Big Data Services
Analyze and learn from Big Data in real time. Big Data services are key for storing and processing vast amounts of information effectively.
From optimising costs at scale to generating real time insights, Big Data analytics form the backbone of any modern data-driven organization.
Store petabytes of data
Big Data platforms are designed to store vast amounts of information in both structured and unstructured formats.
Unified management and information flow
With Big Data tools, all information is accessible from a singular point : perfect for building analytics and other solutions.
High performance and scalability
Collected data can be easily tailored to your the needs and workloads within your organization.
Big Data processing
No matter how diverse or large the data set, Big Data analytics can quickly process it without issue.
Cloud integration
Cloud servers are ideal Big Data platforms, offering unlimited resources and potential for future expansion.
Real-time analytics and inference
Big Data analytics can handle real-time data for up-to-date results, or even compare with vast historical data sets: whatever you need, when it’s needed.
Why You Need Big Data
Every business generates data, often at an exponential rate. Organizations that want to leverage this information for data-driven strategies need the means to collect, store and process at near real-time.
Big Data platforms process data as it comes in. From here, it’s a matter of building analytics and automated pipelines so everyone can access the data they need as soon as it comes in. What’s more, with growing historical data, analytics become more insightful overtime, leading to higher accuracy and the potential to train machine learning models and other advanced solutions. Paired with Big Data analytics and platforms, such as the cloud, Big Data services provide the essential foundation for automatic, updated, reliable and readily available data. Exactly what data-driven organizations need.
Explore other solutions
/ Data Engineering
-
Data Warehouse
Our data warehousing services will enable you to integrate structured transactional data, facilitate reporting and streamline business analysis with unlimited data size.
-
Data Lake
Apply an integrated data strategy, combining structured and unstructured data from different sources and formats, enabling deeper insights and larger data sets.
-
Data Migration
Transfer data between your systems, while maintaining data integrating and the continuity of processes in your organization. Enjoy a flexible, secure, and standard-compliant IT infrastructure.
-
ETL Process
An indispensable element of Business Intelligence. Migrate data from the source systems, transform it and load it into the target system – in both batches and streams.
-
Data Orchestration
Maintain complex relationships between data tasks and dynamically adjust your computing power requirements to suit.
The Technologies
/ Behind Solution
Our Experts
/ Knowledge Shared
The Complex World of AI Failures / When Artificial Intelligence Goes Terribly Wrong
AI has revolutionized industries, offering impressive capabilities in efficiency, speed, and innovation. However, as AI systems become more integrated into business operations, it becomes evident that these tools are not without flaws. From minor glitches to significant ethical issues, AI failures highlight the fragility of these systems. Businesses must...
Application of Artificial Intelligence in Optimizing the Supply Chain of Building Materials
Can artificial intelligence revolutionize the management of building materials supply chains? Learn how AI can help optimize demand forecasting, manage orders and inventory, minimize risks, and personalize customer offerings. Discover the future of AI in the construction industry. The supply chain in the building materials industry is a complex and...
The Growing Impact of Data Governance and Data Quality for Business
Never build on weak foundations – a good sentiment for building buildings and business processes alike. Today, everyone is looking to build on their data, but how do we ensure data quality? In the past, when data tools were simple, data quality was less of an issue. However, the recent growth of advanced data tools, such as business intelligence,...