[Free] TEXTOM 24 New Version Basic Course: SNS Perception Analysis for Big Data Basic Analysis Paper Writing
This is a free lecture designed to help those who are new to TEXTOM easily acquire text mining and big data analysis skills through hands-on exercises with examples, rather than focusing on fundamental theoretical explanations.
My curiosity about text mining has been resolved. Thank you for the great lecture.
5.0
장유진
60% enrolled
It was very helpful.
5.0
benign29
100% enrolled
Thank you for the detailed explanation!!
This is a useful lecture for beginners in Textom.
It seems to be easier to understand because you explain it repeatedly.
What you will gain after the course
Big Data Analysis Using TEXTOM
Big Data Analysis: Practical Examples (Word Frequency, Word Cloud)
Big Data analysis through media collection such as Naver articles
Having trouble using Textom? 📊 This course will save you time!
It is essential to secure TEXTOM capacity for the practical training. Before taking the course, you must create a TEXTOM account and secure at least 10MB of paid account space .
Are you able to write a paper or do analysis yourself after watching the text mining lectures on the market?
“I would like to see examples or practical examples of applying the theory to real analysis rather than just theory.”
“We need a text mining course that will enable us to write papers on trend analysis, cognitive analysis, etc.”
👉 After seeing these reviews, I decided to film the lecture.
Big data analysis, which is a recent trend, There is no field in business/research where it is not used.
Text Mining is becoming an increasingly essential analytical method for research. As it has become a trend, many people want to learn it.
Textom for text mining
TEXTOM is a great program for text mining without coding. However, many graduate students, researchers, and office workers are wasting time and experiencing stress and burden because they do not know how to actually use Textom even after attending lectures or reading books.
An instructor with no practical experience and who has never written a paper? I can't really explain how to do "big data analysis."
We will reveal the core know-how and secrets of completing a big data paper in half a day using Textom .
Never study on your own. Text mining has so many different analysis techniques.
If you proceed solely by looking at theories and manuals without knowing how to use frequently used analysis techniques, you will definitely be wasting your time . After practicing techniques frequently used in practice or big data papers , you should gradually build a solid theoretical foundation so that you can later analyze texts freely.
That means you need to know what’s important and what’s not in text analytics . Knowing this can save you weeks or even months of time.
We teach you the most commonly used core techniques for beginners.
Text mining and big data are increasingly being introduced in all fields of study. In order to be recognized in corporate practice, you must be able to handle text data. We have created a Textom lecture that focuses on practical exercises so that anyone can easily follow the current trend of big data and text mining without complex and difficult coding.
✅ Practice data extraction, data collection, and analysis for Textom beginners.
✅ This is a basic lecture on Textom for writing big data papers (cognitive analysis, trend analysis)
🚩 I also had a lot of trial and error when I first started using Textom.
'How should I use Textom in this situation?' I searched the Internet and manuals, but... the Textom explanations and lectures on the market were too theory-oriented and difficult for beginners to understand. I remember searching through various menus and struggling for days before finally solving the problem.
When I was a beginner like myself and had no idea how to use Textom, I thought, 'If only someone could guide me, wouldn't it have been easier to analyze big data and write papers?' 'It would be really convenient if there was a lecture that could guide people who are new to Textom or looking for how to use it.' I prepared this lecture with these thoughts in mind.
This lecture is designed to give you a feel for big data analysis by demonstrating the actual data extraction process rather than providing a long theoretical explanation of Textom. If you follow along repeatedly, anyone can utilize big data analysis and text mining techniques without Python coding.
For those who are new to Textom This is a basic practical course.
This lecture is designed to allow those who are new to Textom to practice through examples rather than focusing on theoretical explanations. If you listen to the lecture and follow along, you will be able to collect data using Textom and then analyze the data.
After briefly explaining the basic theory of text mining, we will directly extract big data using the Textom program. In this process, you will naturally understand text mining and implement methods for analyzing big data.
If you have some understanding of what text mining or Textom is, briefly look over the manual provided by Textom, and then learn the practical method through this lecture, you will be able to upgrade your text mining analysis skills very quickly.
I recommend this to these people!
For those who are completely new to text mining
Anyone who wants to learn text mining with Textom
For those who want to know about practical implementation methods using Textom rather than theoretical explanations
Graduate students, researchers, professors, etc. who want to write a paper on SNS recognition analysis and trend analysis using Textom but need basic study
Associated Processes
This course is recommended for those who want to develop practical TEXTOM application skills after taking the free basic course.
Hello, this is Jin-gyu Lee.
Knowledge sharer history
Currently pursuing a Ph.D. in AI Graduate School (Majoring in Natural Language Processing)
Development of natural language processing in current AI and big data specialized startups
Former public institution big data analysis researcher
Numerous private tutoring experiences related to data analysis
Kmong AI natural language processing, big data analysis Prime service operation (Kmong's carefully selected top 2% service)
Experience in writing and projecting numerous big data papers using TEXTOM
Q&A 💬
Q. I am a complete beginner in text mining. Can I still listen even though I don't know anything?
Yes, that's right. This is an introductory course for beginners.
Q. I want to apply text mining to my work. Is it okay to take this course?
Yes, this course consists of an introduction to basic practical analysis methods commonly used in text mining.
Q. I am a beginner who wants to know how to use Textom. Can you tell me how to use it?
Yes, this lecture is for beginners of Textom. This lecture is for those who have no idea how to use Textom.
"If you leave your email address along with your review, we will send you the text mining paper data for free."
💡 I want to help those who are starting out with text mining & textom!
I will personally implement the Textom usage that you are curious about one by one , and briefly explain the core of text mining that you find difficult, and I will hold your hand when you are thinking about big data analysis and research. Thank you very much for reading the article. I will see you in class!
Recommended for these people
Who is this course right for?
Someone who wants to try big data analysis without coding
Those who want to try text mining analysis without coding
Hello. I am Lee JinKyu (Ph.D. in Engineering, Artificial Intelligence), CEO of Happy AI, who has consistently worked with AI and big data analysis across R&D, education, and project sites.
I have analyzed various unstructured data, such as surveys, documents, reviews, media, policies, and academic data, based on Natural Language Processing (NLP) and text mining. Recently, I have been delivering practical AI application methods tailored to organizations and work environments using Generative AI and Large Language Models (LLMs).
I have collaborated with numerous public institutions, corporations, and educational organizations, including Samsung Electronics, Seoul National University, Offices of Education, Gyeonggi Research Institute, Korea Forest Service, and Korea National Park Service, and have conducted a total of over 200 research and analysis projects across various domains such as healthcare, commerce, ecology, law, economics, and culture.
2024.07 ~ Present CEO of Happy AI, a company specializing in Generative AI and Big Data analysis
Ph.D. in Engineering (Artificial Intelligence) Dongguk University Graduate School of AI
Major: Large Language Models (LLM) (2022.03 ~ 2026.02) 2023 ~ 2025 Public News AI Columnist (Generative AI Bias, RAG, LLM Utilization Issues) 2021 ~ 2023 AI & Big Data Specialist Company Stell
Major: Large Language Models (LLM)
Bio (Summary) 2024.07 ~ Present CEO of Happy AI, a company specializing in Generative AI and Big Data Analysis Ph.D. in Engineering (Artificial Intelligence) Dongguk University Graduate School of AI Major: Large Language Models (LLM)
(March 2022 – February 2026)
2023 ~ 2025 Public News AI Columnist (Generative AI Bias, RAG, LLM Utilization Issues)
2021 ~ 2023 Developer at Stellavision, an AI and Big Data company
2018 ~ 2021 Government-funded Research Institute NLP & Big Data Analysis Researcher
Document Summarization, Classification, and Analysis
Natural Language Processing (NLP) and text mining for reviews, media, policy, and academic data. Topic analysis, sentiment analysis, and keyword networks. Public and corporate AI workflow automation for document summarization, classification, and analysis.
🎒 Courses & Activities (Selected)
2025
LLM/sLLM Application Development (Fine-tuning, RAG, and Agent-based) – KT
2024
LangChain·RAG-based LLM Programming – Samsung SDS
LLM Theory and RAG Chatbot Development Practice – Seoul Digital Foundation
Introduction to Big Data Analysis based on ChatGPT – LetUin Edu
AI Fundamentals & Prompt Engineering Techniques – Korea Vocational Development Institute
LDA & Sentiment Analysis with ChatGPT – Inflearn
Python-based Text Analysis – Seoul National University of Science and Technology
Building LLM Chatbots with LangChain – Inflearn
2023
Python Basics using ChatGPT – Kyonggi University
Big Data Expert Course Special Lecture – Dankook University
Fundamentals of Big Data Analysis – LetUin Edu
💻 Projects (Summary)
Building a Private LLM-based RAG Chatbot (Korea Electric Power Corporation)
LLM-based Big Data Analysis for Forest Restoration (National Institute of Forest Science)
Private LLM Text Mining Solution for Internal Networks (Government Agency)
Instruction Tuning and RLHF-based LLM Model Development
Healthcare, Law, Policy, and Education Data Analysis
AI Analysis of Survey, Review, and Media Data
→ Over 200 projects completed, including public institutions, corporations, and research institutes
📖 Publication (Selected)
Improving Commonsense Bias Classification by Mitigating the Influence of Demographic Terms (2024)
Improving Generation of Sentiment Commonsense by Bias Mitigation – International Conference on Big Data and Smart Computing (2023)
Analysis of Perceptions of LLM Technology Based on News Big Data (2024)
Numerous NLP-based text mining studies (Forestry, Environment, Society, and Healthcare sectors)
🔹 Others
Python-based data analysis and visualization
Data Analysis Using LLM
Improving work productivity using ChatGPT, LangChain, and Agents