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List of Labelbox Customers

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Logo Customer Industry Empl. Revenue Country Vendor Application Category When SI Insight
John Deere Manufacturing 73100 $44.7B United States LabelBox Labelbox AI infrastructure 2020 n/a
In 2020, John Deere implemented Labelbox to automate data curation and large scale labeling for computer vision model training that supported See & Spray precision agriculture products. The Labelbox deployment served as AI infrastructure for Blue River Technology within John Deere R&D in the United States, centralizing more than 1 billion assets of AI and ML training data. The implementation leveraged Labelbox Catalog and labeling and workflow tools to standardize annotation pipelines, enforce dataset versioning, and orchestrate high throughput labeling operations. Configuration emphasized dataset indexing, metadata management, annotation quality review loops, and task routing to accelerate iterative model development for computer vision workloads. Labelbox was integrated into model training pipelines for See & Spray so curated datasets could flow into computer vision development workflows, with operational coverage focused on R&D teams and precision agriculture engineering in the United States. The deployment consolidated image and video asset management, enabling controlled dataset curation and repeatable training dataset assemblies for downstream model training. Governance centered on centralized cataloging, workflow controls, and annotation standards to manage labeling consistency and data stewardship across John Deere and Blue River Technology. The case study reports reduced iteration time and a centralized training data repository, reflecting outcomes tied to the Labelbox implementation.
Pathware Life Sciences 15 $1M United States LabelBox Labelbox AI infrastructure 2022 n/a
In 2022, Pathware used Labelbox as its AI infrastructure provider, deploying Labelbox's annotation and training-data management SaaS to label thousands of pathology image tiles. The implementation emphasized pixel and object level annotation, producing bounding boxes and masks to create structured ground truth for supervised learning workflows in medical imaging and pathology. Labelbox's ontology-driven labeling and external labeling workflows were implemented to enforce annotation semantics and support distributed annotators, feeding curated datasets into Pathware's Bioptic system training pipeline. Operational scope centered on pathology and clinical AI model development in the United States, and the labeled datasets enabled the Bioptic system to deliver near real time biopsy quality assessments with over 90% assessment certainty.
SAP Professional Services 26944 $23.2B Germany LabelBox Labelbox AI infrastructure 2021 n/a
In 2021, SAP used Labelbox in an academic and industry research project to manage labeled data for a supervised machine learning classifier to detect feature requests in the SAP Community. The study involved researchers from Technical University of Munich, University of Innsbruck and SAP Deutschland, and focused on requirements engineering and developer community analysis in Germany; the labeled corpus contained 1,500 community questions used for training and evaluation. Labelbox was employed as AI infrastructure to provide dataset management and the annotation interface required for supervised learning workflows. The implementation supported label schema definition, batch annotation, dataset versioning and human-in-the-loop quality review processes to maintain label consistency across iterations. These category-aligned capabilities were used to organize annotation rounds and produce a training dataset suitable for model development. No external system integrations are specified in the source study, the operational coverage centered on SAP Deutschland and the collaborating academic teams working with SAP Community data. Governance relied on annotation guidelines and consensus review cycles to align labels with requirements engineering taxonomies, and the labeling output fed the classifier training pipeline. The reported outcome from the research was a trained classifier achieving approximately 0.819 accuracy on the feature request detection task.
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FAQ - APPS RUN THE WORLD Labelbox Coverage

Labelbox is a AI infrastructure solution from LabelBox.

Companies worldwide use Labelbox, from small firms to large enterprises across 21+ industries.

Organizations such as John Deere, SAP and Pathware are recorded users of Labelbox for AI infrastructure.

Companies using Labelbox are most concentrated in Manufacturing, Professional Services and Life Sciences, with adoption spanning over 21 industries.

Companies using Labelbox are most concentrated in United States and Germany, with adoption tracked across 195 countries worldwide. This global distribution highlights the popularity of Labelbox across Americas, EMEA, and APAC.

Companies using Labelbox range from small businesses with 0-100 employees - 33.33%, to mid-sized firms with 101-1,000 employees - 0%, large organizations with 1,001-10,000 employees - 0%, and global enterprises with 10,000+ employees - 66.67%.

Customers of Labelbox include firms across all revenue levels — from $0-100M, to $101M-$1B, $1B-$10B, and $10B+ global corporations.

Contact APPS RUN THE WORLD to access the full verified Labelbox customer database with detailed Firmographics such as industry, geography, revenue, and employee breakdowns as well as key decision makers in charge of AI infrastructure.