3 min read
How a Custom AI Assistant Saves Thousands of Research Hours for Twelve
Tonic3
:
Jan 29, 2026 9:38:22 AM
In their own words
R&D Leadership @ Twelve
R&D staff in the manufacturing sector wasted valuable time manually searching historical experiment archives, hindering productivity and innovation speed.
Developed a custom Generative AI Research Assistant that uses Retrieval-Augmented Generation (RAG) to instantly access proprietary data.
Twelve immediately boosted Employee Productivity by significantly reducing time spent on manual data retrieval and accelerating research cycles.
Immediate
Access to Historical Data
Cut in Half
Manual Data Retrieval Time
Proprietary
Data Security (RAG Model)
Custom-Built
Integration with R&D Archives
The Challenge:
The Bottleneck of Manual Knowledge Retrieval in Manufacturing
Twelve’s R&D team, focused on advancing industrial innovation in manufacturing, faced a critical bottleneck: valuable research time was lost to manually searching immense archives of historical experiment data. This inefficiency directly impacted Employee Productivity and slowed the pace of innovation. The challenge required a secure, intelligent solution to transform knowledge retrieval.
Human-Centered UX: Accelerating Research Workflows
The design process was deeply Human-Centered. We mapped the researcher's workflow to build an intuitive, chat-based interface. The UX ensures that the R&D team can easily query, cross-reference, and receive suggested refinements to experiments, promoting adoption and ensuring the tool is an aid to—not a hurdle for—productivity.
AI Strategy: Generative AI for Instant Precision
We built a custom AI-Powered Research Assistant utilizing Retrieval-Augmented Generation (RAG). This solution ensures the AI delivers instant, precise answers by grounding its knowledge in Twelve's proprietary experiment archives, bypassing generic public knowledge and ensuring data security. This immediately freed up high-value R&D staff.
Custom-Built Code: Secure Integration and Scalability
We focused on robust, Custom-Built Code to securely integrate the GenAI model with Twelve’s internal data storage systems (e.g., historical archives). The engineering rigor ensured the solution was scalable, reliable, and maintained data governance standards essential for an R&D environment in advanced manufacturing.
The Impact: Strategic Performance & R&D Advantage
The AI Research Assistant achieved Intelligent Transformation by fundamentally changing Twelve’s R&D workflow. By automating the low-value task of data retrieval, the solution immediately boosted Employee Productivity, allowing researchers to dedicate their time to high-value experimentation and innovation.
Human-Centered UX: Accelerating Research Workflows
The design process was deeply Human-Centered. We mapped the researcher's workflow to build an intuitive, chat-based interface. The UX ensures that the R&D team can easily query, cross-reference, and receive suggested refinements to experiments, promoting adoption and ensuring the tool is an aid to—not a hurdle for—productivity.
AI Strategy: Generative AI for Instant Precision
We built a custom AI-Powered Research Assistant utilizing Retrieval-Augmented Generation (RAG). This solution ensures the AI delivers instant, precise answers by grounding its knowledge in Twelve's proprietary experiment archives, bypassing generic public knowledge and ensuring data security. This immediately freed up high-value R&D staff.
Custom-Built Code: Secure Integration and Scalability
We focused on robust, Custom-Built Code to securely integrate the GenAI model with Twelve’s internal data storage systems (e.g., historical archives). The engineering rigor ensured the solution was scalable, reliable, and maintained data governance standards essential for an R&D environment in advanced manufacturing.
The Impact: Strategic Performance & R&D Advantage
The AI Research Assistant achieved Intelligent Transformation by fundamentally changing Twelve’s R&D workflow. By automating the low-value task of data retrieval, the solution immediately boosted Employee Productivity, allowing researchers to dedicate their time to high-value experimentation and innovation.
Outcomes +
Why It Matters
-
How did the AI Assistant directly impact Employee Productivity?
The Generative AI solution eliminated the manual bottleneck of searching archives, leading to a significant reduction in time spent on data retrieval, immediately boosting Employee Productivity and accelerating research cycles in the manufacturing sector.
-
How does the solution guarantee data security and precision?
We utilized a Custom-Built RAG model that grounds the AI's answers exclusively in Twelve’s proprietary archives, ensuring data security and eliminating hallucination risk common to public models.
-
What was the primary benefit of the Human-Centered UX design?
The intuitive interface ensured immediate adoption by the research staff, minimizing training time and maximizing the ROI of the technical investment.