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Case StudyFinanceInvoice Processing

From Manual to AI: Invoice Processing in Finance

Learn how a finance company used Arahi AI to automate invoice processing, achieving 95% faster faster invoice processing time and 642% increase in early payment discounts captured.

Company Profile

Company Type

Wealth management company

Team Size

20-100 employees

Industry

Finance

Key Challenge

Struggling with inefficient manual invoice processing processes that were slowing growth and increasing operational costs. Their primary concern was audit readiness.

Tools Connected

QuickBooksXeroPlaidStripeSalesforce
Setup Time90 minutes
Agents Deployed4 AI agents

The Challenge

Manual invoice processing was the biggest bottleneck in this wealth management company's operations. Their team of 20-100 employees processed hundreds of invoice processing requests weekly, each requiring multiple steps, cross-referencing against finance-specific requirements, and coordination between departments. The average invoice processing request took 45 minutes to complete manually, and the backlog was growing by 15% each quarter.

Beyond the time drain, the quality of their invoice processing output was inconsistent. Different team members followed different procedures, and there was no standardized way to handle edge cases that are common in finance. A recent audit revealed that 12% of completed invoice processing records contained errors that required rework — costing the organization an additional $50K annually in correction and remediation efforts. The leadership team recognized that continuing to throw people at the problem wasn't viable and began searching for an AI-powered solution.

The Solution

Arahi AI provided the automation backbone this finance team needed. They deployed a multi-agent workflow that breaks the invoice processing process into discrete, automated steps — each handled by a specialized AI agent. The first agent monitors triggers from QuickBooks and Stripe. The second agent analyzes and processes incoming requests using finance-specific business logic. The third agent executes actions across connected tools and notifies team members via Slack.

The beauty of the no-code approach was speed of implementation. The team had their first agent live within 90 minutes, and the full invoice processing workflow was operational within a single afternoon. They used Arahi AI's template for finance invoice processing as a starting point, customized the business rules to match their specific process, and connected their existing tool stack without writing a single line of code. Within the first week, the agents had processed over 200 invoice processing instances with 99%+ accuracy — more than the team typically handled in a month.

The Results

Measurable improvements across key finance invoice processing metrics.

Invoice Processing Time

95% faster

Before

3-5 days

After

< 4 hours

Processing Cost per Invoice

86% savings

Before

$15.40

After

$2.10

Error Rate

95% reduction

Before

3.8%

After

0.2%

Early Payment Discounts Captured

642% increase

Before

12% of eligible

After

89% of eligible

Monthly Invoice Volume

7.5x throughput

Before

200 (max capacity)

After

1,500+ processed

Before Arahi AI, our invoice processing process was the bottleneck that every finance team complained about. Now it's our competitive advantage. We process faster, more accurately, and at a fraction of the cost. Our competitors are still doing this manually.

Head of Strategy

Wealth management company

Key Takeaways

The most important lessons from this finance invoice processing automation project.

This finance team proved that invoice processing automation doesn't require technical expertise — the no-code platform made it accessible to business users.

Scaling invoice processing capacity by 10x without adding headcount fundamentally changed the economics of their finance operations.

Consistent AI-powered processing eliminated the quality variance that came with different team members handling invoice processing differently.

Real-time visibility into invoice processing metrics gave leadership the data they needed to make better strategic decisions.

Implementation Timeline

From zero to production in 90 minutes — here's how they did it.

Step 1: Mapped the existing invoice processing workflow

Documented every step of the current manual invoice processing process, including decision points, exceptions, and handoffs between team members. Identified which steps could be fully automated versus those needing human oversight.

Step 2: Built the automation in Arahi AI

Used Arahi AI's no-code builder to create the invoice processing workflow: connected QuickBooks and Plaid as data sources, configured AI decision logic for finance-specific requirements, and set up automated actions and notifications.

Step 3: Parallel run with manual process

Ran the AI agents alongside the manual process for one week to compare outputs. The AI matched or exceeded human accuracy on 98% of invoice processing instances, with the 2% of edge cases automatically flagged for human review.

Setup Time

90 minutes

AI Agents

4 AI agents

Tools Connected

5 integrations

Frequently Asked Questions

Common questions about automating invoice processing in finance.

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This case study represents a typical customer scenario. Individual results may vary.