A stack of computer chips, with the image of a bot’s head on top, expands outward representing machine learning vs. deep learning.

Deep Learning vs. Machine Learning: What's the Difference?

Explore the differences between deep learning and machine learning, including their definitions, applications, and impact on AI.

Enterprise AI built into CRM for business

Salesforce Artificial Intelligence

Salesforce AI delivers trusted, extensible AI grounded in the fabric of our Salesforce Platform. Utilize our AI in your customer data to create customizable, predictive, and generative AI experiences to fit all your business needs safely. Bring conversational AI to any workflow, user, department, and industry with Einstein.

A welcome message with Astro holding up the Einstein logo.

AI Built for Business

Enterprise AI built directly into your CRM. Maximize productivity across your entire organization by bringing business AI to every app, user, and workflow. Empower users to deliver more impactful customer experiences in sales, service, commerce, and more with personalized AI assistance.

Five robotic characters standing together with a digital screen displaying "Agentforce" and options: Sales Development Representative Agent, Service Agent, Sales Coach Agent.

Ready to build your own agents?

See how you can create and deploy assistive AI experiences to solve issues faster and work smarter.

Deep Learning vs. Machine Learning FAQs

Machine Learning is part of Artificial Intelligence (AI). It lets systems learn from data and find patterns. This helps them make predictions or decisions with less human programming.

Deep Learning is a specialized subfield of Machine Learning that uses artificial neural networks with multiple layers (deep networks) to learn complex patterns from large datasets.

DL models automatically learn features from raw data (e.g., images, text) through their layered neural networks, while traditional ML often requires manual feature engineering.

Advantages include superior performance on complex, unstructured data (images, audio, video), ability to handle vast datasets, and automated feature extraction.

ML is often preferred for smaller datasets, when computational resources are limited, or when transparency/interpretability of the model's decision-making is critical.

DL is widely used in facial recognition, natural language processing, autonomous vehicles, medical image analysis, and speech recognition.

ML can handle diverse data types. DL excels at processing unstructured data like raw images, audio waveforms, and large volumes of text.