TigerData Unveils Tiger Lake to Bridge the Hole Between Postgres and Lakehouse


(Credit: TigerData.com)

TigerData as we speak launched Tiger Lake, an structure it calls “the lacking layer between Postgres and the lakehouse for the age of brokers.” The discharge is a part of the corporate’s effort to make it simpler for builders to work with each real-time and historic knowledge with out counting on fragile pipelines or delayed batch syncing.

Tiger Lake is constructed straight into Tiger Postgres, the corporate’s custom-made model of PostgreSQL designed for real-time and analytical workloads. In keeping with TigerData, the brand new structure allows Postgres to sync with Iceberg-backed lakehouses like AWS S3 in each instructions. The structure at the moment affords native assist for AWS S3 Tables, with integration for different lakehouse codecs anticipated in future updates.

The purpose with Tiger Lake is to present builders an easier solution to construct functions, dashboards, and AI brokers that rely upon each contemporary operational knowledge and long-term analytical insights. TigerData says the structure is supposed to cut back complexity whereas maintaining knowledge techniques versatile and open.

As co-founder and CTO Mike Freedman explains, Postgres has turn out to be the operational coronary heart of many fashionable functions, nevertheless it has remained remoted from the lakehouse layer. “With Tiger Lake, we’ve constructed a local, bidirectional bridge between Postgres and the lakehouse,” he mentioned. “It’s the structure we consider the business has been ready for.”

Many groups at the moment depend on a patchwork of instruments to maneuver knowledge between techniques, usually utilizing Kafka, Flink, or customized scripts. That form of setup may be fragile and costly to keep up. TigerData says Tiger Lake replaces that complexity with built-in, real-time sync throughout Postgres and Iceberg.

(Credit:TigerData.com)

That was a key motivator for Speedcast. “We stitched collectively Kafka, Flink, and customized code to stream knowledge from Postgres to Iceberg—it labored, nevertheless it was fragile and high-maintenance,” mentioned Kevin Otten, Director of Technical Structure at Speedcast. “Tiger Lake replaces all of that with native infrastructure. It’s not simply less complicated—it’s the structure we want we had from day one.”

Past syncing tables, a key characteristic of Tiger Lake is its capacity to assist a two-way movement of knowledge. Operational knowledge strikes into the lakehouse for long-term storage or evaluation, whereas outcomes, like aggregates, ML options, or historic summaries, may be pushed again into Postgres to be used in reside functions.

TigerData emphasizes that one of many major benefits of utilizing Tiger Lake is that it permits customers to keep away from vendor lock-in. It makes use of open codecs like Iceberg, runs on AWS S3, and connects with present ecosystems for machine studying, monitoring, and analytics. Builders don’t must rebuild their stack or swap platforms to make use of it.

This launch additionally displays broader shifts within the knowledge world. Postgres continues to rise in reputation for operational workloads, whereas Iceberg is gaining floor as the usual for open lakehouses. With extra AI-driven apps needing entry to each current context and deep historic perception, Tiger Lake positions itself because the connective tissue between these layers.

For ML groups that want contemporary options, analytics teams working with long-range traits, or builders constructing AI brokers and dashboards, Tiger Lake might make it simpler to attach totally different knowledge techniques with out having to handle advanced integrations.

If we zoom out a bit, the introduction of Tiger Lake aligns with TigerData’s broader focus. The corporate initially launched as Timescale in 2017, gaining recognition for its time-series extensions to PostgreSQL. However because it expanded into vector search, real-time analytics, and AI-native workloads, the staff rebranded to TigerData earlier this 12 months to raised replicate its wider ambitions.

(Shutterstock AI Picture)

“Trendy functions don’t match neatly into conventional database classes. They seize huge streams of knowledge, energy real-time analytics, and more and more depend on clever brokers that cause and act. These workloads—transactional, analytic, and agentic—require a brand new form of operational database,” mentioned Ajay Kulkarni, Co-founder and CEO. “That’s precisely what we’ve constructed at TigerData: a system that delivers pace with out sacrifice.”

TigerData has grown to now serve greater than 2,000 organizations, together with Mistral, HuggingFace, Nvidia, Toyota, Tesla, NASA, JP Morgan Chase, Schneider Electrical, Palo Alto Networks, and Caterpillar. It’s also an AWS Companion with options out there on AWS Market. The corporate has raised over $180 million from backers like Benchmark, NEA, Redpoint, and Tiger World.

The corporate says Tiger Lake is only the start. Future updates will embody the flexibility to question Iceberg catalogs straight, ship analytical outcomes again into Postgres, and broaden assist for Iceberg-based workflows. TigerData can be engaged on efficiency upgrades, together with quicker large-scale inserts and a brand new storage structure designed to make forks and replicas extra environment friendly.

Associated Gadgets

AI One Emerges from Stealth to “Finish the Information Lake Period”

Rethinking Danger: The Position of Selective Retrieval in Information Lake Methods

ETL vs ELT for Telemetry Information: Technical Approaches and Sensible Tradeoffs

 

Related Articles

LEAVE A REPLY

Please enter your comment!
Please enter your name here

Latest Articles