Applied Machine Learning Feature Engineering

Applied Machine Learning Feature Engineering

with Matt Harrison
Electronic Video - 2024

Extract the maximum value from your data using feature engineering. Learn how to clean, normalize, and create features to improve the performance of your machine learning models.

Enregistré dans:

Holdings -

Détails bibliographiques
Collectivité auteur: linkedin.com (Firm)
Autres auteurs: Harrison, Matt (Intervenant)
Format: Électronique Vidéo
Langue:English
Publié: Carpenteria, CA linkedin.com, 2024.
Sujets:
Accès en ligne:View course details on linkedin.com/learning

MARC

LEADER 00000ngm a22000003i 4500
001 LDC3809062
003 LDC
005 20241219214933.8
006 m c
007 cr cna a
008 241219s2024 cau101 o vleng d
040 |a linkedin.com  |b eng 
050 4 |a LDC3809062 
100 1 |a Harrison, Matt  |e speaker. 
245 1 0 |a Applied Machine Learning: Feature Engineering.  |c with Matt Harrison 
264 1 |a Carpenteria, CA  |b linkedin.com,  |c 2024. 
306 |a 01h:41m:44s 
337 |a computer  |2 rdamedia 
338 |a online resource  |2 rdacarrier 
500 |a 4/16/202412:00:00AM 
520 |a Extract the maximum value from your data using feature engineering. Learn how to clean, normalize, and create features to improve the performance of your machine learning models. 
511 1 |a Presenter: Matt Harrison 
520 |a Machine learning is not magic. The quality of the predictions coming out of your model is a direct reflection of the data you feed it during training. This course with instructor Matt Harrison guides you through the nuances of feature engineering techniques for numeric data so you can take a dataset, tease out the signal, and throw out the noise in order to optimize your machine learning model. Matt teaches you techniques like imputation, binning, log transformations, and scaling for numeric data. He covers methods for other types of data, like as one hot encoding, mean targeting coding, principal component analysis, feature aggregation, and text processing techniques like TFIDF and embeddings. The tools you learn in this course will generalize to nearly any kind of machine learning algorithm/problem, so join Matt in this course to learn how you can extract the maximum value from your data using feature engineering. 
538 |a Latest version of the following browsers: Chrome, Safari, Firefox, or Internet Explorer. Adobe Flash Player Plugin. JavaScript and cookies must be enabled. A broadband Internet connection. 
655 4 |a Instructional films.  |2 lcgft 
655 4 |a Educational films.  |2 lcgft 
710 2 |a linkedin.com (Firm) 
856 4 0 |u https://www.linkedin.com/learning/applied-machine-learning-feature-engineering-23752649?u=95224889&auth=true  |z View course details on linkedin.com/learning 
092 |a ONLINE CLASS