Understanding AI with deep learning

By Rajeev Pandey, 3EA
Understanding AI with deep learning

Deep learning is set to take us to a technologically advanced, automated future of self-driving cars and robotic assistants. However, what it is and how it works still remains a subject significantly more complex than most users imagine.

What is deep learning

Deep learning is a subfield of machine learning - It is also a type of data analysis that uses self-learning algorithms to analyze big data, learn from it, and eventually solve a problem, provide insights, or predict an outcome.Nevertheless, deep learning employs algorithms that are fundamentally more complex than those employed in machine learning. These self-learning algorithms are called deep neural networks.

Essentially, they are built to mimic biological neural networks of animals and humans to solve problems and tackle tasks of greater complexity, like driving vehicles and providing security using face recognition systems.

How do these neural networks succeed?

Like human neural networks, deep neural networks are arranged in a hierarchical manner. More importantly, the layers of deep neural networks are also able to learn abstract features, allowing them to observe nuances in complex data blocks.Therefore, artificial neurons can detect the smallest abstract details - patterns of low-level features.

If we take human face recognition as an example, in this case a deep learning algorithm will not only be able to discern one face from another, but detect differences connected to the smallest details, like pores or wrinkles. This goes up to mid-level features like eye color, ear, and eyebrow shapes, and further on to high-level features, like discerning the differences in face shapes.

Thus, when it comes to the allocation of tasks in the enterprise of the future, machine learning algorithms will make valuable predictions in different departments based on business data; while deep learning willdrive autonomous corporate vehicles andit will provide security with face recognition systems.

Deep learning subtypes and applications

There are several subtypes of deep learning, and each of them tackles a different task.

Convolutional neural networks (CNNs)-
Theyare designed for computer vision tasks - acquiring, analyzing, and understanding digital images to extract high-dimensional information to make a decision. CNNs can be used for video tracking, object recognition, motion estimation, and more.

Recurrent neural networks-
Theyare created with built-in memory, and are best suitable for language processing tasks, like spot-on translation from one language to another.

It is a subtype of deep learning that is built on an action-value relation. An artificial intelligence agent determines the value of being in a specific state and taking an action in that state. For example, it will determine the consequences of the way it handles the controls of a car to turn or hit the brakes to avoid collision.

Policy learning-
Policy learning allows the AI agent to learn an elaborately detailed set of instructions that shows the best possible action for a given state. This subtype of deep learning can be used in AI-based voice assistants on the front desks of enterprises.

Reinforcement learning-
A reinforcement learning agent has to decide how to act to perform a task through the process of trial and error in a dedicated training environment. Earlier this year, Google's AI-enabled program AlphaGO defeated the champion in GO-an abstract game that is more complex than chess. This became possible through reinforcement learning.

Even now, the promise of deep learning is grand -one should only remember the rigorous testing of Tesla's self-driving cars. While consumers still have to wait-business does not. Today, many enterprises are implementing deep and machine learning to gain a competitive edge.

The reasoning behind it is straightforward: in a data-driven corporate culture where you rely on big amounts of information, AI is a lifeline that helps enterprises make use of all their data quickly.

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Article by: Rajeev Pandey, 3EA
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