SupplyChainToday.com

Beginners Guide to Machine Learning – Multiple Tutorials.

Here are a variety of videos to help you get started and provide a basic guide to machine learning.

Machine learning is a type of artificial intelligence that involves training algorithms to recognize patterns and make decisions based on data. It has many practical applications, including image and speech recognition, natural language processing, and predictive modeling. Here is a beginner’s guide to machine learning:

  1. Understand the basics: To get started with machine learning, it is important to understand the basic concepts and terminology. Some key concepts to familiarize yourself with include algorithms, datasets, features, labels, and supervised and unsupervised learning.
  2. Choose a programming language: There are many programming languages that are commonly used for machine learning, including Python, R, and Java. Choose a language that you are comfortable with and that has a strong community of users and developers.
  3. Install a machine learning library: Machine learning libraries are packages of pre-written code that can be used to build and train machine learning models. Some popular options include scikit-learn (Python), caret (R), and Weka (Java).
  4. Preprocess your data: Before you can start training a machine learning model, you will need to preprocess your data. This may include cleaning the data, handling missing values, and scaling or normalizing the features.
  5. Split your data into training and test sets: It is important to split your data into a training set and a test set. The training set is used to train the model, while the test set is used to evaluate the performance of the model.
  6. Choose an algorithm: There are many different machine learning algorithms to choose from, and the best algorithm for your problem will depend on the nature of your data and the type of problem you are trying to solve. Some popular options include decision trees, support vector machines, and k-nearest neighbors.
  7. Train your model: Once you have chosen an algorithm and preprocessed your data, you can train your model by feeding it the training data. The model will use this data to learn the relationships between the features and the labels.
  8. Evaluate your model: After training your model, you can use the test set to evaluate its performance. This will help you determine how well the model is able to generalize to new data.
  9. Fine-tune your model: Once you have evaluated your model, you may need to fine-tune it by adjusting the hyperparameters or by adding or removing features. This process, known as model selection, can help improve the performance of your model.

Overall, machine learning can be a complex field, but with some basic knowledge and practice, you can start building and training your own machine learning models.

A Friendly Introduction to Machine Learning

Learn Machine Learning in 3 Months (with curriculum)

HOW TO GET STARTED WITH MACHINE LEARNING!

Hello World – Machine Learning Recipes #1

Artificial Intelligence and Machine Learning Training.

guide machine learning

Quotes about Artificial Intelligence and Machine Learning

  • “Predicting the future isn’t magic, it’s artificial intelligence.” ~Dave Waters
  • The field of Artificial Intelligence is set to conquer most of the human disciplines; from art and literature to commerce and sociology; from computational biology and decision analysis to games and puzzles.” ~Anand Krish 
  • “Just as electricity transformed almost everything 100 years ago, today I actually have a hard time thinking of an industry that I don’t think AI (Artificial Intelligence) will transform in the next several years.” ~Andrew Ng
  • “AI is likely to be either the best or worst thing to happen to humanity.” ~Stephen Hawking
  • “People are trusting Artificial Intelligence with their lives in self-driving cars. What’s next?” ~EverythingSupplyChain.com
  • “Without change there is no innovation, creativity, or incentive for improvement. Those who initiate change will have a better opportunity to manage the change that is inevitable.” ~ William Pollard
  • “Artificial Intelligence, deep learning, machine learning — whatever you’re doing if you don’t understand it — learn it. Because otherwise you’re going to be a dinosaur within 3 years.” ~Mark Cuban
  • “The future is ours to shape. I feel we are in a race that we need to win. It’s a race between the growing power of the technology and the growing wisdom we need to manage it.” ~Max Tegmark
  • “A baby learns to crawl, walk and then run.  We are in the crawling stage when it comes to applying machine learning.” ~Dave Waters
  • “The future of the predictive supply chain: Artificial Intelligence; Machine Learning; Deep Learning.” ~SupplyChainToday.com
Facebook Comments
Scroll to Top