What is DeepSeek? A Complete Guide! #deepseek

Analytics Vidhya · Beginner ·📊 Data Analytics & Business Intelligence ·1y ago

Key Takeaways

Explains the origins, purpose, features, and evolution of DeepSeek, comparing it to other AI models

Full Transcript

hello everyone Welcome to our new course on deep seek AI models today we'll explore what makes deep seek a standout in the world of artificial intelligence I'm excited to share insights into its features Evolution and how it compares to other models in the market let's dive in to start what exactly is deep seek well it's an advanced AI model developed by a startup based in hangu China One of the most impressive as ects of deep seek is that it's completely free unlimited and open source this means that anyone can access it and even contribute to its development it's powered by Deep seek V3 model which researchers claim that it's trained at a remarkably low cost less than $6 million that's quite an achievement in the AI landscape now let's take a closer look at some of the key features of deep seek AI models first up it has advanced NLP capabilities which means it has better understanding of context for conversational applications this is crucial for creating more natural interaction with users next we have higher processing speed deeps provides faster response times for user queries making it more efficient than many of the existing models scalability is another important feature it can handle increasing data volumes without any loss in performance this is particularly beneficial as businesses grow and their data needs expand lastly deeps boasts multimodel capabilities this means it can process various types of data including images and sounds allowing for a richer interaction experience let's talk about the evolution of deeps over the years in 2023 we saw the launch of deepy coder which was an open source model specifically designed for coding tasks then came deep seek llm in 2024 a model with 67 billion parameters aimed at competing with other language models on the market following that was deep seek V2 which demonstrated strong performance while maintaining low costs in the same year we also had an upgraded version called as DC coder V2 with an impressive 236 billion parameters fast forward to 2025 we have deep seek verion 3 a Powerhouse with 677 billion parameters that boosts impressive performance across various benchmarks and finally we have deep seek R1 which focuses specifically on reasoning tasks and challenges open ai's 0 model with its Advanced capabilities it's fascinating to see how quickly this technology has evolved concluding deep seek represents a significant advancement in AI technology with its Innovative features and impressive Evolution over just a few years it's commitment to being open- source and accessible while maintaining high performance sets it apart from many of its competitors in the field thank you and see you in the next video

Original Description

🚀 What is DeepSeek? A Complete Guide! 🚀 Welcome to the first video of our Free DeepSeek Course! In this video, we’ll explore: ✅ What is DeepSeek? – Understanding its origins and purpose ✅ DeepSeek Features – What makes it unique? ✅ Evolution of DeepSeek – How it has improved over time ✅ DeepSeek vs Other AI Models If you want to access the Full FREE course Getting Started with Deepseek click here: https://courses.analyticsvidhya.com/courses/getting-started-with-deepseek 💬 What do you think about DeepSeek? Drop your thoughts in the comments! 🔔 Subscribe & turn on notifications for more AI insights! 🚀
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