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For over a decade, our private Computers & Electronics tutors have been helping learners improve and fulfil their ambitions. With one-on-one lessons online, you’ll enjoy high-quality, personalised teaching that’s tailored to your goals, availability, and learning style.

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4265 online computers & electronics teachers

Trusted teacher: ⚙️ Step 1: Understand What AI Actually Is AI isn’t magic — it’s just pattern recognition on steroids. It learns from data, spots trends faster than humans, and automates decisions. There are three main flavors you’ll be dealing with: Machine Learning (ML) – Think “training” an AI to make predictions. (Used in trading bots, recommendations, etc.) Generative AI – Like ChatGPT or Midjourney; it creates text, code, or images. Automation AI – Uses rules + ML to perform actions automatically (Zapier, n8n, AutoGPT, etc.). 💸 Step 2: Using AI in Trading AI trading isn’t new — hedge funds have been doing it for decades. But now you can do it too. Here’s the stack you’d look at: Data Source – Pull data from APIs (like Binance, Alpha Vantage, or Polygon.io). Model – Use AI to find signals. Common tools: Python + TensorFlow/PyTorch → train models that predict price movement. GPTs → analyze news sentiment. Execution – Automate trades using APIs (like Binance or Alpaca). Testing – Backtest with historical data before going live. If you want plug-and-play options, try: Koyfin, TrendSpider, or Trade-Ideas for AI-driven analysis. Composer or Stoic.ai if you want “autopilot” portfolios. (Pro tip: the real edge isn’t in fancy models — it’s in feeding your AI clean, unique data.) 📱 Step 3: Using AI to Build Apps This is where things get fun. You don’t even need to code hardcore anymore. No-code builders: Glide, Bubble, or Adalo → use AI APIs like OpenAI, HuggingFace, or Replicate to add brains. AI dev tools: Replit Ghostwriter, GitHub Copilot, or ChatGPT’s code interpreter to write real code fast. Frameworks (if coding): Python/Flask or FastAPI for backend. React or Next.js for frontend. Firebase or Supabase for hosting & data. Hook it all together with AI APIs (like OpenAI, Anthropic, or Stability AI). 🚀 Step 4: Learn by Doing (Don’t Just Watch YouTube) The fastest way to master AI is to build real stuff: Create a sentiment analyzer that trades crypto based on tweets. Build an AI app that generates marketing copy for clients. Automate your own work — make an AI that handles your emails or schedules. 📚 Step 5: Resources That’ll Level You Up Learn ML basics: fast.ai or Google’s ML Crash Course. Build AI apps: freeCodeCamp or YouTube’s “Code with Tomi” / “Nicholas Renotte.” Trading AI: Check out “Algorithmic Trading with Python” by QuantInsti. No-code AI apps: Buildspace or FlowiseAI.
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