LogoLogo
Product
  • Knowledge Base
  • What's New
  • Guides
  • User Story Coverage
    • Getting Started
    • User Story Challenges & Solution
      • Typical Implementation
      • The Challenges
      • The Solution
    • User Story Coverage Report Overview
      • Release Go / No Go Report
        • How to Generate / Edit the Report
      • User Story Quality Overview
        • How to Generate the User Story View
      • User Story Coverage Analysis
        • How to Generate the Analysis View
      • Uncovered Methods View
        • How to Generate the View
      • Customization
      • Integration
    • Use Cases by Persona
      • Managers
        • Informed Go/No Go Decisions Making
        • Effective Resources Prioritization
        • Overall Progress Monitoring
      • Developers
        • Code Quality Ownership
        • Seamless Collaboration with QA
        • Code Review Facilitator
      • QA Engineers
        • Test Execution Progress Monitoring
        • Testing Effort Prioritization
        • Testing Strategy Planing
    • Technical Overview
      • User Story Coverage Mechanism
      • Technical Architecture
      • Deployment Guide
        • US1_getResults.sh
        • US2_createReport.sh
        • US_UpdateConfluence.sh
  • Test Optimization
    • Getting Started
    • Test Execution Challenges & Solution
      • The Challenges
      • Test Optimization Solution
      • Test Optimization Main Advantages
    • Test Optimization Overview
      • Automated Test Optimization
      • Manual Test Optimization
      • Test Optimization for Pull Request
      • Test Selection Policies
        • Full Run Policy
        • No Code Changes Policy
        • Common Code Policy
        • Fastest Path to 100% Coverage Policy
      • Integrations
    • Use Cases by Persona
      • Managers
        • Fast Delivery
        • Resource Optimization
        • Thorough Testing in Tight Schedule
      • Developers
        • Exploring Only Relevant Test Failures
        • Faster Feedback Loop
        • Shift Left Testing
      • QA Engineers & Manual Testers
        • Faster & Focused Manual Testing
        • Optimizing Test Suite
        • Having Stable Product for Testing
    • Technical Overview
      • Test Optimization Mechanism
        • Associating Code With Tests
          • Statistical modeling
          • One-to-One Mapping
          • Calibration
        • Detecting Modified Code
        • Generating Test Recommendations
      • Technical Architecture
      • Deployment Guide
  • Quality Improvement
    • Getting Started
    • Challenges & Approach Comparison
      • The Challenges
      • Quality Improvement Approaches
      • Choosing the Right Approach
    • Quality Improvement Solution Overview
      • Test Gaps Analysis Report
        • How to Generate / Edit the Report
      • Coverage Trend Report
        • How to Generate / Edit the Report
      • Proof of Testing Report
        • How to Generate / Edit the Report
      • Release Quality Improvement Guide
        • STEP 1: Deploy SeaLights
        • STEP 2: Take a Quality Snapshot
        • STEP 3: Prioritize Code Areas
          • Add Code Labels
          • Ignore Irrelevant Code
          • Perform a Deep CSV Analysis
        • STEP 4: Set Baseline & Threshold
        • STEP 5: Analyze Test Gaps
        • STEP 6: Write Tests
        • Step 7: Make a Go / No Go Decision Based on Quality Gate
        • STEP 8: Measure Defect Escape Rate
      • Over Time Quality Improvement Guide
        • STEP 1: Deploy SeaLights
        • STEP 2: Take a Quality Snapshot
        • STEP 3: Prioritize code areas
          • Add Code Labels
          • Ignore Irrelevant Code
          • Perform a Deep CSV Analysis
        • STEP 4: Set Baseline & Goal
        • STEP 5: Set timeline
        • STEP 6: Write tests
        • STEP 7: Monitor progress
        • STEP 8: Measure Defect Escape Rate
    • Use Cases by Persona
      • Managers
        • Effective Prioritization & Budget Allocation
        • Tracking Progress & Measuring Impact
        • Data-Driven Release Decisions
        • Transparency & Communication
      • Developers
        • Mastering Code Coverage
        • Seamless Collaboration with QA
        • Code Quality Ownership
      • QA Engineers
        • Prioritizing Test Efforts
        • Contributing to Release Informed Decisions
        • Seamless Collaboration with Developers
        • Evaluating Testing Strategy
    • Technical Overview
      • Solution Mechanism
      • Technical Architecture
      • Deployment Guide
  • Value Proposition
    • Overview
    • Quality Use Cases
      • Go/No Go Decisions
      • Quality Improvement & Test Gaps
      • Governance & Quality Gates
      • Compliance & Proof of Testing
    • Test Optimization Use Cases
      • Reduce Costs & Infrastructure
      • Shorten Release Cycles
      • Reduce Troubleshooting
Powered by GitBook
On this page
  • Full Run Policy
  • No Code Changes Policy
  • Common Code Policy
  • Fastest Path to 100% Coverage Policy

Was this helpful?

  1. Test Optimization
  2. Test Optimization Overview

Test Selection Policies

The test recommendation list can be tailored to specific requirements and use cases, allowing flexibility in either broadening coverage or optimizing the number of required tests. You control the balance between the two. This customization is achieved through test selection policies, some of which are available in the user interface, while others can be configured manually to meet the customer's needs.

Key test selection policies include:

Full Run Policy

Determines how often a full suite of tests should be executed. This can be based on the need to improve mapping accuracy, run comprehensive coverage, or other considerations.

No Code Changes Policy

Specifies what TIA should recommend when no code changes are identified in the current build.

Common Code Policy

Defines which tests should run when common code is altered and which can be skipped.

Fastest Path to 100% Coverage Policy

Guides the selection of tests when time is limited, with the goal of covering as much code as possible.


These policies offer the flexibility to balance test coverage and efficiency based on specific project requirements.

PreviousTest Optimization for Pull RequestNextFull Run Policy

Was this helpful?