Cloud Wars
  • Home
  • Top 10
  • CW Minute
  • CW Podcast
  • Categories
    • AI and Copilots
    • Innovation & Leadership
    • Cybersecurity
    • Data
  • Member Resources
    • Cloud Wars AI Agent
    • Digital Summits
    • Guidebooks
    • Reports
  • About Us
    • Our Story
    • Tech Analysts
    • Marketing Services
  • Summit NA
  • Dynamics Communities
  • Ask Copilot
Twitter Instagram
  • Summit NA
  • Dynamics Communities
  • AI Copilot Summit NA
  • Ask Cloud Wars
Twitter LinkedIn
Cloud Wars
  • Home
  • Top 10
  • CW Minute
  • CW Podcast
  • Categories
    • AI and CopilotsWelcome to the Acceleration Economy AI Index, a weekly segment where we cover the most important recent news in AI innovation, funding, and solutions in under 10 minutes. Our goal is to get you up to speed – the same speed AI innovation is taking place nowadays – and prepare you for that upcoming customer call, board meeting, or conversation with your colleague.
    • Innovation & Leadership
    • CybersecurityThe practice of defending computers, servers, mobile devices, electronic systems, networks, and data from malicious attacks.
    • Data
  • Member Resources
    • Cloud Wars AI Agent
    • Digital Summits
    • Guidebooks
    • Reports
  • About Us
    • Our Story
    • Tech Analysts
    • Marketing Services
    • Login / Register
Cloud Wars
    • Login / Register
Home » Why People Are Still A Vital Necessity for Data and AI Success
Data

Why People Are Still A Vital Necessity for Data and AI Success

Pablo MorenoBy Pablo MorenoSeptember 1, 2022Updated:September 12, 20223 Mins Read
Facebook Twitter LinkedIn Email
Why People Are Needed for AI and Data Success
Share
Facebook Twitter LinkedIn Email

Artificial intelligence (AI) seems to be infused into everything today – cloud services, computer chips, phones, cars, and much more. However, AI is far from perfect and far from sentient. As such, the data output of AI is not always accurate which means that people are still needed to govern, monitor, and make decisions based on imperfect AI systems.

To understand what’s really going on, let’s cover the basics of AI first.

AI Systems and Data Experimentation

Put simply, artificial intelligence is the process by which systems and machines can imitate human cognitive processes. As we all know, the human cognitive process is based on trial and error involving experimentation of events, reaction or feedback, observation of results, and then back to experimentation.

AI systems follow a similar pattern, but the key difference is that systems can only experiment with data, while humans can experiment with data and actions. This is why it is so important to have good data so that the systems can experiment and conduct automated analysis on it.

After the analysis is complete, the systems produce an output based on rules that have been pre-defined by humans who then analyze the data. Reinforcing the need for human intervention and experience to understand WHY the AI generated the specific output, and HOW the output can be used to drive strategic outcomes.

Further, humans are crucial in the process as the AI-generated output can potentially deviate from the original criteria. Depending on the use case of AI, this can have impacts ranging from non-existent to life threatening.

Leveraging The Positives in “Data Drift”

The root cause of AI models going off course is due to something called “data drift”. This occurs when the new input data that the model is processing differs significantly from the original data to which the model was trained. While this may seem like a negative outcome, there are many positive things to consider as they can provide great strategic feedback to the operation team.

One example is the “data drift” may indicate a change in the overall trend of the data and the features collected by the model to produce the results – meaning the whole model pipeline and algorithm used need to be re-evaluated. Additionally, consider looking deeper at the raw data. Perhaps the features that were relevant when the AI model was built are no longer relevant.

Conversely, if there is no change in the trends of the data features, this may point to a data quality, corruption, obsolescence, or governance issues of the latest dataset. Again, this requires having right people monitoring the entire process.

Final Thoughts

Typically, overall data management responsibility falls squarely on the shoulders of the Chief Data Officer and their data teams. That means, in spite of the increase in data volumes and data sources, they are accountable for the data and AI output. Fortunately, many tools are available — both open source and commercially licensed — to optimize MLOps resiliency and manage “data drift” issues.

Finally, CXOs need to ensure they are providing the necessary resources – solutions and people – to the data teams to continuously hone the trustworthiness of the data, which is the foundation for all organizations in our digital-first world.

Bottom line: Both AI-generated and human-generated data needs scrutiny. So, stay alert!


Artificial Intelligence data Data Revolution featured Featured Post Open-Source Software
Share. Facebook Twitter LinkedIn Email
Pablo Moreno
  • Website
  • LinkedIn

Business Data Scientist and Project Manager (Waterfall & Agile) with experience in Business Intelligence, Robotics Process Automation, Artificial Intelligence, Advanced Analytics and Machine Learning in multiple business fields, gained within global business environment over the last 20 years. University Professor of ML and AI, International speaker and Author. Active supporter of Open-Source software development. Looking to grow with the next challenge.

Related Posts

Microsoft MCP Server Gives Broad AI Access to Corporate Assets Stored in Dataverse

July 18, 2025

Oracle’s $30B Cloud Deal Marks Historic Growth Shift

July 18, 2025

Google Cloud U.K. Moonshots Aim to Save $50 Billion and Engineer Time 

July 17, 2025

Google Cloud: U.K. Customers Showcase Power of AI and Cloud

July 17, 2025
Add A Comment

Comments are closed.

Recent Posts
  • Microsoft MCP Server Gives Broad AI Access to Corporate Assets Stored in Dataverse
  • Oracle’s $30B Cloud Deal Marks Historic Growth Shift
  • Google Cloud U.K. Moonshots Aim to Save $50 Billion and Engineer Time 
  • Google Cloud: U.K. Customers Showcase Power of AI and Cloud
  • SAP Partners with JA Worldwide to Equip 85,000+ Youth for Future Careers

  • Ask Cloud Wars AI Agent
  • Tech Guidebooks
  • Industry Reports
  • Newsletters

Join Today

Most Popular Guidebooks and Reports

SAP Business Network: A B2B Trading Partner Platform for Resilient Supply Chains

July 10, 2025

Using Agents and Copilots In M365 Modern Work

March 11, 2025

AI Data Readiness and Modernization: Tech and Organizational Strategies to Optimize Data For AI Use Cases

February 21, 2025

Special Report: Cloud Wars 2025 CEO Outlook

February 12, 2025

Advertisement
Cloud Wars
Twitter LinkedIn
  • Home
  • About Us
  • Privacy Policy
  • Get In Touch
  • Marketing Services
  • Do not sell my information
© 2025 Cloud Wars.

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

  • Login
Forgot Password?
Lost your password? Please enter your username or email address. You will receive a link to create a new password via email.
body::-webkit-scrollbar { width: 7px; } body::-webkit-scrollbar-track { border-radius: 10px; background: #f0f0f0; } body::-webkit-scrollbar-thumb { border-radius: 50px; background: #dfdbdb }