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Based on our record, UI Garage should be more popular than Evidently AI. It has been mentiond 3 times since March 2021. We are tracking product recommendations and mentions on various public social media platforms and blogs. They can help you identify which product is more popular and what people think of it.
UI Garage: A great tool for finding good UX. Source: 11 months ago
Hi guys. So I've been racking my brain around something lately, maybe you can shed some light. There are sites filled with UI strings popping up all over the web these days - like mobbin.com or uigarage.net or theappfuel.com. How do they do it? They sometimes post hundreds of new screenshots a week. I've tried it manually and it's too time-consuming, there's no way they're doing it by hand. Source: about 1 year ago
UI Garage - [Mobile and web screenshots] Daily UI inspiration & patterns for designers, developers to find inspiration, tools and the best resources for your project. - Source: dev.to / over 1 year ago
It is doable. However the main focus of MLFlow is in experiment tracking. I would suggest for you to look into another monitoring tools such evidentlyai . You can track more things than performance (e.g.data drift). Which may be helpful in a production setting. Source: almost 2 years ago
Evidently is an open-source Python library that analyzes and monitors machine learning models. It generates interactive reports based on Panda DataFrames and CSV files for troubleshooting models and checking data integrity. These reports show model health, data drift, target drift, data integrity, feature analysis, and performance by segment. - Source: dev.to / over 2 years ago
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iko.ai - Real-time collaborative notebooks on your own Kubernetes clusters to train, track, package, deploy, and monitor your machine learning models.