Job Location : New York,NY, USA
We prioritize customer needs first. We work in small, project-based teams. We have flexibility in terms of the problems we work on. We own the full lifecycle of our projects. We avoid silos and encourage taking up tasks in new areas. We balance quality and velocity. We have a shared responsibility for our production code. We each set our own routine to maximize our productivity.
What You Will OwnIn this role, you will be a member of the ML Chapter and work with the Mapper team. Mimica Mapper is one of our main products that creates intuitive flowcharts that map out user and team workflows. Its architecture includes components designed to detect task similarities. As part of Mapper's continuous development, we aim to automate these components to enhance scalability. You will own experiments and the exploration of complex problems that revolve around the task similarity and improving the use of the Mapper.
Part Of Your Day-To-DayDesign and run experiments to improve our ML processing system, using a mix of classic and deep learning techniques.
Write clear technical reports that document experiments and their results.
Write clean, readable, and maintainable Python code, assuring best practices.
Interface with our internal Process Analyst team to discover opportunities on which parts of the product can be automated, find out pain points and explore automation solutions by leveraging ML.
Support productionization (although we have a dedicated MLOps Engineer for that!)
Actively collaborate and engage in technical discussions with the other Engineers, Product Managers in the team and ML Chapter, to drive the development of the product.
Contribute to knowledge sharing and the improvement of our processes.
Strong technical skills in setting up, running, and evaluating experiments using both classic and deep learning-based approaches.
Solid background in tabular data and event data classification.
A researcher mindset, with curiosity and rigour in exploring and solving complex problems.
Ability to effectively mix classic and deep learning methods, with a clear understanding of when to apply each.
Proficiency in supervised and unsupervised learning techniques.
Excellent written communication skills, including the ability to produce clear and concise reports.
Strong Python programming skills, emphasizing clear, readable code; while productionization support may be involved, it is not the primary focus.
A drive to continually develop your skills, improve team processes, and reduce technical debt
Fluency in English, with the ability to effectively communicate abstract ideas, complex concepts, and trade-offs
Graph ML knowledge
Experience designing, building and maintaining data pipelines
Experience working in a high-impact, high-ambiguity startup environment, delivering value quickly and iteratively
Generous compensation + stock options aligned with our internal framework, market data, and individual skills.
Distributed work: Work from anywhere fully remote, in our hubs, or a mix.
Laptop, remote setup stipend, and co-working budget
Flexible schedules and location
Ample paid time off, in addition to local public holidays
Enhanced parental leave
Health and retirement benefits
Annual L&D budget
Annual workaways and regular virtual & in-person socials
Opportunity to contribute to groundbreaking projects that shape the future of work
Note: Some benefits may vary depending on location