Resilient Demand Planning with AI Decisioning Agents
Navigating today's supply chain planning landscape is more challenging than ever, riddled with unforeseen external factors like climate changes, geopolitical tensions, and labor-related disruptions.
Despite these shocks, manufacturers must maintain accurate demand planning to optimize production capacity, efficiently allocate inventory to DCs, and meet customer service expectations and OTIF delivery targets.
So what's a planner to do?
Enter autonomous resilient planning!
We can take a customer's demand forecast as an input, which maybe manual i.e. simply aggregated from human sales reps estimating which orders are coming by when, or it maybe a simple traditional ML based forecast. Then we add our own external signals data from our VuGraph knowledge graph and perform the shock simulations in our digital twins along with the shock's impact on your own supply chain dynamics. Consequently, the AI Agents are trained to recommend the production quantity levels that optimize for the customers business KPIs for both the nornal scenarion, as well as the shock scenarios.
It's important to note: while AI agents offer recommendations, the human planner retains the ultimate decision-making authority. Informed by the agent's insights and the recommended actions, the planner can make informed choices, carefully weighing their impact on business KPIs.
In summary, the integration of AI-driven decisioning agents into the demand planning process empowers companies to proactively anticipate and respond to disruptions, ensuring a more resilient and adaptive supply chain.
For further insights into how AI can optimize your demand planning, explore DeepVu's website and discover how these innovative strategies can boost your enterprise's resilience, margins, and sustainability. Feel free to email us directly at [email protected] or ceo<at>deepvu<dot>co








