CodableAI - Managed Vector Database

Empowering Your AI with Advanced Vector Databases

Welcome to CodableAI, where we revolutionize the way you handle and search your data. Our managed vector database service provides robust solutions for document search, enhanced AI context, and more.

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Advanced Features, Designed to Empower Your AI

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Managed Vector Databases

Effortlessly create, manage, and interact with advanced vector databases tailored to your needs.

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High-Performance Indexing

Build and utilize indexes that are optimized for fast and accurate vector searches.

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Secure Data Handling

Enjoy peace of mind with comprehensive encryption for data at rest and in transit.

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About CodableAI

At CodableAI, we specialize in AI-driven data solutions, enabling businesses to leverage the power of vector databases without the complexities of database management. Our mission is to provide secure, scalable, and efficient services that enhance your AI capabilities.

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What Makes CodableAI Different?

Innovative CATCH with LVC Method

At CodableAI, we leverage our proprietary CATCH (Contextual Association Through Conversational Hypervectors) approach enhanced with the LVC (Linked Vector Context) method. This cutting-edge technology allows us to manage and recall the context of conversations, documents, and chat histories more effectively and efficiently than traditional AI models.

The CATCH with LVC method transforms significant parts of conversations, documents, or long text sequences into high-dimensional vector embeddings. These embeddings encapsulate the semantic essence of the text, which are then stored in a vector database that excels in querying data based on similarity.

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Enhanced Contextual Recall

By storing conversation fragments as vector embeddings, our system can efficiently retrieve contextually relevant parts of a conversation, document, or chat history based on semantic similarity.

Full Depth Contextual Search

Our approach preserves the value from full file embeddings paired with context segmentation embeddings, providing rich, relevant, and contentful data from vector searches.

Computational Efficiency

The CATCH approach balances computational efficiency with strong privacy norms, ensuring rapid processing and scalability.

Improved Privacy

By storing only vector representations and not the actual conversation, document, or chat history, we ensure that no sensitive or personally identifiable information is explicitly stored.

Real-time Adaptation

The LVC method adapts to the nature of the text, fine-tuning the mapping function periodically and dynamically adjusting the size and boundaries of text blocks.

Scalability

Our system is designed to scale with your needs, allowing you to handle growing volumes of data efficiently without compromising performance.

Pricing Plans that Fit Your Needs

Pricing is per Index. An index is a managed vector database with all the necessary resources to handle and search your data efficiently.

Development

Storage
50GB
BLOB Data
25GB
Vector Data

Index Usage
1M
Compute Units
50GB
Network Bandwidth
10K
Reads
10K
Writes

Basic

Storage
100GB
BLOB Data
50GB
Vector Data

Index Usage
2.5M
Compute Units
100GB
Network Bandwidth
50K
Reads
50K
Writes

Professional

Storage
200GB
BLOB Data
100GB
Vector Data

Index Usage:
15M
Compute Units
200GB
Network Bandwidth
100K
Reads
100K
Writes

Enterprise

Storage
500GB
BLOB Data
200GB
Vector Data

Index Usage:
75M
Compute Units
500GB
Network Bandwidth
500K
Reads
500K
Writes

Frequently Asked Questions about Our Service

A Compute Unit (CU) is a measure of the compute capacity required to perform operations in the vector database. It encompasses various resources such as CPU, memory, and I/O operations, providing a comprehensive way to quantify the workload.
The cost of embeddings in terms of CUs can vary based on the complexity and size of the data. On average, embedding operations may consume between 0.5 to 1 CU per request. For specific rates, please refer to our detailed pricing documentation or contact our support team.
An index in our service is a managed vector database that includes all necessary resources for efficient data handling and searching. It allows you to store and retrieve data vectors quickly and accurately.
Your data's security is our top priority. We use industry-leading encryption methods for data at rest and in transit, ensuring that your data remains secure and confidential at all times.
We adhere to industry-leading data privacy standards and comply with regulations such as GDPR and CCPA, ensuring that your data is handled with the utmost care and security.
Yes, our service is designed to scale with your needs. You can easily upgrade or downgrade your plan based on your usage requirements, ensuring that you only pay for what you need.
Our pricing plans are designed to scale with your usage, offering competitive rates for higher storage and compute requirements. Custom enterprise solutions are also available.
We provide comprehensive support and tools to help you migrate your existing data into our managed vector database, ensuring a smooth transition without data loss.
Yes, our platform provides APIs that allow seamless integration with your current systems and workflows, enabling you to enhance your data search capabilities.
Our service supports various file types including text, PDF, and static images, enabling a wide range of applications and use cases.
Getting started with CodableAI is easy. Simply sign up for an account, choose your plan, and create your first index. Our intuitive interface and detailed documentation will guide you through the process.
Vector databases store data as high-dimensional vectors that represent the semantic meaning of the content, enabling efficient similarity searches and enhanced AI-driven data retrieval.
Our vector search leverages semantic understanding, providing more accurate and relevant search results compared to keyword-based searches.
Industries such as e-commerce, healthcare, finance, legal, and more can leverage vector databases for improved search capabilities, personalized recommendations, and advanced data analysis.
The CATCH with LVC method improves contextual recall and search precision by transforming significant text parts into high-dimensional vectors, which are stored and queried for semantic similarity.
A managed service offers ease of use, scalability, robust security, and eliminates the complexities of database management, allowing businesses to focus on leveraging data insights.
We offer comprehensive support to all our customers. Our support team is available 24/7 to help you with any issues or questions you may have. You can reach out to us via email, phone, or live chat.