Company | Country | Industry | Employees | Revenue |
---|---|---|---|---|
| ||||
| ||||
| ||||
| ||||
| ||||
| ||||
| ||||
| ||||
| ||||
| ||||
| ||||
|
It is an open-source Version Control System for data science and machine learning projects. It is designed to handle large files, data sets, machine learning models, and metrics as well as code.
783
Unternehmen
Wir haben Daten zu 783 Unternehmen, die DVC verwenden. Unsere DVC Kundenliste steht zum Download bereit und ist mit wichtigen Unternehmensspezifika angereichert, darunter Branchenklassifikation, Organisationsgröße, geografische Lage, Finanzierungsrunden und Umsatzzahlen, unter anderem.
Unternehmen | Land | Branche | Mitarbeiter | Umsatz |
---|---|---|---|---|
D'Andrea Visual Communications | Vereinigte Staaten | Printing Services | 51 | $5.9M |
Contra Costa Community College District | Vereinigte Staaten | Higher Education | 1K | |
Schneider Electric | Frankreich | Automation Machinery Manufacturing | 166K | $26B |
Schools (Government) | Australien | Government Administration | 16K | |
![]() BenchSci | Kanada | Software Development | 431 | $6.1M |
Université de Montpellier | Frankreich | Education | 1K | |
Disney | Vereinigte Staaten | Broadcast Media Production And Distribution | 10K | |
Disney Parks, Experiences and Products | Frankreich | Entertainment Providers | 10K | |
Swinburne University of Technology | Australien | Higher Education | 6.2K | |
University of British Columbia | Kanada | Education | 22K | $2.9B |
Dichterbij | Niederlande | Hospitals And Health Care | 5K | $799M |
Macquarie University | Australien | Education | 3K | $858M |
Möchten Sie die gesamte Liste herunterladen?
Melden Sie sich an und laden Sie die vollständige Liste der 783 Unternehmen herunter.
Loading countries...
Loading other techonlogies...
Nutzungsstatistiken für Technologie und Marktanteil
Sie können diese Daten an Ihre Bedürfnisse anpassen, indem Sie nach Geografie, Branche, Unternehmensgröße, Umsatz, Technologienutzung, Jobpositionen und mehr filtern. Sie können die Daten im Excel- oder CSV-Format herunterladen.
Sie können Alarme für diese Daten erhalten. Sie können beginnen, indem Sie die Technologie auswählen, die Sie interessiert, und dann erhalten Sie Alarme in Ihrem Posteingang, wenn es neue Unternehmen gibt, die diese Technologie verwenden.
Sie können seine Daten in eine Excel-Datei exportieren, die in Ihr CRM importiert werden kann. Sie können die Daten auch an eine API exportieren.
Es gibt 5 Alternativen zu DVC
DVC wird in 35 Ländern verwendet
Häufig gestellte Fragen
Unsere Daten stammen aus Stellenanzeigen, die von Millionen von Unternehmen gesammelt wurden. Wir überwachen diese Anzeigen auf Firmenwebseiten, Jobbörsen und anderen Rekrutierungsplattformen. Die Analyse von Stellenanzeigen bietet eine zuverlässige Methode, um die von Unternehmen verwendeten Technologien zu verstehen, einschließlich der Nutzung interner Tools.
Wir aktualisieren unsere Daten täglich, um sicherzustellen, dass Sie auf die aktuellsten verfügbaren Informationen zugreifen. Dieser häufige Aktualisierungsprozess garantiert, dass unsere Einsichten und Erkenntnisse die neuesten Entwicklungen und Trends der Branche widerspiegeln.
DVC, short for Data Version Control, is a technology that falls under the broader category of Version Control Systems. DVC is specifically designed to help data scientists and machine learning engineers manage and version their data, enabling reproducibility and collaboration in data science projects. Unlike traditional version control systems that focus on code, DVC allows users to track changes to datasets, models, and experiments, making it a crucial tool in the field of data science.
Founded in 2017 by Dmitry Petrov, DVC stemmed from the increasing need for better data management in the rapidly evolving field of machine learning. Petrov recognized the challenges faced by data scientists in tracking and versioning large datasets, leading to the inception of DVC as a solution to address these pain points. The motivation behind DVC was to provide a lightweight, yet powerful tool for data versioning that seamlessly integrates with existing workflows in data science projects.
Currently, DVC holds a niche market share within the realm of data version control tools. As the importance of reproducibility and collaboration in data science continues to grow, the demand for robust data versioning solutions like DVC is expected to rise. With the increasing adoption of machine learning in various industries, it is forecasted that DVC will experience continued growth in market share as organizations prioritize efficient data management practices to ensure the integrity and reliability of their machine learning models.
Version control systems play a crucial role in enabling companies to efficiently manage and track changes in their codebase. One popular tool in this category is DVC, or Data Version Control. Companies utilize DVC for various reasons, leveraging its unique features and advantages to streamline their development processes and ensure data integrity.
DVC offers a seamless way to version data along with code, providing a comprehensive snapshot of the entire ML pipeline. This feature sets DVC apart from traditional version control systems, which often focus solely on code changes.
With DVC, team members can collaborate effectively by sharing reproducible and versioned data and models. Unlike other tools, DVC simplifies the process of tracking, sharing, and reproducing data-driven experiments.
DVC is designed to handle large datasets efficiently, enabling companies to scale their data projects without sacrificing performance or data integrity. This scalability sets DVC apart from other version control systems that may struggle with handling big data.
One of the key benefits of DVC is its ability to track the lineage of data, making it easier to trace the source of data used in models. This feature enhances transparency and reproducibility, setting DVC apart from traditional version control systems.
DVC seamlessly integrates with popular ML frameworks and tools, enhancing its usability and reducing friction in existing workflows. This integration makes DVC a preferred choice over other tools that may require complex configurations for compatibility.
By leveraging the benefits of DVC, companies can enhance their data versioning processes, improve collaboration among teams, and ensure scalability and performance in managing their machine learning projects.
Some notable companies that leverage DVC (Data Version Control) for managing their data science projects include Airbnb, Spotify, and Pachyderm. These companies utilize DVC to streamline their machine learning workflows, improve collaboration among data teams, and ensure reproducibility in their models.
Airbnb: Airbnb adopted DVC to enhance the reproducibility of their machine learning models. By using DVC, Airbnb's data science team can track changes to their datasets and models effectively, helping them reproduce results and collaborate efficiently on various projects. They started using DVC in 2018 and have since seen significant improvements in their data workflows.
Spotify: Spotify implements DVC in managing their vast amounts of data for targeted music recommendations and playlist personalization. DVC enables Spotify's data engineers to version control their datasets and models, ensuring that any changes made are well-documented and reproducible. Spotify integrated DVC into their data pipelines in 2019, leading to more streamlined data processes and improved model performance.
Pachyderm: Pachyderm, a company specializing in data versioning and automation, naturally uses DVC to drive their data infrastructure. They rely on DVC to manage the versioning of large-scale datasets and machine learning models within their platform. By leveraging DVC, Pachyderm ensures that their users have complete visibility and control over data lineage and model iterations, enhancing the overall data management experience. Pachyderm integrated DVC into their system from the early stages of development, showcasing its importance in their data-driven approach.
These case studies highlight how leading companies in the tech industry, like Airbnb, Spotify, and Pachyderm, benefit from using DVC as a powerful tool for enhancing their data science projects and ensuring robust version control practices.
Sie können eine aktuelle Liste von Unternehmen, die DVC verwenden, auf TheirStack.com einsehen. Unsere Plattform bietet eine umfassende Datenbank von Unternehmen, die verschiedene Technologien und interne Tools nutzen.
Bis jetzt haben wir Daten von 783 Unternehmen, die DVC verwenden.
DVC wird von einer Vielzahl von Organisationen in verschiedenen Branchen, einschließlich "Printing Services", "Higher Education", "Automation Machinery Manufacturing", "Government Administration", "Software Development", "Education", "Broadcast Media Production And Distribution", "Entertainment Providers", "Higher Education", "Education", verwendet. Für eine umfassende Liste aller Branchen, die DVC nutzen, besuchen Sie bitte TheirStack.com.
Einige der Unternehmen, die DVC verwenden, umfassen D'Andrea Visual Communications, Contra Costa Community College District, Schneider Electric, Schools (Government), BenchSci, Université de Montpellier, Disney, Disney Parks, Experiences and Products, Swinburne University of Technology, University of British Columbia und viele mehr. Sie können eine vollständige Liste von 783 Unternehmen, die DVC nutzen, auf TheirStack.com finden.
Basierend auf unseren Daten ist DVC am beliebtesten in Vereinigte Staaten (205 companies), Vereinigtes Königreich (68 companies), Frankreich (38 companies), Deutschland (35 companies), Australien (32 companies), Kanada (24 companies), Indien (14 companies), Niederlande (13 companies), Spanien (13 companies), Südafrika (10 companies). Es wird jedoch von Unternehmen auf der ganzen Welt verwendet.
Sie können Unternehmen, die DVC verwenden, finden, indem Sie auf TheirStack.com danach suchen. Wir verfolgen Stellenanzeigen von Millionen von Unternehmen und nutzen sie, um herauszufinden, welche Technologien und internen Tools sie verwenden.