

Cube Hub Inc.
Bioinformatics Engineer – In Silico Antibody Design
⭐ - Featured Role | Apply direct with Data Freelance Hub
This role is for a Bioinformatics Engineer specializing in in silico antibody design, located in Santa Monica, CA. The 12-month contract offers $60-$68/hour. Requires a PhD, expertise in antibody datasets, machine learning, and proficiency in Python and R.
🌎 - Country
United States
💱 - Currency
$ USD
-
💰 - Day rate
544
-
🗓️ - Date
December 20, 2025
🕒 - Duration
More than 6 months
-
🏝️ - Location
On-site
-
📄 - Contract
1099 Contractor
-
🔒 - Security
Unknown
-
📍 - Location detailed
Santa Monica, CA 90404
-
🧠 - Skills detailed
#R #Storage #Generative Models #Deep Learning #"ETL (Extract #Transform #Load)" #Neural Networks #Datasets #Programming #ML (Machine Learning) #AI (Artificial Intelligence) #AWS (Amazon Web Services) #Scala #Agile #Libraries #Data Processing #Azure #BI (Business Intelligence) #Cloud #GCP (Google Cloud Platform) #Python #Deployment #Computer Science
Role description
Job Title: Bioinformatics Engineer – In Silico Antibody Design
Location: Santa Monica, CA, 90404
Duration: 12 Months contract-high possible to extend
Shift Details: 1st
Pay Range : $60/h to $68/h
Job Description:We are seeking a Bioinformatics Engineer with specialized expertise in in silico antibody design to lead the development of an AI-first platform, transforming the future of antibody-based drug discovery. This pivotal role requires an innovative and proactive individual with deep experience in bioinformatics, machine learning, and large-scale biological data, particularly in antibody design and optimization. The ideal candidate will be responsible for building scalable AI-driven solutions that accelerate the identification, validation, and development of therapeutic antibodies.
Key Responsibilities:
Develop AI-Driven Antibody Design Ecosystems: Design and build advanced platforms to drive in silico antibody design and optimization, supporting rapid and efficient therapeutic discovery.
Implement Scalable Antibody Prediction Models: Architect machine learning models specifically tailored for antibody sequence and structure predictions, leveraging deep learning to predict binding affinities, structural stability, and therapeutic potential.
Leverage Cloud Platforms for Antibody Data Processing: Utilize modern cloud platforms for large-scale data processing, storage, and computation, ensuring the scalability of antibody design pipelines.
Apply State-of-the-Art AI Techniques for Antibody Discovery: Innovate with cutting-edge AI methods, including diffusion models and neural networks, to refine antibody sequences and explore vast design spaces for novel therapeutic candidates.
Collaborate on Antibody Drug Discovery: Work with cross-functional scientific teams to integrate data from immunology, structural biology, and bioinformatics into actionable insights for antibody discovery and optimization.
Continuously Integrate Emerging Technologies: Stay ahead of AI and bioinformatics advancements, continuously refining and expanding in silico methods for antibody engineering and drug discovery.
Minimum Qualifications:
Educational Background: PhD in Bioinformatics, Computational Biology, Computer Science, or a related field, with demonstrated expertise in antibody design.
Machine Learning Expertise: Solid experience applying AI and machine learning frameworks to biologics, particularly antibody data.
Programming Proficiency: Proficient in Python, R, and experience with bioinformatics libraries (e.g., Biopython, PyMOL), with strong skills in cloud-based deployment of machine learning applications.
Experience with Antibody Datasets: Demonstrated expertise in handling antibody sequence and structural data, and applying machine learning to improve therapeutic properties such as affinity, specificity, and stability.
Preferred Skills:
Data Handling Expertise for Antibody Design: Extensive experience in curating, harmonizing, and preprocessing large-scale antibody datasets, including high-throughput screening data and structural models.
Understanding of Antibody Data Nuances: Deep understanding of antibody sequence-structure relationships, developability challenges, and immunogenicity risks, with an ability to integrate these insights into data workflows.
Advanced AI Methods for Antibody Engineering: Experience with AI-driven techniques such as inverse folding, generative models, and structural docking to guide antibody design and optimization.
Analytical and Strategic Skills: Strong analytical abilities to extract actionable insights from complex antibody datasets, with a focus on developing innovative therapeutic strategies.
Collaboration and Communication: Proven ability to collaborate in agile, interdisciplinary teams and communicate effectively across scientific and technical domains.
Passion for Innovation in Antibody Therapeutics: A passion for driving the next generation of antibody therapeutics through AI, accelerating drug discovery timelines and improving clinical outcomes.
#IND2
JK-R8
Job Type: Contract
Pay: $60.00 - $68.00 per hour
Benefits:
401(k)
Dental insurance
Health insurance
Vision insurance
Application Question(s):
Are you a US Citizen or GCH? If on Visa please mention the Visa Status
Are you ready for background check and drug screen in accordance with the local law and regulations?
Please confirm your email address and contact number?
Cube Hub payroll is "Bi-Weekly, we pay every-other-Friday. Are you Comfortable with Bi-Weekly payroll policy?
What is your Expected Pay Range?
What is a good time to contact you?
Do you have experience managing change control records in a GMP or GxP environment?
Do you have hands-on experience with in silico antibody design (not just general protein modeling)?
Have you worked directly with antibody sequence and structural datasets (e.g., IMGT, PDB, high-throughput screening data)?
Have you applied machine learning or deep learning models specifically to antibody or biologics data?
Have you used bioinformatics or structural tools such as Biopython, PyMOL, or similar libraries?
Have you deployed or scaled ML models on cloud platforms (AWS, GCP, or Azure)?
Have you worked with large-scale biological datasets requiring distributed or scalable pipelines?
Education:
Doctorate (Required)
Ability to Commute:
Santa Monica, CA 90404 (Required)
Work Location: In person
Job Title: Bioinformatics Engineer – In Silico Antibody Design
Location: Santa Monica, CA, 90404
Duration: 12 Months contract-high possible to extend
Shift Details: 1st
Pay Range : $60/h to $68/h
Job Description:We are seeking a Bioinformatics Engineer with specialized expertise in in silico antibody design to lead the development of an AI-first platform, transforming the future of antibody-based drug discovery. This pivotal role requires an innovative and proactive individual with deep experience in bioinformatics, machine learning, and large-scale biological data, particularly in antibody design and optimization. The ideal candidate will be responsible for building scalable AI-driven solutions that accelerate the identification, validation, and development of therapeutic antibodies.
Key Responsibilities:
Develop AI-Driven Antibody Design Ecosystems: Design and build advanced platforms to drive in silico antibody design and optimization, supporting rapid and efficient therapeutic discovery.
Implement Scalable Antibody Prediction Models: Architect machine learning models specifically tailored for antibody sequence and structure predictions, leveraging deep learning to predict binding affinities, structural stability, and therapeutic potential.
Leverage Cloud Platforms for Antibody Data Processing: Utilize modern cloud platforms for large-scale data processing, storage, and computation, ensuring the scalability of antibody design pipelines.
Apply State-of-the-Art AI Techniques for Antibody Discovery: Innovate with cutting-edge AI methods, including diffusion models and neural networks, to refine antibody sequences and explore vast design spaces for novel therapeutic candidates.
Collaborate on Antibody Drug Discovery: Work with cross-functional scientific teams to integrate data from immunology, structural biology, and bioinformatics into actionable insights for antibody discovery and optimization.
Continuously Integrate Emerging Technologies: Stay ahead of AI and bioinformatics advancements, continuously refining and expanding in silico methods for antibody engineering and drug discovery.
Minimum Qualifications:
Educational Background: PhD in Bioinformatics, Computational Biology, Computer Science, or a related field, with demonstrated expertise in antibody design.
Machine Learning Expertise: Solid experience applying AI and machine learning frameworks to biologics, particularly antibody data.
Programming Proficiency: Proficient in Python, R, and experience with bioinformatics libraries (e.g., Biopython, PyMOL), with strong skills in cloud-based deployment of machine learning applications.
Experience with Antibody Datasets: Demonstrated expertise in handling antibody sequence and structural data, and applying machine learning to improve therapeutic properties such as affinity, specificity, and stability.
Preferred Skills:
Data Handling Expertise for Antibody Design: Extensive experience in curating, harmonizing, and preprocessing large-scale antibody datasets, including high-throughput screening data and structural models.
Understanding of Antibody Data Nuances: Deep understanding of antibody sequence-structure relationships, developability challenges, and immunogenicity risks, with an ability to integrate these insights into data workflows.
Advanced AI Methods for Antibody Engineering: Experience with AI-driven techniques such as inverse folding, generative models, and structural docking to guide antibody design and optimization.
Analytical and Strategic Skills: Strong analytical abilities to extract actionable insights from complex antibody datasets, with a focus on developing innovative therapeutic strategies.
Collaboration and Communication: Proven ability to collaborate in agile, interdisciplinary teams and communicate effectively across scientific and technical domains.
Passion for Innovation in Antibody Therapeutics: A passion for driving the next generation of antibody therapeutics through AI, accelerating drug discovery timelines and improving clinical outcomes.
#IND2
JK-R8
Job Type: Contract
Pay: $60.00 - $68.00 per hour
Benefits:
401(k)
Dental insurance
Health insurance
Vision insurance
Application Question(s):
Are you a US Citizen or GCH? If on Visa please mention the Visa Status
Are you ready for background check and drug screen in accordance with the local law and regulations?
Please confirm your email address and contact number?
Cube Hub payroll is "Bi-Weekly, we pay every-other-Friday. Are you Comfortable with Bi-Weekly payroll policy?
What is your Expected Pay Range?
What is a good time to contact you?
Do you have experience managing change control records in a GMP or GxP environment?
Do you have hands-on experience with in silico antibody design (not just general protein modeling)?
Have you worked directly with antibody sequence and structural datasets (e.g., IMGT, PDB, high-throughput screening data)?
Have you applied machine learning or deep learning models specifically to antibody or biologics data?
Have you used bioinformatics or structural tools such as Biopython, PyMOL, or similar libraries?
Have you deployed or scaled ML models on cloud platforms (AWS, GCP, or Azure)?
Have you worked with large-scale biological datasets requiring distributed or scalable pipelines?
Education:
Doctorate (Required)
Ability to Commute:
Santa Monica, CA 90404 (Required)
Work Location: In person






