Microsoft Azure Synapse Analytics

Benefit from the extensive analytics functions in the Microsoft Azure Cloud.

What is Microsoft Azure Synapse Analytics?

With Synapse, Microsoft has provided a platform for all aspects of analytics in the Azure Cloud.

Within the platform, Synapse includes services for data integration, data storage of any size and big data analytics. Together with existing architecture templates, a solution for every analytical use case is created in a short time. The solution supports both classic DWH and BI solutions, but also enterprise-wide AI and BigData requirements in the Azure Cloud.

Why use Microsoft Azure Synapse Analytics?

Extensive functions to benefit from analytical possibilities.

Extensive functions are available for companies that want to develop an analytical solution in the cloud:

  • Data engineering with e.g. Apache Spark, built-in connectors, programmer-free data integration or data pipelines.
  • Powerful data storage in relational (SQL) databases including AI functions or data lakes with support for all data sources and very large data volumes
  • Comprehensive analytics: starting from operational data analysis, streaming analytics, time series analysis and many varieties of AI or ML

We are here for you.

Development | Consulting | Support

No matter which deployment, we also put together the right services for our customers in the cloud, implement data integration, analytical data models from data warehouse and data lake to data mart and provide visually appealing dashboards with Power BI.

Our experts are certified Microsoft consultants and have been able to contribute their knowledge to the success of numerous projects over the last 15 years. In particular, we are characterised by our ability to find creative solutions and, if necessary, to think "out-of-the-box". Each of our consultants has at least two professional and technical "pillars" and a broad overview of different solutions.

Marc Bastien
Software Architect TIMETOACT Software & Consulting GmbH
Headerbild zu Microsoft Azure
Technologie

Microsoft Azure

Azure is the cloud offering from Microsoft. Numerous services are provided in Azure, not only for analytical requirements. Particularly worth mentioning from an analytical perspective are services for data storage (relational, NoSQL and in-memory / with Microsoft or OpenSource technology), Azure Data Factory for data integration, numerous services including AI and, of course, services for BI, such as Power BI or Analysis Services.

Logo Microsoft
Technologie Übersicht

Microsoft

Since the end of the 1990s, Microsoft has been increasingly involved with the topic of business intelligence and, with the Microsoft Business Intelligence platform (MS BI), offers a complex and fully comprehensive solution for all issues.

Headerbild zu Microsoft SQL Server
Technologie

Microsoft SQL Server

SQL Server 2019 offers companies recognized good and extensive functions for building an analytical solution. Both data integration, storage, analysis and reporting can be realized, and through the tight integration of PowerBI, extensive visualizations can be created and data can be given to consumers.

Headerbild zu IBM Cognos Analytics 11
Technologie

IBM Cognos Analytics 11

IBM Cognos Analytics is a central platform for the provision of dispositive information in the company. With the reporting and analysis functions of IBM Cognos, the relevant information can be prepared and used throughout the company.

Headerbild IBM Cloud Pak for Data
Technologie

IBM Cloud Pak for Data

The Cloud Pak for Data acts as a central, modular platform for analytical use cases. It integrates functions for the physical and virtual integration of data into a central data pool - a data lake or a data warehouse, a comprehensive data catalogue and numerous possibilities for (AI) analysis up to the operational use of the same.

Headerbild zu IBM Netezza Performance Server
Technologie

IBM Netezza Performance Server

IBM offers Database technology for specific purposes in the form of appliance solutions. In the Data Warehouse environment, the Netezza technology, later marketed under the name "IBM PureData for Analytics", is particularly well known.

Headerbild zu Microsoft Power BI
Technologie

Microsoft Power BI

Power BI is the ideal complement to the Microsoft-centric analytic solution in the enterprise. As a standalone version "Power BI Desktop" it is free of charge. With Power BI, companies create quick, comprehensive and meaningful visual analyses.

Headerbild für IBM SPSS
Technologie

IBM SPSS Modeler

IBM SPSS Modeler is a tool that can be used to model and execute tasks, for example in the field of Data Science and Data Mining, via a graphical user interface.

Headerbild zu IBM Planning Analytics mit Watson
Technologie

IBM Planning Analytics mit Watson

IBM Planning Analytics with Watsons enables the automation of planning, budgeting, forecasting and analysis processes using IBM TM1.

Headerbild zu IBM Decision Optimization
Technologie

Decision Optimization

Mathematical algorithms enable fast and efficient improvement of partially contradictory specifications. As an integral part of the IBM Data Science platform "Cloud Pak for Data" or "IBM Watson Studio", decision optimisation has been decisively expanded and embedded in the Data Science process.

Headerbild zu IBM DataStage
Technologie

IBM InfoSphere Information Server

IBM Information Server is a central platform for enterprise-wide information integration. With IBM Information Server, business information can be extracted, consolidated and merged from a wide variety of sources.

Headerbild zu IBM DB2
Technologie

IBM Db2

The IBM Db2database has been established on the market for many years as the leading data warehouse database in addition to its classic use in operations.

Headerbild zu IBM Watson Studio
Technologie

IBM Watson Studio

IBM Watson Studio is an integrated solution for implementing a data science landscape. It helps companies to structure and simplify the process from exploratory analysis to the implementation and operationalisation of the analysis processes.

Headerbild zu IBM Watson® Knowledge Catalog
Technologie

IBM Watson® Knowledge Catalog/Information Governance Catalog

Today, "IGC" is a proprietary enterprise cataloging and metadata management solution that is the foundation of all an organization's efforts to comply with rules and regulations or document analytical assets.

Referenz 10/29/21

Standardized data management creates basis for reporting

TIMETOACT implements a higher-level data model in a data warehouse for TRUMPF Photonic Components and provides the necessary data integration connection with Talend. With this standardized data management, TRUMPF will receive reports based on reliable data in the future and can also transfer the model to other departments.

Haderbild zu IBM Cloud Pak for Application
Technologie

IBM Cloud Pak for Application

The IBM Cloud Pak for Application provides a solid foundation for developing, deploying and modernising cloud-native applications. Since agile working is essential for a faster release cycle, ready-made DevOps processes are used, among other things.

Navigationsbild zu Business Intelligence
Service

Business Intelligence

Business Intelligence (BI) is a technology-driven process for analyzing data and presenting usable information. On this basis, sound decisions can be made.

Headerbild zu Cloud Pak for Data – Test-Drive
Technologie

IBM Cloud Pak for Data – Test-Drive

By making our comprehensive demo and customer data platform available, we want to offer these customers a way to get a very quick and pragmatic impression of the technology with their data.

Logo Talend
Technologie Übersicht

Talend

Lay the foundation with Talend, coupled with the expertise of certified data experts from TIMETOACT. Take advantage of the diverse and long-standing experience to identify the methods, architectures and software components that are right for you.

Headerbild zu Data Governance Consulting
Service

Data Governance

Data Governance describes all processes that aim to ensure the traceability, quality and protection of data. The need for documentation and traceability increases exponentially as more and more data from different sources is used for decision-making and as a result of the technical possibilities of integration in Data Warehouses or Data Lakes.