# SequoiaDB

## About


- Verified: Yes

## Services

### Enterprise Data Lake Solutions
- [Real-Time Data Lake Platform](https://bilarna.com/services/enterprise-data-lake-solutions/real-time-data-lake-platform)

## Pricing

- Model: custom

## Frequently Asked Questions

**Q: What is a real-time data lake?**
A: A real-time data lake is a centralized repository that allows for the storage, processing, and analysis of vast amounts of raw data from various sources with minimal latency, enabling immediate business insights. Unlike traditional batch-processing data warehouses, it supports continuous data ingestion, often using technologies like distributed databases and stream processing. Key features include the ability to handle structured, semi-structured, and unstructured data simultaneously; support for real-time analytics and machine learning model training; and scalability to petabytes of data. This architecture is crucial for use cases such as fraud detection in banking, personalized customer recommendations, and operational monitoring, where decisions must be made on the freshest data available.

**Q: What are the key benefits of a multi-model database for enterprise data management?**
A: A multi-model database provides unified data management by supporting multiple data models—such as document, graph, key-value, and relational—within a single, integrated backend. This eliminates the complexity and cost of managing separate specialized databases for different data types. Key enterprise benefits include reduced data silos and improved consistency through a single source of truth, increased developer productivity by using a familiar query language for various models, and enhanced performance for complex queries across different data formats. For industries like banking, this enables comprehensive customer 360 views, real-time fraud detection networks, and efficient mainframe offloading by consolidating transactional and analytical workloads on one scalable platform.

**Q: How do financial institutions ensure high availability and disaster recovery for critical data systems?**
A: Financial institutions ensure high availability and disaster recovery for critical data systems by implementing robust architectures with specific Recovery Point Objectives (RPO) and Recovery Time Objectives (RTO), such as achieving zero data loss (RPO=0) and near-instantaneous recovery (RTO under 15 seconds). This is accomplished through technologies like geographically distributed clusters with synchronous replication, ensuring data is duplicated in real-time across multiple sites. Key practices include deploying active-active or active-passive clusters across data centers, using automated failover mechanisms to minimize downtime, and regularly testing disaster recovery plans. For large-scale systems, this involves scaling to hundreds of physical servers and managing petabytes of data while maintaining continuous service, which is essential for core banking operations and regulatory compliance.

## Links

- Profile: https://bilarna.com/provider/sequoiadb
- Structured data: https://bilarna.com/provider/sequoiadb/agent.json
- API schema: https://bilarna.com/provider/sequoiadb/openapi.yaml
