Calculus And Algorithmic Differentiation
Contains questions from calculus and differentiation
Contains questions from calculus and differentiation
This section covers key computer science concepts, including recursive functions, sorting algorithms, and subsequence problems. It also explores matrix multiplication optimization, numerical stability in deep learning, and the benefits of GPUs versus TPUs. Additionally, it addresses practical challenges like dynamic memory management and file similarity filtering.
This is a comprehensive set of questions related to Convolutional Neural Networks (CNNs), covering various aspects from convolution operations to fine-tuning pre-trained models and neural style transfer. Each question is well-defined, and the use of images and code snippets adds depth to the understanding of the concepts.
Mean, Median, Variance, Data distribution etc.
Contains questions from Bias and Variance, Cross Validation, Sampling Techniques etc
This section covers Neural Networks, Activation Function, Dropout, Regularization and other crucial topics related to neural nets
This section covers Point Estimation, Interval Estimation, Hypothesis Testing and Inference for Relationship
This section covers KL-Divergence Theorem, Entropy, Information Gain, Gini Impurity etc.
Logistic Regression
Covers questions from Linear Regression, Bias and Variance, Regularization, Feature Selection etc.
Contains questions from Tokenization, Tf-Idf, Embeddings, Other NLP concepts
Covers questions from Regression Metrics, Classification Metrics, Loss Functions, Objective Functions, Clustering Metrics
Questions from probability, conditional probability, bayes theorem, total probability etc
Questions from Naive Bayes
This section covers key SQL topics like data retrieval, string manipulation, joins, subqueries, sorting, filtering, and aggregation using functions like COUNT and GROUP BY. It also explores advanced operations like ranking, conditional logic, and handling duplicates, essential for data analysis.
This Q&A covers fundamental concepts of Support Vector Machines (SVM) and Support Vector Regression (SVR). It includes topics such as the maximal margin classifier, hyperplanes, margin optimization, support vectors, and kernel functions. Additionally, it explores the differences between SVM and SVR, including their applications, loss functions, hyperparameters, and how they handle non-linear boundaries and outliers.
This section contains questions from Decision Trees, Bagging, Boosting, Random Forest, XGBoost, Adaboost, Gradient Boosting
This section covers concepts from Dimensionality Reduction, Autoencoders, PCA, Clustering, KMeans, Recommendation System topics
This section covers concepts related to Vector and Matrices
This project provides a structured approach to DNA sequence classification using machine learning techniques, from data preprocessing to model evaluation. It explores multiple algorithms, including K-Nearest Neighbors, Support Vector Machine, Decision Trees, Random Forest, Naive Bayes, MultiLayer Perceptron, and AdaBoost, to identify the most effective model for the task. The models are assessed based on metrics like accuracy, precision, recall, and F1 score, with the Support Vector Machine (linear kernel) emerging as the top performer, achieving an impressive F1 score of 0.96. This work highlights the potential of machine learning in bioinformatics for accurate DNA classification.
This repository offers a comprehensive collection of performance metrics for evaluating machine learning models across various tasks, including regression, classification, clustering, and sequence prediction. It features commonly used metrics like Mean Squared Error, Accuracy, Precision, and Silhouette Coefficient, among others, to help you assess and improve your models’ effectiveness.
Published:
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Published:
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Undergraduate course, University 1, Department, 2014
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Workshop, University 1, Department, 2015
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