Your Companylogo
Products
Industries
Services
Company

How Process Mining enables effective Mergers and Acquisitions (M&A)

Explore how Process Mining, Automation, and AI empower effective M&A by streamlining operational integration, enhancing financial due diligence, retaining talent, and maximizing synergies. Through case studies, see how these technologies support successful mergers by optimizing workflows, ensuring compliance, and fostering seamless cultural integration.

In the context of mergers and acquisitions companies, Process Mining, Automation, and Artificial Intelligence (AI) can address several specific challenges, improving decision-making, integration, and operational efficiency. Here’s a breakdown of where each technology can have a significant impact:

1. Operational Integration

Challenge:

  • Merging two companies' operations is often complex, with significant risks of inefficiencies and workflow disruptions.

How Process Mining, Automation, and AI Help:

  • Process Mining: By mapping out and visualizing the as-is processes of both organizations, Process Mining can provide a detailed view of where workflows overlap, diverge, or create inefficiencies. This data-driven approach enables mergers and acquisitions companies to make more informed decisions about which processes to integrate, streamline, or eliminate.
  • Automation: Once optimized processes are identified, automation (via Robotic Process Automation or workflow automation) can streamline these tasks, reducing manual efforts and ensuring smoother integration.
  • AI: AI-powered analytics can recommend optimizations and predict the impact of changes on operations, helping to prioritize tasks and integrations.

Example: AI algorithms can predict where bottlenecks or integration risks are likely to occur, allowing for proactive operational integration management.

2. Financial Due Diligence and Risk Management

Challenge:

  • Accurately assessing the financial health of the target company and uncovering potential risks is crucial during mergers and acquisitions consulting.

How Process Mining, Automation, and AI Help:

  • Process Mining: Provides real-time insights into financial processes (e.g., accounts payable/receivable, procurement) to detect inefficiencies, fraud, or inconsistencies in transaction data.
  • Automation: Automates repetitive financial due diligence tasks like auditing and reconciliations, reducing the chance of human error and speeding up the process.
  • AI: AI can assist in analyzing large sets of financial data and identifying trends, risks, or anomalies that might be missed in traditional manual reviews. AI-powered models can also forecast future performance based on historical data.

Cover image

Example: AI can detect patterns in financial transactions that indicate potential liabilities or non-compliance, allowing for deeper investigation before finalizing the deal.

3. Employee Retention and Talent Management

Challenge: Retaining key talent post-merger is critical to success, but it can be challenging to identify which employees are most valuable and ensure their retention.

How Process Mining, Automation, and AI Help:

  • Process Mining: Can analyze employee workflows and productivity to identify high performers and critical roles within the company.
  • Automation: Automates routine HR tasks (e.g., onboarding, benefits administration) to free up resources for more strategic activities like employee engagement.
  • AI: AI-driven HR analytics can assess employee engagement, predict turnover risks, and suggest interventions to retain key talent. AI can also personalize communication and career development opportunities, increasing employee satisfaction.

Example: AI models can analyze communication patterns or employee performance data to identify individuals at risk of leaving, allowing management to intervene with retention strategies.

4. Customer Retention

Challenge:

  • M&A activities can lead to uncertainty for customers, causing them to disengage or switch to competitors.
Cover image

How Process Mining, Automation, and AI Help:

  • Process Mining: By mapping customer interactions and touchpoints, Process Mining can help identify friction points in the customer journey that the merger may exacerbate. This can inform strategies to improve customer satisfaction.
  • Automation: Automates customer service processes, ensuring seamless support during the transition. For example, chatbots or automated ticketing systems can reduce response times and maintain customer satisfaction.
  • AI: AI can analyze customer behavior to predict which customers will most likely churn during the transition. It can also offer personalized engagement or proactive solutions to keep customers loyal.

Example: AI can identify patterns in customer behavior pre-merger, helping predict which customers may leave post-merger. This allows companies to focus retention efforts on high-value clients.

5. Process and IT System Integration

Challenge:

  • Merging the IT systems and business processes of two organizations can be highly complicated, often leading to redundant systems, data silos, and inefficiencies.

How Process Mining, Automation, and AI Help:

  • Process Mining: Provides end-to-end visibility of the systems and processes in both organizations, identifying redundancies, misalignments, and areas for optimization.
  • Automation: Automates data migration and system integration tasks, reducing errors and speeding up the process.
  • AI: AI can assist in harmonizing IT systems by recommending the best integration approach based on data analysis. AI algorithms can predict potential system failures or integration risks, ensuring a smoother IT transition.

Example: Process Mining can reveal which IT systems are underperforming or creating bottlenecks, while AI can suggest ways to optimize system integrations for better performance post-merger.

Cover image

6. Compliance and Regulatory Adherence

Challenge:

  • Regulatory issues and compliance requirements become more complex in mergers and acquisitions, particularly when merging across borders or industries with strict regulations.

How Process Mining, Automation, and AI Help:

  • Process Mining: Provides transparency into processes to ensure regulation compliance, identifying gaps where compliance may be lacking or at risk.
  • Automation: Automates compliance reporting and documentation, ensuring the necessary filings and reports are done efficiently and correctly.
  • AI: AI-powered tools can monitor regulatory changes and ensure the newly merged organization complies with current laws. AI can also detect patterns that suggest non-compliance before it becomes a critical issue.

Example: AI-based compliance platforms can alert decision-makers about potential risks based on historical violations or changing regulations, allowing the company to stay proactive in maintaining compliance.

7. Synergy Identification and Realization

Challenge:

  • One of the main goals of mergers and acquisitions is realizing synergies through cost savings or revenue generation. However, identifying and capturing these synergies can be elusive.

How Process Mining, Automation, and AI Help:

  • Process Mining: Can pinpoint process inefficiencies and opportunities for synergy between the merging organizations, helping management visualize where improvements can be made.
  • Automation: Once synergies are identified, automation can be applied to streamline and optimize the necessary processes.
  • AI: AI can model different scenarios to predict the financial or operational impact of various synergy opportunities, helping prioritize high-impact actions.

Example: AI-powered predictive models can simulate various integration strategies to estimate the potential ROI of synergy opportunities, helping decision-makers allocate resources effectively.

By leveraging Process Mining for insights into existing workflows, Automation to streamline integration efforts, and AI to predict risks and optimize decisions, mergers and acquisitions companies can navigate the complexities of M&A more effectively and increase the chances of a successful merger.

Case Study: Siemens’ Acquisition of Mendix

Background:

In 2018, Siemens, a global leader in industrial automation and digitalization, acquired Mendix, a low-code development platform company, for €600 million. Siemens sought to integrate Mendix’s capabilities into its Digital Industries Software division to accelerate its Industry 4.0 initiatives and strengthen its IoT offerings. The acquisition faced several typical M&A challenges, particularly integrating technology, systems, and workforce culture.

Challenges:

  • Operational Integration and Synergy Identification: Siemens needed to identify areas to quickly realize synergies, especially within their software development and automation tools while keeping Mendix’s innovative culture intact.
  • Technology and IT System Integration: Siemens' legacy systems needed to integrate with Mendix's modern low-code platform to enhance its digital offerings. This posed a technical challenge, as both companies used different systems and architectures.
  • Talent Retention and Organizational Culture: Siemens faced the challenge of retaining Mendix’s highly skilled employees, who were critical to the low-code platform's success, and fostering collaboration between the two workforces.
  • Compliance and Regulatory Adherence: Both Siemens and Mendix operated across multiple jurisdictions, making compliance and regulatory integration a significant concern, especially in data security and privacy regulations.

Solution Approach:

Siemens adopted a data-driven approach using Process Mining, Automation, and AI to streamline integration and realize synergies.

1. Process Mining for Operational Integration:

  • Siemens deployed Process Mining tools to visualize and analyze its internal processes and those of Mendix. By creating process maps for key workflows like software development, sales operations, and support services, Siemens identified areas where processes overlapped or diverged.
  • This insight allowed Siemens to quickly pinpoint opportunities for synergy, such as streamlining software development cycles by integrating Mendix’s agile approach with Siemens' extensive industrial automation expertise.

Result: Process Mining identified several inefficiencies in Siemens' existing development workflows, leading to a 20% reduction in software delivery time post-integration.

2. Automation for IT Systems Integration:

  • Siemens used Robotic Process Automation (RPA) to automate and integrate its legacy systems with Mendix’s platform. RPA was employed to automate data migration, harmonize product development systems, and align customer support processes.
  • Automation was also applied to routine administrative tasks, such as invoicing, contract management, and reporting, allowing Siemens and Mendix employees to focus on higher-value tasks during the transition.

Result: Automation reduced the time for systems integration by 30%, allowing Siemens to launch integrated products in the market faster than initially planned.

3. AI for Talent Retention and Organizational Culture:

  • Siemens utilized AI-powered HR analytics to assess employee engagement levels, monitor sentiment, and predict turnover risk among Mendix employees. AI tools provided real-time feedback on employee morale and suggested personalized engagement strategies, including tailored career development paths and performance-based incentives.
  • Additionally, Siemens used AI-driven collaboration tools to foster better communication and knowledge sharing between Siemens and Mendix employees, promoting a smooth cultural integration.

Result: Siemens successfully retained 95% of Mendix’s key employees, including its senior leadership team, post-acquisition, helping to preserve the company’s innovative culture.

4. Compliance Monitoring with AI:

  • Siemens used AI-powered compliance platforms to monitor adherence to global regulatory standards. This included real-time analysis of changes in data privacy laws across jurisdictions and automated compliance checks to ensure both Siemens and Mendix adhered to GDPR and other relevant regulations.
  • Process Mining also contributed to compliance by tracking audit trails for critical financial and operational processes, ensuring regulatory requirements were met during and after the acquisition.

Result: Automating compliance checks reduced the risk of non-compliance, with Siemens reporting zero regulatory penalties related to the integration.

Key Outcomes:

  • Faster Synergy Realization: Process Mining enabled Siemens to identify and act on opportunities for process improvements, resulting in a 20% increase in operational efficiency across both organizations.
  • Accelerated Time to Market: Automating systems integration and product development helped Siemens launch integrated products sooner than expected, enhancing its competitive position in Industry 4.0.
  • High Employee Retention: AI-driven HR strategies helped Siemens retain key talent from Mendix, ensuring a smooth cultural integration and fostering collaboration across the combined workforce.
  • Seamless Compliance: AI-powered compliance monitoring helped Siemens maintain regulatory adherence, avoiding potential legal and financial risks.

Practice Takeaways:

  • Process Mining is critical for gaining a real-time, data-driven understanding of processes in both the acquiring and acquired company, enabling faster identification of synergy opportunities.
  • Automation is pivotal in speeding up integration, whether automating repetitive tasks, data migration, or IT systems alignment.
  • AI helps manage complexities like talent retention, compliance, and predictive decision-making, ensuring that the human and regulatory aspects of the M&A process are handled efficiently.

By adopting a technology-driven approach in this M&A case, Siemens maximized the value of its acquisition, improved operational efficiency, and facilitated a more seamless cultural integration.

Example in Energy & Utilities

Ennuviz was pivotal in supporting a sizeable multi-utility company during its M&A initiative. The process mining platform analyzed critical customer-facing operations, like meter-to-cash and customer service management, and back-office functions, such as procure-to-pay and infrastructure incident management. The processes to be merged were first examined independently across both the acquiring and merging entities before being compared for alignment. Key differences were identified and classified as critical or non-value-adding. For the vital distinctions to be retained, Ennuviz simulation capability was used to evaluate their impact on the unified processes, ensuring smooth integration. The non-value-adding differences were removed.

From this analysis, a best-of-breed process was crafted and rigorously tested across varying volumes of demand workload conditions to define the optimal resource allocation for the new, combined system. Ultimately, this led to an overhaul of the organization's internal policies and operational guidelines to seamlessly run the merged processes.

Types of Mergers and Acquisitions

Cover image

Step-by-step guide to assess synergies with process mining

You do not need to be a data scientist to use process mining solutions in mergers and acquisitions. As an enterprise leader, you can work with software vendors or process analysts to execute a step-by-step method for assessing synergy potential:

  • Identify the processes to be merged: Identify the overlapping and complementary processes in both organizations. Understanding these processes allows for a comprehensive evaluation of the potential synergies.
  • Deploy process mining tools: Use robust process mining tools to visualize the current state of these processes. The transparency these tools provide allows for a detailed and accurate analysis.
  • Analyze the process analytics: Look for bottlenecks, inefficiencies, and unnecessary steps in the process maps. These could be potential areas where synergies can be realized.
  • Simulate merged processes: Use your process mining tool to assess or even simulate the potential outcomes of merging identified processes. This helps anticipate challenges and measure potential synergies.
  • Iterate and optimize: Process mining is an ongoing effort. Regularly evaluate merged processes to identify additional optimization opportunities and maximize synergies post-merger.

Types of Synergies – Cost Synergies

Here is a list of cost-saving synergies that can be achieved when two companies merge:

  • Supply Chain Efficiencies: Similar to information technology, if either company has access to better supply chain relationships, there may be cost savings that the merged firm can take advantage of. Additionally, the merged firm likely has greater buying power and can negotiate purchase discounts or other concessions and potentially consolidate.
  • Improved Sales and Marketing: Better distribution, sales, and marketing channels may allow the merged firm to save on costs expensed by each firm when they were separate.
  • Research and Development: Either firm may have had access to research and development efforts that, when applied to the new, consolidated firm, allow for better development or room to cut production costs without sacrificing quality. For example, one firm may have been developing a cheaper alloy that could be used to produce an automobile that the other firm produces.
  • Lower Salaries and Wages: The merged companies won’t need two CEOs or two CFOs, so there are immediate cost savings by eliminating specific roles. This logic applies down the entire organizational chart.
  • Redundant Facilities: Similar to the new, merged firm not needing two CEOs, it will also not require two corporate headquarters. Therefore, one of the headquarters can be closed, consolidating offices. This may also apply to any other redundant facilities, like manufacturing plants that produce similar products.
  • Patents and Intellectual Property (IP): If the acquirer used to pay the target firm a fee for access to a patent, a merger may eliminate that expense. This fee effectively becomes an intercompany transaction. Intercompany transactions have no net impact on the merged firm’s financial statements as they are an expense to the acquirer and revenue to the target.

Types of Synergies – Revenue Synergies

Here is a list of revenue-enhancing synergies that can be achieved when two companies merge:

  • Patents: Similar to a patent's cost-saving effect, access to other IPs may allow the merged firm to create better, more competitive products that produce higher revenue.
  • Complementary products: Both firms may have been producing complementary products pre-merger. These products can now be bundled to increase customers' sales.
  • Complementary geographies and customers: Merging two firms with varying geographies and customers may allow the merged firm to take advantage of the increased geographic and demographic access, thereby producing higher revenue.

Types of Synergies – Financial Synergies

Financial synergies occur when the merged firm can improve its capital structure better than when the companies were separate. Capital structure changes potentially result in increased tax savings and debt capacity benefits. If successful, the merged firm can theoretically reduce its cost of capital, resulting in a higher valuation than the standalone companies.

Cover image

Below are examples of financial synergies:

  • Diversification and Cost of Equity: A merged firm can potentially lower its cost of equity through business diversification. When companies merge, it’s possible the merged firm can increase market share, which can lead to higher revenue and cash flow. In theory, the diversification of the merged firm may result in more stable, predictable cash flows and a lower cost of equity. If possible, the diversification benefit is more likely from versus vertical mergers.
  • Increased Debt Capacity: Due to either steadier cash flows or increased firm size, merged firms might be able to borrow more than they otherwise could as standalone, independent companies.
  • Tax Benefits: Increased debt capacity could lead to more borrowings. Since interest expense is tax deductible, the merged firm could see a lower tax bill via leverage. Additionally, if a profitable company acquires a company with losses, the merged firm can potentially reduce its tax burden by using the target company's net operating losses (NOLs).

From <https://corporatefinanceinstitute.com/resources/valuation/types-of-synergies/>

10 Examples of Ways to Estimate M&A Synergies

  • Analyze headcount and identify redundant staff members that can be eliminated (i.e., the new company doesn’t need two CFOs).
  • Look at ways to consolidate vendors and negotiate better terms with them (i.e., purchase goods/services at lower prices).
  • Evaluate any head office or rent savings by combining offices.
  • Estimate the value saved by sharing resources not at 100% utilization (i.e., trucks, planes, transportation, factories, etc.).
  • Look for opportunities to increase revenue by upselling complementary products or increasing prices by eliminating competitors.
  • Reduce professional services fees.
  • Operating efficiency improvements from sharing “best practices.”
  • Human capital improvements from “top grading” exercises and potential ability to attract superior talent at the merged firm.
  • Improve distribution strategy by serving customers with closer locations.
  • Geo-arbitrage: Reduce labor costs by hiring in other, lower-cost countries if the target company operates in those countries.

Murali Krishnan

Let's get started today

Because we put you first. Our customer-obsessed working model honors client's needs.

Schedule Demo