Machine Learning Scientist
Wave Mobile Money
- London, England, United Kingdom
- London, England, United Kingdom
About
Our Mission In 2017, over half the population in Sub‑Saharan Africa had no bank account. Fees were too high, the nearest branch was miles away, and cards weren’t accepted. This forced people to keep savings under the mattress, rely on costly lenders, and spend hours standing in line to pay school fees. We solve this by building financial services that just work: no account fees, instantly available, and accepted everywhere. Even where electricity, water, and roads are unreliable, our app helps users send money, deposit, withdraw, and make business payments. Today we serve millions of users across nine countries and continue to grow.
How You'll Help Us Achieve It
Architect and ship autonomous voice and digital agents that power 10M+ customer interactions per month across West Africa.
Own end‑to‑end agent systems from core models through multi‑channel orchestration, designing solutions that work reliably where connectivity is poor, literacy can be low, and most languages lack training data.
Drive real ownership, from problem discovery to running in production, working alongside product and engineering leaders who prioritize shipping real customer impact.
Shape the future by solving genuinely hard technical problems where systems either work or they fail.
Our Stack (prior experience is a strong plus, but not required)
Backend: Python 3 (+ mypy)
API layer: GraphQL
Android frontend: Kotlin/Jetpack
iOS frontend: Swift/SwiftUI
Web frontend: TypeScript/React
Database: Postgres/CockroachDB
Infrastructure: GCP/Terraform
Orchestration: Kubernetes
Key Details
This is a fully remote role. Candidates must be based in one of our talent hub countries (UK, Spain, Kenya, Ghana) or in one of our operating markets in Africa including Senegal, Côte d’Ivoire, or Burkina Faso.
Wave provides a yearly $1,200 stipend to support coworking meetups with teammates.
Remote team members are expected to travel to our operational markets (e.g. Senegal or Côte d’Ivoire) at least once a year. Exceptions apply, but we’ve found this key to understanding our users and product.
Our salaries are competitive and are calculated using a transparent formula. For this role, depending on your level and location, we offer a salary between $152,100 – $178,200 USD, plus a generous equity package.
Major benefits:
Subsidized health insurance for you and your dependents and retirement contributions (both vary from country to country).
6 months of fully paid parental leave and subsidized fertility assistance.
Flexible vacation, with most folks taking between 21–30 days exclusive of statutory holidays.
$10,000 annual charitable donation matching.
Requirements
5 years of ML experience
Strong proficiency in Python and common ML libraries
Solid theoretical foundation in stats and ML.
Experience working with voice agents
Proven hands‑on experience building with LLMs or NLP systems (prompt engineering, RAG, embeddings, fine‑tuning, etc.).
Experience taking ML models from prototype to production and care deeply about reliability, performance, and scalability.
Fluent in English (bilingual in French is a big bonus!)
You might be a good fit if
Are comfortable navigating ambiguity and designing ML systems end‑to‑end without needing extremely detailed requirements.
Understand the trade‑offs between cutting‑edge research and pragmatic engineering, and can choose the right tool for the job.
Like working with large datasets, complex pipelines, and modern ML infra (distributed training, feature stores, monitoring, etc.).
About engineering at Wave We care about the big picture. We don’t hire engineers to just ship tickets; we hire them to solve problems. That means caring deeply about outcomes, understanding context, and jumping in wherever something’s broken, even if it’s technically “not your area.” When we see problems, inefficiencies, or opportunities to make something better, we act. We dig into operational issues, clarify fuzzy product specs, or step into unfamiliar code to help unblock teammates.
We move as fast as possible. Speed matters. It lets us try things quickly, get feedback early, and course‑correct while it’s cheap. So we write small PRs. We aim for MVPs. We leave TODOs and file follow‑ups. We don’t over‑perfect v1. That said, we’re building a financial product. Some things—like money movement, correctness, or security—deserve more caution.
We like boring technology. We favor tools that are reliable, well‑understood, and easy to debug. This keeps us focused on solving meaningful problems instead of wrestling with unpredictable infrastructure. If a new technology helps us move faster, build safer, or solve a real need, we’ll consider it. But we don’t adopt tools just because they’re new—we adopt them because they’re right.
Simplicity is a strategy. It lets us focus our energy where it matters most: serving our users.
Our team
We have a rapidly growing in‑country team in Senegal, Côte d’Ivoire, Mali, Burkina Faso, The Gambia, Uganda, Niger, Sierra Leone, and Cameroon plus remote team members spread across the world.
We’re deeply passionate about our mission of bringing radically affordable financial services to the people who need them most.
We foster autonomy for our employees. You’ll own your projects at every stage, from understanding the problem to monitoring your solution in production.
We raised the largest Series A in Africa in 2021. Our world‑class investors include Founders Fund, Sequoia Heritage, Stripe, Ribbit Capital, Y Combinator, and Partech Africa.
We are on Y Combinator’s top companies by revenue.
How to apply Fill out the form below, upload a resume in English, and include a cover letter describing your interest in Wave and the role. We review applications frequently and recommend that you apply to the role that most closely aligns with your skills, experience, and career goals. Wave is an equal‑opportunity employer. We celebrate diversity and are committed to creating an inclusive environment for all employees.
#J-18808-Ljbffr
Languages
- English
Notice for Users
This job comes from a TieTalent partner platform. Click "Apply Now" to submit your application directly on their site.