K Labs mette a tua disposizione i propri Trainers Certificati, i Laboratori Didattici, i Simulatori di Esame, il proprio Test Center e un Tutor a te dedicato per la preparazione all'esame.
Grazie al nostro supporto la percentuale di candidati che ottengono la certificazione al primo tentativo è prossima al 100%.
OBJECTIVES This course is structured into four domains: data engineering, exploratory data analysis, modeling, and machine learning implementation and operations.
PREREQUISITES Professional Certification for a public cloud provider (Azure, Google) or equivalent knowledge Some existing familiarity with machine learning An AWS account is needed to perform the hands-on lab exercises
WHO SHOULD ATTEND Individuals performing a development or data science role seeking certification in machine learning and AWS.
TOPICS S3 data lakes AWS Glue and Glue ETL Kinesis data streams, firehose, and video streams DynamoDB Data Pipelines, AWS Batch, and Step Functions Using scikit_learn Data science basics Athena and Quicksight Elastic MapReduce (EMR) Apache Spark and MLLib Feature engineering (imputation, outliers, binning, transforms, encoding, and normalization) Ground Truth Deep Learning basics Tuning neural networks and avoiding overfitting Amazon SageMaker, in depth Regularization techniques Evaluating machine learning models (precision, recall, F1, confusion matrix, etc.) High-level ML services: Comprehend, Translate, Polly, Transcribe, Lex, Rekognition, and more Security best practices with machine learning on AWS