Career oppertunity: Modeling & simulation position at Merrimack Pharmaceuticals
Job Description :
Merrimack is looking for a highly-motivated computational biologist with a
background in PK modeling and a strong interest in Systems Biology to join our
efforts by collaborating in the development of mechanistic biochemical pathway
models and linking them to PK models. Candidates with a strong background in
cancer biology, PK modeling and biochemical pathway modeling are preferred. The
individual will be part of an interdisciplinary group that applies systems
biology to patient enrichment and drug development in oncology.
The successful candidate shows an interest in new technologies, quantitative
biology and in applying mathematical models to cancer research. We are looking
for an individual who is flexible, wants to change the way drug discovery is
traditionally done and has a highly innovative mindset.
Some of the main responsibilities include collaboration in the development of
the company's mathematical models and use of software-engineering techniques to
develop and maintain the quality of models, associated software, and data.
Also, the successful candidate will regularly document work in our electronic
lab notebook system, present the work at regular company meetings, and prepare
graphs, figures, and tables of data for presentation.
Job Requirements :
Successful candidates are likely to have a PhD in chemical or biomedical
engineering, computational biology, biophysics, computer science, or applied
mathematics. A master's degree with appropriate experience might also be
suitable.
The candidate must have tackled medium- to large-scale mathematical models of
biological phenomena (e.g., signaling pathways, transcriptional regulatory
networks, biophysical simulations), and ideally linked these to PK models. We
also require knowledge of numerical solution of ODEs and multi-parameter
optimization. Some familiarity with, and interest in further understanding, the
concepts of molecular biology as applied to transcriptional and
post-translational regulatory networks and their disregulation in cancer will
be required.
Most importantly, successful candidates must be able to engage colleagues in
cross-disciplinary scientific discussion, write about own work, and collaborate
within and across multidisciplinary teams. They will be flexible and
results-oriented. Must be able to quickly formulate and test ideas in a
scripting language (e.g., MATLAB, Python).
Knowledge of statistical distributions and hypothesis testing, machine-learning
algorithms (e.g., PLSR, support-vector machines, decision trees) would be
useful, though not essential.
Some familiarity with software engineering tools (e.g., CVS, Subversion, unit
tests) and parallel/distributed computing environments would be a plus.
If you are interested, please visit:
https://merrimackpharma.tms.hrdepartment.com/cgi-bin/a/highlightjob.cgi?jobid=81&lcid=en-US