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Order Flow Data Exporter for Retail Quants
Build a SaaS layer on top of professional market data feeds that lets traders fetch futures tick and depth data, then export it into research-ready CSV or Parquet with symbol mapping and presets. The value is not replacing data vendors, but making their data immediately usable for strategy research by independent traders who are stuck on bar-based workflows.
これが重要な理由
You already have a working research setup built around minute-bar files, but the moment you want to test order flow ideas, the workflow breaks. The data you need lives in futures markets, arrives in formats designed for engineers, and comes with terminology that is easy to misuse if you trade CFDs or spot instruments. You are not only buying data; you are buying a way to avoid weeks of trial and error. Existing providers can deliver high-quality feeds, but they still leave you to figure out symbol selection, file conversion, and how to get something usable into your notebook or backtester.
- · Independent algorithmic traders and small quant teams who trade CFDs, futures, or FX but need exchange-based order flow data in a backtesting-friendly format.向けに構築。
- · 最も可能性の高い収益化モデル: SaaS subscription。
痛み · ナラティブ
You already have a working research setup built around minute-bar files, but the moment you want to test order flow ideas, the workflow breaks. The data you need lives in futures markets, arrives in formats designed for engineers, and comes with terminology that is easy to misuse if you trade CFDs or spot instruments. You are not only buying data; you are buying a way to avoid weeks of trial and error. Existing providers can deliver high-quality feeds, but they still leave you to figure out symbol selection, file conversion, and how to get something usable into your notebook or backtester.
スコア内訳
市場シグナル
市場投入
Solo Python-based traders currently using CSV bar data who want to test order flow strategies on equity index and metal futures within the next month.
~20K-50K active globally
SEO long-tail
$49/month
10 paying users who connect a vendor account and export at least 3 datasets within 30 days
MVPの範囲 · 1~2週間
- Define a normalized schema for trades, quotes, and optional depth snapshots
- Build a command-line importer for one provider's historical futures dataset
- Create CSV and Parquet export jobs for ES, NQ, GC, and 6E
- Set up a basic web dashboard for symbol selection and date-range requests
- Write Python example notebooks showing immediate use in pandas and backtesting
- Add user accounts, saved export presets, and download history
- Implement spot-to-futures proxy guidance in the UI for FX and CFD users
- Add lightweight validation checks for missing sessions, rollover dates, and time zones
- Publish a landing page with sample files and a waitlist-to-paid conversion flow
- Run outreach to early users and measure export completion and repeat usage
差別化
失敗する可能性がある理由
自己反論 — 最も重要な信頼のシグナル
- 1Data licensing could prevent a commercially attractive packaging model, forcing the product into a narrower bring-your-own-vendor workflow.
- 2The best users may already be comfortable with APIs and see little reason to pay for conversion and packaging.
- 3Acquisition may be expensive because the buyer pool is specialized and fragmented across many small communities.
エビデンスの概要
AIがこのインサイトをどのように統合したか — 逐語的な引用はありません
The discussion consistently centers on the need for genuine exchange-based order flow rather than basic bars. Several participants pointed to a specialized data vendor as the practical choice, while multiple follow-up questions focused on file format, API access, and how to fit the data into an existing CSV workflow. That combination suggests a real opportunity in usability and workflow tooling rather than raw data creation.
アクションプラン
コードを書く前に、この機会を検証しましょう
推奨する次のステップ
開発する
強い需要シグナルを検出。本物の課題と支払い意欲を確認 — MVPの開発を始めましょう。
ランディングページ文案キット
実際のRedditコメントから抽出したコピー、そのまま貼り付けられます
見出し
Order Flow Data Exporter for Retail Quants
サブ見出し
Build a SaaS layer on top of professional market data feeds that lets traders fetch futures tick and depth data, then export it into research-ready CSV or Parquet with symbol mapping and presets. The value is not replacing data vendors, but making their data immediately usable for strategy research by independent traders who are stuck on bar-based workflows.
ターゲットユーザー
対象:Independent algorithmic traders and small quant teams who trade CFDs, futures, or FX but need exchange-based order flow data in a backtesting-friendly format.
機能リスト
✓ Connect to external historical futures data APIs ✓ One-click export to normalized CSV and Parquet ✓ Asset presets for indices, metals, commodities, and FX futures proxies ✓ Python-ready dataset schemas and sample loaders ✓ Usage-based download and storage management
どこで検証するか
r/r/algotrading にランディングページのリンクを投稿しましょう — そこがこの課題が発見された場所です。
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