hierarchical hidden Markov model (HHMM) is an extension of the hidden Markov model to include a ...
Many real-time applications consist of a cyclic execution of computation activities (jobs) with stoc...
Driven by several real-life case studies and in-lab developments, synthetic memory reference generat...
\u3cp\u3eIn this paper we introduce a technique for the synthetic generation of memory references wh...
Trace-driven simulation is a popular technique useful in many applications, as for example analysis ...
This paper proposes and experimentally assesses a machine learning approach for supporting the effec...
3siThis paper proposes and experimentally assesses a machine learning approach for supporting the e...
Abstract. Structured Hidden Markov Model (S-HMM) is a variant of Hierarchical Hidden Markov Model th...
We consider problems of sequence processing and propose a solution based on a discrete state model i...
Abstract In modern computer systems, the intermittent behaviour of infrequent, additional loads affe...
AbstractIn modern computer systems, the intermittent behaviour of infrequent, additional loads affec...
This thesis presents novel methods for creating and improving hierarchical hidden Markov models. Th...
Directly modeling the inherent hierarchy and shared structures of human behaviors, we present an app...
Abstract. We present a novel approach to learning predictive sequential models, called similarity-ba...
The hierarchical hidden Markov model (HHMM) is an extension of the hidden Markov model to include a ...
Many real-time applications consist of a cyclic execution of computation activities (jobs) with stoc...