FreeCourse Logo
FreeCourse.io
Verified CouponsFree CoursesJobsBlog
Categories
Home/Courses/Deep Learning AI, Detección de Anomálias
Deep Learning AI,  Detección de Anomálias
IT & Software100% OFF

Deep Learning AI, Detección de Anomálias

Enrique Suarez Chalco
4.6(198 students)
Self-paced
Intermediate

About this course

Este curso intensivo de Deep Learning Aplicado: Detección y Predicción de Anomalías te sumergirá en el fascinante mundo de la inteligencia artificial, equipándote con las herramientas y conocimientos necesarios para identificar comportamientos inusuales y anticipar eventos críticos en una variedad de contextos. A lo largo del programa, explorarás cómo las técnicas de aprendizaje profundo están revolucionando la forma en que abordamos la detección de anomalías, superando las limitaciones de los métodos tradicionales y abriendo nuevas posibilidades para la seguridad, la eficiencia operativa y la toma de decisiones estratégicas.El enfoque del curso es eminentemente práctico. Comenzaremos con una sólida base teórica, revisando los conceptos fundamentales del aprendizaje automático y, en particular, adentrándonos en las arquitecturas clave del deep learning, como las redes neuronales convolucionales (CNNs), las redes neuronales recurrentes (RNNs) y los autoencoders.

Comprenderás cómo estas arquitecturas pueden ser adaptadas y optimizadas para identificar patrones sutiles y desviaciones significativas en conjuntos de datos complejos y de alta dimensionalidad.A medida que avances, el curso se centrará en la aplicación de estas técnicas a escenarios reales. Abordaremos el desafío de la detección de anomalías en series temporales, una habilidad crucial en campos como el monitoreo de infraestructura, el análisis de transacciones financieras y la detección de fallos en sistemas industriales. Aprenderás a preprocesar datos de series temporales, a construir modelos robustos capaces de aprender la dinámica normal de los datos y a diferenciarla de los comportamientos anómalos.

Se explorarán técnicas específicas para manejar datos no estacionarios y para lidiar con el desequilibrio de clases, un problema común en la detección de anomalías donde los casos anómalos son inherentemente raros.Un componente clave del curso será la predicción de anomalías. No solo te enseñaremos a identificar lo que ya ha ocurrido, sino también a anticipar posibles anomalías antes de que se manifiesten por completo. Esto es particularmente valioso en aplicaciones donde la prevención es primordial, como el mantenimiento predictivo o la ciberseguridad.

Estudiarás cómo integrar técnicas de aprendizaje por refuerzo y modelos predictivos avanzados para construir sistemas capaces de emitir alertas tempranas y permitir una intervención proactiva.Además de los aspectos técnicos, el curso enfatizará la interpretación y explicabilidad de los modelos de deep learning. Entender por qué un modelo clasifica algo como una anomalía es tan importante como la clasificación misma, especialmente en entornos críticos. Se discutirán métodos para visualizar y comprender las decisiones de los modelos, lo que te permitirá construir sistemas más confiables y justificar sus predicciones.Al finalizar el curso, estarás capacitado para diseñar, implementar y evaluar sistemas de detección y predicción de anomalías basados en deep learning.

Tendrás la confianza para aplicar estos conocimientos en una amplia gama de industrias, desde la banca y las finanzas hasta la manufactura y la salud, contribuyendo significativamente a la seguridad, la eficiencia y la innovación. Este programa es ideal para profesionales de datos, ingenieros de machine learning y cualquier persona interesada en llevar sus habilidades de análisis de datos al siguiente nivel, utilizando el poder transformador del deep learning para resolver desafíos complejos del mundo real.

Skills you'll gain

Other IT & Softwarees

Available Coupons

Loading...

Course Information

Level: Intermediate

Suitable for learners at this level

Duration: Self-paced

Total course content

Instructor: Enrique Suarez Chalco

Expert course creator

This course includes:

  • 📹Video lectures
  • 📄Downloadable resources
  • 📱Mobile & desktop access
  • 🎓Certificate of completion
  • ♾️Lifetime access
$0$99.99

Save $99.99 today!

Enroll Now - Free

Redirects to Udemy • Limited free enrollments

Share this course

https://freecourse.io/courses/deep-learning-aplicado-deteccion-y-prediccion-de-anomalias

You May Also Like

Explore more courses similar to this one

Cloud-native Microservices with Quarkus
IT & Software
0% OFF

Cloud-native Microservices with Quarkus

Ansgar Schulte

You need to write fast scalable microservices in Java and further want to use your previous knowledge of quality-proven technologies? I'm glad you found your way here. You'll learn exactly this in this course.Quarkus is a framework for developing microservices with Java. It relies on proven tools, technologies and specifications such as Eclipse MicroProfile, Eclipse Vert.x and SmallRye. Microservices developed with Quarkus are designed to be operated in a cloud-native environment. The entire development process and the philosophies behind Quarkus support this orientation and ensure maximum productivity and efficiency right from the start.This course is about the development of two microservices using an end-to-end example. We will do a lot of programming, and you should not just consume this course, but actively participate. Chapter by chapter, I'll develop the demo application further in small steps, each one covering a single topic. I'll guide you throughout the entire course and provide the source code in a public GitHub repository after each lesson. In doing so, we will automatically pass by typical topics for Microservices. These are, for exampleProviding and accessing REST APIsAccessing relational databasesWorking with NoSQL databasesConfiguration managementSecurityCreation of native images with Graal-VMUsing the Quarkus CLIFault ToleranceApplication data cachingConnecting to message-brokers and event-buses...I'm constantly developing this course and adding new lessons, especially in response to participant feedback.Do you want to learn more? Then I look forward to welcoming you to my course.

4.3•9.1K•Self-paced
FREE$88.99
Enroll
Master C++ Programming - From Beginner To Advance - 2021
IT & Software
0% OFF

Master C++ Programming - From Beginner To Advance - 2021

Udemy Instructor

Master C++ Programming - From Beginner To ProC++, C++ Tutorial, C++ Lecture, C++ CourseConcepts of C++ programming are made very simple and easy.Course Highlights Explained each topic with help of picture and example. Practical Session for each Topic 2-Projects - ATM system & Student Management Mind-map Notes - ppt100 MCQ's15 AssignmentsTopics :Introducing Basics Of Computer Mind-mapWhat is Computer ?Computer ArchitectureRAM - Random Access MemoryCPU - Central Processing UnitOperating SystemComputer LanguageRecap - Basics Of Computer - Mind-MapQuiz 1: Basics Of Computer QuizIntroduction to Programming ( Mind Map )What is Programming in general ?Why we should learn C++ ?What is C++ ?What is Compiler and IDE ?Quiz 2: Introduction to Programming QuizCompiler and IDE SetupBest IDE's For C++Installing Visual Studio for C++Installing Codeblocks for C++Introducing Program Structure in C++ Program ( Mind map )HeaderNamespaceMain FunctionBlock and SemicolonWriting First C++ ProgramUser Input and Output in C++ ProgramRecap Program Structure Mind-mapQuiz 3:Program Structure QuizIdentifiersKeywordsData TypesVariablesOperatorsArithmetic OperatorsAssignment OperatorsLogical OperatorComparison OperatorRecap Important terminologies of C++ Programming ( Mind-map )Quiz 4: Important terms QuizIntroducing Important Terminologies in C++ ProgrammingIntroduction Conditions in C++ Mind-mapCondition in C++If ConditionIf Else ConditionElse if ConditionSwitch CaseRecap Conditions in C++ Mind-MapQuiz 5:Condition in C++Introducing String in C++ Programming Language ( Mind-map )Why Strings are used in C++ ?String concatenationHow to calculate string length ?How to take string as input ?Example on StringRecap String in C++ ( Mind-map )Quiz 6: String QuizIntroduction to LoopsWhat / why of LoopFor LoopWhile LoopDo While LoopBreak and ContinueQuiz 7: Loop QuizWhy Array ?What is Array ?Creating , Initialize and Modify ArrayProgram of find Minimum no. in ArrayWhy Functions in C++?Example Of FunctionFunction and Main MemoryVarious Forms Of FunctionWhat and Why Of Function Overloading?1st Way Of Function Overloading2nd Way Of Function OverloadingDrawback Of Function and inline FunctionQuiz 8: Functions in C++What is Function ?What and Why Of StructureDefine Structure in C++Example of StructureNesting Of StructureStructure paddingQuiz 9:Structure in C++ QuizWhy Object Oriented ProgrammingExample of OOPKey Note on Member Function and Member VariableAccess SpecifierCharacteristics of OOPQuiz 10: OOP QuizMini Project - ( ATM System in C++ )Why Constructor?Default ConstructorParametrized ConstructorCopy ConstructorConstructor OverloadingConstructor ProgramQuiz 11: Constructor in C++Operator OverloadingOverloading Post and Pre IncrementIntroduction Inheritance Mind-MapWhat is Inheritance?Why Inheritance ?Inheritance ExampleConstructor and InheritanceFunction OverridingisA and hasA RelationTypes Of InheritanceWays of InheritanceQuiz 12: Inheritance QuizWhat is Pointer?Why Pointer is Used?Program in MemoryPointer NotationPointer and ArrayPointer and FunctionMemory Management - NEWMemory Management - DELETEPointer Application ProgramPointer Limitationsthis PointerQuiz 13: Pointers QuizIntroduction to Pointer - Mind-mapIntroduction to PolymorphismBase Class Pointer and Derived Class ObjectWhat is Virtual Function?Why Virtual Function with ExampleAbstract Class and Pure Virtual FunctionMore about PolymorphismVirtual DestructorQuiz 14 : Polymorphism QuizWhat is friend in general?What is Friend Function?Question on Friend FunctionWhat is Friend Class ? + practicalOverloading Comparison Operator - With Friend FunctionQuiz 15:Friend QuizIntroduction to Static Member - Mind mapStatic Member VariableStatic Member FunctionQuiz 16: Static Member Variable & Function QuizIntroducing File Input- OutputWhat are Streams?Classes and Object for Input-OutputHow reading and writing is done in file?Write data into FILEReading data from FILETellg in C++Tellp FunctionSeekg FunctionSeekp FunctionQuiz 17:File handling QuizException Handling in C++Exception Handling Program in C++Quiz 18: Exception QuizBasics of Data StructureIntroduction to STLContainers in STL & ClassificationArray - Container in STLVector - Container in STLList - Container in STLStack - Container in STLQueue - Container in STLPriority Queue - Container in STLMap - Container in STLMultimap - Container in STLUnordered Map - Container in STLSet - Container in STLMultiset - Container in STLUnordered Set - Container in STLAlgorithms in STLContainer in ContainerQuiz 19: STL QuizFinal Project - Student management in C++ByteBoard - VeDinesh Academy provides smart classroom-type learning by breaking long lectures into short and crisp for each topic. We explain concepts with examples and pictures for better understanding, moreover we apply the Mind-Map technique that would definitely help you in connecting the dots and remembering the concepts forever. We are highly motivated and passionate to provide you high-quality, simplified, and in-depth training at an affordable price.Thanks.

4.4•35.0K•Self-paced
FREE$93.99
Enroll
Data Engineering & Big Data: Master Mock Interviews
IT & Software
0% OFF

Data Engineering & Big Data: Master Mock Interviews

Udemy Instructor

Building a simple SQL database is easy. Building a distributed data pipeline that processes petabytes of streaming data per day without dropping a single message, crashing out of memory, or bankrupting your cloud budget is incredibly difficult. Technical interviews for Data Engineering roles are notoriously tough because they test your ability to handle massive scale. The Data Engineering & Big Data: Master Mock Interviews course is the ultimate testing ground to prove you have the architectural skills to manage the modern data stack.This course abandons basic trivia ("What does SQL stand for?") and throws you directly into the trenches with four massive sets of rigorous, scenario-based engineering challenges. First, you will tackle Apache Spark & Distributed Processing, figuring out how to optimize shuffle operations, broadcast joins, and structured streaming watermarks. Next, you will dive into Cloud Data Warehousing, testing your ability to manage Snowflake micro-partitions and BigQuery clustering.But batch processing is only half the battle. The third section rigorously tests your Real-Time Streaming skills using Apache Kafka, challenging your understanding of exactly-once semantics, consumer group scaling, and Change Data Capture (CDC). Finally, we cover the glue that holds pipelines together: Orchestration & Modeling. You will be tested on designing idempotent DAGs in Apache Airflow, implementing Slowly Changing Dimensions (SCDs), and writing modular transformations with dbt. Every question features a detailed explanation to ensure you don't just pass the test—you learn how to build robust, scalable data infrastructure.Basic Info:Course locale: English (India)Course instructional level: Intermediate to AdvancedCourse category: IT & SoftwareCourse subcategory: Data Engineering

0.0•96•Self-paced
FREE$92.99
Enroll
FreeCourse LogoFreeCourse

Freecourse.io brings you high-quality online courses with free certificates to help you upskill, boost your career, and achieve your goals anytime, anywhere.

Resources

  • Courses
  • Jobs
  • Categories
  • Features

Company

  • About
  • Blog
  • Contact

Legal

  • Privacy
  • Terms
  • Cookies
  • Licenses

© 2026 FreeCourse. All rights reserved.