$187B
Data engineering services market by 2030
Mordor Intelligence
$302B
Data analytics market by 2030
Grand View Research
$48B
Data pipeline tools market by 2030
Grand View Research
25%
EBITDA uplift for data-driven organizations
McKinsey
01
Your data is costing you more than you think
Every enterprise has data. Few have data they can trust. The gap between collecting data and extracting value from it is where billions are lost annually through poor quality, fragmented systems, and infrastructure that wasn’t designed for the demands of AI and real-time analytics.
$12.9M
Average annual cost of poor data quality per enterprise
Organizations hemorrhage millions through duplicate records, inconsistent formats, and stale data — before they even attempt AI. Over 25% of organizations lose more than $5M annually.
Gartner / Acceldata, 2025
64%
Of organizations cite poor data quality as their biggest challenge
Nearly 2/3 of enterprises admit data quality is their primary obstacle. Worse, 67% say they don’t trust their own data which is the very foundation their AI initiatives depend on.
Precisely, State of Data Quality 2025
12x
Data engineering talent shortfall vs. demand
With 461K open positions and only 55K qualified candidates in Q2 2025, the data engineering talent gap is among the most severe in technology, making external partnerships essential.
Industry Analysis, Q2 2025
43%
Of COOs rank data quality as their most significant data priority
This isn’t just an IT problem. Operations leaders across industries recognize that data quality directly impacts revenue, customer experience, and operational efficiency.
IBM Institute for Business Value, 2025
02
The Oppportunity
The organizations that master their data will lead
23x
More likely to acquire customers
McKinsey Global Institute
19x
More likely to be profitable
McKinsey Global Institute
28.7%
CAGR of data analytics market to 2030
Grand View Research
20%
Performance advantage over competitors
McKinsey
03. Our approach
We advise. We build. We Stay.
AI is only as good as the data it feeds on. RedEx builds modern, scalable data platforms that ingest, clean, and govern data from across your enterprise whether it’s IoT sensors on a factory floor or transaction logs in a mainframe. We work across Snowflake, Databricks, BigQuery, Redshift, and open-source stacks because the right choice depends on your workloads, your team, and your budget.
Data Accuracy
Pipeline Latency
Lower Storage Costs
Modern Data Lakehouse Architecture
Data Governance & Quality Automation
Real-Time Streaming Pipelines (Kafka/Flink)
Legacy Data Migration
01
Business-First Architecture
We start with your business questions. Every data model, pipeline, and dashboard is designed to answer the questions that drive revenue and reduce cost.
02
Quality Before Quantity
We fix your data quality before building analytics on top of it. Because the most sophisticated ML model in the world is worthless if it’s trained on bad data.
03
Built to Be Maintained
Every platform we build comes with documentation, monitoring, and knowledge transfer. Your team owns it on day one, not after a 6-month transition period.
Human. Intelligent. Measurable.
How We Help
End-to-end capabilities
From fragmented data silos to unified intelligence. We design, build, and operate data platforms that turn your most underutilized asset into your most powerful competitive advantage.
Data Platform Architecture
Design and build modern data platforms from data lakehouses to cloud-native architectures. We evaluate Snowflake, Databricks, BigQuery, and Redshift against your specific workloads, not vendor marketing.
Data Pipeline Engineering
End-to-end ETL/ELT pipeline design, development, and optimization. Real-time streaming with Kafka, batch processing with Spark, and orchestration with Airflow built for reliability at scale.
Data Governance & Quality
Implement data catalogs, lineage tracking, quality monitoring, and compliance frameworks. We make data trustworthy before you build AI on top of it because garbage in, garbage out.
Analytics & Business Intelligence
From self-service dashboards to embedded analytics. We design semantic layers, build data models, and deploy visualization platforms that turn data into decisions.
AI/ML Data Infrastructure
Build the data foundation that AI actually needs: feature stores, vector databases, training pipelines, and model serving infrastructure. Strategy-aligned, not science-project-driven.
Data Migration & Modernization
Migrate from legacy data warehouses and on-premise systems to modern cloud platforms. Zero-downtime migrations with validation frameworks that ensure nothing gets lost in translation.
Value Drivers
Where Data Platforms creates value
01
Revenue Intelligence
Unified customer data platforms that connect marketing, sales, and product data to reveal revenue patterns invisible in siloed systems. Real-time analytics that drive pricing, personalization, and market expansion decisions.
Data-driven organizations are 23x more likely to acquire customers
McKinsey Global Institute
02
Operational Efficiency
Automated data pipelines that eliminate manual reporting, reduce data preparation time by 80%, and enable real-time operational dashboards. From reactive reporting to predictive operations.
Up to 25% EBITDA increase for data-driven organizations
McKinsey
03
Risk & Compliance
Automated data lineage, quality monitoring, and compliance reporting that reduces audit preparation from weeks to hours. GDPR, CCPA, SOX, and industry-specific regulatory frameworks built into the platform.
Data governance market growing at 20.5% CAGR to $24B by 2034
Fortune Business Insights
04
AI Readiness
The single biggest factor limiting AI adoption isn’t algorithms but data quality. We build the data infrastructure that makes AI initiatives succeed instead of stalling in pilot purgatory.
Poor data quality is the #1 factor limiting AI scaling
Forrester
Analytics in Action
Intelligence that drives decisions
From real-time operational dashboards and predictive analytics to self-service BI and embedded intelligence, we build analytics platforms that people actually use.
Methodology
The DATA Framework
01
DISCOVER
Comprehensive data maturity assessment. We audit your current data landscape (sources, quality, governance gaps, technical debt) and design a target-state architecture aligned with business objectives, not technology trends.
02
architect
Engineer the data platform layer by layer. Ingestion pipelines, transformation logic, storage optimization, and semantic models, each component tested, documented, and designed for the team that will maintain it.
03
transform
Production deployment with automated quality monitoring, alerting, and self-healing pipelines. We don’t hand off a platform and walk away but we ensure it runs reliably with the right observability from day one.
04
activate
Expand the platform to new data domains, use cases, and business units. Build internal data engineering capability through knowledge transfer, documentation, and training. Your platform grows with your ambition.
The Modern Data Stack Evolution
Your data architecture should match your business maturity. We help you navigate the evolution from legacy systems to modern platforms at the pace that’s right for your organization.
foundation
Data Warehouse & ETL
Structured data, batch processing, traditional BI. The starting point for most enterprises, reliable but limited in flexibility, real-time capability, and support for unstructured data.
Technologies: SQL Server, Oracle, Teradata, Informatica
modern
Data Lakehouse & Streaming
Unified storage for structured and unstructured data. Real-time streaming, ML-ready infrastructure, and cost-effective scaling. The sweet spot for most enterprise data strategies today.
Technologies: Snowflake, Databricks, BigQuery, Kafka, dbt
advanced
Data Intelligence Platform
AI-native data infrastructure with automated governance, semantic understanding, and self-service analytics. Data products as first-class citizens with embedded quality and lineage.
Technologies: Data Mesh, Feature Stores, Vector DBs, Data Products
Evolution framework adapted from Databricks & Alation Modern Data Stack research
Tech Agnostic
We navigate the data platform landscape so you don't have to
We make IT simple for you.
The modern data stack is fragmenting fast. Dozens of competing platforms, overlapping capabilities, and the real risk of vendor lock-in. We help you build for flexibility and interoperability instead of betting on a single vendor's roadmap.
- Snowflake: Cloud data warehouse with near-zero maintenance and elastic scaling
- Databricks: Unified analytics platform combining data engineering, science, and ML
- Google BigQuery: Serverless data warehouse with built-in ML and geospatial analytics
- AWS Redshift: Petabyte-scale data warehouse integrated with the AWS ecosystem
Tools & Frameworks We Work With
Apache Kafka / Flink: Streaming
Real-time event streaming and stream processing at scale
Apache Spark / dbt: Transformation
Large-scale data processing and SQL-based transformation workflows
Apache Airflow / Dagster: Orchestration
Workflow orchestration for complex data pipeline dependencies
Custom Data Products: RedEx
Purpose-built data products and APIs for enterprise-specific requirements
Client Impact
Proven Results
01. The Executive Summary From Vision to Value: Bridging the Implementation Gap The consulting industry is entering a new era focused on tangible outcomes.
strategic Advisory
Ongoing retainer for CIO/CTO or AI strategists advisory on vendor selection, use case validation, and roadmap governance.
Platform Build
End-to-end design and implementation of a new data platform.
Migration Squad
Specialized team to move legacy data to the cloud.
Managed Services
Ongoing support and continuous optimization
Industries We Serve
FAQs
Common Questions
Do you support on-premise data?
Yes, we specialize in hybrid architectures that bridge on-prem and cloud.
What technologies do you use?
We are vendor-neutral but have deep expertise in Snowflake, Databricks, AWS, Azure, and GCP.