Part 4: Save Time and Analyze the Database File

In data management, speed and efficiency play a vital role. The emergence of advanced AI tools, such as ChatGPT-4, has significantly transformed the field of database analysis. Leveraging its improved language understanding and processing capabilities, ChatGPT-4 enables you to analyze database contents with just two simple steps (copy and paste), facilitating well-informed decision-making. In this blog post, we will explore the required steps and necessary components for this process.

Step 1: Preparing your database file

Prior to utilizing ChatGPT-4, ensure your database is formatted in a way that can be easily interpreted. For the majority of databases, this involves converting data into either a CSV, JSON, or SQLite format. This essential step prepares your data for a smooth integration with the processing capabilities of the AI.

Step 2: Uploading and analyzing with ChatGPT-4

Once your database file is ready, you can upload it directly to the interface of ChatGPT-4 (copy and paste it). This powerful AI can handle a variety of data analysis tasks, such as:

  • Data summarization: ChatGPT-4 can quickly provide summaries of your data, highlighting key statistics and trends.

  • Pattern recognition: The AI can identify patterns and anomalies in your data, which might be critical for your analysis.

  • Query response: ChatGPT-4 can answer specific queries about your database, providing insights that would take much longer to derive manually.

     

What you need

  1. Access to ChatGPT-4

  2. A database file

  3. A specific and logical prompt


Practical example: Suppose you possess a database file from a brokerage firm specializing in the sale of gold and related products. Your objective is to assess the overall sales of products on a monthly basis. Additionally, you need to construct a chart illustrating the total sales of products each month, grouping the sales data by product types.


Transforming the .db file into analysis & visualization - a step-by-step guide:

First, open ChatGPT-4

When opened, it looks like this ☝️
 

  • Paste the downloaded .db file into the ChatGPT-4 chat bar

  • Promt a question, for example:
    “You are a data engineer and have a sqlite3 database with the following file. Write a python script that you can run in a Jupyter notebook that draws a diagram. The database contains sales data from a gold broker company. Create a chart that shows total sales of products by month. Group all sales by product types.”
    (When specifying your desired functionality, consider requesting summaries, trends, or particular analyses to be performed.)

  • Press the launch button (⬆️) in ChatGPT-4 and let it do the required analysis of your data.

  • After a few moments, the results of your data analysis, based on the question you asked, will appear simply and quickly and you can modify them as you wish.

The final result. (You can add some modifications to the chart, such as numbers, colors, and titles)

This video demonstrates the process from sharing the file to obtaining the data visualization:

Interpretation of results

Ensuring accurate interpretation of the results is essential. While AI delivers precise insights, grasping the context and recognizing the limitations of the data is crucial for making well-informed decisions.
 

Features of data analysis with GPT-4

  1. There is no need for complex setup: There’s no need for setting up a database connection or configuring a data analysis environment, which can be time-consuming and require technical know-how.

  2. There is no need tosetup languages & libraries: No need for setting up Python, Python libraries, Jupiter Notebook, or other programming languages.

  3. Accessibility and ease of Use: ChatGPT-4 is highly accessible and easy to use. Users can simply copy and paste data into the chat, making it suitable for people who may not have advanced technical skills or access to specialized data analysis software.

  4. Natural language processing: ChatGPT-4 excels at understanding and processing natural language queries. This means users can ask questions about their data in natural language, without needing to know complex query languages or programming.

  5. Cost-effective: For small-scale or occasional data analysis needs, using ChatGPT-4 can be more cost-effective than investing in specialized data analysis software or tools.

  6. Flexibility in data interaction: Users can interact with their data in a conversational manner, allowing for a more dynamic and flexible approach to data analysis. This can lead to discovering new insights as the conversation progresses.

  7. Multifaceted analysis: ChatGPT-4 can assist in various types of analysis: From basic data summaries to more complex inquiries, depending on the nature of the pasted data and the user's queries.

  8. Educational value: For learners or students, using ChatGPT-4 provides an educational opportunity to understand data analysis concepts and practices in a hands-on manner.

Conclusion

ChatGPT-4's ability to facilitate speedy data analysis of databases marks a significant advancement in data management. By efficiently processing and interpreting large datasets, it enables businesses and individuals to make quicker, more informed decisions. As technology continues to evolve, the integration of such AI tools in database analysis is poised to become more prevalent, redefining the standards of data handling and management.


☝️ REMEMBER, THIS IS A SIMPLIFIED OVERVIEW AND THE ACTUAL PROCESS MIGHT INVOLVE MORE INTRICATE STEPS, ESPECIALLY FOR LARGER OR MORE COMPLEX DATABASES.

Aqeel AlazreeBlog
Blog

Part 3: How to Analyze a Database File with GPT-3.5

In this blog, we'll explore the proper usage of data analysis with ChatGPT and how you can analyze and visualize data from a SQLite database to help you make the most of your data.

Rinat AbdullinRinat AbdullinBlog
Blog

Let's build an Enterprise AI Assistant

In the previous blog post we have talked about basic principles of building AI assistants. Let’s take them for a spin with a product case that we’ve worked on: using AI to support enterprise sales pipelines.

Aqeel AlazreeBlog
Blog

Part 1: Data Analysis with ChatGPT

In this new blog series we will give you an overview of how to analyze and visualize data, create code manually and how to make ChatGPT work effectively. Part 1 deals with the following: In the data-driven era, businesses and organizations are constantly seeking ways to extract meaningful insights from their data. One powerful tool that can facilitate this process is ChatGPT, a state-of-the-art natural language processing model developed by OpenAI. In Part 1 pf this blog, we'll explore the proper usage of data analysis with ChatGPT and how it can help you make the most of your data.

Rinat AbdullinRinat AbdullinBlog
Blog

The Intersection of AI and Voice Manipulation

The advent of Artificial Intelligence (AI) in text-to-speech (TTS) technologies has revolutionized the way we interact with written content. Natural Readers, standing at the forefront of this innovation, offers a comprehensive suite of features designed to cater to a broad spectrum of needs, from personal leisure to educational support and commercial use. As we delve into the capabilities of Natural Readers, it's crucial to explore both the advantages it brings to the table and the ethical considerations surrounding voice manipulation in TTS technologies.

Rinat AbdullinRinat AbdullinBlog
Blog

So You are Building an AI Assistant?

So you are building an AI assistant for the business? This is a popular topic in the companies these days. Everybody seems to be doing that. While running AI Research in the last months, I have discovered that many companies in the USA and Europe are building some sort of AI assistant these days, mostly around enterprise workflow automation and knowledge bases. There are common patterns in how such projects work most of the time. So let me tell you a story...

Rinat AbdullinRinat AbdullinBlog
Blog

LLM Performance Series: Batching

Beginning with the September Trustbit LLM Benchmarks, we are now giving particular focus to a range of enterprise workloads. These encompass the kinds of tasks associated with Large Language Models that are frequently encountered in the context of large-scale business digitalization.

Aqeel AlazreeBlog
Blog

Database Analysis Report

This report comprehensively analyzes the auto parts sales database. The primary focus is understanding sales trends, identifying high-performing products, Analyzing the most profitable products for the upcoming quarter, and evaluating inventory management efficiency.

Rinat AbdullinRinat AbdullinBlog
Blog

5 Inconvenient Questions when hiring an AI company

This article discusses five questions you should ask when buying an AI. These questions are inconvenient for providers of AI products, but they are necessary to ensure that you are getting the best product for your needs. The article also discusses the importance of testing the AI system on your own data to see how it performs.

Aqeel AlazreeBlog
Blog

Part 2: Data Analysis with powerful Python

Analyzing and visualizing data from a SQLite database in Python can be a powerful way to gain insights and present your findings. In Part 2 of this blog series, we will walk you through the steps to retrieve data from a SQLite database file named gold.db and display it in the form of a chart using Python. We'll use some essential tools and libraries for this task.

Daniel PuchnerBlog
Blog

Make Your Value Stream Visible Through Structured Logging

Boost your value stream visibility with structured logging. Improve traceability and streamline processes in your software development lifecycle.

Rinat AbdullinRinat AbdullinBlog
Blog

Machine Learning Pipelines

In this first part, we explain the basics of machine learning pipelines and showcase what they could look like in simple form. Learn about the differences between software development and machine learning as well as which common problems you can tackle with them.

Christoph HasenzaglChristoph HasenzaglBlog
Blog

Common Mistakes in the Development of AI Assistants

How fortunate that people make mistakes: because we can learn from them and improve. We have closely observed how companies around the world have implemented AI assistants in recent months and have, unfortunately, often seen them fail. We would like to share with you how these failures occurred and what can be learned from them for future projects: So that AI assistants can be implemented more successfully in the future!

Jörg EgretzbergerJörg EgretzbergerBlog
Blog

8 tips for developing AI assistants

AI assistants for businesses are hype, and many teams were already eagerly and enthusiastically working on their implementation. Unfortunately, however, we have seen that many teams we have observed in Europe and the US have failed at the task. Read about our 8 most valuable tips, so that you will succeed.

Nina DemuthBlog
Blog

Trustbit ML Lab Welcomes Grayskull e150 by Tenstorrent

Discover how Trustbit ML Lab integrates Tenstorrent's Grayskull e150, led by Jim Keller, for cutting-edge, energy-efficient AI processing.

Daniel WellerBlog
Blog

Revolutionizing the Logistics Industry

As the logistics industry becomes increasingly complex, businesses need innovative solutions to manage the challenges of supply chain management, trucking, and delivery. With competitors investing in cutting-edge research and development, it is vital for companies to stay ahead of the curve and embrace the latest technologies to remain competitive. That is why we introduce the TIMETOACT Logistics Simulator Framework, a revolutionary tool for creating a digital twin of your logistics operation.

Ian RusselIan RusselBlog
Blog

Introduction to Functional Programming in F#

Dive into functional programming with F# in our introductory series. Learn how to solve real business problems using F#'s functional programming features. This first part covers setting up your environment, basic F# syntax, and implementing a simple use case. Perfect for developers looking to enhance their skills in functional programming.

Kompetenz
Kompetenz

Graph Technology

We help you harness the power of graphs to transform your business. Our expertise spans from graph database modelling and graph data science to generative AI.

TIMETOACT
Referenz
Referenz

Flexibility in the data evaluation of a theme park

With the support of TIMETOACT, an theme park in Germany has been using TM1 for many years in different areas of the company to carry out reporting, analysis and planning processes easily and flexibly.

TIMETOACT GROUP
Branche
Headerbild zur Logistik- und Transportbranche
Branche

AI & Digitization for the Transportation and Logistics Indus

Digitalisierung und Transparenz der Prozesse sowie automatisierte Unterstützung bei der Optimierung können Logistikunternehmen helfen, den Spagat zwischen Kosten und Leistung besser zu bewältigen, um langfristig als wertvoller Partner der Wirtschaft zu agieren.

TIMETOACT
Technologie
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.

Blog
Blog

Supply Chain Optimization

A Use Case

TIMETOACT
Technologie
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.

TIMETOACT
Technologie
Headerbild Talend Data Integration
Technologie

Talend Data Integration

Talend Data Integration offers a highly scalable architecture for almost any application and any data source - with well over 900 connectors from cloud solutions like Salesforce to classic on-premises systems.

Referenz
Felss Logo
Referenz

Quality scoring with predictive analytics models

Felss Systems GmbH relies on a specially developed predictive analytics method from X-INTEGRATE. With predictive scoring and automation, the efficiency of industrial machinery is significantly increased.

TIMETOACT
Technologie
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.

TIMETOACT
Service
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.

TIMETOACT
Service
Navigationsbild zu Data Science
Service

Data Science, Artificial Intelligence and Machine Learning

For some time, Data Science has been considered the supreme discipline in the recognition of valuable information in large amounts of data. It promises to extract hidden, valuable information from data of any structure.

TIMETOACT GROUP
Service
Articifial Intelligence & Data Science
Service

Artificial Intelligence & Data Science

Data Science is all about extracting valuable information from structured and unstructured data. Together with Artificial Intelligence (AI) – the ability of a machine to imitate intelligent human behavior – you can make accurate decisions, based on high-quality information. Moreover, you can react quickly to recent developments.

TIMETOACT
Service
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.

Service
Service

Cloud Transformation & Container Technologies

Public, private or hybrid? We can help you develop your cloud strategy so you can take full advantage of the technology.

Service
Service

Software, Mobile and Web App Development

Standard software often cannot completely fulfill a company's own requirements - TIMETOACT therefore develops customized software solutions.

Service
Service

Application Integration & Process Automation

Digitizing and improving business processes and responding agilely to change – more and more companies are facing these kind of challenges. This makes it all the more important to take new business opportunities through integrated and optimized processes based on intelligent, digitally networked systems.

Service
Service

Managed Service: Mailroom

In the TIMETOACT mailroom, business documents are converted into data in a highly efficient manner and returned securely to the end customer for further processing.

IPG
Marco RohrerMarco RohrerBlog
Hintergrundgrafik für IPG Partner Clearsky
Blog

Bring IT service management and IAM systems together

How do companies bring their complex IT service management and IAM systems together in an end user-friendly way? In our interview, Clear Skye and the IPG Group show, how it works very easily

Produkt
Daten einfach speichern und verwalten mit Google Cloud
Produkt

Looker - Business Intelligence

More than typical business intelligence. Looker offers a data experience that customers love. CLOUDPILOTS is the leading partner in the German-speaking region.

TIMETOACT GROUP
Branche
Branche

Insurance

Insurance companies live by making a promise to people - and that promise is security. Crucial to success is not only the mastery of new technologies and new forms of collaboration, but above all a change in corporate culture.

TIMETOACT GROUP
News
News

Proof-of-Value Workshop

Today's businesses need data integration solutions that offer open, reusable standards and a complete, innovative portfolio of data capabilities. Apply for one of our free workshops!

TIMETOACT
Service
Headerbild zu Operationalisierung von Data Science (MLOps)
Service

Operationalization of Data Science (MLOps)

Data and Artificial Intelligence (AI) can support almost any business process based on facts. Many companies are in the phase of professional assessment of the algorithms and technical testing of the respective technologies.

TIMETOACT
Service
Header Konnzeption individueller Business Intelligence Lösungen
Service

Conception of individual Analytics and Big Data solutions

We determine the best approach to develop an individual solution from the professional, role-specific requirements – suitable for the respective situation!

TIMETOACT
Service
Headerbild zu Dashboards und Reports
Service

Dashboards & Reports

The discipline of Business Intelligence provides the necessary means for accessing data. In addition, various methods have developed that help to transport information to the end user through various technologies.

TIMETOACT
Service
Headerbild zu Digitale Planung, Forecasting und Optimierung
Service

Demand Planning, Forecasting and Optimization

After the data has been prepared and visualized via dashboards and reports, the task is now to use the data obtained accordingly. Digital planning, forecasting and optimization describes all the capabilities of an IT-supported solution in the company to support users in digital analysis and planning.

TIMETOACT
Service
Teaserbild zu Data Integration Service und Consulting
Service

Data Integration, ETL and Data Virtualization

While the term "ETL" (Extract - Transform - Load / or ELT) usually described the classic batch-driven process, today the term "Data Integration" extends to all methods of integration: whether batch, real-time, inside or outside a database, or between any systems.

TIMETOACT GROUP
Service
Headerbild zur AI Factory for Insurance
Service

AI Factory for Insurance

The AI Factory for Insurance is an innovative organisational model combined with a flexible, modular IT architecture. It is an innovation and implementation factory to systematically develop, train and deploy AI models in digital business processes.

TIMETOACT GROUP
Service
Headerbild Data Insights
Service

Data Insights

With Data Insights, we help you step by step with the appropriate architecture to use new technologies and develop a data-driven corporate culture: from the development of new data sources, to exploratory analysis to gain new insights, to predictive models.

TIMETOACT GROUP
Branche
Branche

Digital transformation in public administration

The digital transformation will massively change the world of work, especially in public administration. We support federal, state and local authorities in the strategic and technical implementation of their administrative modernisation projects.

TIMETOACT
Technologie
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.

TIMETOACT
Technologie
Headerbild zu IBM Cloud Pak for Automation
Technologie

IBM Cloud Pak for Automation

The IBM Cloud Pak for Automation helps you automate manual steps on a uniform platform with standardised interfaces. With the Cloud Pak for Business Automation, the entire life cycle of a document or process can be mapped in the company.

TIMETOACT
Technologie
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.

TIMETOACT
Technologie
Headerbild zu IBM Cloud Pak for Data Accelerator
Technologie

IBM Cloud Pak for Data Accelerator

For a quick start in certain use cases, specifically for certain business areas or industries, IBM offers so-called accelerators based on the "Cloud Pak for Data" solution, which serve as a template for project development and can thus significantly accelerate the implementation of these use cases. The platform itself provides all the necessary functions for all types of analytics projects, and the accelerators provide the respective content.

TIMETOACT
Referenz
Referenz

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.

TIMETOACT GROUP
Leistung
Headerbild zu Digitale Transformation bei Versicherern
Leistung

Mastering digital transformation in insurance

Versicherer haben daher bereits die Chancen und Notwendigkeiten der Digitalisierung größtenteils erkannt. Trotzdem ist noch viel zu tun, denn Digitalisierung funktioniert nicht von einem Tag auf den anderen – besonders bei Versicherungen, bei denen es viele altmodische und langsame Prozesse gibt.

TIMETOACT
Technologie
Headerbild zu IBM Watson Knowledge Studio
Technologie

IBM Watson Knowledge Studio

In IBM Watson Knowledge Studio, you train an Artificial Intelligence (AI) on specialist terms of your company or specialist area ("domain knowledge"). In this way, you lay the foundation for automated text processing of extensive, subject-related documents.

TIMETOACT
Technologie
Headerbild zu IBM Watson Discovery
Technologie

IBM Watson Discovery

With Watson Discovery, company data is searched using modern AI to extract information. On the one hand, the AI uses already trained methods to understand texts; on the other hand, it is constantly developed through new training on the company data, its structure and content, thus constantly improving the search results.

TIMETOACT
Technologie
Headerbild zu IBM Watson Assistant
Technologie

IBM Watson Assistant

Watson Assistant identifies intention in requests that can be received via multiple channels. Watson Assistant is trained based on real-live requests and can understand the context and intent of the query based on the acting AI. Extensive search queries are routed to Watson Discovery and seamlessly embedded into the search result.

TIMETOACT
Technologie
Headerbild IBM Cloud Pak for Data System
Technologie

IBM Cloud Pak for Data System

With the Cloud Pak for Data System (CP4DS), IBM provides the optimal hardware for the use of all Cloud Pak for Data functions industry-wide and thus continues the series of ready-configured systems ("Appliance" or "Hyperconverged System").

TIMETOACT
Technologie
Headerbild Talend Application Integration
Technologie

Talend Application Integration / ESB

With Talend Application Integration, you create a service-oriented architecture and connect, broker & manage your services and APIs in real time.

TIMETOACT
Technologie
Headerbild zu Talend Real-Time Big Data Platform
Technologie

Talend Real-Time Big Data Platform

Talend Big Data Platform simplifies complex integrations so you can successfully use Big Data with Apache Spark, Databricks, AWS, IBM Watson, Microsoft Azure, Snowflake, Google Cloud Platform and NoSQL.

TIMETOACT
Technologie
Headerbild zu Talend Data Fabric
Technologie

Talend Data Fabric

The ultimate solution for your data needs – Talend Data Fabric includes everything your (Data Integration) heart desires and serves all integration needs relating to applications, systems and data.

TIMETOACT
Technologie
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.

TIMETOACT
Technologie
Technologie

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.

TIMETOACT
Technologie
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.

TIMETOACT GROUP
Branche
Schild als Symbol für innere und äußere Sicherheit
Branche

Internal and external security

Defense forces and police must protect citizens and the state from ever new threats. Modern IT & software solutions support them in this task.

TIMETOACT GROUP
Branche
Headerbild für lokale Entwicklerressourcen in Deutschland
Branche

On-site digitization partner for insurance companies

As TIMETOACT GROUP, we are one of the leading digitization partners for IT solutions in Germany, Austria and Switzerland. As your partner, we are there for you at 17 locations and will find the right solution on the path to digitization - gladly together in a personal exchange on site.

TIMETOACT
Technologie
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.

Kompetenz
Data Science & Advanced Analytics
Kompetenz

Data Science, AI & Advanced Analytics

Data Science & Advanced Analytics includes a wide range of tools that can examine business processes, help drive change and improvement.

TIMETOACT
Technologie
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.

TIMETOACT
Technologie
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.

TIMETOACT
Technologie
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.

TIMETOACT
Technologie
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.

TIMETOACT
Technologie
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.

TIMETOACT
Technologie
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.

TIMETOACT
Technologie
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.

TIMETOACT GROUP
Kompetenz
Kompetenz

Artificial Intelligence & Data Strategy

Every company collects and manages vast amounts of data, e.g. from production processes or business transactions. However, only a fraction of this data is used effectively to support control and decision-making processes.

Kompetenz
Headerbild GenAI Consulting
Kompetenz

GenAI Consulting

ChatGPT, Bard & Co. have shown at the latest: Generative AI has the potential to revolutionize the world of work. With GenAI Consulting, we support you in exploiting this potential for your company.

TIMETOACT GROUP
Service
Navigationsbild zu Data Science
Service

AI & Data Science

The amount of data that companies produce and process every day is constantly growing. This data contains valuable information about customers, markets, business processes and much more. But how can companies use this data effectively to make better decisions, improve their products and services and tap into new business opportunities?