Data in Modern Business: The Key to a Successful Strategy

In today's world, where information has become one of the most valuable currencies, companies are increasingly relying on data to make strategic decisions and optimize their processes. The need for effective data analysis tools is growing as the volume of processed information increases. In this article, we will explore how businesses can use data to achieve their goals, discuss current trends in data analysis, and highlight best practices that help companies remain competitive.
Von   Alexey Goncharov   |  Deputy Commercial Director for Quality at Yandex   |  Yandex
2. Dezember 2024

Data in Modern Business: The Key to a Successful Strategy

 

In today’s world, where information has become one of the most valuable currencies, companies are increasingly relying on data to make strategic decisions and optimize their processes. The need for effective data analysis tools is growing as the volume of processed information increases. In this article, we will explore how businesses can use data to achieve their goals, discuss current trends in data analysis, and highlight best practices that help companies remain competitive.

 

The Volume of Data and Its Importance for Business

 

Nowadays, every company, regardless of its size or industry, generates and processes enormous amounts of data. Large corporations often deal with terabytes of information, while small businesses may handle smaller volumes, such as a few Excel spreadsheets. However, when talking about big data, it is essential to remember that its „size“ is not always measured in gigabytes or terabytes. Big data refers to data that becomes difficult to manage and analyze using traditional methods, especially when complex factors affect the business.

 

Data Sources and Their Use

Companies collect data from various sources. These can be internal data, such as information about customers, sales, and operations, or external data from public sources, social media, and market research. Each source represents a valuable opportunity for analysis and extracting insights to improve processes or increase profits.

One of the most crucial aspects of working with data is complying with legal regulations. For instance, adhering to GDPR requirements in Europe and similar regulations in other countries is necessary for companies to legally use customer data. In today’s digital world, companies aim to gather as much data as possible to gain a complete picture of customer behavior and market trends.

 

Examples of Successful Data Use

Companies that effectively use data achieve significant success. A notable example is businesses that apply analytics to accurately segment customers and develop personalized offers. For example, a large retailer identified professional resellers among its customers who pretended to be private buyers and adjusted its pricing policy accordingly. As a result, the company’s revenue grew by a third.

Another example is logistics companies that optimize delivery routes and manage warehouse inventories through data analysis. This not only helps reduce costs but also improves customer satisfaction by shortening delivery times.

 

Tools and Methods of Data Analysis

 

Data analysis requires the use of various tools, each with its unique features. Some of the most popular solutions include:

 

  • Tableau: A powerful data visualization tool that allows creating clear dashboards and graphs.
  • Power BI: A platform  that integrates data from various sources and provides flexible analysis capabilities.
  • SAS: A tool for deep data analysis, predictive analytics, and modeling.

 

In practice, the choice of a tool depends on the company’s needs and the tasks that need to be solved. However, it is important to remember that successful data analysis is not only about having powerful tools but also about the team’s ability to interpret the results. Simplicity often becomes the key to effectiveness: the simpler the query and visualization, the easier it is for company leadership to make the right decisions.

 

Challenges Associated with Data Analysis

One of the main challenges companies face is data quality. Dirty or incomplete data can lead to incorrect conclusions, which can affect business outcomes. Before starting the analysis, it is essential to go through a data preparation stage: normalization, deduplication, and error correction.

Additionally, large amounts of information can cause technical difficulties, especially if companies lack sufficient resources to store and process big data. In such cases, reliable solutions for data integration and consolidation are necessary.

 

Specialist Qualifications and Resources

Even the most advanced tools will not be effective if the company lacks qualified specialists capable of working with data. Skilled analysts who can extract valuable insights and offer data-driven solutions play a key role in the decision-making process. Moreover, companies should invest not only in technology but also in training their employees. With the rapid development of technology and the emergence of new data analysis approaches, continuous upskilling of specialists is the key to success.

 

The Role of Machine Learning and Artificial Intelligence

 

Machine learning and artificial intelligence are fundamentally changing the approach to data analysis. These technologies allow companies to analyze large volumes of data faster and more efficiently than ever before. For instance, machine learning algorithms enable companies to automate the process of identifying patterns in customer behavior, forecast future trends, and even determine which factors most significantly influence customer loyalty.

 

One example of ML application is the analysis of customer price sensitivity. Algorithms can detect how a change in product prices affects demand, helping companies optimize their pricing policies. Such technologies not only enhance competitiveness but also open up new opportunities for business growth.

 

Data Visualization: The Art and Science

For successful data-driven decision-making, it is crucial not only to gather and analyze data correctly but also to present the results accurately. A simple yet informative graph can become a key element in making managerial decisions. Well-executed visualization makes complex data understandable, even for those without technical expertise. Charts, graphs, heat maps, and dashboards—all these tools help not only interpret the data but also convey key insights to a company’s stakeholders.

 

Data Integration and a Holistic Approach

Effective data analysis is impossible without proper integration. Data within a company can come from multiple sources: CRM systems, ERP, web analytics, and more. Without proper integration and normalization, the information can become unmanageable and fragmented, making it difficult to analyze. Modern integration tools allow data from different sources to be consolidated into a single system for further analysis and to create a complete picture of business processes.

 

Evaluating the Effectiveness of Big Data Usage

The effectiveness of working with big data can be evaluated by looking at business growth indicators. If data helps companies increase sales, reduce costs, or improve operational processes, it is a clear sign of successful data utilization. Companies striving for sustainable growth must continuously improve their analytical capabilities and use the obtained data to develop and adjust strategies.

 

Conclusion

 

The use of data in modern business is not just a trend but a necessity. Companies that actively work with data gain a competitive advantage because they can make faster and more accurate decisions. In the future, the role of data will only increase, and companies that invest in data collection and analysis today have a good chance of becoming market leaders.

 

Alexey Goncharov is an expert in content moderation, verification, and user scenarios. He is currently the Deputy Commercial Director for Quality at Yandex. Alexey graduated from the Moscow Engineering Physics Institute (MEPhI) with a degree in Theoretical Physics. He later obtained a degree in Management and Business. He has strong practical knowledge from working in the largest IT corporation, which has a larger share in the CIS market than Google. Experience: After graduation, Alexey began his career at Yandex as a user support specialist, eventually becoming the Head of the Yandex.Mail Services support service. His exemplary performance led to his promotion to Deputy Head of the Yandex Support Department. In September 2015, Alexey transitioned to Auto.ru, Russia’s largest automotive calssified and marketplace for new and used cars with a daily active user base of 3 million. Since July 2021, Alexey has served as the Deputy Commercial Director for Quality at Yandex. His projects bridge technology and operations, including a GPT support project aimed at fully automating customer service and optimizing sales department management and increasing profits with AI. Alexey is driven by a desire to innovate and set new industry standards, choosing projects that have the potential to transform the market. Alexey’s commitment to innovation and excellence makes him a sought-after speaker in his fields of expertise. Areas of Expertise: ● Full Range of Work with Online Advertising, Announcements, and Authorization Services ● Internet Account Security, Recovery, Content Moderation, and Countering Fraudsters ● AI Integration with Real Life, User Scenarios, and the Complexities and Differences in the Functioning of AI and Human Labor ● Use of Large User Data and Interpretation into High-Level Research and Implementation of Results into Business ● IT Management in Balance with Scaling and Increasing Team Results, Balancing Business with Government Policy, Internal Policy, and Minimizing Losses

Um einen Kommentar zu hinterlassen müssen sie Autor sein, oder mit Ihrem LinkedIn Account eingeloggt sein.

50251

share

Artikel teilen

Top Artikel

Ähnliche Artikel