- Manual reporting can be completely replaced using Nvidia GB10 and structured AI workflows
- Automation reduces the need for additional staff while maintaining consistent reporting accuracy
- Sequential workflows simplify testing and troubleshooting before scaling enterprise-level automation
Many organizations rely on their employees to manually collect, organize and report performance metrics from multiple digital platforms.
A recent Serve the house (STH) replaced some of this manual reporting process using local AI systems built around Nvidia GB10 hardware.
The work involved repetitive requests received via long, unstructured emails, often requesting measurements across multiple sources and specific date ranges.
Reduce the need for additional staff
Instead of hiring additional staff to handle this growing volume, STH focused on building an automated reporting pipeline that can reliably handle these tasks.
The automation followed a structured flow to collect and aggregate data from all relevant platforms.
Prebuilt integrations in n8n reduced setup time by connecting directly to analytics systems without requiring custom code.
Planning each step ensured that timelines, filters, and query details were applied consistently.
Even though the workflow occurred sequentially, this approach simplified testing and troubleshooting during initial implementation, allowing the reviewer to verify results before scaling.
To validate the system, the review used approximately 1,000 historical requests from 2015 to 2025 with known results.
Different AI models were compared, including gpt-oss-20b FP8 and gpt-oss-120b FP8, to evaluate step accuracy.
Initial tests showed that smaller models worked well on simple queries, but errors appeared as complexity increased.
Because workflows required multiple model calls per query, even small inaccuracies would compound, reducing overall reliability.
Larger models improved stepwise accuracy to over 99.9%, reducing workflow errors from weekly occurrences to rare annual events.
Two Dell Pro Max systems with GB10 units ran the AI locally, keeping all data on-site.
The examiner calculated that automation replaced the need for a dedicated reporting role, with material costs covered within twelve months.
AI tools processed internal and external reporting requests, including article views, video engagement, and newsletter metrics, without requiring human intervention.
The process allowed the system to redirect resources to other functions, such as hiring an editor, while maintaining consistent reporting quality.
Automating reporting with AI systems shows how manual metric retrieval and consolidation tasks can be removed from human workflows.
This means that roles that focus primarily on collecting, cleaning, and summarizing performance data are particularly vulnerable once reliable automation exists.
While the review shows clear efficiency gains, its success depends on model accuracy, workflow design, and maintaining control over sensitive data.
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