Fitur baru trade-bot. Uji coba pertama dengan demo binance futures.. Semuanya tampak baik untuk saat ini, tetapi pengujian akan terus berlanjut setidaknya selama satu bulan lagi. Ini pekerjaan yang sulit; saya harap kita berhasil.
Saya membagikan data hari ini bersama Anda. Ini bukan data backtest, mock, atau dimanipulasi. Kinerja harian Sentinel Aleph secara otomatis dipublikasikan di Halaman Depan. Sekadar informasi, saya akan membagikan beberapa sinyal antara pukul 19.00-20.00 malam ini. Tetap dengan penuh kasih.
· Block pembalik bearish klasik (gagalnya order block lama) → pembersihan likuiditas di bawah (band 0.040-0.041 tepat di EQH/penyerapan likuiditas) · Lalu BOS (Break of Structure) agresif ke atas → perubahan struktur pasar menjadi bullish · Saat ini retest order block bullish (zona 0.042-0.044) + perpindahan tanpa mengisi FVG (fair value gap) · Anomali volume + bau dari short squeeze (ledakan OI + lonjakan tingkat pendanaan)
Aturan SMC sederhana: Institusi mengumpulkan likuiditas di level rendah, membersihkan short yang terjebak, kini bergerak menuju zona premium (0.065+). Jika resistensi 0.058 tembus, langkah berikutnya akan sangat cepat → target kisaran 0.085-0.10 (zona ketidakseimbangan sebelumnya + ekstensi).
Siapa yang masih memegang short? 😏 Atau siapa yang masuk dari tap OB ini, angkat tangan! Menurut Anda ini serangan likuiditas di dalam range atau awal nyata dari CHoCH? Unggah chart Anda di komentar, mari kita baca bersama! 👇
From Coding Indicators to Reading the Market Itself
For many years, I did what most technically minded traders do. I built indicators. Not one or two — dozens. Momentum indicators, volatility filters, adaptive oscillators, regime detectors. Some were simple. Some were mathematically heavy. During that period, my work involved:
Differential equations to smooth price and reduce noiseStatistical signal processing to separate trend from randomnessTopographical signal mapping, treating price as a terrain rather than a lineProbability distributions to estimate outcome likelihoodEven quantum-inspired models, borrowing concepts like state collapse and observer bias to explain why signals “worked” until they didn’tOn paper, everything looked sophisticated. On charts, everything sometimes worked. And that “sometimes” was the problem.
The Hidden Flaw in Indicators Indicators are not wrong because they are poorly coded. They are wrong because of what they try to do. Every indicator — no matter how advanced — attempts to predict. Predict momentum. Predict reversals. Predict continuation. Even adaptive indicators are still reacting to what already happened. I realized that no matter how complex the math became, all indicators shared the same limitation:
They observe effects, not causes. You can refine the smoothing. You can reduce lag. You can add AI layers. But you are still measuring the wake, not the ship. When Mathematics Wasn’t the Problem
At some point, I stopped asking: “How can I make this indicator better?” And started asking: “Why does price move here in the first place?” That question cannot be answered by oscillators. Markets do not move because RSI crossed 30. They move because liquidity is taken, positions are built, and risk is transferred. That’s when my work shifted away from indicator engineering and toward market behavior analysis.
Discovering Smart Money Concepts (SMC) SMC didn’t replace mathematics. It gave mathematics a purpose. Instead of modeling price movement, I began modeling: Market structureLiquidity poolsBehavioral shiftsExecution footprintsInstitutional inefficiencies Suddenly, equations weren’t trying to predict the future. They were helping me validate observations. I wasn’t asking: “Where will price go?” I was asking: “What has already been done, and what must follow because of it?” That shift changed everything.
The Practical Gains Moving from indicator-based systems to SMC-based logic resulted in: Fewer signals — but higher relevanceLess emotional decision-makingClear invalidation pointsBetter alignment with macro conditionsAnd most importantly: less need to be right all the time SMC doesn’t promise perfection. It offers context. And context is what indicators fundamentally lack.
The Metaphor That Ended the Debate for Me After all the math, all the models, all the years of coding, everything came down to a simple image: Indicators track the foam behind a ship.They study the turbulence left in the water and try to guess where the ship might be heading. SMC watches the ship itself. Its direction. Its speed. Where it slows. Where it turns. And once you see that difference, you can’t unsee it.
Stop chasing the foam behind the ship trying to guess where it’s heading. Get on the ship. Be a passenger. — Aleph