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EDDI 2013
5th Annual European DDI User Conference
December 3, 2013 – December 4, 2013
Paris, France
Metadata Technology North America
http://www.mtna.us
http://www.openmetadata.org
mtna@mtna.us
The <Meta>Data Dance
The <Meta/>Data Dance
The <Meta>Data Dance
 Tools to facilitate statistical/scientific data management
 Complement existing tools (not replace)
 Facilitate adoption of standards and promote best practices
 Alleviate the need to master complexities of metadata standards,
technologies

 Vision: web based services (cloud users), stand alone desktop /server
products (agencies/enclaves), libraries (developers)
 Broad Target audience: Data Producers / Manager / Researchers /
Users
 DataForge Today (lean model):
 Simple desktop based tools
 SledgeHammer - Data/metadata transformation


LavaCore - Java library

 Caelum - Reporting / Publication
 Asmurex: ASCII Multi-Record Exctraction tool

 DataForge Tomorrow:
 DataForge Online, Web Services, More Desktop tools, Java Library
__ _
_
/ _| | ___ __| | __ _ ___ / /__ _ _ __ ___ _ __ ___
___ _ __
  | |/ _ / _` |/ _` |/ _ / /_/ / _` | '_ ` _ | '_ ` _  / _  '__|
_ | | __/ (_| | (_| | __/ __ / (_| | | | | | | | | | | | __/ |
__/|_|___|__,_|__, |___/ /_/ __,_|_| |_| |_|_| |_| |_|___|_|
|___/

 Data Liberation
 Unlock from proprietary formats, turn into open data
 Produce metadata + convert data into standard ASCII formats

 Open <Meta>Data Integration
 Generating scripts for loading into stats packages, databases, big
data engines, cloud
 Use with open systems / environments
script

triple-s
 Challenges
 Read proprietary formats
 Data integrity
 ASCII optimization
 Cross package formatting issues
 SQL Database limits (columns, indexes, views)
 Performance (Timings, size, memory usage)
 …
 Key Features
 Input: SPSS, Stata, SAS/Syntax+ASCII, ASCII+DDI-C / DDI-L,
ASCII+SSS 1.1/2.0, ASCII+StatTransfer
 Data Out: Fixed w/optimization, CSV, Delimited
 Metadata Out: DDI-C 1.2.2/Nesstar/2.1/2.5, DDI-L 3.1-RP/3.1SU/Colectica, DDI-L 3.2-RP, DDI-L 3.2 SU, Triple-S 1.1/2.0
 Summary Stats: Min / Max /Valid/Invalid /Mean, StdDev
/Variance / Frequencies, Weighted *, Save in CSV*.
 Scripts Generators: SAS, SPSS, Stata, R, Mysql, Oracle*, MSSQL*, HSQL*, Google BigQuery*, HP/Vertica* +
dimension/lookup tables, indexes/foreign keys*
 Command line interface
 Key changes since IASSIST 2013
 Desktop User Interface
 SAS (Win+DSRead), handling of missing values, DDI 3.2, lots of
tweaks

 Editions
 Freeware
 Community: 100 variables / 1,000 obs.
 Registered (free): 500 variables / 5,000 obs. (or contact us)
 Available today (Candidate Release)

 Pro/Enterprise (1Q2014)
 No data size limits
 Weighted stats, save stats, classification auto-harmonizer, batch mode,
add database formats & star schema
 Subscription: $29/3-month or $99/year , Perpetual: $279

 LavaCore:
 Currently internal only, planning for OEM
 Future Features (demand driven)
 Support additional input/output formats
 Additional ID generators

 DataWeaver (data transformation)
 Produce data subset
 Synthetic data generators
 Disclosure control

 DataForge Online (2014)
 Free and pay as you go services

 DataForge Services (available today)
 Community support in Google groups
 MTNA: pay as you go / annual support, custom developments
 IDMS: data/metadata management / processing
Products

SledgeHammer

Caelum

DataWeaver

Asmurex

Data/metadata
Management
(free/paid)

Documentation
XML Transform
(free)

Data subsets,
derivation, transforms
(internal/project)

ASCII multi record
Extraction
(free)

DMP Editor

CMS

Simple editor for
Data Management
Plan
(OSS)

Classification
Management System
(2014Q3 / paid )

SledgeHammer--BI Survey Manager
Integration with
Business Intelligence
(internal/projects)

DDI 3.1 Editor for
simple projects or
training
(OSS)
Services
Expertise
Expert Advisory and Technical Assistance
• Establishment of corporate data
management strategies
• Adoption of metadata standards and
related best practices
• Development of technical specifications
for data management infrastructure
• Statistical and scientific data management
technologies

Training
Training in and Support for:
• Data Documentation Initiative (DDI)
• Statistical Data and Metadata Exchange
(SDMX)
• Generic Statistical Business Process Model
(GSBPM)
• Generic Statistical Information Model (GSIM)
• General data and metadata management
support

Development
Application Development
• Statistical and Scientific data
management solutions
• Solutions include production, archiving,
dissemination, analysis
• Web-based data delivery solutions (web
services, portals, secure environments)
• Standards-based data management
tools/utilities

Technologies
Leverage New Technologies
• Help introduce new state-of-the-art
technologies to the community and
customers
• Deployment, hosting, and management
of cloud-based infrastructures
http://www.openmetadata.org/dataforge/sledgehammer

DEMO

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OpenDataForge - SledgeHammer EDDI 2013 presentation

  • 1. EDDI 2013 5th Annual European DDI User Conference December 3, 2013 – December 4, 2013 Paris, France Metadata Technology North America http://www.mtna.us http://www.openmetadata.org mtna@mtna.us
  • 5.  Tools to facilitate statistical/scientific data management  Complement existing tools (not replace)  Facilitate adoption of standards and promote best practices  Alleviate the need to master complexities of metadata standards, technologies  Vision: web based services (cloud users), stand alone desktop /server products (agencies/enclaves), libraries (developers)  Broad Target audience: Data Producers / Manager / Researchers / Users  DataForge Today (lean model):  Simple desktop based tools  SledgeHammer - Data/metadata transformation  LavaCore - Java library  Caelum - Reporting / Publication  Asmurex: ASCII Multi-Record Exctraction tool  DataForge Tomorrow:  DataForge Online, Web Services, More Desktop tools, Java Library
  • 6. __ _ _ / _| | ___ __| | __ _ ___ / /__ _ _ __ ___ _ __ ___ ___ _ __ | |/ _ / _` |/ _` |/ _ / /_/ / _` | '_ ` _ | '_ ` _ / _ '__| _ | | __/ (_| | (_| | __/ __ / (_| | | | | | | | | | | | __/ | __/|_|___|__,_|__, |___/ /_/ __,_|_| |_| |_|_| |_| |_|___|_| |___/  Data Liberation  Unlock from proprietary formats, turn into open data  Produce metadata + convert data into standard ASCII formats  Open <Meta>Data Integration  Generating scripts for loading into stats packages, databases, big data engines, cloud  Use with open systems / environments
  • 8.  Challenges  Read proprietary formats  Data integrity  ASCII optimization  Cross package formatting issues  SQL Database limits (columns, indexes, views)  Performance (Timings, size, memory usage)  …
  • 9.  Key Features  Input: SPSS, Stata, SAS/Syntax+ASCII, ASCII+DDI-C / DDI-L, ASCII+SSS 1.1/2.0, ASCII+StatTransfer  Data Out: Fixed w/optimization, CSV, Delimited  Metadata Out: DDI-C 1.2.2/Nesstar/2.1/2.5, DDI-L 3.1-RP/3.1SU/Colectica, DDI-L 3.2-RP, DDI-L 3.2 SU, Triple-S 1.1/2.0  Summary Stats: Min / Max /Valid/Invalid /Mean, StdDev /Variance / Frequencies, Weighted *, Save in CSV*.  Scripts Generators: SAS, SPSS, Stata, R, Mysql, Oracle*, MSSQL*, HSQL*, Google BigQuery*, HP/Vertica* + dimension/lookup tables, indexes/foreign keys*  Command line interface
  • 10.  Key changes since IASSIST 2013  Desktop User Interface  SAS (Win+DSRead), handling of missing values, DDI 3.2, lots of tweaks  Editions  Freeware  Community: 100 variables / 1,000 obs.  Registered (free): 500 variables / 5,000 obs. (or contact us)  Available today (Candidate Release)  Pro/Enterprise (1Q2014)  No data size limits  Weighted stats, save stats, classification auto-harmonizer, batch mode, add database formats & star schema  Subscription: $29/3-month or $99/year , Perpetual: $279  LavaCore:  Currently internal only, planning for OEM
  • 11.  Future Features (demand driven)  Support additional input/output formats  Additional ID generators  DataWeaver (data transformation)  Produce data subset  Synthetic data generators  Disclosure control  DataForge Online (2014)  Free and pay as you go services  DataForge Services (available today)  Community support in Google groups  MTNA: pay as you go / annual support, custom developments  IDMS: data/metadata management / processing
  • 12.
  • 13. Products SledgeHammer Caelum DataWeaver Asmurex Data/metadata Management (free/paid) Documentation XML Transform (free) Data subsets, derivation, transforms (internal/project) ASCII multi record Extraction (free) DMP Editor CMS Simple editor for Data Management Plan (OSS) Classification Management System (2014Q3 / paid ) SledgeHammer--BI Survey Manager Integration with Business Intelligence (internal/projects) DDI 3.1 Editor for simple projects or training (OSS)
  • 14. Services Expertise Expert Advisory and Technical Assistance • Establishment of corporate data management strategies • Adoption of metadata standards and related best practices • Development of technical specifications for data management infrastructure • Statistical and scientific data management technologies Training Training in and Support for: • Data Documentation Initiative (DDI) • Statistical Data and Metadata Exchange (SDMX) • Generic Statistical Business Process Model (GSBPM) • Generic Statistical Information Model (GSIM) • General data and metadata management support Development Application Development • Statistical and Scientific data management solutions • Solutions include production, archiving, dissemination, analysis • Web-based data delivery solutions (web services, portals, secure environments) • Standards-based data management tools/utilities Technologies Leverage New Technologies • Help introduce new state-of-the-art technologies to the community and customers • Deployment, hosting, and management of cloud-based infrastructures