
51 - 200 employees
Founded 2015
🤖 Artificial Intelligence
🧬 Biotechnology
☁️ SaaS
Artificial Intelligence • Biotechnology • SaaS
TetraScience is a company dedicated to transforming raw scientific data into AI-native datasets for advanced scientific applications. By collaborating closely with leading biopharmaceutical companies, TetraScience enhances productivity, accelerates insights, and ensures data integrity across the scientific value chain. Their platform offers solutions for next-generation lab data management, AI-driven scientific outcomes, and compliance with industry standards. As the first company to provide a data and AI cloud built specifically for science, TetraScience enables its clients to liberate, unify, and transform their data, overcoming traditional data silos and boosting scientific productivity by providing a flexible, open, and collaborative infrastructure.
🕒 Yesterday
Improve your chances of getting an interview by checking your resume score before you apply.

51 - 200 employees
Founded 2015
🤖 Artificial Intelligence
🧬 Biotechnology
☁️ SaaS
Artificial Intelligence • Biotechnology • SaaS
TetraScience is a company dedicated to transforming raw scientific data into AI-native datasets for advanced scientific applications. By collaborating closely with leading biopharmaceutical companies, TetraScience enhances productivity, accelerates insights, and ensures data integrity across the scientific value chain. Their platform offers solutions for next-generation lab data management, AI-driven scientific outcomes, and compliance with industry standards. As the first company to provide a data and AI cloud built specifically for science, TetraScience enables its clients to liberate, unify, and transform their data, overcoming traditional data silos and boosting scientific productivity by providing a flexible, open, and collaborative infrastructure.
• Architect a full-stack Search Platform across all layers of indexing and scoring, query understanding, rewriting and federation, and extensible search experiences. • Continuously improve search quality through evaluation metrics such as precision@K, recall@K, MRR, and relevance testing with real scientific use cases. • Engineer sophisticated hybrid search pipelines that blend sparse (keyword), structured (metadata), and dense (vector) retrieval. You will go beyond out-of-the-box OpenSearch to design custom ranking logic, reciprocal rank fusion, and relevance tuning that surfaces the exact "needle in the haystack" for drug discovery. • Lead by example and write code, review designs, and set the standard for engineering quality on the Search Platform team. Mentor engineers and help grow the team's search and distributed systems expertise. • Contribute to architectural decisions, technical strategy, and platform-wide improvements to accelerate scientific insight generation. • Own and operate the Search Platform infrastructure, ensuring high availability, scalability, performance, and observability across indexing, embedding generation, and query execution. • Develop and maintain backend services and APIs in Python and TypeScript that power search capabilities for scientists, data engineers, and AI applications. • Ensure security, compliance, and tenant isolation as part of operating search services in enterprise bio-pharma environments. • Collaborate with Applied AI Scientists to integrate embeddings, transformer models, and chemical fingerprints into production search workflows. • Architect and implement scientific entity resolution and knowledge graph pipelines to transform raw text into interconnected knowledge. You will design systems that extract and link chemical and biological entities (NER/NED) from unstructured documents, enabling the search engine to "understand" relationships between compounds, targets, and assays.
• 10+ years of backend or platform engineering experience building distributed, production grade systems. • Hands-on experience with search technologies such as Elasticsearch/OpenSearch, Lucene, or vector databases not just deployment, but custom configuration, relevance tuning, and performance optimization at scale. • Strong understanding of semantic and hybrid retrieval: embeddings, transformer models, vector similarity, ranking logic, relevance tuning, and how to blend them with classical keyword search. • Expert-level coding skills in TypeScript and Python building robust APIs and backend services. • Proven ability to build and operate search infrastructure on cloud platforms (AWS preferred), including containerization, CI/CD, observability, and capacity planning. • Familiarity with scientific or unstructured data processing, such as documents, tables, analytical results, or experimental datasets. • Excellent communication and collaboration skills comfortable working alongside scientists, AI researchers, and product teams. • Exposure to NLP, LLMs, embedding generation, or retrieval-augmented workflows. • Experience with vector databases / embeddings stores (e.g., OpenSearch) to support semantic search and RAG. • Strong problem solving skills, while being Comfortable navigating ambiguity translating loosely defined scientific workflows and user needs into well-engineered search systems.
• 100% employer-paid benefits for all eligible employees and immediate family members • Unlimited paid time off (PTO) • 401K • Flexible working arrangements - Remote work • Company paid Life Insurance, LTD/STD • A culture of continuous improvement where you can grow your career and get coaching
Apply Now🕒 Yesterday
11 - 50
Senior Data Platform Engineer at Provable managing data infrastructure and APIs on Google Cloud. Focused on blockchain indexing and enhancing mobile privacy wallets.
BigQuery
Cloud
Google Cloud Platform
JavaScript
Kubernetes
Node.js
Postgres
Python
SQL
Terraform
TypeScript
🕒 Yesterday
Senior Data and AI Platform Engineer developing and maintaining Jellyfish's data and AI platform to drive innovation and analytics. Collaborating with researchers and business leaders to build reliable data pipelines.
Python
SQL
Unity
🕒 Yesterday
Senior Software Engineer developing scalable cloud-based microservices for Delinea's Identity Security Platform. Collaborating with teams and mentoring peers within a remote setup.
AWS
Azure
Cloud
Kubernetes
Microservices
SQL
Terraform
.NET
🕒 Yesterday
Platform Engineer managing Kubernetes infrastructure for Sand Technologies, focusing on reliable cloud and on-premises deployments. Collaborating across teams to optimize and enhance system operations in critical environments.
AWS
Cloud
Flux
Grafana
Kubernetes
Prometheus
🕒 2 days ago
Sr. Director, overseeing the enterprise AI platform engineering at SentinelOne. Building an AI foundation for all internal AI use cases and vendor solutions.
🇺🇸 United States – Remote
💵 $198.8k - $298k / year
⏰ Full Time
🟠 Senior
🏗️ Platform Engineer
🦅 H1B Visa Sponsor
AWS
Python
React
TypeScript