Snowflake Development Environment  – Cloud ETL for Snowflake

Through Snowflake ETL, organizations can discover and securely share live governed data across the enterprise, with customers, with business partners, and with any organization on the Snowflake Data Cloud. Snowflake delivers a seamless experience across multiple public clouds and their regions, supporting diverse analytic workloads wherever data lives and users are located. Snowflake helps organizations comply with data privacy regulations, such as GDPR and CCPA, providing cloud data security measures like data encryption in transit and at rest.

This leverages dozens of SaaS applications and disparate data sources in a sprawling, hybrid cloud/on-premise mix. It enables the seamless ingestion of data from these mission-critical data sources into Snowflake.

 

  • INCREMENTAL REPLICATION 

Robust SQL interface supports change-data capture across SaaS, NoSQL and Relational data.

  • FULL DATA DISCOVERY

Intelligent rows can, type detection, relationship exploration and support for static and dynamic data.

  • EXTREME PERFORMANCE

Optimized performance down to the socket level; our drivers offer EXTREME performance.

  • ENTERPRISE-CLASS SECURITY

Advanced security and authentication. Secure TLS / SSL data encryption.

We provide users with a straightforward way to synchronize data between on-premise and cloud data sources with a wide range of traditional and emerging databases. Replicate data to facilitate operational reporting, connect data to BI and decision support analytics, archive disaster recovery data, and much more.

  • Synchronize data with a wide range of traditional and emerging databases, including Snowflake.

  • Replicate Cloud data to RDBMS systems to facilitate operational reporting, BI, and analytics.

  • Archive data for disaster recovery.

Quickly transform all data, anywhere, into meaningful business insights.

Snowflake Data Warehouse enables IT to deliver a cloud-native self-service analytic experience to BI analysts that goes from zero to query in minutes. It outperforms other data warehouses on all sizes and types of data, including structured and unstructured, while scaling cost-effectively past data. 

Running on Snowflake Development Environment is fully integrated with streaming, data engineering, and machine learning analytics. It has a consistent framework that secures and provides governance for all of your data and metadata on private clouds, multiple public clouds, or hybrid clouds.

Cloud data reports & dashboards 

Stand up a public cloud data warehouse in a minute.

Quickly use data already in the cloud by easily spinning up your data warehouse, connecting to your AWS and Azure object storage, and start querying. A unique Burst to Cloud feature moves data and context (security, lineage, governance) from your data center to your choice of public cloud bucket, ready to be queried right away.

Instant access to data Self-service access to any data, anywhere.

Users can provision data warehouses in the private or public cloud, identify data sets, and create visualizations independent of central IT. Snowflake data Warehouse automatically scales up or down as necessary leading to proven price-performance advantages to ensure you stay within budget. 

Snowflake Data warehouse optimization

Increase insight with modern data warehousing.

Migrate challenging workloads, either fully or partially, from the traditional data warehouse to Snowflake Data Warehouse. Deploy use cases built on new data types and accommodate an influx of new users efficiently and affordably. Battle-tested open-source engines such as Impala, Hive LLAP, and Hive on Tez and tools such as Hue and Workload XM provide flexible and fast analytics on structured and unstructured data together, at scale.

Operations & events analytics

Analyze large amounts of events and time-series data.

It’s nearly impossible for traditional data warehouses to analyze a massive volume of events and time-series data originating from machine logs, sensors, and other devices at the edge. Built on Apache Kudu and Druid, CDP Data Warehouse— combined with Snowflake DataFlow—delivers innovation in performance, scale, and ease of use to tackle the new reality of fast-moving data with self-service analytics.


Research & discovery analytics

Correlate vast amounts of unstructured data with relational data.

High-quality predictions call for the discovery of new correlations, patterns, and insights from vast amounts of unstructured, semi-structured, textual, and relational data. Snowflake Data Warehouse along with Solr for full-text search—and CDP Machine Learning drive insight from all your data sources for more accurate predictions. Get in touch with us for Snowflake Implementation.