Machine learning with Sci-kit Learn and Tensorflow (V)
This is the code repository for Machine Learning with scikit-learn and Tensorflow [Video], published by Packt. It contains all the supporting project files necessary to work through the video course from start to finish.
Machine Learning is one of the most transformative and impactful technologies of our time. From advertising to healthcare, to self-driving cars, it is hard to find an industry that has not been or is not being revolutionized by machine learning. Using the two most popular frameworks, Tensor Flow and Scikit-Learn, this course will show you insightful tools and techniques for building intelligent systems. Using Scikit-learn you will create a Machine Learning project from scratch, and, use the Tensor Flow library to build and train professional neural networks.
We will use these frameworks to build a variety of applications for problems such as ad ranking and sentiment classification. The course will then take you through the methods for unsupervised learning and what to do when you have limited or no labels for your data. We use the techniques we have learned, along with some new ones, to build a sentiment classifier, an autocomplete keyboard and a topic discoverer.
The course will also cover applications for Natural Language Processing, explaining the types of language processing. We will cover TensorFlow, the most popular deep learning framework, and use it to build convolutional neural networks for object recognition and segmentation. We will then discuss recurrent neural networks and build applications for sentiment classification and stock prediction. We will then show you how to process sequences of data with recurrent neural networks with applications in sentiment classification and stock price prediction. Finally, you will learn applications with deep unsupervised learning and generative models. By the end of the course, you will have mastered Machine Learning in your everyday tasks
- Work through detailed tutorials of projects such as ad ranking, sentiment classification, image retrieval, and threat detection.
- Use the most powerful and ubiquitous Machine Learning techniques
- Dissect any machine learning research paper into actionable insights
- Develop a playbook for determining the best approach to any machine learning problem
- Use TensorFlow to build deep learning models
- Implement Convolutional Neural Networks for Computer Vision
- Build Recurrent Neural Networks for applications involving sequenced data such as natural language and stock prediction
- Segment images using computer vision
- Build a stock price prediction with recurrent neural networks
- Apply autoencoders for image denoising
- Work with Generative Adversarial Networks to enhance blurry photos
To fully benefit from the coverage included in this course, you will need:
A go-to resource for analysts and data scientists looking forward to exploring the best of both popular frameworks - Scikit-Learn and Tensorflow.
Basic familiarity with Python is required.