Contact Us

Data Engineering

The Foundation for Enterprise AI

We at Altimetrik architect and engineer unified, governed data platforms that eliminate fragmentation and establish the structural foundation required for enterprise AI. By designing modern data architectures, standardized integration patterns, and embedded trust controls, we create platforms where analytics and AI operate predictably at scale.
We enable enterprises to move from experimental workloads to production-grade intelligence - anchored in architectural rigor, operational resilience, and measurable business outcomes.

Because intelligence must show up in results

Enterprises engage us to turn fragmented data into operational advantage -executing faster,with greater certainty, and at scale.

40%

Effort Reduction in Post-Sales and Customer Retention

Avg

30 – 40 %

Faster Data Processing

$540M

Sales opportunity identified across top 25 customers

30%

Higher Forecast
Accuracy

Why Traditional Business Intelligence Is Disappearing

Trust

Governance, quality, lineage, metadata, and auditability are engineered directly into the data
platform, ensuring data remains accurate, explainable, and compliant at scale.

Speed

A use-case-driven SSOT approach delivers early business value while incrementally building a
durable, enterprise-wide data foundation.

Scale

Modern data architectures - lakehouse, data mesh, and fabric patterns - are designed for interoperability, performance, and AI-readiness across the enterprise.

Featured in Gartner® research (2025)

Resilient Data Management Strategy | Data Integration Reference Architecture

Recognized by Industry Analysts

Altimetrik has been named as a Product Challenger in ISG’s Advanced Analytics and AI Services Provider Lens™ (2024) and featured in Gartner® research on data strategy and integration (2025).

Engineering Data for Scale

Engineering Data for Scale

Altimetrik’s Data Engineering practice integrates architecture, modernization, governance, and analytics
enablement to solve enterprise-scale data fragmentation - enabling trusted analytics, scalable AI, and longterm platform resilience.

Data Strategy & Architecture

Architectural direction for modern data platforms

Defines the structural blueprint for enterprise data environments, including data platform architecture,
cloud storage strategy, domain alignment, and data modernization roadmaps. Establishes the foundation required for scalable analytics and AI use cases

Data Platform Modernization

Modernizing fragmented data estates

Transforms legacy systems into interoperable, high performance platforms. Encompasses SSOT design, integration frameworks, migration programs, and resilient data architectures engineered for long-term evolution

Data Governance & Master Data

Embedding trust and control into the data lifecycle

Operationalizes governance across metadata, lineage, master data, and compliance controls. Ensures data remains accurate, secure, explainable, and reusable across domains and analytical systems.

Analytics & Insights Platforms

Enabling consistent, decision-grade data
consumption

Optimizes analytical platforms, semantic layers, and self-service environments to support reliable reporting, standardized metrics, and scalable insight delivery.

NextGen Data Accelerators

AI-Driven Accelerators Built to Automate, Standardize & Scale

Data Migration Assistant

Automated cloud migration with schema conversion and validation controls for reliable, high-fidelity data movement.

Data Hub & Fabric

Interoperable data layer connecting upstream and downstream systems via scalable APIs for seamless enterprise integration.

Knowledge Graph & Semantic Layer

Automated business-context-driven semantic layer through AI-augmented knowledge graph technology.

Report Migrator

AI-assisted tool designed to accelerate enterprise analytics modernization by automatically converting Qlik dashboards into Power BI reports.

Master Data Governance Framework

Enterprise-grade MDM workflows ensuring cross-domain consistency and control at scale.

Smart Data Governance

AI-augmented data quality, lineage, and metadata mapping delivering trust across the enterprise data estate.

Data Verification & Validation

Automated data validation and reconciliation across ingestion and transformation layers for pipeline integrity.

MLOps Framework

Production-ready pipelines for model training, deployment, monitoring, and governance at enterprise scale.

Move from fragmented data to scalable intelligence

Modern data engineering is the foundation for reliable analytics and production-grade AI. Assess your current capabilities and define the next stage of modernization.

NextGen Data Accelerators

Partnered for success

Altimetrik’s Data Engineering practice integrates architecture, modernization, governance, and analytics enablement to solve enterprise-scale data fragmentation - enabling trusted analytics, scalable AI, and longterm platform resilience.

Our Edge

01

Engineered for Business Consumption

Data designed as a product owned, reusable, and aligned to outcomes.

02

Value-Led Roadmaps

Every platform decision tied to measurable KPIs.

03

AI-Augmented Engineering

Automation across ingestion, testing, observability, and operations.

03

Trust Embedded by Design

Security, compliance, lineage, and governance built in from day one.

Re-Engineer the Foundation of Intelligence

If your data platform slows decisions, undermines trust, or limits AI at scale, the problem is structural not tactical.

Get Started

Talk to a data engineering expert.

Explore how to move from fragmented data to AI-ready foundations.

Our expertise
Before we proceed..

Altimetrik is committed to protecting your personal information. To apply for a position, you will need to provide your email address and create a login. Your information will be used in accordance with applicable data privacy laws, our Privacy Policy, and our Privacy Notice.

Explore More