Close Menu
    Trending
    • Blazing-Fast ML Model Serving with FastAPI + Redis (Boost 10x Speed!) | by Sarayavalasaravikiran | AI Simplified in Plain English | Jul, 2025
    • AI Knowledge Bases vs. Traditional Support: Who Wins in 2025?
    • Why Your Finance Team Needs an AI Strategy, Now
    • How to Access NASA’s Climate Data — And How It’s Powering the Fight Against Climate Change Pt. 1
    • From Training to Drift Monitoring: End-to-End Fraud Detection in Python | by Aakash Chavan Ravindranath, Ph.D | Jul, 2025
    • Using Graph Databases to Model Patient Journeys and Clinical Relationships
    • Cuba’s Energy Crisis: A Systemic Breakdown
    • AI Startup TML From Ex-OpenAI Exec Mira Murati Pays $500,000
    AIBS News
    • Home
    • Artificial Intelligence
    • Machine Learning
    • AI Technology
    • Data Science
    • More
      • Technology
      • Business
    AIBS News
    Home»Artificial Intelligence»AI Agents for a More Sustainable World
    Artificial Intelligence

    AI Agents for a More Sustainable World

    Team_AIBS NewsBy Team_AIBS NewsApril 30, 2025No Comments9 Mins Read
    Share Facebook Twitter Pinterest LinkedIn Tumblr Reddit Telegram Email
    Share
    Facebook Twitter LinkedIn Pinterest Email


    for sustainability weakens, the necessity for long-term sustainable practices has by no means been extra vital.

    How can we use analytics, boosted by agentic AI, to help firms of their inexperienced transformation?

    For years, the main target of my weblog was all the time on utilizing Provide Chain Analytics methodologies and instruments to unravel particular issues.

    Four Types of Supply Chain Analytics – (Picture by Samir Saci)

    At LogiGreen, the startup I based, we deploy these analytics options to assist retailers, producers, and logistics firms meet their sustainability targets.

    On this article, I’ll reveal how we will supercharge these current options with AI brokers.

    The target is to make it simpler and sooner for firms to implement Sustainability initiatives throughout their provide chains.

    Obstacles for Inexperienced Transformations of Corporations

    As political and monetary pressures shift focus away from sustainability, making the inexperienced transformation simpler and extra accessible has by no means been extra pressing.

    Final week, I attended the worldwide ChangeNOW convention, held in my hometown, Paris.

    ChangeNOW in Grand Palais of Paris – (Picture by Samir Saci)

    This convention introduced collectively innovators, entrepreneurs and decision-makers dedicated to constructing a greater future, regardless of the difficult context.

    It was a superb alternative to satisfy a few of my readers and join with leaders driving change throughout industries.

    Via these discussions, one clear message emerged.

    Corporations face three predominant obstacles when driving sustainable transformation:

    • An absence of visibility on operational processes,
    • The complexity of sustainability reporting necessities,
    • The problem of designing and implementing initiatives throughout the worth chain.
    Examples of Challenges Confronted by Corporations – (Picture by Samir Saci)

    Within the following sections, I’ll discover how we will leverage Agentic AI to beat two of those main obstacles:

    • Bettering reporting to respect the rules
    • Accelerating the design and execution of sustainable initiatives

    Fixing Reporting Challenges with AI Brokers

    Step one in any sustainable roadmap is to construct the reporting basis.

    Corporations should measure and publish their present environmental footprint earlier than taking motion.

    Environmental Social, and Governance Reporting – (Picture by Samir Saci)

    For instance, ESG reporting communicates an organization’s environmental efficiency (E), social duty (S), and governance constructions’ energy (G).

    Let’s begin by tackling the issue of knowledge preparation.

    Challenge 1: Knowledge Assortment and Processing

    Nevertheless, many firms face important challenges proper from the beginning, starting with information assortment.

    Sort of Data to Accumulate for Life Cycle Assessment – (Picture by Samir Saci)

    In a earlier article, I launched the idea of Life Cycle Assessment (LCA) — a way for evaluating a product’s environmental impacts from uncooked materials extraction to disposal.

    This requires a posh information pipeline to hook up with a number of methods, extract uncooked information, course of it and retailer it in a knowledge warehouse.

    Example of Data Infrastructure for a Life Cycle Assessment – (Picture by Samir Saci)

    These pipelines serve to generate reviews and supply harmonised information sources for analytics and enterprise groups.

    How can we assist non-technical groups navigate this complicated panorama?

    In LogiGreen, we discover the utilization of an AI Agent for text-to-SQL purposes.

    Textual content-to-SQL purposes for Provide Chain – (Picture by Samir Saci)

    The nice added worth is that enterprise and operational groups now not depend on analytics specialists to construct tailor-made options.

    As a Provide Chain Engineer myself, I perceive the frustration of operations managers who should create help tickets simply to extract information or calculate a brand new indicator.

    Instance of Interplay with an Agent – (Picture by Samir Saci)

    With this AI agent, we offer an Analytics-as-a-Service expertise for all customers, permitting them to formulate their demand in plain English.

    For example, we assist reporting groups construct particular prompts to gather information from a number of tables to feed a report.

    “Please generate a desk displaying the sum of CO₂ emissions per day for all deliveries from warehouse XXX.”

    For extra data on how I carried out this agent, check this article 👇.

    Automate Supply Chain Analytics Workflows with AI Agents using n8n | Towards Data Science↗

    Challenge 2: Reporting Format

    Even after gathering the information, firms face one other problem: producing the report within the required codecs.

    In Europe, the brand new Company Sustainability Reporting Directive (CSRD) gives a framework for firms to reveal their environmental, social, and governance impacts.

    Underneath CSRD, firms should submit structured reviews in XHTML format.

    Easy Instance of an xHTML report that’s not compliant – (Picture by Samir Saci)

    This doc, enriched with detailed ESG taxonomies, requires a course of that may be extremely technical and liable to errors, particularly for firms with low information maturity.

    AI Agent for CSRD Report Format Audit – (Picture by Samir Saci)

    Due to this fact, we’ve experimented with utilizing an AI Agent to mechanically audit the report and supply a abstract to non-technical customers.

    How does it work?

    Customers ship their report by E-mail.

    E-mail with the report in attachment – (Picture by Samir Saci)

    The endpoint mechanically downloads the hooked up file, performs an audit of the content material and format, trying to find errors or lacking values.

    The outcomes are then despatched to an AI Agent, which generates a transparent abstract of the audit in English.

    Instance of System Immediate of the AI Agent – (Picture by Samir Saci)

    The agent sends a report again to the sender.

    We have now developed a completely automated service to audit reviews created by sustainability consultants (our buyer is a consultancy agency) that anybody can use with out requiring technical expertise.

    Eager about implementing an identical answer?

    I constructed this undertaking utilizing the no-code platform n8n.

    You could find the ready-to-deploy template in my n8n creator profile.

    Now that we’ve explored options for reporting, we will transfer on to the core of inexperienced transformations: designing and implementing sustainable initiatives.

    Agentic AI for Provide Chain Analytics Merchandise

    Analytics Merchandise for Sustainability

    My focus during the last two years has been on constructing analytics merchandise, together with net purposes, APIs and automatic workflows.

    What’s a sustainability roadmap?

    In my earlier expertise, it usually began with a push from high administration.

    For instance, management would ask the availability chain division to measure the corporate’s CO₂ emissions for the baseline 12 months of 2021.

    I used to be answerable for estimating the Scope 3 emissions of the distribution chain.

    Supply Chain Sustainability Reporting – (Picture by Samir Saci)

    That is why I carried out the methodology introduced within the article linked above.

    As soon as a baseline is established, a discount goal is outlined with a transparent deadline.

    For example, your administration can decide to a 30% discount by 2030.

    The position of the availability chain division is then to design and implement initiatives that cut back CO2 emissions.

    Example of a roadmap with initiatives – (Picture by Samir Saci)

    Within the instance above, the corporate reaches a 30% discount by 12 months N by means of initiatives throughout manufacturing, logistics, retail operations and carbon offsetting.

    To help this journey, we develop analytics merchandise that simulate the impression of various initiatives, serving to groups to design optimum sustainability methods.

    Example of analytics products to support sustainability roadmaps – (Picture by Samir Saci)

    Up to now, the merchandise have been within the type of net purposes with a person interface and a backend linked to their information sources.

    Example of UI for the Supply Chain Optimisation Module – (Picture by Samir Saci)

    Every module gives key insights to help operational decision-making.

    “Primarily based on the outputs, we might obtain a 32% CO₂ emissions discount by relocating our manufacturing facility from Brazil to the USA.”

    Nevertheless, for an viewers unfamiliar with information analytics, interacting with these purposes can nonetheless really feel overwhelming.

    How can we use AI brokers to raised help these customers?

    Agentic AI for Analytics Merchandise

    We are actually evolving these options by embedding autonomous AI brokers that work together instantly with analytics fashions and instruments by means of API endpoints.

    These brokers are designed to information non-technical customers by means of your entire journey, ranging from a easy query:

    “How can I cut back the CO₂ emissions of my transportation community?”

    The AI agent then takes cost of:

    • Formulating the proper queries,
    • Connecting to the optimisation fashions,
    • Decoding the outcomes,
    • And offering actionable suggestions.

    The person doesn’t want to know how the backend works.
    They obtain a direct, business-oriented output like:

    “Implement Resolution XXX with an funding finances of YYY euros to attain a CO₂ emissions discount of ZZZ tons CO₂eq.”

    By combining optimisation fashions, APIS, and AI-driven steerage, we provide an Analytics-as-a-Service expertise.

    We need to make sustainability analytics accessible to all groups, not simply technical specialists.

    Conclusion

    Utilizing AI Responsibly

    Earlier than closing, a phrase about minimising the environmental footprint of the options we develop.

    We’re absolutely conscious of the environmental impacts of utilizing LLMs.

    Due to this fact, the core of our merchandise stays constructed on deterministic optimisation fashions, fastidiously designed by us.

    Giant Language Fashions (LLMS) are used solely after they present actual added worth, primarily to simplify person interplay or automate non-critical duties.

    This enables us to:

    • Assure robustness and reliability: for a similar enter, customers persistently obtain the identical output, avoiding stochastic behaviours typical of pure AI fashions
    • Minimise power consumption: by lowering the variety of tokens utilized in our API calls and optimising each immediate to be as environment friendly as attainable.

    In brief, we’re dedicated to constructing options which might be sustainable by their design.

    AI Brokers are a sport changer for Provide Chain Analytics

    For me, AI brokers have gotten highly effective allies in serving to our clients speed up their sustainability roadmaps.

    As I work together with a non-technical audience, this can be a aggressive benefit, because it permits me to offer Analytics-as-a-Service options that empower operational groups.

    This simplifies one of many largest obstacles firms face when beginning their inexperienced transformation.

    By speaking insights in plain language and guiding customers by means of their journey, AI brokers assist bridge the hole between data-driven options and operational execution.

    Let’s join on Linkedin and Twitter; I’m a Provide Chain Engineer utilizing information analytics to enhance Logistics operations and cut back prices.

    For consulting or recommendation on analytics and sustainable Supply Chain transformation, be at liberty to contact me through Logigreen Consulting.

    Samir Saci | Data Science & Productivity
    A technical blog focusing on Data Science, Personal Productivity, Automation, Operations Research and Sustainable…samirsaci.com





    Source link

    Share. Facebook Twitter Pinterest LinkedIn Tumblr Email
    Previous ArticleHow to Build a RAG System from Scratch using LangChain and FAISS | by Akansha_Kumari | Apr, 2025
    Next Article Why Communication Flaws Are Costing You More Than You Think
    Team_AIBS News
    • Website

    Related Posts

    Artificial Intelligence

    How to Access NASA’s Climate Data — And How It’s Powering the Fight Against Climate Change Pt. 1

    July 1, 2025
    Artificial Intelligence

    STOP Building Useless ML Projects – What Actually Works

    July 1, 2025
    Artificial Intelligence

    Implementing IBCS rules in Power BI

    July 1, 2025
    Add A Comment
    Leave A Reply Cancel Reply

    Top Posts

    Blazing-Fast ML Model Serving with FastAPI + Redis (Boost 10x Speed!) | by Sarayavalasaravikiran | AI Simplified in Plain English | Jul, 2025

    July 2, 2025

    I Tried Buying a Car Through Amazon: Here Are the Pros, Cons

    December 10, 2024

    Amazon and eBay to pay ‘fair share’ for e-waste recycling

    December 10, 2024

    Artificial Intelligence Concerns & Predictions For 2025

    December 10, 2024

    Barbara Corcoran: Entrepreneurs Must ‘Embrace Change’

    December 10, 2024
    Categories
    • AI Technology
    • Artificial Intelligence
    • Business
    • Data Science
    • Machine Learning
    • Technology
    Most Popular

    Artificial Intelligence Concerns & Predictions For 2025

    December 10, 2024

    A real-life flying car takes to the skies

    February 23, 2025

    What They Don’t Tell You About Taking ML Models to Production | by Priti | May, 2025

    May 20, 2025
    Our Picks

    Blazing-Fast ML Model Serving with FastAPI + Redis (Boost 10x Speed!) | by Sarayavalasaravikiran | AI Simplified in Plain English | Jul, 2025

    July 2, 2025

    AI Knowledge Bases vs. Traditional Support: Who Wins in 2025?

    July 2, 2025

    Why Your Finance Team Needs an AI Strategy, Now

    July 2, 2025
    Categories
    • AI Technology
    • Artificial Intelligence
    • Business
    • Data Science
    • Machine Learning
    • Technology
    • Privacy Policy
    • Disclaimer
    • Terms and Conditions
    • About us
    • Contact us
    Copyright © 2024 Aibsnews.comAll Rights Reserved.

    Type above and press Enter to search. Press Esc to cancel.