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eLabs and Research Objects

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General templates that may be. specialised for specific. domains/tasks. What's inside? ... A dream... http://www.flickr.com/photos/fatdeeman/2879894. Problem. E-Lab ... – PowerPoint PPT presentation

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Title: eLabs and Research Objects


1
e-Labs and Research Objects
2
What is an e-Laboratory?
  • A laboratory is a facility that provides
    controlled conditions in which scientific
    research, experiments and measurements may be
    performed, offering a work space for researchers.
  • An e-Laboratory is a set of integrated components
    that, used together, form a distributed and
    collaborative space for e-Science, enabling the
    planning and execution of in silico experiments
    -- processes that combine data with computational
    activities to yield experimental results

3
e-Labs
  • An e-Lab consists of
  • a community
  • work objects
  • generic resources for building and transforming
    work objects.
  • Sharing infrastructure and content across
    projects

4
Research Objects
  • The common currency for e-Labs
  • A story about an investigation
  • An aggregation of resources
  • With a particular purpose, reason or rationale
    for the aggregation
  • Capturing the investigation process from soup to
    nuts
  • Intended to be
  • Reusable
  • Repeatable
  • Replayable

5
e-Labs Research Objects
  • An e-Lab is built from a collection of services,
    consuming and producing Research Objects

Visualisation Notification Annotation etc.
Workbench/ RO driven UI
Service
RO Bus
RO aware services
Service
Service
Service
6
Research Methods Experts
Development e-Lab
Research Objects
Scripts
Data sets
Services
Publications
Workflows
Application e-Lab
Delivery Experts
Policy makers
7
Knowledge Burying (Mons)
  • Publishing/mining cycle results in loss of
    knowledge
  • 40 of information lost
  • RIP Rest in Paper
  • ROs as a mechanism for publication of knowledge,
    preserving information about the process.

8
(Current) RO Principles
  • Common Schema for internal strcture
  • References metadata rather than Data
  • Graceful degradation of understanding
  • Not all services understand everything
  • cf RDF/OWL
  • Reflective
  • Clickable
  • Displayable
  • Mailable

9
Anatomy of an RO
10
Flavours of RO
  • RO as encapsulation of a process
  • Up to date references to appropriate resources
  • RO as a record of what happened
  • Curated, fossilised, immutable aggregation
  • RO as collection
  • E.g Tutorial materials
  • RO as protocol
  • General templates that may be specialised for
    specific domains/tasks

11
Whats inside?
  • A research problem
  • A hypothesis
  • Experimental design
  • Data sets
  • Measurements
  • Workflows used to analyse data
  • Results of data analysis
  • Information about ethical approval
  • Governance policies
  • Publications, e.g. papers, reports, slide-decks
  • The investigators involved in the experiment
  • References to other SROs that the work depends on
    or cites
  • Descriptions of relationships between resources.
  • Lilly experiment ontology,
  • SWAN/SIOC
  • Scholarly discourse
  • OBO relations ontology

12
RO Lifecycle
  • ROs have a lifecycle they may be created,
    manipulated, edited, interrogated and published.
  • Appropriate servicessupport this lifecycle

13
e-Labs services
  • Registry
  • Repository
  • Workflow Monitoring
  • Event Logging
  • News feeds, activities
  • Social Metadata
  • Tagging, groups, users, Sharing
  • Annotation
  • Search
  • Visualisation
  • Notification
  • Authentication, Authorisation and Role based
    Access
  • Job Execution. Workflow engine, HPC scripts etc.
  • Naming and Identity Centralised vs. distributed.
  • Synchronisation
  • To support on-line and off-line working
  • Anonymisation
  • e.g. for health records
  • Text Mining

14
e-Labs activity
e-Labs TAG
  • Obesity e-Lab (details next)
  • myExperiment
  • Packs as a precursor to ROs
  • Sharing/Social networking services
  • Biocatalogue
  • Curated collection of bio web services
  • LifeGuide
  • myExperiment for storing/sharing Internet
    interventions
  • NW eHealth
  • e-Labs as a sense-making layer on top of NHS
    Information Systems
  • ONDEX
  • Linking bio data sets
  • Sysmo-DB
  • Web-based exchange of data
  • Shared Genomics
  • HPC Infrastructure for analysis of large-scale
    genetic data

15
Evolution
  • 1st Generation
  • Current practice of early adoptors of e-Labs
    tools such as Taverna
  • Characterised by researchers using tools within
    their particular problem area, with some re-use
    of tools, data and methods within the discipline.
  • Traditional publishing is supplemented by
    publication of some digital artefacts like
    workflows and links to data.
  • Provenance is recorded but not shared and
    re-used.
  • Science is accelerated and practice beginning to
    shift to emphasise in silico work
  • 2nd Generation
  • Designing and delivering now, e.g. Obesity e-Lab
  • Experience with Taverna and myExperiment and on
    our research results arising from these
    activities
  • Key characteristic is re-use - of the increasing
    pool of tools, data and methods across
    areas/disciplines.
  • Contain some freestanding, recombinant,
    reproducible research objects. Provenance
    analytics plays a role.
  • New scientific practices are established and
    opportunities arise for completely new scientific
    investigations.
  • 3rd Generation
  • The vision - the e-Labs we'll be delivering in 5
    years - illustrated by open science.
  • Characterised by global reuse of tools, data and
    methods across any discipline, and surfacing the
    right levels of complexity for the researcher.
  • Key characteristic is radical sharing
  • Research is significantly data driven -
    plundering the backlog of data, results and
    methods.
  • Increasing automation and decision-support for
    the researcher - the e-Laboratory becomes
    assistive.
  • Provenance assists design
  • Curation is autonomic and social

16
ROs and e-Labs
  • Research Objects
  • Aggregations of resources (people data
    methods)
  • Rationale, purpose, story
  • Lifecycle
  • Share and Exchange Reuse, Replay, Repeat
  • E-Labs
  • Collection of services consuming and producing
    Research Objects

17
A dream
Problem
E-Lab
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