About Us We're a small but ambitious startup revolutionizing the e-commerce landscape with cutting-edge AI solutions.
Our mission is to empower sellers with the tools and insights they need to thrive in the competitive online marketplace.
We’re building a suite of AI-powered products and intelligent AI agents  designed to streamline advertising, automate research, optimize listings, boost sales, and drive growth for businesses of all sizes.
The Role: Senior Machine Learning Engineer (AI/ML & LLMs – E-Commerce Ads) We’re looking for a Senior Machine Learning Engineer  to join our team and play a key role in developing the intelligence behind our AI-driven e-commerce platform.
In this role, you’ll be responsible for designing, building, training, optimizing, and deploying  machine learning and LLM-based models that power ad targeting , recommendation systems , personalization engines , performance prediction , and autonomous AI agents .
You’ll own end-to-end ML pipelines — from data ingestion  and feature engineering  to model development , evaluation , and deployment  — while also working hands-on with large language models  to build intelligent workflows, tools, and automation.
Responsibilities - ML & AI Model Development: Build, train, evaluate, and optimize ML models for ad performance prediction, personalization, targeting, and campaign optimization.
 - Experiment with classical ML and modern deep learning architectures to maximize performance.
 - LLM Development & Integration: Fine-tune, prompt-engineer, or build applications using large language models (e.g., OpenAI GPT-4, Claude, LLaMA).
 - Build intelligent agent workflows using LLMs for research automation, ad copy generation, optimization strategies, and seller assistance.
 - Integrate LLMs with internal data pipelines and APIs to deliver context-aware insights.
 - Data Pipelines & Feature Engineering: Design and implement scalable data pipelines for training and inference.
 - Process structured and unstructured e-commerce ad data for ML and LLM applications.
 - Model Deployment & Infrastructure: Deploy ML and LLM models to production using containerization, inference APIs, or orchestration frameworks.
 - Collaborate with backend teams to ensure seamless interaction between AI systems and product interfaces.
 - Experimentation & Evaluation: Design and run experiments (e.g., A/B testing) to evaluate and iterate on models.
 - Monitor model performance post-deployment and implement retraining or optimization strategies.
 - Architecture & Scalability: Contribute to the design of AI infrastructure supporting rapid experimentation and reliable deployment at scale.
 - Research & Innovation: Stay current on the latest advancements in ML, LLMs, and agentic AI systems.
 - Propose and prototype new capabilities to strengthen our product’s intelligence.
  
Qualifications - Experience: 3+ years of professional experience as a Machine Learning Engineer or similar role.
 - Proven experience building and deploying ML models and/or LLM-based solutions into production.
 - Technical Skills: Proficiency in Python and ML/AI frameworks like PyTorch, TensorFlow, or scikit-learn.
 - Strong understanding of ML algorithms, model evaluation, feature engineering, and MLOps best practices.
 - Experience working with and deploying LLMs (e.g., OpenAI GPT-4, Claude, LLaMA, or similar).
 - Familiarity with prompt engineering, fine-tuning, RAG (retrieval-augmented generation), and agent frameworks.
 - Experience with cloud platforms like Google Cloud Platform, Amazon Web Services, or Microsoft Azure.
 - Experience with containerization and model serving (e.g., Docker, Kubernetes, TensorFlow Serving, FastAPI).
 - Applied AI Experience: Strong background in supervised/unsupervised learning, predictive modeling, and experimentation.
 - Experience with recommender systems, ad optimization models, or marketing intelligence.
 - Familiarity with LLM integrations in production systems is a big plus.
 - Soft Skills: Strong problem-solving abilities and ownership mindset.
 - Excellent communication and collaboration skills.
 - Comfortable in a fast-moving startup environment.
  
Bonus Points - Experience applying LLMs to real-world product use cases in e-commerce or marketing.
 - Knowledge of agentic AI architectures and multi-model orchestration.
 - Experience contributing to open-source ML/LLM projects.
 - Familiarity with backend/frontend systems to integrate AI into customer experiences.
 - Domain experience with e-commerce platforms (e.g., Amazon Seller Central).
  
Why Join Us - Build AI that directly impacts thousands of e-commerce businesses.
 - Work on both ML and LLM innovation  at the frontier of applied AI.
 - Own your work end-to-end in a lean, ambitious team.
 - Flexible work culture, high autonomy, and the chance to shape the future of our platform.