Generative AI for ESG Reporting: A Guide to Sustainability and Accountability

This audiobook is narrated by a digital voice.


Environmental, Social, and Governance (ESG) reporting is crucial for companies to demonstrate their commitment to sustainability. However, traditional methods are often time-consuming, inaccurate, and lack consistency. This book explores how Generative AI (GAI) can revolutionize ESG reporting, promoting efficiency, transparency, and ultimately, a more sustainable future.

Part 1 delves into the limitations of traditional reporting. Manual data collection is error-prone and inefficient. Inconsistent reporting formats make comparisons between companies difficult. GAI emerges as a powerful solution. It can automate data collection from diverse sources, improving accuracy and streamlining the process.

Part 2 showcases the practical applications of GAI in different ESG areas. Environmental data takes center stage. GAI can estimate emissions across facilities, predict climate risks, and suggest mitigation strategies. Social impact measurement becomes more objective. GAI analyzes employee data to identify potential biases and predict social risks related to labor practices or diversity. Building a sustainable supply chain is simplified. GAI assesses supplier practices, allowing companies to prioritize responsible partners.

Part 3 explores how GAI streamlines the reporting process. Automating data collection frees up resources and reduces errors. GAI then analyzes the data and generates clear, concise reports that highlight key trends and areas for improvement. This allows companies to showcase their sustainability efforts in a more compelling and informative way. However, responsible implementation is crucial. Mitigating bias in GAI models and ensuring transparency are essential for building trust.


1145625752
Generative AI for ESG Reporting: A Guide to Sustainability and Accountability

This audiobook is narrated by a digital voice.


Environmental, Social, and Governance (ESG) reporting is crucial for companies to demonstrate their commitment to sustainability. However, traditional methods are often time-consuming, inaccurate, and lack consistency. This book explores how Generative AI (GAI) can revolutionize ESG reporting, promoting efficiency, transparency, and ultimately, a more sustainable future.

Part 1 delves into the limitations of traditional reporting. Manual data collection is error-prone and inefficient. Inconsistent reporting formats make comparisons between companies difficult. GAI emerges as a powerful solution. It can automate data collection from diverse sources, improving accuracy and streamlining the process.

Part 2 showcases the practical applications of GAI in different ESG areas. Environmental data takes center stage. GAI can estimate emissions across facilities, predict climate risks, and suggest mitigation strategies. Social impact measurement becomes more objective. GAI analyzes employee data to identify potential biases and predict social risks related to labor practices or diversity. Building a sustainable supply chain is simplified. GAI assesses supplier practices, allowing companies to prioritize responsible partners.

Part 3 explores how GAI streamlines the reporting process. Automating data collection frees up resources and reduces errors. GAI then analyzes the data and generates clear, concise reports that highlight key trends and areas for improvement. This allows companies to showcase their sustainability efforts in a more compelling and informative way. However, responsible implementation is crucial. Mitigating bias in GAI models and ensuring transparency are essential for building trust.


12.99 In Stock
Generative AI for ESG Reporting: A Guide to Sustainability and Accountability

Generative AI for ESG Reporting: A Guide to Sustainability and Accountability

by Anand Vemula

Narrated by Digital Voice Madison G

Unabridged — 24 minutes

Generative AI for ESG Reporting: A Guide to Sustainability and Accountability

Generative AI for ESG Reporting: A Guide to Sustainability and Accountability

by Anand Vemula

Narrated by Digital Voice Madison G

Unabridged — 24 minutes

Audiobook (Digital)

$12.99
FREE With a B&N Audiobooks Subscription | Cancel Anytime
$0.00

Free with a B&N Audiobooks Subscription | Cancel Anytime

START FREE TRIAL

Already Subscribed? 

Sign in to Your BN.com Account


Listen on the free Barnes & Noble NOOK app


Related collections and offers

FREE

with a B&N Audiobooks Subscription

Or Pay $12.99

Overview

This audiobook is narrated by a digital voice.


Environmental, Social, and Governance (ESG) reporting is crucial for companies to demonstrate their commitment to sustainability. However, traditional methods are often time-consuming, inaccurate, and lack consistency. This book explores how Generative AI (GAI) can revolutionize ESG reporting, promoting efficiency, transparency, and ultimately, a more sustainable future.

Part 1 delves into the limitations of traditional reporting. Manual data collection is error-prone and inefficient. Inconsistent reporting formats make comparisons between companies difficult. GAI emerges as a powerful solution. It can automate data collection from diverse sources, improving accuracy and streamlining the process.

Part 2 showcases the practical applications of GAI in different ESG areas. Environmental data takes center stage. GAI can estimate emissions across facilities, predict climate risks, and suggest mitigation strategies. Social impact measurement becomes more objective. GAI analyzes employee data to identify potential biases and predict social risks related to labor practices or diversity. Building a sustainable supply chain is simplified. GAI assesses supplier practices, allowing companies to prioritize responsible partners.

Part 3 explores how GAI streamlines the reporting process. Automating data collection frees up resources and reduces errors. GAI then analyzes the data and generates clear, concise reports that highlight key trends and areas for improvement. This allows companies to showcase their sustainability efforts in a more compelling and informative way. However, responsible implementation is crucial. Mitigating bias in GAI models and ensuring transparency are essential for building trust.



Product Details

BN ID: 2940191132624
Publisher: Anand Vemula
Publication date: 09/19/2024
Edition description: Unabridged
From the B&N Reads Blog

Customer Reviews