Static dataframes are DEAD! You can enjoy spooky fast analytics with Deephaven's LIVE dataframes.
Enjoy working with a familiar dataframe format that has come to to life! hubs.ly/Q02WcB860#Deephaven#LiveDataframes
Deephaven to serves as the only necessary tool for all layers in a lambda architecture deployment, solving many of the challenges inherent in what is normally considered a complex design.
Learn More: hubs.li/Q02Wk44M0#Deephaven#LambdaArchitecture#RealTimeData
Deephaven is designed to handle big ticking data. The web-client-ui front-end is no exception. We want to interact with as large a ticking data set as possible without compromising the user experience.
Learn more: hubs.li/Q02V8nFx0#BigData#Deephaven#StreamingData
The Deephaven CSV Library is a high-performance, column-oriented, type inferencing CSV parser. Organize data into columns rather than rows, which allows for more efficient storage and retrieval. Learn more:hubs.li/Q02T6gtg0#Deephaven#CSV#Github
The Deephaven user interface (GUI) offers a comprehensive suite of advanced tools to manipulate and transform data and tables with ease. Learn miore: hubs.li/Q02T6bjd0#Deephaven#UI#LiveDataframes
We have designed and implemented a unified table API that offers the same functionality and semantics for both static and dynamic data sources, albeit with additional correctness considerations in the dynamic case.
hubs.li/Q02SdNSH0#Deephaven#LiveDataframes
Deephaven Community Core is a real-time, time-series, column-oriented analytics engine with relational database features. Queries can seamlessly operate upon both historical and real-time data. hubs.li/Q02SdV8x0#Deephaven#LiveDataframes#Github#OpenSource
Using the R client API via R Studio provides a familiar interface for interacting with Deephaven as a live (real-time) backend or a compute cluster for pre-processing historical data.
Learn more: hubs.li/Q02S3jZP0#Deephaven#LiveDataframes#RStudio
The fundamental principle of the Deephaven experience is this:
“Deephaven queries are unaware and indifferent to whether the underlying data source is static or streaming.”
Learn more: hubs.li/Q02SdVpj0#Deephaven#LiveDataframes
Data in the real world is constantly in flux.
Deephaven’s query engine provides a scalable solution to some of the hardest problems in this area, freeing compute and engineering resources to address domain-specific issues.
buff.ly/3MRotFx#Deephaven#LiveDataframes