I Built Myself an Investment Workbench Using AI

marsbitОпубликовано 2026-06-16Обновлено 2026-06-16

Введение

For the past two weeks, I've been immersed in Vibe Coding—using AI to write code from natural language descriptions. This process has enabled me to quickly build functional tools that address long-standing personal ideas. Previously, I had many concepts but found execution too cumbersome. Key ideas included a unified dashboard for assets across US stocks, Crypto, HK stocks, and A-shares; a real-time alert system for price movements; an investment map visualizing sector relationships; and a tool to correlate prediction market bets with news and market data. Traditional development hurdles meant these often remained unrealized. Using AI (Codex, Claude Code, and DeepSeek API), I built four initial tools: 1. A **Cross-Market Asset Dashboard** showing total assets, daily P&L, and holdings by market, with added features for alerts and sector mapping. It's deployed locally for privacy. 2. A **Prediction Market (PM) Monitor** tracking bets on events (e.g., company valuations) and correlating probability shifts with news and market movements. I categorize bets by conviction to filter noise. 3. A **Simple Operations Backend** for managing my writing workflow (topics, progress, publishing). It's cloud-deployed for mobile access. 4. A **One-Click Formatting Tool** that automates converting drafts into various platform-specific formats, saving manual effort. While these tools are basic, they represent a significant shift: AI lowers the barrier to creating personalized systems. I be...

Over the past couple of weeks, I’ve been a bit obsessed with Vibe Coding.

Not the "I'm going to build an amazing product" kind of obsession, but a sudden realization that many of the little ideas that have been stuck in my head for so long can actually be brought to life, bit by bit.

As you all know, Vibe Coding is about using natural language to command AI to write code for you, to "craft" a product.

I mainly use a combination of Codex and the Claude Code client, describing requirements and functional modules, and they write the code for me. When I run out of quota, I switch to the CLI and continue running with the DeepSeek API.

One: Those "I wanted to do it but never did" ideas

I used to have a lot of ideas pop into my head.

For example, could I have a dashboard to view assets like US stocks, Crypto, Hong Kong stocks, and A-shares all together, instead of switching between several apps every day?

For example, could I create an anomaly monitor, so if an asset suddenly spikes or crashes, I can see it immediately, and also know what other assets or sectors it's related to.

For example, could I build an investment map, so when researching a sector, I don't just focus on one project, but lay out the entire network: upstream, downstream, beneficiaries, potential risks, related assets.

And for example, on prediction markets (PM), there are many bets about unlisted company valuations, market cap overtakes, macro events. Could I put this data together with news events and secondary market changes for comparison?

Plenty of ideas, but actually doing them was too much hassle.

You need to know code, design interfaces, integrate data, and iterate repeatedly; hiring someone is expensive, and requirements aren't always clear. After a few rounds, most ideas ended up with that phrase—"Forget it, let’s just make do with Excel for now."

But after tinkering with Vibe Coding for these two weeks, I found this is truly different.

I started building some rough but practical tools for myself. An idea pops up, and it can be integrated into the system the same day, instead of being scattered across chat records, bookmarks, and my own mind.

Two: Four small tools I crafted in two weeks

I mainly built four things in these two weeks (other miscellaneous small tools don't count).

First, Cross-Market Asset Dashboard

The reason was very simple. My assets are scattered across several places: Hong Kong and US stocks in brokerage apps, Crypto on trading platforms, A-shares in another software.

Every day, wanting to see my overall situation meant opening each one, switching back and forth. After checking everything, I still couldn't piece together the full picture. So the first thing I did was stuff all my holdings into one page:

Top section shows total assets, daily P&L. Below, divided by market—one section for US stocks, one for Crypto, one each for HK and A-shares. At a glance, the state of my entire portfolio, who's up and who's down today, is crystal clear.

After finishing it, I found it quite useful, and couldn't help but keep adding Tab after Tab, because new needs kept emerging as I used it:

  • Anomaly Monitor: I pre-set the assets I care about and thresholds. If anyone suddenly surges or crashes, it highlights it for me, saving me from constantly watching the market.
  • Investment Map: When researching a sector, draw the upstream, downstream, beneficiaries, risk points, and related assets into a network, making it easier to trace capital flow chains and relationships.
  • Memo + Review: Jot down why I was bullish initially, what happened later, where my judgment was right or wrong, so I can look back later.

Since this dashboard contains all my real holdings, it's quite private, so I deployed it locally.

Second: PM Bet Monitor

This one is specifically for watching prediction markets.

To explain briefly, prediction markets (like PM) are where people use real money to bet on whether a future event will happen. The price itself represents the market's perceived probability—for example, a "yes" for "SpaceX market cap reaches $2 trillion by end of June" priced at 0.8 means the market thinks there's an 80% chance of it happening.

For the bets I care about, like "Will OpenAI/Anthropic's valuation go up by year-end?" "Will a certain market cap overtake event among the Magnificent Seven happen?", "Will xx and xx meet?", I used to have to check each one individually. Now I've centralized them into a single dashboard. I also compare probability changes alongside news events and secondary market fluctuations. Who moves first, who influences whom, becomes clear at a glance.

I also tiered these bets according to my own criteria (internally called T1 (high conviction) / T2 (relatively stable) / T3 (pure speculation)), sorted by expected return, so I can instantly distinguish which are just noise.

Honestly, a small edge I have in this market is Chinese information and East Asian political-economic dynamics—many are dominated by Western players, and pricing for this area is often half a step behind. Opportunities hide in this time gap.

Third: Small Operations Backend

This one isn't related to investment; it's for my own writing.

I usually manage topics, write articles, and publish on several platforms. Progress was all in my head or by digging through chat records, often messy. So I made a small backend to manage it, including a topic list, article progress, publishing platforms, and an inspiration box.

Since I might need to use this when I'm out, I didn't make it local, but deployed it to the cloud—using GitHub + Vercel. I can open it on my phone to view and edit, quite convenient.

Fourth: One-Click Formatting Tool

This was mainly to solve a personal minor need. After writing an article, I need to publish it on many platforms, especially for Web3 media. Each platform has different formatting rules, and manually adjusting each time is very time-consuming.

So I created a small tool. Paired with a browser Tampermonkey script I fine-tuned through coding, I throw in an original Markdown or Word document, and it automatically converts it into the corresponding format for each platform and directly inserts images. It's not particularly advanced, but it saves me some mechanical work every day.

To be honest, these four things are still very basic, even a bit ugly, and can't be considered mature products. But for me, they are already very useful because once an idea appears, I can immediately integrate it into the system, rather than letting it scatter and be forgotten.

This is the most important change I feel.

Three: Ordinary People's Investment Research Approach Has Really Changed

Because of this, I increasingly feel that ordinary people doing investment don't necessarily need to start with complex models, but should at least have a few of their own basic systems.

Because the change AI brings to ordinary people isn't suddenly turning you into a guru, but enabling you to first create a prototype for many things you "wanted to do but couldn't" before.

Especially for someone like me who watches the market daily, the feeling is particularly obvious. As long as you have an idea, every ordinary investor can gradually accumulate a few of their own basic systems:

  • Asset Observation System: What assets are you actually watching? Which market do they belong to? What recent changes have occurred?
  • Signal Monitoring System: Which events, once they happen, might indicate a change in market expectations?
  • Map Organization System: A sector isn't a point, but a network. Who's upstream, who's downstream, who benefits from sentiment, who from performance, who from capital flows. Especially over the past year-plus, AI sector stocks have almost rewarded those who could thoroughly understand a sector (from HPC to optical modules to the memory chain).
  • Review System: Why were you bullish initially? What happened later? What was right, what was wrong?

These things weren't impossible to do before, but they were too troublesome, hard to sustain. The biggest meaning of AI is that it cuts away a huge chunk of this "trouble."

You may not know how to code, but you can describe requirements, and slowly accumulate your own product design. And you don't have to finish it all at once; release the first version, and modify it while using it.

This is also the most attractive part of Vibe Coding for me: the feedback is so fast. In the past, the gap between an idea popping up and landing could be very long, so long you forgot why you wanted to do it in the first place.

Now, if I think of a feature today, I can try it the same day. If I'm not satisfied after trying, I modify it immediately. After using it for two days, new needs emerge, and I iterate further.

This closed loop of "idea—implementation—use—feedback—modify again," once it starts spinning, really makes you unable to stop.

In Conclusion

Consider this as the first record for the new phase of "太乐 Tyler."

Moving forward, I'll try to update regularly, recording my investment thoughts, tool tests, on-chain operations and arbitrage research, as well as some educational/introductory Web3 operations and investment knowledge points.

Welcome to follow, and feel free to communicate anytime.

Связанные с этим вопросы

QWhat is Vibe Coding and how does the author use it?

AVibe Coding is using natural language to command AI to write code and build products. The author primarily uses Codex and the Claude Code client, switching to the CLI with DeepSeek API when limits are reached, to create personal tools based on their ideas.

QWhat are the four main tools the author built using Vibe Coding?

AThe author built: 1) A cross-market asset dashboard for viewing holdings across stocks and crypto. 2) A prediction market (PM) betting monitor. 3) A personal operations backend for managing writing tasks. 4) A one-click typesetting tool for formatting articles for different platforms.

QWhat advantage does the author claim to have in prediction markets?

AThe author claims a small advantage lies in having better access to Chinese information and East Asian political-economic dynamics. They state that pricing on these events in Western-dominated markets is often slow, creating opportunities in that time lag.

QAccording to the author, how has AI changed research and tool-building for ordinary investors?

AAI hasn't made ordinary investors experts overnight, but it allows them to create initial versions of tools they previously 'wanted to build but couldn't'. It significantly reduces the hassle, enabling a fast 'idea-implementation-use-feedback-modification' loop to build personal systems for observation, monitoring, and analysis.

QWhat systems does the author suggest ordinary investors should gradually build for themselves?

AThe author suggests building several personal foundational systems: an Asset Observation System, a Signal Monitoring System, a Map/Network Organization System for understanding industry sectors, and a Review/Post-mortem System to track reasoning and outcomes.

Похожее

Do Robots Also Need Encrypted Wallets? Stablecoin Giant Tether Bets on German Company NEURA Robotics

Do Robots Need Crypto Wallets? Stablecoin Giant Tether Bets on German Firm NEURA Robotics German robotics company NEURA Robotics has secured up to $1.4 billion in what is claimed to be the largest-ever funding round in the full-stack robotics industry, valuing the company at $7 billion. The Series C round attracted major investors like Tether, Qualcomm, Amazon, NVIDIA, Bosch, and the European Investment Bank. NEURA, founded in 2019, initially focused on AI-powered collaborative robots (cobots) for industrial automation, later expanding to autonomous mobile robots, service robots, and humanoid robots. Its core strategy is evolving from a hardware manufacturer to the operator of "Neuraverse," a platform designed to enable different robots to share learned experiences and data, creating network effects. A key, crypto-focused aspect of this investment is Tether's involvement. Tether plans to integrate its open-source Wallet Development Kit (WDK) into NEURA's robot platforms. This would embed self-custody wallet functionality, allowing robots to autonomously handle payments and settlements for tasks under pre-set rules—envisioning use cases in logistics or Robotics-as-a-Service (RaaS) models. This move could position stablecoins and crypto wallets as potential "machine payment infrastructure." Additionally, the partnership will see Tether's QVAC (QuantumVerse Automatic Computer) edge-AI framework tested and deployed within Neuraverse. This aims to enable low-latency, offline-capable AI decision-making directly on robots, reducing reliance on cloud computing for critical, time-sensitive operations. The investment underscores Tether's broader ambition to expand beyond being just a stablecoin issuer into AI, energy, and digital infrastructure, with NEURA's robotics network serving as a testbed for merging crypto-based financial layers with edge-based intelligence for the future of automation.

marsbit13 мин. назад

Do Robots Also Need Encrypted Wallets? Stablecoin Giant Tether Bets on German Company NEURA Robotics

marsbit13 мин. назад

AMD Launches Compact AI Host, Directly Challenging NVIDIA DGX Spark

In June 2026, AMD announced the Ryzen AI Halo, a compact AI developer desktop to rival NVIDIA's DGX Spark. Both feature 128GB unified memory for running 200B+ parameter models locally. Priced from $2,949 to $3,999, AMD undercuts NVIDIA's $3,999+ DGX Spark. The core divergence lies in architecture and philosophy. Ryzen AI Halo uses an x86-based Ryzen AI Max+ 395 APU (CPU+GPU+NPU), runs standard Windows/Linux, and emphasizes general-purpose PC flexibility. DGX Spark uses an ARM-based Grace Blackwell Superchip, runs a custom DGX OS, and includes a high-speed ConnectX-7 NIC for cluster prototyping, anchoring it to NVIDIA's full-stack CUDA ecosystem. AMD's ROCm software has improved, with simpler installation and support for major frameworks, but still lags behind CUDA's 17-year maturity in community support and cutting-edge library availability. AMD's broader strategy focuses on becoming a viable second-source supplier. Key moves include acquiring design capabilities via ZT Systems (while outsourcing manufacturing) and securing two major 6GW GPU supply deals with OpenAI and Meta in late 2025/early 2026. These contracts validate AMD's role in diversifying the AI supply chain, rather than outright beating NVIDIA. NVIDIA counters with a tightly integrated stack from desktop (DGX Spark) to data center, emphasizing seamless scalability and enterprise software subscriptions (AI Enterprise). In summary, Ryzen AI Halo represents AMD's pragmatic path: offering a cost-effective, open-ecosystem alternative for developers wary of vendor lock-in, while its large data center contracts aim to capture share from customers seeking a second GPU supplier. The choice boils down to a familiar, flexible PC environment with potential software gaps (AMD) versus a premium, optimized, but locked-in ecosystem (NVIDIA).

marsbit13 мин. назад

AMD Launches Compact AI Host, Directly Challenging NVIDIA DGX Spark

marsbit13 мин. назад

Sharplink CEO: One Million Ethereum Developers, Who Can Compete?

Etherean Ecosystem: One Million Developers and a Formidable Moat The Ethereum network has surpassed a significant milestone: over one million unique lifetime developers, with approximately 232,000 active in the past year. This vast and growing talent pool is Ethereum's core advantage, far more critical than transient metrics like speed or transaction fees. The central question is not which blockchain is fastest, but where the best builders choose to build long-term. Ethereum's answer lies in a decade-long accumulation of infrastructure, standards, tools, liquidity, and collaborative culture that is exceptionally difficult to replicate. It has become the default operating system for programmable finance. This massive developer base is actively working on complex, high-risk challenges that deepen Ethereum's strategic moat: * **Glamsterdam Upgrade (2026):** Focused on core protocol scalability (ePBS, parallel execution) while preserving core values like credible neutrality. * **Synchronous Composability:** Aims to make numerous Rollups interoperate like a single chain, directly addressing fragmentation concerns. * **Quantum Resistance:** Ethereum leads mainstream ecosystems in coordinated preparation for post-quantum cryptography, with a targeted migration plan around 2029. This developer advantage is self-reinforcing, fueled by: * **Deep Composability:** Applications interact like interoperable financial Lego bricks via shared standards (e.g., EVM, Solidity). * **Credible Neutrality:** Secured by over 900,000 validators, making it trusted by major institutions. * **Modularity:** Rollups (Base, Arbitrium, etc.) expand, rather than fracture, the ecosystem into a tightly connected modular internet economy. * **Culture:** Attracts top-tier researchers and standard-setters who guide the entire industry. In essence, while other chains generate activity, Ethereum is consolidating as the trusted, long-term coordination layer for internet-native finance. Its future is being built now by the architects of the next-generation financial infrastructure.

Odaily星球日报1 ч. назад

Sharplink CEO: One Million Ethereum Developers, Who Can Compete?

Odaily星球日报1 ч. назад

Ethereum Reaches the Milestone of One Million Developers, Sharplink CEO Delves Deep into Ethereum's Future Possibilities

Ethereum Surpasses One Million Developers Milestone: A Look at Its Unshakeable Dominance and Future Joseph Chalom, CEO of Sharplink, reflects on his recent Asia trip where he engaged deeply with Ethereum developers and ecosystem leaders. The most striking takeaway was not just the industry's vibrancy, but the rigorous, long-term vision of local builders. This context brings to life a pivotal statistic: Ethereum has now surpassed one million cumulative developers (1,012,824), with approximately 232,000 remaining active in the past year—a talent pool unmatched by any other crypto ecosystem. The critical question isn't which blockchain is fastest, but where top developers choose to build long-term. Ethereum's answer is unequivocal. Its decade-long lead stems from a unique convergence of technology, institutional culture, economic systems, and composability, cementing its role as the foundational operating system for programmable finance. This massive developer base is tackling the industry's hardest problems, continuously strengthening Ethereum's moat. Key initiatives include: * **The Glamsterdam Upgrade (planned 2026):** Introducing ePBS and Block-level Access Lists for parallel execution and higher throughput while preserving core values like credible neutrality and fair MEV distribution. * **Synchronous Composability:** Projects are working to enable atomic transactions across dozens of Rollups, making them function as one unified chain and eliminating ecosystem fragmentation. * **Post-Quantum Security:** Ethereum is far ahead in preparing for quantum computing threats, with a dedicated foundation working group and testnets targeting a full migration by ~2029—a crucial factor for institutional adoption. Beyond developers, Ethereum's core network effects are its unparalleled composability and unified standards (like EVM and Solidity), which create a powerful flywheel: more developers → better tools → greater liquidity → more institutional participation. Its other decisive advantages include credible neutrality (over 900k validators), a secure modular architecture with interconnected Rollups, and a deeply entrenched culture shaped by top-tier researchers. Ultimately, there's a vast difference between generating short-term activity and becoming the trusted, long-term coordination layer for global native finance. Major institutions prioritize security, trust, and liquidity—areas where Ethereum holds dominant mindshare. The industry's trajectory shows resources consolidating around unified standards, deep liquidity, and developer consensus. After meeting the builders in Seoul and Hong Kong, Chalom is more convinced than ever: Ethereum's unshakeable future is being built right now.

Foresight News1 ч. назад

Ethereum Reaches the Milestone of One Million Developers, Sharplink CEO Delves Deep into Ethereum's Future Possibilities

Foresight News1 ч. назад

Saylor's Latest Long Read: Bitcoin is Not Money, It's Digital Capital, and Money is Built Upon It

Michael Saylor presents his "Digital Asset Stack" theory, positioning Bitcoin as the foundational layer of digital capital. He argues Bitcoin itself should remain unchanged—no staking, inflation, or protocol alterations. Instead, a five-layer financial architecture should be built atop it: Digital Capital (BTC), Digital Credit (e.g., yield instruments like STRC), Digital Currency (stable, yield-bearing instruments pegged to fiat), Digital Yield (leveraged/structured products), and Digital Equity (e.g., MSTR stock, absorbing residual volatility). Saylor asserts this stack transforms Bitcoin's high-volatility, high-energy capital into tailored products: stable currencies for payments/savings, yield instruments for income seekers, and equity for growth investors. This approach meets diverse needs—corporate treasuries, banks, retirees, emerging market users—without compromising Bitcoin's core properties (scarcity, decentralization). The "killer use case" is rebuilding global money, credit, and capital markets on Bitcoin, bridging the fiat world with a superior digital asset foundation. The system leverages traditional finance principles (risk layering, structured products) while using Bitcoin as the ultimate collateral. This expands Bitcoin's utility, drives adoption, and offers a better monetary experience: digital, yield-bearing, stable-value tools for everyday use.

marsbit1 ч. назад

Saylor's Latest Long Read: Bitcoin is Not Money, It's Digital Capital, and Money is Built Upon It

marsbit1 ч. назад

Торговля

Спот
Фьючерсы

Популярные статьи

Неделя обучения по популярным токенам (2): 2026 может стать годом приложений реального времени, сектор AI продолжает оставаться в тренде

2025 год — год институциональных инвесторов, в будущем он будет доминировать в приложениях реального времени.

1.8k просмотров всегоОпубликовано 2025.12.16Обновлено 2025.12.16

Неделя обучения по популярным токенам (2): 2026 может стать годом приложений реального времени, сектор AI продолжает оставаться в тренде

Обсуждения

Добро пожаловать в Сообщество HTX. Здесь вы сможете быть в курсе последних новостей о развитии платформы и получить доступ к профессиональной аналитической информации о рынке. Мнения пользователей о цене на AI (AI) представлены ниже.

活动图片