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RAML (software)
Known as:
RAML
, RESTful API Modeling Language
RESTful API Modeling Language (RAML) is a YAML-based language for describing RESTful APIs. It provides all the information necessary to describe…
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Related topics
Related topics
9 relations
Application programming interface
Hypertext Transfer Protocol
Java API for RESTful Web Services (JAX-RS)
OpenAPI Specification
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Papers overview
Semantic Scholar uses AI to extract papers important to this topic.
2019
2019
Boosting Dialog Response Generation
Wenchao Du
,
A. Black
Annual Meeting of the Association for…
2019
Corpus ID: 196193035
Neural models have become one of the most important approaches to dialog response generation. However, they still tend to…
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Highly Cited
2018
Highly Cited
2018
Ensure the Correctness of the Summary: Incorporate Entailment Knowledge into Abstractive Sentence Summarization
Haoran Li
,
Junnan Zhu
,
Jiajun Zhang
,
Chengqing Zong
International Conference on Computational…
2018
Corpus ID: 52012819
In this paper, we investigate the sentence summarization task that produces a summary from a source sentence. Neural sequence-to…
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Highly Cited
2018
Highly Cited
2018
Automatic Generation of Test Cases for REST APIs: A Specification-Based Approach
Hamza Ed-Douibi
,
Javier Luis Cánovas Izquierdo
,
Jordi Cabot
IEEE International Enterprise Distributed Object…
2018
Corpus ID: 53434453
The REpresentation State Transfer (REST) has gained momentum as the preferred technique to design Web APIs. REST allows building…
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2018
2018
From Credit Assignment to Entropy Regularization: Two New Algorithms for Neural Sequence Prediction
Zihang Dai
,
Qizhe Xie
,
E. Hovy
Annual Meeting of the Association for…
2018
Corpus ID: 13747066
In this work, we study the credit assignment problem in reward augmented maximum likelihood (RAML) learning, and establish a…
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2017
2017
Monadic refinements for relational cost analysis
Ivan Radicek
,
G. Barthe
,
Marco Gaboardi
,
D. Garg
,
Florian Zuleger
Proc. ACM Program. Lang.
2017
Corpus ID: 27657274
Formal frameworks for cost analysis of programs have been widely studied in the unary setting and, to a limited extent, in the…
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2017
2017
Softmax Q-Distribution Estimation for Structured Prediction: A Theoretical Interpretation for RAML
Xuezhe Ma
,
Pengcheng Yin
,
J. Liu
,
Graham Neubig
,
E. Hovy
arXiv.org
2017
Corpus ID: 28470390
Reward augmented maximum likelihood (RAML), a simple and effective learning framework to directly optimize towards the reward…
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2017
2017
RAML-Based Mock Service Generator for Microservice Applications Testing
N. Ashikhmin
,
G. Radchenko
,
Andrei Tchernykh
Russian Supercomputing Days
2017
Corpus ID: 52245558
The automation capabilities and flexibility of computing resource scaling in cloud environments require novel approaches to…
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2017
2017
Verifying and Synthesizing Constant-Resource Implementations with Types
V. Ngo
,
Mario Dehesa-Azuara
,
Matt Fredrikson
,
Jan Hoffmann
IEEE Symposium on Security and Privacy
2017
Corpus ID: 28785645
Side channel attacks have been used to extract critical data such as encryption keys and confidential user data in a variety of…
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Highly Cited
2015
Highly Cited
2015
Automatic Static Cost Analysis for Parallel Programs
Jan Hoffmann
,
Zhong Shao
European Symposium on Programming
2015
Corpus ID: 2986689
Static analysis of the evaluation cost of programs is an extensively studied problem that has many important applications…
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Highly Cited
1954
Highly Cited
1954
Vertical osteotomy in the mandibular raml for correction of prognathism.
Caldwell Jb
,
Letterman Gs
1954
Corpus ID: 77588506
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