Remove Blog Remove Convolutional Neural Networks Remove Data Quality Remove Explainability
article thumbnail

A Guide to Convolutional Neural Networks

Heartbeat

In this guide, we’ll talk about Convolutional Neural Networks, how to train a CNN, what applications CNNs can be used for, and best practices for using CNNs. What Are Convolutional Neural Networks CNN? CNNs learn geometric properties on different scales by applying convolutional filters to input data.

article thumbnail

The Age of BioInformatics: Part 2

Heartbeat

The following are some critical challenges in the field: a) Data Integration: With the advent of high-throughput technologies, enormous volumes of biological data are being generated from diverse sources. Developing methods for model interpretability and explainability is an active area of research in bioinformatics.

professionals

Sign Up for our Newsletter

This site is protected by reCAPTCHA and the Google Privacy Policy and Terms of Service apply.

article thumbnail

Revolutionizing Healthcare Using Machine Learning

Heartbeat

Convolutional Neural Networks (CNNs), a machine learning algorithm, has successfully identified and classified abnormalities, lesions, tumors, and other critical features in medical images such as X-rays, MRIs, CT scans, and mammograms. We pay our contributors, and we don't sell ads.

article thumbnail

Deep Learning Challenges in Software Development

Heartbeat

Types of Deep Learning Approaches A variety of methods and designs are used to train neural networks under the umbrella of deep learning. Some of the symbolic approaches of deep learning are listed below: CNNs (Convolutional Neural Networks) : CNNs are frequently employed in image and video recognition jobs.

article thumbnail

How to Visualize Deep Learning Models

The MLOps Blog

Visualizing deep learning models can help us with several different objectives: Interpretability and explainability: The performance of deep learning models is, at times, staggering, even for seasoned data scientists and ML engineers. DFF identifies regions in the network’s feature space that belong to the same semantic concept.

article thumbnail

Building and Deploying CV Models: Lessons Learned From Computer Vision Engineer

The MLOps Blog

In this blog post, I’ll share my own experiences and the hard-won insights I’ve gained from designing, building, and deploying cutting-edge CV models across various platforms like cloud, on-premise, and edge devices. These techniques can help prevent overfitting and improve the model’s performance on the validation set.

article thumbnail

Best Machine Learning Datasets

Flipboard

As such, the quality, diversity, and volume of data you feed into your machine learning model can significantly impact the model’s ability to make accurate predictions. Model Training: With the labeled data and identified features, the next step is to train a machine learning model. edges, corners, or color histograms).