Machine Learning Engineer - Forecasting & Scheduling (San Francisco)
AssembledMachine Learning Engineer - Forecasting & Scheduling at Assembled
About Assembled
Great customer support requires human agents and AI in perfect balance, and Assembled is the only unified platform that orchestrates both at scale. Companies like Canva, Etsy, and Robinhood use Assembled to coordinate their entire support operation in-house agents, BPOs, and AI in a single operating system. With AI agents that resolve cases endtoend, AI copilot for agent assistance, and AIpowered workforce management that optimizes both human and AI capacity, Assembled helps teams deliver faster, better service while making smarter decisions about how to staff and automate. Backed by $70M from NEA, Emergence Capital, and Stripe, we're building the platform that makes AI and human collaboration actually work.
What we build on Forecasting & Scheduling Contactvolume forecasting: data pipelines, statistical/ML models and inference services that predict ticket volumes, agent demand and time to resolution. Queueing simulation: realistic models of synchronous (phone, chat) and asynchronous (email, messaging) queues that forecast wait times, staffing demand considering clearing weekend backlogs while still receiving new tickets. Scheduling tooling: a calendarlike UI that lets managers create and adjust rosters for thousands of agents while respecting preferences, labor laws and SLAs. Agent empowerment: selfservice pages for shift swaps, timeoff requests and overtime management. What youll do with us Lead the architecture and delivery of new ML features endtoend: research prototype production. Drive technical roadmaps, code reviews and design sessions to share your knowledge with the rest of the team. Mentor engineers, unblock thorny problems and act as subjectmatter expert for data science topics. Collaborate with Product and Design to turn unclear customer problems into shippable solutions. What were after 5+ years shipping production timeseries forecasts or similar ML systems. Proficient in a typed backend language (Go, Java, or Rust) and comfortable with Python for research. Experience owning services in AWS or similar cloud. Demonstrated technical leadership: design docs, tradeoff decisions, mentoring, incident ownership. Product mindset: ability to balance model accuracy, latency, cost and user experience. Evenbetter-ifs Prior work on large-scale scheduling or optimization problems (e.g. nurserostering). Exposure to Kubernetes, Terraform or CDK. Frontend empathy; willing to tweak a React component when needed. Our U.S. benefits Generous medical, dental, and vision plans. Paid company holidays, sick time, and unlimited time off. Monthly credits to spend on professional development, general wellness, Assembled customers, and commuting. Paid parental leave. Hybrid work model with catered lunches everyday (MF), snacks, and beverages in our SF & NY offices. 401(k) plan enrollment. Seniority level
MidSenior level
Employment type
Fulltime
Job function
Engineering and Information Technology
Industries
Software Development
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Job Type
- Job Type
- Full Time
- Location
- San Francisco, CA
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