This is a comprehensive data solution designed to streamline the collection, transformation, and analysis of financial data related to gold as a commodity for investment portfolio management.
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Updated
Oct 25, 2023 - HTML
This is a comprehensive data solution designed to streamline the collection, transformation, and analysis of financial data related to gold as a commodity for investment portfolio management.
A flexible sentiment analysis classifier package supporting multiple pre-trained models, customizable preprocessing, visualization tools, fine-tuning capabilities, and seamless integration with pandas DataFrames.
This project focuses on extracting and analyzing social media data from Reddit to uncover meaningful insights . The goal is to help marketing analysts understand trending topics, audience sentiment, and engagement patterns. By examining these insights, marketers can make data-driven decisions to enhance campaign strategies and improve engagement.
BERT-Sentiment-Analysis: A project using BERT-based models to perform sentiment analysis on multilingual text data, with examples in Arabic and English. This repository demonstrates loading, preprocessing, and analyzing text data with pre-trained models for accurate sentiment classification.
sentiment analysis
This is a web application that uses an NLP model to perform sentiment analysis.
This repository features a BERT-based model fine-tuned for sentiment analysis, classifying text as Positive, Negative, or Neutral. The project includes scripts for data preprocessing, model training, and evaluation, making it easy to adapt for custom datasets. Ideal for applications like social media analysis, product reviews, or customer feedback.
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