Role of Artificial Intelligence in ESG reporting

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By Karen ADAARE

As the business landscape evolves, companies are recognizing the need for sustainability for their business growth and are integrating it into their strategies. Inevitably, Environmental, Social, and Governance (ESG) considerations are gaining traction among companies. However, the preparation of the report poses various challenges for these companies. Artificial Intelligence (AI) as such has become a prominent tool in the field to facilitate ESG reporting practices.

ESG is defined as a framework that assesses how a company manages risks associated with environmental, social, and corporate governance issues. The ratings derived from these three factors are used by investors, customers, and other stakeholders as a benchmark to measure a company’s practices and efforts toward the environment and society as a whole. The act of transparently disclosing a company’s practice concerning ESG factors along with their risks and impact is termed ESG Reporting.

Overview of Artificial Intelligence (AI)

Artificial Intelligence often referred to as AI is one of the greatest technological advancements in the modern era. AI seeks to replicate human intelligence within machines, enabling them to mimic various aspects of human behavior with remarkable precision. What sets AI apart is its adaptability, allowing it to be tailored to address specific challenges with unparalleled efficiency.

It offers solutions to problems across various industries and fields, from correcting grammatical errors to self-driving vehicles, and speech processing. Its utilization across various industries to enhance tasks is expanding. At the core of AI involves the use of data algorithms and human interaction to deliver these precise outcomes.

ESG reporting framework

ESG report is a report that contains the disclosure of a company’s environmental, social, and corporate governance impact. It details the goals and resulting impact of a company’s ESG activity. This report provides consumers, investors, and other stakeholders with access to information about the company ensuring that their values align. For investors, ESG reporting serves as a tool to assess investment opportunities in the company.

The report focuses on three main considerations: environmental, social, and corporate governance, each with specific factors embedded in them that need to be the focal point for organizations.  Depending on the nature of the organization’s work, certain factors within these considerations may hold varying degrees of importance.

Environmental considerations factors may include biodiversity, water pollution, air pollution, deforestation, waste management, and energy efficiency. Social consideration factors may include gender and diversity, community engagement and relations, customer satisfaction, data protection, and labor standards. Corporate governance consideration factors may include whistleblower schemes, bribery and corruption, and board composition.

Companies have the option to adopt various reporting frameworks, which can be either mandatory or voluntary. These frameworks include the Corporate Sustainability Reporting Directive (CSRD), the Corporate Sustainability Due Diligence Directive (CSDDD), and the Global Reporting Initiative (GRI). Each framework offers a structured approach to ESG reporting, providing companies with guidance on how to effectively communicate their ESG performance to stakeholders.

Challenges in traditional ESG reporting

ESG includes a wide range of aspects within a business, leading to a significant amount of data that needs to be recorded and analyzed. However, many organizations face challenges in this regard as the data is often scattered across various systems, making it difficult to access and analyze efficiently. This scattered data complicates the process and contributes to its time-consuming nature when consolidating the data.

The effort required to consolidate the scattered data adds to the challenge, as organizations must invest substantial time and resources into retrieving, organizing, and validating data from multiple sources. Moreover, the manual nature of data collection further increases the resource-intensive aspect of traditional ESG reporting practices.

Consequently, organizations face the challenge of allocating significant resources to ensure accurate and comprehensive data collection, often involving navigation through various systems and databases. These challenges underscore the need for innovative solutions, such as AI-driven data aggregation and automation, to enhance the effectiveness and efficiency of ESG reporting practices.

Utilizing Artificial Intelligence in ESG reporting

Artificial intelligence can play an important role in transforming ESG reporting. AI can help automate ESG report generation, optimize product life cycles, and help in the management of sustainable investment portfolios.

By using AI algorithms, organizations can efficiently collect data from diverse sources in the company. This is due to AI’s capability to handle and process large volumes of complex information and simplify them. Furthermore, Natural Language Processing (NLP) can help organizations filter references and extract pertinent information, enhancing the effectiveness of data analysis.

Moreover, AI facilitates the customization of ESG reports to align with the specific interests and requirements of stakeholders. Whether catering to investors focused on long-term risks or consumers interested in social responsibility practices, AI enables organizations to tailor their reports accordingly.

AI systems also offer companies the ability to benchmark ESG performance against established standards. This provides valuable insights into relative performance and opportunities for improvement.

Real-time monitoring represents another key advantage of AI in ESG reporting. By enabling continuous monitoring of ESG-related matters, AI offers insights to companies. This capability allows organizations to promptly respond to emerging issues, mitigate risks, and capitalize on opportunities.

With AI and machine learning, companies can access data in real-time, detect anomalies through pattern recognition, and identify findings requiring further review and audit. This proactive approach to data monitoring and analysis enhances organizational agility and resilience in managing ESG-related challenges and opportunities.

Conclusion

Incorporating AI technologies into ESG reporting should be viewed as an investment in the future success and resilience of the organization. By embracing AI, businesses can unlock new insights; organizations can enhance their sustainability efforts, drive innovation, optimize resource allocation, and enhance their ability to navigate complex ESG challenges. As highlighted above, AI offers numerous benefits, including the reduction of time and resources required for ESG reporting.

>>>the writer is an Associate at Sustineri Attorneys PRUC (www.sustineriattorneys.com). Karen specializes in Natural Resources including Mining, Oil & Gas, and Energy, Sustainability practice covering ESG, Climate Change, and Renewables, as well as Dispute Resolution. She welcomes views on this article via [email protected]

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