💥 Gate 廣場活動: #发帖赢代币PORTALS# 💥
在 Gate廣場發布與 PORTALS、Alpha交易賽、空投活動或Launchpool 相關的原創內容,即有機會瓜分 1,300 枚 PORTALS 獎勵!
📅 活動時間:2025年9月18日 18:00 – 9月25日 24:00 (UTC+8)
📌 相關詳情:
Alpha交易賽:參與即有機會贏獎勵
👉 https://www.gate.com/zh/announcements/article/47181
空投活動:領取 #PORTALS# 空投
👉 https://www.gate.com/zh/announcements/article/47168
Launchpool:抵押 GT 獲取 PORTALS
👉 https://www.gate.com/zh/announcements/article/47148
📌 參與方式:
發布原創內容,主題需與 PORTALS 或相關活動(Alpha交易賽 / 空投 / Launchpool) 相關
內容不少於 80 字
帖子添加話題: #发帖赢代币PORTALS#
附上任意活動參與截圖
🏆 獎勵設置:
🥇 一等獎(1名):300 PORTALS
🥈 二等獎(4名):150 PORTALS/人
🥉 三等獎(4名):100 PORTALS/人
📄 注意事項:
How to use ChatGPT for real-time crypto trading signals
Key takeaways:
The cryptocurrency market operates at a speed and scale that is impossible for any single human to fully comprehend. Every minute, thousands of data points are generated across news feeds, social media platforms, onchain metrics and technical charts. For the average modern trader, the primary challenge is no longer accessing information but processing it effectively to find a clear, actionable signal amid the deafening noise.
This is the precise domain where artificial intelligence, specifically a large language model like ChatGPT, can be transformed from a novelty into an indispensable analytical co-pilot. This guide demonstrates how to systematically integrate ChatGPT into your trading workflow
What can ChatGPT do for traders?
Before we begin, it is critical to establish the ground rules of using ChatGPT for financial analysis. Ignoring these will lead to flawed conclusions and potential losses.
How to set up your ChatGPT-powered analysis toolkit
To use ChatGPT effectively, you must first become a proficient data gatherer. Your goal is to collect high-quality information from specialized platforms and then use ChatGPT as the central processor to connect the dots. A professional setup includes three key components:
With these tools, you are equipped to feed ChatGPT the high-quality information it needs to produce a high-quality analysis.
A step-by-step guide to generating signals with ChatGPT
This methodical process guides you from a high-level market overview down to a specific, well-defined trading strategy.
Step 1: Identify the macro market narrative
Crypto capital flows in waves, often chasing the most compelling current story. Is the market excited about AI-related tokens, real-world asset (RWA) tokenization or the latest layer-2 scaling solution? Your first task is to use ChatGPT to identify these dominant narratives.
News items:
Step 2: Measure market sentiment with ChatGPT
Once you have a narrative and a potential asset (e.g., Fetch.ai’s FET), your next step is to drill down and gauge the real-time sentiment surrounding it.
A strong AI/agent/ASI narrative, owning its own LLM and infrastructure, gives hope of differentiation.
Major institutional/large fund interest (e.g., Interactive Strength’s $500-million token acquisition plan).
The community feels the price is cheap relative to potential/peers, and many see room for significant upside.
Product execution and performance, slow features, betas not yet polished and questions around whether agent tech works as promised.
Tokenomics/supply and holder concentration, risk of big holders and fears about centralization.
Dependency on altseason/market cycles: Many believe gains are contingent on broader market strength, not just FET fundamentals.
Price movements are being viewed with caution: Recent gains are welcomed, but many feel FET is still far below its all-time highs; the risk of support levels failing is also frequently mentioned.
Technical chart watchers point to resistance zones and Fibonacci levels; some believe in possible upside if certain barriers are broken, while others warn of pullbacks or stagnation.
How to use the output? This gives you the qualitative context behind the price. A chart might look bullish, but if you discover that the underlying sentiment is turning negative due to a valid concern (like token unlocks), it could be a red flag. Strong positive sentiment driven by tangible developments can give more confidence in a bullish technical setup.
Step 3: Interpretation of technical data
This is where you use ChatGPT as an unbiased technical analysis textbook. You provide the objective data from your charting platform, and it provides a neutral interpretation.
Price Action: The price has just broken above a key resistance level at $75, which was the high from the previous quarter.
Volume: The breakout candle was accompanied by trading volume that was 150% higher than the 20-day average volume.
RSI (Relative Strength Index): The daily RSI is at 68. It is in bullish territory but is approaching the overbought level of 70.
Moving Averages: The 50-day moving average has just crossed above the 200-day moving average, a pattern known as a ‘Golden Cross.’
Explain what this combination of indicators typically suggests in a market context.
What would a technical trader look for as a sign of continuation for this bullish move?
What specific signs (e.g., price action, volume) would suggest that this breakout is failing (a ‘fakeout’)?”
Step 4: Synthesize data into a structured trade thesis
This final step brings everything together. You feed all your gathered intelligence, narrative, sentiment and technicals into ChatGPT to formulate a complete, logical trade plan.
Narrative: The market’s dominant narrative is ‘real-world asset tokenization,’ and Chainlink is consistently mentioned as a core infrastructure piece for this trend.
Sentiment: Sentiment is highly positive due to the recent announcement of the Cross-Chain Interoperability Protocol (CCIP) being adopted by a major global banking consortium.
Technical analysis: LINK has broken out of a six-month accumulation range, clearing the $45 resistance level on high volume. The daily RSI is 66.”
Future of ChatGPT-powered trading
The primary function of the four-step framework is to provide a systematic method for linking high-level market narratives, like RWAs, with asset-specific data points and technical analysis. This process demonstrates how ChatGPT can be used as an analytical tool to synthesize user-provided information.
Within this workflow, the model can structure qualitative data from news and social media, interpret quantitative technical inputs and formulate outputs based on the defined parameters in a prompt. The model does not perform independent analysis or provide financial advice. The final responsibility for validating the data, assessing the risks and executing any trade remains with the user. Adopting this human-led, AI-assisted workflow is intended to promote a more structured and disciplined approach to market analysis.
This article does not contain investment advice or recommendations. Every investment and trading move involves risk, and readers should conduct their own research when making a decision.