Transformation &
Processing
Turning raw data into valuable insights through robust ETL pipelines, advanced modeling, and automation.
Transformation & Processing
Turning raw chaos into refined insights. We architect robust ETL/ELT Pipelines that clean, validate, and enrich your data at scale.
Extract
RUNNINGReading raw JSON/CSV from Data Lake.
Cleanse
Removing nulls, handling schema drift.
Mask PII
Hashing emails for compliance.
Enrich
Joining with dimension tables.
Aggregate
Calculating daily KPIs.
Data Quality Guardrails
Bad data shouldn't crash your pipeline. We implement "Dead Letter Queues" (DLQ) to isolate malformed records for manual inspection.
Performance Tuning
We optimize query performance using Partitioning. Instead of scanning the entire dataset, we target specific slices.
Automated FinOps & Retention
Intelligent Tiering Simulator
Cost optimization based on data age
Compliance Retention Vault
WORM (Write Once Read Many) Protection
Data is cryptographically locked. Even root users cannot delete these objects until the retention period expires.
Resiliency Mode
Designing for Speed, Scale, and Evolution
Data structures aren't static. We design flexible schemas that evolve with your business while maintaining sub-second query performance through advanced indexing and partitioning strategies.
Data Modeling Studio
Query Optimization Sandbox
Simulate the impact of physical data layout on query performance. Toggle features to see metrics change.
Automated Processing & Reliability
Data Ops Console
import { DataClient } from '@react-digi/sdk';
async function triggerProcessing(fileId: string) {
const client = new DataClient({ region: 'ap-east-1' });
// Programmatic Job Execution
const job = await client.startJob({
name: 'transform-sales-data',
args: { input: fileId, mode: 'overwrite' }
});
console.log(`Job started: ${job.id}`);
return job.waitForCompletion();
}We support Python, Node.js, and SQL for custom transformations. No proprietary lock-in.
AI-driven root cause analysis for failed jobs (e.g., "Memory Limit Exceeded").