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Rdkit Python Jobs (NOW HIRING)

Hands-on experience with Python and Bash scripting for automating workflows and data analysis * Familiarity with cheminformatics toolkits such as RDKit for molecular property prediction and data ...

Proficiency in cheminformatics toolkits (RDKit, OpenEye, or equivalent) and/or commercial CADD platforms (Schrödinger, MOE) * Strong programming skills in Python, with experience in scientific ...

Integrate LLM reasoning with domain tools (RDKit, molecular graph ML, ELN/LIMS APIs, instrument ... Proficiency in Python and deep experience with ML/Deep Learning frameworks (e.g., PyTorch ...

Hands-on experience with Python and Bash scripting for automating workflows and data analysis * Familiarity with cheminformatics toolkits such as RDKit for molecular property prediction and data ...

Integrate LLM reasoning with domain tools (RDKit, molecular graph ML, ELN/LIMS APIs, instrument ... Proficiency in Python and deep experience with ML/Deep Learning frameworks (e.g., PyTorch ...

... Python, R, C/C++) with a proven ability to design and automate scalable computational workflows. Strong expertise in cheminformatics toolkits such as RDKit * Comprehensive knowledge of the DMTA cycle ...

Hands-on experience with Python and Bash scripting for automating workflows and data analysis * Familiarity with cheminformatics toolkits such as RDKit for molecular property prediction and data ...

Integrate LLM reasoning with domain tools (RDKit, molecular graph ML, ELN/LIMS APIs, instrument ... Proficiency in Python and deep experience with ML/Deep Learning frameworks (e.g., PyTorch ...

Integrate LLM reasoning with domain tools (RDKit, molecular graph ML, ELN/LIMS APIs, instrument ... Proficiency in Python and deep experience with ML/Deep Learning frameworks (e.g., PyTorch ...

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Rdkit Python information

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How much do rdkit python jobs pay per hour?

As of Jun 14, 2026, the average hourly pay for rdkit python in the United States is $58.62, according to ZipRecruiter salary data. Most workers in this role earn between $48.32 and $66.59 per hour, depending on experience, location, and employer.

What is the difference between Rdkit Python vs Chemoinformatics Software Developer?

AspectRdkit PythonChemoinformatics Software Developer
Required CredentialsPython programming, cheminformatics knowledge, basic chemistry backgroundComputer science or chemistry degree, programming skills, cheminformatics understanding
Work EnvironmentResearch labs, biotech, pharmaceutical companies, open-source projectsSoftware development teams, biotech firms, research institutions
Industry UsageData analysis, molecule modeling, property predictionDeveloping cheminformatics tools, software solutions, data management

Rdkit Python is primarily a cheminformatics library used for molecule analysis and modeling, while a Chemoinformatics Software Developer designs and builds software tools for chemical data management. Both roles require programming skills and chemistry knowledge but differ in focus: one is a specialized library, the other a software development position within the industry.

What is an RDKit Python developer?

An RDKit Python developer is a programmer who specializes in using the RDKit library with the Python programming language to perform cheminformatics tasks. RDKit is an open-source toolkit that enables the analysis and manipulation of chemical structures, including tasks such as molecule visualization, substructure searching, and property calculation. Developers in this role often work in pharmaceutical, biotech, or research organizations to build software solutions for drug discovery, chemical informatics, or molecular modeling. They typically have experience with Python programming, chemistry concepts, and data analysis.

What are the key skills and qualifications needed to thrive as an RDKit Python Developer, and why are they important?

To thrive as an RDKit Python Developer, a strong background in chemistry or cheminformatics, proficiency in Python programming, and familiarity with molecular modeling concepts are essential. Experience with RDKit, chemical informatics libraries, and related tools like Jupyter Notebooks or data analysis frameworks is typically required. Strong problem-solving, attention to detail, and effective communication skills help in collaborating with scientific teams and interpreting complex data. These skills are crucial for developing robust cheminformatics solutions, ensuring accurate data analysis, and advancing research or drug discovery projects.

What are the typical daily tasks for a professional using RDKit with Python in a cheminformatics role?

Professionals working with RDKit and Python in cheminformatics typically spend their days developing and optimizing workflows for molecular data analysis, such as calculating molecular descriptors, generating fingerprints, and performing substructure searches. They often collaborate with chemists and data scientists to preprocess chemical datasets, visualize molecular structures, and integrate RDKit functionality into larger pipelines for drug discovery or materials science projects. Additionally, maintaining and updating scripts, ensuring data quality, and troubleshooting code are important aspects of the role. Regular communication with cross-functional teams helps align computational efforts with research or business objectives.
Infographic showing various Rdkit Python job openings in the United States as of June 2026, with employment types broken down into 67% Full Time, and 33% Contract. Highlights an 100% Remote job distribution, with an average salary of $121,932 per year, or $58.6 per hour.

Computational Theoretical Chemist III

1910

Boston, MA • On-site

Other

Posted 19 days ago


Job description

Computation is revolutionizing drug discovery. Advances in big chemical data, massive computing power, artificial intelligence, and molecular dynamics simulation are changing the way we develop new drugs. At 1910 , we put computation at the heart of drug discovery, blending expertise in computational chemistry, structural biology, pharmacology, data science, and software engineering to develop drugs for previously undruggable targets. 

Role description  

  • Own computational chemistry programs across therapeutic modalities, disease targets, and indications 
  • Ensure effective collaboration with the Biology and Medicinal Chemistry teams by providing key computational chemistry insights to aid in the Hit-to-Lead and Lead Optimization phases of drug discovery operations  
  • Ensure effective collaboration with the ML Engineering and AI Research team by providing key computational chemistry insights to aid in the development of AI/ML models for drug discovery as well as the incorporation of those models into drug discovery operations 
  • Teach key computational chemistry principles to your cross-disciplinary colleagues from Medicinal Chemistry, AI Research, Machine Learning Engineering, Cell Biology, and Pharmacology 
  • Manage day-to-day operations of the Computational Theoretical Chemistry Team, mentor junior staff, and represent the team in senior leadership meetings 
  • Partner to improve 1910's existing process for progressing from computational hit to experimental hit to lead to drug candidate 
  • Co-author provisional patents and peer-reviewed research papers 
  • Progress a virtual hit to a biochemical/cellular hit 
  • Validate a cellular hit in a clinically relevant animal model of disease 
  • Update provisional patents with the animal model data 
  • Nominate a lead candidate for progression into IND-enabling studies 
  • Attend and present research at conferences and events related to computational modeling in drug discovery 

Qualifications  

  • Ph.D. in computational chemistry or related discipline 
  • 3+ years of relevant industry experience within drug discovery or biotechnology 
  • Played a key role in advancing a drug discovery program from early research phases to clinical development. 
  • In-depth knowledge and hands-on experience with quantum chemical (QC) methods, including semi-empirical and density functional theory (DFT) approaches, molecular dynamics (MD) simulations, including both standard MD and enhanced sampling techniques such as metadynamics, umbrella sampling, and replica exchange MD, free energy simulations such as FEP and TI, and QM/MM methodologies for small and large molecular systems 
  • Strong understanding of key concepts, including potential energy surfaces (PES), intermolecular and intramolecular forces/interactions, force fields, molecular properties, thermodynamic properties, solvation models (implicit/explicit), and conformational sampling 
  • Proficiency in analyzing molecular properties such as solvation free energy, dipole moments, vibrational frequencies, electrostatic potential, charge distribution, and more. 
  • Deep knowledge of implicit and explicit solvent models, with extensive experience modeling solvent effects on molecular systems and chemical reactions in various environments 
  • Extensive experience in using and troubleshooting software tools for QC calculations (e.g., ORCA, xTB, CREST, etc.), MD simulations (e.g., GROMACS, OpenMM, etc.), Drug Design Development Packages (e.g., EG, Schrodinger, MOE, CRESSET) 
  • Experience working with HPC Clusters and cloud-based services like (e.g., Microsoft AZURE, AWS) 
  • Ability to optimize computational simulation protocols for efficient resource usage 
  • Proven experience working with small organic molecules and large biomolecular systems (e.g., peptides, proteins, etc.) for property prediction, conformational analysis, and structure-activity relationships (SAR) 
  • Hands-on experience with Python and Bash scripting for automating workflows and data analysis 
  • Familiarity with cheminformatics toolkits such as RDKit for molecular property prediction and data management 
  • Basic knowledge of machine learning (ML) techniques applied to molecular property prediction, virtual screening, and related tasks 
  • Strong desire to collaborate with AI scientists, data scientists, medicinal chemists, and biologists to interpret computational results and guide experimental design 
  • Clear and effective communication of complex scientific ideas through reports, presentations, and publications 

Nice to Haves 

  • Publications in computational chemistry related to drug discovery 

 #LI-Onsite