Category: gcp

  • Stream Data Processing in GCP

    Stream Data Processing in GCP Google Cloud Platform (GCP) offers a robust set of services designed to handle continuous, real-time data streams for various analytics and event-driven applications. Core GCP Services for Stream Data Processing: 1. Cloud Pub/Sub The foundation for reliable and scalable stream processing pipelines on GCP. It’s a fully managed, real-time messaging Read more

  • GCP Specific Tech Stacks for AI Context Management

    GCP Specific Tech Stacks for AI Context Management Sample Tech Stack 1: For a Large-Scale NLP Application with Knowledge Graph Integration on GCP Context Representation & Storage Knowledge Graph: Google Cloud Knowledge Graph Vector Embeddings: Vertex AI Feature Store Consider Compute Engine or Vertex AI Workbench for open-source libraries (FAISS, Annoy, ChromaDB). Explore Vertex AI Read more

  • Advanced Java Garbage Collection Tuning

    Advanced Java Garbage Collection Tuning Optimizing the JVM’s garbage collection (GC) is a critical aspect of ensuring high performance, low latency, and stability for Java applications, especially those handling significant loads or requiring stringent response times. 1. Understanding Garbage Collection Goals Before tuning, you need to define your application’s performance goals. The primary goals of Read more

  • GCP AI Offerings – Details & Use Cases

    GCP AI Offerings – Details and Use Cases GCP AI Offerings – Details and Use Cases Google Cloud Platform (GCP) offers a comprehensive suite of AI and Machine Learning services, ranging from pre-trained APIs to platforms for building and deploying custom models, including cutting-edge Generative AI capabilities. Generative AI Services: Vertex AI Gemini Models Access Read more

  • AWS DynamoDB vs Azure CosmosDB vs GCP Bigtable & Firestore

    AWS NoSQL vs Azure NoSQL vs GCP NoSQL AWS NoSQL vs Azure NoSQL vs GCP NoSQL Feature Amazon DynamoDB Azure Cosmos DB Google Cloud Firestore Google Cloud Bigtable Data Model Primarily Key-Value and Document Multi-model: Document, Key-Value, Wide-Column (Cassandra API), Graph (Gremlin API), Table (Table API) Document-oriented Wide-column (Column-family) Scalability Highly scalable, automatic partitioning (Partitioning) Read more

  • Top 20 GCP Cloud Interview Questions and Detailed Answers

    Top 20 GCP Cloud Interview Questions and Detailed Answers I. Core GCP Services & Concepts 1. Explain Google Cloud Platform (GCP) in your own words. What are its key differentiators compared to AWS and Azure? GCP is Google’s suite of cloud computing services, built on their global infrastructure. Key differentiators include its high-performance global network, Read more

  • Cloud Computing Market Share: AWS vs. Azure vs. GCP

    Cloud Computing Market Share: AWS vs. Azure vs. GCP (April 2025) Cloud Computing Market Share: AWS vs. Azure vs. GCP (April 2025) As of April 26, 2025, the cloud computing landscape continues to be dominated by a few key players. While the market is dynamic, here’s a snapshot of the current standing of AWS, Azure, Read more

  • Building Agentic AI Applications on Google Cloud Platform (GCP)

    Google Cloud Platform (GCP) offers a rapidly evolving suite of tools and services for building agentic AI applications – intelligent systems capable of autonomous action, planning, memory, and interaction with their environment. Here’s a detailed overview of key GCP services and concepts, along with relevant links, formatted for your WordPress site. Core Foundation Models Agent Read more

  • Comparative Analysis: Building Generative AI Applications in AWS, GCP, and Azure

    Generative AI is a rapidly advancing field, and the major cloud providers – Amazon Web Services (AWS), Google Cloud Platform (GCP), and Microsoft Azure – are heavily investing in services and infrastructure to support its development and deployment. This analysis compares their key offerings for building generative AI applications. 1. Foundation Models and Model Hubs Read more

  • The Evolving Landscape of Microservices in AWS, GCP, and Azure

    Microservices architecture has become a cornerstone of modern cloud-native application development, offering scalability, resilience, and independent deployability. AWS, Google Cloud Platform (GCP), and Microsoft Azure have all embraced and significantly evolved their services to support and enhance microservices adoption. 1. Core Container Orchestration Provider Orchestration Service Evolution and Key Trends AWS Amazon Elastic Kubernetes Service Read more