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Data Warehousing Services

Data warehouse services include advisory, implementation, support, migration, and managed services to help companies benefit from a high-performing DWH.

Since 2005, ScienceSoft has been helping its clients consolidate data in an efficient DWH solution and enable company-wide analytics and reporting.

Data Warehouse Services – ScienceSoft
Data Warehouse Services – ScienceSoft

What Makes ScienceSoft a Trustworthy Partner

  • Data warehousing services since 2005.
  • Data analytics expertise since 1989.
  • Designing and implementing business intelligence solutions since 2005.
  • A dedicated team of DWH solution architects, data engineers, DevOps specialists, database administrators, QA specialists.
  • Expertise in delivering complex and large-scale solutions (incl. real-time data warehouses) for 30+ industries.
  • An in-house PMO and established project management practices to achieve project goals regardless of time and budget constraints.
  • Quality-first approach based on a mature ISO 9001-certified quality management system.
  • ISO 27001-certified security management based on comprehensive policies and processes, advanced security technology, and skilled professionals.

What makes ScienceSoft different

We achieve project success no matter what

ScienceSoft does not pass mere project administration off as project management, which, unfortunately, often happens on the market. We practice real project management, achieving project success for our clients no matter what.

See how we do it

Data Warehouse Services by ScienceSoft

Data warehouse advisory services

ScienceSoft’s team designs a data warehouse and plans out its implementation as well as renders advisory support while migrating or upgrading your legacy solution to optimize DWH performance and costs.

Service details

Our data warehouse advisory services may include:

  • DWH solution design:
    • DWH requirements engineering.
    • Business case creation.
    • DWH solution architecture.
    • DWH tech selection, outline of the optimal cloud data warehouse platform and its configuration*.
    • Data governance design for data quality, availability and security.
    • Data modeling, ETL/ELT design, etc.
  • DWH implementation/migration/optimization plan.
  • Consulting support or complete project management.

* Start with a free guide to data warehouse selection by ScienceSoft to make the right technology choice.

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Data warehouse implementation

ScienceSoft’s team builds a DWH tailored to your unique data consolidation and storage needs and implements it into your ecosystem.

Service details

We offer:

  • Data warehouse requirements engineering.
  • Data warehouse solution conceptualization and platform selection.
  • Data warehouse solution architecture design.
  • Data warehouse system analysis.
  • Data modeling and ETL/ELT design.
  • Data warehouse solution development.
  • Data warehouse quality assurance and launch.
  • Data warehouse after-launch support.

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Data warehouse migration

ScienceSoft helps you optimize DWH performance and lower total cost of ownership by moving your existing on-premises data warehouse to the cloud with no business process disruptions.

Service details

ScienceSoft helps you migrate your legacy DWH solution to the cloud or build a hybrid data warehouse by:

  • Outlining a migration strategy and a plan.
  • Designing a cloud data warehouse architecture.
  • Assisting in selecting the right cloud vendor*.
  • Configuring the cloud cluster in a way to optimize costs.
  • Redeveloping a data warehouse on a new platform.
  • Integration of cloud and on-premises environments.
  • Transferring both master data and metadata to the new data warehouse.
  • Testing the completeness of data to ensure the migration’s success.

* Start with a free guide to cloud data warehouse selection by ScienceSoft to make the right technology choice.

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Data warehouse testing

ScienceSoft offers a comprehensive DWH testing set, which can include ETL/ELT testing, BI testing, DWH performance testing and security testing.

Service details

ScienceSoft’s DWH testing services have the following stages:

  • Studying project requirements.
  • Test planning and test design.
  • Test implementation.
  • Result analysis and accountability.

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Data warehouse support

ScienceSoft provides DWH support to help you identify and solve DWH performance issues, achieve DWH stability for timely and quality data flow for business users, lower DWH storage and processing costs.

Service details

ScienceSoft’s team offers:

  • DWH solution architecture optimization.
  • Optimization of individual DWH tools (keeping more data in memory, adding indexes to tune query performance).
  • DWH design optimization (changing database schemas, data loading, etc.).

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Data warehouse improvement

We conduct a thorough audit of your existing DHW solution and take on improvement actions: both advisory and implementation ones.

Service details

ScienceSoft’s team takes on:

  • Performance optimization (e.g., indexing to speed up data retrieval, query optimization, table partitioning).
  • Data quality enhancement.
  • Data governance framework development.
  • Integrating new data sources.
  • Scalability improvement (e.g., via load balancing mechanisms).
  • Migration to the cloud.
  • ETL/ELT optimization (e.g., via parallel processing, CD, and incremental loading mechanisms).
  • Optimization of cloud costs.
  • Enhancing user accessibility (e.g., via self-service BI tools, documentation and training)
  • Security and regulatory compliance enhancements (e.g., via data encryption, user access controls, audit trails).

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How Much Will Your DWH Project Cost?

Estimate the Cost of Data Warehouse Services

Please answer a few questions about your business needs to help our experts estimate your service cost quicker.

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*What type of data does your organization primarily deal with?

What kind of help are you looking for regarding your DWH initiative?

*What is your current/expected data volume?

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If you don’t know the data size in TB, describe it as the number of data records: e.g., orders, payments, cases, customer interactions, sensor readings.

*Please describe the data sources for your DWH. Check all that apply.

*How promptly should changes in source data be reflected in the DWH?

*Should your current/target DWH offer complex analytics?

*Do you have any preferences for the environment?

*Do you have any tech stack preferences, incl. cloud platforms?

*Are there any compliance requirements for your current/target DWH? Check all that apply.

Your contact data

Preferred way of communication:

We will not share your information with third parties or use it in marketing campaigns. Check our Privacy Policy for more details.

Thank you for your request!

We will analyze your case and get back to you within a business day to share a ballpark estimate.

In the meantime, would you like to learn more about ScienceSoft?

Our team is on it!

ScienceSoft USA Corporation Is a 3-Year Champion in the Financial Times Rating

Three years in a row (2022–2024), the Financial Times has included ScienceSoft USA Corporation in the list of 500 fastest-growing American companies. This is the result of our dedication to driving project success despite any constraints and disruptions.

ScienceSoft’s Data Warehouse Portfolio

Why Build Data Warehouse Solutions with ScienceSoft

  • -30%

    project time and budget costs due to thorough project management

  • up to 60%

    less time for DWH solution maintenance due to optimal platform choice

  • up to 80%

    reduction in cloud computing costs due to proper cloud configurations

Get DWH Solutions Tailored to the Specific Needs of Your Industry

Below, we provide domain-specific examples of data that can be consolidated in a data warehouse to ensure comprehensive analytics and insightful reporting.

  • EHR data, including patients’ medical history, diagnoses, medications, treatment plans, and lab results.
  • Patient-generated health data (PGHD).
  • Medical imaging data, including X-rays, MRIs, CT scans, etc.
  • Billing and claims data.
  • Data on asset utilization, status, and location.
  • Data on patient-hospital interaction.
  • Population health data.
  • Clinical trial and genomic data.
  • Laboratory management and test results data.
  • HR data, including scheduling, employees’ performance, and compensation.
  • SCM data.
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  • Equipment performance and event data.
  • Full-cycle production data from the required systems, including HMI, PLC, SCADA, and MES.
  • Data on asset condition, lifecycle, and current value.
  • Financial performance data.
  • Customer communication history, order details.
  • Supplier, procurement, inventory, warehouse, and logistics data.
  • Employees’ performance data.
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  • Data on financial transactions.
  • Customer accounts balance and activities.
  • AR/AP, sales, cash flow, and other financial management data.
  • Customer demographics.
  • Borrowers’ credit scores and financial statements.
  • Data on the usage of banking products and apps.
  • Customer feedback and other bank-customer interaction data.
  • Marketing campaigns performance data.
  • Data from financial marketplaces, including currency exchange and inflation rates, stock quotes.
  • Data on banking environment security, e.g., audit trail data, history of data transfer, and user logins.
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  • Credit rating scores.
  • Business financial statements.
  • Loan portfolio data.
  • Data on loan servicing.
  • Data on loan repayment transactions and their status.
  • Borrower data, including demographics, income, location, company size, industry, etc.
  • Data on hedging strategies, collateral, and securities.
  • Data from financial data marketplaces, e.g., market interest and currency exchange rates, real estate value.
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  • Data on insurance products, e.g., policies and their terms, prices.
  • Claim management data, e.g., insurance type, claimant, damage, settlement status.
  • Customer-related data, including demographics and inquiries history.
  • Data on agents’ activity.
  • Financial management data, including sales, payroll, received premiums, paid claims.
  • Data from IoT, computer vision, and asset monitoring systems of the insurer, commercial customers, third-party telematics providers.
  • Data from the internal systems of credit rating bureaus, medical information bureaus, social security administration, police administration.
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  • Data on portfolio asset allocation.
  • Billing, payouts, and taxation data.
  • Data on client communications, demographics, preferences.
  • Data on investment deals and transactions.
  • Data on selling-purchasing operations.
  • Data on received and due payments.
  • Capital market data, e.g., stock prices, bond yields, currency exchange rates.
  • Data on market, credit, and liquidity risk factors.
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  • Inventory management data, including stock levels across storage and selling locations.
  • Data on customer demographics, preferred payment and shipment methods.
  • Customer sentiment data driven from surveys, service-related interactions, and social media content.
  • Data on customer behavior online and in brick-and-mortar stores.
  • Shopping card data (for ecommerce stores).
  • Payment transactions data.
  • Order fulfillment data, e.g., product demand, order fulfillment status.
  • Data on marketing campaigns.
  • SCM data, e.g., supplier capacity and performance.
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  • Telematics data, e.g., real-time data on vehicle location and state, fuel consumption.
  • Data on cargo condition.
  • Driver behavior data.
  • Weather and traffic data.
  • Data on customer preferences, order history, and feedback.
  • Personnel schedules data.
  • Inventory levels and demand data.
  • Financial management data, including cost, cash flow, revenue, profit, and payroll data.
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  • Data from property research and internet listing services, e.g., property listings and features, prices, availability.
  • Historical customer-property matching data.
  • Data from GIS and public services, e.g., spatial data, data on geographical boundaries and zoning.
  • Customer-related data, including demographics, property inquiries history, communication logs.
  • AR/AP data, financial statements.
  • Property management data, e.g., info on tenants, rental income, lease terms, maintenance requests.
  • Customer-generated content like reviews and social media comments.
  • Data on construction management, e.g., project progress and costs, resource utilization.
  • Data on regulation related to zoning and land use, environment, and accessibility standards.
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  • Smart meter data, e.g., on energy consumption, peak demand periods.
  • Grid data, e.g., grid performance, voltage levels, outage events, load distribution.
  • Weather data.
  • Data on asset condition, performance, and maintenance history.
  • Renewable energy data.
  • Data on customer demographics, preferences, and energy usage patterns.
  • Financial management data, e.g., on revenue, expenses, and profitability.
  • Environmental impact data, including carbon emissions, water usage, and waste generation.
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  • Seismic and microseismic data on underground rock formations.
  • Historical drilling and exploration data.
  • Data on reservoir characteristics like fluid and phase behavior, hydrocarbon saturation, porosity.
  • Operational data from drilling and production equipment.
  • Data on equipment status and maintenance schedules.
  • Environmental impact data, e.g., greenhouse gas emissions, water usage, waste disposal.
  • Refinery data.
  • Data on supply chain management.
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  • Customer-related data, including demographics, preferences, feedback.
  • Network data, e.g., capacity utilization, maintenance activities, outages, latency.
  • Billing data, including billing records, pricing plans, discounts, payment history.
  • Call detail records, including info on call duration, type, location, and quality.
  • Real-time and historical equipment data.
  • Data on competitor activity.
  • Data on compliance regulations.
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  • LMS data, e.g., online course completion rates, engagement metrics, utilization of digital learning tools.
  • Student-related data, e.g., demographics, academic performance, attendance records, learning styles.
  • Data related to teaching personnel, including qualifications, performance evaluations, professional development dynamics.
  • Curriculum data like lesson plans, learning objectives, assessment results.
  • Data on parent engagement, e.g., communication logs, meeting records, surveys.
  • Data on the climate in an educational institution, e.g., surveys, discipline incidents, bullying reports.
  • Financial data, including budget allocations, grant funding management, expenditure tracking.
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  • Data on customers, including demographics, preferences, interactions.
  • Customer feedback data, e.g., client satisfaction surveys, feedback comments, testimonials, online reviews.
  • Operational data, including resource allocation, budgets, tasks completion.
  • Employee data, e.g., skills and qualifications, productivity, training records.
  • Data on service delivery.
  • Time-tracking data like billable and non-billable hours, time spent on certain tasks.
  • Marketing-related data, including info on lead generation sources, conversions, marketing campaigns performance.
  • Financial management data, e.g., revenue streams, invoicing cycles, AP/AR data.
  • Knowledge management data like KB usage metrics, knowledge sharing activities.
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  • Customer demographics and interactions data.
  • Customer feedback data from surveys and online review platforms.
  • Data on bookings, reservations, and cancellations.
  • Financial data, including sales and revenue.
  • Operational data, including info on room occupancy, inventory levels, staff performance.
  • Data on advertising channels and marketing campaigns.
  • Data on competitors’ offerings and pricing strategies.
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  • Audience demographics data.
  • Data on audience engagement, including viewership, ratings, likes, clicks, shares.
  • Data on audience sentiment from social media networks, online review platforms, and surveys.
  • Data on financial management, e.g., profitability, revenue attribution, production budgeting.
  • Content consumption data, including info on watch time, device usage.
  • Advertising and monetization data, e.g., ad impressions, conversions, revenue from ads and subscriptions.
  • Data on market trends and competitor activity.
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Head of Data Analytics Department, ScienceSoft

With dozens of DWH projects in our portfolio, we still haven’t had a chance to say: “Oh, it’s just like that X project, remember? Let’s use it as a template!” And honestly, I don’t think this will ever be the case. Even same-industry companies face unique challenges, which requires different approaches to make data work. I believe that tailoring DWH solutions to specific business concepts and processes is what drives customer satisfaction with ScienceSoft’s services.

Our Clients Say

We first contacted ScienceSoft to get expert advice on the creation of the centralized analytical solution. After we got a clear project roadmap, we commissioned ScienceSoft to develop a part of the solution, covering invoicing. The system automates data integration from different sources and provides visibility into the invoicing process. We have already engaged ScienceSoft in supporting the solution and would definitely consider ScienceSoft as an IT vendor in the future.

We commissioned ScienceSoft to build a flexible database with user interfaces for managing our test data stored as time-based CVS files. ScienceSoft delivered a fully functioning solution regardless of the new requirements that appeared during the project. We are planning to extend the logic of our reports and dashboards and data processing options in our solution, and we’ll definitely be considering ScienceSoft as our partner in this initiative.

bioAffinity Technologies hired ScienceSoft to help in the development of its automated data analysis software for detection of lung cancer using flow cytometry. In addition to the solid technical expertise shown by ScienceSoft, its developers demonstrated a profound understanding of laboratory software specifics and integrations. We would recommend hiring ScienceSoft to anyone looking for a highly productive and solution-driven team.

Technologies We Use

Our Cooperation Highlights

Timing

To meet the DWH project timeframes and help you get ROI early, we apply the most relevant iterative software development methodologies (Agile, Scrum).

Service delivery

To maximize the value of our services, ScienceSoft:

  • Works in adherence with the signed SLA, which outlines project timelines, responsibilities, deliverables, etc.
  • Outlines a KPI system for full visibility into the DWH project progress health.
  • Sets up transparent collaboration in the form of: meetings with project stakeholders, presentations of important project decisions, cross-departmental workgroups to solve complex problems, etc.

Flexible pricing models

  • Fixed price – for small DWH projects, one-time activities, and short-term (up to 4 months) fixed-scope engagements.
  • Time & Material – for midsize and large data warehouse projects, end-to-end DWH advisory services, extra activities, etc.
  • Consumption-based pricing (subscription fee) – for DWaaS, regular fixed-scope DWH support and administration activities.

Data Warehousing Services FAQs

What if our data is voluminous? Do you have experience in big data?

ScienceSoft is equally proficient in working with both traditional and big data. We have 11 years of experience in end-to-end big data services, including big data analytics and visualization.

How to ensure our employees actually use the DWH?

Making it easy to reach company-wide DWH adoption is one of our priorities. To achieve this, we design DWH capabilities with unique user needs in mind. For instance, we enable zero code reports creation for BI users with a limited tech background and ensure easy solution navigation. We also create detailed software documentation and provide training for your internal teams.

We implemented a DWH. What’s next?

After implementing a data warehouse, it’s crucial to keep it high-performing and stable and ensure its capabilities correspond to the changing needs of your organization. This is achieved through ongoing DWH maintenance (e.g., continuous monitoring and adjustment of hardware and software configurations) and timely evolution (e.g., adding new data sources, data models, and reports).

What is the difference between a data warehouse and a database?

The difference between a data warehouse and a database is in the nature of data the storages handle and the purposes they serve. A data warehouse stores highly structured, pre-processed data from multiple sources to enable its analytics via BI reports and queries. A database handles real-time operational and transactional data from one application to enable app transactions.

What are the leading DWH vendors?

According to the 2023 Forrester Wave Report, Snowflake, Google BigQuery, Amazon Redshift, and Azure Synapse Analytics are singled out as leaders and strong performers. ScienceSoft widely uses these platforms in our practice. Visit our dedicated page to learn more about their specifics.