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Jan 2, 2024 - Python
machine-learning-pipelines
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Feature selection is widely used in nearly all data science pipelines. Hence I have created functions that do a form of backward stepwise selection based on the XGBoost classifier feature importance and a set of other input values with the goal to return the number of features to keep in regard to a prefered AUC-score.
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Oct 5, 2021 - Jupyter Notebook
A code-first way to define Ploomber pipelines
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Oct 28, 2022 - Python
Machine Learning Operations - Disaster Tweets Classification
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Jan 18, 2023 - Jupyter Notebook
🌀 #11. "Machine Learning Operations (MLOps) - NLP"
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Apr 10, 2023 - Jupyter Notebook
apply machine learning backup
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May 2, 2019 - Jupyter Notebook
In this project I'm using machine learning Pipeline which is then made into a Flask Application which is then dockerized using docker and then the docker image is deployed on Amazon-Web-Services, Elastic Beanstalk.
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Nov 29, 2022 - Python
My personal notes, code and projects of the Udacity Data Science Nanodegree.
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Mar 21, 2024 - Jupyter Notebook
Machine Learning pipelines are deployed to accomplish the objective of credit risk analysis.
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Apr 11, 2023 - Python
data fetched by wafers (thin slices of semiconductors) is to be passed through the machine learning pipeline and it is to be determined whether the wafer at hand is faulty or not. Wafers are predominantly used to manufacture solar cells and are located at remote locations in bulk and they themselves consist of few hundreds of sensors.
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Feb 17, 2023 - Jupyter Notebook
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Mar 7, 2024
Work with a set of Tweets about US airlines and examine their sentiment polarity.The aim is to learn to classify Tweets as either “positive”, “neutral”, or “negative” by using two classifiers and pipelines for pre-processing and model building.
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Aug 7, 2019 - Scala
During disaster events, sending messages to appropriate disaster relief agencies on a timely manner is critical. Using natural language processing and machine learning, I built a model for an API that classifies disaster messages and also a webapp for emergency works.
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Sep 5, 2020 - Jupyter Notebook
This Project is in collaboration with Figure Eight. The dataset contains pre-labelled tweets and messages from real-life disaster events. The project aim is to build a Natural Language Processing (NLP) model to categorize messages on a real time basis.
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Aug 18, 2023 - Jupyter Notebook
ML AutoTrainer Engine, developed using Streamlit, is an advanced app designed to automate the machine learning workflow. It provides a user-friendly platform for data processing, model training, and prediction, enabling a seamless, code-free interaction for machine learning tasks.
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Dec 5, 2023 - Python
Creating a Machine Learning Pipeline to build and evaluate multiple models, using Python3
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Aug 28, 2019 - Jupyter Notebook
Machine Learning Tool to categorize messages that have been send after a disaster
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Sep 30, 2019 - Python
Project submission for BDSN Course at Praxis Business School
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Feb 15, 2023 - Jupyter Notebook
Machine Learning Operations - Stroke Disease Detection
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Jan 21, 2023 - Jupyter Notebook
Implementation of Various Machine Learning(Supervised and Unsupervised) Algorithms
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Dec 23, 2020 - Jupyter Notebook
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