Machine Learning for Software Engineers - Druckversion +- Forum Rockoldies (https://rockoldies.net/forum) +-- Forum: Fotobearbeitung - Photoshop (https://rockoldies.net/forum/forumdisplay.php?fid=16) +--- Forum: E-Learning, Tutorials (https://rockoldies.net/forum/forumdisplay.php?fid=18) +--- Thema: Machine Learning for Software Engineers (/showthread.php?tid=31463) |
Machine Learning for Software Engineers - Panter - 27.07.2021 Machine Learning for Software Engineers Genre: eLearning | MP4 | Video: h264, 1280x720 | Audio: AAC, 48.0 KHz Language: English | Size: 5.96 GB | Duration: 11h 30m A Practical Approach What you'll learn Theory and practicals of Regression Theory and practicals of Classification Theory and practicals of Clustering Exploratory Data Analysis techniques Description This course has been put together by a team of experienced teaching professionals and industry experts in machine learning. We aim to offer software engineers and those with some coding experience an introduction to the main concepts of machine learning. We take a very practical approach, mixing theory videos and practical videos, with all code and jupyter notebooks used throughout the course being available for download. We begin with Regression, then Exploratory Data Analysis, before moving on to Classification and Clustering. Not only will you learn how to build models, you'll also learn the correct ways to evaluate your data, identify problems and validate the correctness of your models. At the end of this course you will be able to: Analyse a new set of data using Exploratory Data Analysis Generate summary statistics and visualisations Identify outliers and be able to handle missing data Be able to use: jupyter, pandas, seaborn, matplotlib, scipy, imblearn Build Linear Regression models - Ordinary Least Squares Build Non-Linear Regression models - SVM, Decision Trees, Random Forest Build Classification models - K-Nearest Neighbour, Approximate KNN, Naive Bayes Build Clustering models - K-means, Gaussian Mixture Models, Agglomerative Clustering, DBSCAN Data resampling techniques, dummy classifiers & k-fold validation, Pipelines Data encoding techniques - One-hot Encoding, Target Encoding, Binary Encoding This course includes: Over 11 hours of video content 17 downloadable resources 17 practical assignments in jupyter notebooks Reference Materials & further reading Who this course is for: Coders who are looking to learn or brush up on some practical Machine Learning skills Developers who are interested in Machine Learning Developers who are interested in Data Science Homepage Code: https://anonymz.com/?https://www.udemy.com/course/machine-learning-for-software-engineers/ Download from Nitroflare: Download from Rapidgator: |