So, what is logistics orchestration anyway?
Visibility. Risk Management. Operating system. Decision intelligence. Exceptions management. Product Release. Traceability. Control tower. What’s the difference?
We hear these words (and their respective functionalities) being co-mingled around in the industry, which makes it awfully confusing for prospective companies and buyers looking to adopt and implement technologies into their network.
So I’ve put together a guide as to how we see the supply chain tech landscape.
But first, put your filters on. I want to be clear that we’re solely zoomed in around the intersection of two specific focus areas:
1.) the Transportation function, and
2.) the shipment of perishable (cold chain) and high-value product.
That’s it -- that's our world. Pharma. Produce. Electronics. Oil & Gas. Specifically focused on the movement from point A to Z. No order management. No inventory or warehouse management. No capacity load matching. Just transportation… because we believe transportation – done correctly – is a hard enough problem towards which to channel our entire focus.
All of this being said, I’ll first define how we view each category of providers, the strengths and weaknesses of each category, and then explain how it all fits together via Logistics Orchestration.
Devices
Devices are tracking & sensor modules made up of both active IoT (real-time) and passive data loggers (not real-time). A passive device will solely capture a temperature reading and time stamp with each reading, while an active device will offer some combination of location (via GPS, WIFI, triangulation, etc.), temperature, humidity, shock & vibration, orientation and light.
Devices are typically attached at the product or pallet level to offer better and more granular visibility (in near real-time) as compared to traditional carrier milestones, which are terribly unreliable.
Strengths:
Weaknesses:
When you need IoT devices:
Traditionally, you’ll want to leverage IoT within transportation networks that require significant quality control, security or compliance.
This typically comes in the form of temperature-sensitive products which are subject to quality damage, or time-sensitive or valuable product which may be the target of cargo theft.
Devices provide a more granular visibility layer that moves from container-level tracking and down to the pallet / product level, making it especially valuable for multi-mode, multi-leg LTL shipments.
SOP Management & Lane Qualification
Most common in Pharma and the Life Sciences, lane qualification is a process by which new lanes are qualified through IQ (installation qualification), OQ (operational qualification) and PQ (performance qualification) steps to ensure that the combination of variables (packaging, thermal life, carrier, IoT device, routing, etc.) are adequate to withstand real-world shipping and storage conditions throughout the supply chain. It also includes a requalification process anytime that an existing standard operating procedure or distribution risk assessment is updated / modified.
There are few tools / functionalities that exist in this space, and PAXAFE just introduced its own.
Strengths:
Weaknesses:
When you need Lane Qualification:
If you are in the Pharmaceutical business, lane qualification and risk assessments are a vital compliance checkmark to assure regulatory bodies that your company took the requisite steps to de-risk its supply chain.
Companies will engage in lane qualification activities such as performance mapping, thermal modeling and distribution risk assessments typically when 1.) they are setting up a new product on a new lane, or 2.) they need to revalidate a product / SOP.
Other industries have less formal and sophisticated qualification processes, but they’re typically more so about establishing a ‘performance baseline’ of what is ‘normal’ rather than focusing on compliance.
Real Time Transportation Visibility (RTTV)
This contingent of companies focus on delivering what I call ‘visibility plus’ to their customers. Their primary focus is building out a breadth of integrations to consolidate a broad spectrum of data all into one view / platform, and offer additional value-add capabilities (e.g. capacity load matching, warehouse management, security monitoring, etc.)
Strengths:
Weaknesses:
When you need RTTV:
Shipments of commodities, low value freight (e.g. clothing, retail) where container-level tracking and ocean & rail tracking are at the forefront of importance.
Industries with high detention / demurrage penalty fees.
Warehouses with large yards, where inbound product could get lost / damaged.
Industries where freight is booked in the spot market.
Performance & Risk Management:
Companies pay $20, $30 and even $40+ per data logger or IoT device / shipment! That’s a lot of money to let that data go to waste.
Plus – here’s a dirty little secret: the majority of your value from real-time visibility programs won’t come in the form of product loss reduction or intervening on a live shipment.
It will come in the form of planning and optimizing parameters to reduce cost and waste to begin with.
It will come from having the data and confidence to switch from Air to Ocean on a particular lane. Or to reduce Contracted Lead Time with an LSP, saving on inventory carrying costs.
It will come from reducing over and under-packaging on each lane.
It will come from selecting the right device / LSP / packaging company to begin with, and continuously monitoring their performance over time to drive accountability, trust and mutual investment
It will come from bridging the gap between static SOPs and risk assessments, and having a live feedback loop to continuously monitor and update these processes as your performance and risk within your network evolves.
There are also few providers in this space.
Strengths:
Weaknesses:
When you need Performance & Risk Management:
Have you ever heard the phrase ‘insanity is doing the same thing over and over again, but expecting a different result?’
That’s kind of how most industries treat the supply chain today. All of the focus is around exceptions management and reducing the issue NOW…TODAY…RIGHT THIS MOMENT. All about monitoring and exceptions management!
Without much foresight to tomorrow…
The ability to aggregate large amounts of data – from IoT & carrier milestones, to SOPs, to weather and geopolitical – and then understand the patterns and correlations around that data will enable your planning and quality teams to make better decisions tomorrow, and – over time – reduce the amount of issues that your monitoring teams will need to respond to tomorrow.
Companies need aggregate performance and risk management when they reach a critical mass of data or decisions. This inflection point varies by industry.
For Pharma, this might mean 50 unique lanes (origin < > destination pairs), or 1,500+ shipments per month.
For Produce, this might mean 5000 monthly loads.
Generative AI
Large Language Models (LLMs) and AI agents have been transformational in how we collect, analyze, process and query data, and take action on that data.
Most shippers and BCOs are coming to the realization that the value that comes out of these LLMs is not in the infrastructure layer, but rather in the application layer – where these models are fine tuned to specific areas of expertise (e.g. cold chain transportation).
The make vs. buy decision is still top of mind, where companies that go the BUY route are really buying into the RAG infrastructure, agent setup and model fine-tuning; while companies that try to leverage LLMs directly have to figure out how to minimize hallucinations and contextualize data outputs of a generic large language model.
LLM Strengths:
Weaknesses:
This brings us to the magic phrase of the day: Logistics Orchestration.
Logistics Orchestration is the ability to bring multiples of the aforementioned capabilities together into one platform – to be able to support both the strategic planning and operational aspects of a transportation network.
This is not to be confused with broader supply chain orchestration, where leaders like Kinaxis and E2Open focus on stringing together much broader functional datasets (order management, inventory planning and management, sales & operations, etc.) but not go as deep into any specific module (e.g. transportation).
Strengths:
Weaknesses:
The PAXAFE difference