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Oracle Exam 1Z0-1122-25 Topic 4 Question 6 Discussion

Actual exam question for Oracle's 1Z0-1122-25 exam
Question #: 6
Topic #: 4
[All 1Z0-1122-25 Questions]

What is the key feature of Recurrent Neural Networks (RNNs)?

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Suggested Answer: C

Recurrent Neural Networks (RNNs) are a class of neural networks where connections between nodes can form cycles. This cycle creates a feedback loop that allows the network to maintain an internal state or memory, which persists across different time steps. This is the key feature of RNNs that distinguishes them from other neural networks, such as feedforward neural networks that process inputs in one direction only and do not have internal states.

RNNs are particularly useful for tasks where context or sequential information is important, such as in language modeling, time-series prediction, and speech recognition. The ability to retain information from previous inputs enables RNNs to make more informed predictions based on the entire sequence of data, not just the current input.

In contrast:

Option A (They process data in parallel) is incorrect because RNNs typically process data sequentially, not in parallel.

Option B (They are primarily used for image recognition tasks) is incorrect because image recognition is more commonly associated with Convolutional Neural Networks (CNNs), not RNNs.

Option D (They do not have an internal state) is incorrect because having an internal state is a defining characteristic of RNNs.

This feedback loop is fundamental to the operation of RNNs and allows them to handle sequences of data effectively by 'remembering' past inputs to influence future outputs. This memory capability is what makes RNNs powerful for applications that involve sequential or time-dependent data.


Contribute your Thoughts:

Chuck
15 days ago
That's correct. RNNs do not process data in parallel.
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Valentine
21 days ago
I've heard RNNs described as 'neural networks that remember their own history'. That feedback loop in C is the key to that.
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Hannah
22 days ago
So, RNNs do not process data in parallel, right?
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Danica
26 days ago
C is definitely the right answer. The ability to carry information across time steps is what makes RNNs so powerful.
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Talia
28 days ago
D is just silly, of course RNNs have an internal state! I mean, how else would they remember anything?
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Kami
9 days ago
C) They have a feedback loop that allows information to persist across different time steps.
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Nakita
12 days ago
A) They process data in parallel.
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Destiny
1 months ago
Yes, that's correct. The feedback loop allows information to persist across different time steps.
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Vernell
1 months ago
Hmm, I thought RNNs were all about image recognition. But C does sound like the right answer here.
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Jerry
1 months ago
I'm pretty sure it's C, the feedback loop is the key feature that makes RNNs great for sequential data processing.
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Helaine
5 hours ago
Yes, that's correct. The ability to retain information across time steps sets RNNs apart from other neural networks.
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Royal
1 days ago
I think you're right, the feedback loop in RNNs is crucial for processing sequential data.
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Chuck
1 months ago
I think the key feature of RNNs is that they have a feedback loop.
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