Back

Hybrid/in-person

Full time

Barcelona, Spain

Causality Research Scientist

About Allos

Allos is a Causal-AI Pharmaceutical company at the forefront of the next generation of artificial intelligence. We are expanding our research team and are looking for an enthusiastic, curious, and adaptable individual to join us in this highly dynamic environment.

The Role

As a Causality Research Scientist, your primary focus will be on fundamental research and its application to complex real-world problems. You will be responsible for developing new ideas, improving foundational methods, and conducting comprehensive data analysis using causal methods. Your work will directly impact observational-longitudinal studies in medicine and chemistry, and you will collaborate closely with field experts.

Key Responsibilities:

  • Develop and improve new foundational methods in causal inference.
  • Conduct comprehensive data analysis on observational-longitudinal studies.
  • Collaborate with domain experts to translate abstract scientific ideas into concrete results.
  • Organize and write research for publication in international, peer-reviewed journals.
  • Engage in the academic community by refereeing, presenting, and discussing new research.

Who we are looking for

We are looking for a specific kind of researcher. This role is for someone who loves to think, reflect, and then produce. We value deep, critical thinking and the ability to build new ideas independently, not just the ability to execute memorized code.

You are the right fit if you:

  • Are a true problem-solver with a high degree of curiosity and adaptability.
  • Are passionate about creating the future of AI.
  • Have a proven ability to transform abstract concepts into concrete, published research.
  • Are honest, self-aware of your limitations, and capable of managing a full research workload.

Required Qualifications:

  • A strong track record in research, evidenced by peer-reviewed publications.
  • Proficiency in Python.
  • Knowledge of basic Machine Learning (ML) and Deep Learning (DL) algorithms.

Preferred Qualifications

  • A research background in Mathematics, Physics, Chemistry, or Biology is highly preferred over a background in Computer Science or AI research.
  • Strong knowledge of causal reasoning, do-calculus, and related simplification algorithms.
  • Experience with backend coding.

A Note on Causality Experience

While candidates with knowledge of causal reasoning are preferred, we strongly encourage you to apply even if you have no prior experience in the field. We are looking for exceptional researchers who are eager to learn, and we are committed to providing the necessary training.

Send us your CV & the solutions to the exercises at this

link

Our email address:

team@allos.ai .

Service

AI Platform

Regulatory & Quality

About us

Jobs

© 2026 Allos. All rights reserved.

Privacy Policy

Back

Hybrid/in-person

Full time

Barcelona, Spain

Causality Research Scientist

About Allos

Allos is a Causal-AI Pharmaceutical company at the forefront of the next generation of artificial intelligence. We are expanding our research team and are looking for an enthusiastic, curious, and adaptable individual to join us in this highly dynamic environment.

The Role

As a Causality Research Scientist, your primary focus will be on fundamental research and its application to complex real-world problems. You will be responsible for developing new ideas, improving foundational methods, and conducting comprehensive data analysis using causal methods. Your work will directly impact observational-longitudinal studies in medicine and chemistry, and you will collaborate closely with field experts.

Key Responsibilities:

  • Develop and improve new foundational methods in causal inference.
  • Conduct comprehensive data analysis on observational-longitudinal studies.
  • Collaborate with domain experts to translate abstract scientific ideas into concrete results.
  • Organize and write research for publication in international, peer-reviewed journals.
  • Engage in the academic community by refereeing, presenting, and discussing new research.

Who we are looking for

We are looking for a specific kind of researcher. This role is for someone who loves to think, reflect, and then produce. We value deep, critical thinking and the ability to build new ideas independently, not just the ability to execute memorized code.

You are the right fit if you:

  • Are a true problem-solver with a high degree of curiosity and adaptability.
  • Are passionate about creating the future of AI.
  • Have a proven ability to transform abstract concepts into concrete, published research.
  • Are honest, self-aware of your limitations, and capable of managing a full research workload.

Required Qualifications:

  • A strong track record in research, evidenced by peer-reviewed publications.
  • Proficiency in Python.
  • Knowledge of basic Machine Learning (ML) and Deep Learning (DL) algorithms.

Preferred Qualifications

  • A research background in Mathematics, Physics, Chemistry, or Biology is highly preferred over a background in Computer Science or AI research.
  • Strong knowledge of causal reasoning, do-calculus, and related simplification algorithms.
  • Experience with backend coding.

A Note on Causality Experience

While candidates with knowledge of causal reasoning are preferred, we strongly encourage you to apply even if you have no prior experience in the field. We are looking for exceptional researchers who are eager to learn, and we are committed to providing the necessary training.

Send us your CV & the solutions to the exercises at this

link

Our email address:

team@allos.ai

Сapabilities

AI Platform

Regulatory & Quality

About us

Jobs

© 2026 Allos. All rights reserved.

Privacy Policy

Back

Hybrid/in-person

Full time

Barcelona, Spain

Causality Research Scientist

About Allos

Allos is a Causal-AI Pharmaceutical company at the forefront of the next generation of artificial intelligence. We are expanding our research team and are looking for an enthusiastic, curious, and adaptable individual to join us in this highly dynamic environment.

The Role

As a Causality Research Scientist, your primary focus will be on fundamental research and its application to complex real-world problems. You will be responsible for developing new ideas, improving foundational methods, and conducting comprehensive data analysis using causal methods. Your work will directly impact observational-longitudinal studies in medicine and chemistry, and you will collaborate closely with field experts.

Key Responsibilities:

  • Develop and improve new foundational methods in causal inference.
  • Conduct comprehensive data analysis on observational-longitudinal studies.
  • Collaborate with domain experts to translate abstract scientific ideas into concrete results.
  • Organize and write research for publication in international, peer-reviewed journals.
  • Engage in the academic community by refereeing, presenting, and discussing new research.

Who we are looking for

We are looking for a specific kind of researcher. This role is for someone who loves to think, reflect, and then produce. We value deep, critical thinking and the ability to build new ideas independently, not just the ability to execute memorized code.

You are the right fit if you:

  • Are a true problem-solver with a high degree of curiosity and adaptability.
  • Are passionate about creating the future of AI.
  • Have a proven ability to transform abstract concepts into concrete, published research.
  • Are honest, self-aware of your limitations, and capable of managing a full research workload.

Required Qualifications:

  • A strong track record in research, evidenced by peer-reviewed publications.
  • Proficiency in Python.
  • Knowledge of basic Machine Learning (ML) and Deep Learning (DL) algorithms.

Preferred Qualifications

  • A research background in Mathematics, Physics, Chemistry, or Biology is highly preferred over a background in Computer Science or AI research.
  • Strong knowledge of causal reasoning, do-calculus, and related simplification algorithms.
  • Experience with backend coding.

A Note on Causality Experience

While candidates with knowledge of causal reasoning are preferred, we strongly encourage you to apply even if you have no prior experience in the field. We are looking for exceptional researchers who are eager to learn, and we are committed to providing the necessary training.

Send us your CV & the solutions to the exercises at this

link

Our email address:

team@allos.ai

Сapabilities

AI Platform

Regulatory & Quality

About us

Jobs

© 2026 Allos. All rights reserved.

Privacy Policy

Сapabilities

AI Platform

Regulatory & Quality

About us

Jobs

Get in Touch

Back

Hybrid/in-person

Full time

Barcelona, Spain

Causality Research Scientist

About Allos

Allos is a Causal-AI Pharmaceutical company at the forefront of the next generation of artificial intelligence. We are expanding our research team and are looking for an enthusiastic, curious, and adaptable individual to join us in this highly dynamic environment.

The Role

As a Causality Research Scientist, your primary focus will be on fundamental research and its application to complex real-world problems. You will be responsible for developing new ideas, improving foundational methods, and conducting comprehensive data analysis using causal methods. Your work will directly impact observational-longitudinal studies in medicine and chemistry, and you will collaborate closely with field experts.

Key Responsibilities:

  • Develop and improve new foundational methods in causal inference.
  • Conduct comprehensive data analysis on observational-longitudinal studies.
  • Collaborate with domain experts to translate abstract scientific ideas into concrete results.
  • Organize and write research for publication in international, peer-reviewed journals.
  • Engage in the academic community by refereeing, presenting, and discussing new research.

Who we are looking for

We are looking for a specific kind of researcher. This role is for someone who loves to think, reflect, and then produce. We value deep, critical thinking and the ability to build new ideas independently, not just the ability to execute memorized code.

You are the right fit if you:

  • Are a true problem-solver with a high degree of curiosity and adaptability.
  • Are passionate about creating the future of AI.
  • Have a proven ability to transform abstract concepts into concrete, published research.
  • Are honest, self-aware of your limitations, and capable of managing a full research workload.

Required Qualifications:

  • A strong track record in research, evidenced by peer-reviewed publications.
  • Proficiency in Python.
  • Knowledge of basic Machine Learning (ML) and Deep Learning (DL) algorithms.

Preferred Qualifications

  • A research background in Mathematics, Physics, Chemistry, or Biology is highly preferred over a background in Computer Science or AI research.
  • Strong knowledge of causal reasoning, do-calculus, and related simplification algorithms.
  • Experience with backend coding.

A Note on Causality Experience

While candidates with knowledge of causal reasoning are preferred, we strongly encourage you to apply even if you have no prior experience in the field. We are looking for exceptional researchers who are eager to learn, and we are committed to providing the necessary training.

Send us your CV & the solutions to the exercises at this

link

Our email address:

team@allos.ai

Сapabilities

AI Platform

Regulatory & Quality

About us

Jobs

© 2026 Allos. All rights reserved.

Privacy Policy

Сapabilities

AI Platform

Regulatory & Quality

About us

Jobs

Get in Touch

Back

Hybrid/in-person

Full time

Barcelona, Spain

Causality Research Scientist

About Allos

Allos is a Causal-AI Pharmaceutical company at the forefront of the next generation of artificial intelligence. We are expanding our research team and are looking for an enthusiastic, curious, and adaptable individual to join us in this highly dynamic environment.

The Role

As a Causality Research Scientist, your primary focus will be on fundamental research and its application to complex real-world problems. You will be responsible for developing new ideas, improving foundational methods, and conducting comprehensive data analysis using causal methods. Your work will directly impact observational-longitudinal studies in medicine and chemistry, and you will collaborate closely with field experts.

Key Responsibilities:

  • Develop and improve new foundational methods in causal inference.
  • Conduct comprehensive data analysis on observational-longitudinal studies.
  • Collaborate with domain experts to translate abstract scientific ideas into concrete results.
  • Organize and write research for publication in international, peer-reviewed journals.
  • Engage in the academic community by refereeing, presenting, and discussing new research.

Who we are looking for

We are looking for a specific kind of researcher. This role is for someone who loves to think, reflect, and then produce. We value deep, critical thinking and the ability to build new ideas independently, not just the ability to execute memorized code.

You are the right fit if you:

  • Are a true problem-solver with a high degree of curiosity and adaptability.
  • Are passionate about creating the future of AI.
  • Have a proven ability to transform abstract concepts into concrete, published research.
  • Are honest, self-aware of your limitations, and capable of managing a full research workload.

Required Qualifications:

  • A strong track record in research, evidenced by peer-reviewed publications.
  • Proficiency in Python.
  • Knowledge of basic Machine Learning (ML) and Deep Learning (DL) algorithms.

Preferred Qualifications

  • A research background in Mathematics, Physics, Chemistry, or Biology is highly preferred over a background in Computer Science or AI research.
  • Strong knowledge of causal reasoning, do-calculus, and related simplification algorithms.
  • Experience with backend coding.

A Note on Causality Experience

While candidates with knowledge of causal reasoning are preferred, we strongly encourage you to apply even if you have no prior experience in the field. We are looking for exceptional researchers who are eager to learn, and we are committed to providing the necessary training.

Send us your CV & the solutions to the exercises at this

link

Our email address:

team@allos.ai

Сapabilities

AI Platform

Regulatory & Quality

About us

Jobs

© 2026 Allos. All rights reserved.

Privacy Policy

Сapabilities

AI Platform

Regulatory & Quality

About us

Jobs

Get in Touch