Graduate Certificate in Cloud Infrastructure for Real Estate
-- ViewingNowThe Graduate Certificate in Cloud Infrastructure for Real Estate is a highly relevant course that addresses the increasing industry demand for professionals with expertise in cloud technologies. This certificate course equips learners with essential skills to design, implement, and manage cloud-based infrastructure in real estate.
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⢠Cloud Fundamentals: Understanding cloud computing, its benefits, and service models (IaaS, PaaS, SaaS).
⢠Cloud Infrastructure for Real Estate: Overview of cloud infrastructure specific to real estate, including property management systems, lease administration, and data analytics.
⢠Amazon Web Services (AWS) for Real Estate: Hands-on experience with AWS services, including EC2, S3, RDS, and Lambda, and their applications in real estate.
⢠Microsoft Azure for Real Estate: Exploring Azure services, such as Virtual Machines, Blob Storage, SQL Database, and Azure Functions, and their real estate use cases.
⢠Google Cloud Platform (GCP) for Real Estate: Familiarization with GCP services, such as Compute Engine, Cloud Storage, Cloud SQL, and Cloud Functions, and their real estate applications.
⢠Cloud Security for Real Estate: Best practices for securing cloud infrastructure, protecting data, and complying with regulations in the real estate industry.
⢠Cloud Migration Strategies: Techniques and tools for migrating real estate applications and data to the cloud, including lift-and-shift, re-platforming, and re-architecting.
⢠Cloud Cost Optimization: Methods for reducing cloud costs, such as reserved instances, spot instances, and cost-effective storage options.
⢠Cloud-based Data Analytics for Real Estate: Leveraging cloud infrastructure for real estate data analytics, including data warehousing, business intelligence, and machine learning.
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