Sai Likhith Panuganti
Sai-Likhith
Python | Gen AI | RAG | AI&ML | Multimodal LLMs | YOLO | Object Detection & Classification | Image Processing | GUi- CTk | Canva | MS PowerPoint, Word, Excel
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Top Repositories
Mobile Price Range Prediction: Use sales data to build a classification model for mobile phone price ranges. Features include battery power, camera, memory, and connectivity. Split data, apply logistic regression, KNN, SVM (linear and rbf), and evaluate using confusion matrices. Select the most accurate model.
This aims to perform sentiment analysis on COVID-19 tweets using various classification models. We preprocess the data, convert words to vectors, and train models such as Naïve Bayes, SVM, and KNN. Finally, we compare their performance to determine the most accurate model for predicting sentiment in COVID-19 tweets.
Comprehensive Guide on Python by Sai Likhith
SpamGuard is an efficient email classification system powered by Naive Bayes algorithm. It quickly analyzes the content of an email, evaluating its likelihood of being spam. With a simple input of the email body, SpamGuard accurately determines whether the email is spam or not, providing users with a reliable and effective tool for spam detection.
A Python ML project that converts spoken language into text using speech recognition, and transforms text into spoken words using speech synthesis. Harness the power of machine learning to effortlessly transcribe and vocalize audio inputs. Enhance accessibility and communication in a streamlined, efficient manner.
Performing Time Series Modelling on open-source Amazon.com Clustering Dataset
Repositories
14Mobile Price Range Prediction: Use sales data to build a classification model for mobile phone price ranges. Features include battery power, camera, memory, and connectivity. Split data, apply logistic regression, KNN, SVM (linear and rbf), and evaluate using confusion matrices. Select the most accurate model.
SpamGuard is an efficient email classification system powered by Naive Bayes algorithm. It quickly analyzes the content of an email, evaluating its likelihood of being spam. With a simple input of the email body, SpamGuard accurately determines whether the email is spam or not, providing users with a reliable and effective tool for spam detection.
A Python ML project that converts spoken language into text using speech recognition, and transforms text into spoken words using speech synthesis. Harness the power of machine learning to effortlessly transcribe and vocalize audio inputs. Enhance accessibility and communication in a streamlined, efficient manner.
This aims to perform sentiment analysis on COVID-19 tweets using various classification models. We preprocess the data, convert words to vectors, and train models such as Naïve Bayes, SVM, and KNN. Finally, we compare their performance to determine the most accurate model for predicting sentiment in COVID-19 tweets.
Performing Time Series Modelling on open-source Amazon.com Clustering Dataset
Comprehensive Guide on Python by Sai Likhith
Applying Random Forest Classifier Machine Learning model on open-source Breast Cancer Detection Classification Master Dataset
Using Principal Component Analysis Dimensionality Reduction Technique in Machine Learning
Applying K Means Clustering Model Machine Learning model on open-source Amazon.com Clustering Dataset
Applying K Nearest Neighbors Machine Learning model on open-source Breast Cancer Detection Classification Master Dataset
Applying SVM ML model on open-source Diabetes Dataset
Applying Linear Regreesion for Salary Dataset
Applying Decision Tree Classifier model on open-source Diabetes Dataset
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