THE RSI ENGINE

Predictive analytics is a powerful technology that can improve an enterprise’s efficiency and profitability.  However, despite the obvious benefits, introducing predictive analytics does come with some challenges.  One such challenge is the notion that predictive analytics technology represents a “black box” that is difficult to understand and explain.

RSI’s patented technology is not based on static formulas or algorithms. We use a Monte Carlo simulation technique to simulate supply chains for any given item in any given location. We start with a BOH (Beginning On-Hand) inventory quantity and simulate daily changes in inventory levels over a given period of time (e.g., quarter).

During the simulation, daily inventory goes up due to receipts of supply and goes down due to demand or any other valid consumption of inventory.  During the simulation, RSI pays particular attention to two things:

  • Average inventory level: the average on-hand inventory quantity throughout the simulation

  • Average service level: is this simulated inventory quantity sufficient to meet demand requirements at the desired customer service level? 

RSI’s simulation technology determines the minimum inventory level that has the highest probability of meeting the required service level. We have found that processing a minimum of 2,000 Monte-Carlo-style iterative simulations best drives a high-confidence statistical probability that the RSI target inventory level will meet the required service level for each item at each location.

Traditional inventory optimization formulas and algorithms create inventory deficiencies or surpluses because they cannot account for the required supply chain variables to accurately determine inventory levels.  By not accounting for these critical supply chain variables, these methods essentially do not represent each inventory item’s actual unique variation and constraints.

These fundamental flaws of formulas result in two dangerous inventory imbalance scenarios:

Too Much Inventory, which ties up working capital

Too Little Inventory, which often results in poor on-time delivery and lost sales/clients along with costly expedites

RSI has solved this age-old supply chain dilemma by redefining how inventory optimization is achieved with a patented cloud-based predictive analytics solution. Our optimization software simulates real-world client environments, predicts optimum inventory levels at an item/location level, and enables our clients to realize better business outcomes by eliminating inventory imbalances and quantifying risk.

As inventory levels increase or decrease during a simulation, a lot of factors come into play. RSI works with our clients to collect all relevant input parameters that enable our simulations to best reflect real-world behavior of their items in their business environment.  It is crucial that these input parameters reflect real-world processes and values in order to properly simulate how inventory is expected to change over time.  Here is a summary of those inputs.

RSI harnesses the power of AWS cloud computing to simulate real-word conditions in minutes.  Our patented technology leverages a probabilistic Monte Carlo model that accurately and correctly represents all real-world factors (there are about 10) affecting actual inventory and service-level behavior.  RSI also utilizes statistics that correctly represent demand and supply variability. The model generates a minimum of 2000 independent inventory behavior simulations for your entire supply chain at the individual item level.  This quantifies and accounts for any randomness, intermittency, uncertainty and variance in the determination of optimal inventory levels.

Schedule a Call

Find out if Right Sized Inventory is right for your business and inventory needs. Set up a call with one of our team and we’ll walk you through a demo, identify trouble spots in your business, and see how implementing RSI can transform your business through data-driven inventory optimization.

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