* Your assessment is very important for improving the workof artificial intelligence, which forms the content of this project
Download 2 Variability-Aware design of Database Technology
Survey
Document related concepts
Transcript
Laboratoire d’Informatique et d’Automatique pour les Systèmes A Roadmap To Variability-Aware Design of Database Technology Phd Student Selma BOUARAR [email protected] Advisors Ladjel BELLATRECHE [email protected] Stéphane JEAN [email protected] PLAN Context: Software reuse Database design Objective Database as a Software Product Line Contributions A SPL-based framework for designing DB Evaluation of the proposal Future work Variability-Aware design of Database Technology 2 Context: Software engineering and reuse strategies Context Objective Contributions Future work Most organizations produce families of similar systems, differentiated by features. A strategic reuse makes sense. Reuse History SPL Focus on Mass customization and domain knowledge Domain-driven approaches: Generative programming, Software Factories and Software Product Lines (SPL) Variability-Aware design of Database Technology 3 Context: Software engineering and reuse strategies Context Objective Contributions Future work “SPLE is a paradigm to develop software applications using a set of common assets and mass customization” [Pohl et al. 05] From Ad hoc to Systematic reuse Widespread Use of Software Product Lines Variability-Aware design of Database Technology 4 Context Context: Software engineering vs Database systems Objective Contributions Future work The data flowing through all the organizations is managed by database systems E.g. Static Data, scientific, agregated, etc. Storage/Management Requirements Design Conceptual Design Analysis Logical Design DM Evaluation Physical Design … Statistic DB Scientific DB Testing DW Deployment Centralized Flash Cloud Design Impleme -ntation Development cycle (Software) Tuning Variability-Aware design of Database Technology 5 Context Motivation and objectives Objective Contributions Future work Variety of choices SPL to manage variability all along the cycle Enjoy benefits: Reduced time to market/cost, Quality, maintanability, etc. From an ad hoc DB design to a systematic one Deal with database design as a whole BD Requirements Sources Assist DB users during design process Conceptual Design E/A, UML, Semantic, etc. Relational, Object, Multidimensional, etc. Logical Design Physical Design Vertical, horizontal, binary, etc. DB Variability-Aware design of Database Technology 6 Context Objective Issues and Contributions Contributions Future work Question 1: How to adapt SPL for Database design BD Sources Requirements Answer: Identification of the artefacts Issue: An evolving lifeCycle A generic framework Conceptual Design Formal definition of database lifecycle Logical Design Dependencies between variants Physical Design Contribution 1 : A SPL-based framework for designing highly customizable database products Variability-Aware design of Database Technology BD 7 Issues and Contributions: 1-A SPL-based framework for designing DB Context Objective Contributions Future work Identification of the artefacts making up a SPL pertain to AnyMarket organisating Strategy having / data Application to store/manage Domain is satisfied by share an Products Precedence of phases Architecture + Constraints used to structure are built from Concrete instance of a DB ready-to-be-implemented Variability of the design Components life cycle Variability-Aware design of Database Technology 8 Issues and Contributions: 1-A SPL-based framework for designing DB Context Objective Contributions Future work An in-depth study of the life cycle Generic Formal definition Moving from formal definition to feature models Variability across DB design life-cycle Variability-Aware design of Database Technology 9 Issues and Contributions: 1-A SPL-based framework for designing DB Context Objective Contributions Future work Constraints, dependencies Reason on feature models Decrease possible configurations number When to bind to a variant (Compilation, Runtime, etc.) Specification of dependencies between variants - DeploymentArchitecture requires semantic Logical design requires a conceptual design Variability-Aware design of Database Technology 10 Issues and Contributions: 1- A SPL-based framework for designing DB Context Objective Contributions Future work Implement features A set of Java classes Configuration Binding variation points to variants Feature-oriented programming with Jak files Eclipse Plugin FeatureIDE [1,2 ] Maintenance Populate variant features Prune old variants Adapt to new requirements Variability-Aware design of Database Technology 11 Context Issues and Contributions Objective Contributions Future work Question 2: How to assist DB designer, during the configuration process, against the panoply of choices? Answer: Evaluate variants and compare A specific type of testing Issue: Large number of variants Contribution 2: Evaluation of the proposal: Use case on testing DB design Variability-Aware design of Database Technology 12 Issues and Contributions: Context Objective 2- Use case on testing databases ER Contributions Future work Relational MV NF1 NF2 Index Horizontal Vertical HDD Parallel Centralized Testing concern only leaf features Performance 0,N 0,1 Design Configuration Feature Functionality Process Usability Variability-Aware design of Database Technology 13 Issues and Contributions: 2- Use case on testing databases Logical Design: Context Objective Contributions Future work Embedded Variants First Level: Tied to DBMS choice. Variation point: Relational Variants: NF1, NF2, …, BCNF Input: CMi = ᵠ(CM, Fi) Output: LM1, LM2, …, LMn / Variability implementation Test: Performance, Functional, Usability, etc. Result: Choose the most suitable LMi Variability-Aware design of Database Technology User+ hint Correlation+ Workload 14 Issues and Contributions: 2- Use case on testing databases Context Objective Contributions Future work RDB .. XML ETL Conceptual Phase Logical Phase Physical Phase Tuning Phase ODB Variability-Aware design of Database Technology 15 Issues and Contributions: Context Objective 2- Use case on testing databases Contributions Future work Correlation+ Workload+ Statistics Workload+ Statistics+ Hints Hints + Constraints Deployment Layout [Jean et al., 13] Optimization structures: [Boukorça et al., 13] Choice of the algorithm Variability-Aware design of Database Technology 16 Context Issues and Contributions Objective Contributions Future work Question 3: From Ad hoc to systematic design, how can this help in the predictability of DB schema evolution Future work Contribution 3 : Application of SPL-based database design on Schema evolution Variability-Aware design of Database Technology 17 Context Publications Objective Contributions Publications Conférences Internationales • Selma BOUARAR, Ladjel BELLATRECHE, Stephane JEAN, Mickael BARON, Do Rule-based Approaches Still Make Sense in Logical Data Warehouse Design?, Proceedings of the 18th East-European Conference on Advances in Databases and Information Systems (ADBIS’ 2014) • Selma KHOURI, Ladjel BELLATRECHE, Ilyes BOUKHARI, Selma BOUARAR, More Investment in Conceptual Designers: Think about it!, 15th IEEE International Conference on Computational Science and Engineering (CSE’2012) • Conférences Nationales • Selma BOUARAR, Ladjel BELLATRECHE, Stéphane JEAN, Mickael BARON, Leveraging Ontology-based Methodologies for Designing Semantic Data Warehouses, 29 èmes journées Bases de Données Avancées(BDA’2013) En cours, Revue internationale Selma BOUARAR, Ladjel BELLATRECHE, Stéphane JEAN, A Roadmap To Variability-Aware Design of Database Technology, Software and System Modeling (SOSYM). 30/11/2014 Variability-Aware design of Database Technology 18 References [Jean et al., 13]: S. Jean, L. Bellatreche, O. Carlos, G. Fokou, and M. Baron. Ontodbench: Interactively benchmarking ontology storage in a database (demo paper). 32nd International Conference on Conceptual Modeling, nov 2013. [Boukorça et al., 13]: Ahcene BOUKORCA, Ladjel BELLATRECHE, SidAhmed Benali Senouci, Zoe FAGET, SONIC: Scalable multi-query OptimizatioN through Integrated Circuit, (DEXA), 2013 [Pohl et al. 05]: Pohl, K., Böckle, G., and van der Linden, F. Software Product Line Engineering - Foundations, Principles, and Techniques. Springer. (2005) Variability-Aware Testing in Database Technology 19 Des questions... ?