6 Steps to Faster Data Blending Using Your Data Warehouse



Similar documents
7 Steps to Successful Data Blending for Excel

6 Steps to Data Blending for Spatial Analytics

The Definitive Guide to Data Blending. White Paper

The Definitive Guide to Preparing Your Data for Tableau

Informatica for Tableau Best Practices to Derive Maximum Value

A Buyer s Guide to Customer Analytics

White Paper. Thirsting for Insight? Quench It With 5 Data Management for Analytics Best Practices.

Tableau Online. Understanding Data Updates

Powerful analytics. and enterprise security. in a single platform. microstrategy.com 1

UNLEASHING THE VALUE OF THE TERADATA UNIFIED DATA ARCHITECTURE WITH ALTERYX

A Guide to Preparing Your Data for Tableau

Data Doesn t Communicate Itself Using Visualization to Tell Better Stories

How to Navigate Big Data with Ad Hoc Visual Data Discovery Data technologies are rapidly changing, but principles of 30 years ago still apply today

Cisco Data Preparation

Ignite Your Creative Ideas with Fast and Engaging Data Discovery

Bring your data to life with Microsoft Power BI. Peter Myers Bitwise Solutions

Next-Generation Cloud Analytics with Amazon Redshift

BIG DATA ANALYTICS REFERENCE ARCHITECTURES AND CASE STUDIES

Analytic Platform Comparison: Alteryx versus SAS Institute

Empower Individuals and Teams with Agile Data Visualizations in the Cloud

5 Keys to Unlocking the Big Data Analytics Puzzle. Anurag Tandon Director, Product Marketing March 26, 2014

White Paper. Humanizing Big Data. A White Paper from CITO Research

Hadoop & SAS Data Loader for Hadoop

The DIY Guide to Dazzling Data. It s never been easier to delight colleagues, dazzle bosses, and boost your value in the workplace.

A Look at Self Service BI with SAP Lumira Natasha Kishinevsky Dunn Solutions Group SESSION CODE: 1405

Oracle Big Data Discovery Unlock Potential in Big Data Reservoir

Delivering Analytics that Scale

TOP 8 TRENDS FOR 2016 BIG DATA

Capitalize on Big Data for Competitive Advantage with Bedrock TM, an integrated Management Platform for Hadoop Data Lakes

Five Steps to Integrate SalesForce.com with 3 rd -Party Systems and Avoid Most Common Mistakes

Advanced Big Data Analytics with R and Hadoop

SAP Agile Data Preparation

An Evaluation of No-Cost Business Intelligence Tools. Claire Walsh

Alteryx + Qlik: Driving Business Discovery with Predictive Analytics. White Paper

IR Tools on a Shoestring

INTELLIGENT BUSINESS STRATEGIES WHITE PAPER

Introduction to Hadoop HDFS and Ecosystems. Slides credits: Cloudera Academic Partners Program & Prof. De Liu, MSBA 6330 Harvesting Big Data

Tableau and the Enterprise Data Warehouse: The Visual Approach to Business Intelligence

A Comprehensive Review of Self-Service Data Visualization in MicroStrategy. Vijay Anand January 28, 2014

How To Make Sense Of Data With Altilia

Data Analytics Infrastructure

High-Volume Data Warehousing in Centerprise. Product Datasheet

Big Data Architecture & Analytics A comprehensive approach to harness big data architecture and analytics for growth

Build a Streamlined Data Refinery. An enterprise solution for blended data that is governed, analytics-ready, and on-demand

Tableau Metadata Model

Best Practices for Deploying Managed Self-Service Analytics and Why Tableau and QlikView Fall Short

Sisense. Product Highlights.

An Oracle White Paper November Leveraging Massively Parallel Processing in an Oracle Environment for Big Data Analytics

QLIKVIEW INTEGRATION TION WITH AMAZON REDSHIFT John Park Partner Engineering

Big Data, Cloud Computing, Spatial Databases Steven Hagan Vice President Server Technologies

Analyze This! Get Better Insight with Power BI for Office 365

Unleash your intuition

Lost in Space? Methodology for a Guided Drill-Through Analysis Out of the Wormhole

Oracle Big Data SQL Technical Update

Using Tableau Software with Hortonworks Data Platform

Native Connectivity to Big Data Sources in MSTR 10

Salesforce.com and MicroStrategy. A functional overview and recommendation for analysis and application development

Bringing the Power of SAS to Hadoop. White Paper

MapR: Best Solution for Customer Success

<no narration for this slide>

BIG DATA Impact on DMOs. TTRA June 21, 2013

IBM Analytics The fluid data layer: The future of data management

5 Big Data Use Cases to Understand Your Customer Journey CUSTOMER ANALYTICS EBOOK

Three Open Blueprints For Big Data Success

The QlikView Business Discovery platform

#mstrworld. No Data Left behind: 20+ new data sources with new data preparation in MicroStrategy 10

SQLstream 4 Product Brief. CHANGING THE ECONOMICS OF BIG DATA SQLstream 4.0 product brief

AtScale Intelligence Platform

Qlik Sense Enterprise

Microsoft Power BI. Nov 21, 2015

WebFOCUS InfoDiscovery

Databricks. A Primer

Safe Harbor Statement

Understanding the Value of In-Memory in the IT Landscape

Deploy. Friction-free self-service BI solutions for everyone Scalable analytics on a modern architecture

Resource Optimization Settings New to 9.5: Cache Data for Relational Databases Select Tool & Filter Tool: Optimize by Reducing Data...

Databricks. A Primer

6.0, 6.5 and Beyond. The Future of Spotfire. Tobias Lehtipalo Sr. Director of Product Management

ORACLE SERVICE CLOUD GUIDE: HOW TO IMPROVE REPORTING PERFORMANCE

Actian SQL in Hadoop Buyer s Guide

BIG Data Analytics Move to Competitive Advantage

Integrated Big Data: Hadoop + DBMS + Discovery for SAS High Performance Analytics

Big Data & QlikView. Democratizing Big Data Analytics. David Freriks Principal Solution Architect

Relational Databases for the Business Analyst

PowerPivot Microsoft s Answer to Self-Service Reporting

Power BI as a Self-Service BI Platform:

An Enterprise Framework for Business Intelligence

Oracle Big Data Discovery The Visual Face of Hadoop

The Business Analyst s Guide to Hadoop

Transcription:

6 Steps to Faster Data Blending Using Your Data Warehouse

Self-Service Data Blending and Analytics Dynamic market conditions require companies to be agile and decision making to be quick meaning the days of waiting for a centralized IT staff or data scientists to prepare data for insights are far gone. Connect to all the data types and locations where insight may reside Self-service data blending allows line-of-business analysts to access, cleanse, and join data quickly and easily, and deliver insights faster. With self-service data blending and analytics, line-of-business analysts can: Connect to all data where insight may reside regardless of location spreadsheets, local databases, corporate databases, cloud applications, social media, and more Blend your data without having to rely on IT, SQL coding or data scientists Prepare data by removing redundant or unnecessary data, and apply rules to fill in data that is missing or incorrect Blend multiple data sources quickly and easily without coding or IT involvement Deliver faster and deeper insights such as predictive and spatial analysis Share the results easily as static reports, or for data discovery in visualization software such as Tableau or Qlik Perform advanced analytics and share the results with business decision makers

What is in-database data blending? With the emergence of data from social media, cloud applications and sensors, analysts have a higher volume of data to deal with than ever before, making Big Data even more unwieldy. When dealing with extremely large datasets, it s best to limit movement of the data to mitigate network bottlenecks and processing latency. After all, why move a massive data file from a data warehouse to your desktop when all you want are a few pieces of data from it? In-database data blending allows you to push the processing steps into the database and retrieve only the data you need, rather than pulling the entire dataset to the processing location (typically, your desktop). With in-database data blending and analytics you can: Avoid the need for IT or specialized analytics staff to write SQL code or other query languages for blending and preparing data Leverage existing Big Data platform investments and ecosystems Utilize the in-database processing power of the data warehouse to answer new questions faster Data Warehouse In-database blending: Alteryx Analytic Process Blend, Prepare, Clean RESULTS

Recipe for In-Database Data Blending 1 2 3 4 Identify all of your data sources Determine the best place to work with your data Connect to your data Cleanse, filter and transform your data Ingredients you need A copy of Alteryx alteryx.com/download A list of the data sources you want to blend Access to each database or source you are going to use A rough specification of the dataset you need A clear understanding of the analysis you want to deliver 5 Join data from multiple sources 6 Stream data from the data warehouse See See demo demo videos videos of on in-database Data Blending blending at at alteryx.com/ alteryx.com/ solutions/data-blending solutions/in-database-processing

1 Identify all of your data sources An ever-increasing volume and variety of data is being stored in a range of locations local hard drives, data warehouses, and the cloud making it difficult to aggregate data in one location. Alteryx gives you the ability to access and blend data types from any source, without size limitations, and all within a single view: Bring in data from spreadsheets, databases, and other common file formats Access data from corporate data warehouses, thirdparty data providers, and cloud-based storage such as Amazon S3 or Redshift Incorporate cloud-based data from Salesforce, Marketo, Google Analytics and more Connect to social media feeds such as Twitter and Foursquare to include customer sentiment Tip: Work with IT to ensure you have the right credentials to access your data sources and databases. Amazon S3 Download tool Google Analytics tool Twitter tool Salesforce Input tool Marketo Input tool

2 Determine the best place to work with your data When working with data stored in data warehouses such as Oracle, SQL Server, Amazon Redshift, Cloudera Impala, Spark and Teradata, you have two options: 1. Move an entire dataset from the data warehouse into Alteryx for blending with other data, or 2. Push the processing from Alteryx into the data warehouse to segregate just the data you need. When working with extremely large datasets, you will find significantly improved performance with the second option because you re limiting movement of vast amounts of data. The intuitive Alteryx interface allows you to quickly connect to your data at the source. In addition, the flexibility of Alteryx provides bidirectional functionality, enabling you to easily push data into the database, or pull data out. Tip: If you re not working with large datasets, you can easily stream data, or a data table, out of a database with the Data Stream Out tool.

3 Connect to your data The intuitive Alteryx interface allows you to quickly connect to your data regardless of location, size or format. When working with large datasets, the in-database tools in Alteryx make it easy to connect to the data you need, or easily pull a subset of that data. Use the Connect In-DB tool to establish a connection directly inside the data warehouse. If you are working with very large datasets and don t need all entries, use the Sample In-DB tool to limit the amount of data records, optimizing runtime and throughput. Use the Input tool to connect to other external datasets and use the Data Stream In tool to push the data into the database. Connect In-DB tool: Connect to a variety of data directly in databases such as AWS, Cloudera, Oracle, and SQL Server Input tool Sample In-DB tool: Work with a subset of data within your database if you don t need all of it Data Stream In tool Push external datasets into your database to blend and analyze data in one location

4 Cleanse, filter and transform your data Alteryx makes it easy to cleanse and filter large volumes of data by pushing the data preparation steps to where large datasets reside. The Filter In-DB tool enables you to query records and return those records that meet the specified criteria, such as location, brand, or product SKU, or to filter out null values. The Select In-DB tool allows you to select the fields that contain the information you need, plus rename and re-sequence fields, modify data types, and add field descriptions. The Formula In-DB tool, a powerful processor of data, allows you to perform a broad variety of calculations and/or operations to create new data fields or update existing fields. The Summarize In-DB tool can group, sum, count distinct fields, and more. Filter In-DB tool: Filter the data by a specific product, brand or service Formula In-DB tool: Understand the likelihood of a purchase Select In-DB tool: Eliminate unnecessary fields, or rename key fields Summarize In-DB tool: Summarize the data by key groups such as country

5 Join data from multiple sources Alteryx provides analysts with an intuitive workflow for data blending that leads to deeper insights within hours, not the weeks typical of traditional approaches. This is all done in a single workflow, with no programming required. Use the Data Stream In tool to import external files into your data warehouse for in-database blending and analysis. Use the Join In-DB tool to combine datasets based on common fields or record position. In the joined output, each row contains the data from both inputs. Tip: The Join in-db and Union In-DB tools merge datasets differently. The Join In-DB tool combines data streams based on common fields. The Union In-DB tool combines each stream of data into a single stream and can be used when bringing in multiple data streams. Input tool: Promotional data Data Stream In tool: Bring your promotional data into your database for in-database analytics Join In-DB tool: Combine data streams based on common fields Connect In-DB tool: Connect to customer purchase data table in-database

6 Stream data from the data warehouse Once you ve joined and prepared your data, Alteryx makes it easy to stream it from the data warehouse to feed your downstream analytic workflow. Once it is in Alteryx it acts just like any other data source, and allows you to perform typical data blending and advanced analytics functions in Alteryx, including predictive analysis, spatial analysis or exporting for visualization in Qlik or Tableau. Stream data from your data warehouse into Alteryx using the Data Stream Out tool. Limit the replication of datasets by using the Write In-DB tool to create or update a table directly in the database for future use. Tip: Use Alteryx Server to schedule updates to the files, ensuring analysts are working with up-to-date transactional information. Output data in a wide variety of flat file and relational database formats. Data Stream Out tool: Use the Data Stream Out tool to feed downstream analytic process Write In-DB tool: Use the In-DB stream tool to create or update a table directly in the database

Alteryx Supports Ambit Energy s Customer Strategy with Faster Data Blending and Predictive Insights Ambit Energy uses Alteryx to quickly and easily blend large datasets within a database, and build predictive models to improve customer engagement, all without IT or data scientist involvement. Deeper Insights Accessed, cleansed, and appended millions of customer records, product combinations, and all variable attributes to better understand existing customer profiles, and predict future behaviors and probability of attrition. Hours vs. Weeks Reduced time to prepare customer behavior data and create predictive insights in hours instead of weeks by pushing data blending processes down into the database and leveraging the predictive tools in Alteryx, resulting in a flexible and nimble analytic team that delivers insights faster. Intuitive Workflow Created a collaborative analytic workflow that allowed the entire analytic logic to be easily understood by the line-of-business users, removing the black box of analytics and ensuring that the delivered analytics provided actionable insights to improve customer engagement. The simple drag-and-drop interface of Alteryx empowers my team to perform indatabase data blending and build predictive models without requiring them to spend hours coding, enabling us to deliver faster and deeper insights that impact our bottom line. Lloyd Tokerud Director of Analytics at Ambit Energy

Why should you use Alteryx for data blending and analytics? An ever-increasing volume and variety of data is being stored by analysts in a range of locations local hard drives, data warehouses, and the cloud making it difficult to aggregate data in one location. But, it doesn t have to be. With Alteryx, you can: Access and blend data from wherever insight resides: Excel spreadsheets, corporate databases, cloud-based applications, and much more Our analysts are doing less low-value work and more high-value, satisfying work, which keeps them energized and produces a greater return on investment of time for the company. Tom Sturgeon Director of Business Analytics, IT Business, Schneider Electric US Blend multiple data sources quickly and easily using an intuitive workflow that doesn t require IT or coding Deliver faster and deeper insights through advanced analytics such as predictive and spatial analysis

Alteryx Delivers on the Three Things Analysts Need Most Allows them to access all the data they need, when they need it, and analyze it in the optimal manner Gives them a single intuitive workflow for a complete data blending & advanced analytics process Delivers deeper business insight without relying on others for spatial or predictive analysis

Next Steps Learn more about in-database data blending and analytics in Alteryx alteryx.com/solutions/in-database-processing Try in-database data blending and analytics in Alteryx alteryx.com/download View Customer videos alteryx.com/customers

6 Steps to Faster Data Blending Your Data Warehouse Thousands of data analysts worldwide rely on Alteryx daily. alteryx.com/solutions/in-database-processing