AWS / Treehouse Software Webinar: Moving Mainframe Data to Snowflake for Enterprise Wide Analytics


In this episode of the AWS Mainframe Modernization Broadcasting Channel webinar series, you will discover how enterprises are breaking down data silos by migrating mainframe data to Snowflake on AWS. In a real-world case study, see how Treehouse Software handles the complexities of VSAM, Db2, and Adabas data structures to deliver clean, queryable data, ready for modern analytics. Find out how the Treehouse Dataflow Toolkit (TDT) works with virtually any mainframe data replication tool to provide a fully automated approach for rapid and comprehensive data transfer from Kafka streaming pipelines to Snowflake and other Analytics/AI/ML-friendly targets on AWS–AI-ready, with all target resources automatically created.

View the webinar recording here…


Contact Treehouse Software today to request a product demonstration or discuss your data modernization needs…

____Treehouse_AWS_Badges

Join Treehouse Software for a new episode of the AWS Mainframe Modernization Broadcasting Channel!


Discover how enterprises are breaking down data silos by migrating mainframe data to Snowflake, enabling unified analytics across legacy and modern systems. In a real-world case study, see how Treehouse Software handles the complexities of VSAM, Db2, and Adabas data structures to deliver clean, queryable data ready for modern analytics.

Meet your presenters…

Sunil Divvela is a Worldwide Specialist Solutions Architect for Mainframe Modernization at AWS. He partners with customers and partners to accelerate their mainframe modernization journeys, leading initiatives from portfolio assessment through post-migration support leveraging Generative AI and Agentic AI. Prior to AWS, Sunil served as a Senior Technology Architect at Infosys, where he led multiple mainframe transformation programs.

Ellie Savova is a Cloud Solutions Architect at Treehouse Software, where she develops and architects AWS-cloud-native SaaS applications focused on enterprise data migrations. She works closely with customers to design secure, scalable cloud-native solutions across hybrid environments, integrating legacy data systems with modern analytics platforms. Ellie also leads customer implementations and innovation initiatives focused on cloud architecture, security, automation, and next-generation data-platform capabilities.

Register now using the QR code above, or HERE!


____Treehouse_AWS_Badges

Treehouse Software enables Adabas data replication on Snowflake and AWS without disrupting critical work on the mainframe

by Joseph Brady, Director of Business Development at Treehouse Software, Inc.and Dan Vimont, Director of Innovation at Treehouse Software, Inc.

The Adabas mainframe database has been around since the early 1970s, and is still heavily used by government, banking, insurance, and other large enterprises worldwide. Most of these organizations have accumulated large volumes of mission critical and historical data stored in their legacy mainframe Adabas databases over the years. Their Adabas systems can support a broad range of services and programs, most of which require accurate, up-to-date, and secure data.

Having specialized in tools and services complementary to Adabas/Natural applications since 1982, Treehouse has encountered and successfully addressed countless unique situations in customers’ Adabas environments. In the mid-1990s, Treehouse Software responded to growing customer needs for Adabas-to-RDBMS data replication CDC technology with our renowned tRelational/DPS product set. Treehouse has always been a proponent of maintaining the coexistence of legacy mainframe Adabas systems and newer technologies, so our software is perfectly designed for those scenarios. As a matter of fact, many large enterprises are still using Treehouse data replication technology right alongside their mainframe Adabas databases after decades in production.

Entering the brave new world of Cloud Computing, Analytics, AI, and ML…

In recent years, Treehouse has been receiving a growing number of inquiries from mainframe Adabas customers wanting to quickly tap into today’s advanced Cloud-based Analytics/AI/ML technologies, such as Snowflake Amazon Redshift, and Amazon Athena/S3. The customers’ data science teams are eagerly awaiting the arrival of critical data from their mainframe databases to supercharge their predictive analytics and generative AI frameworks afforded by an ever-expanding array of AI/ML Cloud-based tools. Additionally, many of these enterprises require a hybrid architecture that allows legacy mainframe environments to continue concurrently with data engineering work in the Cloud. 

Treehouse Software answers the call… again!

Treehouse brings to market Treehouse Dataflow Toolkit Direct (TDT-DIRECT for Adabas), a self-service, fully automated offering that delivers bulk-loading and CDC of mainframe z/OS and VSE Adabas data to Snowflake and other AWS targets. And of course, this is all accomplished without disrupting the existing critical work on the legacy system. Unlike traditional tools that require extensive setup and orchestration, TDT-DIRECT for Adabas intelligently determines what needs to be configured and takes care of it automatically. From schema detection to the creation of all required target resources, TDT-DIRECT for Adabas ensures that everything is in place before the first row of data arrives.

TDT-DIRECT for Adabas is a data replication solution that leverages Treehouse Software’s renowned and rock-solid Adabas data replication technology for:

  • rapid Adabas data loading and CDC to AWS and Snowflake

  • AI-ready data delivery to the latest analytics, AI, and ML tools

  • swift ROI

  • speedy evaluation of various targets on AWS

Adabas connectivity to Snowflake and AWS

For customers who want a simple and inexpensive way to quickly move their Adabas data to Snowflake and AWS, Treehouse’s trusted and proven Adabas data replication capabilities provide complete data elements for automated transfer to AWS targets.

TDT-DIRECT for Adabas is a serverless (Lambda-based) application that goes beyond basic data transfer. It’s an automated, end-to-end solution that prepares the full infrastructure needed for data loading. Its advanced crawler functions automatically prepare all target resources requires for data transfer as seen in the following example:

Without TDT-DIRECT’s fully automated approach, customers could spend months designing and creating target resources like delta tables, views, and schemas. 

Fast and easy implementation…

Customers are happy to discover that Treehouse provides highly-detailed CloudFormation Templates which automate and accelerate the process of installing and configuring the complete TDT-DIRECT application (including AWS Lambda functions and a number of other AWS resources) in your AWS account(s). The TDT-DIRECT CloudFormation Templates create stacks consisting of all principal framework components, along with related IAM policies and roles which are carefully engineered to comply with “best practices” (such as a “least privileges” approach to permissions).

The TDT-DIRECT CloudFormation Templates also optionally provide for automatic creation of a VPC, its subnets, and all required standard VPC-oriented resources, as well as optional creation of a source database cluster (consisting of either a sample database provided by Treehouse for a quick trial/POC, or your own sample database data).

Simply put, TDT-DIRECT is a Cloud-native, turnkey solution that can eliminate months or years of research and development time and costs, and allow customers to be up and running in minutes.

Visit Treehouse Software on the AWS Marketplace for all of our Cloud offerings…

Treehouse Dataflow Toolkit (TDT) and TDT-DIRECT are Copyright © Treehouse Software, Inc. All rights reserved.

____Treehouse_AWS_Badges

Contact Treehouse Software for a TDT-DIRECT for Adabas Demo Today!

Contact us today to schedule your session! 

See how Treehouse Software is helping an auto manufacturer replicate mainframe data to Snowflake on AWS without disrupting work on the legacy system

When Treehouse was approached by a large auto manufacturer to provide a solution to migrate their mainframe data from disparate source databases to Snowflake on AWS, the Treehouse Cloud engineering team was excited to take on the task. It wasn’t long before our experts drew upon their decades of mainframe expertise, along with deep skills and multiple AWS certifications, to come up with a prototype of the Treehouse Dataflow Toolkit (TDT). A quick proof of concept (POC) demonstrated that TDT worked exactly as expected and was the perfect tool for taking mainframe data that was pumped into Amazon MSK (Managed Streaming for Kafka) by Rocket Data Replicate and Sync (RDRS) and landing it into Snowflake on AWS.

TDT accelerated the customer’s move to Snowflake on AWS, because it is much more than a mere “connector” and goes beyond basic data transfer. It’s an automated, end-to-end solution that prepares the full infrastructure needed for Snowflake data loading. Its advanced crawler functions automatically prepare landing tables, views, and staging infrastructure for Snowflake. Additionally, TDT can generate optional archiving infrastructure and create Apache Iceberg tables for enhanced data management.

Treehouse Dataflow Toolkit (TDT) is Copyright © Treehouse Software, Inc. All rights reserved.

____Treehouse_AWS_Badges

For more information, contact Treehouse Software today!

Treehouse Software’s TDT-DIRECT for Adabas enables rapid data replication from mainframe z/OS and VSE Adabas to Snowflake and Analytics/AI/ML-friendly targets on AWS

by Joseph Brady, Director of Business Development at Treehouse Software, Inc.and Dan Vimont, Director of Innovation at Treehouse Software, Inc.

 

Do you need a fast and easy way to replicate your mainframe z/OS and VSE Adabas data to Snowflake and Analytics/AI/ML-friendly targets on AWS? At Treehouse Software, we have always been proponents of maintaining the coexistence of legacy systems and newer technologies. This is why we support the idea of “Stay and go… at the same time!” and have developed time-tested solutions that allow bulk-loading and CDC of Adabas data into Snowflake and AWS, without disrupting the existing critical work on the legacy system. Our Treehouse Dataflow Toolkit Direct (TDT-DIRECT for Adabas) offers a straightforward and automated solution for rapid replication of Adabas data on Snowflake and AWS. Unlike traditional tools that require extensive setup and orchestration, TDT-DIRECT for Adabas intelligently determines what needs to be configured and takes care of it automatically. From schema detection to the creation of all required target resources, TDT-DIRECT for Adabas ensures that everything is in place before the first row of data arrives.

Treehouse Software has been in business since 1983, focusing on software that is complementary to  Software AG’s Adabas and Natural in the areas of data replication, security, control, auditing, performance enhancement, etc. Our Adabas data replication products have been used in many large enterprises worldwide for decades. With this deep experience, we are excited to offer TDT-DIRECT for Adabas, a data replication solution that leverages Treehouse Software’s renowned Adabas data replication technology for:

  • rapid Adabas data transfers (both bulk-loading and CDC) to AWS and Snowflake

  • access to the latest analytics, AI, and ML tools

  • swift ROI

Connectivity to Snowflake and AWS

For customers who want a simple and inexpensive way to quickly move their Adabas data to Snowflake and AWS, Treehouse’s trusted and proven Adabas data replication capabilities provide complete data elements for automated transfer to AWS targets.

The following example explains how TDT-DIRECT for Adabas accelerates a customer’s move to Snowflake on AWS. Snowflake’s unique architecture allows it to handle large-scale analytics workloads efficiently and reliably, while still offering a relational-style view of the data. The underlying framework enables businesses to run both bulk-load and CDC transactions with impressive scalability while maintaining the familiar relational format for users.

TDT-DIRECT for Adabas is a serverless (Lambda-based) application that goes beyond basic data transfer. It’s an automated, end-to-end solution that prepares the full infrastructure needed for Snowflake data loading. Its advanced crawler functions automatically prepare landing tables, views, and staging infrastructure for Snowflake. Additionally, TDT-DIRECT can generate optional archiving infrastructure and create Apache Iceberg tables for enhanced data management.

Without TDT-DIRECT’s fully automated approach, customers would spend months designing and creating target resources like delta tables, views, and schemas. Additionally, TDT-DIRECT for Adabas is delivered via CloudFormation templates, which can be deployed quickly and is preconfigured for immediate use — saving time, money, and configuration headaches.

Built for Scalability and Reliability

  • TDT-DIRECT for Adabas aligns with AWS’s and Snowflake’s best practices, ensuring security and performance. Its cloud-native, fault-tolerant design provides a future-proof solution that scales seamlessly with your growing data needs.

  • With TDT-DIRECT for Adabas, you can streamline data loading to Snowflake and AWS, enabling efficient, automated integration with minimal setup and maximum reliability.

  • TDT-DIRECT for Adabas is fully customizable to meet your organization’s specific needs (after all, TDT Lambdas are YOUR Lambdas).

Visit Treehouse Software on the AWS Marketplace for all of our Cloud offerings…

Treehouse Dataflow Toolkit (TDT) and TDT-DIRECT are Copyright © Treehouse Software, Inc. All rights reserved.

____Treehouse_AWS_Badges

Contact Treehouse Software for a TDT-DIRECT for Adabas Demo Today!

Contact us today to schedule your session! 

TREETIP: Auto scaling for massive data loading into Snowflake, Amazon Redshift, etc. with TDT-DIRECT

by Joseph Brady, Director of Business Development at Treehouse Software, Inc.

Treehouse Dataflow Toolkit Direct (TDT-DIRECT) is a turn-key microservices-based offering that assures auto scalable, highly available, event driven bulk-load and Change Data Capture (CDC) transfers from legacy data sources to data analytics platforms like Snowflake, Amazon Redshift, etc.

This blog focuses on how TDT-DIRECT leverages the auto scaling capabilities of its Lambda microservices. These Lambdas are highly efficient compute services used to process TDT-DIRECT’s data transfer. There is no need to worry about throughput volume with TDT-DIRECT because the Lambdas scale automatically, with new instances spun up as needed  to handle increasing data transfer loads. 

Instantaneous auto scaling…

For massive amounts of data, TDT-DIRECT takes advantage of the auto scaling and parallelizing of the Lambda framework. This allows many parallel selects to all run at once, thus loading large tables with minimal latency.

And that’s not all! Here are TDT-DIRECT’s other key differentiators from standard “connectors” on the market:

  • Automatic creation of target resources – For example, TDT-DIRECT automatically prepares landing tables, views, and additional proprietary staging infrastructure for Snowflake. Without TDT-DIRECT’s fully automated approach, a customer can spend months designing and creating target resources, such as delta tables, views, schemas, etc.
  • Ease of delivery/implementation – TDT-DIRECT is delivered via CloudFormation templates, which automate and accelerate the process of installing and configuring the complete TDT-DIRECT application (including AWS Lambda functions and numerous other AWS resources, all wrapped in a well-architected security framework) in your AWS account. This allows your site to be up and running with a fully preconfigured implementation of your new data transfer pipeline in minutes.
  • Adherence to best practices TDT-DIRECT is built in alignment with AWS and Snowflake best practices, ensuring proper security and performance. The fault-tolerant design of the Cloud-native application provides for a robust, future-proof architecture.
  • Adaptability to evolving Cloud ecosystems – In today’s fast-evolving cloud world, TDT-DIRECT’s flexible design ensures lasting compatibility with emerging technologies. As AWS and Snowflake introduce new features, the application readily integrates them, staying ahead of the curve, keeping your data pipelines modern and efficient.

Simply put, TDT-DIRECT is a Cloud-native, self-contained, turn-key solution that will eliminate months or years of development time and costs.

Treehouse Dataflow Toolkit (TDT) and TDT-DIRECT are Copyright © 2024 Treehouse Software, Inc. All rights reserved.

____Treehouse_AWS_Badges

Contact Treehouse Software for a TDT-DIRECT Demo Today!

Contact us today to schedule your session! 

Treehouse High Availability Framework Service Ensures Minimal Downtime for Customers using Rocket Data Replicate and Sync on AWS

by Joseph Brady Director of Business Development at Treehouse Software, Inc. and Dan Vimont, Director of Innovation at Treehouse Software, Inc.

Treehouse Software customers are using Rocket Data Replicate and Sync (RDRS) to enable mission-critical Mainframe-to-AWS data replication pipelines.  Some of these production pipelines are providing vital near-real-time synchronization between source and target, and thus can’t afford any significant downtime in the event of failure.  So it’s only natural that a number of our customers have been asking for advice in setting up a high availability (HA) configuration for their RDRS components that run on AWS EC2 instances.  As a result, Treehouse Software provides an HA Framework Professional Services engagement, in which our expert Cloud engineers help customers with delivery, setup, rapid deployment, and customization of an RDRS HA framework.  The HA Framework seamlessly and quickly provides for a Failover EC2 instance to automatically pick up RDRS processing should the Primary instance (running in another Availability Zone) go down.

Setting Up Automatic Failover with EC2 Instances in Different Availability Zones

The core components of the RDRS HA Framework consist of two EC2 instances running in different Availability Zones:  1) a Primary EC2 instance and 2) a Failover EC2 instance.  Both identically-configured EC2 instances are attached to a shared working-storage file system (either an EFS or FSx volume), which allows the Failover instance to seamlessly and quickly pick up RDRS processing should the Primary instance suddenly become unavailable.

A Step Function Automates the Failover Process

In the event of failure of the Primary instance, the HA Framework calls for automatic triggering of a Step Function for reliable failover processing, with steps that include the following:

  • Verify that the Primary instance is unavailable (The RDRS service cannot be active on both instances simultaneously, so this verification is vital.).
  • Redirect all network traffic from the Primary instance to the Failover instance (via Route 53).
  • Start RDRS processing on the Failover instance.

Use a Step Function to Automate the Restoration Process

After operations personnel have completed recovery of the Primary EC2 instance, another Step Function may be manually triggered to reliably transfer RDRS processing back to the Primary instance.

AWS services utilized in the complete recommended framework include Step Functions, Lambda Functions, EventBridge rules, CloudWatch alarms, SNS topics, a Route 53 Private Hosted Zone, and more.  


For more information on Treehouse’s High Availability Framework Professional Service and our other offerings, visit Treehouse Software on the AWS Marketplace.


Interested in discussing your project? Contact us today…

Comprehensive Connectivity and Rapid Data Flow for Enterprise Customers with Treehouse Software and Confluent

by Joseph Brady, Director of Business Development at Treehouse Software, Inc., Dan Vimont, Director of Innovation at Treehouse Software, Inc., and Ram Dhakne, Staff Solutions Engineer at Confluent

Enterprise customers who are planning to modernize their data on Cloud environments are stating their needs clearly… We want a way to unify and manage data from our applications, databases, data warehouses, etc., which have long operated in silos.”

These customers also have a crucial need to tap into today’s advanced data analytics platforms, such as Snowflake, Amazon Redshift, and Amazon Athena/S3, where an ever-expanding array of machine learning and artificial intelligence (ML/AI) tools are available to generate vital insights from their enterprise’s data.  Data science teams are eagerly awaiting the arrival of critical data from their enterprise’s data sources to supercharge their predictive analytics and generative AI frameworks.

Data Transfer + Unlimited Scaling and Storage

To address the need for rapid, high-volume data transfer from source DBs to Analytics/ML/AI-friendly platforms, Treehouse Software has recently gone to market with two powerful new offerings: Treehouse Dataflow Toolkit (TDT) for Mainframe Data Sources and TDT-DIRECT for Non-Mainframe Data Sources. These Cloud-native, fully automated, turn-key solutions work hand-in-hand with the premiere data streaming platform, Confluent to empower enterprise customers to rapidly migrate data – both bulk-load and change data capture (CDC) – to Snowflake, Amazon Redshift, Amazon Athena/S3, and Amazon S3 Express One Zone.

The TDT offerings are much more than mere “connectors”, providing an innovative and robust Lambda-based microservices infrastructure that automatically generates all target resources required for data transfer. Without TDT-DIRECT’s fully automated approach, a customer can spend months designing and creating target resources, such as delta tables, views, schemas, etc.

TDT-DIRECT extracts data directly from a source DB and loads it via Confluent into Snowflake’s “delta tables”, which inherently retain the entire history of source data ever since the source-to-target synchronization began (perfect for time-based trend/predictive/prescriptive analytics).

Figure 1: TDT-DIRECT automatically creates all Snowflake target structures (schemas, history tables, current views, user views, stages, and file formats), and Confluent delivers the data (e.g., insert, update, delete transactions) via bulk-load and CDC.

Leveraging AWS CloudFormation for ease of implementation…

For ease of implementation, TDT is delivered via CloudFormation templates, allowing customer sites to be up and running with a fully preconfigured implementation of a new data transfer pipeline in minutes. The TDT CloudFormation Templates create stacks consisting of all principal framework components, along with related IAM policies and roles which are carefully engineered to comply with “best practices” (such as a “least privileges” approach to permissions).

The TDT CloudFormation Templates also optionally provide for automatic creation of a VPC, its subnets, and all required standard VPC-oriented resources, as well as optional creation of a source database cluster (consisting of either a sample database provided by Treehouse for a quick trial/POC, or your own database and data).

The Confluent Advantage…

Treehouse Software’s TDT solutions fully support data transfers from mainframe and non-mainframe data sources to Confluent Cloud, which offers enhanced productivity, improved scalability, minimized downtime, and much more—all while reducing total cost of ownership. Confluent Cloud brings customers a Fully Managed Kafka Service and Complete Pre-Built Ecosystem that includes:

  • Elastic Scaling: Scale up and down quickly to meet fluctuating customer demand, without the ops burden that comes with scaling your data infrastructure.
  • Infinite Storage: Enable powerful use cases by never having to worry about Kafka retention limits again, while only paying for the storage used
  • Built-in Resiliency: Ensure high availability and offload Kafka ops with 99.99% uptime SLA, multi-AZ clusters, and no-touch Kafka patches
  • Serverless stream processing for Apache Flink®: Flink is the de facto industry standard for stream processing. Confluent Cloud for Apache Flink provides a cloud-native, serverless service for Flink that enables simple, scalable, and secure stream processing that integrates seamlessly with Apache Kafka®. Your Kafka topics appear automatically as queryable Flink tables, with schemas and metadata attached by Confluent Cloud.

A Powerful, Combined Solution…

Treehouse Software and Confluent provide a comprehensive framework that allows the target platform to constantly accrue the most current source data, which is ideally suited for data scientists looking to do trend analysis, predictive analytics, ML, and AI work. 

Treehouse Dataflow Toolkit (TDT) and TDT-DIRECT are Copyright ©Treehouse Software, Inc. All rights reserved.

____Treehouse_AWS_Badges

Contact Treehouse Software for a TDT Demo Today!

Treehouse Software offers SIs and consulting companies free “deep dive” learning sessions to educate your team on the value of bringing these turn-key data transfer solutions your customers.

Contact us today to schedule your session! 

Treehouse Dataflow Toolkit (TDT) Brings Added Value to Systems Integrators and Enterprise Consulting Companies

TDT_AI_ML

With decades of experience, Treehouse Software has helped systems integrators (SIs) and enterprise consulting companies streamline the migration of mainframe data to modern Cloud and Open Systems platforms—leveraging automation and innovation to accelerate time to value.

Treehouse Software is excited to introduce two powerful new offerings: Treehouse Dataflow Toolkit (TDT) for Mainframe Data Sources and TDT-DIRECT for Non-Mainframe Data Sources. These Cloud-native, fully automated, turn-key solutions empower enterprise customers to rapidly migrate data – both bulk-load and change data capture (CDC) – to advanced cloud and analytics targets such as Amazon Redshift, Snowflake, Amazon Athena/S3, Amazon S3 Express One Zone, and Amazon Aurora PostgreSQL.

TDT for Mainframe Data Sources…

01_Generic_MSK_TDT02

TDT-DIRECT for Non-Mainframe Data Sources…

TDT_DIRECT_03

  •  

With TDT and TDT-DIRECT, migrations take weeks – not months or years – supported by Treehouse Software’s 40+ years of leadership in data replication.

For SIs and consulting firms, TDT solutions act as critical accelerators – moving enterprise modernization initiatives swiftly into the value capture phase with Cloud and analytics platforms.

Substantial value of solutions that are more than merely “connectors”

  • TDT and TDT-DIRECT are ready to go: Customers can start pumping data into data analytics targets in days, rather than months, or years.
  • TDT and TDT-DIRECT are massively scalable through an efficient, event-driven AWS Lambda-based architecture.
  • TDT’s intelligent crawlers automatically generate JSON-based views and infrastructure – saving developers time and simplifying deployment to analytics environments where SQL-based handling is cumbersome.
  • TDT and TDT-DIRECT are delivered as robust CloudFormation Templates, automating the setup of the full TDT stack (including Lambda functions and other AWS components) within your AWS environment.
  • Treehouse Software provides dedicated technical expertise to ensure fast implementation and continuous support.
  • We say “NO!” to using only generic ODBC connections for data transmission, because:
    • To load large volumes of data, TDT and TDT-DIRECT use native bulk load utilities from target vendors – delivering superior scalability compared to ODBC, which relies on a narrow, transaction-based pipeline.
    • It is important to recognize that Snowflake and Redshift are analytical platforms – NOT OLTP systems—making ODBC-based CDC transfers both inefficient and misaligned with vendor best practices, often causing significant performance bottlenecks.
    • For Snowflake’s bulk-load functionality to operate effectively, proprietary objects beyond basic tables and views are required. TDT’s crawler automatically generates the necessary DDL to provision these components – saving time and preventing errors.

Challenges and impact of building a custom solution

A decision by an enterprise not to use TDT, but instead to build its own Kafka-to-Analytics/ML/AI-friendly targets solution, could result in any, or all, of the following:

  • accumulation of technical debt
  • extensive/unpredictable time to production (6 to 12 months of upfront development on average)
  • ongoing resource planning to maintain home-grown technologies (administrative and development)
  • vendor lock for maintenance of custom-made technologies designed and developed by consultants
  • managing a mix of manual and automated functions (requiring additional ongoing manpower)
  • difficulty in tracking cobbled together components created by multiple staff and consultants
  • limited agility for future customization and innovation (as technologies continue to rapidly evolve)
  • problems adhering to rapidly evolving best practices over time
  • high costs for future growth/scaling
  • potential lack of proper security/ongoing security updates
  • your organization, or your customer has now become an enterprise software development company, along with all of its associated costs!

Simply put, TDT and TDT-DIRECT are comprehensive, turn-key solutions that eliminate the need for months or even years of in-house development and associated costs.

Treehouse Dataflow Toolkit (TDT) and TDT-DIRECT are Copyright © 2024 Treehouse Software, Inc. All rights reserved.

____Treehouse_AWS_Badges

Contact Treehouse Software for a TDT Demo Today!

Treehouse Software offers SIs and consulting companies free “deep dive” learning sessions to educate your team on the value of bringing these turn-key data transfer solutions your customers.

Contact us today to schedule your session! 

Test out Mainframe-to-Cloud Data Replication with a Treehouse Software Proof of Concept

by Joseph Brady, Director of Business Development at Treehouse Software, Inc.

 

Many Treehouse Software customers have discovered that they can save weeks, or months in their mainframe modernization initiatives by doing a Rocket Data Replicate and Sync (RDRS) Proof of Concept (POC) for Mainframe-to-Cloud data replication. Depending on the complexity of the customer’s project, an RDRS POC generally lasts as little as 10 business days after the product is installed and all connectivity is set up between the mainframe and Cloud environments. Treehouse Software provides documentation beforehand that outlines all of the requirements and agenda for the POC, and Treehouse technicians assist in downloading and installing RDRS.

During this paid POC (a portion of the payment is credited towards product purchase), the customer provides a test environment, representative subset of z/OS mainframe data, use case, timeline, and goals for the POC, and the Treehouse team mentors the customer’s technical team via remote screen sharing sessions. The application is executed on customer facilities, in a non-production environment, and a limited-scope implementation of an RDRS application is conducted to prove that the product meets the customer’s desired use case.

By the end of the POC, customers will have used RDRS to replicated mainframe data on their Cloud target, tested out product capabilities, and demonstrated a successful, repeatable data replication process, with documented results. After the POC, the customer has all the connectivity and processes in place to begin setting up the production phase of their mainframe data modernization project. The minimal cost, in terms of human resources and time, makes an RDRS POC a valuable ROI in the customer’s mainframe modernization journey.

About RDRS…

____0_RDRS_Overall_Diagram

Many Treehouse partners are recommending RDRS for Mainframe-to-Cloud modernization projects. RDRS focuses on changed data capture (CDC) when transferring information between mainframe data sources and Cloud targets. Through an innovative technology, changes occurring in any mainframe application data are tracked and captured, and then published to a variety of RDBMS and other targets.

Additionally, RDRS utilizes a Windows-based GUI Dashboard, which is ideal for non-mainframe programmers. While mainframe experts are required in the initial design/architecture phase of the POC and occasionally during implementation, the requirement for their involvement is minimal. The RDRS Dashboard acts as a single point of administration, data modeling and mapping, script generation, and monitoring. Comprehensive monitoring and logging of all data movements ensure transparency across all data exchange processes.

Once RDRS is up and running, the customer’s legacy mainframe environment can continue as long as needed, while data is replicated – in real time and bi-directionally – on the new Cloud platform. Now the enterprise can quickly take advantage of the latest Cloud services, such as analytics, machine learning and artificial intelligence (AI), etc., as well as move data to a variety of highly available and secure databases and data stores.


__TSI_LOGO

Want to see an RDRS demo first?

Simply fill out our RDRS Demonstration Request Form and a Treehouse representative will be contacting you to set up a time for your requested demonstration.