Senior Scientist, Data Assimilation for Observing Systems

Posted Yesterday
2 Locations
In-Office or Remote
130K-180K Annually
Senior level
Greentech • Social Impact
Equipping the world with the data and tools needed to make informed decisions about SRM, fast enough to matter.
The Role
Lead development of inverse modeling and data-assimilation methods to improve aerosol microphysical models, run OSSEs and data-denial experiments, define minimum instrument suites and sampling strategies for field campaigns, build data pipelines for rapid QC and model updating, and communicate results to scientists, funders, and policymakers.
Summary Generated by Built In
Sunlight reflection may be the only available option, alongside dramatic emissions reductions, adaptation, and rapid scaling of carbon removal, to rapidly limit many climate impacts over the coming decades.  But we don’t know nearly enough about it to make a scientifically-informed decision about potential deployment – and we’re not on a trajectory for rapid, legitimate decision making.

Reflective is a global, non-profit research organization aiming to radically accelerate the pace of sunlight reflection research. We equip the world with the data and tools needed to make informed decisions about sunlight reflection, fast enough to matter.

What you'll do

As Reflective’s Senior Scientist, Data Assimilation for Observing Systems, you will lead our work to determine what observations are needed to improve aerosol microphysical models and design decision-relevant outdoor experiments.

This role sits at the intersection of atmospheric observations, aerosol microphysics, inverse modeling, data assimilation, and field campaign design. You’ll develop methods to use existing high-quality observational datasets — including SABRE, AToM, and other relevant missions — to improve microphysical model parameterizations. You’ll then use those methods to determine which observations matter most, what minimum instrument suite is needed for an outdoor experiment, and how many experimental iterations may be required to meaningfully constrain model uncertainty. Your work will be fundamental to field experiment design, and you will have primary responsibility for data analysis and model optimization after an experiment has been conducted.

Responsibilities

  • Develop an inverse modeling framework to use SABRE, AToM, and other relevant in situ observational datasets to improve existing aerosol microphysical models, potentially including adjoint-based approaches.
  • Design and run data denial experiments to determine which observations are most important for constraining microphysical parameters to help define a minimum viable instrument suite for a future outdoor field experiment.
  • Develop formal Observing System Simulation Experiments (OSSEs) that simulate observations of an aerosol plume under different potential instrument suites, sampling strategies, and cadences to quantify the marginal value of different measurement strategies.
  • Repeat OSSE analyses across a range of plume conditions, atmospheric states, and experimental configurations, and translate OSSE results into practical field campaign recommendations: where to sample, how often, at what altitude, with which instruments, and with what acceptable error bounds.
  • Build data pipelines and processing workflows for future field experiment data, ensuring that data can be rapidly quality-controlled, analyzed, and used to update model parameterizations.
  • Work closely with Reflective’s science, engineering, and data teams to translate model uncertainty into concrete observational requirements.
  • Write scientific papers, concise memos, technical documentation, and public-facing summaries that make what has been learned, what remains uncertain, and how the results should inform experiment design  clear to funders, policymakers, researchers, and the wider field.

Who you are

Minimum qualifications

  • PhD in atmospheric science, aerosol science, applied math, engineering, Earth system science, or a related field.
  • Significant experience working with atmospheric observational datasets, especially in situ data from aircraft, field campaigns, or comparable observing systems.
  • Experience with inverse modeling, data assimilation, optimization, uncertainty quantification, or a closely related quantitative method.
  • Strong scientific programming skills, especially in Python, and experience working with large, complex environmental datasets.
  • Strong quantitative judgment, including the ability to reason about nonlinear systems, over-constrained inference problems, parameter identifiability, and model structural uncertainty.
  • Ability to design rigorous numerical experiments that connect technical modeling choices to real-world observing requirements.
  • Excellent written and verbal communication skills, especially with mixed scientific, engineering, and non-technical audiences.
  • You’re creative and attached to outcomes, not process — you’re constantly looking for new paths to the destination and excited to switch gears if there’s a faster, better way to get something done.
  • You are low ego, and have a proven track record for working well across disciplines and with external partners.
  • You are passionate about Reflective’s mission.

Strongly preferred

  • Experience with adjoint methods, variational data assimilation, gradient-based optimization, or other approaches for high-dimensional parameter estimation.
  • Familiarity with datasets from SABRE, AToM, or similar atmospheric chemistry / aerosol missions.
  • Experience designing or running OSSEs, OSEs, data denial experiments, or observing network optimization studies.
  • Experience with JAX or with building adjoints with automatic differentiation

Not needed

  • Prior work on sunlight reflection. We care more about the underlying technical skillset, scientific judgment, and ability to learn quickly.
  • A nonprofit résumé. Reflective is technically a nonprofit, but it doesn't feel like one — mission fit and rigor matter more than sector pedigree.
  • Direct experience with every part of the workflow. We do not expect one person to have done this exact problem before; in fact, we know the full version of this problem has not yet been solved.
  • Experience with every relevant observational dataset, instrument, or model. We need someone who can learn quickly, build the right framework, and work well with domain experts.

Location 

Our goal is to hire the right person for the role regardless of location, but we have a slight preference for candidates who can work from our Bay Area office 2-3 days/week. However, the role can be fully remote and we are open to candidates based anywhere in the world who can overlap with our core working hours (9am-1pm PST). We may be able to sponsor visas for US-based foreign nationals and have a moving stipend to support candidates who would like to relocate to the Bay Area. 

Regardless of location, we love seeing each other in person and believe regular co-location helps improve collaboration and team culture. As such, we plan regular team co-working weeks, typically in the Bay Area.
Compensation and Benefits

We are committed to providing competitive compensation and comprehensive benefits to our employees. We offer fixed salary levels based on experience and role to minimize biases in compensation and to ensure team members are paid the same for doing the same work.

We expect this position to be a regular, full-time position, with an annual salary between $130,000 and $180,000 USD, depending on level of experience. In addition to salary, we offer a comprehensive set of benefits to all full-time employees:

  • Medical, dental, vision insurance    
  • 401(k)
  • Professional and personal development
  • Generous paid time off and sick leave, including 12 weeks paid parental leave
  • Flexible working hours  

How to Apply & Interview Process

We encourage anyone who is interested in this role to apply, regardless of whether you feel you meet 100% of the qualifications. The top candidates will bring their own unique perspectives, experiences, and backgrounds from a variety of industries along with many but not necessarily all the skills listed above. We offer professional learning and training opportunities to help you develop skills you may not have had the opportunity to cultivate yet.   

We are accepting applications between now and August 9th at midnight PST. Our interview process includes the following: 

  • First round interview (30-45 min)
  • Take home assessment (max 2 hours)
  • Panel interview (1-1.5 hr)
  • Final round interview (30-45 min)

We are hoping to make an offer by by mid-September or sooner, with a target start date of mid-October. We will kickoff the above interview process once all applications have been received and reviewed. 

Diversity

At Reflective, recruiting, hiring, mentoring, and retaining a diverse workforce is critical to our success.  All qualified applicants will receive consideration for employment without regard to race, color, religion, sex, sexual orientation, gender identity, national origin, disability, or status as a protected veteran. 

Reflective is an equal opportunity employer. We celebrate diversity and are committed to creating an inclusive environment for all employees.



Skills Required

  • PhD in atmospheric science, aerosol science, applied math, engineering, Earth system science, or related field.
  • Significant experience working with atmospheric observational datasets, especially in situ data from aircraft, field campaigns, or comparable observing systems.
  • Experience with inverse modeling, data assimilation, optimization, uncertainty quantification, or closely related quantitative methods.
  • Strong scientific programming skills, especially in Python, and experience working with large, complex environmental datasets.
  • Strong quantitative judgment about nonlinear systems, identifiability, and model structural uncertainty.
  • Ability to design rigorous numerical experiments connecting modeling choices to observing requirements.
  • Excellent written and verbal communication skills for mixed scientific, engineering, and non-technical audiences.
  • Creative, outcome-focused, collaborative, low-ego team player.
  • Passion for Reflective's mission.
  • Experience with adjoint methods, variational data assimilation, or gradient-based optimization for high-dimensional parameter estimation.
  • Familiarity with datasets from SABRE, AToM, or similar atmospheric chemistry / aerosol missions.
  • Experience designing or running OSSEs, OSEs, data denial experiments, or observing network optimization studies.
  • Experience with JAX or building adjoints with automatic differentiation.
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The Company
8 Employees
Year Founded: 2023

What We Do

Sunlight reflection may be the only available option, alongside dramatic emissions reductions, adaptation, and rapid scaling of carbon removal, to rapidly limit many climate impacts over the coming decades. But we don’t know nearly enough about it to make a scientifically-informed decision about potential deployment – and we’re not on a trajectory for rapid, legitimate decision making. Reflective is a philanthropically-funded initiative to develop the necessary knowledge base and do the requisite technology research and development, urgently and responsibly.

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