Company | Country | Industry | Employees | Revenue |
---|---|---|---|---|
| ||||
| ||||
| ||||
| ||||
| ||||
| ||||
| ||||
| ||||
| ||||
| ||||
| ||||
|
Caffe2 is deployed at Facebook to help developers and researchers train large machine learning models and deliver AI-powered experiences in our mobile apps. Now, developers will have access to many of the same tools, allowing them to run large-scale distributed training scenarios and build machine learning applications for mobile.
144
aziende
Abbiamo dati su 144 aziende che usano Caffe2. La nostra lista di clienti Caffe2 è disponibile per il download ed è arricchita con specifiche vitali dell'azienda, incluse classificazione industriale, dimensioni organizzative, posizione geografica, round di finanziamenti e cifre di ricavi, tra gli altri.
Azienda | Paese | Settore | Dipendenti | Entrate |
---|---|---|---|---|
![]() SambaNova Systems | Stati Uniti | Computer Hardware Manufacturing | 453 | $125M |
Meta | Stati Uniti | Software Development | 120K | |
Snap Inc. | Stati Uniti | Software Development | 7.4K | $4.5B |
Snapchat | Stati Uniti | Computer Hardware Manufacturing | 7K | $4.6B |
Qualcomm | Stati Uniti | Telecommunications | 45K | $44B |
Digital Diagnostics, Inc. | Stati Uniti | Medical Equipment Manufacturing | 120 | $13M |
Amazon Web Services, Inc. | Stati Uniti | It Services And It Consulting | 1.5M | $3M |
![]() RELX | Regno Unito | Technology, Information And Media | 2.5K | $10B |
Expression Networks | Stati Uniti | It Services And It Consulting | 64 | $9.3M |
Graphcore | Regno Unito | Semiconductor Manufacturing | 600 | $4.5M |
LexisNexis | Stati Uniti | It Services And It Consulting | 11K | $3.2B |
![]() Snap | Stati Uniti | Photography | 7.7K | $3.7B |
Vuoi scaricare l'intera lista?
Iscriviti e scarica l'elenco completo delle 144 aziende
Loading countries...
Loading other techonlogies...
Statistiche sull'Uso delle Tecnologie e Quota di Mercato
Puoi personalizzare questi dati secondo le tue necessità, filtrando per geografia, settore, dimensione dell'azienda, fatturato, uso della tecnologia, posizioni lavorative e altro ancora. Puoi scaricare i dati in formato Excel o CSV.
Puoi ricevere avvisi per questi dati. Puoi iniziare selezionando la tecnologia che ti interessa e poi riceverai avvisi nella tua casella di posta quando ci sono nuove aziende che utilizzano quella tecnologia.
Puoi esportare i suoi dati in un file Excel, che può essere importato nel tuo CRM. Puoi anche esportare i dati in un'API.
Caffe2 è utilizzata in 15 paesi
Ci sono 76 alternative a Caffe2
21,6k
19,5k
6k
3,6k
3,3k
2,4k
2,3k
2k
1,8k
1,6k
1,3k
1,2k
1,1k
900
851
781
761
680
579
555
538
516
486
459
307
253
248
218
205
145
144
131
125
109
106
91
73
68
67
50
49
44
37
30
22
19
18
17
15
13
Domande frequenti
I nostri dati provengono da offerte di lavoro raccolte da milioni di aziende. Monitoriamo queste offerte sui siti web delle aziende, sui portali di lavoro e su altre piattaforme di reclutamento. Analizzare le offerte di lavoro offre un metodo affidabile per comprendere le tecnologie impiegate dalle aziende, inclusi i loro strumenti interni.
Aggiorniamo i nostri dati quotidianamente per garantire che tu abbia accesso alle informazioni più aggiornate disponibili. Questo processo di aggiornamento frequente garantisce che le nostre intuizioni e intelligenze riflettano gli ultimi sviluppi e tendenze all'interno dell'industria.
Caffe2 is an open-source deep learning framework developed by Facebook to support machine learning models and enable efficient large-scale experimentation. It provides a flexible architecture that allows seamless deployment across different platforms and devices, making it a preferred choice for researchers and developers working on complex neural network projects.
In the realm of Machine Learning Tools, Caffe2 falls under the category of deep learning frameworks. It specifically focuses on providing a framework that is scalable, efficient, and highly customizable for deep learning applications. With its emphasis on speed and modularity, Caffe2 empowers users to quickly prototype and deploy advanced machine learning models in various domains, including computer vision, natural language processing, and more.
Founded in 2017 by Facebook, Caffe2 was created as an evolution of the original Caffe framework to address the need for a more scalable and efficient deep learning platform. The motivation behind Caffe2 was to build a system that could handle production-level workloads while maintaining the flexibility and ease of use that made Caffe popular among researchers and developers.
In terms of current market share, Caffe2 has established itself as a prominent player in the deep learning framework landscape, with a solid user base and active community support. While facing competition from other popular frameworks like TensorFlow and PyTorch, Caffe2 continues to attract users due to its performance optimization capabilities and robust feature set. With the growing demand for deep learning solutions in various industries, the forecast indicates a positive trajectory for Caffe2's market share, suggesting potential growth in the future.
Caffe2 is a powerful machine learning tool that has gained popularity among companies seeking efficient solutions for their data needs. With its robust features and capabilities, Caffe2 offers a wide range of benefits that set it apart from other similar technologies in the market.
Caffe2 is known for its exceptional speed and scalability, allowing companies to process large datasets quickly and efficiently. Unlike some other machine learning tools that may struggle with processing massive amounts of data, Caffe2 excels in handling complex computations at scale, making it ideal for companies dealing with extensive datasets.
One of the key advantages of Caffe2 is its versatility and flexibility in supporting various machine learning models and algorithms. Companies can leverage Caffe2 to implement a wide range of AI applications, from image recognition to natural language processing, with ease. This flexibility allows businesses to adapt to changing data requirements and explore different use cases seamlessly.
Caffe2 is renowned for its reliability and robustness in handling diverse machine learning tasks. Its stable performance ensures consistent results, making it a trusted choice for companies looking for a dependable tool for their data processing needs. Compared to other similar technologies that may face challenges in maintaining reliability, Caffe2 stands out for its solid performance and consistent outcomes.
In summary, companies choose Caffe2 for its exceptional speed, versatility, and reliability, making it a top choice in the realm of machine learning tools.
Caffe2 is a popular deep learning framework developed by Facebook that is widely used by companies across various industries for machine learning applications. Below are some real case studies showcasing how companies have leveraged Caffe2 to enhance their operations and products.
Case Studies:
1. GoPro GoPro, a well-known action camera manufacturer, utilizes Caffe2 for its video editing and image processing algorithms. The company started using Caffe2 in 2017 to improve the capabilities of its editing software, enabling users to apply advanced visual effects seamlessly. By harnessing the power of Caffe2, GoPro has been able to deliver a more immersive and streamlined editing experience to its customers.
2. NVIDIA NVIDIA, a leading technology company renowned for its graphics processing units (GPUs), employs Caffe2 in its deep learning research and development projects. Since 2016, NVIDIA has integrated Caffe2 into various initiatives, such as autonomous driving systems and natural language processing algorithms. By incorporating Caffe2 into its workflow, NVIDIA has accelerated the training and deployment of complex neural networks, pushing the boundaries of AI innovation.
3. Pinterest Pinterest, the popular visual discovery platform, has integrated Caffe2 into its content recommendation engine to enhance user engagement. Starting in 2018, Pinterest deployed Caffe2 to optimize its personalized content recommendations, delivering more relevant Pins to users based on their preferences and behaviors. Through the use of Caffe2, Pinterest has achieved significant improvements in user retention and satisfaction on its platform.
These case studies demonstrate the diverse applications of Caffe2 in real-world scenarios, showcasing how companies across industries leverage this powerful machine learning tool to drive innovation and enhance their products and services.
Puoi accedere a un elenco aggiornato di aziende che utilizzano Caffe2 visitando TheirStack.com. La nostra piattaforma fornisce un database completo di aziende che utilizzano varie tecnologie e strumenti interni.
Fino ad ora, abbiamo dati su 144 aziende che utilizzano Caffe2.
Caffe2 è utilizzato da una vasta gamma di organizzazioni in vari settori, inclusi "Computer Hardware Manufacturing", "Software Development", "Software Development", "Computer Hardware Manufacturing", "Telecommunications", "Medical Equipment Manufacturing", "It Services And It Consulting", "Technology, Information And Media", "It Services And It Consulting", "Semiconductor Manufacturing". Per un elenco completo di tutti i settori che utilizzano Caffe2, si prega di visitare TheirStack.com.
Alcune delle aziende che utilizzano Caffe2 includono SambaNova Systems, Meta, Snap Inc., Snapchat, Qualcomm, Digital Diagnostics, Inc., Amazon Web Services, Inc., RELX, Expression Networks, Graphcore e molte altre. Puoi trovare un elenco completo di 144 aziende che utilizzano Caffe2 su TheirStack.com.
Secondo i nostri dati, Caffe2 è più popolare in Stati Uniti (73 companies), Regno Unito (9 companies), Germania (5 companies), Canada (4 companies), India (4 companies), Spagna (4 companies), Singapore (3 companies), Bermuda (1 companies), Brasile (1 companies), Cina (1 companies). Tuttavia, è utilizzato da aziende in tutto il mondo.
Puoi trovare aziende che utilizzano Caffe2 cercandolo su TheirStack.com. Tracciamo le offerte di lavoro di milioni di aziende e le utilizziamo per scoprire quali tecnologie e strumenti interni stanno utilizzando.