A Speedy Self-Serving Data Preparation Model for Faster Actionable Insights

Lyftron is perfect for technology and data analyst teams hoping to reduce their cost of data management by up to 75% and query any data with ANSI SQL. The platform provides a view of all data in one place without data movement and enables governed data lake and cloud data warehousing

Overview

Data preparation with Lyftron enables cleaning, structuring and enriching raw data into a desired output for analysis. This functions to clean and transform data from one or more sources to improve its quality prior to its use in business data analysis.

Lyftron delivers a data management platform that combines a modern data pipeline with agility for rapid data preparation. Lyftron helps analytics teams to find a balance between traditional ETL-heavy data preparation and agility to find, connect and use any data without delays. Lyftron connectors automatically convert any source into normalized, ready-to-query relational format and provide search capability on your enterprise data catalog. Lyftron shortens data preparation activities by letting data teams create logical data sets first, evaluate the data and delay the data loading until the data sets are verified or data loading is required.

Eliminate the complexity with Lyftron's preparation simplicity

Velocity

0 +
Data Warehouse Parallel queries

Speed

0 %
Faster results to insights

Cost

0 %
Reduction in cost

Time

0 X
Faster Implementation

Density

0 X
Faster Migration

Simplicity

0 X
Faster learning

Benefits

Robust Data Preparation Architecture

Lyftron speeds up the data preparation process so that the focus is less on cleaning the data and more on gaining insights in the shortest time possible. It’s used to merge different data sources with different structures and different levels of data quality into a clean, consistent format.

Centralized Data Model

With a centralized information system, users only need to go to one place to find the data they seek. But, this isn’t enough to convince most organizations to transition to centralized data management. The collaborative data modeling, self-service data preparation and instant logical data warehousing allow different lives of functions to work together and deliver fast.

Governed Self-Service Data Access

Based on business needs the IT team will build the data pipelines and ETL from the various source systems to the data warehouse or data lake. With Lyftron, users can access all the data from different regions in a data hub instantly, while IT can ensure compliance and reduce risk.

Reliable data for Decision Making

Lyftron Data Preparation model aims to sanitize, advance, and structure the raw data with the goal that it is in the ideal organization and can fill in as a help in dynamic. After processing this data, it provides a strong and solid reason for producing reports, establishing choices, and becoming a single source of truth for driving critical decision making..

Optimization of human talent

Many data driven organizations invest a huge amount of time and resources in data preparation and circulation. With Lyftron, the cost, time and efforts that would be allocated in preparing the data could be redirected to tasks of greater relevance and complexity.

Agility for innovation

With rewarding and handling speed, responses are consequently faster, permitting access to reports rapidly. With this, experiences and data readings should be possible quickly, and with the chance of communicating with different regions, producing incorporation and advancement.

Let’s get personal: See Lyftron on your data in a live Demo

Schedule a free, no-strings-attached demo to discover how Lyftron can radically simplify data lake ETL in your organization.

Other products

START PLANNING YOUR MODERNIZATION

Want more information about how to solve your biggest data warehousing challenges? Visit our resource center to explore all of our informative and educational ebooks, case studies, white papers, videos and much more.

Experience the power of the cloud with our modern data ecosystem

Supported data sources