Searching...
English
EnglishEnglish
EspañolSpanish
简体中文Chinese
FrançaisFrench
DeutschGerman
日本語Japanese
PortuguêsPortuguese
ItalianoItalian
한국어Korean
РусскийRussian
NederlandsDutch
العربيةArabic
PolskiPolish
हिन्दीHindi
Tiếng ViệtVietnamese
SvenskaSwedish
ΕλληνικάGreek
TürkçeTurkish
ไทยThai
ČeštinaCzech
RomânăRomanian
MagyarHungarian
УкраїнськаUkrainian
Bahasa IndonesiaIndonesian
DanskDanish
SuomiFinnish
БългарскиBulgarian
עבריתHebrew
NorskNorwegian
HrvatskiCroatian
CatalàCatalan
SlovenčinaSlovak
LietuviųLithuanian
SlovenščinaSlovenian
СрпскиSerbian
EestiEstonian
LatviešuLatvian
فارسیPersian
മലയാളംMalayalam
தமிழ்Tamil
اردوUrdu
Salesforce Data Architecture and Management

Salesforce Data Architecture and Management

A pragmatic guide for aspiring Salesforce architects and developers to manage, govern, and secure their data effectively
by Ahsan Zafar 2021 376 pages
3.00
2+ ratings
Listen
Listen to Summary
Try Full Access for 7 Days
Unlock listening & more!
Continue

Key Takeaways

1. Salesforce's unique architecture optimizes data management for multi-tenancy

The Salesforce platform architecture is complex, comprising many databases and application servers along with a multitude of services that perform different functions, such as searching, business logic execution, caching, and event management.

Multi-tenant architecture. Salesforce's unique architecture is designed to support multiple organizations (tenants) on shared infrastructure while maintaining data isolation and security. This is achieved through a metadata-driven approach, where customizations and configurations are stored as metadata rather than direct database changes.

Optimized for read operations. Unlike traditional databases optimized for write operations, Salesforce prioritizes read performance. This is reflected in its denormalized data structure, where data is often duplicated across objects to reduce the need for complex joins during queries. For example, the Email field may appear on Lead, Contact, and Campaign Member objects to improve query performance.

Key components of Salesforce architecture:

  • Universal Data Dictionary (UDD)
  • Multi-tenant query optimizer
  • Metadata cache
  • Bulk data processing engine
  • Search engine service

2. Large Data Volumes (LDVs) require strategic planning and optimization techniques

LDVs in Salesforce don't have a strict formal definition, and if you ask an experienced architect what constitutes an LDV scenario, more than likely the answer you will get will be, It depends.

Defining LDVs. Large Data Volumes in Salesforce are generally considered when an object has more than 1 million records. However, LDV scenarios can occur with fewer records depending on factors such as transaction volume, complexity, data skew, and org complexity.

Implications of LDVs. Unmanaged LDVs can lead to performance issues in various areas:

  • Slow reports and list views
  • Degraded search performance
  • SOQL query timeouts
  • Lengthy sharing calculations
  • Slow loading of related lists

Optimization techniques. To manage LDVs effectively, consider the following strategies:

  • Implement data archiving to move older, less frequently accessed data off the main objects
  • Use skinny tables for frequently accessed fields to improve query performance
  • Optimize SOQL queries and reports by using selective filters and indexed fields
  • Leverage asynchronous processing for bulk operations
  • Implement data skew prevention strategies

3. Data skew can significantly impact performance and should be carefully managed

When you have more than 10,000 child records that are all linked with the same parent record, a data skew situation arises.

Types of data skew. There are three main types of data skew in Salesforce:

  1. Account data skew: Too many child records associated with a single account
  2. Ownership skew: A single user owns an excessive number of records
  3. Lookup skew: Too many records associated with a single lookup record

Impact of data skew. Data skew can cause various performance issues:

  • Record locking conflicts during updates
  • Slow sharing calculations and recalculations
  • Degraded query performance
  • Timeouts during mass updates or deletions

Mitigation strategies:

  • Distribute child records across multiple parent records when possible
  • Use queues instead of individual users for record ownership in high-volume scenarios
  • Consider using custom objects or big objects for storing historical data
  • Implement batch processing and asynchronous operations for large data updates

4. Effective data modeling and denormalization are crucial for Salesforce performance

Because the Salesforce platform is optimized for read operations, we will need to be cognizant of denormalizing the data as much as possible.

Denormalization benefits. Salesforce's architecture favors denormalized data structures to improve read performance. This approach reduces the need for complex joins and allows for faster query execution.

Data modeling considerations:

  • Replicate commonly accessed data across related objects
  • Use formula fields judiciously, as they can impact performance
  • Leverage custom indexes for frequently queried fields
  • Consider the impact of relationships (lookup vs. master-detail) on query performance

Best practices:

  • Analyze reporting and querying needs when designing data models
  • Use external IDs for efficient data loading and integration
  • Implement field-level security and sharing rules to control data access
  • Regularly review and optimize existing data models as business needs evolve

5. Salesforce Connect and external objects offer flexible data integration solutions

Salesforce Connect is a point-and-click solution to integrate external systems with Salesforce without the need for writing complex code or requiring a middleware to move data across the systems.

Benefits of Salesforce Connect:

  • Real-time data access from external systems
  • Reduced data storage costs in Salesforce
  • Simplified integration with legacy systems
  • Support for both read and write operations

Implementation options:

  • OData 2.0 and 4.0 adapters for systems supporting these protocols
  • Custom adapters using Apex Connector Framework for more complex integrations

Considerations:

  • Limited availability of some standard Salesforce features for external objects
  • Potential performance impact for large data volumes or complex queries
  • API call limits that may affect scalability in high-traffic scenarios

6. Big objects provide scalable storage for massive data volumes with specific considerations

Big objects can store millions of records, reaching up to the 1 billion mark and more.

Key benefits of big objects:

  • Scalable storage for massive data volumes
  • Improved performance for core Salesforce objects by offloading historical data
  • Cost-effective storage solution for long-term data retention
  • Integration with Platform Events for real-time data processing

Architectural considerations:

  • Use of Async SOQL for querying big object data
  • Lack of UI for direct data manipulation (custom UI required)
  • Limited field types compared to standard/custom objects
  • Consistency-focused architecture requiring robust error handling in integrations

Use cases:

  • Long-term data archiving for compliance and auditing
  • Storage of high-volume IoT or event data
  • Historical trending and analytics on large datasets

7. Data governance and archiving strategies are essential for long-term Salesforce success

Regular data archiving using automated tools can be a good strategy to prevent growing your data massively on the platform.

Data governance importance. Implementing robust data governance practices ensures data quality, compliance, and optimal performance of your Salesforce org over time.

Key components of data governance:

  • Data quality standards and monitoring
  • Data retention and archiving policies
  • Access control and security measures
  • Data lifecycle management

Archiving strategies:

  • Use big objects for long-term data storage within Salesforce
  • Leverage external storage solutions (e.g., Heroku) for off-platform archiving
  • Implement automated archiving processes based on data age or relevance
  • Ensure archived data remains accessible for reporting and compliance needs

8. Query optimization and SOQL best practices are critical for maintaining performance

Because the Salesforce platform is multi-tenant and customers don't get access to the database directly, when you run a report, SOQL, and list view, your request is sent to what's called a Query Optimizer.

Query optimization techniques:

  • Use selective filters to leverage indexes
  • Avoid using negative operators (e.g., !=, NOT IN) in filter conditions
  • Limit the number of fields in SELECT statements
  • Use LIMIT clauses to restrict result set size

SOQL best practices:

  • Leverage indexed fields in filter conditions
  • Use relationship queries to minimize the number of separate queries
  • Implement proper error handling and bulkification in Apex code
  • Utilize query hints for complex queries when appropriate

Performance monitoring:

  • Use the Query Plan tool to analyze query execution plans
  • Monitor SOQL query performance in debug logs
  • Regularly review and optimize frequently used reports and list views

9. Salesforce's multi-tenancy model impacts data security and sharing calculations

Salesforce stores access to records in Sharing tables. Whenever records are inserted or the ownership changes, the platform has to insert/update these Sharing tables.

Sharing model implications:

  • Organization-Wide Defaults (OWDs) impact sharing table size and calculation time
  • Complex sharing rules can significantly affect performance in LDV scenarios
  • Role hierarchy changes can trigger massive sharing recalculations

Optimization strategies:

  • Use Public Read/Write OWDs during large data loads, then restrict access later
  • Implement parallel sharing rule calculations for faster processing
  • Leverage deferred sharing calculations for bulk changes to roles or territories
  • Consider using a minimal role hierarchy to reduce sharing complexity

Security considerations:

  • Regularly review and optimize sharing rules and role hierarchies
  • Use permission sets instead of profiles for more granular access control
  • Implement field-level security to protect sensitive data

10. Performance monitoring and testing are crucial for maintaining a healthy Salesforce org

Performance testing must be done in a very well-planned manner, ensuring that the scope of the testing is known, and that the goals of the tests are clear.

Performance monitoring tools:

  • Salesforce Optimizer for identifying org health issues
  • Event Monitoring for tracking user activities and system performance
  • Debug logs and Developer Console for detailed performance analysis

Performance testing considerations:

  • Test in full sandbox environments to simulate production conditions
  • Use realistic data volumes and user loads in performance tests
  • Consider multi-user scenarios to identify concurrency issues
  • Test integrations and custom code under various load conditions

Best practices:

  • Establish performance baselines and regularly monitor for deviations
  • Implement proactive alerting for performance thresholds
  • Conduct performance testing before major releases or significant org changes
  • Regularly review and optimize custom code, workflows, and automations

Last updated:

Download PDF

To save this Salesforce Data Architecture and Management summary for later, download the free PDF. You can print it out, or read offline at your convenience.
Download PDF
File size: 0.24 MB     Pages: 15

Download EPUB

To read this Salesforce Data Architecture and Management summary on your e-reader device or app, download the free EPUB. The .epub digital book format is ideal for reading ebooks on phones, tablets, and e-readers.
Download EPUB
File size: 3.10 MB     Pages: 10
0:00
-0:00
1x
Dan
Andrew
Michelle
Lauren
Select Speed
1.0×
+
200 words per minute
Home
Library
Get App
Create a free account to unlock:
Requests: Request new book summaries
Bookmarks: Save your favorite books
History: Revisit books later
Recommendations: Personalized for you
Ratings: Rate books & see your ratings
100,000+ readers
Try Full Access for 7 Days
Listen, bookmark, and more
Compare Features Free Pro
📖 Read Summaries
All summaries are free to read in 40 languages
🎧 Listen to Summaries
Listen to unlimited summaries in 40 languages
❤️ Unlimited Bookmarks
Free users are limited to 10
📜 Unlimited History
Free users are limited to 10
Risk-Free Timeline
Today: Get Instant Access
Listen to full summaries of 73,530 books. That's 12,000+ hours of audio!
Day 4: Trial Reminder
We'll send you a notification that your trial is ending soon.
Day 7: Your subscription begins
You'll be charged on May 13,
cancel anytime before.
Consume 2.8x More Books
2.8x more books Listening Reading
Our users love us
100,000+ readers
"...I can 10x the number of books I can read..."
"...exceptionally accurate, engaging, and beautifully presented..."
"...better than any amazon review when I'm making a book-buying decision..."
Save 62%
Yearly
$119.88 $44.99/year
$3.75/mo
Monthly
$9.99/mo
Try Free & Unlock
7 days free, then $44.99/year. Cancel anytime.
Scanner
Find a barcode to scan

Settings
General
Widget
Loading...
Black Friday Sale 🎉
$20 off Lifetime Access
$79.99 $59.99
Upgrade Now →