OpenText Vertica Features
Database (3)
-
Real-Time Data Collection
Collects, stores, and organizes massive, unstructured data in real time
-
Data Distribution
Facilitates the disseminating of collected big data throughout parallel computing clusters
-
Data Lake
Creates a repository to collect and store raw data from sensors, devices, machines, files, etc.
Integrations (2)
-
Hadoop Integration
Aligns processing and distribution workflows on top of Apache Hadoop
-
Spark Integration
Aligns processing and distribution workflows on top of Apache Hadoop
Platform (3)
-
Machine Scaling
Facilitates solution to run on and scale to a large number of machines and systems
-
Data Preparation
Curates collected data for big data analytics solutions to analyze, manipulate, and model
-
Spark Integration
Aligns processing and distribution workflows on top of Apache Hadoop
Processing (2)
-
Cloud Processing
Moves big data collection and processing to the cloud
-
Workload Processing
Processes batch, real-time, and streaming data workloads in singular, multi-tenant, or cloud systems
Data Management (6)
-
Data Integration
Consolidates, Cleanses and Normalizes data from multiple disparate sources.
-
Data Compression
Helps save storage capacity and improves query performance.
-
Data Quality
Eliminates data inconsistency and duplications ensuring data integrity.
-
Built-In Data Analytics
SQL based analytics functions like Time series, pattern matching, geospatial analytics etc.
-
In-Database Machine Learning
Provides built in capabilities like machine learning algorithms, data preparation functions, model evaluation and management etc.
-
Data Lake Analytics
Allows data querying across data formats like parquet, ORC, JSON etc and analyze complex data types on HDFS
Integration (3)
-
AI/ ML Integration
Integrates with data science workflows, Machine Learning and artificial intelligence (AI) capabilities.
-
BI Tool Integration
Integrates with BI Tools to transform data into Actionable Insights.
-
Data lake Integration
Provides speed in data processing and capturing unstructured, semi-structured and streaming data.
Deployment (2)
-
On-Premise
Provides On-Premise deployment options.
-
Cloud
Provides Cloud deployment options (private or public cloud, hybrid cloud).
Performance (1)
-
Scalability
Manages huge volumes of data, upscale or downscale as per demand.
Security (6)
-
Data Governance
Policies, procedures and standards to manage and access data.
-
Data Security
Restricts data access at a cell level, mask or hide parts of cells, and encrypt data at rest and in motion
-
Role-Based Authorization
Provides predefined system roles, privileges, and user-defined roles to users.
-
Authentication
Allows integration with external security mechanisms like Kerberos, LDAP authentication etc.
-
Audit Logs
Provides an audit log to track access and operations performed on databases for regulatory compliance.
-
Encryption
Provides encryption capability for all the data at rest using encryption keys.
Storage (2)
-
Data Model
Stores data tables as columns.
-
Data Types
Supports multiple data types like lists, sets, hashes (similar to map), sorted sets etc.
Availability (3)
-
Auto Sharding
Implements auto horizontal data partitioning that allows storing data on more than one node to scale out.
-
Auto Recovery
Restores a database to a correct (consistent) state in the event of a failure.
-
Data Replication
Copy data across multiple servers through master-slave, peer-to-peer replication architecture etc.
Performance (1)
-
Integrated Cache
Stores frequently-used data in system memory quickly.
Support (2)
-
Multi-Model
Provides support to store, index and query data in more than one format.
-
Operating Systems
Available on multiple operating systems like Linux, Windows, MacOS etc.
Generative AI (2)
AI Text Generation
Allows users to generate text based on a text prompt.
AI Text Summarization
Condenses long documents or text into a brief summary.




