How Turing transformed management report modeling from a 5-day manual grind into a 3-hour automated engine

Our client is a premier consultancy that partners with private equity (PE) firms to strengthen and scale portfolio companies. They specialize in the critical fundamentals of business growth: finance, accounting operations, and capital strategy. By moving rapidly to repair broken processes and implement scalable frameworks, they ensure that newly acquired companies are built for long-term resilience and investor transparency.
In the world of private equity, speed-to-insight is everything. One of the client's most important offerings is the monthly management report model, or MMR, used to bring newly merged or acquired companies into a PE firm’s reporting structure and give investors clear, unified visibility.
Building that report is where things slow down, as there's a heavy reliance on human expertise. To bring a newly merged company into a PE firm’s reporting structure, analysts had to manually transform raw trial balances into consolidated income statements, balance sheets, and cash flow reports (three-statement reporting). This process was:
We worked closely with the client to build an automated MMR platform that fits directly into how their teams already work. The goal was simple: take the most time-consuming, repetitive parts of MMR creation off analysts’ plates without sacrificing accuracy.
Rather than a generic AI tool, our team engineered a tailored intelligence solution that automates the core model foundation: account mapping and three-statement reporting. This addresses roughly 75% of the manual effort in a typical MMR build. What used to take weeks now starts with a consistent, repeatable baseline.
The solution is built around four technical pillars:
This work tackled one of the hardest areas to automate in consulting: building financial statement models for monthly management reports. The process is usually slow, inconsistent, and highly manual, which makes it difficult to scale. By combining ML and GenAI in a practical, controlled way, we were able to automate the core of this workflow without sacrificing accuracy.
Key results:
Model creation time reduced by more than 50%.
Trial balance mapping and financial statement build time reduced from 5 days to 3 hours through:
Manual effort is now focused on reviewing accounts that require contextual fine-tuning and additional customer-specific input, representing only ~20% of all accounts.
Analyst capacity expanded without adding headcount, freeing teams to focus on higher-value work instead of repetitive modeling.
Beyond speed, the platform captures institutional knowledge as it’s used. That means every engagement strengthens the standard going forward, turning what was once disjointed knowledge into a repeatable, scalable capability.
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