KNIME What s new?! Bernd Wiswedel KNIME.com AG, Zurich, Switzerland

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1 KNIME What s new?! Bernd Wiswedel KNIME.com AG, Zurich, Switzerland

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4 Data Access ASCII (File/CSV Reader, ) Excel Web Services Remote Files (http, ftp, ) Other domain standards (e.g. Sdf) Databases

5 Data Access ASCII (File/CSV Reader, ) Excel Web Services Remote Files (http, ftp, ) Other domain standards (e.g. Sdf) Databases (improved)

6 Databases: new features Database schema browser in the connectors Multiple select statements

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16 Data Access ASCII (File/CSV Reader, ) Excel Web Services Remote Files (http, ftp, ) Other domain standards (e.g. Sdf) Databases (improved) SAS Datasets

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19 Data Access ASCII (File/CSV Reader, ) Excel Web Services Remote Files (http, ftp, ) Other domain standards (e.g. Sdf) Databases (improved) SAS Datasets Line Reader

20 Data Types Native types (numbers, strings, ) Models (PMML) Chem/Bio types

21 Data Types Native types (numbers, strings, ) Models (PMML) Chem/Bio types (improved renderer)

22 Chem Types New set of nodes for viewing, sketching, converting molecular data Renderer for most chemical types Contributed by ChemAxon & Infocom

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26 Data Types Native types (numbers, strings, ) Models (PMML) Chem/Bio types (improved renderer) XML

27 Reading and Handling XML data A whole new set of XML processing nodes A new XML data type Convert KNIME tables from & into XML Parse (xpath) or transform (xslt) XML

28 XML example: book inventory

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55 XML example: after

56 XML example: before

57 XML Summary Nodes to read, process, and write XML New data type representing XML structure XML is base type for PMML

58 Data Types Native types (numbers, strings, ) Models (PMML) Chem/Bio types (improved renderer) XML Images

59 Image Handling & Image Ports Type representing images (SVG, PNG) (More image analytics tomorrow) Produced by R statistics package JFreeChart integration Text-Processing extension / TagCloud Can be used in KNIME BIRT reporting

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81 Data Types Native types (numbers, strings, ) Models (PMML) Chem/Bio types (improved renderer) XML Images Text (later today) Network (later today)

82 Text Mining

83 Network Analysis

84 Data Types - Summary Native types (numbers, strings, ) Models (PMML) Chem/Bio types (improved renderer) XML Images Text (later today) Network (later today)

85 Data Access + Data Types It is a capital mistake to theorize without data. Arthur Conan Doyle, Sr.

86 Data Manipulation column filter, binner, converter, normalizer, row filtering, partitioning, sorting, grouping, scripting nodes (java, python, perl, )

87 Data Manipulation column filter, binner, converter, normalizer, row filtering, partitioning, sorting, grouping, scripting nodes (java, python, perl, ) easy String Manipulation

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94 Data Manipulation column filter, binner, converter, normalizer, row filtering, partitioning, sorting, grouping, scripting nodes (java, python, perl, ) easy String Manipulation Crosstab

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99 Data Manipulation column filter, binner, converter, normalizer, row filtering, partitioning, sorting, grouping, scripting nodes (java, python, perl, ) easy String Manipulation Crosstab Pivoting (improved)

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107 Data Manipulation - Summary column filter, binner, converter, normalizer, row filtering, partitioning, sorting, grouping, scripting nodes (java, python, perl, ) easy String Manipulation Crosstab Pivoting (improved)

108 Data Manipulation ʺQuality data does NOT guarantee quality information, but quality information is impossible without quality data.ʺ Peter Benson, ECCMA, the Project Leader of ISO 8000

109 Data Analytics/Modelling Among many others: Decision trees Neural networks Nearest neighbor classifier Clustering (k/c means, hierarchical)

110 Data Analytics/Modelling Among many others: Decision trees Neural networks Nearest neighbor classifier Clustering (k/c means, hierarchical) Enhanced PMML support

111 PMML: Predictive Models Predictive Model Markup Language Vendor independent format Includes models for: regression, clustering, classification, etc New: preprocessing operations, e.g. missing value handling & normalization XML Converter

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122 PMML: Predictive Models Predictive Model Markup Language Vendor independent format Includes models for: regression, clustering, classification, etc New: preprocessing operations, e.g. missing value handling & normalization XML Converter

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126 Data Analytics/Modelling Among many others: Decision trees Neural networks Nearest neighbor classifier Clustering (k/c means, hierarchical) Enhanced PMML support Meta learning/ensemble methods

127 Meta Learning / Ensemble Methods New set of nodes for advanced meta learning, e.g. Bagging Boosting Available as predefined meta nodes / loops Full flexibility (change as needed)

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145 Data Analytics/Modelling Among many others: Decision trees Neural networks Nearest neighbor classifier Clustering (k/c means, hierarchical) Enhanced PMML support Meta learning/ensemble methods Bit vector methods (chemical application)

146 Data Analytics/Modelling A moment's insight found and applied is sometimes worth a life's experience. Oliver Wendell Holms, Jr.

147 UI & Usability Workflow describing data retrieval, processing, output Workflow annotations to further document steps

148 UI & Usability Workflow describing data retrieval, processing, output Workflow annotations to further document steps Auto-layout

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153 UI & Usability Workflow describing data retrieval, processing, output Workflow annotations to further document steps Auto-layout Easier node insertion

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156 UI & Usability Workflow describing data retrieval, processing, output Workflow annotations to further document steps Auto-layout Easier node insertion Better meta node handling

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165 UI & Usability Workflow describing data retrieval, processing, output Workflow annotations to further document steps Auto-layout Easier node insertion Better meta node handling Quickform nodes

166 Quickforms Define dialogs on a meta node Expose only relevant parameters Different input options

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185 UI & Usability - Summary Workflow describing data retrieval, processing, output Workflow annotations to further document steps Auto-layout Easier node insertion Better meta node handling Quickform nodes

186 UI & Usability

187 UI & Usability Beauty and brains, pleasure and usability - they should go hand in hand. Donald Norman, Scientist

188 Organizing KNIME KNIME Workspace Navigator to organize workflows and workflow groups Workflow Sharing via Export/Import

189 Organizing KNIME KNIME Workspace Navigator to organize workflows and workflow groups Workflow Sharing via Export/Import KNIME Explorer Meta node dialogs Meta node template sharing

190 KNIME Explorer Organizes Workflows Workflow snippets (templates) Data Access to Local Shared Server Cross platform

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221 Organizing KNIME - Summary KNIME Workspace Navigator to organize workflows and workflow groups Workflow Sharing via Export/Import KNIME Explorer Meta node dialogs Meta node template sharing

222 Productionizing KNIME KNIME desktop as end user tool KNIME batch for headless execution

223 Productionizing KNIME KNIME desktop as end user tool KNIME batch for headless execution KNIME batch for headless report execution

224 Report Batch Execution

225 Productionizing KNIME KNIME desktop as end user tool KNIME batch for headless execution KNIME batch for headless report execution KNIME explorer as team workspace

226 KNIME explorer as team workspace Workflow and template sharing via KNIME Teamspace via KNIME Server Password protected meta node Read lock (can execute without password) Can be shared in teamspace / server Password needs to be signed by KNIME.com

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234 Productionizing KNIME KNIME desktop as end user tool KNIME batch for headless execution KNIME batch for headless report execution KNIME explorer as team workspace KNIME Web Portal as web-based frontend to run a workflow

235 KNIME Web Portal Run workflow from web frontend In- and output parameters defined via quickforms Rapid prototyping Needs KNIME Server

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250 Productionizing KNIME KNIME desktop as end user tool KNIME batch for headless execution KNIME batch for headless report execution KNIME explorer as team workspace KNIME Web Portal as web-based frontend to run a workflow

251 Organizing / Productionizing KNIME There is no delight in owning anything unshared. Seneca, 1 century AD, Roman philosopher

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JChem Extensions for KNIME KNIME.com products

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