Invited talk at FastPath 2020 (International Workshop on Performance Analysis of Machine Learning Systems) co-located with ISPASS 2020. Article: arxiv.org/pdf/2011.01149.pdf ( code and data ) Reproducibility initiative: systems and ML conferences ( reproduced papers and results ) Workshop program: fastpath2020.github.io/Program Author: Grigori Fursin Abstract: 10 years ago we released our ML-based MILEPOST compiler with all related code and experimental data at cTuning.org. Unfortunately, this research quickly stalled after we struggled to reproduce performance results and predictive models shared by volunteers across rapidly changing systems. In this talk, I will describe my 10-year effort to solve numerous reproducibility issue...
Validating experimental results from articles has finally become a norm at many HPC and systems conf...
International audienceOne of the challenges in machine learning research is to ensure that presented...
This is software documentation for the Collective Knowledge framework v1.15.0. Related resources: ...
Invited talk at FastPath 2020 (International Workshop on Performance Analysis of Machine Learning Sy...
Developing novel applications based on deep tech (ML, AI, HPC, quantum, IoT) and deploying them in p...
The 1st presentation to help prepare a new MLCommons workgroup to make it easier to run, customize a...
14 March 2017, CNRS webinar, Grenoble, France (original slides were shared here). A decade ago my r...
With the increased interest in computational sciences, machine learning (ML), pattern recognition (P...
The original presentation was shared via SlideShare. Validating experimental results from articles ...
Since AlexNet won the ImageNet Large Scale Visual Recognition Challenge (ILSVRC) in 2012, Deep Learn...
The keynote presentation from the 1st ACM conference on reproducibility and replicability (ACM REP'2...
One of the challenges in machine learning research is to ensure that presented and published result...
With the increased interest in computational sciences, machine learning (ML), pattern recognition (P...
Machine learning (ML) techniques are enjoying rapidly increasing adoption. However, designing and im...
Machine learning (ML) research often operates within silos, separate from the people who created the...
Validating experimental results from articles has finally become a norm at many HPC and systems conf...
International audienceOne of the challenges in machine learning research is to ensure that presented...
This is software documentation for the Collective Knowledge framework v1.15.0. Related resources: ...
Invited talk at FastPath 2020 (International Workshop on Performance Analysis of Machine Learning Sy...
Developing novel applications based on deep tech (ML, AI, HPC, quantum, IoT) and deploying them in p...
The 1st presentation to help prepare a new MLCommons workgroup to make it easier to run, customize a...
14 March 2017, CNRS webinar, Grenoble, France (original slides were shared here). A decade ago my r...
With the increased interest in computational sciences, machine learning (ML), pattern recognition (P...
The original presentation was shared via SlideShare. Validating experimental results from articles ...
Since AlexNet won the ImageNet Large Scale Visual Recognition Challenge (ILSVRC) in 2012, Deep Learn...
The keynote presentation from the 1st ACM conference on reproducibility and replicability (ACM REP'2...
One of the challenges in machine learning research is to ensure that presented and published result...
With the increased interest in computational sciences, machine learning (ML), pattern recognition (P...
Machine learning (ML) techniques are enjoying rapidly increasing adoption. However, designing and im...
Machine learning (ML) research often operates within silos, separate from the people who created the...
Validating experimental results from articles has finally become a norm at many HPC and systems conf...
International audienceOne of the challenges in machine learning research is to ensure that presented...
This is software documentation for the Collective Knowledge framework v1.15.0. Related resources: ...