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Scientific Knowledge Management

Providing the foundational technology stack that transforms fragmented data into a unified, machine-interpretable engine for innovation

The scientific knowledge gap

Modern R&D generates massive volumes of data, yet most of it remains trapped in disconnected silos, spreadsheets, and the minds of experts. When researchers retire or projects shift, critical institutional knowledge disappears.

Traditional tools find keywords, not scientific meaning. This lack of context forces Pharmaceutical and Material Science teams to recreate work, slows down multidisciplinary collaboration, and prevents AI from being truly effective. The result? Stalled innovation and a “knowledge gap” that gets wider as complexity grows.

A semantic backbone for enhanced discovery

To master this complexity, organizations are moving beyond simple data storage toward Semantic Knowledge Ecosystems. Graphwise provides the essential layer that sits atop existing systems to connect lab results, documents, and expert reasoning into a machine-interpretable network.

  • Unified knowledge across silos: Integrate disparate systems via shared ontologies without disruptive data migrations.
  • Semantic search & contextual discovery: Search by scientific concept, not just keywords. Understand hierarchies, synonyms, and domain relationships.
  • Institutional memory: Model expert assumptions and decisions, ensuring they remain searchable and reusable for future teams.
  • AI-ready, high-quality innovation foundations: Provide structured, high-quality data that eliminates AI hallucinations and enables explainable results.

Our Strategic Moat

The Graphwise contribution

We provide the infrastructure required to transform raw data into a trusted semantic backbone, empowering clients and partners to build sophisticated solutions on a governed, scalable foundation.

Taxonomy & Ontology Management

Curate and govern domain-specific vocabularies and taxonomies with Graphwise Graph Modeling. We provide the tools to centralize semantic building blocks, making data “computable” for AI.

Key Benefit:
Consistent meaning across all systems

Semantic Layer Components

Standardize metadata and harmonize vocabularies across structured and unstructured sources. We enable the transition from keyword matching to meaning-based discovery.

Key Benefit:
Cross-domain context and interoperability

Knowledge Graph Construction & Management

Transform static databases into dynamic enterprise knowledge graphs. We enable multi-hop reasoning through automated entity extraction and relationship mapping.

Key Benefit:
Ability to query complex relationships, not just data points

GraphRAG & AI-Enhanced Retrieval

GraphRAG grounds LLMs in your specific knowledge graph. We contribute the “trust layer” necessary for verifiable, audit-ready AI answers.

Key Benefit:
Explainable AI for mission-critical science

Integration & Workflow Services

Scale your knowledge infrastructure with the GraphWise AI Suite. We provide the connectors, automated ingestion pipelines, and QA tooling necessary to keep your semantic ecosystem healthy.

Key Benefit:
Seamless deployment and long-term data quality

Bringing It Together: Semantic ROI in Action

These KPIs illustrate how building around a semantic layer, strong ontology management, and knowledge graphs turns the cost of complexity into a strategic advantage. By reducing manual effort and accelerating insight, organizations unlock the true value of previously inaccessible knowledge.

Success Stories

See what Our Customers and Partners do with Graphwise

Drug Discovery institute customer success story

Oxford Drug Discovery Institute – Accelerating Alzheimer’s Breakthroughs

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Problem

Alzheimer’s Research UK Oxford Drug Discovery Institute faced the classic knowledge management pain point: vast but disconnected data spread across dozens of biomedical databases.

Solution

By leveraging GraphDB and a rich Linked Life Data Inventory, the Oxford Drug Discovery Institute consolidated 30+ structured sources into a unified platform with advanced analytics like gene-disease association and AI-derived novelty scoring.

Results

  • Accelerated drug discovery process by streamlining screening & target analysis
  • R&D time & costs reduced from months to weeks or days
  • high-confidence target prioritization
partner success story

Queen’s University – Accelerating Cancer Research

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Problem

A research lab at Queen’s University faced a months-long manual validation backlog of over 2,000 potential cancer targets identified through genome-wide screens.

Solution

Through the AI Accelerator Program, Graphwise and the lab integrated GraphDB and the Linked Life Data Inventory to unify 200+ datasets and 80 million scientific publications into a searchable knowledge graph

Results

  • Reduced validation and research timelines from months to days
  • 500% faster insight discovery
  • Increased confidence in target selection with explainable, traceable results