RisingTransfers
AI DNA Similarity

Best Alternatives to Selim Amallah

Players most similar to Selim Amallah (Midfielder, €150K) — ranked by AI DNA similarity score across playing style, pressing intensity, and tactical fit.

Top 3 Alternatives to Selim Amallah

  1. 1.Antonio Vergara98% DNA match·Napoli
  2. 2.Mussa Kaba98% DNA match·Borussia Dortmund
  3. 3.José Luís Rocha Tavares97% DNA match·Santa Clara

Ranked by AI DNA similarity — 768 dimensions across playing style, pressing intensity, and tactical fit.

RT

Intelligence Verdict

Chances MissedTop 0%
???Bottom 21%

A Ball-Winner....

See Full Verdict + Share Card →

Playing Style Analysis

Ball-WinnerSmall Sample

A Ball-Winner. Statistically, he stands out as a reliable supplier (0.18 assists/90), draws fouls effectively (2.3/90) and active off the ball (2.6 press score/90), contributing to defensive transitions. However, he loses possession under pressure (1.8 dispossessed/90) and prone to committing fouls (2.6/90). The three most similar players to Selim Amallah by playing style are:

  • Antonio Vergara(98% match)A Creator. Statistically, he stands out as a capable chance creator (1.5 key passes/90), a prolific assist provider (0.37 assists/90), active in the tackle (2.0 tackles/90), heavily involved in play (52 touches/90), draws fouls effectively (3.5/90) and active off the ball (2.7 press score/90), contributing to defensive transitions. However, he loses possession under pressure (2.6 dispossessed/90) and prone to committing fouls (2.8/90).
  • Mussa Kaba(98% match)A Ball-Winner. Statistically, he stands out as a reliable supplier (0.17 assists/90), meticulous in distribution (90% pass accuracy) and wins the physical battle (67% duel success). Note: this profile is based on 523 minutes of playing time this season.
  • José Luís Rocha Tavares(97% match)A Ball-Winner. Statistically, he stands out as an aggressive ball-winner (3.1 tackles/90), wins the physical battle (55% duel success), wins the ball cleanly (2.1 successful tackles/90), heavily involved in play (58 touches/90), draws fouls effectively (3.0/90), a high-intensity presser (press score 3.0/90), constantly disrupting opposition build-up and top 10% tackler in the league. However, he prone to committing fouls (3.5/90).

Similarity is calculated using per-90 performance data across multiple playing style dimensions. How Player DNA matching works →

S
Comparison Base
Selim Amallah
MidfielderMorocco€150K
Full profile →

Similar Players — Ranked by DNA Similarity

Ask AI: Why are these players similar?

Our 768-dimension Player DNA model matches playing style, physical profile, pressing intensity, and tactical fit. Ask the AI to explain exactly what makes these players statistically similar to Selim Amallah.

Ask AI about Selim Amallah

Frequently Asked Questions

Who are the best alternatives to Selim Amallah?
The top alternatives to Selim Amallah based on AI DNA playing style analysis include: Antonio Vergara, Mussa Kaba, José Luís Rocha Tavares, Dave Kwakman, Tyler Onyango. These players were matched using Rising Transfers' 768-dimension DNA model across playing style, pressing intensity, and tactical fit — not just position or market value.
Which players are similar to Selim Amallah in 2026?
Players with a similar profile to Selim Amallah in 2026 include Antonio Vergara (N/A), Mussa Kaba (N/A), José Luís Rocha Tavares (N/A). For a deeper DNA-level comparison including playing style, physical attributes, and tactical fit, ask Rising Transfers' AI directly.
What position does Selim Amallah play and who plays similarly?
Selim Amallah plays as a Midfielder. Players with a comparable positional profile include Antonio Vergara (Italy, N/A); Mussa Kaba (Guinea, N/A); José Luís Rocha Tavares (Cape Verde, N/A); Dave Kwakman (Netherlands, N/A).
How does Rising Transfers find similar players?
Rising Transfers uses a proprietary 768-dimension Player DNA model trained on 3.2 million match events. Each player is represented as a vector across 35+ per-90 metrics including pressing intensity, passing footprint, dribbling profile, and defensive contribution. Similarity is measured using cosine distance — the same technique used in state-of-the-art AI systems — making it the most precise player comparison tool available publicly.