Commentary: Pathmind applies AI, machine learning to industrial operations – FreightWaves
The views expressed here are solely those of the author and do not necessarily represent the views of FreightWaves or its affiliates.
In this installment of the AI in Supply Chain series (#AIinSupplyChain), we explore how Pathmind, an early-stage startup based in San Francisco, is helping companies apply simulation and reinforcement learning to industrial operations.
I asked Chris Nicholson, CEO and founder of Pathmind, What is the problem that Pathmind solves for its customers? Who is the typical customer?
Nicholson said: The typical Pathmind customer is an industrial engineer working at a simulation consulting firm or on the simulation team of a large corporation with industrial operations to optimize. This ranges from manufacturing companies to the natural resources sector, such as mining and oil and gas. Our clients build simulations of physical systems for routing, job scheduling or price forecasting, and then search for strategies to get more efficient.
Pathminds software is suited for manufacturing resource management, energy usage management optimization and logistics optimization.
As with every other startup that I have highlighted as a case in this #AIinSupplyChain series, I asked, What is the secret sauce that makes Pathmind successful? What is unique about your approach? Deep learning seems to be all the rage these days. Does Pathmind use a form of deep learning? Reinforcement learning?
Nicholson responded: We automate tasks that our users find tedious or frustrating so that they can focus on whats interesting. For example, we set up and maintain a distributed computing cluster for training algorithms. We automatically select and tune the right reinforcement learning algorithms, so that our users can focus on building the right simulations and coaching their AI agents.
Echoing topics that we have discussed in earlier articles in this series, he continued: Pathmind uses some of the latest deep reinforcement learning algorithms from OpenAI and DeepMind to find new optimization strategies for our users. Deep reinforcement learning has achieved breakthroughs in gaming, and it is beginning to show the same performance for industrial operations and supply chain.
On its website, Pathmind describes saving a large metals processor 10% of its expenditures on power. It also describes the use of its software to increase ore preparation by 19% at an open-pit mining site.
Given how difficult it is to obtain good quality data for AI and machine learning systems for industrial settings, I asked how Pathmind handles that problem.
Simulations generate synthetic data, and lots of it, said Slin Lee, Pathminds head of engineering. The challenge is to build a simulation that reflects your underlying operations, but there are many tools to validate results.
Once you pass the simulation stage, you can integrate your reinforcement learning policy into an ERP. Most companies have a lot of the data they need in those systems. And yes, theres always data cleansing to do, he added.
As the customer success examples Pathmind provides on its website suggest, mining companies are increasingly looking to adopt and implement new software to increase efficiencies in their internal operations. This is happening because the industry as a whole runs on very old technology, and deposits of ore are becoming increasingly difficult to access as existing mines reach maturity. Moreover, the growing trend toward the decarbonization of supply chains, and the regulations that will eventually follow to make decarbonization a requirement, provide an incentive for mining companies to seize the initiative in figuring out how to achieve that goal by implementing new technology
The areas in which AI and machine learning are making the greatest inroads are mineral exploration using geological data to make the process of seeking new mineral deposits less prone to error and waste; predictive maintenance and safety using data to preemptively repair expensive machinery before breakdowns occur; cyberphysical systems creating digital models of the mining operation in order to quickly simulate various scenarios; and autonomous vehicles using autonomous trucks and other autonomous vehicles and machinery to move resources within the area in which mining operations are taking place.
According to Statista, The revenue of the top 40 global mining companies, which represent a vast majority of the whole industry, amounted to some 692 billion U.S. dollars in 2019. The net profit margin of the mining industry decreased from 25 percent in 2010 to nine percent in 2019.
The trend toward mining companies and other natural-resource-intensive industries adopting new technology is going to continue. So this is a topic we will continue to pay attention to in this column.
Conclusion
If you are a team working on innovations that you believe have the potential to significantly refashion global supply chains, wed love to tell your story at FreightWaves. I am easy to reach on LinkedIn and Twitter. Alternatively, you can reach out to any member of the editorial team at FreightWaves at media@freightwaves.com.
Dig deeper into the #AIinSupplyChain Series with FreightWaves:
Commentary: Optimal Dynamics the decision layer of logistics? (July 7)
Commentary: Combine optimization, machine learning and simulation to move freight (July 17)
Commentary: SmartHop brings AI to owner-operators and brokers (July 22)
Commentary: Optimizing a truck fleet using artificial intelligence (July 28)
Commentary: FleetOps tries to solve data fragmentation issues in trucking (Aug. 5)
Commentary: Bulgarias Transmetrics uses augmented intelligence to help customers (Aug. 11)
Commentary: Applying AI to decision-making in shipping and commodities markets (Aug. 27)
Commentary: The enabling technologies for the factories of the future (Sept. 3)
Commentary: The enabling technologies for the networks of the future (Sept. 10)
Commentary: Understanding the data issues that slow adoption of industrial AI (Sept. 16)
Commentary: How AI and machine learning improve supply chain visibility, shipping insurance (Sept. 24)
Commentary: How AI, machine learning are streamlining workflows in freight forwarding, customs brokerage (Oct. 1)
Commentary: Can AI and machine learning improve the economy? (Oct. 8)
Commentary: Savitude and StyleSage leverage AI, machine learning in fashion retail (Oct. 15)
Commentary: How Japans ABEJA helps large companies operationalize AI, machine learning (Oct. 26)
Authors disclosure: I am not an investor in any early-stage startups mentioned in this article, either personally or through REFASHIOND Ventures. I have no other financial relationship with any entities mentioned in this article.
See the rest here:
Commentary: Pathmind applies AI, machine learning to industrial operations - FreightWaves
- Machine Learning in Drug Discovery Market to Witness Exponential Growth: Key Players, $250M Eli Lilly Deal & Regional Insights for 2025-2034 -... - July 18th, 2025 [July 18th, 2025]
- Automated seafood freshness detection and preservation analysis using machine learning and paper-based pH sensors - Nature - July 18th, 2025 [July 18th, 2025]
- Do You Know What It Means To Train a Machine Learning Model? - LSU - July 18th, 2025 [July 18th, 2025]
- Establishment of an interpretable MRI radiomics-based machine learning model capable of predicting axillary lymph node metastasis in invasive breast... - July 18th, 2025 [July 18th, 2025]
- A Machine Learning-Reconstructed Dataset of River Discharge, Temperature, and Heat Flux into the Arctic Ocean - Nature - July 18th, 2025 [July 18th, 2025]
- Leveraging computational linguistics and machine learning for detection of ultra-high risk of mental health disorders in youths | Schizophrenia -... - July 18th, 2025 [July 18th, 2025]
- Development and validation of machine learning-based diagnostic models using blood transcriptomics for early childhood diabetes prediction - Frontiers - July 18th, 2025 [July 18th, 2025]
- Fatigue and stamina prediction of athletic person on track using thermal facial biomarkers and optimized machine learning algorithm - Nature - July 18th, 2025 [July 18th, 2025]
- Identifying the crucial oncogenic mechanisms of DDX56 based on a machine learning-based integration model of RNA-binding proteins - Nature - July 18th, 2025 [July 18th, 2025]
- AI and Machine Learning Skills Are Make or Break for Developers: 71% of Tech Leaders Wont Hire Without Them - Yahoo Finance - July 18th, 2025 [July 18th, 2025]
- Developing an explainable machine learning and fog computing-based visual rating scale for the prediction of dementia progression - Nature - July 18th, 2025 [July 18th, 2025]
- Prognosis of air quality index and air pollution using machine learning techniques - Nature - July 18th, 2025 [July 18th, 2025]
- Integrating vision transformer-based deep learning model with kernel extreme learning machine for non-invasive diagnosis of neonatal jaundice using... - July 18th, 2025 [July 18th, 2025]
- PlayStation 6 Likely to Feature 24 GB RAM for Advanced Ray Tracing and Machine Learning Without Raising Costs - Wccftech - July 18th, 2025 [July 18th, 2025]
- Machine Learning-Assisted Iterative Screening for Efficient Detection of Drug Discovery Starting Points - ACS Publications - July 16th, 2025 [July 16th, 2025]
- 2025 IT Camp on AI & Machine Learning for Beginners to be held August 5 - Southeastern Oklahoma State University - July 16th, 2025 [July 16th, 2025]
- Utilizing machine learning to predict MRI signal outputs from iron oxide nanoparticles through the PSLG algorithm - Nature - July 16th, 2025 [July 16th, 2025]
- Developing a machine-learning model to enable treatment selection for neoadjuvant chemotherapy for esophageal cancer - Nature - July 16th, 2025 [July 16th, 2025]
- Advancing crop recommendation system with supervised machine learning and explainable artificial intelligence - Nature - July 16th, 2025 [July 16th, 2025]
- Predicting clozapine-induced adverse drug reaction biomarkers using machine learning - Nature - July 16th, 2025 [July 16th, 2025]
- Postoperative complication severity prediction in penile prosthesis implantation: a machine learning-based predictive modeling study - Nature - July 16th, 2025 [July 16th, 2025]
- The Future of AI & Machine Learning: Perspective on Shaping Tomorrows Business Landscape - Vocal - July 16th, 2025 [July 16th, 2025]
- Machine Learning: Your Ticket to a Thriving Career in the Tech World - The Impressive Times - July 14th, 2025 [July 14th, 2025]
- Integrative analysis of multi-omics data and gut microbiota composition reveals prognostic subtypes and predicts immunotherapy response in colorectal... - July 14th, 2025 [July 14th, 2025]
- Comprehensive multi-omics and machine learning framework for glioma subtyping and precision therapeutics - Nature - July 14th, 2025 [July 14th, 2025]
- Development and validation of a machine learning-based nomogram for survival prediction of patients with hilar cholangiocarcinoma after... - July 12th, 2025 [July 12th, 2025]
- Geochemical-integrated machine learning approach predicts the distribution of cadmium speciation in European and Chinese topsoils - Nature - July 12th, 2025 [July 12th, 2025]
- Machine learning-based construction of a programmed cell death-related model reveals prognosis and immune infiltration in pancreatic adenocarcinoma... - July 12th, 2025 [July 12th, 2025]
- Application of supervised machine learning and unsupervised data compression models for pore pressure prediction employing drilling, petrophysical,... - July 12th, 2025 [July 12th, 2025]
- Machine learning identifies lipid-associated genes and constructs diagnostic and prognostic models for idiopathic pulmonary fibrosis - Orphanet... - July 12th, 2025 [July 12th, 2025]
- An evaluation methodology for machine learning-based tandem mass spectra similarity prediction - BMC Bioinformatics - July 12th, 2025 [July 12th, 2025]
- The Rise of AI in Trading: Machine Learning and the Stock Market - Disruption Banking - July 12th, 2025 [July 12th, 2025]
- Integrative analysis identifies IL-6/JUN/MMP-9 pathway destroyed blood-brain-barrier in autism mice via machine learning and bioinformatic analysis -... - July 12th, 2025 [July 12th, 2025]
- Interpretive prediction of hyperuricemia and gout patients via machine learning analysis of human gut microbiome - BMC Microbiology - July 10th, 2025 [July 10th, 2025]
- Machine learning-based identification of key factors and spatial heterogeneity analysis of urban flooding: a case study of the central urban area of... - July 10th, 2025 [July 10th, 2025]
- Developing machine learning frameworks to predict mechanical properties of ultra-high performance concrete mixed with various industrial byproducts -... - July 10th, 2025 [July 10th, 2025]
- Small Drones Market Trend Analysis and Forecast Report 2025-2034 | AI and Machine Learning Revolutionizing Autonomous Operations, Trade Tariffs Push... - July 10th, 2025 [July 10th, 2025]
- When a model touches millions: Hatim Kagalwala on accuracy accountability, and applied machine learning - Dataconomy - July 10th, 2025 [July 10th, 2025]
- New Study Uses Gait Data and Machine Learning for Early Detection of Anxiety and Depression - AZoSensors - July 10th, 2025 [July 10th, 2025]
- Machine Learning and the Evolution of Mobile Apps - CIO Applications - July 10th, 2025 [July 10th, 2025]
- Artificial Intelligence, Machine Learning, and Big Data in Thailand: Legal and Regulatory Developments 2025 - Lexology - July 10th, 2025 [July 10th, 2025]
- Karen Hao on how the AI boom became a new imperial frontier - Machine Learning Week 2025 - July 8th, 2025 [July 8th, 2025]
- Machine Learning and AI in Enhancing Image Analysis of 3D Samples - Drug Target Review - July 8th, 2025 [July 8th, 2025]
- Gartner Predicts Over 40% of Agentic AI Projects Will Be Canceled by End of 2027 - Machine Learning Week 2025 - July 8th, 2025 [July 8th, 2025]
- Explainable machine learning model for predicting the transarterial chemoembolization response and subtypes of hepatocellular carcinoma patients - BMC... - July 8th, 2025 [July 8th, 2025]
- Identification and validation of glucocorticoid receptor and programmed cell death-related genes in spinal cord injury using machine learning - Nature - July 8th, 2025 [July 8th, 2025]
- Multiclass leukemia cell classification using hybrid deep learning and machine learning with CNN-based feature extraction - Nature - July 6th, 2025 [July 6th, 2025]
- Predictive modeling and machine learning show poor performance of clinical, morphological, and hemodynamic parameters for small intracranial aneurysm... - July 6th, 2025 [July 6th, 2025]
- A robust machine learning approach to predicting remission and stratifying risk in rheumatoid arthritis patients treated with bDMARDs - Nature - July 6th, 2025 [July 6th, 2025]
- Ultrabroadband and band-selective thermal meta-emitters by machine learning - Nature - July 4th, 2025 [July 4th, 2025]
- Machine Learning is Surprisingly Good at Simulating the Universe - Universe Today - July 4th, 2025 [July 4th, 2025]
- Machine learning-assisted multi-dimensional transcriptomic analysis of cytoskeleton-related molecules and their relationship with prognosis in... - July 4th, 2025 [July 4th, 2025]
- Machine learning combined with multi-omics to identify immune-related LncRNA signature as biomarkers for predicting breast cancer prognosis - Nature - July 4th, 2025 [July 4th, 2025]
- Comprehensive machine learning analysis of PANoptosis signatures in multiple myeloma identifies prognostic and immunotherapy biomarkers - Nature - July 4th, 2025 [July 4th, 2025]
- Enhancing game outcome prediction in the Chinese basketball league through a machine learning framework based on performance data - Nature - July 4th, 2025 [July 4th, 2025]
- A novel double machine learning approach for detecting early breast cancer using advanced feature selection and dimensionality reduction techniques -... - July 4th, 2025 [July 4th, 2025]
- Machine learning for Parkinsons disease: a comprehensive review of datasets, algorithms, and challenges - Nature - July 4th, 2025 [July 4th, 2025]
- Cervical cancer prediction using machine learning models based on routine blood analysis - Nature - July 4th, 2025 [July 4th, 2025]
- Enhancing anomaly detection in IoT-driven factories using Logistic Boosting, Random Forest, and SVM: A comparative machine learning approach - Nature - July 4th, 2025 [July 4th, 2025]
- Predicting car accident severity in Northwest Ethiopia: a machine learning approach leveraging driver, environmental, and road conditions - Nature - July 4th, 2025 [July 4th, 2025]
- Sensormatic Solutions Adds Machine Learning to Shrink Analyzer - Ink World magazine - July 4th, 2025 [July 4th, 2025]
- Exploring the link between the ZJU index and sarcopenia in adults aged 2059 using NHANES and machine learning - Nature - July 4th, 2025 [July 4th, 2025]
- Combining multi-parametric MRI radiomics features with tumor abnormal protein to construct a machine learning-based predictive model for prostate... - July 2nd, 2025 [July 2nd, 2025]
- New insight into viscosity prediction of imidazolium-based ionic liquids and their mixtures with machine learning models - Nature - July 2nd, 2025 [July 2nd, 2025]
- Implementing partial least squares and machine learning regressive models for prediction of drug release in targeted drug delivery application -... - July 2nd, 2025 [July 2nd, 2025]
- Advanced analysis of defect clusters in nuclear reactors using machine learning techniques - Nature - July 2nd, 2025 [July 2nd, 2025]
- Machine learning analysis of kinematic movement features during functional tasks to discriminate chronic neck pain patients from asymptomatic controls... - July 2nd, 2025 [July 2nd, 2025]
- Enhanced machine learning models for predicting three-year mortality in Non-STEMI patients aged 75 and above - BMC Geriatrics - July 2nd, 2025 [July 2nd, 2025]
- Modeling seawater intrusion along the Alabama coastline using physical and machine learning models to evaluate the effects of multiscale natural and... - July 2nd, 2025 [July 2nd, 2025]
- A comprehensive study based on machine learning models for early identification Mycoplasma pneumoniae infection in segmental/lobar pneumonia - Nature - July 2nd, 2025 [July 2nd, 2025]
- Identifying ovarian cancer with machine learning DNA methylation pattern analysis - Nature - July 2nd, 2025 [July 2nd, 2025]
- High-isolation dual-band MIMO antenna for next-generation 5G wireless networks at 28/38 GHz with machine learning-based gain prediction - Nature - July 2nd, 2025 [July 2nd, 2025]
- Sony and AMD want to focus on machine learning for the PS6 - Instant Gaming News - July 2nd, 2025 [July 2nd, 2025]
- How Machine Learning is Reshaping the Future of Sports Betting? - London Daily News - July 2nd, 2025 [July 2nd, 2025]
- An interpretable machine learning model for predicting depression in middle-aged and elderly cancer patients in China: a study based on the CHARLS... - July 2nd, 2025 [July 2nd, 2025]
- These Eight Projects Showcase the Power of Machine Learning on the Edge - Hackster.io - June 29th, 2025 [June 29th, 2025]
- Build Custom AI Tools for Your AI Agents that Combine Machine Learning and Statistical Analysis - MarkTechPost - June 29th, 2025 [June 29th, 2025]
- Check out these essential tips and trends for SEO in 2025 as AI and machine learning loom large - EdTech Innovation Hub - June 29th, 2025 [June 29th, 2025]
- Using machine learning to predict the severity of salmonella infection - Open Access Government - June 28th, 2025 [June 28th, 2025]
- How AI and machine learning are transforming drug discovery - Pharmaceutical Technology - June 28th, 2025 [June 28th, 2025]