Utilización de la IA en el cumplimiento de la CSRD para simplificar los procesos

Utilización de la IA en el cumplimiento de la CSRD para simplificar los procesos

by  
AnhNguyen  
- 16 de diciembre de 2024

Globally, firms are grappling with intricate reporting structures in their pursuit of sustainability objectives. The Directiva sobre informes de sostenibilidad empresarial (CSRD) comes with extensive disclosure obligations regarding non-financial, environmental, social, and governance (ESG) information, specifically for businesses operating in or with the European Union. Enforcement of CSRD commenced in 2024, necessitating over 11,000 firms to publicly disclose non-financial information. It’s projected that an additional 50,000 entities incorporated or trading in the European Union will be brought into this fold. However, finding the time and resources needed for CSRD compliance is posing a significant challenge for the companies.

Understanding the Scope of CSRD Requirements

CSRD expands upon its predecessor, the Directiva sobre información no financiera (NFRD), by mandating more comprehensive and standardized reporting practices. This includes detailed disclosures about:

  • Environmental factors: climate change mitigation, resource use, and biodiversity impact.
  • Social factors: workforce diversity, labor practices, and community engagement.
  • Gobernanza: anti-corruption measures, internal controls, and board diversity.

Additionally, CSRD introduces the requirement for third-party auditing of ESG reports and alignment with the Normas Europeas para la Elaboración de Informes de Sostenibilidad (ESRS). This elevated level of scrutiny ensures transparency and comparability across industries but significantly increases the reporting burden on businesses.

The Challenges of Manual CSRD Compliance

For many organizations, compliance with CSRD involves:

  • Aggregating data from disparate sources, such as supply chains, operations, and financial systems.
  • Ensuring data accuracy and consistency across multiple ESG metrics.
  • Staying updated with evolving regulations and standards.

These tasks are time-intensive and error-prone when handled manually. Smaller firms, which may lack dedicated ESG teams, and larger corporations, which manage extensive operations, are particularly vulnerable to these CSRD compliance challenges. Moreover, the growing demand for actionable insights from ESG reports adds another layer of complexity.

How AI Revolutionizes CSRD Compliance

Artificial Intelligence (AI) is proving to be a game-changer for businesses navigating CSRD compliance. It enhances efficiency, accuracy, and scalability, addressing the unique challenges posed by ESG reporting. Below are the primary ways AI facilitates compliance:

1. AI-Powered Data Integration and Harmonization

One of the core challenges of CSRD compliance is aggregating diverse data streams from multiple sources—financial systems, IoT devices, supply chains, and more. AI-powered tools excel in consolidating and standardizing these datasets. Key capabilities include:

  • Automatically extracting data from ERP, CRM, and other systems.
  • NLP-powered extraction of ESG metrics from unstructured text sources, such as PDFs and emails.
  • Identifying data silos and bridging gaps to ensure completeness.

2. Improving Data Accuracy with Machine Learning

Manual data entry and aggregation often result in inaccuracies. Machine learning (ML) algorithms enhance data quality by:

  • Detecting anomalies and inconsistencies, such as duplicate entries or implausible figures.
  • Filling in missing data points using predictive analytics.
  • Continuously improving accuracy over time by learning from historical data.

3. Real-Time Monitoring for Proactive Compliance

AI systems equipped with IoT integrations enable real-time monitoring of ESG metrics. Dashboards powered by AI can:

  • Provide up-to-the-minute insights into energy consumption, waste production, and supply chain efficiency.
  • Automatically flag compliance risks, such as exceeding emissions thresholds.
  • Send actionable alerts, allowing businesses to rectify issues before audits.

4. Streamlining the Reporting Process

The reporting process for CSRD compliance is highly detailed and requires adherence to specific frameworks like the European Sustainability Reporting Standards (ESRS). AI solutions streamline reporting workflows by:

  • Structuring data to align with multiple frameworks, including GRI y TCFD.
  • Ensuring regulatory compliance through built-in updates.

5. Scenario Analysis for Better Decision-Making

AI enables companies to go beyond compliance by using scenario analysis to plan sustainable strategies. Tools like digital twins simulate the impact of various operational decisions, such as:

  • Switching to renewable energy sources.
  • Optimizing logistics to reduce carbon footprints.
  • Assessing long-term financial risks tied to climate change.

These insights help businesses align sustainability efforts with growth objectives.

6. Enhancing Stakeholder Communication

Clear and effective communication of ESG performance is a critical requirement under CSRD. AI tools can facilitate better stakeholder engagement by:

  • Tailoring ESG reports to specific audiences, such as investors, regulators, or customers, through targeted insights and dynamic visualizations.
  • Translating technical ESG data into accessible language using natural language processing, making reports easier to understand for non-specialist stakeholders.
  • Developing interactive dashboards that allow stakeholders to explore ESG metrics in real-time, promoting transparency and trust.

By simplifying and personalizing the communication process, AI ensures that businesses can meet diverse stakeholder expectations while demonstrating accountability and commitment to sustainability.

CSRD’s Double Materiality Assessment with AI

A central principle of the CSRD is the concept of Doble evaluación de la materialidad. This framework requires organizations to analyze their sustainability performance from two complementary perspectives: financial and impact materiality. Financial materiality examines how environmental, social, and governance (ESG) factors affect a company’s financial health and performance, while impact materiality evaluates how the organization’s operations influence the environment, society, and economy. By addressing both dimensions, businesses can deliver comprehensive disclosures that reflect both their internal ESG risks and the external effects of their sustainability initiatives.

Artificial intelligence (AI) is transforming the way organizations approach Double Materiality Assessments, enhancing their accuracy, efficiency, and depth. For financial materiality, AI-driven predictive models can analyze ESG data to forecast risks, such as how extreme weather events might disrupt supply chains or how stricter emission regulations could affect operating costs.

For impact materiality, AI tools like NLP can process stakeholder feedback, analyze policy trends, and evaluate environmental or social metrics at scale. Machine learning algorithms can also identify hidden patterns in large datasets—such as correlations between operational practices and environmental degradation—enabling organizations to better quantify and disclose their external impacts. With AI’s capabilities, companies can transition from static, compliance-driven reporting to dynamic, data-informed strategies that meet CSRD requirements while driving real-world sustainability improvements.

CSRD’s Digital Tagging and AI

The CSRD introduces digital tagging as a mandatory requirement, ensuring that reported sustainability data is machine-readable and easily accessible. Leveraging the European Single Electronic Format (ESEF) [1], companies must tag their disclosures using standardized taxonomies, allowing stakeholders to analyze and compare sustainability performance across industries seamlessly. This approach not only promotes transparency but also simplifies compliance by aligning reported data with regulatory expectations and market needs.

Artificial intelligence further enhances the utility of digital tagging by automating data processing and analysis. AI tools can rapidly validate tagged data for accuracy, identify inconsistencies, and generate insights to improve reporting quality. Additionally, AI-powered platforms can integrate tagged data with external datasets, offering companies actionable intelligence on trends, risks, and opportunities. By combining digital tagging with AI, organizations can elevate their sustainability reporting from a compliance task to a strategic advantage.

A Broader View: Challenges in AI and ESG

In 2024, the rise of AI and its incorporation into predominant businesses has been significant. With a keen interest in environmental, social, and governance elements of AI, these businesses, alongside numerous investors, are expressing their concerns. In response, organizations worldwide are progressively taking measured actions to reduce the potential substantial risks associated with AI programs [2].

Creating and upkeeping AI platforms is anything but simple. They necessitate a significant amount of power to execute their learning algorithms and develop their data collections. It is estimated that the training of ChatGPT, a top-tier AI generative model, demanded close to 1,300 megawatt hours of energy for its training [3].

The environmental footprint of AI is exemplified by Llama, Meta’s primary AI base model, which was responsible for generating approximately 300 tons of CO2 emissions in the year 2023 alone [4]. This is roughly on par with the carbon footprint of 100 average individuals. Although this might not seem immense in light of our planet’s eight billion population, it is still noteworthy, especially when considering the development of numerous other large language models.

It is evident that the environmental impact of AI, particularly in terms of energy consumption and carbon emissions, is a growing concern. The staggering amount of energy required to train and operate AI models, along with the associated carbon footprint, raises questions about the sustainability of these technologies. While AI undoubtedly offers numerous benefits and advancements in various fields, it is essential to address and mitigate its environmental consequences. The industry must strive to develop more energy-efficient algorithms, explore renewable energy sources, and adopt responsible practices to minimize the ecological footprint of AI. Balancing technological progress with environmental responsibility is crucial for ensuring a sustainable future for both AI and our planet.

Conclusión

In conclusion, the integration of AI into CSRD compliance processes represents a transformative opportunity for businesses striving to meet their sustainability reporting obligations. By automating data collection, improving accuracy, and enabling proactive compliance, AI addresses the complexities and challenges inherent in ESG reporting. Beyond compliance, AI-driven tools empower organizations to gain actionable insights, enhance stakeholder communication, and adopt a forward-looking approach to sustainability.

However, as organizations leverage AI to streamline CSRD processes, they must remain mindful of the technology’s environmental and social implications. Balancing the advantages of AI in compliance with efforts to mitigate its ecological footprint is essential to align with the broader goals of sustainability.

Ultimately, by harnessing AI responsibly, businesses can not only simplify their CSRD compliance but also contribute to meaningful environmental and societal change, fostering trust and transparency with stakeholders and paving the way for a sustainable future.

Referencias:

[1] https://www.esma.europa.eu/issuer-disclosure/electronic-reporting

[2] https://www.statista.com/topics/11077/esg-and-ai/#topicOverview

[3] https://www.statista.com/statistics/1465348/power-consumption-of-ai-models/

[4] https://www.statista.com/statistics/1465353/total-co2-emission-of-ai-models/

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