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Search is broken.
User expectations changed.
1
2
Legacy search approaches
don’t scale and don’t
perform.
Understanding users and their
data is too slow and too
complicated.
3
Next Gen Results.
No PHd. Required.
• Machine Driven: Signals
aggregation learn and automatically
tune relevancy and drive
recommendations out of the box.
• Rules when you need them: Point-
and-click query pipeline
configuration and rules module
allow fine-grained control of results.
• Science, not guessing: Experiment
management and bandits do the
heavy lifting of systematically
testing new ideas
Simplified App Dev
• Over 50 connectors and a
robust parsing framework to
seamlessly ingest all your data
• Powerful pipeline stages:
Customize fields, stages,
synonyms, boosts, facets, and
dozens of other powerful search
stages.
• Point and click Indexing
configuration and iterative
simulation of results for full
control over your ETL process
• Your security model
enforced end-to-end from
ingest to search across your
different datasources
Best in class open source
• 24/7/365 Customer Success:
Support and advice for all of your
search and machine learning
problems
• Backed by the team that makes
Solr
• Enables you to attract and grow
top talent in your organization
Best in class open source
Fusion Architecture
SECURITY BUILT-IN
Shards Shards
Apache Solr
Apache Zookeeper
ZK 1
Leader
Election
Load
Balancing
ZK N
Shared Config
Management
Worker Worker
Apache Spark
Cluster
Manager
RESTAPI
Admin UI
Lucidworks
View
LOGS FILE WEB DATABASE CLOUD
HDFS(Optional)
Core Services
• • •
ETL and Query Pipelines
Recommenders/Signals
NLP
Machine Learning
Alerting and Messaging
Security
Connectors
Scheduling
Index
Workbench
Parsers as 1st class
citizens
Change data before it
causes problems
View/configure pipeline
changes
Query
Workbench
Powered by Solr 6.3 and Spark 1.6.3
• Support for Machine Learning
Models
• Additional Kerberos support
• New Query time joins
•New SQL/Streaming features and
operators
•Better support for high cardinality
field faceting
• Improved Memory Mgmt and Perf.
• Query Planner Optimizations
• Faster null-safe joins and columnar
caching performance
• ML Pipeline Persistance
• SQL queries on flat files
But Wait, There’s More!
• PySpark, Notebook support (Zeppelin,
Jupyter)
• Clickstream Boosting Out of the Box
• Numerous Performance Improvements
• Streaming document support and better
large/archival doc support
• Faster, more scalable aggregations
• Distributed Index Pipelines
• Content-based Recommendations Pipeline
• More connectivity at Query Time via the
Query REST/RPC Stage
A SQL Engine Unlike Any Other
Basic Features
• Connect to any Spark Data Source for cross data source joins
• Standard connectivity with ODBC/JDBC so all your existing SQL tools work
• Leverages both Spark and Solr SQL for intelligent query planning and optimizations
Fusion Only Features
• Full Solr syntax for search and streaming expressions available means leveraging:
• Solr Query Syntax for the ultimate sort function
• Graph Traversals for complex relationships
• Machine Learning scoring functions built-in
• First class support for text, numerics, spatial and custom data types
• The Fusion Catalog makes it easy to create views and enforce data governance
• Create views for common scenarios and to increase performance of high-usage queries
• Overlay Fusion security for total control of data assets
Searching for Pretty Pictures
• Harness the power of Fusion with
existing Business Intelligence
tools and Data Science
Notebooks
• Tableau Public, Desktop, etc. all
work with Fusion 3
• Works with Apache Zeppelin,
Jupyter/iPython and others
Resources
• Download Fusion 3.0: https://lucidworks.com/download/
• Contact Us: https://lucidworks.com/company/contact/
• Fusion documentation: https://doc.lucidworks.com/index.html
• Webinar recording will be available at http://lucidworks.com
• Tableau Public Web Data Connector: https://github.com/lucidworks/tableau-fusion-wdc

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Fusion 3 Overview Webinar

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  • 5. 2 Legacy search approaches don’t scale and don’t perform.
  • 6. Understanding users and their data is too slow and too complicated. 3
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  • 8. Next Gen Results. No PHd. Required.
  • 9. • Machine Driven: Signals aggregation learn and automatically tune relevancy and drive recommendations out of the box. • Rules when you need them: Point- and-click query pipeline configuration and rules module allow fine-grained control of results. • Science, not guessing: Experiment management and bandits do the heavy lifting of systematically testing new ideas
  • 11. • Over 50 connectors and a robust parsing framework to seamlessly ingest all your data • Powerful pipeline stages: Customize fields, stages, synonyms, boosts, facets, and dozens of other powerful search stages. • Point and click Indexing configuration and iterative simulation of results for full control over your ETL process • Your security model enforced end-to-end from ingest to search across your different datasources
  • 12. Best in class open source
  • 13. • 24/7/365 Customer Success: Support and advice for all of your search and machine learning problems • Backed by the team that makes Solr • Enables you to attract and grow top talent in your organization Best in class open source
  • 14. Fusion Architecture SECURITY BUILT-IN Shards Shards Apache Solr Apache Zookeeper ZK 1 Leader Election Load Balancing ZK N Shared Config Management Worker Worker Apache Spark Cluster Manager RESTAPI Admin UI Lucidworks View LOGS FILE WEB DATABASE CLOUD HDFS(Optional) Core Services • • • ETL and Query Pipelines Recommenders/Signals NLP Machine Learning Alerting and Messaging Security Connectors Scheduling
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  • 16. Index Workbench Parsers as 1st class citizens Change data before it causes problems View/configure pipeline changes
  • 18. Powered by Solr 6.3 and Spark 1.6.3 • Support for Machine Learning Models • Additional Kerberos support • New Query time joins •New SQL/Streaming features and operators •Better support for high cardinality field faceting • Improved Memory Mgmt and Perf. • Query Planner Optimizations • Faster null-safe joins and columnar caching performance • ML Pipeline Persistance • SQL queries on flat files
  • 19. But Wait, There’s More! • PySpark, Notebook support (Zeppelin, Jupyter) • Clickstream Boosting Out of the Box • Numerous Performance Improvements • Streaming document support and better large/archival doc support • Faster, more scalable aggregations • Distributed Index Pipelines • Content-based Recommendations Pipeline • More connectivity at Query Time via the Query REST/RPC Stage
  • 20. A SQL Engine Unlike Any Other
  • 21. Basic Features • Connect to any Spark Data Source for cross data source joins • Standard connectivity with ODBC/JDBC so all your existing SQL tools work • Leverages both Spark and Solr SQL for intelligent query planning and optimizations
  • 22. Fusion Only Features • Full Solr syntax for search and streaming expressions available means leveraging: • Solr Query Syntax for the ultimate sort function • Graph Traversals for complex relationships • Machine Learning scoring functions built-in • First class support for text, numerics, spatial and custom data types • The Fusion Catalog makes it easy to create views and enforce data governance • Create views for common scenarios and to increase performance of high-usage queries • Overlay Fusion security for total control of data assets
  • 23. Searching for Pretty Pictures • Harness the power of Fusion with existing Business Intelligence tools and Data Science Notebooks • Tableau Public, Desktop, etc. all work with Fusion 3 • Works with Apache Zeppelin, Jupyter/iPython and others
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  • 25. Resources • Download Fusion 3.0: https://lucidworks.com/download/ • Contact Us: https://lucidworks.com/company/contact/ • Fusion documentation: https://doc.lucidworks.com/index.html • Webinar recording will be available at http://lucidworks.com • Tableau Public Web Data Connector: https://github.com/lucidworks/tableau-fusion-wdc