+91 XX XXXX XXXX info@synaptron.tech

AI-Driven R&D on Azure

Uncover how Synaptron leveraged Azure’s AI & cloud capabilities to transform R&D—building intelligent pipelines, accelerating model development & data‑driven innovation.

Executive Summary

R&D Acceleration

A global process manufacturing enterprise partnered with Synaptron to modernize its fragmented R&D environment. The objective was to reduce cycle time for new product development, enable reuse of scientific knowledge, and improve lab-to-market translation. Synaptron built a secure, Azure-native R&D acceleration platform integrating generative AI, document intelligence, and workflow automation. The result:

N

35% reduction in time-to-insight across formulation and test cycles

N

70% faster access to historical experimental data

N

25% more efficient cross-team collaboration between formulation, testing, and regulatory units

N

Full compliance with IP protection and data security protocols

    This platform now powers AI-assisted decision-making and experimentation across multiple research teams globally.

    Challenge

    Siloed Research Data, Manual Workflows, and Knowledge Loss

    The client’s R&D division was dealing with significant bottlenecks:

    r

    Scattered Document Storage Hindering Reuse

    Unstructured Technical Documents (test reports, lab notes, patents, regulatory filings) were stored across local systems and folders, making reuse nearly impossible

    r

    Redundant Experiments from Poor Discoverability

    Repeated experiments occurred due to inability to find prior attempts or formulations quickly

    r

    Manual Data Extraction Slowing Insights

    Manual synthesis of data from PDFs, scanned lab books, and emails took hours per query

    r

    Lack of Unified Research Repository

    No single source of truth across formulations, test outcomes, and literature reviews

    r

    Compliance Risks from Missing Traceability

    Compliance risk due to lack of traceability and version control for research records

    The R&D leadership wanted a solution that would unlock historical insights, support intelligent experimentation, and integrate into Microsoft Azure cloud ecosystem for scalability, security, and enterprise alignment.

    Solution

    Azure-Based R&D Acceleration Platform with AI & Automation

    Synaptron designed and deployed a secure, modular, containerized solution stack hosted on the client’s Azure tenancy. The solution combined document AI, LLMs, and search to drive real-time intelligence and compliance in research operations.

    Document Intelligence Pipeline

    • Deployed Azure Form Recognizer and Synaptron’s proprietary classifiers to extract structured metadata (formulation, test method, outcome, parameters) from over 150,000 PDFs including patents, lab reports, and trial summaries
    • Enabled semantic indexing and intelligent tagging for downstream AI models

    LLM-Powered Research Assistant (Private GPT)

    • Used Azure OpenAI with fine-tuned prompts to let scientists ask natural language questions (e.g., “Show all corrosion tests using surfactant X in alkaline pH range”)
    • Delivered curated, cited answers in seconds—drastically reducing knowledge discovery time

    Secure Containerized Workflow Automation

    • Built containerized services for ingesting and routing documents, updating formulations, triggering alerts on conflicting test data
    • Integrated with SharePoint, Teams, and internal LIMS (Lab Information Management Systems)

    Role-Based Access and Audit Logging

    • Enforced strict access controls, data masking, and audit logging aligned to global R&D and IT compliance standards
    • Azure Key Vault and Defender used to secure AI endpoints and sensitive content

    Outcome

    Faster Innovation with AI-Augmented Research Workflows

    The platform unlocked immediate and measurable value:

    • 35% Faster Time-to-Insight: Literature and internal trial review cycles reduced from days to hours
    • 70% Faster Historical Data Access: Researchers accessed 5+ years of legacy results instantly without needing manual coordination
    • Improved Decision Accuracy: Scientists reported fewer redundant trials and higher confidence in cross-referencing prior findings
    • Collaboration Efficiency Boost: Multi-location teams collaborated on shared insights and formulations via integrated dashboards and LLM outputs
    • Compliance and IP Traceability: Every research object is now timestamped, versioned, and linked to user action trails—meeting internal and external audit norms
    • End-User Satisfaction: Researchers rated the platform 4.8/5 for usability and relevance, citing it as “a personal R&D assistant”

    Future

    Toward Autonomous R&D Environments

    Building on this success, Synaptron and the client are now co-developing:

    • Digital Twin of R&D Processes to simulate experiment outcomes before execution
    • Federated Model Learning to continuously improve AI with multi-tenant, privacy-preserving learning
    • Integration with Generative Design Systems to auto-suggest new formulations and test matrices
    • Automated Regulatory Dossier Generator using AI-extracted references and output summarization
    • Real-Time Sensor Integration from pilot plants to close the feedback loop between lab and field