01 Structure of Scientific Papers - Introduction to Scientific Writing WS2021/22data science lifecycle) 2012-2018 IBM Research – Almaden, USA Declarative large-scale machine learning Optimizer and runtime of Apache SystemML 2011 PhD TU Dresden, Germany Cost-based optimization Algebra for Large-Scale Machine Learning. PVLDB 2016] [Ahmed Elgohary, Matthias Boehm, Peter J. Haas, Frederick R. Reiss, Berthold Reinwald: Scaling Machine Learning via Compressed Linear Algebra. SIGMOD Large-Scale Machine Learning. VLDB Journal 2018 27(5)] [Ahmed Elgohary, Matthias Boehm, Peter J. Haas, Frederick R. Reiss, Berthold Reinwald: Compressed Linear Algebra for Large-Scale Machine Learning. Commun.0 码力 | 36 页 | 1.12 MB | 1 年前3
03 Experiments, Reproducibility, and Projects - Introduction to Scientific Writing WS2021/22#2 “Big Data” MR/Spark: BigBench, HiBench, SparkBench Array Databases: GenBase #3 Machine Learning Systems SLAB, DAWNBench, MLPerf, MLBench, AutoML Bench, Meta Worlds, TPCx-AI Experiments and text Experiments and Result Presentation [Matthias Boehm et al: SystemDS: A Declarative Machine Learning System for the End-to-End Data Science Lifecycle. CIDR 2020] 17 706.015 Introduction to Scientific Interpretation [Matthias Boehm et al: On Optimizing Operator Fusion Plans for Large-Scale Machine Learning in SystemML. PVLDB 11(12) 2018] 19 706.015 Introduction to Scientific Writing – 03 Experiments0 码力 | 31 页 | 1.38 MB | 1 年前3
02 Scientific Reading and Writing - Introduction to Scientific Writing WS2021/22feedback and recommendations, widen own horizon Lots of similarities to code reviews in OSS Learning by What NOT to Do Accept if no time to review The Goldilocks Method (examples, proofs, theoretical0 码力 | 26 页 | 613.57 KB | 1 年前3
共 3 条
- 1













