Close Menu

    Subscribe to Updates

    AITS newsletter
    What's Hot

    Larry Summers Encourages the Significance of OpenAI Technology as ‘Extraordinarily Important’

    December 2, 2023

    Discover the Latest Ethereum Collection and AI Technology on WWD

    December 1, 2023

    C3.ai Stock Surges: What’s Behind Today’s Rally? | The Motley Fool

    December 1, 2023
    Facebook X (Twitter) Instagram
    • About Us
    • Contact Us
    • Disclaimer
    • Privacy Policy
    Facebook X (Twitter) Instagram Pinterest Vimeo
    AITS – AI Tools SoftwareAITS – AI Tools Software
    • Home
    • AI in Business
    • AI solutions
    • AI Tools
    • Automation for Business
    • ChatGPT
    • OpenAI
    Subscribe
    AITS – AI Tools SoftwareAITS – AI Tools Software
    Home»AI Tools»How businesses can measure the success of AI applications
    AI Tools

    How businesses can measure the success of AI applications

    By August 20, 2023No Comments5 Mins Read
    Share Facebook Twitter Pinterest LinkedIn Tumblr Reddit Telegram Email
    Share
    Facebook Twitter LinkedIn Pinterest Email

    Head over to our on-demand library to view sessions from VB Transform 2023. Register Here


    Artificial intelligence — generative AI, in particular — is the talk of the town. Applications like ChatGPT and LaMDA have sent shockwaves across industries, with the potential to revolutionize the way we work and interact with technology.

    One fundamental characteristic that distinguishes AI from traditional software is its non-deterministic nature. Even with the same input, different rounds of computing produce different results. While this characteristic contributes significantly to AI’s exciting technological potential, it also presents challenges, particularly in measuring the effectiveness of AI-based applications.

    Below are some of the intricacies of these challenges, as well as some ways that strategic R&D management can approach solving them.

    The nature of AI applications

    Unlike traditional software systems where repetition and predictability are both expected and crucial to functionality, the non-deterministic nature of AI applications means that they do not produce consistent, predictable results from the same inputs. Nor should they — ChatGPT wouldn’t make such a splash if it spat out the same scripted responses over and over again instead of something new each time.

    Event

    VB Transform 2023 On-Demand

    Did you miss a session from VB Transform 2023? Register to access the on-demand library for all of our featured sessions.

     

    Register Now

    This unpredictability stems from the algorithms employed in machine learning and deep learning, which rely on statistical models and complex neural networks. These AI systems are designed to continually learn from data and make informed decisions, leading to varying outputs based on the context, training input, and model configurations.

    The challenge of measuring success

    With their probabilistic outcomes, algorithms programmed for uncertainty, and reliance on statistical models, AI applications make it challenging to define a clear-cut measure of success based on predetermined expectations. In other words, AI can, in essence, think, learn and create in ways akin to the human mind … but how do we know if what it thinks is right?

    Another critical complication is the influence of data quality and diversity. AI models rely heavily on the quality, relevance and diversity of the data they are trained on — the information they “learn” from. For these applications to succeed, they must be trained on representative data that encompasses a diverse range of scenarios, including edge cases. Assessing the adequacy and accurate representation of training data becomes crucial to determining the overall success of an AI application. However, given the relative novelty of AI and the yet-to-be-determined standards for the quality and diversity of data it uses, the quality of outcomes fluctuates widely across applications.

    Sometimes, however, it is the influence of the human mind — more specifically, contextual interpretation and human bias — that complicates measuring success in artificial intelligence. AI tools often require this human assessment because these applications need to adapt to different situations, user biases and other subjective factors.

    Accordingly, measuring success in this context becomes a complex task as it involves capturing user satisfaction, subjective evaluations, and user-specific outcomes, which may not be easily quantifiable.

    Overcoming the challenges

    Understanding the background behind these complications is the first step to coming up with the strategies needed to improve success evaluation and make AI tools work better. Here are three strategies that can help:

    1. Define probabilistic success metrics

    Given the inherent uncertainty in AI application results, those tasked with assessing their success must come up with entirely new metrics designed specifically to capture probabilistic outcomes. Success models that might have made sense for traditional software systems are simply incompatible with AI tool configurations.

    Instead of focusing solely on deterministic performance measures such as accuracy or precision, incorporating probabilistic measures like confidence intervals or probability distributions — statistical metrics that assess the probability of different outcomes within specific parameters — can provide a more comprehensive picture of success.

    2. More robust validation and evaluation

    Establishing rigorous validation and evaluation frameworks is essential for AI applications. This includes comprehensive testing, benchmarking against relevant sample datasets, and conducting sensitivity analyses to assess the system’s performance under varying conditions. Regularly updating and retraining models to adapt to evolving data patterns helps maintain accuracy and reliability.

    3. User-centric evaluation

    AI success does not solely exist within the confines of the algorithm. The effectiveness of the outputs from the standpoint of those who receive them is equally important.

    As such, it is crucial to incorporate user feedback and subjective assessments when measuring the success of AI applications, particularly for consumer-facing tools. Gathering insights through surveys, user studies and qualitative assessments can provide valuable information about user satisfaction, trust and perceived utility. Balancing objective performance metrics with user-centric output evaluations will yield a more holistic view of success.

    Assess for success

    Measuring the success of any given AI tool requires a nuanced approach that acknowledges the probabilistic nature of its outputs. Those involved in creating and fine-tuning AI in any capacity, particularly from an R&D perspective, must recognize the challenges posed by this inherent uncertainty.

    Only by defining appropriate probabilistic metrics, conducting rigorous validation and incorporating user-centric evaluations can the industry effectively navigate the thrilling, uncharted waters of artificial intelligence.

    Dima Dobrinsky is VP R&D at Panoply by SQream.

    DataDecisionMakers

    Welcome to the VentureBeat community!

    DataDecisionMakers is where experts, including the technical people doing data work, can share data-related insights and innovation.

    If you want to read about cutting-edge ideas and up-to-date information, best practices, and the future of data and data tech, join us at DataDecisionMakers.

    You might even consider contributing an article of your own!

    Read More From DataDecisionMakers

    Source link

    Share. Facebook Twitter Pinterest LinkedIn Tumblr Email
    Previous ArticleIBM releases geospatial model on open AI platform
    Next Article Fine-Tuning, Prompt Engineering are Keys to Delivering Real Generative AI Solutions to Commercial Pharma Operations Today

    Related Posts

    AI Tools

    C3.ai Stock Surges: What’s Behind Today’s Rally? | The Motley Fool

    December 1, 2023
    AI Tools

    Gain a Competitive Edge with Backlinks in the AI Era: A Must for Marketers

    December 1, 2023
    AI Tools

    Why AI Could Revolutionize Your Dental Experience

    November 30, 2023
    Add A Comment

    Comments are closed.

    Breaking News AI Tools

    Larry Summers Encourages the Significance of OpenAI Technology as ‘Extraordinarily Important’

    December 2, 2023

    Discover the Latest Ethereum Collection and AI Technology on WWD

    December 1, 2023

    C3.ai Stock Surges: What’s Behind Today’s Rally? | The Motley Fool

    December 1, 2023

    “HPE: AI’s impact on enterprise is not ‘overstated,’ says new report” – The Register’s latest findings

    December 1, 2023

    Discover How Robotics and Automation Are Transforming Industries

    December 1, 2023

    Unleashing the power of AI in solution enhancement: Insights from Splunk’s Paul Kurtz

    December 1, 2023

    Diverse Founders Face Double Standards: Insights from the OpenAI Saga

    December 1, 2023

    Unleashing the Power of AI for Maximum Process Optimization

    December 1, 2023

    ChatGPT: The App Apple and Google Missed for App of the Year

    December 1, 2023

    Unlock the Power of AI Alchemy: Turn Your Data into Gold

    December 1, 2023

    Gain a Competitive Edge with Backlinks in the AI Era: A Must for Marketers

    December 1, 2023

    Amazon offers free AI training to 2 million people by 2025 – don’t miss out!

    December 1, 2023

    OpenAI CEO Sam Altman’s stunning real estate portfolio in Napa and Big Sur

    December 1, 2023

    Discover the Potential of Generative AI in Generating Income

    November 30, 2023

    Mastering Advanced Data Analysis with ChatGPT’s Code Interpreter: GPT-4 for Data Scientists

    November 30, 2023

    Discover the 7 Best Project Management Software for 2023 – Get Ahead with Robotics & Automation News

    November 30, 2023

    Why AI Could Revolutionize Your Dental Experience

    November 30, 2023

    Revolutionary AI Mammography Platform Launched by GE HealthCare in Collaboration with iCAD

    November 30, 2023

    The Take: OpenAI’s pivotal decision – Is AI a threat to humanity? | Latest in Technology News

    November 30, 2023

    How Big Corporations are Navigating the Challenge of Trustworthy A.I. Data

    November 30, 2023

    “Couchbase’s new columnar side store aims to outshine MongoDB” – The Register

    November 30, 2023

    Are Our AI Models Responsible? Research Suggests Otherwise

    November 30, 2023

    The Impact of AI on Payment Systems – A Comprehensive Analysis

    November 30, 2023

    OpenAI’s Latest Board Announces Microsoft’s Observer Role in Major Power Shift

    November 30, 2023

    Nvidia CEO Jensen Huang predicts Artificial General Intelligence (AGI) will be achieved within 5 years

    November 29, 2023

    “The Clergy’s jobs at risk as AI threatens to automate them away” – The Register

    November 29, 2023

    Maximize Your Healthcare Software Investment with These Top 7 Robotics and Automation Solutions

    November 29, 2023

    Amazon Introduces Q, the Revolutionary AI Assistant for the Workplace – See How It’s Changing the Game!

    November 29, 2023

    Is This Top Artificial Intelligence (AI) Stock Too Pricey to Invest In?

    November 29, 2023

    Discover How OpenAI’s Custom Chatbots Are Exposing Their Secrets

    November 29, 2023
    Stay In Touch
    • Facebook
    • YouTube
    • TikTok
    • WhatsApp
    • Twitter
    • Instagram
    Latest Reviews
    85
    AI solutions
    2 Mins Read

    Pico 4 Review: Should You Actually Buy One Instead Of Quest 2?

    Tom KuJanuary 15, 2021 Uncategorized
    8.1
    Uncategorized
    2 Mins Read

    A Review of the Venus Optics Argus 18mm f/0.95 MFT APO Lens

    Tom KuJanuary 15, 2021 Uncategorized
    8.9
    Ai in Business
    6 Mins Read

    DJI Avata Review: Immersive FPV Flying For Drone Enthusiasts

    Tom KuJanuary 15, 2021 Uncategorized

    Subscribe to Updates

    Join the Premium AITS AI Newsletter FREE for Life!

    AITS newsletter
    Most Popular

    Microsoft Co-Founder Bill Gates Visits EU, Steers Clean Energy Talks

    January 11, 2020

    Tablet PC Market to Witness Exponential Growth by 2028, Sources Say

    January 11, 2020

    Save $25 on Philips Wired Headphone For A Great Sounding Over-Ear Headphone

    January 12, 2020
    Our Picks

    Larry Summers Encourages the Significance of OpenAI Technology as ‘Extraordinarily Important’

    December 2, 2023

    Discover the Latest Ethereum Collection and AI Technology on WWD

    December 1, 2023

    C3.ai Stock Surges: What’s Behind Today’s Rally? | The Motley Fool

    December 1, 2023

    Subscribe to Updates

    Get the latest creative news from FooBar about art, design and business.

    AITS newsletter

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