Facilitate quality data storage for data science applications, enhancing insights and customer experiences.
Many organizations are using data science and predictive analytics to gain insights from their data and improve customer experiences. However, this can only be achieved if the data stored is of high quality and various AI and ML models are built on top of it. Cloud databases are a key component of data engineering and play a crucial role in generating value for organizations.
We’ve listed the products and solutions that commonly address the Data Science and Advanced Analytics use case below.
AWS provides diverse cloud services suitable for various data workloads.
Google offers serverless database services for flexible resource usage.
Couchbase Capella is a multi-modal NoSQL database focusing on non-relational databases.
MongoDB Atlas is a document-based database with a unified interface for CRUD operations.
Redis is an in-memory database specialized for real-time and transactional use cases.
Cloudera provides services for organizing, analyzing, and centralizing data.
Azure offers managed services with integrated data management and security.
FaunaDB is a NoSQL database that combines the best of relational and NoSQL architectures.
Snowflake supports analytics, data lakes, and data warehouses with automated management features.
MariaDB is a versatile fork of MySQL, supporting transactional, analytical, and hybrid workloads.
Supabase is a PostgreSQL relational database with real-time REST API and serverless functions.
Teradata specializes in data warehousing and analytical use cases with advanced analytics.
Oracle offers autonomous databases with advanced tuning and management.
PlanetScale offers a MySQL-compatible, serverless database with customizable features.
MarkLogic is a NoSQL database for transactional use cases.
Databricks provides an open-source lakehouse storage and SQL capabilities for data lakes.
CockroachDB is a cloud-native, distributed SQL database with auto-sharding for handling unpredictability.
Customize these feature priorities in Taloflow and get expert ratings for 15 different vendors and solutions, including None.
Feature | Dimensions | Description | Priority |
---|---|---|---|
AI and ML Library |
|
AI and ML libraries to help with data exploration and preparation. | Critical |
API Access |
|
Access data via APIs with JDBC and ODBC connectors. | Critical |
Activity Monitoring |
|
Monitor user activity and alerts when unusual behavior is detected. | Critical |
Data Encryption |
|
Secure data with encryption in transit or when stored in the cloud. | Critical |
Data Management |
|
Provides a REST API for accessing and updating data in the database. | Critical |
Data Masking |
|
Selectively obscure column data from users while still allowing access to the column. | Critical |
Data Mining |
|
Extend SQL or stored procedures for data mining purposes. | Critical |
Data Virtualization |
|
Support available in the DBMS for data virtualization tools so that it can act as a hub for data collection. | Critical |
Group-Level Security |
|
Group users by requirements and enforce security mechanisms for them. | Critical |
Identity Management |
|
Natively provides identity management or integrates with identity management tools for authentication and access control. | Critical |
Key Management |
|
Natively provides key management or integrates with key management tools for creating, managing and controlling cryptographic keys. | Critical |
ML Model Creation |
|
Suppors creating and executing machine learning models. | Critical |
Query Virtualization |
|
Query data managed in another DBMS or file system. | Critical |
RBAC |
|
Authorize and restrict access to specific database functions based on the user's role within the organization. | Critical |
Transport Layer Security |
|
Enables transport layer security between database servers and client applications. | Critical |
User Authentication |
|
Verify the identity of users attempting to access database instances. | Critical |
Alerting |
|
Give timely wanings so that the problems can get resolved quickly. | Important |
Monitoring |
|
Monitor and alert on potential issues, including performance issues. | Important |
Operational Reporting |
|
Provides reports on day-to-day activities on the DBMS. | Important |
Automated Data Mart |
|
Supports managing an ad hoc data mart or data warehouse setup, control and deletion in support of an internal, private cloud computing model. | Nice To Have |
Database Portability |
|
Allows moving of the DBMS instance to another instance. | Nice To Have |
Industry Specific Data Models |
|
Supports industry specfic data models for industries like finance, healthcare, retail, etc. | Nice To Have |
Taloflow does not guarantee the accuracy of any information on this page including (but not limited to) information about 3rd party software, product pricing, product features, product compliance standards, and product integrations. All product and company names and logos are trademarks™ or registered® trademarks of their respective holders. Use of them does not imply any affiliation or endorsement. Vendor views are not represented in any of our sites, content, research, questionnaires, or reports.