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Quantitative stock intelligence

Where data meets conviction.

Siddhantha analyses thousands of US equities every day with proprietary machine-learning models — surfacing the highest-conviction opportunities across the Russell 2000, S&P 500 and S&P 600.

3,100+
Equities scanned
3
Market universes
Daily
Refreshed cadence
What we do

Three universes. One analytical lens.

Siddhantha applies proprietary machine-learning models across three US equity universes, surfacing high-conviction opportunities that emerge over short and medium horizons.

Universe 01

Russell 2000

Small-cap US equities where information asymmetry is highest and machine-learned signals carry the most edge.

Universe 02

S&P 500

Large-cap leaders. Liquid, well-covered, but still rich with cross-sectional patterns the model surfaces.

Universe 03

S&P 600

Mid-cap quality screen. The bridge between small-cap volatility and large-cap stability.

Two horizons

T20 Daily and T20 Weekly.

Two products designed for different decision rhythms. Same data foundation, different time horizons.

DAILY · INTRADAY MOMENTUM
Product 01

T20 Daily

Top 20 high-conviction picks refreshed each trading day. Designed for active traders and short-horizon allocators who want a daily directional read.

WEEKLY · CONVICTION RANKING
Product 02

T20 Weekly

Top 20 picks with a weekly horizon. Lower turnover, lower noise — built for swing traders and portfolio managers who rebalance less frequently.

Begin

Ready to see Siddhantha in action?

Platform access is currently invitation-only. Reach out for a demo or request access for your firm.

Products

Two products. One quantitative engine.

Both T20 Daily and T20 Weekly are powered by the same Siddhantha engine. They differ in their time horizon and intended user.

Product 01

T20 Daily

Daily high-conviction picks, refreshed each trading day before the US open.

  • Top 20 long and short picks per universe
  • Ranked by model conviction
  • Performance statistics on every prediction
  • Coverage: Russell 2000, S&P 500, S&P 600
Learn more
Product 02

T20 Weekly

Weekly high-conviction picks with a medium-term horizon. Lower turnover, designed for swing traders and PMs.

  • Top 20 long and short picks per universe, weekly
  • Medium-term horizon
  • Lower portfolio turnover than the daily track
  • Coverage: Russell 2000, S&P 500, S&P 600
Learn more
Side by side

Compare

T20 DailyT20 Weekly
Time horizonShort-term (daily)Medium-term (weekly)
Refresh cadenceEvery trading dayEvery Monday
UniversesR2K, S&P 500, S&P 600R2K, S&P 500, S&P 600
Best suited forActive tradersSwing traders, PMs
Indicative pricing£99 / month£59 / month
Product · T20 Daily

A daily directional read on US equities.

T20 Daily ranks the highest-conviction long and short candidates each trading day across three US equity universes. Powered by proprietary machine-learning models and refreshed before the US open.

DAILY · INTRADAY ▲ TREND
What you get

Built for daily decisions.

20

Long picks

Each day the platform surfaces 20 stocks flagged as the highest-conviction long ideas for the session ahead.

20

Short picks

A matching set of 20 stocks flagged as the highest-conviction short ideas — useful for hedges, pair trades, or positions to avoid.

3

Universes

Russell 2000, S&P 500, S&P 600. Filter by universe, by direction, by date.

How it ranks

Conviction-ranked picks.

Each pick carries a conviction indicator that reflects how strongly the platform favours one direction over the other. High-conviction picks mean the analytical signal is clear. Low-conviction picks are treated as a signal to stay on the sidelines.

The ranking is designed to help you prioritise where to look first, not to make the trading decision for you.

Example

Sample ranking row

TickerXYZ
DirectionLong
ConvictionHigh
Product · T20 Weekly

A weekly horizon for swing traders and PMs.

T20 Weekly ranks long and short picks over a medium-term horizon. Lower turnover, less noise, designed for investors who rebalance weekly rather than daily.

TOP WEEKLY · RANKED CONVICTION
Key differences from Daily

Same engine. Different horizon.

Horizon

Medium-term

Weekly picks are built for multi-day holding periods rather than next-session moves.

Cadence

Refreshed Mondays

The weekly track regenerates every Monday after the prior trading week closes.

Use

Swing & PM

Suited to swing traders and portfolio managers with multi-day holding periods.

How it works

From raw market data to ranked picks.

Siddhantha runs an end-to-end analytical pipeline every trading day. Four stages: data, signals, analysis, delivery.

Stage 01

Data ingestion

Each day we ingest market data and corporate fundamentals for ~3,100 US equities across the Russell 2000, S&P 500 and S&P 600, along with relevant index and sector benchmarks.

R2K S&P 500 S&P 600 SECTORS DATA DAILY · MULTI-UNIVERSE INGEST

~3,100 equities · Daily · Multi-universe


MOMENTUM VALUE QUALITY VOLATILITY GROWTH SIZE LIQUIDITY FACTOR × UNIVERSE SIGNAL MATRIX

Proprietary signal library

Stage 02

Signal construction

Raw market data is transformed into a proprietary library of cross-sectional and time-series signals. This is where most of the platform's edge is built.


Stage 03

Analysis

Our proprietary analytical engine processes the signal set and scores each stock for its upside and downside potential. The engine is refreshed on a rolling basis so it continuously adapts to changing market conditions.

SHORT NEUTRAL LONG CONVICTION SCORE DISTRIBUTION

Proprietary analytical engine · Rolling updates


▲ T20 LONG ▼ T20 SHORT #1 #2 #3 #4 #5 #6 #7 #1 #2 #3 #4 #5 #6 #7 RANKED OUTPUT · DELIVERED DAILY

Top 20 long and 20 short, ranked by conviction

Stage 04

Delivery

The top 20 long and short picks per universe — the T20 — are published to the platform. Each pick carries a conviction indicator so you can prioritise where to look first.

Read the methodology.

For the design principles, assumptions and limitations, see the methodology page.

Methodology
Methodology

Design principles, assumptions, limitations.

Siddhantha is an analytical platform, not a forecasting service. This page sets out the principles behind how the platform ranks stocks, what it assumes, and what it cannot do.

Design principles

The T20 platform uses proprietary machine-learning models trained on point-in-time market data. For each universe and each horizon, the platform evaluates both the upside and downside case for every stock, producing a ranked list of high-conviction long and short ideas. We deliberately separate long and short evaluation so that each is scored on its own merits rather than being reduced to a single number.

Signal construction

Raw market data is transformed into a proprietary library of signals covering price behaviour, trading activity, relative strength within the universe, and relationships to broader indices and sector benchmarks. Signals are computed point-in-time — we never use information that would not have been available at the moment the pick is made.

Refresh cadence

The analytical engine is refreshed on a rolling basis so it continuously adapts to changing market conditions. Picks are regenerated daily (T20 Daily) or weekly (T20 Weekly) before they are published to the platform.

Ranking

The platform's primary ranking metric is a conviction indicator, which captures how strongly the analytical engine favours one direction over the other for a given stock. High conviction indicates a clear analytical signal. Low conviction indicates ambiguity, which we treat as a signal to stay neutral.

Assumptions

AssumptionImplication
Markets are partially analysableThe platform assumes cross-sectional return patterns persist long enough to be identified and acted on.
Historical conditions inform current conditionsIf the market regime changes abruptly and without precedent, performance will degrade.
Liquidity is sufficient at top-of-bookPicks assume users can transact in the named tickers without large slippage.
No transaction costs in raw scoresRankings are pre-cost. Users must account for commissions, spread and impact.

Limitations

The platform cannot anticipate idiosyncratic news (earnings surprises, M&A, regulatory action) until that information appears in market behaviour. The platform is not a market-timing tool — it ranks relative attractiveness within a universe, it does not call the direction of the broader market. Past performance is not a reliable indicator of future results.

Continuous improvement

We continue to research new signals, new analytical approaches, and better evaluation techniques. When a material change reaches production, we publish release notes so users can understand what has changed.

Historical evaluation

How the platform has been evaluated.

This page summarises how the T20 platform has been validated on out-of-sample historical data. Past performance is not a reliable indicator of future results.

OOS

Out-of-sample

The platform has been evaluated on held-out data, separate from the data used to build it.

3

Universes

Evaluation covers all three universes: Russell 2000, S&P 500 and S&P 600.

Daily

Ongoing

Each day's published picks become part of the ongoing evaluation record.

What this means

Out-of-sample evaluation means the platform has been tested on data it did not have access to during its design. This is the standard way of checking whether an analytical approach holds up beyond the specific history it was built on. The evaluation focuses on how well the platform separates the stocks that ultimately outperformed from those that underperformed — not on claimed trading returns.

Important: Historical evaluation measures analytical quality, not realised P&L. Real-world performance depends on portfolio construction, transaction costs, slippage and capacity. Siddhantha publishes the platform's output; the user is responsible for converting it into trading or investment decisions.

Caveat

No track record claims

The information on this page describes analytical evaluation on historical data. It is not a track record of investment returns, and it should not be interpreted as such. We do not manage client money. We publish picks; users decide how to act on them.

Examples

Sample T20 outputs.

The tables below illustrate the structure of T20 Daily and T20 Weekly outputs. Tickers are anonymised. Real outputs are available inside the platform.

T20 Daily — Buy ranking (sample)

RankTickerUniverseBuy probSell probConfidence
1AAAR2K0.840.110.73
2BBBS&P 5000.820.140.68
3CCCS&P 6000.790.150.64
4DDDR2K0.770.160.61
5EEES&P 5000.750.170.58

T20 Weekly — Sell ranking (sample)

RankTickerUniverseBuy probSell probConfidence
1FFFS&P 5000.100.860.76
2GGGR2K0.130.830.70
3HHHS&P 6000.150.800.65
4IIIS&P 5000.180.780.60
5JJJR2K0.200.760.56

Sample data. For illustration only. Not a recommendation to buy or sell any security.

Use cases

Who uses Siddhantha.

Siddhantha is a research and screening tool. The same outputs serve different workflows depending on the user.

Use case 01

Portfolio monitoring

Existing portfolio managers use Siddhantha as an early-warning lens. When a held name appears in the Sell ranking for several days running, that is a signal to review the position.

Use case 02

Scenario benchmarking

Compare your discretionary picks against the model's ranking. Where you and the model agree, conviction strengthens. Where you disagree, you have a clean prompt to revisit your thesis.

Use case 03

Market screening

For active traders, the daily T20 is a starting universe — twenty long and twenty short candidates per market segment, surfaced by the model and ready for further fundamental review.

Learn

Probabilities, models, and what they can and cannot tell you.

Siddhantha is a probabilistic system. Used well, that is a strength. Used badly, it leads to the wrong conclusions. This page sets out the core concepts.

Probabilities, not predictions

A model that outputs "stock X has an 81% probability of outperforming tomorrow" is not promising that stock X will outperform tomorrow. It is saying that, over many days where the model assigned the same probability, roughly 81% of those stocks did in fact outperform. The probability is a long-run statement, not a single-event guarantee.

This means a single losing day from a high-confidence pick is not evidence that the model is wrong. It is evidence consistent with the 19% of the time that high-confidence picks underperform.

Why model assumptions matter

Every model is trained on historical data and assumes that the relationships in that history will continue to hold. When markets undergo a regime change — a new monetary regime, a new dominant factor — the model may take time to adapt. During that adaptation period, performance can degrade.

What model-based analytics is good for

Cross-sectional ranking — picking the relatively most attractive names within a defined universe — is what the Siddhantha models are designed for. They are not designed to call the direction of the broader market, time entry and exit at the index level, or replace fundamental due diligence on individual companies.

How to use the platform well

Treat the T20 as a starting universe, not a buy list. Combine it with your own fundamental review, your own position sizing, and your own risk management. The model's job is to surface candidates worth your attention — what you do with them is your judgment.

Pricing

Simple, transparent pricing.

Indicative pricing — final terms confirmed at onboarding. Annual plans available on request.

Daily Track

T20 Daily

£99 / month

Daily long and short rankings across three universes.

  • T20 Daily Long & Short rankings
  • R2K, S&P 500, S&P 600 universes
  • Per-prediction performance stats
  • All available ranking modes
  • Email support
Institutional

Custom

Talk to us

For funds, family offices and asset managers needing API access, custom universes or bulk seats.

  • Both Daily and Weekly tracks
  • API access for systematic integration
  • Custom universes on request
  • Multi-seat licensing
  • Dedicated support
Contact Sales

Frequently asked

How accurate are the T20 picks?

The platform discriminates between outperformers and underperformers with meaningful but not extraordinary skill. See the historical evaluation page for detail. Past performance does not guarantee future results.

Can I cancel anytime?

Yes. Subscriptions are month-to-month with no minimum term. Cancel from your account page at any time.

Which ranking modes are included?

All available ranking modes are included in every subscription.

Is this investment advice?

No. Siddhantha publishes analytical output for informational purposes only. We are not authorised by the FCA to provide investment advice. See the legal disclaimer for full terms.

About

A UK-based quantitative platform built around guiding principles.

Siddhantha LTD is a UK-registered company building probabilistic stock-intelligence tools for serious investors. We do not manage client money. We publish model output. The user decides what to do with it.

What we believe

Markets are partially predictable. Cross-sectional patterns persist long enough that machine-learned signals can offer meaningful edge — provided they are honestly calibrated, transparently presented, and consumed by users who understand their limits. That is the discipline we hold ourselves to.

Why "Siddhantha"

"Siddhantha" is a Sanskrit word meaning established conclusion or guiding principle. The platform is built around guiding principles — first to protect principal, then to capture asymmetric opportunity. The brand reflects the discipline.

Who we are

Siddhantha is built by a small team of quantitative researchers and engineers based in the UK. Backgrounds span machine learning, equity research and high-frequency trading infrastructure.

Disclaimer

Siddhantha publishes the output of statistical models. This material is for informational purposes only and does not constitute investment advice, an offer or solicitation to buy or sell any security, or a representation that any investment strategy is suitable for any particular individual. All investment carries risk, including loss of principal. Past performance is not a reliable indicator of future results. See the legal page for full terms.

Team

The people behind Siddhantha.

A small team of researchers and engineers focused on building reliable, transparent quantitative tools.

Team profiles

Loaded dynamically from the platform's site config.

Consulting

Bespoke quantitative research for institutional clients.

For funds, family offices and asset managers who need custom model work that goes beyond the published T20 platform.

What we do

Siddhantha consulting projects typically involve adapting our research approach to a client's specific universe, factor exposure or trading horizon. Engagements are scoped per project, with clear deliverables.

Common engagements

  • Custom universe research — beyond R2K, S&P 500 and S&P 600
  • Bespoke signal research for client-specific use cases
  • Strategy backtesting on proprietary data
  • Integration into existing investment workflows

How to engage

Reach out via the contact page. We start every engagement with a no-cost scoping conversation to determine fit before any commercial discussion.

Trading Desk

Quantitative execution capability.

Siddhantha does not manage external client capital. The trading desk capability described here is the in-house infrastructure used to test, validate and refine model output before it is published to platform users.

In-house only

All trading activity referenced here is conducted on Siddhantha's own balance sheet. We do not offer execution services to third parties. We do not manage external money under discretion.

Why we run a desk at all

Running our own capital against the model output is the highest-fidelity validation. Backtests can be optimistic; live execution exposes the slippage, fill quality and operational reality that a backtest cannot. Insight from this loop feeds back into our published platform.

Insights

Notes from the desk.

Periodic observations on market structure, factor behaviour and model performance from the Siddhantha research team.

Insight notes coming soon

We are preparing the first set of research notes for publication. Subscribe via the contact page to be notified.

Blog

Writing.

Longer-form pieces on machine learning in finance, market structure and the philosophy of probabilistic investing.

Blog launching soon

First posts in preparation. Check back, or follow us via contact.

Contact

Get in touch.

Questions about the platform, institutional access or consulting? Reach out.

General

Email us

Best for product questions, demo requests, and access enquiries.

Institutional

For funds & PMs

For institutional pricing, API access, custom universes or consulting engagements, get in touch and we will arrange a scoping call.

Sign up

Request access.

The Siddhantha platform is currently invitation-only. Sign in with Google to register your interest, or contact us directly for institutional access.

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Assumptions & Limitations
Siddhantha publishes probabilistic outputs from machine-learning models trained on historical equity data. Predictions are not investment advice, do not account for your individual circumstances, and may be wrong. Past performance is not a reliable indicator of future results. Capital invested in equities is at risk.