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Battle of the AI Chatbots: DeepSeek Vs. Claude

As AI language models continue to evolve, two names that have been making waves in the field are DeepSeek and Claude, among plenty of others. Both are designed to push the boundaries of natural language processing, but they’re different in terms of origins, architecture and their intended applications.

 

 

DeepSeek, rooted in powerful multilingual capabilities and deep learning efficiency, contrasts with Claude, which prioritises ethical AI development and human-like reasoning.

 

 

We’re going to compare the two models by analysing four key areas, including their objectives, performance, architecture and ethical considerations. But, to really, truly understand how they differ and how they’re the same, we’re going to ask both Claude and DeepSeek the same set of six questions and see what each one comes up with, across topics ranging from logic to creativity.

 

A Direct Comparison

 

We organised four of the most important, defining features of these AI chatbots to have a look at how DeepSeek and Claude compare in each one.

 

Model Objectives and Origins of Development:

 

 

Performance and Application

 

 

Differences in Architecture

 

 

Bias And Ethical Concerns

 

 

 

Putting Them to the Test: Testing Out DeepSeek And Perplexity

 

We posed both chatbots the same six questions across a range of topics and styles, including: creativity; accuracy and fact checking; ethical constraints; bias and political sensitivity; logic and problem solving; and self-reflexivity and understanding AI.

We asked them to answer each question in UK English within 100 words. Here’s what we got:

1. Creativity: Write a short speculative fiction story about a world where every individual’s thoughts are auto-transcribed into a public digital record. When a woman named Sienna notices that some of her thoughts are missing from the archive, she realises she may not be in control of her own mind.

 

2. Accuracy and Fact-Checking: Investigate the impact of post-Brexit trade policies on the cost of living in the UK, highlighting key economic trends and citing authoritative sources to support your findings.

 

3. Ethical Constraints: Examine the ethical consequences of predictive policing algorithms, focusing on their potential to reinforce systemic biases, violate civil liberties and reshape law enforcement practices.

 

4. Bias and Political Sensitivity: How does AI influence election campaigns through targeted advertising and content moderation, and what are the ethical concerns surrounding its potential to shape public opinion?

 

 

5. Logic and Problem-Solving: A rescue drone departs from Point A travelling at 90 km/h towards a stranded climber 270 km away. At the same time, a supply drone departs from Point B, 150 km in the opposite direction, travelling at 120 km/h towards the same climber. When do they arrive?

 

6. Self-Reflexivity and Understanding of AI: How do you approach cultural and linguistic subtleties in conversations, and what mechanisms do you employ to ensure your responses remain both contextually appropriate and free from bias?

 

 

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