Md. Kishor Morol (kishormorol)

kishormorol

Geek Repo

Company:Classy Beauty Warehouse Inc.

Location:New York

Home Page:https://kishormorol.github.io/

Twitter:@kishormorol

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Md. Kishor Morol's repositories

metisfl

MetisFL is a federated learning framework that allows developers to easily federate their machine learning workflows and train their models across distributed data silos without ever collecting the data in a centralized location. The core of the framework is written in C++ and focuses on scalability, speed and resiliency.

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kaggle-30daysofML

https://www.kaggle.com/thirty-days-of-ml

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awesome-datascience

:memo: An awesome Data Science repository to learn and apply for real world problems.

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MemeGPT

MemeGPT, an AI-based meme generation tool, aims to bridge this gap by utilizing natural language processing and image recognition.

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odoo

Odoo. Open Source Apps To Grow Your Business.

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the-algorithm

Source code for Twitter's Recommendation Algorithm

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Video-Summarization

This project will evaluate the best deep learning models using the Microsoft Research Video Description (MSVD) dataset

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365daysOfDataScience

Starting date: December 5, 2021

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500-AI-Machine-learning-Deep-learning-Computer-vision-NLP-Projects-with-code

500 AI Machine learning Deep learning Computer vision NLP Projects with code

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ai-deadlines

:alarm_clock: AI conference deadline countdowns

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allanlab

Allan Lab website

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awesome-nlp

:book: A curated list of resources dedicated to Natural Language Processing (NLP)

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captum

Model interpretability and understanding for PyTorch

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documentation

Odoo documentation sources

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education-toolkit

Educational materials for universities

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football_analytics

⚽📊 A collection of football analytics projects, data, and analysis by Edd Webster (@eddwebster), including a curated list of publicly available resources published by the football analytics community.

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free-Web3-resources

A list of FREE resources to make Web3 accessible to everyone.

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Gramformer

A framework for detecting, highlighting and correcting grammatical errors on natural language text. Created by Prithiviraj Damodaran. Open to pull requests and other forms of collaboration.

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machine-learning-cheat-sheet

Classical equations and diagrams in machine learning

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machine-learning-interview

Machine Learning Interviews from FAANG, Snapchat, LinkedIn. I have offers from Snapchat, Coupang, Stitchfix etc. Blog: mlengineer.io.

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ML-Course-Notes

🎓 Sharing course notes on all topics related to machine learning, NLP, and AI.

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ML-For-Beginners

12 weeks, 26 lessons, 52 quizzes, classic Machine Learning for all

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MLBox

MLBox is a powerful Automated Machine Learning python library.

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tensorflow-deep-learning

All course materials for the Zero to Mastery Deep Learning with TensorFlow course.

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Wound-Segmantation

This research aims to develop and optimize deep learning models specifically tailored for wound segmentation, addressing issues related to variations in wound types, sizes, and imaging conditions. The investigation will involve the integration of state-of-the-art convolutional neural networks (CNNs) and other models.

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