Abstract: A machine learning-based predictive model design space exploration (DSE) method for high-level synthesis (HLS) is presented. The method creates a predictive model for a training set until a given error threshold is reached and then continues with the exploration using the predictive model avoiding time-consuming synthesis and simulations of new configurations. Results show that the authors ’ method is on average 1.92 times faster than a genetic-algorithm DSE method generating comparable results, whereas it achieves better results when constraining the DSE runtime. When compared with a previously developed simulated annealer (SA)-based method, the proposed method is on average 2.09 faster, although again achieving comparable result...
International audienceDesigning Machine Learning algorithms implies to answer three main questions: ...
High-level synthesis (HLS) tools greatly reduce the effort required in Register Transfer Level (RTL)...
Machine learning algorithms continue to receive significant attention from industry and research. As...
High Level Synthesis (HLS) is a process which, starting from a high-level description of an applicat...
Many high-level synthesis tools offer degrees of freedom in map-ping high-level specifications to Re...
A method that exploits machine learning to aid modification-based computational design synthesis is ...
Thesis: Ph. D. in Building Technology, Massachusetts Institute of Technology, Department of Architec...
Design Space Exploration is an important concept in engineering design in which the design space is ...
Application of AI technologies in synthesis prediction has developed very rapidly in recent years. W...
Design Space Exploration is an important concept in engineering design in which the design space is ...
26th International Conference on Field-Programmable Logic and Applications, FPL 2016, Switzerland, 2...
The design space exploration (DSE) phase is used to tune configurable system parameters and it gener...
Synthetic organic chemists face a dearth of challenges in the efficient construction of functional m...
One of the biggest advantages of C-based very large scale integration design over traditional regist...
The work in this thesis studies some of the potential applications of machine learning in the field ...
International audienceDesigning Machine Learning algorithms implies to answer three main questions: ...
High-level synthesis (HLS) tools greatly reduce the effort required in Register Transfer Level (RTL)...
Machine learning algorithms continue to receive significant attention from industry and research. As...
High Level Synthesis (HLS) is a process which, starting from a high-level description of an applicat...
Many high-level synthesis tools offer degrees of freedom in map-ping high-level specifications to Re...
A method that exploits machine learning to aid modification-based computational design synthesis is ...
Thesis: Ph. D. in Building Technology, Massachusetts Institute of Technology, Department of Architec...
Design Space Exploration is an important concept in engineering design in which the design space is ...
Application of AI technologies in synthesis prediction has developed very rapidly in recent years. W...
Design Space Exploration is an important concept in engineering design in which the design space is ...
26th International Conference on Field-Programmable Logic and Applications, FPL 2016, Switzerland, 2...
The design space exploration (DSE) phase is used to tune configurable system parameters and it gener...
Synthetic organic chemists face a dearth of challenges in the efficient construction of functional m...
One of the biggest advantages of C-based very large scale integration design over traditional regist...
The work in this thesis studies some of the potential applications of machine learning in the field ...
International audienceDesigning Machine Learning algorithms implies to answer three main questions: ...
High-level synthesis (HLS) tools greatly reduce the effort required in Register Transfer Level (RTL)...
Machine learning algorithms continue to receive significant attention from industry and research. As...