The Big Picture:
Last week, we discussed the challenges and opportunities of pallet packing. This week, let’s dive into some experimental AI work happening in AAXIS Labs. We’ve already implemented pallet packing using AI-based genetic algorithms, which optimize packing patterns with evolutionary techniques. Now, we’re exploring reinforcement learning (RL) as a potential next step in tackling this problem.
Why It Matters:
Efficient pallet packing is crucial for manufacturers and distributors. Poorly packed pallets waste space, increase shipping costs, and risk product damage. While genetic algorithms have proven effective, reinforcement learning could offer even more adaptive and scalable solutions.
How It Works:
Reinforcement learning mimics how humans learn through feedback:
- Agent: The AI acts as a “worker,” deciding how to stack boxes on a pallet.
- Environment: The pallet and boxes provide the “workspace.”
- Rewards: The AI earns points (or penalties) based on factors like space usage, weight distribution, and stability.
Over time, the AI experiments with different packing strategies, learning what works best and refining its decisions without human intervention.
Real-World Problem:
At AAXIS, we implemented pallet packing for one of our chemical industry clients to streamline their loading operations. Currently the algorithm can handle 100 or so box sizes. Reinforcement learning could help us tackle higher numbers of boxes by continuously adapting to new box dimensions and configurations.
Zoom Out:
Reinforcement learning isn’t just for pallet packing. It’s being tested in areas like route optimization, inventory management, and dynamic pricing—anywhere decisions need constant refinement.
What’s Next:
At AAXIS Labs, Nikhil Ramanuja, one of our talented interns, has been advancing our reinforcement learning models to address scaling the solutions for larger, more complex operations. Nikhil previously used reinforcement learning to optimize path planning when he competed in the VEX AI Robotics Worlds Competition. He is now leveraging that experience to tackle real-world challenges in pallet packing. This approach could unlock new levels of efficiency and cost savings for B2B businesses.
The Bottom Line:
AI technologies like reinforcement learning aren’t just futuristic—they’re powerful tools that can transform how B2B companies solve logistics challenges. As these experiments evolve, businesses that embrace them early will be better positioned to thrive.
Ready to learn more, set up a meeting with the AAXIS team.