The Fast Track to Cash: How AI can help acquirers build a better 100-day plan (2024)

The sign-to-close phase in M&A can be difficult, and often fails to meet expectations. Tight timelines, limited data, and risk at every turn are common challenges. This is where AI & machine learning can make a real difference, especially when it's guided by people with business expertise (read more in our first article here). AI-enabled due diligence can bring accelerated clarity on the first 100 days, and a better path to value creation.

The first 100 days include multiple competing priorities in the areas of leadership and strategy alignment, organizational structure and people management, cultural integration, operational alignment, commercial integration, and the integration of back-office functions. Deal teams leveraging the assistance of AI can more quickly identify and prioritize value creation opportunities across those activities.

One big win involves the use of AI to identify and optimize commercial integration and finance functions simultaneously by discovering hidden opportunities that will generate cash and reduce working capital. As we pointed out in Harvard Business Review ‘delayed and ineffective commercial integration can turn a good deal into a loser, because sales growth ultimately determines whether a merger achieves its value-creation goals.’ Typically, a deal team will identify the most obvious, most achievable value creation integration opportunities, but the process is often constrained by such factors as short timelines and lack of quick data discoverability.

Cash Optimization and the 100-Day Plan

The goals of cash optimization are the acceleration of cash receipts, ensuring that cash disbursem*nts are aligned with contract terms and the development of a highly accurate cash forecast. These are critical activities during the first 100 days. Done right, cash optimization will ensure liquidity and will accurately identify the finance levers available to improve cash generation.

Unfortunately, in the construction of a 100-day plan, it’s not always realistic to troll through hundreds or thousands of supplier contracts in just a few weeks, because the endeavor is labor-intensive and time-consuming. Fortunately, with a carefully crafted approach augmented by traditional technology and generative AI deployed in the due diligence phase, the task becomes much more achievable. Large language models (LLMs) by design work exceptionally well with text content, meaning the extraction of complex language from documents and reasoning about that text comes as an out-of-the-box feature.

This is a simple but powerful concept. Deal teams simply specify what they want to gather from a contract—for example, payment terms—and run the expression across all contracts in minutes. Because of the dynamic nature of LLMs, nothing needs to be hard coded; the descriptions are in natural language. Such a solution can extract key terms from supplier and customer contracts—all of them, not just the biggest—and give deal teams insights they can use to optimize cash outflow, accelerate and improve cash inflow, enhance cash flow forecasting, and reduce idle cash.

LLMs have to be managed by a team with skill and experience. Not only do the models need to be given the most effective inputs, or 'prompts,' they need to be surrounded by the right people, process, and technology components in order to be successful. This additional infrastructure is important for key features like providing citations, to minimize the occurrence of so-called 'hallucinations', or nonsensical answers. These systems will continue to evolve as the business, technology, and contracts do.

Although contract analysis is useful across many areas, it has specific applications in cash optimization as follows:

  • Accounts payable (AP): The use of an LLM to extract key fields and contract clauses can accelerate the identification of undesirable payment structures of suppliers based on contract terms. An LLM can also pinpoint opportunities to renegotiate supplier contracts by comparing terms in similar contracts, thereby providing a thorough and faster alternative to manual review.
  • Accounts receivable (AR): With AR data, an LLM can identify where customer terms have not been enforced, such as payment terms, discount terms, and fees. An LLM can also determine which customers to contact to accelerate payment and reduce days sales outstanding (DSO). With a rich and organized data environment, the LLM can be fed historical data to identify habitually late customers, suggest effective communication channels, and even produce scripts based on prior customer interactions. That kind of outreach campaign, informed by a customer lifetime value analysis can unlock significant value creation opportunities.
  • Treasury: Cash forecasting can be improved by extracting supplier payment structures and customer payment behaviors, creating richer datasets for analysts toreview. Eventually, an LLM will be able to assist analysts in identifying anomalies or opportunities.

The Essential Role of Expertise

An LLM is a powerful tool—but still a tool. We have had success in augmenting the ways due diligence and integration teams work not by offloading entire workstreams to AI but by using LLMs where they excel in accelerating parts of a team’s own analysis process. Teams get better data more quickly, which enables them to focus on higher-value tasks and generation of insights.

Cash optimization requires a combination of highly structured data, like an accounts receivable database, and unstructured data like customer and vendor contracts. Before LLMs there were only hard-coded and cumbersome solutions for extraction of useful information from the latter, or they were ignored entirely. Now, we have the capability to extract value literally locked away in obscure PDFs.

AI-Powered First 100 Days Starts in Due Diligence

Delivering an AI-powered first 100 days should be a seamless extension of the AI platform used in the due diligence period. The major components that have to be in place for an AI-powered first 100 days are:

  • An AI platform with LLM access: If AI was deployed for due diligence, then extending to this document review use case is relatively simple: a centralized document repository.
    • Ideally all contracts should be stored in a central repository that the LLM can access.
    • Documents are not restricted by format or language. A properly architected AI platform can process Microsoft Word, PDF, JPEG, and many other formats.
    • Likewise, a properly architected AI platform can reason about terms in most languages. An LLM can hunt for a list of terms and clauses it should find and analyze and is developed by business experts working in tandem with technologists.
    • The more detailed the given context for a term, the more optimized the written prompt.
  • API Integration: An application programming interface (API) that calls to downstream processes and can consume the entire, or any portion of the list of terms.
    • AI-powered cash optimization is an end-to-end process solution. To realize the most benefit, the output should be made available to downstream consumers who could make use of it.
    • Downstream integration points could include databases, applications, and flat files.

Conclusion

AI-enabled 100-day planning is here to stay: Investors and advisors are increasingly using it to enhance their due diligence, planning, opportunity identification, and value creation efforts with better and faster insights. Looking ahead, we see AI, large language models, and machine learning becoming natural parts of any M&A process.

The Fast Track to Cash: How AI can help acquirers build a better 100-day plan (2024)
Top Articles
What Is The Best Army In Clash of Clans For Town Hall 9 | TGG
Homemade Dog Food recipes for Chihuahuas | Avid Pup
Metra Union Pacific West Schedule
Inducement Small Bribe
Dlnet Retiree Login
His Lost Lycan Luna Chapter 5
Explore Tarot: Your Ultimate Tarot Cheat Sheet for Beginners
Overnight Cleaner Jobs
Wannaseemypixels
Kansas Craigslist Free Stuff
R Tiktoksweets
Where does insurance expense go in accounting?
Busted Newspaper S Randolph County Dirt The Press As Pawns
Craiglist Galveston
The Banshees Of Inisherin Showtimes Near Regal Thornton Place
Tcgplayer Store
Toy Story 3 Animation Screencaps
Publix Super Market At Rainbow Square Shopping Center Dunnellon Photos
Schedule An Oil Change At Walmart
Jeff Now Phone Number
[PDF] PDF - Education Update - Free Download PDF
eugene bicycles - craigslist
Makemv Splunk
John Deere 44 Snowblower Parts Manual
Striffler-Hamby Mortuary - Phenix City Obituaries
Best Laundry Mat Near Me
Puffin Asmr Leak
Haunted Mansion Showtimes Near Cinemark Tinseltown Usa And Imax
Gasbuddy Lenoir Nc
Black Adam Showtimes Near Amc Deptford 8
Asian Grocery Williamsburg Va
20 Best Things to Do in Thousand Oaks, CA - Travel Lens
Google Flights Orlando
Restored Republic May 14 2023
Low Tide In Twilight Manga Chapter 53
Puretalkusa.com/Amac
Wilson Tattoo Shops
Seminary.churchofjesuschrist.org
Emily Tosta Butt
Inducement Small Bribe
LumiSpa iO Activating Cleanser kaufen | 19% Rabatt | NuSkin
Craigslist St Helens
Keci News
Kate Spade Outlet Altoona
Mountainstar Mychart Login
Gonzalo Lira Net Worth
Mcoc Black Panther
Oefenpakket & Hoorcolleges Diagnostiek | WorldSupporter
6463896344
Diccionario De Los Sueños Misabueso
Game Like Tales Of Androgyny
Appsanywhere Mst
Latest Posts
Article information

Author: Kareem Mueller DO

Last Updated:

Views: 6008

Rating: 4.6 / 5 (46 voted)

Reviews: 93% of readers found this page helpful

Author information

Name: Kareem Mueller DO

Birthday: 1997-01-04

Address: Apt. 156 12935 Runolfsdottir Mission, Greenfort, MN 74384-6749

Phone: +16704982844747

Job: Corporate Administration Planner

Hobby: Mountain biking, Jewelry making, Stone skipping, Lacemaking, Knife making, Scrapbooking, Letterboxing

Introduction: My name is Kareem Mueller DO, I am a vivacious, super, thoughtful, excited, handsome, beautiful, combative person who loves writing and wants to share my knowledge and understanding with you.