Data Lakehouse & Warehouse

Modern Architecture. Smarter Data Decisions

Bring raw and refined data together under a single architecture. Modernize how data is stored, served and queried with reduced complexity and stronger organisational oversight.

Unified Data, Unlimited Possibilities.

Combine the governed precision of a data warehouse with the scalable intelligence of a lakehouse. Our modern data architectures help businesses turn raw data into actionable insights powering analytics, AI, and innovation at scale.

Let’s Talk

What Makes Our Approach Different


Tech Integration

Let's Talk

Connect modern tools without creating data sprawl.

  • sundew
    Cross-platform compatibility
  • sundew
    Streamlined data ingestion
  • sundew
    Unified processing layer

Access Control

Let's Talk

Govern who sees what without slowing down.

  • sundew
    Policy-based controls
  • sundew
    Multi-layer permissions
  • sundew
    Zero-copy sharing

Query Flexibility

Let's Talk

Serve multiple needs with one data layer.

  • sundew
    Open format queries
  • sundew
    Low-latency fetch
  • sundew
    BI and ML ready

Storage Efficiency

Let's Talk

Reduce overheads without losing agility.

  • sundew
    Columnar compression
  • sundew
    Tiered data storage
  • sundew
    Auto-scaling compute

Business Cases that we have addressed

Sundew’s Data & AI pillar focuses on enabling "Intelligent Enterprises" through advanced analytics and AI-led efficiency. We assist businesses & enterprises in moving beyond the "experimental" phase of AI into integrated, production-ready solutions.

  • Longitudinal Cohort Intelligence

    A New York Insurance provider struggled with "black box" renewals, lacking visibility into persistence decay curves across specific policyholder segments.

    Without granular data on when and why customers lapsed, leadership could not accurately predict long-term loss ratios, optimize Lifetime Value (LTV), or transition from reactive churn management to predictive lifecycle orchestration.

  • Distribution Analytics

    Distribution leadership evaluated performance solely on top-line sales volume, masking a critical profitability leak.

    High-volume agents were frequently onboarding "low-persistency" business that lapsed within a year, causing the firm to lose money on acquisition costs while rewarding agents for business that lacked long-term enterprise value.

  • Hospitality

    Sundew engineered an AWS-based Lakehouse for European catering leaders, unifying SAP S/4HANA, CAR, and custom data. This 360° supply chain analytics platform optimizes pricing, vendor performance, and procurement.

    The solution drives margin growth and spend consolidation by identifying price variances and eliminating procurement leakage.

  • Omni-Channel Attribution

    A leading insurer faced severe data fragmentation across 50+ external marketing partners and internal ERP systems.

    This "Attribution Gap" made it impossible to link specific marketing spend to actual policy issuance, resulting in inefficient capital allocation and a lack of transparency regarding the true ROI of various distribution channels.

  • Healthcare (OCR Reading)

    For a leading listed healthcare chain we implemented a Gen AI solution that can read from various medical documents and handwritten prescriptions and ingest the data into the healthcare management system from where the next clinical actions are triggered.

    The solution used both structured and unstructured databases to bring in efficiency in the process automation.

  • Legacy Data Migration With Zero Data Loss

    Sundew modernized a 15-year legacy O2C ecosystem for a leading Indian healthcare provider. We executed a mission-critical migration ensuring zero data loss.

    This transformation ensured total business continuity, enhanced operational visibility, and established a future-ready foundation for accelerated enterprise growth using Azure Stack.

  • Retail & Luxury

    Sundew engineered a demand-driven inventory and procurement system ensuring zero stock-outs while maintaining optimal inventories.

    By factoring in lead times between the shop floor and distant warehouses, the solution synchronized the supply chain, optimized storage density, and streamlined fulfillment through predictive demand signaling.

  • Energy & Utility

    Sundew implemented hyperlocal demand forecasting for a major utility provider using advanced Machine Learning. By precisely predicting consumption, we optimized energy generation and distribution, significantly reducing production costs.

    This data-driven approach ensured consistent SLA compliance and enhanced grid reliability through superior operational efficiency.

  • Telecom

    We engineered a optimum pricing model for Tier 1 and 2 markets to maximize prepaid subscriber retention by analyzing BSS data, including onboarding patterns, usage metrics, and recharge behavior.

    We delivered optimized tariff structures that enhanced CLTV and mitigated churn for leading telecom operator.

  • Travel Retail

    For a large Travel Retail chain we developed product and promotion recommendation system for each individual customer which resulting in significant uplift in CLTV.

    This solution was implemented embedded with their Mobile APP to give real time recommendations and offer details in the relevant shop floors.

  • Professional Services

    We deployed an Intelligent Document Processing solution for an insurance back-office provider by automating complex, unstructured document extraction for US carriers.

    By integrating Human-in-the-Loop AI, we improved accuracy and accelerated processing speeds by 9x, significantly reducing manual effort and enabling seamless operational scalability.

  • Manufacturing

    Leveraging the Microsoft Stack, we designed and developed a "single source of truth" for a leading consumer durables enterprise.

    By unifying raw material tracking, batch processing, and finished goods data, we synchronized the end-to-end supply chain, ensuring optimal inventory visibility and consistent, timely product delivery to market.

sundew
sundew
sundew
sundew
sundew
sundew
sundew
sundew
sundew
sundew
sundew
sundew
sundew
sundew
sundew
sundew
sundew
sundew
sundew
sundew
sundew
sundew
sundew
sundew
sundew
sundew
sundew
sundew
sundew

Why enterprise leaders combine Lakehouse and Warehouse
architectures into a single data foundation.

01

Broad
workload support

sundew

02

One
storage layer

sundew

03

Flexible
deployment models

sundew

04

Consistent
access controls

sundew

05

Low-latency
querying

sundew

06

Built for
convergence

sundew

“I have worked with Sundew since 2007 on almost half a dozen different projects related to web and software development. Their quality of work is unquestionably world class.  Their customer service and responsiveness is impeccable and is refreshingly different from other similar India based IT solutions providers. They are my first choice when it comes to IT services.”

Rahul SarkarCEO, Chiketa Eximan, USA

“Our decision to work together with Sundew was based on the commitment of the owners that they will deliver regardless of planned effort with their personal involvement. We enjoyed the friendly collaboration and the sense of humour was always there even in tough times.”

Charly Graf,Managing Partner & Co-founder Bluecoons, Zurich

“Your team has been fantastic to work with from day one. We’ve been especially impressed by your professionalism, responsiveness, and genuine interest in our company’s growth. It’s clear that you’re not just focused on delivering a product, but on building a partnership that helps us succeed in the long term, your Insurance domain knowledge is worth mentioning.”

Project DirectorMajor Title Insurance Company, USA

“A big thank you to the entire development team for your exceptional work on every project that we have worked with since last 12 years. Despite tight timelines, your speed, quality, and consistent support have been truly impressive.”

Russell LucasMD, Sadekya, Curacao

“Sundew’s approach was refreshing; they understood our DNA before writing a single line of code. Their agility and precision outperformed even the global consulting firms we’ve worked with.”

Ritu MittalCEO, Suraksha Diagnostics Ltd, India

“They’re able to deliver everything that you communicate to them. A great team of engineers and designers. Their outlook towards design and customer experience is very very in-depth. The best part of working with Sundew team is the way they collaborate and always there as a partner to your project and ambitions.”

DanDirector, Noetek, USA

“Sundew Solutions was the perfect partner for my project. They were easy to communicate with and understood what I needed from the jump.  Edits and adjustments were easy to work through. My project was completed on time and exactly as I wanted. They over-delivered. I will be working with them again.”

Bryan GrayCEO Happen Media, USA

“Sundew was the perfect find for Flemingo International. They are meticulous and disciplined in their work, ensuring projects are delivered on time and without compromise on quality. After a three-city tour across India, meeting various developers, we felt Sundew was the best match, and I am happy to say that we have absolutely no regrets.”

Karan AhujaExecutive Director, Flemingo Group,. Dubai

“Sun Dew has been incredibly responsive and has continuously supported us by tailoring their creativity according to our requirements. The senior leadership is personally involved, making the entire engagement experience seamless.”

Dr. Ashwini TribhuvannGM -White and Brief Advocates and Solicitors, India

“Working with the Sundew team has been much more to me than a professional arrangement. The people there have become akin to family. They are a company that invests and ingrains themselves the way true stakeholders would and more. I’m forever grateful to them for the effort and energy they’ve put in. I’m proud to call them partners.”

David MorenoCo-CEO Liberty Home Guard LLC, USA

sundew

Modernise your data
foundation and expand
your capabilities.

Talk to Our Experts
sundew

Begin your journey
to streamlined data
management

Start Your Project

Ready to learn more? Get the latest insights about Data Lakehouse & Warehouse

sundew

Blog

Data Storage Decoded: Data Warehouse vs Data Lake Explained

As organizations race to harness the power of data, choosing the right storage strategy has become a mission-critical decision. One of the most common debates in this space is data warehouse vs data lake: two fundamentally different approaches to storing and managing data. While both serve as repositories, they differ drastically in structure, purpose, and use.A data lake is a massive, unstructured pool that stores raw data of all types, often before its purpose is even defined. In contrast, a data warehouse is a structured, purpose-driven system built to store processed historical data for fast querying and business intelligence.The important part is making informed decisions tailored to your data strategy. To do so, let’s decode the differences, strengths, and best-fit scenarios of data warehouse vs data lake.Understanding Data WarehouseA data warehouse is a structured, curated, and business-ready data repository designed specifically for reporting, analytics, and decision-making.Some of its notable functions include:Storing cleaned, processed, and organized data.Using a schema-on-write model, data must conform to a predefined structure before being stored.Ideal for structured queries, KPI tracking, and historical trend analysis.Common Data Warehouse PlatformsSnowflakeAmazon RedshiftGoogle BigQueryUse Case ExampleA retail company uses a warehouse to track sales performance by product and region. Insights are fast and reliable. Warehouses prioritize speed and accuracy, which are ideal for reporting and forecasting. Their structure supports compliance, governance, and enterprise standards.Benefits of Data Warehouses1. Performance & AccuracyBuilt for speed and reliability in querying and reporting.Supports dashboards, executive KPIs, and ad-hoc analysis.2. Optimized for Business IntelligenceSeamless integration with BI tools like Tableau, Power BI, and Looker.Supports SQL-based querying, data visualization, and real-time analytics.3. Governance & Compliance-ReadyStructured environment supports data governance and regulatory compliance.Ideal for industries requiring audit trails and data lineage.4. Enterprise-Grade InfrastructureFeatures like partitioning, indexing, and performance tuning optimize large-scale analytics.Ensures data consistency, quality, and accessibility for enterprise teams.Industry RelevanceData warehouses are trusted by financial services, healthcare, government, insurance, and other regulated sectors for their:TraceabilityTransparencyAuditabilityThey serve as the single source of truth for strategic business operations.Data Lakes ExplainedA data lake is a flexible, scalable, and schema-on-read storage system that allows organizations to ingest and retain data in its raw form, structured, semi-structured, or unstructured, without needing to format it at the time of ingestion.Accepts all data types: logs, videos, sensor data, JSON, etc.No upfront data modeling needed (schema-on-read).Enables direct exploration by analysts, engineers, and data scientists.Popular Data Lake PlatformsAmazon S3Azure Data Lake Storage (ADLS)Hadoop Distributed File System (HDFS)Use Case ExampleA media company stores videos, user logs, and transcripts for later machine learning use. Lakes store everything, making them ideal for innovation. They’re also cost-effective, making use of cheap storage to scale quickly. But they require governance to avoid becoming data swamps.Benefits of Data Lakes1. Cost-Efficient ScalabilityUses low-cost object storage to handle petabytes of data.Scales quickly without the need for complex transformation processes.2. Ideal for Innovation and ExperimentationSupports fast, flexible ingestion for IoT, social media, clickstream, and more.No rigid ETL pipelines. Teams can move from raw data to insight rapidly.3. Advanced Analytics & AI-ReadyIntegrates with tools like Apache Spark, Hive, TensorFlow, and more.Enables real-time data analytics, machine learning, and predictive modeling.4. Extensible & AgileIngests new data sources instantly without re-architecting.Empowers departments (marketing, R&D, customer success) with fast access to data.5. Collaborative Analytics EcosystemPrep and transform data with data engineering.Data scientists model and experiment.Analysts visualize and deliver insights, all from a shared environment.Key Differences Between Data Warehouses and Data LakesThe table below simplifies the data warehouse vs data lake comparison. Each model serves a different strategic goal. Business leaders must evaluate based on outcome priorities, not buzzwords.Using a Data Lake vs Data WarehouseChoosing the right data storage type between a data lake and a data warehouse hinges on your business objectivesA data warehouse would be the ideal choice if an enterprise needs structured, reliable data for tasks like financial reporting, KPI tracking, or regulatory compliance.Contrarily, a data lake is more suitable for unstructured or semi-structured data like clickstream logs, IoT feeds, or for running machine learning models and advanced analytics.Key Decision FactorsWhen evaluating your architecture, consider the following:Data maturity and your current analytics ecosystemCompliance and governance needsTypes of users (business analysts, data scientists, engineers)Scalability requirementsTechnology and infrastructure investmentsAdditionally, look into the following:Data Governance ImplicationsData warehouses come with built-in governance, lineage, and access control features.Data lakes require active investment in tools for Metadata management, Role-based access, Data cataloging, and tracking.Cost OptimizationWarehouses are compute-intensive and more expensive due to their processing requirements.Lakes offer cost-effective storage at scale but may trade off performance if not well-managed.Why Most Organizations Need Both?In modern data architectures, it’s rarely an either/or scenario. Many enterprises adopt a hybrid strategy where:Data warehouses support business intelligence and operational reporting.Data lakes power innovation, experimentation, and long-term data storage.This model balances agility, performance, and cost-efficiency, delivering the best of both systems.Emerging Trends: The Rise of the LakehouseThe gap between lakes and warehouses is being bridged by lakehouses. They combine structure with flexibility. Lakehouses enable advanced analytics on raw data without moving it. Platforms like Databricks and Snowflake now support this hybrid model.Lakehouses reduce duplication and streamline pipelines. One system, multiple outcomes. They also enable real-time analytics and cost optimization. This evolution supports the growing demand for unified data architectures.By unifying transactional and analytical workloads, lakehouses eliminate silos. You can build data products faster. Data engineers spend less time moving data and more time delivering value.Real-time decision-making is a key advantage. Lakehouses enable predictive modeling on streaming data. This is crucial for dynamic industries like e-commerce, logistics, and fintech.Security is built-in. You get encryption, compliance, and versioning out of the box. These capabilities make lakehouses enterprise-ready.The lakehouse is becoming a strategic standard. Enterprises want agility and governance in one place. Expect more companies to shift to this model in the next 2 - 3 years.Final ThoughtsThe difference between a data warehouse and a data lake is strategic. Warehouses offer precision and governance. Lakes bring flexibility and scale. Together, they form a powerful ecosystem.Businesses should evaluate current needs and future goals. You should refrain from falling into the trap of choosing either one. Use both to maximize the full data value. Stay ahead by building modern, hybrid data architectures. Embrace lakehouses if you want the best of both worlds.Choose architecture that fits your vision, not just your data. Leverage tools that match your outcomes. Invest in governance and scalability early. The future of enterprise intelligence is unified, flexible, and real-time. Your architecture should reflect that.

Read More

Thank You!

Excellent!

Successfully subscribed to Sundew Solutions newsletter!

Acknowledged