Learning AWS Cloud Projects for Data & AI Engineers 5 Projects

Welcome!

By registering with us, you'll be able to discuss, share and private message with other members of our community.

SignUp Now!

voska89

Active member
Joined
Aug 19, 2025
Messages
2,780
1088773c057e512c741a8729c32fcd2d.webp

Free Download AWS Cloud Projects for Data & AI Engineers 5 Projects
Published 10/2025
Created by Pravin Mishra | AWS Certified Cloud Practitioner | Solutions Architect
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 Ch
Level: Intermediate | Genre: eLearning | Language: English | Duration: 15 Lectures ( 4h 0m ) | Size: 1.85 GB

Build a production-ready Lakehouse on AWS (S3, Glue, Athena, Lake Formation) - plus Orchestration, Data Quality & AI.
What you'll learn
Design an AWS Data Lakehouse with S3 + Glue + Iceberg + Athena + Glue Catalog
Apply Data Governance using Lake Formation: LF-Tags/TBAC, PII masking, row-level security
Build a Redshift Serverless warehouse: external tables over Iceberg, star schema, SCD2 with MERGE
Operate batch pipelines: orchestrate runs, handle break/fix, idempotent replays, and backfills
Validate data with quality checks and use auditing/lineage (Lambda+DynamoDB, CloudWatch/CloudTrail)
Produce ML-ready datasets and reproducible training views via Iceberg snapshots/time travel
Requirements
Basic AWS and SQL
Some data engineering familiarity (files, partitions, schemas)
Python/PySpark exposure helps-every step is guided
Description
Build portfolio-grade AWS Cloud projects that mirror real data teams.This course is 100% hands-on. You'll design and operate a production-style Data Lakehouse on AWS, enforce Data Governance with Lake Formation, stand up a Redshift Serverless warehouse with SCD2, run a Batch Ops simulation (break/fix/backfill), and prepare AI/ML-ready datasets-exactly how modern orgs work.You will use S3, Glue (PySpark), Athena, Lake Formation, Glue Catalog, Apache Iceberg, Redshift Serverless (external & managed tables), IAM, Lambda, DynamoDB, CloudWatch/CloudTrail-with a focus on cost, reliability, and auditability.What you'll build (5 connected projects)Project 1 - Lakehouse on AWS: S3 + Apache IcebergLand RAW to S3, transform with Glue, publish Iceberg bronze/silver, implement partitioning & schema evolution, and gate publishes with data quality checks.Project 2 - Data Governance with Lake FormationEnforce tag-based policies (LF-Tags), column masking and row-level filters (Data Cells Filters). Prove access in Athena (Analyst vs Scientist). Add lightweight audit.Project 3 - Data Warehouse on Redshift Serverless (External + SCD2)Expose Iceberg via external tables, build star schema (facts/dims), implement SCD2 with MERGE, and tune performance/cost (sort/dist keys, WLM/workgroup choices).Project 4 - A Day in the Life of a Data Engineer (Batch Ops Simulation)Orchestrate ingest → DQ → publish, handle schema change / late data, rerun safely, backfill last N days, and write a clear incident postmortem.Project 5 - AI/ML Readiness & ServingCurate ML-friendly/feature-like tables, ensure reproducible training sets using Iceberg snapshots/time travel, and (optional) integrate SageMaker/Athena for model workflows.
Who this course is for
Data Engineers / Analytics Engineers building real AWS portfolio projects
AI/ML & Data Scientists who need governed, query-ready, reproducible datasets
Cloud & Platform Engineers implementing secure data platforms on AWS
Architects / Leads who want an end-to-end reference implementation
Homepage

423b519448d4e936894130c701f35288.jpg

Code:
RapidGator
https://rg.to/file/450eeaba0b62c7aa86b2f86d7d43985c/ixoxe.AWS.Cloud.Projects.for.Data..AI.Engineers.5.Projects.part1.rar.html
https://rg.to/file/f379ec1a7bd0ee002420682bd2c552de/ixoxe.AWS.Cloud.Projects.for.Data..AI.Engineers.5.Projects.part2.rar.html
Fikper
https://fikper.com/XzTwiqxEvN/ixoxe.AWS.Cloud.Projects.for.Data..AI.Engineers.5.Projects.part2.rar.html
https://fikper.com/pGCBLG3J2P/ixoxe.AWS.Cloud.Projects.for.Data..AI.Engineers.5.Projects.part1.rar.html
No Password - Links are Interchangeable
 
Back
Top