Abstract Octave, R and Python identical codes are tested in terms of in terms of end-user execution speed, using a very low-end "embedded" hardware system and a standard office workstation. The codes include algorithmic primitives common in Data Analytics and Machine Learning, i.e., matrix manipulation (inversion, product), linear Algebra, linear regression, Singular Value Decomposition (SVD), fast Fourier transformation (FFT) and a baseline Bubblesort implementation for testing flow control structures. Description In Data Analytics and Machine Learning, code prototyping is an integral part of the Research & Development (R&D) process, especially in data exploration and algorithm design. The programming tools and platforms used for the...
Computer architecture and computer systems research and development is heavily driven by benchmarkin...
Invited talk at FastPath 2020 (International Workshop on Performance Analysis of Machine Learning Sy...
Invited talk at FastPath 2020 (International Workshop on Performance Analysis of Machine Learning Sy...
The two most popular Computer Programming languages for Data Science are Python, and R. Both are dyn...
International audienceAs many other modern programming languages, Pharo spreads its applications int...
In the past decade, C++ has emerged as one of the main languages for high performance computing. Fra...
Python has evolved to become the most popular language for data science. It sports state-of-the-art ...
<p>Panels A and B show the execution time as a function of problem size for 10,000 bootstrap resampl...
The recent dramatic progress in machine learning is partially attributed to the availability of high...
Lower-level languages perform computations much faster than higher- level languages, because they us...
Link to pre-print: https://arxiv.org/abs/2203.14484 How to run Extract pythonnic_performance.zip...
The economic impact that proprietary ISA has on the market increased the interest in using Open Sour...
Runtime and memory usage of matrix self-cross-products recorded for matrices with 40,000 elements an...
The recent dramatic progress in machine learning is partially attributed to the availability of high...
<p>A powerful Python analysis infrastructure to support the three most popular kinds of analyses: st...
Computer architecture and computer systems research and development is heavily driven by benchmarkin...
Invited talk at FastPath 2020 (International Workshop on Performance Analysis of Machine Learning Sy...
Invited talk at FastPath 2020 (International Workshop on Performance Analysis of Machine Learning Sy...
The two most popular Computer Programming languages for Data Science are Python, and R. Both are dyn...
International audienceAs many other modern programming languages, Pharo spreads its applications int...
In the past decade, C++ has emerged as one of the main languages for high performance computing. Fra...
Python has evolved to become the most popular language for data science. It sports state-of-the-art ...
<p>Panels A and B show the execution time as a function of problem size for 10,000 bootstrap resampl...
The recent dramatic progress in machine learning is partially attributed to the availability of high...
Lower-level languages perform computations much faster than higher- level languages, because they us...
Link to pre-print: https://arxiv.org/abs/2203.14484 How to run Extract pythonnic_performance.zip...
The economic impact that proprietary ISA has on the market increased the interest in using Open Sour...
Runtime and memory usage of matrix self-cross-products recorded for matrices with 40,000 elements an...
The recent dramatic progress in machine learning is partially attributed to the availability of high...
<p>A powerful Python analysis infrastructure to support the three most popular kinds of analyses: st...
Computer architecture and computer systems research and development is heavily driven by benchmarkin...
Invited talk at FastPath 2020 (International Workshop on Performance Analysis of Machine Learning Sy...
Invited talk at FastPath 2020 (International Workshop on Performance Analysis of Machine Learning Sy...