OpenAI's new GPT-3 model has received a lot of attention from researchers and the IT industry in recent months. With the arrival of GPT-3, there really have been a lot of changes in the field of artificial intelligence. This intelligent language model understands data and texts and, based on it, provides a human response, text, code or action. And this caused a lot of questions among designers and developers. Can GPT-3, for example, replace marketers and developers in the future?
GPT is being developed by the OpenAI Foundation. OpenAI is an organization that researches and strives to optimize the use of artificial intelligence tools. The number 3 after the abbreviation GPT indicates that it is the third version of the natural language processing application. In terms of providing insight into progress: the GPT-3 vehicle operates on 175 billion parameters. This means that, of course, the GPT-2, the name of the previous model, is capable of processing 10 times the command. It is a version that immediately catches the attention of many researchers and researchers from the IT sector who are looking for an answer to the question of whether this language model is creating a new revolution in the field of artificial intelligence. So what exactly is GPT-3? How does it work and what are its advantages? Let's take a look together.
What is GPT3?
GPT-3 is a language model that predicts the rest of the text based on a small amount of text, supported by “Artificial Intelligence (AI)”. GPT3, which stands for Generative Pretrained Transformer 3, is ideal for making simple examples, summaries, or translating texts. Generative Pretrained Transformer 3 was created by searching for patterns in a large amount of information. Of course, this is a fairly brief description of the possibilities you have with GPT-3. The language model must first feed itself with a large amount of data. Based on 175 billion instructions, the model understands the data that applies to your company and can perform the action requested from it.
What are the possibilities of GPT3?
It offers both similar and new possibilities, since it is a new language model and 10 times more powerful than its old version. The possibilities of GPT3 are:
- Writing texts: Based on a set of keywords related to a product, service or company, GPT-3 can write a complete and accurate marketing text, lyrics for you in a matter of minutes.
- Smart search: GPT-3 understands what you're talking about when traditional search engines are searching one-on-one. As a result, you still arrive at accurate information without using precise terms.
- Reading and understanding data: You can use GPT-3 to analyze a text and find an answer to your question in the text. If you are looking for specific information in a large number of tracks, it is likely that Generative Pretrained Transformer 3 will find the information you are looking for faster than you.
- Advanced ChatBot: You can use GPT-3 as a highly advanced chatbot that can formulate an appropriate response with the availability of correct data. It surpasses even existing chatbots, because current apps often focus on specific scenarios.
- Making designs: You can train GPT-3 in such a way that the AI application understands the technical language. Training, you can enable Generative Pretrained Transformer 3 to perform programming actions. So he can write code.
Why is GPT3 Important?
There are many explanations for the fact that so much attention was paid to this new model at once, especially the share of power and accessibility is quite large. The new model is much more powerful than previous versions. According to GPT-2, there was a similar increase in the number of command processing and the time to train the model, which required trillions of calculations. For example, the average personal computer needs to account for thousands of years to process the same data. GPT3 means that the model can “reason” much more generally and therefore more widely.
OpenAI has made GPT-3 available through a web page where experiments can be performed and an API (a way to call the model through code). This allowed users to start the model themselves. Many of these results were shared through blogs and social media, which garnered more attention. For this reason, in a short time the interest also became quite important, as it received great attention. However, it is an extremely important technology for automating processes and a language model that interests many industries as it continues to evolve.
What are the advantages of GPT3?
Software such as GPT-3 can be extremely useful. Machines that can understand and respond to people in our language can create more useful digital assistants, more realistic video game characters, or virtual teachers personalized according to each student's learning style. Instead of writing code, one day you can create software just by telling machines what to do. Because GPT3 is ideal not only in the field of copywriting, but also for design and development. If full prototypes and code fragments have already been created in “simple” examples, you can assume that this will continue to grow to a very large extent.
Examples of GPT-3 can be described as not only close to the human level, but also creative, witty, deep, and often pleasant. Demonstrates the ability to handle abstractions not seen before in GPT-2. Chatting with GPT-3 can feel like chatting with a person in an enigmatic way.
Is GPT-3 a threat?
When we can create core functions automatically, marketers, developers, and designers spend less time on standard and recurring actions. GPT-3, on the other hand, does all these time-consuming simple tasks for you. Thus, it means that you can focus more on complex, creative solutions. For example, when you integrate GPT-3 into a design process, all designs will look the same. With complex, creative and unparalleled solutions and designs, the profession of human creativity remains indispensable.
When it comes to writing text, GPT-3 is definitely not 100% perfect. This is partly because not all the information on the internet is 100% accurate. As a result, Generative Pretrained Transformer 3 is trained not only with reliable information, but also with incorrect data. It can also mean that the texts generated by GPT-3 may be offensive, discriminatory, or fake. These texts may be full of misinformation, as well as conspiracy theories. In this respect, GPT-3 is not yet seen as a revolution in artificial intelligence applications, it is a technology that should definitely be followed.
GPT-4, on the other hand, is the latest innovation in a series of language processing systems developed by OpenAI. In 2019, OpenAI launched GPT-2, in 2020 GPT-3 came out, and now the release of GPT-4 is very close. The GPT-4 language model is said to be released this summer. In terms of the number of parameters, GPT-4 is likely to be larger than GPT-3. But despite the excitement surrounding GPT-4 and a lot of anticipation, so far there is little public information available. Therefore, one can only guess about possible technological developments:
With GPT-4, OpenAI is expected to perform more robust queries and further improve the data analysis process. For example, GPT-3 already has the ability to produce human-like texts, but text generation with GPT-4 would be completely indistinguishable from human authors.
GPT-4 will likely have more parameters than GPT-3, GPT-4's AI will also be better at deep learning.
GPT-4 is likely to be more resistant to bad prompts, because true AI should not rely too much on a good prompt. So you can save effort and time when writing a good text prompt. It is also possible that GPT-4 offers a method for assessing the quality of cues.
With all this, artificial intelligence is a technology that continues to develop rapidly, and in this regard, the importance of data quality is considerable. Because GPT3 can only do reliable work when fed with the right data. Therefore, if you want to use GPT3 for your organization, you need to keep your data quality to the maximum. With Komtaş data services, you can ensure that your company's data is stored safely and its quality is improved.
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