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This exact Blueprint help him make 12 lakhs Profit from Stock Trading

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Rohan, a 28-year-old Jamshedpur accountant I’d mentored via LinkedIn, calls me ecstatic. “Sunil bhai, ₹12 lakhs profit in 9 months—from a ₹5 lakh starter pot!” No inheritance, no insider tips—just a data science blueprint he weaponized for algo trading. As a 20-year SEO warrior who’s scripted Ahrefs hits, I’ve seen hustlers turn skills into fortunes. Rohan’s secret? DASCA CDS certification from our last chat, flipped into Python-Spark algos beating Nifty swings.​

2026 markets rage—AI trading up 60%, retail profits average ₹2-5L yearly for pros. But 90% lose. Rohan’s exact blueprint? Data science rigor meets backtested strategies. Parents, this isn’t gambling—it’s engineered edges. Unpack his journey, steps, tables, and copy-paste for your wins.

Overview

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Rohan’s real saga: DASCA CDS → ML models → ₹12L profit (240% ROI). Zero to algo trader via 6-month grind, backtests, live NSE trades. Replicate with Python, risk rules, no fluff.​

  • Key wins: 65% win rate, 2.5% monthly returns; scales to ₹50L+ pots.
  • Outcomes: ₹5L seed → ₹17L in 9M; beats 95% retail traders.
  • Solves: “Data science for stocks?”—yes, via predictive edges.

Stories, lists, ROI math from my coaching files.

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Rohan’s Breaking Point: From 9-5 to Trading Dream

Rohan: CA dropout, ₹8LPA audit grind. 2024 crash wiped ₹1L F&O bets. “Random trades killed me.” Post-DASCA (our last tale), he eyed markets. Spark/ML from cert screamed opportunity—build models spotting patterns humans miss.

Aha Moment: QuantInsti EPAT-inspired (BCom-to-algo story). Rohan hacked: “DASCA projects = trading gold.”​

The Blueprint: DASCA Skills → Trading Machine

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Core: ML pipelines for price prediction, backtesting. No day trading—swing/positional NSE.

Strategy Stack (Rohan’s Winners):

  1. ML Predictor: LSTM for Nifty next-day moves (70% accuracy).
  2. Spark ETL: Clean 5Y OHLCV data from NSE.
  3. Risk Overlay: 1% risk/trade, Kelly criterion sizing.
  4. Backtest Rig: Zipline—tested 200 strategies, picked top 10.

Tools Table:

ToolRoleRohan’s Hack
Python/PandasData prep1-min NSE feeds
TensorFlowLSTM models65% win rate
PySparkBig data10Cr rows processed
Zipline/BacktraderTesting₹12L simulated first

Started ₹5L Zerodha—compounded to ₹17L.

Step-by-Step: Rohan’s 9-Month Profit Run

Exact plays from his Notion logs:

  1. Months 1-2: Data → Model – Fetch NSE data (yfinance). Train LSTM on Nifty50: Features (RSI, MACD, volume). Accuracy: 68%.
  2. Month 3: Backtest – 2018-2024 data. Sharpe 1.8, drawdown 8%. Beat Buy-Hold 3x.
  3. Months 4-6: Paper Trade – ₹2L virtual: +18% returns. Tweak stops.
  4. Months 7-9: Live – ₹5L real: 25 trades, 16 wins. Stocks: Reliance, HDFC Bank swings.
  5. Scale: Reinvest profits—₹12L net.

Daily Routine: 1H model retrain, 30min scans. “Missed Diwali? Model traded.”

Trades Table (Top 5 Wins):

TradeStockEntry/ExitP&L (₹)Edge
1RELIANCE2450→2780+1.3LLSTM upsignal
2HDFCBANK1650→1820+1.1LVolume breakout
3TCS3850→4180+95KRSI oversold
4INFY1720→1980+1.2LEarnings ML pred
5NIFTY ETF24200→26500+80KMacro overlay

The Tech Edge: Why It Worked

DASCA’s Spark handled 1B+ rows—spotted crypto-like patterns in Nifty. LSTM ate volatility (2025 election swings). Risk: Never >2% drawdown.

Metrics That Mattered:

  • Win Rate: 65%.
  • Profit Factor: 2.1.
  • Max DD: 7%.

Rohan: “Cert taught production ML; markets = ultimate test.”

(Alt: Screenshot of Rohan’s Zipline backtest chart showing ₹12L equity curve.)

ROI Breakdown: ₹12L from ₹5L Seed

Math: 2.4x return, 32% annualized. Vs F&O losers (-50% avg).

Growth Table:

MonthCapital (₹L)Monthly ReturnKey Trade
Start5
35.9+18% paperModel tuning
68.2+15%Reliance swing
917+22%TCS run-up

Breakeven: Month 2. Taxes paid, still ₹12L profit.

Pitfalls Rohan Dodged

  • Overfitting: Walk-forward tests.
  • Emotions: 100% algo.
  • Leverage: Cash only.

Killer Hack: Weekly review—”What broke?”

(Alt: Rohan’s trading dashboard with LSTM predictions vs actual Nifty.)

Replicate Rohan: Your Blueprint

  1. Get DASCA CDS (or free alt: Dataquest).​
  2. Code LSTM: GitHub “stock-lstm-python”.
  3. Backtest: Paper 3M min.
  4. Start Small: ₹1-5L Zerodha.
  5. Scale: 20% MoM compound.

Jamshedpur meetups: Rohan mentors now.

Conclusion

Rohan’s exact blueprint—DASCA ML → algo trading—netted ₹12L profits by taming markets with data. 2026’s your year; volatility = opportunity.

DM for my free Trading Blueprint Excel (LinkedIn)—Rohan’s formulas pre-loaded. Trade smart; profit big!

How Did DASCA CDS Skills Turn into ₹12L Trading Profits?

Data science certification stock trading blueprint: Rohan used Spark/LSTM from DASCA for Nifty predictions—68% accuracy, 65% win rate. Backtests beat market 3x; live ₹5L→17L in 9M. Key: Risk 1%/trade.​

What’s the Exact LSTM Strategy for Indian Stocks?

Stock trading success story blueprint: Fetch NSE data → LSTM (RSI/MACD features) → Buy >0.6 prob up. Backtest Zipline, Sharpe >1.5 filter. Rohan: 25 trades, ₹12L P&L. Cash only, 2% stops.

Can Non-Tech Background Replicate ₹12L Algo Profits?

Algo trading case study data science: Yes—Rohan (CA) via DASCA Python/ML. 3M paper → live scale. 32% ann. returns realistic; avoid F&O. My mentees avg ₹4-8L Y1.

Risks in This Stock Trading Blueprint?

12 lakhs profit stock trading blueprint risks: 7% DD max, overfitting (walk-forward), black swans. Rohan: 1% risk, cash trades. Test 5Y data first; paper mandatory. 

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