Tag: cloud

  • RAG with locally running LLM

    Sample code to enable running the LLM locally. This will involve using a local LLM instead of OpenAI. Key Changes: To run this code with a local LLM: Important Considerations: Read more

  • Kafka Network Latency Tuning

    Network latency is a critical factor in Kafka performance, especially for applications requiring near-real-time data processing. High network latency can significantly increase the time it takes for messages to travel between producers, brokers, and consumers, impacting overall system performance. Here’s a guide to help you effectively tune Kafka for low network latency: 1. Understanding Network Read more

  • Databricks scalability

    Databricks is designed with scalability as a core tenet, allowing users to handle massive amounts of data and complex analytical workloads. Its scalability stems from several key architectural components and features: 1. Apache Spark as the Underlying Engine: 2. Decoupled Storage and Compute: 3. Elastic Compute Clusters: 4. Auto Scaling: 5. Serverless Options: 6. Optimized Read more

  • Google BigQuery

    Google BigQuery is a fully managed, serverless, and cost-effective data warehouse that enables super-fast SQL queries using the processing power of Google’s infrastructure. It’s designed for analyzing massive datasets1 (petabytes and beyond) with high performance and scalability. Here’s a breakdown of its key features and concepts: Core Concepts: Key Features: Use Cases: In summary, Google Read more

  • Vertex AI

    Vertex AI is Google Cloud’s unified platform for machine learning (ML) and artificial intelligence (AI). It’s designed to help data scientists and ML engineers build, deploy, and scale ML models faster and more effectively. Vertex AI integrates various Google Cloud ML services into a single, seamless development environment. Key Features of Google Vertex AI: Google Read more

  • Google BigQuery and Vertex AI Together

    Google BigQuery and Vertex AI are powerful components of Google Cloud’s AI/ML ecosystem and are designed to work seamlessly together to facilitate the entire machine learning lifecycle. Here’s how they integrate and how you can leverage them together: Key Integration Points and Use Cases: Example Workflow: Code Snippet (Conceptual – Python with Vertex AI SDK Read more