SlideShare ist ein Scribd-Unternehmen logo
1 von 33
Downloaden Sie, um offline zu lesen
Best Practice Strategies to
             Clean up and Maintain Your
                     Database

                                   Hether Ghelf
             Senior Consultant, Project Manager & Data Hygiene Lead




22/03/2013                              1
GARBAGE IN, GARBAGE OUT
       • Bad inputs make bad outputs

       • In lead generation and overall marketing, a piece of information is
         considered “garbage” if it doesn’t contribute positively to the
         campaign.

       • If you’ve got misleading, inaccurate, or incomplete data, then you’ve
         got garbage on your hands.




22/03/2013                                 2
CHALLENGES & REASONS FOR MESSY DATA

       Staffing Issues

       • Do you have a high data entry staff turnover?
       • Are you stretching existing resources a long way?




22/03/2013                                3
CHALLENGES & REASONS FOR MESSY DATA

       Limited Time / Budget

       • Do you struggle finding the time or money for proper database training
         for your employees?




22/03/2013                                4
CHALLENGES & REASONS FOR MESSY DATA

       Merges and conversions within your databases

       • Have you recently merged 2+ databases?
         - Were duplicate records, codes, attributes taken care prior to the
           merge?

       • Did you convert from one database to another?
         - Were pre-conversion clean up activities and post conversion clean
           up activities scheduled?



             Converting from one database to another is
             a huge task and shouldn’t be taken lightly!

22/03/2013                                 5
CHALLENGES & REASONS FOR MESSY DATA

       Using external sources

       • Do you bring in data from 3rd party vendors or external lists?
       • Have you ensured the data is formatted to fit your data file prior to
         importing?




22/03/2013                                  6
CHALLENGES & REASONS FOR MESSY DATA

       Documentation for Policy and Procedures

       • Are your policy and procedures documents non existent or out-dated?
       • Does your organisation have a Data Entry Standards (DES) document
         to assist with “how to” properly enter data?




              A policy and procedures document
             and DES are two of the top documents
                  organisations should have!



22/03/2013                               7
CHALLENGES & REASONS FOR MESSY DATA

       Resistance to change

       • Have you stopped to ask why you enter in data the way you do?
       • Do you have multiple people entering data different ways?




22/03/2013                              8
WHERE TO START - STEPS TO TAKE
       1. Receive support from the top down

       2. Audit/Assessment

       3. Areas & Issues Identified
             - create a clean up plan/strategy
             - start with the most important areas


       4. Begin Data Cleansing

       5. Ask for Help

       6. Be Proactive – fill in the gaps

       7. Maintain Your Database

22/03/2013                                           9
STEP 1 – RECEIVE SUPPORT FROM THE TOP DOWN
       • CEO

       • Executive Committee

       • Fundraising Manager

       • Fundraising Staff

       • Program & Other Department Staff

       • Data Entry Staff

       • Volunteers



22/03/2013                             10
STEP 2 - AUDIT/ASSESSMENT

       Review your database structure
       • Codes, Attributes, Notes, Gift info, Reports, User Access, Process
       • EVERYTHING!

       Create initial queries/groupings




22/03/2013                                11
STEP 2 - AUDIT/ASSESSMENT
       • Examples of groupings/queries:
             - Formatting of title, first name, middle name, surname, suffix, address lines,
               suburb, state, postcode, gender
             - Blank fields in all of the above
             - Where there’s a spouse but the primary addressee and salutations are
               singular
             - If marked deceased, is the spouse still receiving the mailings; if yes, how are
               they being addressed? Is it still Mr & Mrs? Correct the record so you don’t
               offend anyone
             - Marked as do not solicit, do not call but have been sent a recent appeal or
               called during a recent calling campaign
             - Missing Constituent Codes, Solicit Codes, Attributes
             - Review code tables or drop down menu selections regularly and eliminate
               duplicates or misspellings, especially after data has just been imported into
               the database
             - Return to sender mail – mark as invalid address, don’t just throw it away



22/03/2013                                         12
STEP 2 - AUDIT/ASSESSMENT
       • Examples of groupings/queries continued…
             -   Male title/female or unknown gender
             -   Female title/male or unknown gender
             -   Title Ms, Mrs, Miss and unknown gender
             -   Blank spouse or contact title
             -   Marital status with deceased spouse
             -   Single with spouse
             -   Gifts with a blank campaign, appeal, letter code, etc
             -   Gifts not receipted or acknowledged




22/03/2013                                          13
STEP 2 - AUDIT/ASSESSMENT
       • Other areas to consider reviewing/updating:
             -   Required fields
             -   Security Groups and/or User Access
             -   Existing reports, queries/groupings and exports
             -   Duplicate records – find and merge




22/03/2013                                         14
STEP 2 – AUDIT/ASSESSMENT

       Start talking!

       • Have you asked for input from staff/departments who obtain
         information from the database? Or from those who input data?




22/03/2013                              15
STEP 3 – AREAS & ISSUES IDENTIFIED

       • Review and fine-tune the queries/groupings you created in Step 2

       • Review notes from talking with staff/departments




22/03/2013                                16
STEP 3 – AREAS & ISSUES IDENTIFIED

       • Create a Clean Up Plan/Strategy and goals




22/03/2013                              17
STEP 4 – DATA CLEANSING


       Start Data Cleansing!




             Before making any changes to be
              sure to back up your database!



22/03/2013                     18
STEP 5 – ASK FOR HELP

       Ask for help Internally

       • Knowledgeable staff within your organisation

       And for help externally if needed

       • Consultants or technical experts
         to run database audits
       • Blackbaud Data Hygiene Services




22/03/2013                                 19
STEP 6 – BE PROACTIVE

       Be Proactive

       Be Proactive

       Be Proactive




22/03/2013                     20
STEP 7: MAINTAIN YOUR DATABASE


             After you have spent time, energy
                 and money cleansing your
              database, put steps in place to
                        maintain it!




22/03/2013                    21
STEP 7 - MAINTAINING YOUR DATABASE

       Assign roles within your organisation
       • Database Administrator (DBA) and/or Super User is a must
       • Set their primary responsibility to keeping your database clean and
         maintained

       Have a back up!
       • Have a back up DBA that can step
           up in case your primary DBA is
           out sick or leaves the organisation




22/03/2013                                22
STEP 7 - MAINTAINING YOUR DATABASE

       Update (or create) those important documents!

       • Policies and Procedures
       • Data Entry Standards (DES) document




22/03/2013                             23
STEP 7 - MAINTAINING YOUR DATABASE
       Example of Policy & Procedures document:




22/03/2013                           24
STEP 7 - MAINTAINING YOUR DATABASE
       Example of Data Entry Standards document:




22/03/2013                           25
STEP 7 - MAINTAINING YOUR DATABASE

       Keep your staff in the know!

       • Train new and existing staff in system functionality
       • Provide refresher training to staff on a regular basis (quarterly)
       • Hold regular data entry staff meetings (weekly/bi-weekly)




22/03/2013                                  26
STEP 7 - MAINTAINING YOUR DATABASE

       Look AND Listen

       • Check new staff’s data entry –
         help them become comfortable
         with how they should be entering
         data

       • Talk to your staff - ask what staff like
          doing in the database and what
          they don’t




22/03/2013                                   27
STEP 7 - MAINTAINING YOUR DATABASE

       Be prepared for upcoming campaigns

       Calling Campaigns:

       • Request staff or volunteers to verify name, address, email, mobile
       • Create a template for entering the new/updated information




22/03/2013                                28
STEP 7 - MAINTAINING YOUR DATABASE

       Mailing Campaigns:

       • Check your queries/groupings to ensure they have the correct criteria
       • Run your addresses through a data hygiene service or Australia Post
         one or twice a year




22/03/2013                                29
STEP 7 - MAINTAINING YOUR DATABASE

       Always continue auditing and cleaning up your database

              And never stop searching for areas of improvement




                 Once your database is at a
               manageable state, it will be easier
                        to maintain!




22/03/2013                            30
TAKE AWAYS
       1. Your database is key to your fundraising

       2. Remember… garbage in, garbage out

       3. Get started – don’t keep delaying the inevitable

       4. MAINTAIN YOUR DATABASE

       5. Ask for HELP




22/03/2013                                31
HOW BLACKBAUD CAN HELP
       • Blackbaud’s Consulting Services Department can assist you with your
         database clean up, creation of your Policy & Procedures document
         and Data Entry Standards document.

       • Blackbaud’s Data Hygiene Services include:
         – Address append and verification
         – Phone append and verification for telemarketing and other contact
           purposes
         – Deduplication
         – Provides deep insight into your existing data
         – Offers data elements to enhance your data to create a richer asset
           for your organisation




22/03/2013                                32
THANK YOU!

             Questions?



22/03/2013        33

Weitere ähnliche Inhalte

Was ist angesagt?

Data Governance Trends - A Look Backwards and Forwards
Data Governance Trends - A Look Backwards and ForwardsData Governance Trends - A Look Backwards and Forwards
Data Governance Trends - A Look Backwards and ForwardsDATAVERSITY
 
The Death of the Star Schema
The Death of the Star SchemaThe Death of the Star Schema
The Death of the Star SchemaDATAVERSITY
 
Enterprise Architecture vs. Data Architecture
Enterprise Architecture vs. Data ArchitectureEnterprise Architecture vs. Data Architecture
Enterprise Architecture vs. Data ArchitectureDATAVERSITY
 
Modern Metadata Strategies
Modern Metadata StrategiesModern Metadata Strategies
Modern Metadata StrategiesDATAVERSITY
 
Data Catalog for Better Data Discovery and Governance
Data Catalog for Better Data Discovery and GovernanceData Catalog for Better Data Discovery and Governance
Data Catalog for Better Data Discovery and GovernanceDenodo
 
Data Democratization for Faster Decision-making and Business Agility (ASEAN)
Data Democratization for Faster Decision-making and Business Agility (ASEAN)Data Democratization for Faster Decision-making and Business Agility (ASEAN)
Data Democratization for Faster Decision-making and Business Agility (ASEAN)Denodo
 
Session découverte de la Logical Data Fabric soutenue par la Data Virtualization
Session découverte de la Logical Data Fabric soutenue par la Data VirtualizationSession découverte de la Logical Data Fabric soutenue par la Data Virtualization
Session découverte de la Logical Data Fabric soutenue par la Data VirtualizationDenodo
 
DAS Slides: Building a Future-State Data Architecture Plan - Where to Begin?
DAS Slides: Building a Future-State Data Architecture Plan - Where to Begin?DAS Slides: Building a Future-State Data Architecture Plan - Where to Begin?
DAS Slides: Building a Future-State Data Architecture Plan - Where to Begin?DATAVERSITY
 
Data Quality: A Raising Data Warehousing Concern
Data Quality: A Raising Data Warehousing ConcernData Quality: A Raising Data Warehousing Concern
Data Quality: A Raising Data Warehousing ConcernAmin Chowdhury
 
You Need a Data Catalog. Do You Know Why?
You Need a Data Catalog. Do You Know Why?You Need a Data Catalog. Do You Know Why?
You Need a Data Catalog. Do You Know Why?Precisely
 
How a Semantic Layer Makes Data Mesh Work at Scale
How a Semantic Layer Makes  Data Mesh Work at ScaleHow a Semantic Layer Makes  Data Mesh Work at Scale
How a Semantic Layer Makes Data Mesh Work at ScaleDATAVERSITY
 
Data quality metrics infographic
Data quality metrics infographicData quality metrics infographic
Data quality metrics infographicIntellspot
 
Metadata Strategies
Metadata StrategiesMetadata Strategies
Metadata StrategiesDATAVERSITY
 
Data-Ed Webinar: Data Quality Success Stories
Data-Ed Webinar: Data Quality Success StoriesData-Ed Webinar: Data Quality Success Stories
Data-Ed Webinar: Data Quality Success StoriesDATAVERSITY
 
Data Catalogs Are the Answer – What is the Question?
Data Catalogs Are the Answer – What is the Question?Data Catalogs Are the Answer – What is the Question?
Data Catalogs Are the Answer – What is the Question?DATAVERSITY
 
Who Should Own Data Governance – IT or Business?
Who Should Own Data Governance – IT or Business?Who Should Own Data Governance – IT or Business?
Who Should Own Data Governance – IT or Business?DATAVERSITY
 
Five Things to Consider About Data Mesh and Data Governance
Five Things to Consider About Data Mesh and Data GovernanceFive Things to Consider About Data Mesh and Data Governance
Five Things to Consider About Data Mesh and Data GovernanceDATAVERSITY
 
Data Quality: principles, approaches, and best practices
Data Quality: principles, approaches, and best practicesData Quality: principles, approaches, and best practices
Data Quality: principles, approaches, and best practicesCarl Anderson
 
Data Governance Best Practices
Data Governance Best PracticesData Governance Best Practices
Data Governance Best PracticesDATAVERSITY
 
Data Modeling for Big Data
Data Modeling for Big DataData Modeling for Big Data
Data Modeling for Big DataDATAVERSITY
 

Was ist angesagt? (20)

Data Governance Trends - A Look Backwards and Forwards
Data Governance Trends - A Look Backwards and ForwardsData Governance Trends - A Look Backwards and Forwards
Data Governance Trends - A Look Backwards and Forwards
 
The Death of the Star Schema
The Death of the Star SchemaThe Death of the Star Schema
The Death of the Star Schema
 
Enterprise Architecture vs. Data Architecture
Enterprise Architecture vs. Data ArchitectureEnterprise Architecture vs. Data Architecture
Enterprise Architecture vs. Data Architecture
 
Modern Metadata Strategies
Modern Metadata StrategiesModern Metadata Strategies
Modern Metadata Strategies
 
Data Catalog for Better Data Discovery and Governance
Data Catalog for Better Data Discovery and GovernanceData Catalog for Better Data Discovery and Governance
Data Catalog for Better Data Discovery and Governance
 
Data Democratization for Faster Decision-making and Business Agility (ASEAN)
Data Democratization for Faster Decision-making and Business Agility (ASEAN)Data Democratization for Faster Decision-making and Business Agility (ASEAN)
Data Democratization for Faster Decision-making and Business Agility (ASEAN)
 
Session découverte de la Logical Data Fabric soutenue par la Data Virtualization
Session découverte de la Logical Data Fabric soutenue par la Data VirtualizationSession découverte de la Logical Data Fabric soutenue par la Data Virtualization
Session découverte de la Logical Data Fabric soutenue par la Data Virtualization
 
DAS Slides: Building a Future-State Data Architecture Plan - Where to Begin?
DAS Slides: Building a Future-State Data Architecture Plan - Where to Begin?DAS Slides: Building a Future-State Data Architecture Plan - Where to Begin?
DAS Slides: Building a Future-State Data Architecture Plan - Where to Begin?
 
Data Quality: A Raising Data Warehousing Concern
Data Quality: A Raising Data Warehousing ConcernData Quality: A Raising Data Warehousing Concern
Data Quality: A Raising Data Warehousing Concern
 
You Need a Data Catalog. Do You Know Why?
You Need a Data Catalog. Do You Know Why?You Need a Data Catalog. Do You Know Why?
You Need a Data Catalog. Do You Know Why?
 
How a Semantic Layer Makes Data Mesh Work at Scale
How a Semantic Layer Makes  Data Mesh Work at ScaleHow a Semantic Layer Makes  Data Mesh Work at Scale
How a Semantic Layer Makes Data Mesh Work at Scale
 
Data quality metrics infographic
Data quality metrics infographicData quality metrics infographic
Data quality metrics infographic
 
Metadata Strategies
Metadata StrategiesMetadata Strategies
Metadata Strategies
 
Data-Ed Webinar: Data Quality Success Stories
Data-Ed Webinar: Data Quality Success StoriesData-Ed Webinar: Data Quality Success Stories
Data-Ed Webinar: Data Quality Success Stories
 
Data Catalogs Are the Answer – What is the Question?
Data Catalogs Are the Answer – What is the Question?Data Catalogs Are the Answer – What is the Question?
Data Catalogs Are the Answer – What is the Question?
 
Who Should Own Data Governance – IT or Business?
Who Should Own Data Governance – IT or Business?Who Should Own Data Governance – IT or Business?
Who Should Own Data Governance – IT or Business?
 
Five Things to Consider About Data Mesh and Data Governance
Five Things to Consider About Data Mesh and Data GovernanceFive Things to Consider About Data Mesh and Data Governance
Five Things to Consider About Data Mesh and Data Governance
 
Data Quality: principles, approaches, and best practices
Data Quality: principles, approaches, and best practicesData Quality: principles, approaches, and best practices
Data Quality: principles, approaches, and best practices
 
Data Governance Best Practices
Data Governance Best PracticesData Governance Best Practices
Data Governance Best Practices
 
Data Modeling for Big Data
Data Modeling for Big DataData Modeling for Big Data
Data Modeling for Big Data
 

Andere mochten auch

Data Quality - The Cleansing Process
Data Quality - The Cleansing ProcessData Quality - The Cleansing Process
Data Quality - The Cleansing ProcessInfoCheckPoint
 
Presentation on Data Cleansing
Presentation on Data CleansingPresentation on Data Cleansing
Presentation on Data Cleansingng8
 
Brief Introduction to the 12 Steps of Evaluation Data Cleaning
Brief Introduction to the 12 Steps of Evaluation Data CleaningBrief Introduction to the 12 Steps of Evaluation Data Cleaning
Brief Introduction to the 12 Steps of Evaluation Data CleaningJennifer Morrow
 
New Use Cases for DAM in the Enterprise
New Use Cases for DAM in the EnterpriseNew Use Cases for DAM in the Enterprise
New Use Cases for DAM in the EnterpriseNuxeo
 
빠르고쉬운대출『LG777』.『XYZ』무자본창업 운전자보험만기환급
빠르고쉬운대출『LG777』.『XYZ』무자본창업 운전자보험만기환급빠르고쉬운대출『LG777』.『XYZ』무자본창업 운전자보험만기환급
빠르고쉬운대출『LG777』.『XYZ』무자본창업 운전자보험만기환급hslkdfjs
 
Remaining Agile with Billions of Documents: Appboy and Creative MongoDB Schemas
Remaining Agile with Billions of Documents: Appboy and Creative MongoDB SchemasRemaining Agile with Billions of Documents: Appboy and Creative MongoDB Schemas
Remaining Agile with Billions of Documents: Appboy and Creative MongoDB SchemasMongoDB
 
01_HTML - 작심10시간! 나만의 웹사이트 기획하고 만들기
01_HTML - 작심10시간! 나만의 웹사이트 기획하고 만들기01_HTML - 작심10시간! 나만의 웹사이트 기획하고 만들기
01_HTML - 작심10시간! 나만의 웹사이트 기획하고 만들기설리번 프로젝트
 
Tailings dump recovery concept
Tailings dump recovery conceptTailings dump recovery concept
Tailings dump recovery conceptphillip shambare
 
Hadoop from Hive with Stinger to Tez
Hadoop from Hive with Stinger to TezHadoop from Hive with Stinger to Tez
Hadoop from Hive with Stinger to TezJan Pieter Posthuma
 
GIS for Infrastructure Management
GIS for Infrastructure ManagementGIS for Infrastructure Management
GIS for Infrastructure ManagementDavid Puckett
 
Real-time, Sensor-based Monitoring of Shipping Containers
Real-time, Sensor-based Monitoring of Shipping ContainersReal-time, Sensor-based Monitoring of Shipping Containers
Real-time, Sensor-based Monitoring of Shipping Containersbenaam
 
Designing your Product as a Platform
Designing your Product as a PlatformDesigning your Product as a Platform
Designing your Product as a PlatformMicah Laaker
 
Preparing a data migration plan: A practical guide
Preparing a data migration plan: A practical guidePreparing a data migration plan: A practical guide
Preparing a data migration plan: A practical guideETLSolutions
 

Andere mochten auch (20)

Data Cleaning Process
Data Cleaning ProcessData Cleaning Process
Data Cleaning Process
 
Data Quality - The Cleansing Process
Data Quality - The Cleansing ProcessData Quality - The Cleansing Process
Data Quality - The Cleansing Process
 
Data Cleaning Techniques
Data Cleaning TechniquesData Cleaning Techniques
Data Cleaning Techniques
 
Data cleansing
Data cleansingData cleansing
Data cleansing
 
Presentation on Data Cleansing
Presentation on Data CleansingPresentation on Data Cleansing
Presentation on Data Cleansing
 
Brief Introduction to the 12 Steps of Evaluation Data Cleaning
Brief Introduction to the 12 Steps of Evaluation Data CleaningBrief Introduction to the 12 Steps of Evaluation Data Cleaning
Brief Introduction to the 12 Steps of Evaluation Data Cleaning
 
New Use Cases for DAM in the Enterprise
New Use Cases for DAM in the EnterpriseNew Use Cases for DAM in the Enterprise
New Use Cases for DAM in the Enterprise
 
빠르고쉬운대출『LG777』.『XYZ』무자본창업 운전자보험만기환급
빠르고쉬운대출『LG777』.『XYZ』무자본창업 운전자보험만기환급빠르고쉬운대출『LG777』.『XYZ』무자본창업 운전자보험만기환급
빠르고쉬운대출『LG777』.『XYZ』무자본창업 운전자보험만기환급
 
Hadoop Cluster Management
Hadoop Cluster ManagementHadoop Cluster Management
Hadoop Cluster Management
 
Remaining Agile with Billions of Documents: Appboy and Creative MongoDB Schemas
Remaining Agile with Billions of Documents: Appboy and Creative MongoDB SchemasRemaining Agile with Billions of Documents: Appboy and Creative MongoDB Schemas
Remaining Agile with Billions of Documents: Appboy and Creative MongoDB Schemas
 
01_HTML - 작심10시간! 나만의 웹사이트 기획하고 만들기
01_HTML - 작심10시간! 나만의 웹사이트 기획하고 만들기01_HTML - 작심10시간! 나만의 웹사이트 기획하고 만들기
01_HTML - 작심10시간! 나만의 웹사이트 기획하고 만들기
 
Tailings dump recovery concept
Tailings dump recovery conceptTailings dump recovery concept
Tailings dump recovery concept
 
Polymer optical fibers
Polymer optical fibersPolymer optical fibers
Polymer optical fibers
 
SAP Cloud for Service
SAP Cloud for ServiceSAP Cloud for Service
SAP Cloud for Service
 
Hadoop from Hive with Stinger to Tez
Hadoop from Hive with Stinger to TezHadoop from Hive with Stinger to Tez
Hadoop from Hive with Stinger to Tez
 
GIS for Infrastructure Management
GIS for Infrastructure ManagementGIS for Infrastructure Management
GIS for Infrastructure Management
 
Real-time, Sensor-based Monitoring of Shipping Containers
Real-time, Sensor-based Monitoring of Shipping ContainersReal-time, Sensor-based Monitoring of Shipping Containers
Real-time, Sensor-based Monitoring of Shipping Containers
 
Designing your Product as a Platform
Designing your Product as a PlatformDesigning your Product as a Platform
Designing your Product as a Platform
 
Chem Lab Report (1)
Chem Lab Report (1)Chem Lab Report (1)
Chem Lab Report (1)
 
Preparing a data migration plan: A practical guide
Preparing a data migration plan: A practical guidePreparing a data migration plan: A practical guide
Preparing a data migration plan: A practical guide
 

Ähnlich wie Best practice strategies to clean up and maintain your database with Hether Ghelf

Creating a Data Management Plan
Creating a Data Management PlanCreating a Data Management Plan
Creating a Data Management PlanKristin Briney
 
Group 2 Handling and Processing of big data.pptx
Group 2 Handling and Processing of big data.pptxGroup 2 Handling and Processing of big data.pptx
Group 2 Handling and Processing of big data.pptxsalutiontechnology
 
How to Realize Benefits from Data Management Maturity Models
How to Realize Benefits from Data Management Maturity ModelsHow to Realize Benefits from Data Management Maturity Models
How to Realize Benefits from Data Management Maturity ModelsKingland
 
Choosing a new database
Choosing a new databaseChoosing a new database
Choosing a new databaseHazel Jennings
 
DATA SCIENCE AND BIG DATA ANALYTICSCHAPTER 2 DATA ANA.docx
DATA SCIENCE AND BIG DATA ANALYTICSCHAPTER 2 DATA ANA.docxDATA SCIENCE AND BIG DATA ANALYTICSCHAPTER 2 DATA ANA.docx
DATA SCIENCE AND BIG DATA ANALYTICSCHAPTER 2 DATA ANA.docxrandyburney60861
 
BDA TAE 2 (BMEB 83).pptx
BDA TAE 2 (BMEB 83).pptxBDA TAE 2 (BMEB 83).pptx
BDA TAE 2 (BMEB 83).pptxAkash527744
 
DATA WRANGLING presentation.pptx
DATA WRANGLING presentation.pptxDATA WRANGLING presentation.pptx
DATA WRANGLING presentation.pptxAbdullahAbbasi55
 
Data Preprocessing- Data Warehouse & Data Mining
Data Preprocessing- Data Warehouse & Data MiningData Preprocessing- Data Warehouse & Data Mining
Data Preprocessing- Data Warehouse & Data MiningTrinity Dwarka
 
15. Brian Bailey presentation 2 DQ Asia Pacific 2010
15. Brian Bailey presentation 2 DQ Asia Pacific 201015. Brian Bailey presentation 2 DQ Asia Pacific 2010
15. Brian Bailey presentation 2 DQ Asia Pacific 2010Brian Bailey
 
Characteristics and Advantages of Database Management System
Characteristics and Advantages of Database Management SystemCharacteristics and Advantages of Database Management System
Characteristics and Advantages of Database Management SystemCharthaGaglani
 
Data-Ed Webinar: Design & Manage Data Structures
Data-Ed Webinar: Design & Manage Data Structures Data-Ed Webinar: Design & Manage Data Structures
Data-Ed Webinar: Design & Manage Data Structures DATAVERSITY
 
Data-Ed: Design and Manage Data Structures
Data-Ed: Design and Manage Data Structures Data-Ed: Design and Manage Data Structures
Data-Ed: Design and Manage Data Structures Data Blueprint
 
Applying a User-Centered Design Approach to Improve Data Use in Decision Making
Applying a User-Centered Design Approach to Improve Data Use in Decision MakingApplying a User-Centered Design Approach to Improve Data Use in Decision Making
Applying a User-Centered Design Approach to Improve Data Use in Decision MakingMEASURE Evaluation
 
Agility for big data
Agility for big data Agility for big data
Agility for big data Charlie Cheng
 

Ähnlich wie Best practice strategies to clean up and maintain your database with Hether Ghelf (20)

Creating a Data Management Plan
Creating a Data Management PlanCreating a Data Management Plan
Creating a Data Management Plan
 
Group 2 Handling and Processing of big data.pptx
Group 2 Handling and Processing of big data.pptxGroup 2 Handling and Processing of big data.pptx
Group 2 Handling and Processing of big data.pptx
 
How to Realize Benefits from Data Management Maturity Models
How to Realize Benefits from Data Management Maturity ModelsHow to Realize Benefits from Data Management Maturity Models
How to Realize Benefits from Data Management Maturity Models
 
Choosing a new database
Choosing a new databaseChoosing a new database
Choosing a new database
 
Data managementbasics issr_20130301
Data managementbasics issr_20130301Data managementbasics issr_20130301
Data managementbasics issr_20130301
 
Data Cleaning
Data CleaningData Cleaning
Data Cleaning
 
Data Preparation.pptx
Data Preparation.pptxData Preparation.pptx
Data Preparation.pptx
 
DATA SCIENCE AND BIG DATA ANALYTICSCHAPTER 2 DATA ANA.docx
DATA SCIENCE AND BIG DATA ANALYTICSCHAPTER 2 DATA ANA.docxDATA SCIENCE AND BIG DATA ANALYTICSCHAPTER 2 DATA ANA.docx
DATA SCIENCE AND BIG DATA ANALYTICSCHAPTER 2 DATA ANA.docx
 
BDA TAE 2 (BMEB 83).pptx
BDA TAE 2 (BMEB 83).pptxBDA TAE 2 (BMEB 83).pptx
BDA TAE 2 (BMEB 83).pptx
 
DATA WRANGLING presentation.pptx
DATA WRANGLING presentation.pptxDATA WRANGLING presentation.pptx
DATA WRANGLING presentation.pptx
 
Data Preprocessing- Data Warehouse & Data Mining
Data Preprocessing- Data Warehouse & Data MiningData Preprocessing- Data Warehouse & Data Mining
Data Preprocessing- Data Warehouse & Data Mining
 
Lesson2.pptx
Lesson2.pptxLesson2.pptx
Lesson2.pptx
 
15. Brian Bailey presentation 2 DQ Asia Pacific 2010
15. Brian Bailey presentation 2 DQ Asia Pacific 201015. Brian Bailey presentation 2 DQ Asia Pacific 2010
15. Brian Bailey presentation 2 DQ Asia Pacific 2010
 
9. Data Warehousing & Mining.pptx
9. Data Warehousing & Mining.pptx9. Data Warehousing & Mining.pptx
9. Data Warehousing & Mining.pptx
 
DBMS NOTES.pdf
DBMS  NOTES.pdfDBMS  NOTES.pdf
DBMS NOTES.pdf
 
Characteristics and Advantages of Database Management System
Characteristics and Advantages of Database Management SystemCharacteristics and Advantages of Database Management System
Characteristics and Advantages of Database Management System
 
Data-Ed Webinar: Design & Manage Data Structures
Data-Ed Webinar: Design & Manage Data Structures Data-Ed Webinar: Design & Manage Data Structures
Data-Ed Webinar: Design & Manage Data Structures
 
Data-Ed: Design and Manage Data Structures
Data-Ed: Design and Manage Data Structures Data-Ed: Design and Manage Data Structures
Data-Ed: Design and Manage Data Structures
 
Applying a User-Centered Design Approach to Improve Data Use in Decision Making
Applying a User-Centered Design Approach to Improve Data Use in Decision MakingApplying a User-Centered Design Approach to Improve Data Use in Decision Making
Applying a User-Centered Design Approach to Improve Data Use in Decision Making
 
Agility for big data
Agility for big data Agility for big data
Agility for big data
 

Mehr von Blackbaud Pacific

Acquiring New Regular Givers Online
Acquiring New Regular Givers OnlineAcquiring New Regular Givers Online
Acquiring New Regular Givers OnlineBlackbaud Pacific
 
Embracing Technology to Measure Outcomes
Embracing Technology to Measure OutcomesEmbracing Technology to Measure Outcomes
Embracing Technology to Measure OutcomesBlackbaud Pacific
 
Building Better Relationships: It's all about that base
Building Better Relationships: It's all about that baseBuilding Better Relationships: It's all about that base
Building Better Relationships: It's all about that baseBlackbaud Pacific
 
How to Choose The Right Fundraising Software for your Not for Profit
How to Choose The Right Fundraising Software for your Not for ProfitHow to Choose The Right Fundraising Software for your Not for Profit
How to Choose The Right Fundraising Software for your Not for ProfitBlackbaud Pacific
 
Addressing the Risks & Opportunities of Implementing an Outcomes Based Strategy
Addressing the Risks & Opportunities of Implementing an Outcomes Based Strategy Addressing the Risks & Opportunities of Implementing an Outcomes Based Strategy
Addressing the Risks & Opportunities of Implementing an Outcomes Based Strategy Blackbaud Pacific
 
Stewardship or Donor Relations – Making it all come together with Amanda Stanes
Stewardship or Donor Relations – Making it all come together with Amanda StanesStewardship or Donor Relations – Making it all come together with Amanda Stanes
Stewardship or Donor Relations – Making it all come together with Amanda StanesBlackbaud Pacific
 
Using Performance Data: Communicating Your Impact
Using Performance Data: Communicating Your ImpactUsing Performance Data: Communicating Your Impact
Using Performance Data: Communicating Your ImpactBlackbaud Pacific
 
Is your fundraising strategic or ad-hoc?
Is your fundraising strategic or ad-hoc?Is your fundraising strategic or ad-hoc?
Is your fundraising strategic or ad-hoc?Blackbaud Pacific
 
How to select the right database to empower your fundraising
How to select the right database to empower your fundraisingHow to select the right database to empower your fundraising
How to select the right database to empower your fundraisingBlackbaud Pacific
 
Making Mobile Matter: How to be a Tinder NFP presented by Nick Allen
Making Mobile Matter: How to be a Tinder NFP presented by Nick AllenMaking Mobile Matter: How to be a Tinder NFP presented by Nick Allen
Making Mobile Matter: How to be a Tinder NFP presented by Nick AllenBlackbaud Pacific
 
How to ensure successful leadership and capacity building in your organisatio...
How to ensure successful leadership and capacity building in your organisatio...How to ensure successful leadership and capacity building in your organisatio...
How to ensure successful leadership and capacity building in your organisatio...Blackbaud Pacific
 
How to Use Your Database to Power Your Fundraising - FINZ 2014 Presentation
How to Use Your Database to Power Your Fundraising - FINZ 2014 PresentationHow to Use Your Database to Power Your Fundraising - FINZ 2014 Presentation
How to Use Your Database to Power Your Fundraising - FINZ 2014 PresentationBlackbaud Pacific
 
Separating fact from fiction, the true benefits of testing with Mark Stewart,...
Separating fact from fiction, the true benefits of testing with Mark Stewart,...Separating fact from fiction, the true benefits of testing with Mark Stewart,...
Separating fact from fiction, the true benefits of testing with Mark Stewart,...Blackbaud Pacific
 
Building Your Community with Blackbaud NetCommunity; Making Your Site Audienc...
Building Your Community with Blackbaud NetCommunity; Making Your Site Audienc...Building Your Community with Blackbaud NetCommunity; Making Your Site Audienc...
Building Your Community with Blackbaud NetCommunity; Making Your Site Audienc...Blackbaud Pacific
 
Email Marketing with Blackbaud NetCommunity- Boot Camp Series
Email Marketing with Blackbaud NetCommunity-  Boot Camp SeriesEmail Marketing with Blackbaud NetCommunity-  Boot Camp Series
Email Marketing with Blackbaud NetCommunity- Boot Camp SeriesBlackbaud Pacific
 
The A to Z of Sending a Targeted Appeal with Blackbaud NetCommunity - BBNC Bo...
The A to Z of Sending a Targeted Appeal with Blackbaud NetCommunity - BBNC Bo...The A to Z of Sending a Targeted Appeal with Blackbaud NetCommunity - BBNC Bo...
The A to Z of Sending a Targeted Appeal with Blackbaud NetCommunity - BBNC Bo...Blackbaud Pacific
 
Analytics and Analysis with Blackbaud NetCommunity - Boot Camp Series
Analytics and Analysis with Blackbaud NetCommunity - Boot Camp SeriesAnalytics and Analysis with Blackbaud NetCommunity - Boot Camp Series
Analytics and Analysis with Blackbaud NetCommunity - Boot Camp SeriesBlackbaud Pacific
 
Mobile Optimisation with Blackbaud NetCommunity - Boot Camp Series
Mobile Optimisation with Blackbaud NetCommunity - Boot Camp SeriesMobile Optimisation with Blackbaud NetCommunity - Boot Camp Series
Mobile Optimisation with Blackbaud NetCommunity - Boot Camp SeriesBlackbaud Pacific
 
Developing effective partnerships with the corporate sector with Annette Hosk...
Developing effective partnerships with the corporate sector with Annette Hosk...Developing effective partnerships with the corporate sector with Annette Hosk...
Developing effective partnerships with the corporate sector with Annette Hosk...Blackbaud Pacific
 

Mehr von Blackbaud Pacific (20)

Acquiring New Regular Givers Online
Acquiring New Regular Givers OnlineAcquiring New Regular Givers Online
Acquiring New Regular Givers Online
 
Welcome to the Cloud
Welcome to the CloudWelcome to the Cloud
Welcome to the Cloud
 
Embracing Technology to Measure Outcomes
Embracing Technology to Measure OutcomesEmbracing Technology to Measure Outcomes
Embracing Technology to Measure Outcomes
 
Building Better Relationships: It's all about that base
Building Better Relationships: It's all about that baseBuilding Better Relationships: It's all about that base
Building Better Relationships: It's all about that base
 
How to Choose The Right Fundraising Software for your Not for Profit
How to Choose The Right Fundraising Software for your Not for ProfitHow to Choose The Right Fundraising Software for your Not for Profit
How to Choose The Right Fundraising Software for your Not for Profit
 
Addressing the Risks & Opportunities of Implementing an Outcomes Based Strategy
Addressing the Risks & Opportunities of Implementing an Outcomes Based Strategy Addressing the Risks & Opportunities of Implementing an Outcomes Based Strategy
Addressing the Risks & Opportunities of Implementing an Outcomes Based Strategy
 
Stewardship or Donor Relations – Making it all come together with Amanda Stanes
Stewardship or Donor Relations – Making it all come together with Amanda StanesStewardship or Donor Relations – Making it all come together with Amanda Stanes
Stewardship or Donor Relations – Making it all come together with Amanda Stanes
 
Using Performance Data: Communicating Your Impact
Using Performance Data: Communicating Your ImpactUsing Performance Data: Communicating Your Impact
Using Performance Data: Communicating Your Impact
 
Is your fundraising strategic or ad-hoc?
Is your fundraising strategic or ad-hoc?Is your fundraising strategic or ad-hoc?
Is your fundraising strategic or ad-hoc?
 
How to select the right database to empower your fundraising
How to select the right database to empower your fundraisingHow to select the right database to empower your fundraising
How to select the right database to empower your fundraising
 
Making Mobile Matter: How to be a Tinder NFP presented by Nick Allen
Making Mobile Matter: How to be a Tinder NFP presented by Nick AllenMaking Mobile Matter: How to be a Tinder NFP presented by Nick Allen
Making Mobile Matter: How to be a Tinder NFP presented by Nick Allen
 
How to ensure successful leadership and capacity building in your organisatio...
How to ensure successful leadership and capacity building in your organisatio...How to ensure successful leadership and capacity building in your organisatio...
How to ensure successful leadership and capacity building in your organisatio...
 
How to Use Your Database to Power Your Fundraising - FINZ 2014 Presentation
How to Use Your Database to Power Your Fundraising - FINZ 2014 PresentationHow to Use Your Database to Power Your Fundraising - FINZ 2014 Presentation
How to Use Your Database to Power Your Fundraising - FINZ 2014 Presentation
 
Separating fact from fiction, the true benefits of testing with Mark Stewart,...
Separating fact from fiction, the true benefits of testing with Mark Stewart,...Separating fact from fiction, the true benefits of testing with Mark Stewart,...
Separating fact from fiction, the true benefits of testing with Mark Stewart,...
 
Building Your Community with Blackbaud NetCommunity; Making Your Site Audienc...
Building Your Community with Blackbaud NetCommunity; Making Your Site Audienc...Building Your Community with Blackbaud NetCommunity; Making Your Site Audienc...
Building Your Community with Blackbaud NetCommunity; Making Your Site Audienc...
 
Email Marketing with Blackbaud NetCommunity- Boot Camp Series
Email Marketing with Blackbaud NetCommunity-  Boot Camp SeriesEmail Marketing with Blackbaud NetCommunity-  Boot Camp Series
Email Marketing with Blackbaud NetCommunity- Boot Camp Series
 
The A to Z of Sending a Targeted Appeal with Blackbaud NetCommunity - BBNC Bo...
The A to Z of Sending a Targeted Appeal with Blackbaud NetCommunity - BBNC Bo...The A to Z of Sending a Targeted Appeal with Blackbaud NetCommunity - BBNC Bo...
The A to Z of Sending a Targeted Appeal with Blackbaud NetCommunity - BBNC Bo...
 
Analytics and Analysis with Blackbaud NetCommunity - Boot Camp Series
Analytics and Analysis with Blackbaud NetCommunity - Boot Camp SeriesAnalytics and Analysis with Blackbaud NetCommunity - Boot Camp Series
Analytics and Analysis with Blackbaud NetCommunity - Boot Camp Series
 
Mobile Optimisation with Blackbaud NetCommunity - Boot Camp Series
Mobile Optimisation with Blackbaud NetCommunity - Boot Camp SeriesMobile Optimisation with Blackbaud NetCommunity - Boot Camp Series
Mobile Optimisation with Blackbaud NetCommunity - Boot Camp Series
 
Developing effective partnerships with the corporate sector with Annette Hosk...
Developing effective partnerships with the corporate sector with Annette Hosk...Developing effective partnerships with the corporate sector with Annette Hosk...
Developing effective partnerships with the corporate sector with Annette Hosk...
 

Kürzlich hochgeladen

Arizona Broadband Policy Past, Present, and Future Presentation 3/25/24
Arizona Broadband Policy Past, Present, and Future Presentation 3/25/24Arizona Broadband Policy Past, Present, and Future Presentation 3/25/24
Arizona Broadband Policy Past, Present, and Future Presentation 3/25/24Mark Goldstein
 
What is DBT - The Ultimate Data Build Tool.pdf
What is DBT - The Ultimate Data Build Tool.pdfWhat is DBT - The Ultimate Data Build Tool.pdf
What is DBT - The Ultimate Data Build Tool.pdfMounikaPolabathina
 
From Family Reminiscence to Scholarly Archive .
From Family Reminiscence to Scholarly Archive .From Family Reminiscence to Scholarly Archive .
From Family Reminiscence to Scholarly Archive .Alan Dix
 
Merck Moving Beyond Passwords: FIDO Paris Seminar.pptx
Merck Moving Beyond Passwords: FIDO Paris Seminar.pptxMerck Moving Beyond Passwords: FIDO Paris Seminar.pptx
Merck Moving Beyond Passwords: FIDO Paris Seminar.pptxLoriGlavin3
 
Genislab builds better products and faster go-to-market with Lean project man...
Genislab builds better products and faster go-to-market with Lean project man...Genislab builds better products and faster go-to-market with Lean project man...
Genislab builds better products and faster go-to-market with Lean project man...Farhan Tariq
 
New from BookNet Canada for 2024: Loan Stars - Tech Forum 2024
New from BookNet Canada for 2024: Loan Stars - Tech Forum 2024New from BookNet Canada for 2024: Loan Stars - Tech Forum 2024
New from BookNet Canada for 2024: Loan Stars - Tech Forum 2024BookNet Canada
 
Long journey of Ruby standard library at RubyConf AU 2024
Long journey of Ruby standard library at RubyConf AU 2024Long journey of Ruby standard library at RubyConf AU 2024
Long journey of Ruby standard library at RubyConf AU 2024Hiroshi SHIBATA
 
Manual 508 Accessibility Compliance Audit
Manual 508 Accessibility Compliance AuditManual 508 Accessibility Compliance Audit
Manual 508 Accessibility Compliance AuditSkynet Technologies
 
Sample pptx for embedding into website for demo
Sample pptx for embedding into website for demoSample pptx for embedding into website for demo
Sample pptx for embedding into website for demoHarshalMandlekar2
 
Why device, WIFI, and ISP insights are crucial to supporting remote Microsoft...
Why device, WIFI, and ISP insights are crucial to supporting remote Microsoft...Why device, WIFI, and ISP insights are crucial to supporting remote Microsoft...
Why device, WIFI, and ISP insights are crucial to supporting remote Microsoft...panagenda
 
Modern Roaming for Notes and Nomad – Cheaper Faster Better Stronger
Modern Roaming for Notes and Nomad – Cheaper Faster Better StrongerModern Roaming for Notes and Nomad – Cheaper Faster Better Stronger
Modern Roaming for Notes and Nomad – Cheaper Faster Better Strongerpanagenda
 
Data governance with Unity Catalog Presentation
Data governance with Unity Catalog PresentationData governance with Unity Catalog Presentation
Data governance with Unity Catalog PresentationKnoldus Inc.
 
UiPath Community: Communication Mining from Zero to Hero
UiPath Community: Communication Mining from Zero to HeroUiPath Community: Communication Mining from Zero to Hero
UiPath Community: Communication Mining from Zero to HeroUiPathCommunity
 
Generative Artificial Intelligence: How generative AI works.pdf
Generative Artificial Intelligence: How generative AI works.pdfGenerative Artificial Intelligence: How generative AI works.pdf
Generative Artificial Intelligence: How generative AI works.pdfIngrid Airi González
 
Generative AI for Technical Writer or Information Developers
Generative AI for Technical Writer or Information DevelopersGenerative AI for Technical Writer or Information Developers
Generative AI for Technical Writer or Information DevelopersRaghuram Pandurangan
 
The Fit for Passkeys for Employee and Consumer Sign-ins: FIDO Paris Seminar.pptx
The Fit for Passkeys for Employee and Consumer Sign-ins: FIDO Paris Seminar.pptxThe Fit for Passkeys for Employee and Consumer Sign-ins: FIDO Paris Seminar.pptx
The Fit for Passkeys for Employee and Consumer Sign-ins: FIDO Paris Seminar.pptxLoriGlavin3
 
TeamStation AI System Report LATAM IT Salaries 2024
TeamStation AI System Report LATAM IT Salaries 2024TeamStation AI System Report LATAM IT Salaries 2024
TeamStation AI System Report LATAM IT Salaries 2024Lonnie McRorey
 
Testing tools and AI - ideas what to try with some tool examples
Testing tools and AI - ideas what to try with some tool examplesTesting tools and AI - ideas what to try with some tool examples
Testing tools and AI - ideas what to try with some tool examplesKari Kakkonen
 
Enhancing User Experience - Exploring the Latest Features of Tallyman Axis Lo...
Enhancing User Experience - Exploring the Latest Features of Tallyman Axis Lo...Enhancing User Experience - Exploring the Latest Features of Tallyman Axis Lo...
Enhancing User Experience - Exploring the Latest Features of Tallyman Axis Lo...Scott Andery
 
Assure Ecommerce and Retail Operations Uptime with ThousandEyes
Assure Ecommerce and Retail Operations Uptime with ThousandEyesAssure Ecommerce and Retail Operations Uptime with ThousandEyes
Assure Ecommerce and Retail Operations Uptime with ThousandEyesThousandEyes
 

Kürzlich hochgeladen (20)

Arizona Broadband Policy Past, Present, and Future Presentation 3/25/24
Arizona Broadband Policy Past, Present, and Future Presentation 3/25/24Arizona Broadband Policy Past, Present, and Future Presentation 3/25/24
Arizona Broadband Policy Past, Present, and Future Presentation 3/25/24
 
What is DBT - The Ultimate Data Build Tool.pdf
What is DBT - The Ultimate Data Build Tool.pdfWhat is DBT - The Ultimate Data Build Tool.pdf
What is DBT - The Ultimate Data Build Tool.pdf
 
From Family Reminiscence to Scholarly Archive .
From Family Reminiscence to Scholarly Archive .From Family Reminiscence to Scholarly Archive .
From Family Reminiscence to Scholarly Archive .
 
Merck Moving Beyond Passwords: FIDO Paris Seminar.pptx
Merck Moving Beyond Passwords: FIDO Paris Seminar.pptxMerck Moving Beyond Passwords: FIDO Paris Seminar.pptx
Merck Moving Beyond Passwords: FIDO Paris Seminar.pptx
 
Genislab builds better products and faster go-to-market with Lean project man...
Genislab builds better products and faster go-to-market with Lean project man...Genislab builds better products and faster go-to-market with Lean project man...
Genislab builds better products and faster go-to-market with Lean project man...
 
New from BookNet Canada for 2024: Loan Stars - Tech Forum 2024
New from BookNet Canada for 2024: Loan Stars - Tech Forum 2024New from BookNet Canada for 2024: Loan Stars - Tech Forum 2024
New from BookNet Canada for 2024: Loan Stars - Tech Forum 2024
 
Long journey of Ruby standard library at RubyConf AU 2024
Long journey of Ruby standard library at RubyConf AU 2024Long journey of Ruby standard library at RubyConf AU 2024
Long journey of Ruby standard library at RubyConf AU 2024
 
Manual 508 Accessibility Compliance Audit
Manual 508 Accessibility Compliance AuditManual 508 Accessibility Compliance Audit
Manual 508 Accessibility Compliance Audit
 
Sample pptx for embedding into website for demo
Sample pptx for embedding into website for demoSample pptx for embedding into website for demo
Sample pptx for embedding into website for demo
 
Why device, WIFI, and ISP insights are crucial to supporting remote Microsoft...
Why device, WIFI, and ISP insights are crucial to supporting remote Microsoft...Why device, WIFI, and ISP insights are crucial to supporting remote Microsoft...
Why device, WIFI, and ISP insights are crucial to supporting remote Microsoft...
 
Modern Roaming for Notes and Nomad – Cheaper Faster Better Stronger
Modern Roaming for Notes and Nomad – Cheaper Faster Better StrongerModern Roaming for Notes and Nomad – Cheaper Faster Better Stronger
Modern Roaming for Notes and Nomad – Cheaper Faster Better Stronger
 
Data governance with Unity Catalog Presentation
Data governance with Unity Catalog PresentationData governance with Unity Catalog Presentation
Data governance with Unity Catalog Presentation
 
UiPath Community: Communication Mining from Zero to Hero
UiPath Community: Communication Mining from Zero to HeroUiPath Community: Communication Mining from Zero to Hero
UiPath Community: Communication Mining from Zero to Hero
 
Generative Artificial Intelligence: How generative AI works.pdf
Generative Artificial Intelligence: How generative AI works.pdfGenerative Artificial Intelligence: How generative AI works.pdf
Generative Artificial Intelligence: How generative AI works.pdf
 
Generative AI for Technical Writer or Information Developers
Generative AI for Technical Writer or Information DevelopersGenerative AI for Technical Writer or Information Developers
Generative AI for Technical Writer or Information Developers
 
The Fit for Passkeys for Employee and Consumer Sign-ins: FIDO Paris Seminar.pptx
The Fit for Passkeys for Employee and Consumer Sign-ins: FIDO Paris Seminar.pptxThe Fit for Passkeys for Employee and Consumer Sign-ins: FIDO Paris Seminar.pptx
The Fit for Passkeys for Employee and Consumer Sign-ins: FIDO Paris Seminar.pptx
 
TeamStation AI System Report LATAM IT Salaries 2024
TeamStation AI System Report LATAM IT Salaries 2024TeamStation AI System Report LATAM IT Salaries 2024
TeamStation AI System Report LATAM IT Salaries 2024
 
Testing tools and AI - ideas what to try with some tool examples
Testing tools and AI - ideas what to try with some tool examplesTesting tools and AI - ideas what to try with some tool examples
Testing tools and AI - ideas what to try with some tool examples
 
Enhancing User Experience - Exploring the Latest Features of Tallyman Axis Lo...
Enhancing User Experience - Exploring the Latest Features of Tallyman Axis Lo...Enhancing User Experience - Exploring the Latest Features of Tallyman Axis Lo...
Enhancing User Experience - Exploring the Latest Features of Tallyman Axis Lo...
 
Assure Ecommerce and Retail Operations Uptime with ThousandEyes
Assure Ecommerce and Retail Operations Uptime with ThousandEyesAssure Ecommerce and Retail Operations Uptime with ThousandEyes
Assure Ecommerce and Retail Operations Uptime with ThousandEyes
 

Best practice strategies to clean up and maintain your database with Hether Ghelf

  • 1. Best Practice Strategies to Clean up and Maintain Your Database Hether Ghelf Senior Consultant, Project Manager & Data Hygiene Lead 22/03/2013 1
  • 2. GARBAGE IN, GARBAGE OUT • Bad inputs make bad outputs • In lead generation and overall marketing, a piece of information is considered “garbage” if it doesn’t contribute positively to the campaign. • If you’ve got misleading, inaccurate, or incomplete data, then you’ve got garbage on your hands. 22/03/2013 2
  • 3. CHALLENGES & REASONS FOR MESSY DATA Staffing Issues • Do you have a high data entry staff turnover? • Are you stretching existing resources a long way? 22/03/2013 3
  • 4. CHALLENGES & REASONS FOR MESSY DATA Limited Time / Budget • Do you struggle finding the time or money for proper database training for your employees? 22/03/2013 4
  • 5. CHALLENGES & REASONS FOR MESSY DATA Merges and conversions within your databases • Have you recently merged 2+ databases? - Were duplicate records, codes, attributes taken care prior to the merge? • Did you convert from one database to another? - Were pre-conversion clean up activities and post conversion clean up activities scheduled? Converting from one database to another is a huge task and shouldn’t be taken lightly! 22/03/2013 5
  • 6. CHALLENGES & REASONS FOR MESSY DATA Using external sources • Do you bring in data from 3rd party vendors or external lists? • Have you ensured the data is formatted to fit your data file prior to importing? 22/03/2013 6
  • 7. CHALLENGES & REASONS FOR MESSY DATA Documentation for Policy and Procedures • Are your policy and procedures documents non existent or out-dated? • Does your organisation have a Data Entry Standards (DES) document to assist with “how to” properly enter data? A policy and procedures document and DES are two of the top documents organisations should have! 22/03/2013 7
  • 8. CHALLENGES & REASONS FOR MESSY DATA Resistance to change • Have you stopped to ask why you enter in data the way you do? • Do you have multiple people entering data different ways? 22/03/2013 8
  • 9. WHERE TO START - STEPS TO TAKE 1. Receive support from the top down 2. Audit/Assessment 3. Areas & Issues Identified - create a clean up plan/strategy - start with the most important areas 4. Begin Data Cleansing 5. Ask for Help 6. Be Proactive – fill in the gaps 7. Maintain Your Database 22/03/2013 9
  • 10. STEP 1 – RECEIVE SUPPORT FROM THE TOP DOWN • CEO • Executive Committee • Fundraising Manager • Fundraising Staff • Program & Other Department Staff • Data Entry Staff • Volunteers 22/03/2013 10
  • 11. STEP 2 - AUDIT/ASSESSMENT Review your database structure • Codes, Attributes, Notes, Gift info, Reports, User Access, Process • EVERYTHING! Create initial queries/groupings 22/03/2013 11
  • 12. STEP 2 - AUDIT/ASSESSMENT • Examples of groupings/queries: - Formatting of title, first name, middle name, surname, suffix, address lines, suburb, state, postcode, gender - Blank fields in all of the above - Where there’s a spouse but the primary addressee and salutations are singular - If marked deceased, is the spouse still receiving the mailings; if yes, how are they being addressed? Is it still Mr & Mrs? Correct the record so you don’t offend anyone - Marked as do not solicit, do not call but have been sent a recent appeal or called during a recent calling campaign - Missing Constituent Codes, Solicit Codes, Attributes - Review code tables or drop down menu selections regularly and eliminate duplicates or misspellings, especially after data has just been imported into the database - Return to sender mail – mark as invalid address, don’t just throw it away 22/03/2013 12
  • 13. STEP 2 - AUDIT/ASSESSMENT • Examples of groupings/queries continued… - Male title/female or unknown gender - Female title/male or unknown gender - Title Ms, Mrs, Miss and unknown gender - Blank spouse or contact title - Marital status with deceased spouse - Single with spouse - Gifts with a blank campaign, appeal, letter code, etc - Gifts not receipted or acknowledged 22/03/2013 13
  • 14. STEP 2 - AUDIT/ASSESSMENT • Other areas to consider reviewing/updating: - Required fields - Security Groups and/or User Access - Existing reports, queries/groupings and exports - Duplicate records – find and merge 22/03/2013 14
  • 15. STEP 2 – AUDIT/ASSESSMENT Start talking! • Have you asked for input from staff/departments who obtain information from the database? Or from those who input data? 22/03/2013 15
  • 16. STEP 3 – AREAS & ISSUES IDENTIFIED • Review and fine-tune the queries/groupings you created in Step 2 • Review notes from talking with staff/departments 22/03/2013 16
  • 17. STEP 3 – AREAS & ISSUES IDENTIFIED • Create a Clean Up Plan/Strategy and goals 22/03/2013 17
  • 18. STEP 4 – DATA CLEANSING Start Data Cleansing! Before making any changes to be sure to back up your database! 22/03/2013 18
  • 19. STEP 5 – ASK FOR HELP Ask for help Internally • Knowledgeable staff within your organisation And for help externally if needed • Consultants or technical experts to run database audits • Blackbaud Data Hygiene Services 22/03/2013 19
  • 20. STEP 6 – BE PROACTIVE Be Proactive Be Proactive Be Proactive 22/03/2013 20
  • 21. STEP 7: MAINTAIN YOUR DATABASE After you have spent time, energy and money cleansing your database, put steps in place to maintain it! 22/03/2013 21
  • 22. STEP 7 - MAINTAINING YOUR DATABASE Assign roles within your organisation • Database Administrator (DBA) and/or Super User is a must • Set their primary responsibility to keeping your database clean and maintained Have a back up! • Have a back up DBA that can step up in case your primary DBA is out sick or leaves the organisation 22/03/2013 22
  • 23. STEP 7 - MAINTAINING YOUR DATABASE Update (or create) those important documents! • Policies and Procedures • Data Entry Standards (DES) document 22/03/2013 23
  • 24. STEP 7 - MAINTAINING YOUR DATABASE Example of Policy & Procedures document: 22/03/2013 24
  • 25. STEP 7 - MAINTAINING YOUR DATABASE Example of Data Entry Standards document: 22/03/2013 25
  • 26. STEP 7 - MAINTAINING YOUR DATABASE Keep your staff in the know! • Train new and existing staff in system functionality • Provide refresher training to staff on a regular basis (quarterly) • Hold regular data entry staff meetings (weekly/bi-weekly) 22/03/2013 26
  • 27. STEP 7 - MAINTAINING YOUR DATABASE Look AND Listen • Check new staff’s data entry – help them become comfortable with how they should be entering data • Talk to your staff - ask what staff like doing in the database and what they don’t 22/03/2013 27
  • 28. STEP 7 - MAINTAINING YOUR DATABASE Be prepared for upcoming campaigns Calling Campaigns: • Request staff or volunteers to verify name, address, email, mobile • Create a template for entering the new/updated information 22/03/2013 28
  • 29. STEP 7 - MAINTAINING YOUR DATABASE Mailing Campaigns: • Check your queries/groupings to ensure they have the correct criteria • Run your addresses through a data hygiene service or Australia Post one or twice a year 22/03/2013 29
  • 30. STEP 7 - MAINTAINING YOUR DATABASE Always continue auditing and cleaning up your database And never stop searching for areas of improvement Once your database is at a manageable state, it will be easier to maintain! 22/03/2013 30
  • 31. TAKE AWAYS 1. Your database is key to your fundraising 2. Remember… garbage in, garbage out 3. Get started – don’t keep delaying the inevitable 4. MAINTAIN YOUR DATABASE 5. Ask for HELP 22/03/2013 31
  • 32. HOW BLACKBAUD CAN HELP • Blackbaud’s Consulting Services Department can assist you with your database clean up, creation of your Policy & Procedures document and Data Entry Standards document. • Blackbaud’s Data Hygiene Services include: – Address append and verification – Phone append and verification for telemarketing and other contact purposes – Deduplication – Provides deep insight into your existing data – Offers data elements to enhance your data to create a richer asset for your organisation 22/03/2013 32
  • 33. THANK YOU! Questions? 22/03/2013 33