Remote, but you must be in the following locations
Job Title: Senior Full-stack Engineer
Work Arrangement: Remote| Must be able to work EST hours
Job Type: Full-time
Salary: Competitive base salary in USD
Industry: PropTech / B2B SaaS / Real Estate Technology
Work Schedule: 40 hours per week
Pearl works with the top 1% of candidates from around the world and connects them with the best startups in the US and EU. Our clients have raised over $5B in aggregate and are backed by companies like OpenAI, a16z, and Founders Fund. They’re looking for the sharpest, hungriest candidates who they can consistently promote and work with over many years. Candidates we’ve hired have been flown out to the US and EU to work with their clients, and even promoted to roles that match folks onshore in the US.
_ Hear why we exist, what we believe in, and who we’re building for:_ Watch here
We’re not just another recruiting firm—we focus on placing candidates with exceptional US and EU founders who prioritize the long-term success of their team members. We also provide retention bonuses at 3, 6, 9, and 12 months, as well as community-driven benefits like an annual retreat.
Our partner company helps the world’s most prominent companies navigate their most important brand, reputation, and product challenges. We specialize in high-impact research with hard-to-reach audiences -- recruiting the exact audiences our clients need, anywhere in the world. Our in-house teams ensure rigorous quality, rapid execution, and clear, strategic insights. Every engagement is custom-built, senior-led, and designed to deliver answers that drive key decisions.
Key Responsibilities
· Train and evaluate ML models using common machine learning frameworks in Python. Examples include TensorFlow, Keras, scikit-learn, or PyTorch.
· Develop and refine NLP pipelines (e.g., tokenization, entity recognition, similarity models).
· Perform fine-tuning and prompt engineering for LLMs (GPT, Claude, etc.).
· Create semantic search and recommendation models using vector embeddings and clustering techniques.
· Conduct experiments, hyperparameter tuning, and performance benchmarking.
· Collaborate with software engineers to integrate models into backend systems.
· Prepare clear documentation, model cards, and evaluation reports.
Required Skills
· Strong proficiency in Python for machine learning and data processing.
· Experience with NLP libraries: spaCy, Hugging Face Transformers, gensim, nltk.
· Comfortable training deep learning models using Keras, TensorFlow, or PyTorch.
· Ability to design and execute ML experiments, evaluate models, and interpret results.
· Familiar with version control (Git), shell scripting, and Linux development environments.
· Basic back end software engineering skills, such as creating and managing endpoints, database services, and task queues.
· Experience with production environments (e.g., batch inference, model packaging)..
Nice to Have
· Experience with MLOps tools (e.g., MLflow, SageMaker, DVC).
· Contributions to Kaggle competitions, AI research, or open-source ML/NLP projects.
· Background in classical ML, unsupervised learning, or semantic modeling.
Working Conditions
· Fully remote, must be able to collaborate during EST hours.
· Work closely with backend/frontend engineers, but not expected to build application UIs.
· Focused environment for pure AI/ML development, research, and delivery.
💡 Why Join Now
Be a foundational member of a venture-scale company with real distribution advantages in real estate.
Own key technical systems from day one, shaping how they evolve.
Culture built on speed, iteration, and execution.
* **Professional Development** : Annual learning budget for books, courses, and conferences
* **Mentorship** : Learn directly from startup veterans (ex-Looker, GitHub, Mulesoft)
* **Impact** : Help shape a growing brand with a voice that influences fintech innovation
* **Inspiring Workspaces** : Offices in Berlin, New York, and London, with travel opportunities
* **Flat Hierarchy** : Work directly with founders and have your ideas heard
* **Flexible Work Setup** : Equipment of your choice, strong home office support
1. Application
2. Screening
3. Top-grading Interview
4. Skills Assessment
5. Client Interview
6. Offer
7. Onboarding
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