Leveraging AI for ESG investing (2024)

Published on November 13, 2020 by Charanjit Singh and Ramesh Dharanipathy

Among the key challenges of ESG analysis are data gaps and information quality. Artificial intelligence (AI) is now being used increasingly to mitigate these challenges, while reducing information processing time, to enable ESG analysts and investors to focus more effectively on deep-dive ESG research and engagement activities. We expect financial institutions to outsource most of these AI-driven ESG analytics to third-party service providers with expertise in the AI and ESG domains and well positioned to develop cost-effective, customised solutions.

ESG analysis faces data-/information-related challenges

With ESG-related elements now becoming mainstream in investment-decision making, there is an increasing need for quality and real-time ESG analysis. However, data limitations in the form of

(1) unstructured or incomplete data,

(2) the availability of more qualitative and ambiguous information,

(3) delayed information flow,

(4) changes in reporting patterns of companies, and

(5) different reporting templates/structures are making it difficult for investors/analysts to carry out meaningful, accurate and timely analysis.

AI/NLP enabling resolution; a range of use cases

To effectively resolve some of these data-/information-related challenges, a number of ESG solution providers and customers are now relying on natural language processing (NLP), a field of AI. This helps investors scan and analyse large quantities of unstructured ESG data. The algorithms can scan many years of sustainability reports and millions of articles in real time, sift through the information, and classify it at a much faster pace than analyst teams can, making the process more time- and resource-efficient. An AI company TruValue Labs claims that its analysis of the automotive sector over a year using AI would have taken a human analyst almost six years . Some of the NLP applications in ESG investing are summarised in Figure 1.

Leveraging AI for ESG investing (1)

AI investments for ESG analysis are set to grow

The Economist Intelligence Unit asked investors in 2019 how often AI was used specifically for ESG investing. The responses varied by investor type. Pension funds and sovereign wealth funds had the largest share of cumulative responses in the “always” and “often” categories, whereas insurance and reinsurance companies appeared to have the lowest share (refer to Figure 2 for details) . More such surveys/engagements with stakeholders from financial institutions reflect a growing focus on AI-/NLP-driven ESG investment decision making.

In 2018, an S&P subsidiary Greenwich Associates interviewed 30 CIOs, portfolio managers and investment analysts across North America, Europe and Asia to get their views on the evolution of investment research over the next 5-10 years. It concluded that many investors expect to increase their use of research from independent providers, and to integrate alternative data sources in their investment process. Around 40% of the respondents expected to increase their budget allocation for AI .

A US-based AI company Databricks held an online technical workshop in September 2020 titled “Data + AI in the World of ESG” that included attendees from large global financial institutions. When asked about whether their ESG strategies leverage data and AI, around 30% of them responded in the affirmative .

With ESG analysis now a focus area of investors and with many investors not fully satisfied with the ESG data/information quality, the segment share of AI budget allocation is likely to grow, in our view. Most of these investors are likely to outsource the development of these AI-/NLP-driven ESG analytics to third-party vendors providing cost-effective and quality output, combined with their expertise in the AI and ESG domains. The available output would enable ESG analysts and investors to focus on higher-value activities such as deep-dive ESG research and company engagement.

Leveraging AI for ESG investing (2)

How Acuity Knowledge Partners helps its ESG clients

Acuity Knowledge Partners is a private-equity-backed organisation, recently spun out of Moody’s Analytics. Our 3,000+ experts work with blue-chip asset managers, hedge funds and private wealth and banking organisations. Our ESG team has been servicing clients across the value chain, with deep-dive research on subjects including climate change-related opportunities and risks, SDG performance analysis, and ESG research and analytics. The team is now expanding its offerings using AI- and NLP-based solutions that are likely to yield significant cost and time savings in the analysis process.

Sources:

https://www.spglobal.com/marketintelligence/en/news-insights/trending/b6b49keq7ysfg9uxnk3_xw2

https://eiuperspectives.economist.com/sites/default/files/green_intelligence_eiu_e_fund.pdf

https://www.greenwich.com/press-release/could-ai-displace-investment-bank-research

https://databricks.com/blog/2020/09/09/its-an-esg-world-and-were-just-living-in-it.html

Tags:

AIArtificial IntelligenceData AnalyticsData combingData scienceESGESG ControversiesgreenwashingMonitoring ESG trendsNatural language Processing

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About the Authors

Charanjit Singh

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Charanjit Singh joined Acuity Knowledge Partners in October 2019 as the head of ESG Research. He has more than 20 years of experience in investment research and advisory, with a focus on ESG, climate change and clean energy. Previously, he was a Senior ESG Strategist with HSBC and the co-head of its India Onshore Research Centre. During his tenure of over 11 years at the bank, Charanjit was instrumental in building and leading three sector teams for the bank’s global research business in India.

Charanjit has been rated in the Asia Money survey amongst the top five analysts..Show More

Ramesh Dharanipathy

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Ramesh Dharanipathy has over 12 years of experience in investment research. Prior to joining Acuity Knowledge Partners, he worked as an Investment Analyst in a hedge fund. Ramesh holds a Bachelor of Engineering and MBA degrees from Indian universities.

Leveraging AI for ESG investing (2024)

FAQs

Leveraging AI for ESG investing? ›

AI for ESG Investment Decisions

How is AI being used in ESG? ›

Real-time ESG Data Collection: AI can gather vast amounts of data from internal and external sources, offering a comprehensive view of ESG performance. This allows companies to report on ESG performance with greater accuracy, reliability, and timeliness.

How to use AI for sustainability? ›

Prioritizing targeted, domain-specific AI models over constant size increases aligns with sustainability by optimizing resources and addressing specific use cases efficiently. This approach minimizes environmental impact and promotes responsible development.

What are the top 3 AI ETFs? ›

The Technology Select Sector SPDR ETF (XLK -1.90%), Invesco QQQ ETF (QQQ -1.65%), and the iShares Semiconductor ETF (SOXX -1.27%) are all worthy foundational holdings for unlocking baseline exposure to AI stocks.

What AI company is Elon Musk investing in? ›

When Elon Musk created his artificial-intelligence startup xAI last year, he said its researchers would work on existential problems like understanding the nature of the universe. Musk is also using xAI to pursue a more worldly goal: joining forces with his social-media company X.

What are the ESG issues with AI? ›

And with the volume of stored data growing exponentially leading to greater energy consumption and e-waste, the environmental impact of AI is predicted to grow. Other concerns relate to individuals' rights to non-discrimination, personal data protection and privacy.

What are the risks of AI as an ESG? ›

There are risks relating directly to the implementation of AI, including the possibility of data mismanagement, algorithmic bias, error and drift. There are risks associated with the complexity of AI and the challenge of explaining outcomes.

What is the future of AI in sustainability? ›

Environmental sustainability

In agriculture, AI can improve the monitoring of environmental conditions and crop yields. AI can also manage the supply and demand of renewable energy using deep learning, predictive capabilities, and intelligent grid systems.

How can generative AI help in sustainability? ›

Generative AI refers to deep-learning models that can take raw data and “learn” to generate statistically probable outputs when prompted. Leveraging generative AI to advance sustainability targets can enable businesses to realize both sustainability goals and financial targets quickly.

What is the most promising AI stock? ›

7 best-performing AI stocks
TickerCompanyPerformance (Year)
NVDANVIDIA Corp200.92%
SOUNSoundHound AI Inc71.43%
UPSTUpstart Holdings Inc53.78%
AVAVAeroVironment Inc.53.22%
3 more rows

What is the largest AI ETF? ›

What is the largest ETF for AI? The largest ETF that provides pure-play exposure to AI stocks in terms of the highest total assets is currently the Global X Robotics & Artificial Intelligence Thematic ETF (BOTZ).

Does Vanguard have an AI ETF? ›

If you are looking for an AI ETF, you won't find one from Vanguard as of October 2023. One such product that follows tech sector equities—which can have AI components—is the Vanguard Information Technology ETF (VGT). But AI stocks aren't its main emphasis, and they aren't even in the majority.

What AI is Jeff Bezos investing in? ›

Yet Amazon founder Jeff Bezos recently placed a bet on Perplexity AI, a startup that, despite the daunting odds, is taking on the search giant. “Startups are all about being bold,” Perplexity CEO Aravind Srinivas recently told Fortune.

What AI company did Bill Gates invest in? ›

Gates' unsurprising top AI stock

You probably won't be surprised in the least by Gates' top AI stock. Almost 34% of the Gates Foundation Trust's portfolio is invested in Microsoft (MSFT 1.65%). The billionaire co-founded the technology company and served as its CEO for 25 years.

Does Elon Musk still own OpenAI? ›

Elon left OpenAI, saying there needed to be a relevant competitor to Google/DeepMind and that he was going to do it himself. He said he'd be supportive of us finding our own path.

What are the benefits of AI in ESG? ›

AI-driven data analytics enable companies to gather, assess, and report ESG metrics accurately and efficiently. This transparency builds trust and encourages responsible practices, fostering a positive corporate image.

What is the meaning of ESG in AI? ›

The rapidly growing research landscape in finance, encompassing environmental, social, and governance (ESG) topics and associated Artificial Intelligence (AI) applications, presents challenges for both new researchers and seasoned practitioners.

Why AI is critical to meet rising ESG demands? ›

AI does this by tackling three key challenges facing corporate sustainability teams today: turning ESG goals into actionable plans, unifying fragmented ESG data, and responding to the shifting concerns of stakeholders, including investors, regulators, nongovernmental organizations, customers, and peers.

What is the intersection of AI and ESG? ›

AI can be a powerful tool for ESG as a strategic corporate asset. AI enables more robust reporting, modelling and decision making on ESG. Integrate ESG into your core business strategy to attract investors, enhance brand reputation, and unlock new business opportunities.

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