EdX

Aprendizaje automático y ciencia de datos (edX)

Aprendizaje automático y ciencia de datos (edX)

Aprende a valorizar y extraer conocimiento a partir de los datos, usando técnicas y herramientas de análisis de datos genéricas, y aprendizaje automático en particular. El aprendizaje automático es una habilidad que toma cada vez más relevancia debido al gran número de datos (big data), los cuales deben de ser analizados para tomar decisiones.

Class Deals by MOOC List - Click here and see EdX's Active Discounts, Deals, and Promo Codes.

En este curso en línea aprenderás los conceptos básicos del aprendizaje automático (machine learning) y la ciencia de datos.En particular,aprenderáslas técnicas necesarias para evaluar el rendimiento de los algoritmos y de los modelos obtenidos. También aprenderás como preprocesar los datos para obtener así modelos de mayor calidad (simples, comprensibles, eficientes, etc.). Por último, en este curso de análisis de datos aprenderás a poner en funcionamiento las técnicas estudiadas mediante un ejemplo prácticoprogramando tus propios scripts y algoritmos en R.

Prerequisites:
El alumno ha de tener unos conocimientos básicos de programación, sin ningún lenguaje de programación en particular. Debe conocer lo que son vectores y matrices, a nivel muy básico. Es conveniente que conozca los indicadores estadísticos básicos (media, desviación típica, mediana, cuantiles, etc.), concepto de muestreo y nociones muy básicas (ofimáticas) con hojas de cálculo y tablas de datos.

What you'll learn

  • Reconocer el valor de los datos en las organizaciones y las posibilidades de negocio que plantea su explotación para el desarrollo de productos basados en datos (inteligencia de negocios)
  • Utilizar técnicas de aprendizaje automático, entre otras, para extraer modelos descriptivos y predictivos a partir de los datos, así como saber evaluarlos correctamente
  • Conocer y utilizar las herramientas básicas de integración y preparación de datos, incluyendo visualización de datos, para facilitar la comprensión y el análisis de los datos
  • Aprender a utilizar un lenguaje de programación de análisis de datos (lenguaje R) y las librerías básicas de visualización y algunas de las que permiten generar modelos de aprendizaje automático.

Syllabus

UNIDAD 1. Introducción al aprendizaje automático y la ciencia de datos
PRÁCTICA 1. Introducción al lenguaje R
UNIDAD 2. Evaluación de modelos de aprendizaje automático
PRÁCTICA 2. Evaluación de modelos de aprendizaje automático
UNIDAD 3. Técnicas básicas de aprendizaje automático
PRÁCTICA 3. Práctica de creación de modelos de aprendizaje automático
UNIDAD 4. Preprocesamiento de datos
PRÁCTICA 4. Visualización
PROYECTO

Go to Class
MOOC List is learner-supported. When you buy through links on our site, we may earn an affiliate commission.

Related Courses

Computing for Data Analysis (edX) EdX
Georgia Institute of Technology,GTx

Computing for Data Analysis (edX)

A hands-on introduction to basic programming principles and practice relevant to modern data analysis, data mining, and machine learning. The modern data analysis pipeline involves collection, preprocessing, storage, analysis, and interactive visualization of data. In the course, you’ll see how computing and mathematics come together.

Aug 19th 2024
13-24 Weeks
Introduction to Applied Biostatistics: Statistics for Medical Research (edX) EdX
Osaka University

Introduction to Applied Biostatistics: Statistics for Medical Research (edX)

Learn data analysis for medical research with practical hands-on examples using R Commander. Want to learn how to analyze real-world medical data, but unsure where to begin? This Applied Biostatistics course provides an introduction to important topics in medical statistical concepts and reasoning.

No sessions available
5-12 Weeks
Data, Analytics and Learning (edX) EdX
University of Texas at Arlington,UTArlingtonX

Data, Analytics and Learning (edX)

An introduction to the logic and methods of analysis of data to improve teaching and learning. Capturing and analyzing data has changed how decisions are made and resources are allocated in businesses, journalism, government, and military and intelligence fields. Through better use of data, leaders are able to plan and enact strategies with greater clarity and confidence.

No sessions available
4 Weeks
Designing and Running Randomized Evaluations (edX) EdX
MIT,MITx

Designing and Running Randomized Evaluations (edX)

Learn how to both design randomized evaluations and implement them in the field to measure the impact of social programs. A randomized evaluation, also known as a randomized controlled trial (RCT), field experiment or field trial, is a type of impact evaluation that uses random assignment to allocate resources, run programs, or apply policies as part of the study design.

Sep 7th 2021
5-12 Weeks
Introduction to Linear Models and Matrix Algebra (edX) EdX
HarvardX,Harvard University

Introduction to Linear Models and Matrix Algebra (edX)

Learn to use R programming to apply linear models to analyze data in life sciences. Matrix Algebra underlies many of the current tools for experimental design and the analysis of high-dimensional data. In this introductory data analysis course, we will use matrix algebra to represent the linear models that commonly used to model differences between experimental units. We perform statistical inference on these differences. Throughout the course we will use the R programming language.

Self Paced
Self-Paced
Machine Learning with Python: from Linear Models to Deep Learning (edX) EdX
MIT,MITx

Machine Learning with Python: from Linear Models to Deep Learning (edX)

An in-depth introduction to the field of machine learning, from linear models to deep learning and reinforcement learning, through hands-on Python projects. Machine learning methods are commonly used across engineering and sciences, from computer systems to physics. Moreover, commercial sites such as search engines, recommender systems (e.g., Netflix, Amazon), advertisers, and financial institutions employ machine learning algorithms for content recommendation, predicting customer behavior, compliance, or risk.

May 27th 2024
13-24 Weeks
Applied Quantum Computing III: Algorithm and Software (edX) EdX
Purdue University,PurdueX

Applied Quantum Computing III: Algorithm and Software (edX)

Learn domain-specific quantum algorithms and how to run them on present-day quantum hardware. This course is part III of the series of Quantum computing courses, which covers aspects from fundamentals to present-day hardware platforms to quantum software and programming. The goal of part III is to discuss some of the key domain-specific algorithms that are developed by exploiting the fundamental quantum phenomena (e.g. entanglement)and computing models discussed in part I.

Mar 25th 2024
5-12 Weeks
Platform-Based Analytics (edX) EdX
Indiana University,IUx

Platform-Based Analytics (edX)

Gain hands-on experience extracting, preparing, exploring, and analyzing data statistically and visually using features and tools native to Microsoft Excel. In an ever-growing digital world, the need for strong data analysis skills is at the forefront of every business function, along with the ability to accurately describe and interpret analytical findings.

Nov 7th 2023
5-12 Weeks
Recommender Systems: Behind the Screen (edX) EdX
Université de Montréal,UMontrealX

Recommender Systems: Behind the Screen (edX)

How are items recommended when you’re browsing for movies, jobs or clothing online? Register here and you’ll discover the fundamental concepts and methods allowing the most relevant item suggestions to users from e-commerce to online advertisement. In this course, you will explore and learn the best methods and practices in recommender systems, which are an essential component of the online ecosystem. This course was developed by IVADO and HEC Montréal as part of a workshop that took place in Montreal.

Sep 26th 2023
5-12 Weeks
Knowledge Management and Big Data in Business (edX) EdX
The Hong Kong Polytechnic University,HKPolyUx

Knowledge Management and Big Data in Business (edX)

Learn why and how knowledge management and Big Data are vital to the new business era. The business landscape is changing so rapidly that traditional management, business and computing courses do not meet the needs for the next generation of workers in the business world. Most traditional methods are of a repetitive, rule-based nature and will be gradually replaced by Artificial Intelligence.

Self Paced
Self-Paced