Data Scientist eCommerce Search

TalTeam Inc
yesterday

Role details

Contract type
Permanent contract
Employment type
Full-time (> 32 hours)
Working hours
Regular working hours
Languages
English
Experience level
Intermediate

Job location

Remote

Tech stack

Data analysis
Artificial Neural Networks
Big Data
Apache Lucene
Encodings
Computational Linguistics
Data Cleansing
Data Visualization
Elasticsearch
Information Retrieval
Python
Search Algorithms
Machine Learning
NumPy
Performance Tuning
TensorFlow
Search Technologies
Solr
SQL Databases
Stemming
Tableau
Data Processing
Feature Engineering
PyTorch
Large Language Models
Prompt Engineering
Spark
Indexer
Pandas
Event Driven Architecture
Scikit Learn
Information Technology
Performance Monitor
Search Engines
Machine Learning Operations
Tools for Reporting
Looker Analytics
Software Version Control
Data Pipelines

Job description

As a Data Scientist eCommerce Search, you will play pivotal role in building the next generation of intelligent, high-performing search experiences for our global eCommerce platforms (e.g., sigmaaldrich.com and sigmaaldrich.cn) and build new features and components in our evolving platform, helping to embrace with search metrics, dashboards, model fine tuning.

You will be responsible for optimizing search relevance, tuning search engine behavior, and applying advanced AI/ML techniques to elevate how users disc0ver and interact with products.

You'll work closely with Product Owner, Data Scientists, and Software Engineers to deliver seamless and personalized search experiences that directly impact business outcomes., Machine Learning Model Development: Design, train, and evaluate ranking models (learning-to-rank, neural networks, embedding-based approaches) to optimize search relevance and personalization. Search Query Analysis: Analyze search query logs, evaluate user behavior data to identify opportunities for relevance improvements and inform ranking strategies. Feature Engineering: Develop and engineer features from search, product, and user data to power ML models and improve ranking performance. Semantic Search & NLP: Implement semantic search for improved product discovery across chemistry and life science domains. Search Engine Tuning: Optimize Elasticsearch/Lucene configurations, including tokenization, stemming, query parsing, and lexical search algorithms (BM25) to work in concert with ML models. ML Pipeline Development: Build and maintain end-to-end ML pipelines, including data preprocessing, feature engineering, model training, evaluation, and deployment using MLOps best practices. Ranking & Personalization: Develop personalized ranking strategies that adapt to user segments, query intent, and business objectives; integrate collaborative filtering and content-based approaches. Performance Monitoring & Iteration: Monitor search and ML model performance metrics in production; identify drift and continuously improve models based on new data and domain insights. Data Analysis

Requirements

Education: Bachelor's degree in Computer Science, Engineering, Data Science, or a related quantitative field.

Mandatory Skills: 3 years of hands-on experience in machine learning, data science, search relevance, or ranking systems. Proven expertise in Python and ML frameworks (MLFlow, TensorFlow, PyTorch, Scikit- learn, or equivalent). Strong background in statistical analysis, data exploration, and working with large-scale datasets. Experience with feature engineering, data preprocessing, and data manipulation libraries (Pandas, NumPy, Spark). Demonstrated experience building or working with ranking models (learning- to-rank, neural ranking, or similar). Experience with semantic search, embedding, or dense retrieval methods. Deep understanding of search engines (Elasticsearch, Solr, OpenSearch), lexical search algorithms (BM25), information retrieval concepts, search relevance tuning, tokenization, stemming, and query parsing. Experience with MLOps practices and tools (model versioning, experiment tracking, pipeline orchestration). Proficiency in SQL and querying large datasets. Strong problem-solving and analytical skills with the ability to think critically about complex search and ranking problems. Excellent communication skills; ability to explain ML and search concepts to both technical and non-technical stakeholders. Ability to collaborate with cross-functional teams

Preferred Skills: Search Query Analysis: Analyze search query logs, evaluate user behavior data to identify opportunities for relevance improvements and inform ranking strategies. Experience in training & fine tuning the models. Experience with large language models (LLMs) or prompt engineering. Experience with semantic indexing and dense vector search (e.g., vector databases). Experience in Search Metrics evolution Familiarity with data visualization and analytics tools (Tableau, Looker, etc.). Background in NLP, information retrieval, or computational linguistics. Experience on search or ML-focused teams

Nice to have Skills: Experience in eCommerce Search Knowledge of microservices architectures, event-driven systems, and CI/CD

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