Reinforcement Learning Course (Reinforcement Learning, RL) + 8 ECTS credits

Institución Educativa
Mode Online
Duration 200 horas
Credits 8 ECTS
Languages Spanish
Gs. 2.217.000
Pago en cuotas sin intereses Acceso para siempre para consultar tu curso

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Plan de estudios

Summary

The ML supervised learning course is designed to acquire the necessary skills in a sector in full boom, where the demand for trained professionals does not stop growing. This course will provide you with a solid base in regression, classification and evaluation techniques, essential for any candidate for Data Scientist. You will learn from the foundations of automatic learning to advanced methods such as neuronal networks and support vectors machines, ensuring that you prepare to face the current challenges of the work world. This online course offers flexibility and accessibility, allowing you to advance at your own pace while you become an expert in supervised learning.

Goals

- Understand the foundations of supervised learning in Machine Learning. - Learn how to prepare and prept data for Machine Learning models. - Apply linear regression to solve prediction problems. - Use logistics regression in binary classification tasks. - Evaluate models through cross validation techniques. - Implement decision and assembly trees such as Random Forest. - Develop neural networks focused on supervised learning.

Professional exits

The main professional outputs of the supervised learning course in ML are in areas such as data science focused on predictive analysis, Machine Learning engineering in technical companies, artificial intelligence consulting for models development, data analysis in financial and marketing sectors, among others.

To prepare you

The ML supervised learning course prepares you to address complex data analysis problems through advanced Machine Learning techniques. You will learn from the preparation and preprocessing of data to the application of regression and classification algorithms. You will dominate models such as decision trees and neuronal networks, evaluating its efficiency with cross validation, among other things.

Who is it addressed

The ML supervised learning course is designed for professionals and graduates who wish to deepen automatic learning techniques. It addresses from the introduction to supervised learning to the application of neuronal networks, through linear regression, decision trees and SVM, providing essential tools for data analysis and modeling.

Official character

La presente formación no está incluida dentro del ámbito de la formación oficial reglada (Educación Infantil, Educación Primaria, Educación Secundaria, Formación Profesional Oficial FP, Bachillerato, Grado Universitario, Master Oficial Universitario y Doctorado). Se trata por tanto de una formación complementaria y/o de especialización, dirigida a la adquisición de determinadas competencias, habilidades o aptitudes de índole profesional, pudiendo ser baremable como mérito en bolsas de trabajo y/o concursos oposición, siempre dentro del apartado de Formación Complementaria y/o Formación Continua siendo siempre imprescindible la revisión de los requisitos específicos de baremación de las bolsa de trabajo público en concreto a la que deseemos presentarnos.

Methodology

Our methodology combines technology, pedagogy and empathy for a tailored learning.

You mark the rhythm, you decide the way and an artificial intelligence accompanies you to learn better, with meaning and purpose.

Realized personalized learning

Your style, interest and level define the route. You are the starting point.

Constructivism in action

Explore, experience and apply. Learning means understanding, not memorizing.

He who accompanies you, not who directs you

Phia, our artificial intelligence assistant guides you without limiting your autonomy.

Evaluation without pressure

Continuous and adaptive feedback. Because learning is a process, not a figure.

Certificación

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COURSE TITLE IN REINFORCEMENT LEARNING (REINFORCEMENT LEARNING, RL) with 200 hours and 8 ECTS issued by UTAMED - Mediterranean Atlantic Technological University.

Scholarships

EDUCAHUB Scholarships

Make your most accessible training: Finish 0% interest and get personalized scholarships.

In Eduahub we believe that education must be available to everyone. Therefore, we offer a scholarship plan that facilitates your access to practical, current and quality training, eliminating economic barriers.

-25%

Alumni Scholarship: For former students of Eduahub.

-20%

Unemployment scholarship: if you prove to be unemployed.

-20%

Numerous family scholarship: for families with 3 or more children.

-20%

Disability scholarship: For people with disabilities ≥33%.

-15%

Emprende Scholarship: For self -employed that accredit your activity.

-15%

Scholarship recommends: If you come recommended by an alumnus.

-15%

Group scholarship: For joint inscriptions of 3 or more people.

An entire educational universe, on a single platform.

An intuitive environment that guides you to form autonomously and with purpose.

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Learn at your pace

Courses, masters and official degrees. 100% online, flexible and at your pace.

Access from anywhere

Available 24/7 on mobile, tablet or PC. You decide when and how to train.

Phia, your mentor ia

It challenges you, motivates you and customizes your path. Learn with a guide that evolves with you.

LX One Plus: Without limit formation

Unlock soft skills, languages and more. Advances towards integral and continuous formation.