cloud computing image

How Valoriz Unified Multi-Cloud Data Architecture

Our client needed dedicated expert teams managing all cloud-based data integration and engineering operational requirements.
Industry

Cloud Computing

Overview

overview imageoverview image
Services Provided
Cloud Consulting Services
Quality Assurance Services

The client required comprehensive data engineering consulting services to consolidate fragmented datasets across on-premises and cloud environments while supporting diverse engineering teams with rapidly changing business requirements.


We delivered an enterprise data lake strategy using Azure-native technologies and composite team expertise, enabling scalable data processing, automated DevOps workflows, and flexible architecture for continuous business evolution.

Category

Cloud Consulting Services

System

Azure Cloud

Services Provided
Cloud Consulting Services
Quality Assurance Services

The Goal

Our customer needed an expert team to manage their cloud-based data integration and engineering, while ensuring scalability, reliability, and agility.

Data Integration

The data was spread across on-premises and cloud systems. The goal was to unify it into a reliable, scalable foundation so every team could access the same trusted source.

Agile Delivery

The teams needed data delivered quickly, not in weeks. The aim was a cloud-native, agile model that made data faster, more flexible, and responsive to constant business changes.

Scalability
Flexibility
Reliability
Speed

Challenges

Data Complexity

The datasets were located in both on-premise systems and the cloud. This made it hard to combine, process, and ensure consistent access for multiple engineering teams.

Rapid Changes

The businesses kept changing quickly. This required a flexible engineering model that could respond to new needs without slowing down delivery.

Data
fragmentation
Large
scale
Constant
changes
Access
consistency

Process

workingworkingDetermine

We start by understanding your needs, challenges, and assumptions to lay a strong foundation for your project. This ensures a smooth ecommerce website development services journey.

STEP 1

STEP 2

workingworkingDescribe

From project scope to risk assessment and milestones, we map out every detail, creating a clear roadmap as a leading ecommerce development agency for seamless execution.

man is working on computer screen with graphsman is working on computer screen with graphsDesign

With wireframes, prototypes, and a user-centric approach, we craft intuitive UI/UX and robust system architecture, enhancing your store with best ecommerce hosting services.

STEP 3

STEP 4

3d graph computer illustrator3d graph computer illustratorDevelop

Engineering, API integrations, QA, and security come together to build a high-performing, secure, and scalable solution with expert Ecommerce web development.

workingworkingDeploy

From environment setup to product deployment and migration, we ensure a smooth launch with ongoing support, backed by reliable best ecommerce hosting services.

STEP 5

Solution

We put together a team of cloud architects, integration specialists, and data engineers. By using Azure-native practices, modern data tools, and agile DevOps, we created a flexible and scalable framework that could keep up with business changes.

Scalable Data Integration

solution 1

Scalable Data Integration

Problem

The customer’s data was scattered across on-premise systems and several cloud platforms. This made it tough to consolidate, process, and deliver data consistently.


Solution

We combined the datasets using Azure Data Lake, ADF, and ISE. This established a single, scalable foundation that simplified access and enhanced collaboration among engineering teams.



Flexible Engineering Model

solution 2

Flexible Engineering Model

Problem

Frequent business changes meant the existing data engineering setup was too rigid to meet new requirements.


Solution

We introduced a cloud-native agile model supported by DevOps automation. This made data delivery faster, more adaptable, and reliable, keeping engineering teams in sync with changing priorities.

Reliability and Performance

solution 3

Reliability and Performance

Problem

The existing data processes were inconsistent, leading to delays, errors, and a lack of trust in the information given to teams.

Solution

We used Azure Databricks and automated validation pipelines to ensure reliability and accuracy. This improved performance, reduced errors, and gave decision-makers confidence in the data they relied on.


CloudCloud

Technologies used

Azure Cloud
Azure Cloud

Leveraged Azure Cloud for scalable and secure infrastructure.

Azure DevOps
Azure DevOps

Enabled efficient deployment with Azure DevOps.

Azure Databricks
Azure Databricks

Used Azure Databricks for unified data analytics and accelerated data processing.

Azure Data Factory
Azure Data Factory

Implemented Azure Data Factory to orchestrate and automate data integration workflows efficiently.

Java Spring Boot
Java Spring Boot

Developed backend services using Java Spring Boot for reliable application performance.

MongoDB
MongoDB

Utilized MongoDB for flexible, high-performance data storage and real-time access.

SQL Server
SQL Server

Integrated SQL Server for structured data management and optimized query performance.

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40%+

Reduced Integration
Effort

2x+

Increased Deployment
Speed

95%+

Uptime For
Data Services

Impact

Impact 1

Faster Data Access

Engineering teams may access aggregated datasets 50% faster, minimizing analytical delays and allowing for faster responses to business requirements across departments.

impact 2

Higher Deployment Velocity

With the cloud-native agile process and DevOps automation, release cycles were doubled, allowing teams to deploy updates and new data features notably faster.

impact 3

Improved Data Reliability

Data mistakes were decreased by 30% thanks to automated pipelines and Azure-native tools, resulting in consistent, correct information for engineering and business teams to make decisions.

impact 4

Operational Efficiency Gains

Manual integration efforts decreased by 40%, allowing the data engineering staff to focus on higher-value work rather than monotonous maintenance.

impact 5

Seamless Scalability

The system enabled rising datasets without sacrificing speed, allowing the company to easily handle peak workloads and plan for future business growth.

Conclusion

This engagement showed us how a cloud-native approach changed complex data challenges into reliable and business-ready outcomes.

Conclusion 1
Stronger Foundation

By bringing together fragmented datasets into a single cloud platform, the customer gained a dependable foundation that improved access, reduced errors, and made sure the data was always trustworthy and current.

Conclusion 2
Future Ready

With agile processes, DevOps automation, and expandable architecture, the customer is now prepared to handle future business needs, respond quicker, and make confident data-driven decisions.