10 Best Courses to Become a Certified ML Engineer


Certified ML Engineer

&NewLine;<p>So you have decided to learn machine learning and start a promising career in this domain&period; Probably you are relying on <a href&equals;"https&colon;&sol;&sol;www&period;simplilearn&period;com&sol;">online education<&sol;a> as taking offline courses does not seem feasible for working employees&period; So&comma; in this article&comma; we have shared some of the best courses available online to help you build a strong foundation in machine learning&period;<&sol;p>&NewLine;&NewLine;&NewLine;&NewLine;<iframe width&equals;"560" height&equals;"315" src&equals;"https&colon;&sol;&sol;www&period;youtube&period;com&sol;embed&sol;-SrdfmRLneY" title&equals;"YouTube video player" frameborder&equals;"0" allow&equals;"accelerometer&semi; autoplay&semi; clipboard-write&semi; encrypted-media&semi; gyroscope&semi; picture-in-picture" allowfullscreen><&sol;iframe>&NewLine;&NewLine;&NewLine;&NewLine;<p>Here goes the list&excl;<&sol;p>&NewLine;&NewLine;&NewLine;&NewLine;<ol class&equals;"wp-block-list" type&equals;"1"><li><strong>Machine Learning Certification Course<&sol;strong><&sol;li><&sol;ol>&NewLine;&NewLine;&NewLine;&NewLine;<p>Training Provider &&num;8211&semi; Simplilearn<&sol;p>&NewLine;&NewLine;&NewLine;&NewLine;<p>Experience 58 hours of applied learning and kickstart your machine learning journey&period; Dive into important topics like supervised learning&comma; unsupervised learning&comma; classification&comma; regression&comma; and time-series modeling with this comprehensive machine learning course&period; In addition to video lectures&comma; you will get access to interactive labs&comma; hands-on projects&comma; and mentoring sessions from industry experts&period; The course is beginner-friendly and suitable for analytics managers&comma; data scientists&comma; machine learning engineers&comma; and developers&period;<&sol;p>&NewLine;&NewLine;&NewLine;&NewLine;<ol class&equals;"wp-block-list" type&equals;"1" start&equals;"2"><li><strong>Machine Learning Crash Course with TensorFlow APIs<&sol;strong><&sol;li><&sol;ol>&NewLine;&NewLine;&NewLine;&NewLine;<p>Training Provider &&num;8211&semi; Google<&sol;p>&NewLine;&NewLine;&NewLine;&NewLine;<p>Go through a series of lessons with video lectures&comma; hands-on practice exercises&comma; and real-world case studies when you enroll in this course designed by Google Developers&period; With 15 hours of lectures&comma; you will learn the basics of machine learning from Google researchers&comma; work on over 30 exercises&comma; and watch interactive visualizations of algorithms in action&period; You will learn how machine learning differs from traditional programming&comma; gradient descent&comma; how to measure loss&comma; identify if an ML model is effective&comma; how to represent data&comma; and build a deep neural network&period;<&sol;p>&NewLine;&NewLine;&NewLine;&NewLine;<ol class&equals;"wp-block-list" type&equals;"1" start&equals;"3"><li><strong>Machine Learning Course<&sol;strong> <strong><&sol;strong><&sol;li><&sol;ol>&NewLine;&NewLine;&NewLine;&NewLine;<p>Training Provider &&num;8211&semi; Stanford University on Coursera<&sol;p>&NewLine;&NewLine;&NewLine;&NewLine;<p>This 61 hours of in-depth training gives you a broad introduction to machine learning&comma; statistical pattern recognition&comma; and data mining&period; You will dive into a number of concepts like supervised learning&comma; neural networks&comma; support vector machines&comma; clustering&comma; dimensional reduction&comma; bias theory&comma; and more&period; Though you can audit the course for free&comma; it is better to go for the paid version as you will get access to graded assessments and receive a course completion certificate at the end&period;<&sol;p>&NewLine;&NewLine;&NewLine;&NewLine;<ol class&equals;"wp-block-list" type&equals;"1" start&equals;"4"><li><strong>Machine Learning with Python&colon; A Practical Introduction<&sol;strong><&sol;li><&sol;ol>&NewLine;&NewLine;&NewLine;&NewLine;<p>Training Provider &&num;8211&semi; IBM on edX<&sol;p>&NewLine;&NewLine;&NewLine;&NewLine;<p>Get all the tools required to start with supervised and unsupervised learning with this detailed course by IBM&period; Through this 5-weeks course &lpar;4 to 6 hours per week&rpar;&comma; you will explore the basics of machine learning using Python&period; You will understand how supervised learning differs from unsupervised learning and how statistical modeling is related to machine learning&period; Algorithms are regression&comma; classification&comma; dimensional reduction&comma; and clustering are discussed thoroughly&comma; including popular ML models like Random Forest&comma; Root Mean Squared Error and Train&sol;Test Split&period;&nbsp&semi;&nbsp&semi;<&sol;p>&NewLine;&NewLine;&NewLine;&NewLine;<ol class&equals;"wp-block-list" type&equals;"1" start&equals;"5"><li><strong>Machine Learning Literacy<&sol;strong><&sol;li><&sol;ol>&NewLine;&NewLine;&NewLine;&NewLine;<p>Training Provider &&num;8211&semi; Pluralsight<&sol;p>&NewLine;&NewLine;&NewLine;&NewLine;<p>Machine Learning Literacy is a learning path on Pluralsight which involves 5 courses and 35 hours of learning&period; The instructor will teach you the workflows&comma; modeling techniques&comma; and strategies behind any machine learning solution&period; They will explain how feature engineering fits into the ML workflow and how can one build their first features from numerical data&period; The program also covers various types of machine learning algorithms&comma; and solution techniques based on the specifics of the problem you are trying to solve&period;<&sol;p>&NewLine;&NewLine;&NewLine;&NewLine;<ol class&equals;"wp-block-list" type&equals;"1" start&equals;"6"><li><strong>AWS Machine Learning Engineer Nanodegree Program<&sol;strong>&nbsp&semi; <strong><&sol;strong><&sol;li><&sol;ol>&NewLine;&NewLine;&NewLine;&NewLine;<p>Training Provider &&num;8211&semi; Udacity<&sol;p>&NewLine;&NewLine;&NewLine;&NewLine;<p>This 5-months training program on Udacity is the one-stop solution for gaining the job-ready skills of a machine learning engineer&period; Firstly&comma; you will dive into the concepts of data science and machine learning and learn how to build and deploy ML models in production using Amazon SageMaker&period; When enrolling in this course&comma; make sure you are already familiar with machine learning algorithms and Python programming&period; You will be using SageMaker to perform exploratory data analysis&period; Further&comma; you will learn to create ML workflows&comma; along with data cleaning and feature engineering&period;<&sol;p>&NewLine;&NewLine;&NewLine;&NewLine;<ol class&equals;"wp-block-list" type&equals;"1" start&equals;"7"><li><strong>Introduction to Machine Learning and AI<&sol;strong><&sol;li><&sol;ol>&NewLine;&NewLine;&NewLine;&NewLine;<p><strong>&nbsp&semi;&nbsp&semi;&nbsp&semi;&nbsp&semi;&nbsp&semi;&nbsp&semi;&nbsp&semi;&nbsp&semi;&nbsp&semi;&nbsp&semi;&nbsp&semi;&nbsp&semi;&nbsp&semi;&nbsp&semi; <&sol;strong>Training Provider &&num;8211&semi; Future Learn<&sol;p>&NewLine;&NewLine;&NewLine;&NewLine;<p>Enroll in this short-term course if you want to understand the fundamentals of machine learning&comma; how it works&comma; and how to train your own AI&period; The program is designed by Raspberry Pi Foundation and will make you familiar with different types of machine learning&period; It also helps you understand the problems that machine learning can solve and the ethics of collecting data to train an ML model&period; Lastly&comma; you will come across an important ML concept called neural networks &lpar;basically studied under deep learning&rpar;&period;<&sol;p>&NewLine;&NewLine;&NewLine;&NewLine;<ol class&equals;"wp-block-list" type&equals;"1" start&equals;"8"><li><strong>Machine Learning with Python<&sol;strong><&sol;li><&sol;ol>&NewLine;&NewLine;&NewLine;&NewLine;<p>Training Provider &&num;8211&semi; Cognitive Class by IBM<&sol;p>&NewLine;&NewLine;&NewLine;&NewLine;<p>This beginner-level course is 3 hours long and helps you go through the foundations of machine learning using a popular programming language called Python&period; You will come to know about the real-life examples of machine learning and how it impacts society in ways you can’t think of&period; Learners will be given access to a hands-on lab for this course&period; The tool used will be Jupyter and you will be required to have a working knowledge of Python programming as applicable to data analytics&period;<&sol;p>&NewLine;&NewLine;&NewLine;&NewLine;<ol class&equals;"wp-block-list" type&equals;"1" start&equals;"9"><li><strong>Machine Learning Scientist with Python<&sol;strong> <strong><&sol;strong><&sol;li><&sol;ol>&NewLine;&NewLine;&NewLine;&NewLine;<p>Training Provider &&num;8211&semi; Datacamp<&sol;p>&NewLine;&NewLine;&NewLine;&NewLine;<p>This is again a career track that involves 23 courses and 93 hours of learning modules&period; The course helps you understand how to perform supervised&comma; unsupervised&comma; and deep learning through Python programming skills&period; You will learn how to process data for features&comma; train ML models&comma; check performance&comma; and tune parameters for higher accuracy&period; The program also covers natural language processing&comma; image processing&comma; and ML libraries like Spark and Keras&period;<&sol;p>&NewLine;&NewLine;&NewLine;&NewLine;<ol class&equals;"wp-block-list" type&equals;"1" start&equals;"10"><li><strong>&nbsp&semi;Complete Machine Learning and Data Science Bootcamp<&sol;strong><&sol;li><&sol;ol>&NewLine;&NewLine;&NewLine;&NewLine;<p>Training Provider &&num;8211&semi; Udemy<&sol;p>&NewLine;&NewLine;&NewLine;&NewLine;<p>Do you want to learn data science and machine learning from scratch&quest; If yes&comma; then this course on Udemy is for you&period; This comprehensive training program will make you familiar with all the modern skills of a machine learning engineer and help you build many real-world projects to add to your portfolio&period; As a learner&comma; you can access all the code&comma; templates&comma; and workbooks on GitHub&period; Some of the important topics covered are data exploration and visualization&comma; neural networks&comma; model evaluation&comma; Python 3&comma; Numpy&comma; Scikit-Learn&comma; and ML workflows&period;<&sol;p>&NewLine;

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