Rahul Thorat (RaThorat)

RaThorat

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Rahul Thorat's repositories

ner_model_prodigy

Building a natural language processing custom model with annotation tool prodi.gy

bootstrap-dashboard-web-app

This dashboard is an example to design and style a dashboard app completely in python with Dash Bootstrap.

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sankey-diagram-plotly

An Alluvial diagram has been used to relate categories, subcategories of grant applications

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anomaly-detection-web-app

A web app is built to detect anomalies in data.

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Classificeren-van-Organisaties

de automatische classificatie van organisaties Gezondheid, Sport en Onderwijs

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control_bekende_malafide_handelspartijen

match email domains from an input Excel file with a list of known domains of malafide practices

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copy-geoplot-geopandas

copied code to plot a map with geoplot and geopandas

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data-repositories-download

Importing repositories from Re3data

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discipline-classification-01

This is a code to be run in Google Colab.

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discipline-classification-02

This is a code to run in Google Colab.

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discipline_analyses_of_proposals

It is important for a granting agency to know how the distribution of the applications qua disciplines is. ˆ How many applications belong to Exact Science disciplines, how many fall within one discipline? ˆ How many applications with disciplines outside exact sciences domain have been submitted?

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Faillissement_2023_analyse

Python-script dat gegevens over faillissementen voor het jaar 2023 analyseert en visualiseert

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Faillissement_2024_analyse

Python-script dat data over faillissementen voor het jaar 2024 analyseert en visualiseert

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filtering_reviewers_from_Expert_Lookup

Funders use Expert Lookup for a list of reviewers for submitted research proposals. It still takes a lot of time to check whether the selected reviewers from Expert Lookup have already in contact with the funder or whether they have already assessed a proposal. With this code a funder can easily filter list of reviewers.

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fraud-detection-in-subsidy-applications

whether the companies submitting subsidy applications to government have been suspected of fraud or commited fraud in the past.

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pattern-matching-functions

functions for matching pattern such as symbols, name, e-mail adress, hyperlinks, string

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piper-text-to-speech

Running a local Piper TTS server with Python on ubuntu 24.04

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proposal_info_Elsevier_Expert_Lookup_01

Funding organisations who use Elsevier Expert Lookup for searching reviewers for subsidy applications manually place application information per subsidy round in the Expert Lookup. That takes a lot of time and energy. By automatically placing the application information in the Expert Lookup, funding organisations can save a lot of time. Elsevier Expert Lookup provides format in which it can take the lumsum application information. This code provides missing gap, where the lumsum applications information from funding organisation is converted into the format to upload the lumsum information in Expert Lookup.

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proposal_info_Elsevier_Expert_Lookup_02

Funding organisations who use Elsevier Expert Lookup for searching reviewers for subsidy applications manually place application information per subsidy round in the Expert Lookup. That takes a lot of time and energy. By automatically placing the application information in the Expert Lookup, funding organisations can save a lot of time. Elsevier Expert Lookup provides format in which it can take the lumsum application information. This code provides missing gap, where the lumsum applications information from funding organisation is converted into the format to upload the lumsum information in Expert Lookup.

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RaThorat

Config files for my GitHub profile.

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ratio-applicant-applications

This code gives ratio of applications and applicant for two subsidie rounds.

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reorienting_pandas_table

Reorienting the table to make keywords from multiple rows appear in a single row

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repository-name-finder

Extracting data repository name from a text

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scientific-mobility

Following script creates a geographic map of scientific mobility. It shows scientists going from one institute to another institute for a given year.

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Sentiment-Analysis-with-BERT

een script om sentimentanalyse uit te voeren op open feedback van een Klanttevredenheidsonderzoek (KTO) met behulp van een getraind BERT-model

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set-index-and-groupby

A better way to summerize a table information in pandas

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text-to-speech-converter

Convert text to speech using the Google Text-to-Speech (`gTTS`) library and play the resulting audio file

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text_clustering

The grouping of texts into various clusters can be used to differentiate various themes within the texts.

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text_filtering_on_keywords

This is a code that can be used to filter projects or applications with a particular theme. You need to type your server, your database, your query and the name of the them that you wnat to search the projects for. The advantage of this code over just sql is that you can make it as an executable file or web graphic interface, thereby useful for multiple themes search and can be delegated to people without knowledge of SQL

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various-code-blocks

This is a collection of various code blocks, supplimentory to other repositories.

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