awesome-TS-anomaly-detection VS awesome-metric-learning

Compare awesome-TS-anomaly-detection vs awesome-metric-learning and see what are their differences.

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awesome-TS-anomaly-detection awesome-metric-learning
72 3
2,811 433
- 0.5%
0.0 1.8
2 months ago about 1 year ago
- Creative Commons Zero v1.0 Universal
The number of mentions indicates the total number of mentions that we've tracked plus the number of user suggested alternatives.
Stars - the number of stars that a project has on GitHub. Growth - month over month growth in stars.
Activity is a relative number indicating how actively a project is being developed. Recent commits have higher weight than older ones.
For example, an activity of 9.0 indicates that a project is amongst the top 10% of the most actively developed projects that we are tracking.

awesome-TS-anomaly-detection

Posts with mentions or reviews of awesome-TS-anomaly-detection. We have used some of these posts to build our list of alternatives and similar projects. The last one was on 2020-12-31.

awesome-metric-learning

Posts with mentions or reviews of awesome-metric-learning. We have used some of these posts to build our list of alternatives and similar projects. The last one was on 2023-03-28.
  • Create Your Own Custom Plugins for ChatGPT 🎉 Browse the Web, Execute Code, Use APIs 🛠️
    3 projects | /r/ChatGPT | 28 Mar 2023
    And, for resources on similarity learning at large, you may want to check out this annotated list: https://github.com/qdrant/awesome-metric-learning
  • Similarity Learning lacks a framework. So we built one
    6 projects | news.ycombinator.com | 13 Jul 2022
    Some loss functions such as ArcFace loss and CosFace loss enforce the encoder model to organize their latent space in such a way that categories are placed with an angular margin from one another. Thus the model implicitly learns a continuous distance function.

    Fun fact, one of the examples in Quaterion is for similar cars search.

    If you find this topic and want to discover more, we collected a bunch of resources that might be helpful. https://github.com/qdrant/awesome-metric-learning

  • Awesome Metric Learning!
    1 project | /r/datascience | 20 Jan 2022
    The Metric Learning approach to data science problems is heavily underutilized. There are a lot of academic papers around it but much fewer practical guides and tutorials. So we decided that we could help people adopt metric learning by collecting related materials in one place. We are publishing a curated list of awesome practical metric learning tools, libraries, and materials - https://github.com/qdrant/awesome-metric-learning This collection aims to put together references to all required materials for building your application using Metric Learning. It is open-source, PR's are more than welcome!

What are some alternatives?

When comparing awesome-TS-anomaly-detection and awesome-metric-learning you can also consider the following projects:

Awesome-Geospatial - Long list of geospatial tools and resources

build-your-own-x - Master programming by recreating your favorite technologies from scratch.

openHistorian - The Open Source Time-Series Data Historian

finetuner - :dart: Task-oriented embedding tuning for BERT, CLIP, etc.

Netdata - The open-source observability platform everyone needs

qdrant - Qdrant - High-performance, massive-scale Vector Database for the next generation of AI. Also available in the cloud https://cloud.qdrant.io/

NAB - The Numenta Anomaly Benchmark

contract-discovery - Data and additional information regarding the paper: Contract Discovery. Dataset and a Few-Shot Semantic Retrieval Challenge with Competitive Baselines (to appear in Findings of EMNLP).

A3 - Inspired by recent advances in coverage-guided analysis of neural networks, we propose a novel anomaly detection method. We show that the hidden activation values contain information useful to distinguish between normal and anomalous samples. Our approach combines three neural networks in a purely data-driven end-to-end model. Based on the activation values in the target network, the alarm network decides if the given sample is normal. Thanks to the anomaly network, our method even works in strict semi-supervised settings. Strong anomaly detection results are achieved on common data sets surpassing current baseline methods. Our semi-supervised anomaly detection method allows to inspect large amounts of data for anomalies across various applications.

quaterion - Blazing fast framework for fine-tuning similarity learning models

pyod - A Comprehensive and Scalable Python Library for Outlier Detection (Anomaly Detection)

Milvus - A cloud-native vector database, storage for next generation AI applications