Open-source projects categorized as tf-idf | Edit details
Language filter: + Python + Crystal + PHP + Kotlin

Top 5 tf-idf Open-Source Projects

  • PolyFuzz

    Fuzzy string matching, grouping, and evaluation.

    Project mention: Finding the distance between two sentences that that share mostly the same words. | | 2021-03-16


  • Cadmium

    Natural Language Processing (NLP) library for Crystal

  • Scout APM

    Less time debugging, more time building. Scout APM allows you to find and fix performance issues with no hassle. Now with error monitoring and external services monitoring, Scout is a developer's best friend when it comes to application development.

  • stringlifier

    Stringlifier is on Opensource ML Library for detecting random strings in raw text. It can be used in sanitising logs, detecting accidentally exposed credentials and as a pre-processing step in unsupervised ML-based analysis of application text data.

    Project mention: Stringlifier: ML Library for detecting random strings in raw text | | 2021-07-23
  • Sentiment

    An example project using a feed-forward neural network for text sentiment classification trained with 25,000 movie reviews from the IMDB website.

  • lucilla

    Fast, efficient, in-memory Full Text Search for Kotlin

    Project mention: lucilla: Fast, efficient, in-memory Full Text Search for Kotlin | | 2022-01-23
NOTE: The open source projects on this list are ordered by number of github stars. The number of mentions indicates repo mentiontions in the last 12 Months or since we started tracking (Dec 2020). The latest post mention was on 2022-01-23.


What are some of the best open-source tf-idf projects? This list will help you:

Project Stars
1 PolyFuzz 421
2 Cadmium 183
3 stringlifier 132
4 Sentiment 58
5 lucilla 0
Find remote jobs at our new job board There are 30 new remote jobs listed recently.
Are you hiring? Post a new remote job listing for free.
OPS - Build and Run Open Source Unikernels
Quickly and easily build and deploy open source unikernels in tens of seconds. Deploy in any language to any cloud.