 DeepSeek-V2: A Strong, Economical, and Efficient
Mixture-of-Experts Language Model. . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 13 3.2.1 Evaluation Benchmarks . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 13 3.2.2 Evaluation Results . . . . human preference and produce DeepSeek-V2 Chat (RL). We evaluate DeepSeek-V2 on a wide range of benchmarks in English and Chinese, and compare it with representative open-source models. Evaluation results models at an economical cost through the sparse architecture. DeepSeek-V2 Chat (RL) on open-ended benchmarks. Notably, DeepSeek-V2 Chat (RL) achieves 38.9 length-controlled win rate on AlpacaEval 2.0 (Dubois0 码力 | 52 页 | 1.23 MB | 1 年前3 DeepSeek-V2: A Strong, Economical, and Efficient
Mixture-of-Experts Language Model. . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 13 3.2.1 Evaluation Benchmarks . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 13 3.2.2 Evaluation Results . . . . human preference and produce DeepSeek-V2 Chat (RL). We evaluate DeepSeek-V2 on a wide range of benchmarks in English and Chinese, and compare it with representative open-source models. Evaluation results models at an economical cost through the sparse architecture. DeepSeek-V2 Chat (RL) on open-ended benchmarks. Notably, DeepSeek-V2 Chat (RL) achieves 38.9 length-controlled win rate on AlpacaEval 2.0 (Dubois0 码力 | 52 页 | 1.23 MB | 1 年前3
 A New Dragon in the Den: Fast Conversion From Floating-Point Numbersi7 (10510U) - gcc 13.2.1 Benchmarks - centred (a)Benchmarks - centred (b) teju x dragonbox wins ties losses 99.5% 0.0% 0.5% Intel i7 (10510U) - gcc 13.2.1Benchmarks - centred (b) teju x dragonbox 5% 0.0% 0.5% teju x ryu wins ties losses 100.0% 0.0% 0.0% Intel i7 (10510U) - gcc 13.2.1Benchmarks - centred (b) teju x dragonbox wins ties losses 99.5% 0.0% 0.5% teju x ryu wins ties (10510U) - gcc 13.2.1 Benchmarks - uncentred (b)Benchmarks - uncentred (a) teju x dragonbox wins ties losses 38.2% 0.0% 61.8% Intel i7 (10510U) - gcc 13.2.1Benchmarks - uncentred (a) teju x0 码力 | 171 页 | 6.42 MB | 6 月前3 A New Dragon in the Den: Fast Conversion From Floating-Point Numbersi7 (10510U) - gcc 13.2.1 Benchmarks - centred (a)Benchmarks - centred (b) teju x dragonbox wins ties losses 99.5% 0.0% 0.5% Intel i7 (10510U) - gcc 13.2.1Benchmarks - centred (b) teju x dragonbox 5% 0.0% 0.5% teju x ryu wins ties losses 100.0% 0.0% 0.0% Intel i7 (10510U) - gcc 13.2.1Benchmarks - centred (b) teju x dragonbox wins ties losses 99.5% 0.0% 0.5% teju x ryu wins ties (10510U) - gcc 13.2.1 Benchmarks - uncentred (b)Benchmarks - uncentred (a) teju x dragonbox wins ties losses 38.2% 0.0% 61.8% Intel i7 (10510U) - gcc 13.2.1Benchmarks - uncentred (a) teju x0 码力 | 171 页 | 6.42 MB | 6 月前3
 Template-Less Meta-Programmingmd 48 / 58Benchmarks - Benchmarks - https://qlibs.github.io/mp https://qlibs.github.io/mp 49 / 5850 / 5851 / 5852 / 5853 / 5854 / 5855 / 58Benchmarks Benchmarks 56 / 58Benchmarks Benchmarks Circle-lang to compile all around Circle-lang meta model is the fastest to compile all around 56 / 58Benchmarks Benchmarks Circle-lang meta model is the fastest to compile all around Circle-lang meta model is the recursive template instantiations ( ) boost.mp11 boost.mp11 std::tuple std::tuple 56 / 58Benchmarks Benchmarks Circle-lang meta model is the fastest to compile all around Circle-lang meta model is the0 码力 | 130 页 | 5.79 MB | 6 月前3 Template-Less Meta-Programmingmd 48 / 58Benchmarks - Benchmarks - https://qlibs.github.io/mp https://qlibs.github.io/mp 49 / 5850 / 5851 / 5852 / 5853 / 5854 / 5855 / 58Benchmarks Benchmarks 56 / 58Benchmarks Benchmarks Circle-lang to compile all around Circle-lang meta model is the fastest to compile all around 56 / 58Benchmarks Benchmarks Circle-lang meta model is the fastest to compile all around Circle-lang meta model is the recursive template instantiations ( ) boost.mp11 boost.mp11 std::tuple std::tuple 56 / 58Benchmarks Benchmarks Circle-lang meta model is the fastest to compile all around Circle-lang meta model is the0 码力 | 130 页 | 5.79 MB | 6 月前3
 03 Experiments, Reproducibility, and Projects - Introduction to Scientific Writing WS2021/22feasibility  #2 Micro Benchmarks  Measure specific aspects in controlled and understandable scope  Bottom-up approach  #3 Benchmarks  Evaluate on community/own benchmarks  Examples: TPC-C, TPC-H ML: ImageNet, Mnist, CIFAR, KDD, Criteo  Common Datasets in DM: Census, Taxi, Airlines, DBLP, benchmarks etc Experiments and Result Presentation Representative of real data distributions? Representative Boehm, Graz University of Technology, WS 2021/22 Benchmarks  Overview  Community- and organization-driven creation of agreed benchmarks  Benchmarks can define a field and foster innovation  #1 Data0 码力 | 31 页 | 1.38 MB | 1 年前3 03 Experiments, Reproducibility, and Projects - Introduction to Scientific Writing WS2021/22feasibility  #2 Micro Benchmarks  Measure specific aspects in controlled and understandable scope  Bottom-up approach  #3 Benchmarks  Evaluate on community/own benchmarks  Examples: TPC-C, TPC-H ML: ImageNet, Mnist, CIFAR, KDD, Criteo  Common Datasets in DM: Census, Taxi, Airlines, DBLP, benchmarks etc Experiments and Result Presentation Representative of real data distributions? Representative Boehm, Graz University of Technology, WS 2021/22 Benchmarks  Overview  Community- and organization-driven creation of agreed benchmarks  Benchmarks can define a field and foster innovation  #1 Data0 码力 | 31 页 | 1.38 MB | 1 年前3
 Designing a Slimmer Vector of Variantscandidate designs, refining as we go, and then presents interesting implications of the approach, benchmarks, and lessons learned • I implemented the data structure mostly for the fun of it, as well as to Finance L.P. All rights reserved. Benchmarks! 56© 2024 Bloomberg Finance L.P. All rights reserved. Benchmarks! 57© 2024 Bloomberg Finance L.P. All rights reserved. Benchmarks! 58© 2024 Bloomberg Finance Finance L.P. All rights reserved. Benchmarks! 59© 2024 Bloomberg Finance L.P. All rights reserved. Benchmarks! 60© 2024 Bloomberg Finance L.P. All rights reserved. Benchmarks! 61© 2024 Bloomberg Finance0 码力 | 64 页 | 1.98 MB | 6 月前3 Designing a Slimmer Vector of Variantscandidate designs, refining as we go, and then presents interesting implications of the approach, benchmarks, and lessons learned • I implemented the data structure mostly for the fun of it, as well as to Finance L.P. All rights reserved. Benchmarks! 56© 2024 Bloomberg Finance L.P. All rights reserved. Benchmarks! 57© 2024 Bloomberg Finance L.P. All rights reserved. Benchmarks! 58© 2024 Bloomberg Finance Finance L.P. All rights reserved. Benchmarks! 59© 2024 Bloomberg Finance L.P. All rights reserved. Benchmarks! 60© 2024 Bloomberg Finance L.P. All rights reserved. Benchmarks! 61© 2024 Bloomberg Finance0 码力 | 64 页 | 1.98 MB | 6 月前3
 When Lock-Free Still Isn't Enough: An Introduction to Wait-Free Programming and Concurrency Techniquesimplications • An example of an elegant wait-free algorithm and wait-free design • Some simple benchmarks Some assumed knowledge • You know what std::atomic does and what it is used for • You’ve heard performance. Never guess. The rest of this talk: • How to guess about performance • We’ll do some benchmarks too I promise10 Progress guarantees • Progress guarantees are a way to theoretically categorize this step Solution: One and only one decrement must “take credit” for zeroing the counter29 Benchmarks • My atomic When Lock-Free Still Isn't Enough: An Introduction to Wait-Free Programming and Concurrency Techniquesimplications • An example of an elegant wait-free algorithm and wait-free design • Some simple benchmarks Some assumed knowledge • You know what std::atomic does and what it is used for • You’ve heard performance. Never guess. The rest of this talk: • How to guess about performance • We’ll do some benchmarks too I promise10 Progress guarantees • Progress guarantees are a way to theoretically categorize this step Solution: One and only one decrement must “take credit” for zeroing the counter29 Benchmarks • My atomic- implementation using the wait-free counter versus the lock-free counter 0 码力 | 33 页 | 817.96 KB | 6 月前3
 [Buyers Guide_DRAFT_REVIEW_V3] Rancher 2.6, OpenShift, Tanzu, AnthosController that implements similar functionality. 3.2.3 Configurable Adherence to CIS Security Benchmarks • SUSE Rancher: 4 • OpenShift: 3 • Tanzu: 2 • Anthos: 2 3.2.3.1 SUSE Rancher SUSE Rancher maintains a hardening guide and self-assessment that references CIS benchmarks with specific user actions to satisfy the requirements. SUSE Rancher supports CIS scans on any Kubernetes guide for OpenShift and for RHCOS. 3.2.3.3 Tanzu Security scanning for adherence to the CIS Benchmarks for Kubernetes is available through Tanzu Mission Control (TMC) or by using the Compliance Scanner0 码力 | 39 页 | 488.95 KB | 1 年前3 [Buyers Guide_DRAFT_REVIEW_V3] Rancher 2.6, OpenShift, Tanzu, AnthosController that implements similar functionality. 3.2.3 Configurable Adherence to CIS Security Benchmarks • SUSE Rancher: 4 • OpenShift: 3 • Tanzu: 2 • Anthos: 2 3.2.3.1 SUSE Rancher SUSE Rancher maintains a hardening guide and self-assessment that references CIS benchmarks with specific user actions to satisfy the requirements. SUSE Rancher supports CIS scans on any Kubernetes guide for OpenShift and for RHCOS. 3.2.3.3 Tanzu Security scanning for adherence to the CIS Benchmarks for Kubernetes is available through Tanzu Mission Control (TMC) or by using the Compliance Scanner0 码力 | 39 页 | 488.95 KB | 1 年前3
 MACRO-FREE TESTING WITH C++2010 / 14BENCHMARKS - BENCHMARKS - 10'000 TESTS, 20'000 ASSERTS, 100 CPP FILES 10'000 TESTS, 20'000 ASSERTS, 100 CPP FILES SUITE+ASSERT+STL SUITE+ASSERT+STL 11 / 14BENCHMARKS - BENCHMARKS -0 码力 | 53 页 | 1.98 MB | 6 月前3 MACRO-FREE TESTING WITH C++2010 / 14BENCHMARKS - BENCHMARKS - 10'000 TESTS, 20'000 ASSERTS, 100 CPP FILES 10'000 TESTS, 20'000 ASSERTS, 100 CPP FILES SUITE+ASSERT+STL SUITE+ASSERT+STL 11 / 14BENCHMARKS - BENCHMARKS -0 码力 | 53 页 | 1.98 MB | 6 月前3
 CppCon 2021: Persistent Data Structuresto store everything else (e.g. code) ▶ The OS is Ubuntu 18.04 LTS ▶ The application and micro-benchmarks were compiled using gcc 7.4 with the -O3 optimization flag and C++14 standard flags A Persistent Persistent Transactional Data Structures Live Demonstration References Experimental Setup Micro-benchmarks ▶ Operation ratio for write-dominated workload ▶ Lists: 40% Insert, 40% Delete, 20% Find ▶ Map: Persistent Transactional Data Structures Live Demonstration References Demonstration Settings Micro-benchmarks ▶ Operation ratio: 33% Insert, 33% Delete, 34% Find ▶ Number of Transactions: 10K ▶ Key Range:0 码力 | 56 页 | 1.90 MB | 6 月前3 CppCon 2021: Persistent Data Structuresto store everything else (e.g. code) ▶ The OS is Ubuntu 18.04 LTS ▶ The application and micro-benchmarks were compiled using gcc 7.4 with the -O3 optimization flag and C++14 standard flags A Persistent Persistent Transactional Data Structures Live Demonstration References Experimental Setup Micro-benchmarks ▶ Operation ratio for write-dominated workload ▶ Lists: 40% Insert, 40% Delete, 20% Find ▶ Map: Persistent Transactional Data Structures Live Demonstration References Demonstration Settings Micro-benchmarks ▶ Operation ratio: 33% Insert, 33% Delete, 34% Find ▶ Number of Transactions: 10K ▶ Key Range:0 码力 | 56 页 | 1.90 MB | 6 月前3
 Performance Mattersacross the whole benchmark suite evaluation of LLVM’s optimizations with STABILIZER first, build benchmarks with STABILIZERBuild programs with STABILIZER > szc main.c> szc main.c Build programs with Build programs with STABILIZER now run the benchmarks0% 10% 20% 30% 40% 85.0 87.5 90.0 92.5 95.0 Time (s) Percent of Observed Runtimes Run benchmarks as usual A′ A ×30 ×30 drop the results0 码力 | 197 页 | 11.90 MB | 6 月前3 Performance Mattersacross the whole benchmark suite evaluation of LLVM’s optimizations with STABILIZER first, build benchmarks with STABILIZERBuild programs with STABILIZER > szc main.c> szc main.c Build programs with Build programs with STABILIZER now run the benchmarks0% 10% 20% 30% 40% 85.0 87.5 90.0 92.5 95.0 Time (s) Percent of Observed Runtimes Run benchmarks as usual A′ A ×30 ×30 drop the results0 码力 | 197 页 | 11.90 MB | 6 月前3
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