Overview
Located in Boston and the surrounding communities, Dana-Farber Cancer Institute is a leader in life changing breakthroughs in cancer research and patient care. We are united in our mission of conquering cancer, HIV/AIDS, and related diseases. We strive to create an inclusive, diverse, and equitable environment where we provide compassionate and comprehensive care to patients of all backgrounds, and design programs to promote public health particularly among high-risk and underserved populations. We conduct groundbreaking research that advances treatment, we educate tomorrow's physician/researchers, and we work with amazing partners, including other Harvard Medical School-affiliated hospitals.
PRIMARY DUTIES AND RESPONSIBILITIES:
The qualified candidate will focus on developing new algorithms, including agentic artificial intelligence approaches, for the clinical integration of integrative molecular profiling and large-scale datasets (e.g. pathology images and clinical notes) to enable new discoveries across multiple patient contexts. A specific focus on advancing algorithm development through emerging deep learning techniques is of strong interest. The candidate will also evaluate and integrate existing tools and databases into high-throughput pipelines, and facilitate the display and the distribution of processed data.
Related projects and responsibilities will include:
Creation of artificial intelligence algorithms that effectively integrate molecular, pathology/image, and clinical data for prediction and biological discovery
Prospective clinical sequencing to guide the care of cancer patients
Studies of coding, non-coding, RNA, and spatial-based drivers of cancer development and treatment response
Studies of patient samples for tumor behavior and clinical outcomes in context of immunotherapy
These projects are collaborative efforts between the Dana-Farber Cancer Institute, the Broad Institute, and multiple other institutions. The goals of this initiative consist of analyzing sequencing data to determine the effects of genomic alterations and expression changes on clinical behavior, both retrospectively and prospectively. These new data could help identify novel approaches for personalized care in oncology. In addition, this data may provide support for new methods in clinical decision-making, biomarkers for rational drug development, and new insights into tumor biology through innovative analyses.
The person hired for this position will join the team in this effort, and will participate in the design and implementation of algorithms to analyze the data and integrate with other data sets including clinical outcomes data. This person will also help with the generation of tools needed for manipulating and preparing data for display; transferring data to external collaborators and data repositories; and will also help maintain, support, and document shared tools, code base, and data sets. As the software infrastructure evolves, this position is likely to present diverse and flexible opportunities - from deeper and more complex software design problems, to becoming more involved in the bioinformatic and analytic aspects of predictive modeling.
MINIMUM JOB QUALIFICATIONS:
A Ph.D. in bioinformatics, genetics, statistics, mathematical, physical, or computer science, or comparable research experience, along with significant experience in machine learning, computer programming, computational biological applications.
A strong background in statistics and biology. Experience managing and curating large datasets and with machine learning techniques desired.
Excellent oral and written communication skills and the ability to perform both self-directed and guided research are required.
Must demonstrate outstanding personal initiative and the ability to work effectively as part of a team.
Ability to meet deadlines and efficiently multitask is a must.
Ability to effectively collaborate across a range of individuals with different comfort toward computational biology, including oral and written communication skills.
Ability to seek out mentorship and assistance as needed, while also being a mentor to other members of the community.
KNOWLEDGE, SKILLS, AND ABILITIES REQUIRED:
Background in machine learning
Background in cancer biology
Experience with R and/or Python
Experience with cloud computing
Willingness to learn new languages and tools as the field grows
ADDITIONAL JOB DETAILS:
This position will involve co-mentoring of students joining the group as described above, with opportunities for growth in developing multi-disciplinary teams that are project oriented.
At Dana-Farber Cancer Institute, we work every day to create an innovative, caring, and inclusive environment where every patient, family, and staff member feels they belong. As relentless as we are in our mission to reduce the burden of cancer for all, we are committed to having faculty and staff who offer multifaceted experiences. Cancer knows no boundaries and when it comes to hiring the most dedicated and compassionate professionals, neither do we. If working in this kind of organization inspires you, we encourage you to apply.
Dana-Farber Cancer Institute is an equal opportunity employer and affirms the right of every qualified applicant to receive consideration for employment without regard to race, color, religion, sex, gender identity or expression, national origin, sexual orientation, genetic information, disability, age, ancestry, military service, protected veteran status, or other characteristics protected by law.
Pay Transparency Statement
The hiring range is based on market pay structures, with individual salaries determined by factors such as business needs, market conditions, internal equity, and based on the candidate’s relevant experience, skills and qualifications.
For union positions, the pay range is determined by the Collective Bargaining Agreement (CBA).
$72,000.00 - $76,385.00