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Featured PyTorch reviews

PyTorch mindshare

As of August 2025, the mindshare of PyTorch in the AI Development Platforms category stands at 2.8%, up from 1.2% compared to the previous year, according to calculations based on PeerSpot user engagement data.
AI Development Platforms Market Share Distribution
ProductMarket Share (%)
PyTorch2.8%
Hugging Face12.6%
Google Vertex AI11.1%
Other73.5%
AI Development Platforms

PeerResearch reports based on PyTorch reviews

TypeTitleDate
CategoryAI Development PlatformsAug 29, 2025Download
ProductReviews, tips, and advice from real usersAug 29, 2025Download
ComparisonPyTorch vs Google Vertex AIAug 29, 2025Download
ComparisonPyTorch vs Azure OpenAIAug 29, 2025Download
ComparisonPyTorch vs Hugging FaceAug 29, 2025Download
Suggested products
TitleRatingMindshareRecommending
Google Vertex AI4.211.1%100%12 interviewsAdd to research
Microsoft Azure Machine Learning Studio3.95.3%93%62 interviewsAdd to research
 
 
Key learnings from peers

Valuable Features

Room for Improvement

Pricing

Popular Use Cases

Service and Support

Deployment

Scalability

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Review data by company size

By reviewers
Company SizeCount
Small Business5
Midsize Enterprise4
Large Enterprise4
By reviewers
By visitors reading reviews
Company SizeCount
Small Business32
Midsize Enterprise12
Large Enterprise68
By visitors reading reviews

Top industries

By visitors reading reviews
Manufacturing Company
24%
University
10%
Comms Service Provider
9%
Educational Organization
8%
Performing Arts
7%
Financial Services Firm
7%
Healthcare Company
6%
Computer Software Company
5%
Legal Firm
4%
Transportation Company
4%
Energy/Utilities Company
4%
Insurance Company
3%
Retailer
3%
Wholesaler/Distributor
2%
Government
2%
Real Estate/Law Firm
1%
Outsourcing Company
1%
Non Profit
1%
Logistics Company
1%
Engineering Company
1%
Construction Company
1%
 
PyTorch Reviews Summary
Author infoRatingReview Summary
AI/ML Co-Lead at Developer Student Clubs - GGV4.0I used PyTorch for machine learning projects like Code Paradigm, appreciating its developer-friendly, open-source nature, and Mac M1 compatibility. However, it needs better ARM support for improved performance. I have limited experience with TensorFlow.
Machine Learning Engineer at IIIT Kottayam4.0I've been using PyTorch for research, implementing projects like image captioning and chatbots. It's great for building projects from scratch with deep control over model parameters. Initially learned TensorFlow, but switched to PyTorch as it gained popularity.
AWS Engineer at Neurolov.ai5.0I develop AI and machine learning projects using PyTorch, appreciating its scalability for large models and superior text-to-visual data conversion compared to OpenCV. Improvement is needed in compiling latency. Before PyTorch, I hadn't used any other tools.
Data Scientist. at a computer software company with 501-1,000 employees3.5We use PyTorch for style transfer and video stream classification due to its simplicity and support for parallelism. While it offers easy scalability and adoption with a simpler interface than TensorFlow, beginners may struggle with its documentation complexity.
Financial Analyst 4 (Supply Chain & Financial Analytics) at Juniper Networks4.5I use PyTorch for reliability engineering to predict product failures. Its standout feature is performance, enabling easy, production-ready coding. Despite occasional stability issues with large data, it's user-friendly and integrates smoothly with AWS.
Co-Founder at Afriziki4.5I primarily use PyTorch for NLP tasks due to its backward compatibility and simplicity, unlike TensorFlow, which often required relearning. Although lacking in production tooling compared to TensorFlow, PyTorch's growing credibility in research is beneficial.
Team Lead at Tech Mahindra Limited4.0I use PyTorch for managing libraries, code development, and GitLab integration. It excels in AIML projects, offering reliability, security, and user-friendliness with efficient project management. However, I wish there were better learning documents for PySearch.
Data Scientist at a tech services company with 201-500 employees4.0I use PyTorch for developing machine learning models when fine-tuning is needed, preferring it over TensorFlow for customization. Automation in machine learning with PyTorch is challenging, and my company also considers other solutions like Pinecone and PGVector.