- **Couchbase DB Integration**: Added support for Couchbase as a flexible, scalable NoSQL database for high-performance data storage and retrieval.
- **Qdrant Integration**: Seamless integration with Qdrant, a vector search engine optimized for neural networks, enhancing the performance of vector search and retrieval.
- **VESPA Integration**: Support for Vespa.ai, enabling state-of-the-art retrieval and serving of large-scale data and vectors.
- **Apache Cassandra Integration**: Integration with Apache Cassandra for distributed, scalable database management.
- **RedisDB Integration**: Added support for RedisDB, allowing fast in-memory data storage and retrieval, perfect for real-time applications.
- **LanternDB Integration**: New integration with LanternDB, providing efficient storage and fast search capabilities for vector data.
- **SingleStoreVectorDB Integration**: Integration with SingleStoreVectorDB, designed for high-performance analytical processing and vector-based retrieval.
- **DeepLake Expansion**: Enhanced support for DeepLake, ensuring even better management of large vector data stores.
🛠 **Advanced Retrieval Systems**:
- **MultiQueryRetrieval**: New feature allowing multiple query retrievals simultaneously, enabling more complex and flexible search strategies.
- **MultiVectorRetriever**: Added support for retrieving vectors from multiple sources simultaneously, enhancing performance and flexibility for diverse use cases.
🛠 General Improvements:
- Streamlined multi-vector store options, improving the overall performance and adaptability of the platform.
- Enhanced data processing capabilities across all modules for optimized handling of large datasets.