top of page
Abstract Structures

Data Engineering & Intelligence

Transform scattered data into AI-ready intelligence​

​

AI is only as powerful as the data behind it. At Stratiform, we specialise in designing and building custom data systems that turn messy, fragmented information into structured, intelligent fuel for automation, forecasting, and decision-making.

​

We don’t offer a platform. We build your data foundation — clean, unified, and ready for advanced AI applications.

Why It Matters

Most businesses have data — but it’s siloed, inconsistent, and underutilised.

 

Without a clear data strategy, AI efforts stall. Our job is to change that.

​

We help you:

​

  • Ingest and process data from multiple sources and formats

  • Create a unified and queryable data layer

  • Enable intelligent applications like anomaly detection, forecasting, and natural language search

  • Ensure your data pipeline is scalable, governed, and audit-friendly

What We Deliver

Unified Data Processing Pipelines

​

We design ingestion and transformation pipelines that consolidate data from CRMs, logs, databases, APIs, Excel files — even PDFs. The result is a single, AI-ready data layer tailored to your organisation.

​

Intelligence Layers Built on Top​
 

Once data is synthesised and structured, we enable:

​

  • Anomaly detection (risk, fraud, operational alerts)

  • Time-series forecasting and predictive analytics

  • Semantic search across structured and unstructured data

  • Multi-modal interfaces, allowing natural language queries over dashboards, documents, or databases​

​

Built for AI Workloads

​

We engineer your data systems with the downstream use case in mind: retrieval-augmented generation (RAG), embedding stores, LLM context pipelines, and more. Every component is purpose-built.

Engagements

  • Data architecture design and engineering

​

  • Custom ingestion from diverse sources (databases, CSVs, SharePoint, internal tools)

​

  • Transformation and validation pipelines

​

  • Vectorisation and embedding of internal content

​

  • Setting up semantic search and universal query endpoints

​

  • Building intelligence dashboards with AI summarisation

bottom of page