Data Validation

Clean, verify, and classify material data to ensure accuracy, consistency, and experimental relevance.

Data Validation

Validate and clean material data

Clean, verify, and classify material data to ensure accuracy, consistency, and experimental relevance.

Start Validating

Problem Statement

Unvalidated or inconsistent data can mislead ML models and design decisions in materials research.

Our Solution

Our Validation Engine:

  • Detects outdated or incorrect values
  • Distinguishes between experimental and theoretical datasets
  • Applies outlier detection and statistical checks
  • Flags suspicious entries for review

Key Features

  • πŸ“Š Anomaly Detection – LOF, skew correction, and outlier filtering
  • πŸ§ͺ Classification – Distinguish experimental vs theoretical data
  • πŸ”„ Scheduled Validation – Keep data in sync with source updates
  • πŸ“ Reviewer Interface – Human-in-the-loop corrections

Workflow Overview

  1. Load structured dataset
  2. Run rule-based and statistical checks
  3. Detect anomalies or outdated info
  4. Flag for correction or auto-fix

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Frequently asked questions

To ensure all material data is accurate, relevant, and free from inconsistencies or outdated values.

The system uses pattern detection and heuristics to identify experiment-based content automatically.

Yes, it includes validation rules and anomaly detection techniques (like LOF) to highlight issues.

The checker subsystem periodically re-validates datasets and syncs with updated sources.

Yes, there's a reviewer interface for human-in-the-loop verification.

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