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Navigating Supply Chain Disruptions with an Integrated Control Tower
Navigating Supply Chain Disruptions with an Integrated Control Tower

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The global market in 2021 is faster, more digital, and more competitive than ever. Customers carry the baton, and demand signals keep flowing into the enterprise from more and more different channels.

The modern supply chain dynamics require innovative capabilities and strategies to deal with uncertainties, improve resilience and implement holistic solutions to balance costs, services, deliveries, and customer expectations.

Supply chain leaders need to manage a highly complex supply chain for the global business environment and deal with disruptions to keep the bottom line and top line intact. However, for decades, poor supply chain visibility has suffocated the industry.

Here are Four Challenges Impeding the Modern Supply Chain Industry

  1. Data and Application Silos

Vertical organizations often fly blind.

Yes, that is true. Most companies are vertically integrated and use systems such ERP, TMS, WMS, MRP to manage their functional departments. The functions primarily rely on plans developed within such systems to drive execution, monitoring & control. As a result, critical information such as customer demand, logistics, function-specific supply challenges & backlogs is siloed and invisible to other departments.

While function-specific analysis is time-consuming, cross-functional insights are even more challenging and require sifting through large volumes of data. Thus, business unit heads lose sight of the strategic ambitions of the overall supply chain

According to a survey by Supply Chain Dive, only 6% of companies believe that they have achieved complete supply chain visibility.

The lack of supply chain visibility is overwhelming and keeps on staggering.

  1. Lack of Know-Hows, Tools, Technologies to Generate Insights

With the advent of digital data, volume, accessibility, and insights generation through analytics are critical to creating a sustainable supply chain.

However, because analytics is not widely adopted, the data is poorly used.

The data engineering and analytics capabilities in most supply chains are insufficient. As a result, supply chain leaders often cannot effectively use relevant data at the required speed. They also lack diagnostic and advanced analytics tools/technologies and often fail to understand the nature of use cases or problems in the supply chain.

  1. Lack of Predictive and Prescriptive Capabilities

Digitalization is not enough.

As per the Chartered Institute of Procurement & Supply Risk Index's report, the average annual economic loss caused by major natural disasters around the world is approximately US$211 billion.

Supply chain leaders also need to leverage new capabilities to predict market moods, deviation, and unanticipated geopolitical landscape.

However, most existing advanced analytics applications cater to solving point problems. There is an acute shortage of capabilities to use prescriptive or simulative simulations or what-if analysis to investigate broader issues in the supply chain and make recommendations. In addition, there are only a few good AI/ML-driven analytics solutions out there that prevent executives from using machine learning and limit the automation of the supply chain.

  1. Lack of Off-the-shelf Solutions

Every use case or nature of the problem varies from customer to customer. So off-the-shelf products cannot meet customization and personalization requirements. Regarding the KPIs that businesses want to measure, use cases vary from company to company, making it impossible for off-the-shelf applications to handle. Such rigid solutions put the burden on supply chain leaders to get data in the desired format.

Indulgent customizations, choice complexities often lead to value destruction.

Digital Control Tower Enabling End-to-end Supply Chain Visibility Capabilities 

Gartner reports, 79% of supply chain leaders believe that the internet/platform-based approach is the most critical new business model."

The above four challenges require building a digital control tower with data engineering functions and pipelines on top of a solid data layer. Establishing a simplified data architecture with an automated framework can integrate master data and transactional data sources in a streamlined manner, ensuring the availability of necessary data across multiple silos to obtain accurate real-time visualization of the overall supply chain health.

AI/ML-driven analytics and rapid scenario planning can provide speed, consistency, and flexibility to achieve controllable and manageable supply chain functions, thereby helping executives gain a competitive advantage.

Two Critical Elements for an Ideal Supply Chain Control Tower

An ideal Supply Chain Control Tower (SCCT) is a cross-departmental, system-integrated "information hub" that provides end-to-end visibility.

There are two key elements to build/implement an ideal SCCT.

  1. Real-time Visualization Catering to Different Personas.

Executive Insights: An ideal supply chain control tower will provide a bird's eye view of the overall supply chain health. It will enable the leaders to collect and distribute information, identify risks, and respond strategically.

Execution Insights - SCCT's state-of-the-art setup caters to the nuanced aspects of the supply chain health for multiple execution persona – analysts or managers at the DC level or fulfillment center to view the various KPIs. It provides them with information to monitor, measure, and manage different aspects of the supply chain, including transportation, inventory movement, and operational activities.

  1. Use Case Approach for Autonomous Supply Chain

The ideal supply chain control tower can guide leaders/managers to explore potential use cases. It will allow them to find the most critical challenges that profoundly impact the overall performance of the supply chain and use advanced analytics, such as machine learning, advanced forecasting, or advanced scenario planning. In this way, they can combine use cases with visualization and diagnostic capabilities and automate the supply chain as they mature.

Benefits of Control Tower Optimization

  • End-to-end visibility
  • Integrated supply chain
  • Improved decision-making
  • Fewer network failures
  • Optimal inventory level
  • Lesser buffer inventory
  • Reduced compliance penalties
  • Accurate demand planning, better scheduling, reduced cycle times and inventory levels

Conclusion: Control Towers are Stepping Stones Towards Autonomous Supply Chain

The supply chain control tower provides complete visibility from high-level monitoring layers to execution details, so the executives can optimize, manage, plan and execute supply chain processes and operations faster and more accurately. The addition of anomaly detection, automated root cause analysis, and response capabilities will further simplify the transition towards a cognitive supply chain control tower.

 

Author:

Hemanth Holla

Hemanth Holla, Senior Manager, Supply Chain, Tredence Inc.

 


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Tredence is a data science and AI engineering company focused on solving the last mile problem in analytics. The ‘last mile’ is defined as the gap between insight creation and value realization. Tredence is 1,000-plus employees strong with offices in Foster City, Chicago, London, Toronto and Bangalore, with the largest companies in retail, CPG, hi-tech, telecom, travel and industrials as clients.

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