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HomeCompaniesAfreshStaff Software Engineer, ML Platform

Staff Software Engineer, ML Platform

Afresh · Remote - Ontario, Canada · Remote · Deleted · Greenhouse

Job facts

FieldValue
CompanyAfresh
TitleStaff Software Engineer, ML Platform
Normalized title-
Department / teamEngineering
LocationON, Canada
Work modelRemote / Remote
Employment type-
Salary-
Statusdeleted
ATS providerGreenhouse
Posted / first seen2026-03-27 / 2026-05-29
Changed / last seen2026-06-14 / 2026-06-12

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PageWhat it containsOpen
Company jobsActive postings from Afresh.Open
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ATS provider jobsActive postings observed through Greenhouse.Open
Provider filtered searchThe same provider as a filtered job collection.Open
Department jobsActive postings in Engineering.Open
Work model jobsActive Remote postings.Open
Lifecycle eventsOpen, update, close, and reopen events for this posting.Open
Original postingCanonical source or apply URL captured from the ATS.Open

Linked records

CompanyAfresh
Source41e9c3ee-2fe3-4e8f-b243-1f1eeb388b8d
ATS providerGreenhouse

Description

Afresh, the AI platform for grocery, began by tackling the most complex problem in the industry: fresh, and has evolved into the core AI platform for grocers. By leveraging proprietary AI designed for high-volatility environments, we empower partners like Albertsons, Meijer, and Wakefern to drive smarter decisions across their entire enterprise. Following record-breaking 70% revenue growth in 2025, we have scaled to 6 enterprise-grade solutions, with solutions live in over 10% of the U.S. grocery market. Our platform now orchestrates billions of decisions from the store floor to the distribution center and prevented over 200 million pounds of food waste last year alone. If you're looking for a role where your work directly translates into massive scale and social good, and you want to be part of the team that defines how the world eats, there is no better time to join us. The ML Platform Engineering team at Afresh is responsible for building and maintaining the foundational infrastructure and tooling that powers all of our machine learning and applied science solutions. We provide the shared components and services that enable our teams to develop, deploy, and scale robust ML models. This includes a performant data API, configurable featurization, reliable forecasting systems, highly parallel optimization engines, and scalable training pipelines, and deep experimentation capabilities. As our product suite and customer base grow, so does the scale and complexity of what our platform needs to support, gracefully accommodating predictions and simulations across various time scales (hours, days, weeks), complex data hierarchies (pallets on a truck, shelves of mangos in a store, chunks of fruit in a bowl), and endless configuration possibilities (average shelf fullness, backroom loads, truck capacities). About the Role As a Staff ML Platform Engineer on the ML Platform Engineering team, you will be instrumental in elevating our core ML platform to its next level of performance, reliability, and scalability. You'll work on the critical infrastructure that directly enables all of Afresh's Machine Learning and Applied Science teams to innovate faster and deliver impact. Your contributions will empower our product suite, including our flagship Prediction Engine, to power replenishment decisions on more than 15% of all produce sold in the United States. What You'll Do: In your first 3 months , you'll partner with ML, Applied Science, and engineering leadership to identify the highest-leverage gaps in our ML platform and shape a multi-quarter technical strategy to close them. By the end of your first 6 months , you will have driven a platform-level initiative that meaningfully changes what's possible at Afresh — establishing the architecture for real-time inference across the company, redesigning model configuration and deployment end-to-end, or rebuilding our distributed inference layer for an order-of-magnitude growth in scale — while raising the bar across the ML org through design reviews and mentorship of other senior engineers. Skills and Experience BS in Computer Science or a relevant technical field. 7+ years of professional software development experience with a proven track record of shipping high-quality applications and services. Experience working collaboratively with machine learning engineers, data scientists, or applied scientists on large-scale software projects involving machine learning models. You possess a genuine curiosity about ML modeling (e.g., demand forecasting, state estimation, ordering policy). You aren't just building "pipes"; you want to understand what is flowing through them. You have a deep understanding of how scientists work and build tools that bridge the gap between a research notebook and production-grade software. Technical leadership experience and a demonstrated ability to mentor junior engineers. Deep expertise in library design, API design, data structures, and algorithms. Strong familiarity with the Python ecosystem ( NumPy, Pandas, Torch, PySpark ). While our stack is Python-heavy, we value engineers who are stack-agnostic and focus on solving fundamental distributed systems problems. Proven ability to architect high-throughput distributed inference systems using Spark, Dask, or Ray . Experience in engineering robust data architectures with a focus on schema evolution and performance tuning. Experience with end-to-end orchestration (lineage tracking, resource scheduling, self-healing pipelines). Tech Stack: Our backend is pure Python (NumPy, Pandas, Torch, PySpark, Cython, orchestrated in Airflow). We use Databricks as our data warehouse. While we'd like you to have very good familiarity with Python, many of our problems are stack-agnostic. This position is not eligible for company sponsorship. Salary Band in Canada (CAD): $148,000 - $242,000 Why You’ll Love Working at Afresh At Afresh, our mission to eliminate food waste starts with investing in our people. We provide a comprehensive support system designed to help you do your best work while maintaining a healthy, balanced life. Comprehensive Health & Wellness: Comprehensive medical, dental, and vision coverage for you and your family, with the majority of premiums covered by Afresh. We also provide dedicated mental health support and counseling services. Invested in Your Future: Competitive base salary, meaningful equity (U.S. employees), and a 401(k) program with a generous company match. Flexible & Modern Workspace: Whether you work from home or a local office, we support your setup with a home office stipend and "Coworking Wallets" for flexible workspace access. Growth-Obsessed Culture: We believe in continuous learning. Every employee receives an annual professional development budget to master new skills and grow their career at Afresh. Holistic Monthly Stipends: Beyond your paycheck, we provide monthly stipends for "Betterment" (wellness/lifestyle) and telecommunications to ensure you have what you need to thrive. Time to Recharge: Flexible paid time off to take the time you need to recharge. * Full-time U.S. employees are eligible for these benefits About Afresh Founded in 2017, Afresh is using AI to tackle the #1 solution to curb climate change: reducing food waste. By building AI specifically for the intricacies of grocery—from the fresh perimeter to the center store—we help grocers minimize waste and maximize sales. Afresh sits at an incredible intersection of positive social impact, rocket ship financial growth, and cutting-edge technology. Our best-in-class AI research has been published in top journals, including ICML, and our investors include Al Gore’s Just Climate, former Whole Foods Market CEO Walter Robb, and Eric Schmidt's Innovation Endeavors. Grocery is the past, present, and future of our food system – the waste we create today will impact our planet for years to come. Join us as we continue to build a vibrant, diverse, and inclusive team that embodies our company’s values of proactivity, kindness, candor, and humility. Afresh provides equal employment opportunities (EEO) to all employees and applicants for employment without regard to race, color, religion, sex, national origin, age, disability, genetics, sexual orientation, gender identity/expression, marital status, pregnancy or related condition, or any other basis protected by law. Here at Afresh, many of our employees work remotely provided that they reside in one of the following states: AL, AR, CA, CO, FL, GA, IL, KY, MA, MI, MT, MO, NV, NJ, NY, NC, OR, PA, TX, WA, UT, VA, WI .

Full job record

Job ID5a8db7330f803ba91e26943fb89121797d2e836b
Org IDc16bbb38-e09f-4cdc-a005-4f0c1730814a
Source ID41e9c3ee-2fe3-4e8f-b243-1f1eeb388b8d
Board ID41e9c3ee-2fe3-4e8f-b243-1f1eeb388b8d
Providergreenhouse
Provider Job Key5839931004
TitleStaff Software Engineer, ML Platform
Normalized Title
Statusdeleted
Activeno
Location TextRemote - Ontario, Canada
DepartmentEngineering
Team
Employment Type
Workplace Typeremote
Remote Policyremote
CountryCanada
RegionON
City
Salary Raw
Salary Min
Salary Max
Salary Currency
Salary Period
Source URLhttps://job-boards.greenhouse.io/afresh/jobs/5839931004
Apply URLhttps://job-boards.greenhouse.io/afresh/jobs/5839931004
First Seen At2026-05-29 22:40:25Z
Last Seen At2026-06-12 07:33:08Z
Last Checked At2026-06-14 07:33:11Z
Last Changed At2026-06-14 07:33:11Z
Inactive At2026-06-14 07:33:11Z
Source Posted At2026-03-27 20:56:36Z
Source Updated At2026-05-01 18:08:12Z
Raw Payload Uris3://job-postings-prod-raw-590183727216/raw/provider=greenhouse/board=afresh/date=2026-06-12/2026-06-12T07-33-08-497Z-83993afd99efb5f765ac5e948ef119834bb1f3bb9f6a9857e4b3766cfe283546.json
Event Fields
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}
Parsed Structured
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}
Extensions
{}
Native Structured
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