Machine Learning is the foundation of Data Science
In a world obsessed with ChatGPT, DALL·E, Gemini, and other Generative AI platforms, many professionals are quietly wondering — is traditional Machine Learning (ML) still relevant? Is ML now outdated because of the rise of content-creating AI models? The simple answer is: Absolutely not.
Machine Learning is the foundation on which Generative AI has been built. Algorithms like Transformers, LSTM, Decision Trees, and Support Vector Machines — these ML models still power most real-world AI applications. You may not hear about them in the headlines, but they are everywhere: predicting stock prices, detecting credit card fraud, recommending movies, optimizing telecom networks, and even helping doctors in diagnosing diseases. These are structured prediction tasks where creativity is not needed but accuracy, scalability, and speed are essential.
Globally, industries like Healthcare, Telecom, Banking, Manufacturing, and Retail continue to deploy and invest in ML projects. For instance, telecom operators use ML models to predict equipment failure, customer churn, and optimize bandwidth allocation. Hospitals are using ML for early disease detection, while banks rely on it to prevent fraud and assess credit risks. None of these use cases require Generative AI — they need robust, time-tested ML models.
The ML landscape has also evolved to address the growing challenges of data privacy, explainability, and ethical AI. Explainable ML models, like Decision Trees and SHAP values, help companies understand why a prediction was made. This is critical in sectors like finance, healthcare, and public policy.
Furthermore, the rise of AutoML, low-code/no-code ML platforms, and MLOps (Machine Learning Operations) have made the ML lifecycle faster, easier, and more scalable. So, while the world is busy creating songs, poems, and images with Generative AI, ML continues to do the heavy lifting behind the scenes.
Summary: Machine Learning is far from outdated. It is evolving quietly and remains essential for structured, predictive, and decision-making tasks across the world.
References:
- https://www.quora.com/Is-learning-machine-learning-in-2024-worth-it-as-I-am-just-a-12th-pass-out-and-want-to-learn-it
- YouTube:
- https://www.youtube.com/watch?v=e9f4aS8Z3Xk (“Is Machine Learning Still Relevant?”)
Leave a comment