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TensorFlow Tutorial For Beginners
Learn how to build a neural network and how to train, evaluate and optimize it with TensorFlow
Karlijn Willems
2019년 1월 16일
Beginner's Guide to Google's Vision API in Python
Learn what Vision API is and what are all the things that it offers. By the end of this tutorial, you will also learn how you can call Vision API from your Python code.
Sayak Paul
2018년 12월 26일
Face Detection with Python Using OpenCV
Learn about object detection in Python using the OpenCV library and discover how to apply it to tasks such as facial detection.
Natassha Selvaraj
2024년 12월 3일
Deep Learning (DL) vs Machine Learning (ML): A Comparative Guide
In this tutorial, you'll get an overview of Artificial Intelligence (AI) and take a closer look in what makes Machine Learning (ML) and Deep Learning different.
Matt Crabtree
2024년 2월 29일
Stemming and Lemmatization in Python
This tutorial covers stemming and lemmatization from a practical standpoint using the Python Natural Language ToolKit (NLTK) package.
Kurtis Pykes
2026년 6월 1일
Introduction to Cyclical Learning Rates
Learn what cyclical learning rate policy is and how it can improve the training of a neural network.
Sayak Paul
2018년 10월 15일
Deduce the Number of Layers and Neurons for ANN
There is an optimal number of hidden layers and neurons for an artificial neural network (ANN). This tutorial discusses a simple approach for determining the optimal numbers for layers and neurons for ANN's.
Ahmed Gad
2018년 9월 11일
Machine Learning and NLP using R: Topic Modeling and Music Classification
In this tutorial, you will build four models using Latent Dirichlet Allocation (LDA) and K-Means clustering machine learning algorithms.
Debbie Liske
2018년 6월 21일
TensorBoard Tutorial
Visualize the training parameters, metrics, hyperparameters or any statistics of your neural network with TensorBoard!
Thushan Ganegedara
2018년 6월 6일
Demystifying Generative Adversarial Nets (GANs)
Learn what Generative Adversarial Networks are without going into the details of the math and code a simple GAN that can create digits!
DataCamp Team
2018년 5월 9일
Tidy Sentiment Analysis in R
Learn how to perform tidy sentiment analysis in R on Prince's songs, sentiment over time, song level sentiment, the impact of bigrams, and much more!
Debbie Liske
2018년 3월 29일
Lyric Analysis with NLP & Machine Learning with R
Dive into the lyrics of Prince's music with R: use text mining and Exploratory Data Analysis (EDA) to shed insight on The Artist's career.
Debbie Liske
2018년 2월 2일