Tag: 6.5
Rebalance Improvements in Couchbase Server 6.5
Couchbase Server 6.5 makes rebalance more robust, more manageable, and faster.
FTS Performance Improvements in 6.5.0 – Part 2
FTS performance improvements through gRPC for scatter gather , and with numeric range queries and wildcard/regex queries in 6.5.0
A Glimpse of FTS Performance Improvements in 6.5.0 – Part 1
FTS performance improvements on geo queries, fuzzy/edit distance queries, levenshtein automaton, FSTs, bounded rectangle, point distance queries.
A Preview of Couchbase 6.5 N1QL Features
Couchbase 6.5 release is one of the largest release content wise for Couchbase. For N1QL Query service, the focus for us is to bring Enterprise Database functionalities to the Couchbase Database. Expanding N1QL with additional functions to support Enterprise Application...
Get a Bigger Picture with N1QL Window Functions and CTE
This article focuses on a couple of examples of how you can leverage N1QL Window functions and CTE to address two very common business questions.
N1QL query with Self Referencing Hierarchy
A data construct that often appears in business application is the hierarchical data structure. Hierarchy captures the parent-child relationship often between the same object. For instance a company structure captures the reporting line between employees. Business organization captures the relationship...
JSON to Insights: Analyzing US healthcare Data.
“Nothing is certain except for death and taxes.” This isn’t a dataset made with a bed of roses or manicured green grass. A bit more serious. Let’s see if we can quickly learn anything here. The dataset is the following. “name”...
On Par with Window Functions.
This post focuses on Window Functions and it's purpose. How to write a query without using windows functions and with Window functions in Mad-Hatter.
Top Posts
- Couchbase 8.0: Unified Data Platform for Hyperscale AI Applicatio...
- Integrate Groq’s Fast LLM Inferencing With Couchbase Vector...
- Capella Model Service: Secure, Scalable, and OpenAI-Compatible
- Data Modeling Explained: Conceptual, Physical, Logical
- What are Embedding Models? An Overview
- Data Analysis Methods: Qualitative vs. Quantitative Techniques
- What are Vector Embeddings?
- What Is Data Analysis? Types, Methods, and Tools for Research
- Application Development Life Cycle (Phases and Management Models)