• Latest
  • Trending
The AI Era in Logistics: When Algorithms Take Charge

The AI Era in Logistics: When Algorithms Take Charge

March 24, 2024
Surge in Asian Air Cargo Forces Airlines to Reprioritize Global Routes

Surge in Asian Air Cargo Forces Airlines to Reprioritize Global Routes

July 10, 2025
Asia-Europe Freight Rates Surge Again as Port Congestion Hits Peak

Asia-Europe Freight Rates Surge Again as Port Congestion Hits Peak

July 10, 2025
ADVERTISEMENT
Shanghai Surges Ahead as Global Shipping Recalibrates

Shanghai Surges Ahead as Global Shipping Recalibrates

July 10, 2025
Argentina, Brazil, and Mexico Fast-Track Regional Freight Agreements

Argentina, Brazil, and Mexico Fast-Track Regional Freight Agreements

July 4, 2025
European Rail Freight Gathers Pace as Transit Times Improve in Poland

European Rail Freight Gathers Pace as Transit Times Improve in Poland

July 4, 2025
Freight Delays Mount at Toronto Pearson After Two Days of Storm Disruptions

Freight Delays Mount at Toronto Pearson After Two Days of Storm Disruptions

July 4, 2025
HIVED Secures $42M to Bring Greener Deliveries to More UK Cities

HIVED Secures $42M to Bring Greener Deliveries to More UK Cities

July 4, 2025
Europe’s Trucking Sector Suffers Trade‑War Blow, U.S. Demand Slumps 4% in May

Europe’s Trucking Sector Suffers Trade‑War Blow, U.S. Demand Slumps 4% in May

July 4, 2025
Singapore Port Backs Up as Ship Arrivals Spike Unexpectedly

Singapore Port Backs Up as Ship Arrivals Spike Unexpectedly

July 4, 2025
U.S.–Vietnam Trade Pact Triggers Supply Chain Reactions Across Asia

U.S.–Vietnam Trade Pact Triggers Supply Chain Reactions Across Asia

July 4, 2025
Air Cargo Volumes Rise 2.2% in May as Global Supply Chains Lean on Speed

Air Cargo Volumes Rise 2.2% in May as Global Supply Chains Lean on Speed

July 4, 2025
Moselle Lock Breakdown Halts River Freight, Sparking Supply Chain Disruptions Across Western Europe

Moselle Lock Breakdown Halts River Freight, Sparking Supply Chain Disruptions Across Western Europe

July 4, 2025
  • Home
  • About Us
  • Press Room
  • Podcasts
  • Media Kit
  • Contact Us
  • Careers
Saturday, July 12, 2025
  • Login
  • Register
The Logistic News
  • Logistic
  • Air
  • Maritime
  • Land
  • World
  • Business
  • Tech
  • Events
  • Advertise
No Result
View All Result
  • Logistic
  • Air
  • Maritime
  • Land
  • World
  • Business
  • Tech
  • Events
  • Advertise
No Result
View All Result
The Logistic News
No Result
View All Result
Home Logistic

The AI Era in Logistics: When Algorithms Take Charge

The AI Era in Logistics: When Algorithms Take Charge

The Logistic News by The Logistic News
March 24, 2024
in Logistic, Tech
Reading Time: 3 mins read
0
The AI Era in Logistics: When Algorithms Take Charge
ADVERTISEMENT

Harnessing Machine Learning for Enhanced Optimization in Complex Systems

In the realm of intricate optimization challenges, such as worldwide package delivery and power grid management, a novel approach centered on data analysis promises more effective solutions.

While mythical figures like Santa Claus rely on magical means to deliver gifts worldwide, real-world corporations such as FedEx face daunting logistical puzzles in routing holiday packages efficiently. These organizations often resort to advanced software for viable solutions.

ADVERTISEMENT

Such software, known as a mixed-integer linear programming (MILP) solver, deconstructs extensive optimization issues into manageable segments, applying broad algorithms in search of the optimal outcome. Nevertheless, finding a solution could stretch from hours to days.

Due to the tedious nature of this process, companies may halt the software prematurely, settling for a suboptimal solution achievable within a limited timeframe.

Machine Learning Accelerates Problem-Solving
A collaboration between researchers at MIT and ETH Zurich has leveraged machine learning to expedite this process. They pinpointed a pivotal phase in MILP solvers, notorious for its extensive range of potential solutions that significantly delay the resolution, hindering the entire process. To address this, the team implemented a filtering strategy to streamline this phase, subsequently employing machine learning to pinpoint the best solution for specific problem types.

This innovative, data-centric method allows companies to customize a generic MILP solver for specific challenges using their own data.

This method enhanced the efficiency of MILP solvers by 30 to 70 percent without sacrificing accuracy. It provides a means to secure optimal solutions swiftly or, in the case of particularly intricate problems, achieve superior solutions within a feasible timeframe.

This strategy is applicable across various domains where MILP solvers are utilized, including ride-sharing services, electric grid management, vaccination distribution, and any scenario involving complex resource allocation.

“Optimization often sees a divide between machine learning and traditional approaches. I believe in merging the best of both worlds, and this represents a solid example of such a hybrid approach,” stated Cathy Wu, a leading figure in the research from MIT, emphasizing the strength of combining machine learning with conventional methods.

Challenging to Resolve
MILP problems are notorious for their exponentially large set of possible solutions. For example, a salesperson seeking the shortest route across multiple cities faces a dilemma with potential solutions outnumbering the atoms in the universe.

“These problems are NP-hard, indicating the improbability of an efficient solution algorithm. For large-scale problems, achieving suboptimal performance is often the best hope,” Wu explained.

MILP solvers employ a mix of strategies and practical techniques to attain reasonable solutions within an acceptable timeframe.

A common tactic involves a divide-and-conquer strategy, initially dividing the solution space into smaller sections using a method known as branching. The solver then applies a technique called cutting to refine these sections for quicker examination. Cutting employs rules that narrow down the search space without omitting feasible solutions, based on a series of algorithms designed for various MILP challenges.

Wu and her team discovered that choosing the optimal mix of algorithms presents an exponential challenge.

“Managing separators is crucial in every solver, yet often overlooked. Recognizing separator management as a machine learning task marks one of our contributions,” Wu noted.

Refining Solution Spaces
The team introduced a filtering mechanism that condenses the search space from over 130,000 combinations to roughly 20, relying on the concept of diminishing returns. They then used a machine-learning model to select the best algorithm combination from the narrowed options.

Trained with datasets specific to the user’s optimization issue, the model learns to select algorithms most suited to the user’s needs. For companies like FedEx, with extensive experience in solving routing challenges, leveraging real-world data promises improved outcomes.

The model employs a reinforcement learning strategy known as contextual bandits, iteratively choosing solutions, assessing their effectiveness, and refining its choices.

This data-driven method boosted MILP solver efficiency by 30 to 70 percent without compromising accuracy. The improvement was consistent across both simple, open-source solvers and more sophisticated, commercial ones.

Looking ahead, Wu and her team aim to apply this methodology to more complex MILP challenges, where amassing labeled data for training might pose a challenge. They contemplate training the model with a smaller dataset before adapting it for larger optimization issues. The researchers are also keen on decoding the learned model to better grasp the efficiency of various algorithms.

Previous Post

The Asian logistics group J&T records its first profit in China, making up the majority of its revenue despite aggressive price competition.

Next Post

Pakistani Logistics Company Set for Upcoming IPO, Targets $2.1 Million Fundraise

Next Post
Pakistani Logistics Company Set for Upcoming IPO, Targets $2.1 Million Fundraise

Pakistani Logistics Company Set for Upcoming IPO, Targets $2.1 Million Fundraise

Leave a Reply Cancel reply

Your email address will not be published. Required fields are marked *

A D V E R T I S E M E N T

Popular News

  • Drone Delivery Takes Flight: Amazon Partners with UPS for Trial Program

    Drone Delivery Takes Flight: Amazon Partners with UPS for Trial Program

    0 shares
    Share 0 Tweet 0
  • Rail Cargo Group Strengthens European Network with Captrain Netherlands Acquisition

    0 shares
    Share 0 Tweet 0
  • Automotive Inbound Logistics Market: Navigating Future Challenges

    0 shares
    Share 0 Tweet 0
  • Global Inflation Cools to Target After Three Years, Central Banks Face Policy Dilemma

    0 shares
    Share 0 Tweet 0
  • Dubai Mercantile Exchange Rebrands as Gulf Mercantile Exchange Following Saudi Tadawul Group Acquisition

    0 shares
    Share 0 Tweet 0

Recent News

Surge in Asian Air Cargo Forces Airlines to Reprioritize Global Routes

Surge in Asian Air Cargo Forces Airlines to Reprioritize Global Routes

July 10, 2025
Asia-Europe Freight Rates Surge Again as Port Congestion Hits Peak

Asia-Europe Freight Rates Surge Again as Port Congestion Hits Peak

July 10, 2025
Shanghai Surges Ahead as Global Shipping Recalibrates

Shanghai Surges Ahead as Global Shipping Recalibrates

July 10, 2025

Discover a new era of logistics reporting with The Logistic News, your go-to platform for breaking news, insightful features, and exclusive interviews shaping the global logistics and freight landscape. Trust us to deliver accurate, timely, and relevant information that empowers professionals and enthusiasts alike in navigating the intricacies of this vital sector.

Navigation

  • Home
  • About Us
  • Press Room
  • Podcasts
  • Media Kit
  • Contact Us
  • Careers
  • Privacy Policy
  • Terms of Use

© 2024 - thelogisticnews.com

Welcome Back!

Login to your account below

Forgotten Password? Sign Up

Create New Account!

Fill the forms below to register

All fields are required. Log In

Retrieve your password

Please enter your username or email address to reset your password.

Log In

SIgn Up Newsletter

This will close in 20 seconds

Manage Cookie Consent
We use technologies like cookies to store and/or access device information. We do this to improve browsing experience and to show (non-) personalized ads. Consenting to these technologies will allow us to process data such as browsing behavior or unique IDs on this site. Not consenting or withdrawing consent, may adversely affect certain features and functions.
Functional Always active
The technical storage or access is strictly necessary for the legitimate purpose of enabling the use of a specific service explicitly requested by the subscriber or user, or for the sole purpose of carrying out the transmission of a communication over an electronic communications network.
Preferences
The technical storage or access is necessary for the legitimate purpose of storing preferences that are not requested by the subscriber or user.
Statistics
The technical storage or access that is used exclusively for statistical purposes. The technical storage or access that is used exclusively for anonymous statistical purposes. Without a subpoena, voluntary compliance on the part of your Internet Service Provider, or additional records from a third party, information stored or retrieved for this purpose alone cannot usually be used to identify you.
Marketing
The technical storage or access is required to create user profiles to send advertising, or to track the user on a website or across several websites for similar marketing purposes.
Manage options Manage services Manage {vendor_count} vendors Read more about these purposes
View preferences
{title} {title} {title}
No Result
View All Result
  • Logistic
  • Air
  • Maritime
  • Land
  • World
  • Business
  • Tech
  • Events
  • Advertise

© 2024 - thelogisticnews.com