Tag: Platforms

  • Integrating Documentum with an Amazon Bedrock Chatbot API for Product Manuals

    This article outlines the process of building a product manual chatbot API using Amazon Bedrock, with a specific focus on integrating content sourced from a Documentum repository. By leveraging the power of vector embeddings and Large Language Models (LLMs) within Bedrock, we can create an intelligent and accessible way for users to find information within Read more

  • Distinguish the use cases for the primary vector database options on AWS

    Here we try to distinguish the use cases for the primary vector database options on AWS: 1. Amazon OpenSearch Service (with Vector Engine): 2. Amazon Bedrock Knowledge Bases (with underlying vector store choices): 3. Amazon Aurora PostgreSQL/RDS for PostgreSQL (with pgvector): 4. Amazon Neptune Analytics (with Vector Search): 5. Vector Search for Amazon MemoryDB for 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

  • 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