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Kalever
  • How We Work
  • The Platform
  • Why Kalever
  • Resources
    • Articles
    • Product Decks
    • Case Studies
  • Contact

Getting Started

4
  • Your Home Dashboard: Overview
  • Account and Notification Settings
  • Create a New Project
  • Navigating the Project Dashboard

Pricing tool

2
  • How to Create a New Quote
  • How to Download, Edit, and Duplicate Quotes

Survey Creator

7
  • How to Create a New Survey
  • Classic Editor: Control Area
  • Classic Editor: Overview
  • Classic Editor: Adding and Editing Survey Elements
  • Classic Editor: Using Custom Modules
  • Decipher Editor: Editing Your Survey
  • AI Assistant

TrackEntry Tool

4
  • Introduction to TrackEntry: Access and Overview
  • How to Create, Edit, and Manage Entries
  • Using Live Chat for Real-Time Communication
  • How to Integrate TrackEntry with a Decipher Survey

Codebooks Tool

2
  • Creating a Codebook for Open-Ended Data
  • How to Edit and Manage Your Codebook

Best Practices: A Project Lifecycle Guide

7
  • Phase 1: The Bidding Stage: Creating a Winning Quote
  • Phase 2: Project Kick-Off: Setting Up for Success
  • Phase 3: Questionnaire Design — From Idea to Final Draft
  • Phase 4: Initial Survey Programming: A Seamless Handoff
  • Phase 5: QA – Efficient and Traceable Survey Testing
  • Phase 6: Managing Client Feedback and Changes
  • Phase 7: Data Checks — Ensuring Data Quality

Survey Intelligence

4
  • Introduction to Survey Intelligence
  • Accessing Survey Intelligence
  • Running an Analysis within Survey Intelligence tool
  • Reviewing Results
View Categories
  • Home
  • Knowledge Base
  • Best Practices: A Project Lifecycle Guide
  • Phase 7: Data Checks — Ensuring Data Quality

Phase 7: Data Checks — Ensuring Data Quality

The final phase before delivering data to the client is a thorough validation check. This process ensures that the data is clean, logical, and accurately reflects the survey’s design. Kalever streamlines this critical step by automating the creation of validation scripts and keeping the resolution process within its collaborative ecosystem.

Scenario: The soft launch data for the ‘Luxury Brands’ survey is gathered, and the raw data file is ready. It’s now time for the data processing team to validate the data before proceeding with the fieldwork.

Step 1: Onboard the Data Processing Team #

For a seamless workflow, the Data Processor (DP) must have access to the project’s core information. The Project Manager should ensure the DP is added as a member of the internal project (“Luxury Brands – Internal”).

This grants them access to the Survey Creator, where they can see the survey’s final structure and logic, and to TrackEntry, their primary tool for communicating with the Project Manager and Programmer.

  • For instructions on adding team members, see our guide:
    Managing Notifications, Members, and Project Settings

Step 2: Automate Validation Script Creation #

Traditionally, data processors write validation scripts (like SPSS syntax) from scratch—a time-consuming and error-prone process. Kalever’s Data Validations feature automates this entirely.

  1. The Data Processor navigates to the Survey Creator within the internal project.
  2. They open the Editor Options (cog icon) and select “Data validations”.
  3. The system instantly generates a full SPSS syntax script based on the survey’s structure, logic, question types, and valid ranges.

The DP can then download this script and use it to check the raw data file, saving hours of manual work.

  • To learn where to find this feature, see our guide:
    Advanced Options: Exports, Imports, and Version Control

Step 3: Apply the Script at Key Project Milestones #

This validation script is not a one-time tool. It can and should be used multiple times throughout the data collection process to catch issues early.

Best Practice Workflow:

  • After Soft Launch: Run the script on the initial soft launch data to identify and fix any major issues before full launch.
  • Ad-Hoc Mid-Field Checks: If any potential problems are flagged during fieldwork, the script can be run on an interim data cut.
  • Before Final Data Delivery: Run the script one last time on the complete dataset to perform the definitive, final check.

Step 4: Report and Resolve Data Issues via TrackEntry #

If the validation script finds an error, the resolution process should be managed within Kalever to maintain a clear audit trail.

Scenario: The SPSS script flags an unexpected value in the data for question S5, indicating a potential programming error.

  1. The Data Processor creates a New Entry in the internal project’s TrackEntry board.
  2. They describe the issue clearly (e.g., “Data validation script found ’99’ in Q5, which should be a terminated value. Please investigate.”).
  3. The programmer is notified, investigates the issue, and communicates their findings or confirms the fix within the same ticket.

This keeps all data-related queries and resolutions documented and tied to the project, ensuring a fully transparent and auditable data cleaning process.


Phase 6: Managing Client Feedback and ChangesPhase 1: The Bidding Stage: Creating a Winning Quote
Table of Contents
  • Step 1: Onboard the Data Processing Team
  • Step 2: Automate Validation Script Creation
  • Step 3: Apply the Script at Key Project Milestones
  • Step 4: Report and Resolve Data Issues via TrackEntry

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