Coursera – Practical Data Science on the AWS Cloud Specialization

$5.00

SKU: W9RUGMIBJN Category:
Description

Last updated 1/2024
MP4 | Video: h264, 1280×720 | Audio: AAC, 44.1 KHz, 2 Ch
Genre: eLearning | Language: English + srt | Duration: 85 Lessons ( 7h 42m ) | Size: 1.5 GB

Become a cloud data science expert. Develop and scale your data science projects into the cloud using Amazon SageMaker

What you’ll learn
Prepare data, detect statistical data biases, perform feature engineering at scale to train models, & train, evaluate, & tune models with AutoML

Store & manage ML features using a feature store, & debug, profile, tune, & evaluate models while tracking data lineage and model artifacts

Build, deploy, monitor, & operationalize end-to-end machine learning pipelines

Build data labeling and human-in-the-loop pipelines to improve model performance with human intelligence

Skills you’ll gain
Data Labeling at Scale
Automated Machine Learning (AutoML)
A/B Testing and Model Deployment
ML Pipelines and ML Operations (MLOps)
Natural Language Processing with BERT

Development environments might not have the exact requirements as production environments. Moving data science and machine learning projects from idea to production requires state-of-the-art skills. You need to architect and implement your projects for scale and operational efficiency. Data science is an interdisciplinary field that combines domain knowledge with mathematics, statistics, data visualization, and programming skills.

The Practical Data Science Specialization brings together these disciplines using purpose-built ML tools in the AWS cloud. It helps you develop the practical skills to effectively deploy your data science projects and overcome challenges at each step of the ML workflow using Amazon SageMaker.

This Specialization is designed for data-focused developers, scientists, and analysts familiar with the Python and SQL programming languages who want to learn how to build, train, and deploy scalable, end-to-end ML pipelines – both automated and human-in-the-loop – in the AWS cloud.

Each of the 10 weeks features a comprehensive lab developed specifically for this Specialization that provides hands-on experience with state-of-the-art algorithms for natural language processing (NLP) and natural language understanding (NLU), including BERT and FastText using Amazon SageMaker.

Applied Learning Project

By the end of this Specialization, you will be ready to

โ€ข Ingest, register, and explore datasets

โ€ข Detect statistical bias in a dataset

โ€ข Automatically train and select models with AutoML

โ€ข Create machine learning features from raw data

โ€ข Save and manage features in a feature store

โ€ข Train and evaluate models using built-in algorithms and custom BERT models

โ€ข Debug, profile, and compare models to improve performance

โ€ข Build and run a complete ML pipeline end-to-end

โ€ข Optimize model performance using hyperparameter tuning

โ€ข Deploy and monitor models

โ€ข Perform data labeling at scale

โ€ข Build a human-in-the-loop pipeline to improve model performance

โ€ข Reduce cost and improve performance of data products

Homepage

https://anonymz.com/?https://www.coursera.org/specializations/practical-data-science

Shipping & Delivery

DIGITAL DELIVERY ONLY

 

 

This is digital productย  THE DOWNLOAD LINK SEND 12-24 HOURS AFTER UPON PURSUASE AND PAYMENT CLEARS"

  • The digital files are uploaded on PCLOUD
  • 12-24 hours delivery time
  • the download links expire after 7 days and need to download them
  • to renew the download link after expiration have one additional fee $5 per product

 

REQUESTS

 

Also we accept requests (in this page) and course exchanges

In Course exchanges we are sending credits only

The credits will be the same price as we can sell course

 

"REFUNDS & RETURNS"

No Refunds on digital product

ONLY EXCHANGE

  • Because of the abuse of the refunds from many customers i don't accept refunds
  • We accept only 1 time exchange with product of the same price
  • if you done mistake on the exchangeable product i don't recognize it as your mistake
  • Exchanges only 3 days after the payment of your digital product. (if abused again i will do it 1 day)