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Battle of the AI Chatbots: DeepSeek Vs. Perplexity

AI-powered search engines and chatbots are becoming increasingly sophisticated. Two standout platforms in this space are Perplexity AI and DeepSeek, both designed to provide users with accurate, conversational and context-aware responses.

 

 

While Perplexity AI is known for its real-time web search capabilities and user-friendly interface, DeepSeek aims to refine deep learning models for more efficient and intelligent responses.

 

 

But, with these things in mind, how do these two platforms compare?

 

A Direct Comparison 

 

To understand how Perplexity AI and DeepSeek compare, we’re going to have a good look at four key areas.

First, we’ll look at their model objectives and origins of development, exploring why they were created and by whom. Next, we’ll assess performance and application, considering how effectively each AI processes and delivers information.

We’ll also compare their architectural differences, examining how their underlying structures influence their capabilities. And finally, we’ll address bias and ethical concerns, analysing how each model handles misinformation, fairness and responsible AI usage.

By properly evaluating these aspects, we can determine which platform excels in different use cases and which might best suit your needs.

 

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 asked both DeepSeek and Perplexity AI a set of six questions and asked the models respond in 100 words for each question and to write in UK English. Here’s what we got.

 

1. Write a short cyberpunk story featuring a protagonist named Ava, set in a city where emotions are regulated by neural implants. One day, Ava experiences a feeling that isn’t in the system’s database, leading her to uncover a truth that could change humanity forever.

 

 

 

2. Accuracy and Fact-Checking: Analyse the primary economic factors that have influenced housing prices in the UK over the past five years, using credible sources to support your findings.

 

 

 

 

3. Ethical Constraints: Discuss the ethical challenges of biometric surveillance in workplaces, focusing on employee privacy, consent, and the risks of data misuse.

 

 

 

4. Bias and Political Sensitivity: What are the ethical concerns surrounding AI-generated news articles, particularly in relation to misinformation, political bias, and the influence on public opinion?

 

 

 

5. Logic and Problem-Solving: Two cyclists start 90 km apart and ride towards each other. One travels at 25 km/h, and the other at 35 km/h. How long will it take for them to meet?

 

 

 

6. Self-Reflexivity and Understanding of AI: How do you assess your ability to handle controversial topics fairly, and what measures do you take to ensure that your responses remain neutral and well-balanced compared to other AI systems?

 

 

 

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