Jobs
My ads
My job alerts
Sign in
Find a job Career Tips Companies
Find

Founding machine learning engineer (london)

Surbiton
Jr United Kingdom
Machine learning engineer
Posted: 2 July
Offer description

Social network you want to login/join with:

In order to make an application, simply read through the following job description and make sure to attach relevant documents.
Founding Machine Learning Engineer, London Client: Letly
Location: London, United Kingdom
Job Category: Other
EU work permit required: Yes
Job Views: 4
Posted: 08.05.2025
Expiry Date: 22.06.2025
Job Description: Company
Letly is an AI-Native vertical fintech platform focused on the rental housing market. We are automating rental workflows end-to-end and building a fintech platform to manage the trillions of dollars spent on rent globally.
We recently closed a pre-seed round and are hiring a talented AI/ML engineer with a strong software engineering background and a passion for deploying AI/ML models into real-world, production-grade applications.
Apply if:
You have strong foundational software engineering knowledge, including data structures, algorithms, system design, and OOP.
You have advanced knowledge of LLM architectures and ML/DL frameworks (e.g., TensorFlow, PyTorch, LangChain, Keras, scikit-learn).
You're ready to design, deploy, and maintain production-grade Machine Learning systems.
You're willing to champion best practices in code quality, testing, observability, and MLOps.
You have experience with MLOps tools and practices (CI/CD, Docker, Kubernetes) and cloud platforms (GCP, AWS, or Azure).
You're a smart, intense, and focused individual willing to build things efficiently in a close team.
You want to tackle large technical hurdles and build first-of-its-kind software using AI.
You will:
Write high-quality, maintainable, well-documented, and tested code, adhering to software engineering best practices.
Design, implement, and deploy production-grade AI/ML models to address various platform needs (including NLP and OCR).
Optimize AI models and associated systems for performance, scalability, and cost-effectiveness in a production environment.
Implement and manage the infrastructure for MLOps, including fine-tuning, deployment, monitoring, and versioning.
Develop robust data pipelines for ingestion, cleaning, model training, and continuous deployment.
Build retrieval-aware repositories for model training, evaluation, and real-time, context-rich inference.
Collaborate closely with software engineers to integrate AI models seamlessly into the platform architecture using APIs.
Be a key part of a high-performance, engineering, and product-led company with a high degree of autonomy and impact.
Compensation:
Competitive salary and meaningful equity in the company.
Annual performance-based compensation (cash and equity).
Opportunity for true meritocratic progression in role and compensation.

#J-18808-Ljbffr

Apply
Create E-mail Alert
Job alert activated
Saved
Save
Similar job
Machine learning engineer
London
Permanent
Peregrine
Machine learning engineer
£127,185 a year
Similar job
Machine learning engineer | omics | rna | dna | pytorch | hybrid, london
London
Enigma
Machine learning engineer
Similar job
Machine learning engineer with data engineering expertise
London
JR United Kingdom
Machine learning engineer
See more jobs
Similar jobs
Jr United Kingdom recruitment
Jr United Kingdom jobs in Surbiton
It jobs in Surbiton
jobs Surbiton
jobs Greater London
jobs England
Home > Jobs > It jobs > Machine learning engineer jobs > Machine learning engineer jobs in Surbiton > Founding Machine Learning Engineer (London)

About Jobijoba

  • Career Advice
  • Company Reviews

Search for jobs

  • Jobs by Job Title
  • Jobs by Industry
  • Jobs by Company
  • Jobs by Location
  • Jobs by Keywords

Contact / Partnership

  • Contact
  • Publish your job offers on Jobijoba

Legal notice - Terms of Service - Privacy Policy - Manage my cookies - Accessibility: Not compliant

© 2025 Jobijoba - All Rights Reserved

Apply
Create E-mail Alert
Job alert activated
Saved
Save