COUNCIL POST| Membership (Fee-Based)
Mar 25, 2022,06:45am EDT
Co-founder &CTO at Orient Software, a software outsourcing company that employs top software engineering talent from Vietnam.
Artificial intelligence isn't a new technology, but its impact is only starting to be felt, as businesses and individuals begin to understand the possibilities that AI can offer. AI is set to transform business like 1)never before, creating new opportunities for 2)entrepreneurs, business leaders and workers in every industry.
AI is quickly finding its way into our everyday lives. It may even soon be difficult to tell where it stops and humanity begins. What are the AI trends in 2022, and what do the most recent advancements in AI mean for 3)the years to come?
This article will look at some of the AI trends and discuss the implications of these technologies on businesses and their digital transformation efforts.
Large Language Models
The language model is the "brain" of language understanding. These AI models rely on 4)machine learning to determine how phrases, sentences or paragraphs are related. It learns and understands the language by 5)ingesting a large amount of text and building a statistical model that understands the probability of phrases, sentences or paragraphs related to each other.
Language models are getting larger while becoming more 6)refined in understanding language. Artificial intelligence can process and generate more human-like interactions while using 7)semantic techniques that improve the quality of its results.
Another benefit of these large language models is that it requires just a few training examples to fine-tune the model on a new problem. Previously, AI solutions would require a lot of 8)human-labeled data, which is difficult and expensive to create. With larger AI models, we can now achieve the same or better results with just one or a few training examples. This will reduce the cost of artificial intelligence, and we should expect many business processes to be automated.
Natural Language Processing
9)Natural language processing (NLP) is "the ability for a computer to understand the meaning of text or speech" and has already 10)revolutionized how humans interact with machines. This is evident in the widespread use of AI assistants like Siri, Alexa and Cortana. These technologies can understand what people say, act on that information appropriately and respond accordingly. However, NLP has a lot more to offer than just clearly communicating with users; it can also help scale business operations.
Generative Artificial Intelligence
11)Generative AI is an AI branch that focuses on generating content like writing text, generating images, text to image generation and making music. According to Gartner, Generative AI is a strategic AI technology trend for 2022. Generative AI may be used for several purposes, including 12)artistic purposes, generating content for media outlets, personal creativity or education.
Generative language models are a 13)fascinating application. They allow for the generation of 14)natural-sounding text, grammatically correct and appropriate for a particular topic or style. They can also create more general intelligence, solve problems and adapt to different situations.
This is a branch of machine learning where data scientists focus on 16)decision-making and 17)reward-based training. Reinforcement learning works by learning from the environment and adjusting its behavior to maximize rewards. This mimics how we learn—we don't always get positive reinforcement, make mistakes and go through a 18)trial-and-error process to achieve our goals.
Reinforcement learning is widely used in robotics, games, data science and financial trading. Because we can expect agents to make complex decisions and hold long-term goals, it is one of AI's most exciting trends.
19)Multimodal learning is a branch of machine learning where a system can learn from sensory input like images, text, speech, sound and video. For example, multimodal systems can learn from images and text together, allowing them to understand ideas better. In the same way, machines can work with data from many different sources like speech and language processing to create more accurate results.
Multimodal learning is important because it helps machines learn how to understand the world better. By using multiple forms of input, they can get a complete understanding of objects and events. This will help us build better AI models and achieve better results.
Bias Removal In Machine Learning
As AI algorithms become more 20)prevalent in business, they have come under greater 21)scrutiny. Many fear that these systems can 22)perpetuate and even worsen 23)historic bias issues like racism, sexism and 24)bigotry.
Business and data scientists must remove bias during AI development to combat these problems. Companies can reduce bias in AI by checking the inputs and adjusting them where possible. For example, if a system is trained on photos of people but has no images of older women, it may have trouble recognizing them when provided with their photographs.
In my experience, many technology leaders are still trying to understand how AI works and how they can use it in their field. To begin to 25)incorporate AI, it's important to have a clear goal in mind for what you want the AI system to do. Understanding the data you have and what you need the AI system to do is essential.
Pay special attention to the development of large language models as these models have made great strides in recent years and could be revolutionizing the industry. The ability to understand and respond to language is a key component for intelligent applications and will open up new business opportunities.
The AI adoption will continue to grow as more business and research organizations implement new tools, techniques and technologies to drive innovation. AI systems are already being used to improve business strategies, customer service, market research, advertising, 26)predictive maintenance, autonomous cars, video surveillance, medicine and more.
It unlocks new possibilities like the ability for technology to understand any data and make business processes more efficient. It also holds new challenges like removing bias from machine learning. These trends will impact daily lives and businesses worldwide in new and exciting ways.
1) never before : 전례 없는
2) entrepreneurs : 기업가
3) years to come : 앞으로 몇 년
4) machine learning : 기계 학습
5) ingesting : 섭취하다, 받아들이다.
6) refined : 정교해지다
7) semantic : 의미상의
8) human-labeled data : 사람이 라벨을 붙인 데이터
9) natural language processing : 자연어 처리
10) revolutionize : 혁명을 일으키다.
11) generative Artificial Intelligence : 생성 인공 지능
12) artistic purposes : 예술적 목적
13) fascinating : 매력적인
14) natural-sounding text : 자연스러운 소리의 텍스트
15) reinforcement Learning : 강화 학습
16) decision-making : 의사 결정
17) reward-based : 보상 기반
18) trial-and-error process : 시행착오 과정
19) multimodal learning : 다중 모드 학습
20) prevalent : 널리 보급된
21) scrutiny : 정밀한 조사
22) perpetuate : 영속화하다
23) historic bias issues : 역사적 편견 문제
24) bigotry : 편견
25) incorporate AI : AI 통합
26) predictive maintenance : 예방 정비, 예방 유지보수< Copyright © The Gachon Herald All rights reserved >