Data Warehouse & Lakehouse Architecture
Snowflake, BigQuery, Redshift, and Databricks implementations designed for your query patterns, cost profile, and governance requirements — built right from day one, not patched later.
Disconnected systems, broken pipelines, and dashboards nobody believes are costing you decisions every single day. Kalp Corporate builds data foundations that your entire organisation can rely on — from raw ingestion to boardroom insight.
We cover the entire data value chain — architecture, engineering, quality, governance, and the analytics layer your business actually uses every day to make decisions.
Assess My Data Platform →Snowflake, BigQuery, Redshift, and Databricks implementations designed for your query patterns, cost profile, and governance requirements — built right from day one, not patched later.
Robust, monitored data pipelines using dbt, Fivetran, Airbyte, and Apache Spark — handling batch, micro-batch, and real-time streaming from dozens of source systems simultaneously.
Apache Kafka, Apache Flink, and AWS Kinesis architectures for use cases that require sub-second latency — fraud detection, live operational dashboards, and event-driven alerting at scale.
Tableau, Power BI, Looker, and Metabase implementations with semantic layer modelling — empowering business teams to answer their own data questions without waiting on analysts.
Automated quality testing with dbt and Great Expectations, pipeline observability with Monte Carlo, and alerting that catches data anomalies before they reach reports or downstream models.
Data catalogues, end-to-end lineage tracking, role-based access controls, PII classification, and automated retention policies — making your data platform compliant, discoverable, and auditable.
Our phased approach delivers business value at each stage — you do not wait for the full platform to start getting insights that matter.
Source system inventory, data quality audit, use case prioritisation, and architecture recommendation — delivered as a detailed Data Strategy document with a phased roadmap.
Cloud warehouse setup, core ELT pipelines from priority sources, semantic modelling, and the first dashboard that makes leadership say “I can finally see what is happening.”
Data quality testing, observability tooling, access controls, data cataloguing, and expanding pipeline coverage to additional source systems and analytics use cases.
Self-serve analytics enablement for business teams, feature engineering for ML models, real-time streaming capabilities, and full team training on the complete platform.
We design data platforms that match where you are today and can grow with where you are going — without expensive re-architecting every 18 months.
Snowflake, BigQuery, and Redshift design, implementation, and ongoing optimisation — including storage tiering, query performance tuning, and cost governance frameworks.
dbt project architecture, testing frameworks, documentation, semantic layer modelling, and CI/CD integration for version-controlled, thoroughly tested, fully documented data models.
Apache Airflow, Dagster, and Prefect implementations with DAG design patterns, retry logic, SLA monitoring, and data-aware scheduling that keeps pipelines reliable and observable.
Fivetran, Airbyte, and Debezium for source-to-warehouse replication with change data capture — reliable ingestion from 200+ connectors with minimal operational overhead.
Kafka topic design, Flink job development, and Kinesis stream processing — for real-time aggregation, event-driven pipelines, and operational analytics at millisecond latency.
DataHub, Apache Atlas, and Alation implementations providing end-to-end lineage visibility, business glossary management, and data discovery for all stakeholders across the organisation.
Every tool chosen for production reliability, community maturity, and long-term maintainability by your own team.
Every industry has unique data volumes, regulatory requirements, and analytical questions. We build platforms shaped by that context — not generic templates reused across verticals.
Book a free data platform assessment. We will review your current stack, identify gaps, and show you the fastest path to data your whole organisation can rely on — no sales pitch, no obligation.
Cloud infrastructure without security architecture is a liability. We embed security into every layer — from IAM policies and network segmentation to runtime threat detection.
The infrastructure that runs your custom software — scalable cloud architecture, CI/CD pipelines, auto-scaling, and 24/7 monitoring to keep your systems fast, available, and cost-efficient.
When automation requires a custom interface, self-service portal, or integration layer, our development team builds the surrounding system that makes it all work seamlessly.