AI-Ready Data
Build a unified, trusted data foundation that accelerates AI solution development across the enterprise
Establish the data backbone AI depends on
Create a reliable, integrated data environment that strengthens quality, consistency, and availability.
Uncover the logic and relationships hidden inside your data
Use Data Archaeology to reveal the rules and patterns in your data—so decisions and models are grounded in clarity, not assumption.
Deliver real-time performance at enterprise scale
Upgrade pipelines and processing to deliver the speed, throughput, and real-time intelligence modern operations demand.
Overview
Most data environments weren’t designed for the speed and intelligence modern businesses require. Data lives in different places, follows outdated rules, and doesn’t move quickly enough to support real-time decisions or AI initiatives.
3Pillar helps you build a reliable, unified data foundation—one that teams can trust and AI can act on. We start by uncovering how your data actually works through our Data Archaeology process, revealing the patterns, logic flows, and anomalies that affect quality and consistency and often lead to manual reconciliation. With that clarity, every modernization decision is grounded in fact rather than assumption.
From there, we modernize the pipelines and structures that move your data. We strengthen data integrity and prepare curated datasets that fuel analytics, automation, and intelligent products. These improvements reduce operational effort and lower total cost of ownership, while enabling faster decisions, more reliable AI adoption, and deeper business insight.
It all comes together in a modern data foundation—one built to evolve, adapt, and support whatever your teams create next.
What we build
Curated, AI-ready datasets & features
Develop reusable datasets and feature stores optimized for analytics, automation, and machine learning.
Unified & trusted data foundations
Create consistent data models and governed environments that reduce fragmentation and improve data reliability.
Modern data platforms & lakehouses
Transform legacy data estates into cloud-native, high-performance platforms that support real-time intelligence.
Master data and a Single Source of Truth
Establish reconciled customer, product, and transactional domains using proven MDM patterns to give teams a consistent, trusted view of the business.
Streaming & real-time data pipelines
Deliver low-latency data for AI-driven operations, real-time decisions, and event-based architectures.
Compliance-ready data environments
Implement auditability and governance aligned with HIPAA, SOX, CMS, financial controls, and enterprise policy.
Modern data ecosystem alignment
Work seamlessly across modern data stacks—Snowflake, Databricks, the major clouds, and contemporary pipeline frameworks—to integrate with your architecture and accelerate value.
Signs your data is holding you back
When your data environment begins creating friction, the symptoms often show up long before teams recognize the underlying cause. These signals reveal when data inconsistency, latency, or complexity is creating operational drag—and when it’s time to modernize your foundation.
Inconsistent or conflicting data across systems
Teams spend time reconciling results because definitions, rules, and transformations differ across sources.
Pipelines that break under normal load
Batch and streaming jobs fail unpredictably, causing downstream delays and operational fire drills.
Undocumented logic buried in legacy code or ETL
Key business rules sit inside scripts, spreadsheets, or legacy workflows—making change risky and slow.
Slow data availability that stalls analytics and AI
Data arrives too late or too inconsistently to power real-time decisions, personalization, or model training.
Rising storage, compute, or warehouse costs
Legacy architecture, duplicate datasets, and inefficient processing increase cloud spend without increasing value.
No reliable source of truth
Teams build their own data extracts and dashboards because shared domains (customer, product, transactional) are incomplete or outdated.
Business outcomes you can expect
- Faster AI adoption, supported by consistent, high-quality, unified data.
- Accelerated insight generation through lower latency and fewer manual data tasks.
- Lower compliance and operational risk through transparent quality and governance.
- Higher delivery velocity as teams shift from fixing data to applying it.
- Stronger customer experience powered by real-time personalization and decisioning.
- Reduced long-term cost through consolidation, automation, and stronger data maturity.
- A durable data backbone designed to evolve with your business and your AI ambitions.
Efficiency. Accuracy. Agility.
Enhance your Data Engineering approach, and reap the rewards of Data Engineering 2.0. Reach out today to get started.
Let’s Talk