Partnerships and
certifications
Our clients
With over 10 years of experience and 400+ successful projects, we’ve built strong partnerships with industry leaders and innovators alike. Our commitment to fostering long-term relationships ensures strategic alignment with your business objectives, reflected in our 98% client retention rate and dedicated support for ongoing growth.
Dataflow, streaming and batch data processing
Streaming and batch data processing is an essential part of managing your data. It involves moving and transforming data from one place to another, enabling you to access and analyze it in real-time.
Whether you need to process data in real-time, batch mode, or a combination of both, let us lend you a hand! Our solutions are designed to be scalable and reliable, ensuring that your data processing workflow operates smoothly and efficiently.
NRT (near real-time) data analytics
With NRT (near real-time) data analytics, you can react swiftly to changing conditions, identify new opportunities, and stay ahead of the competition. Neontri specializes in NRT (near real-time) data analytics, empowering organizations to unlock the true value of their data as it streams in.
Data-driven decision-making
With NRT (near real-time) data analytics, you can react swiftly to changing conditions, identify new opportunities, and stay ahead of the competition. Neontri specializes in NRT (near real-time) data analytics, empowering organizations to unlock the true value of their data as it streams in.
Data lake, Data Warehouse, or Data Lakehouse?
Managing and organizing data is an essential part of running a successful enterprise. That’s why we offer data management services that help you store and process your data in the most efficient and scalable way possible.
A data lake is a storage repository that can store structured and unstructured data at any scale. A data warehouse, on the other hand, is a system that stores and manages structured data from one or more sources. And a data lakehouse combines the best features of both data lakes and data warehouses, enabling organizations to store and analyze data from multiple sources in real-time.
01.
Neontri can help you understand the differences between data lakes, data warehouses, and data lakehouses.
02.
Next, we can assist you with figuring out which one would be best suited for your needs.
Your pain points – Our solutions
Lack of visibility into business operations visibility into business operations
Many businesses struggle to gain a comprehensive view of their operations due to data silos and scattered information
Solution
Our data integration, warehousing services, and BI provide a unified view of your business data, enabling you to gain valuable insights into your operations and make informed decisions.
Data security and compliance
With increasing data privacy regulations and cyber threats, it’s critical to ensure your data is secure and compliant.
Solution
Our data governance services provide a comprehensive framework for managing data privacy and compliance, ensuring your data is secure and protected from potential threats and vulnerabilities.
Data quality and accuracy
Poor data quality can lead to incorrect insights and decisions, ultimately impacting your business operations and profitability.
Solution
Our data governance and analytics services help you ensure data quality and accuracy, enabling you to make informed decisions based on reliable and consistent data.
Scalability and performance
As your business grows, managing large volumes of data can become a challenge, leading to performance issues and increased costs.
Solution
Our data warehousing solutions are designed to scale with your business and provide fast and reliable access to your data, ensuring optimal performance and cost-efficiency.
Limited internal resources
Many businesses may not have the necessary expertise or resources to manage data effectively.
Solution
Our team of data experts provides comprehensive data management services, taking the burden of data management off your shoulders and enabling you to focus on your core business operations.
Examples of our
data management projects
The Alnova Archive, an offloading data system for PKO Bank Polski
PSD2, a formidable challenge for banks and third-party payment providers, necessitated swift implementation and substantial investments in infrastructure. The creation of a cutting-edge PSD2 hub, developed in collaboration with KIR, seamlessly connected more than 300 Polish banks with third-party providers. The result? A game-changing platform that enabled timely compliance, fostered secure data exchange, and fueled innovation in the digital banking landscape.
Polish Open PSD2 Banking Hub Supported by Neontri
PSD2, a formidable challenge for banks and third-party payment providers, necessitated swift implementation and substantial investments in infrastructure. The creation of a cutting-edge PSD2 hub, developed in collaboration with KIR, seamlessly connected more than 300 Polish banks with third-party providers. The result? A game-changing platform that enabled timely compliance, fostered secure data exchange, and fueled innovation in the digital banking landscape.
BEHEX—Big Data Innovation for A Banking Market Leader
By leveraging advanced big data capabilities, Neontri unlock actionable insights and drive innovation. Our solution empowered scalable data processing, enabling smarter decision-making and delivering measurable business impact
The Alnova Archive, an offloading data system for PKO Bank Polski
PSD2, a formidable challenge for banks and third-party payment providers, necessitated swift implementation and substantial investments in infrastructure. The creation of a cutting-edge PSD2 hub, developed in collaboration with KIR, seamlessly connected more than 300 Polish banks with third-party providers. The result? A game-changing platform that enabled timely compliance, fostered secure data exchange, and fueled innovation in the digital banking landscape.
Polish Open PSD2 Banking Hub Supported by Neontri
PSD2, a formidable challenge for banks and third-party payment providers, necessitated swift implementation and substantial investments in infrastructure. The creation of a cutting-edge PSD2 hub, developed in collaboration with KIR, seamlessly connected more than 300 Polish banks with third-party providers. The result? A game-changing platform that enabled timely compliance, fostered secure data exchange, and fueled innovation in the digital banking landscape.
BEHEX—Big Data Innovation for A Banking Market Leader
By leveraging advanced big data capabilities, Neontri unlock actionable insights and drive innovation. Our solution empowered scalable data processing, enabling smarter decision-making and delivering measurable business impact
What our clients say about Neontri?
Data Management Expertise
Frequently Asked Questions
Data management expertise refers to the skills and knowledge required to handle, organize, and govern data effectively. It involves the practices and methodologies used to collect, store, process, and secure data, ensuring its quality, accuracy, accessibility, and compliance with regulations.
Examples of data management include database administration, data cleansing, data warehousing, master data management, data integration, data governance, and data security. These practices ensure that data is properly collected, stored, and maintained, ready for analysis or other uses.
A data management specialist oversees data quality, integrity, and security. Tasks include creating and enforcing data policies, managing databases, performing data cleansing, ensuring data compliance with regulations, coordinating data integration, and working on data backup and recovery.
Data management focuses on handling and organizing data, including storage, governance, and quality control. Data analytics, on the other hand, involves analyzing data to derive insights, trends, or patterns. While data management ensures the availability and quality of data, analytics leverages this data for decision-making.
Key areas of data management include data governance, data quality, data integration, data security, data warehousing, metadata management, and master data management. These areas encompass the various practices needed to manage data effectively.
The 4 types of data management typically refer to:
- Database Management: The use of databases to store and retrieve data.
- Data Governance: Setting policies and standards for data quality and compliance.
- Data Integration: Combining data from different sources for a unified view.
- Data Security: Protecting data from unauthorized access or breaches.
Together, these aspects form a comprehensive approach to handling an organization’s data needs.