
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.
• Design, implement, and maintain cloud-native platform to support AI and data workloads, with a focus on AI and data platforms such as Databricks and AWS Bedrock. • Build and manage scalable data pipelines to ingest, transform, and serve data for ML and analytics. • Develop infrastructure-as-code using tools like Cloudformation, AWS CDK to ensure repeatable and secure deployments. • Collaborate with AI engineers, data engineers, and platform teams to improve the performance, reliability, and cost-efficiency of AI models in production. • Drive best practices for observability, including monitoring, alerting, and logging for AI platforms. • Contribute to the design and evolution of our AI platform to support new ML frameworks, workflows, and data types. • Stay current with new tools and technologies to recommend improvements to architecture and operations. • Integrate AI models and large language models (LLMs) into production systems to enable use cases using architectures like retrieval-augmented generation (RAG).
• **7+ years of professional experience **in software engineering and infrastructure engineering. • Extensive experience building and maintaining AI/ML infrastructure in production, including model, deployment, and lifecycle management. • Expert-level coding skills in TypeScript and Python building robust APIs and backend services. • Production-level experience with Databricks MLFlow, including model registration, versioning, asset bundles, and model serving workflows. • Expert level understanding of containerization (Docker), and hands on experience with CI/CD pipelines, orchestration tools (e.g., ECS) is a plus. • Proven ability to design reliable, secure, and scalable infrastructure for both real-time and batch ML workloads. • Strong knowledge of AWS and infrastructure-as-code frameworks, ideally with CDK. • Ability to articulate ideas clearly, present findings persuasively, and build rapport with clients and team members. • Strong collaboration skills and the ability to partner effectively with cross-functional teams. • Nice to Have • Familiarity with emerging LLM frameworks for advanced prompt orchestration and programmatic LLM pipelines. • Understanding of LLM cost monitoring, latency optimization, and usage analytics in production environments. • Knowledge of vector databases / embeddings stores (e.g., OpenSearch) to support semantic search and RAG.
• 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
Senior Software Engineer on the AI Platform team building and operating LLM and agent infrastructure. Leading initiatives to scale AI capabilities across Coinbase.
🇺🇸 United States – Remote
💵 $186.1k - $218.9k / year
💰 $21.4M Post-IPO Equity on 2022-11
⏰ Full Time
🟠 Senior
🏗️ Platform Engineer
🦅 H1B Visa Sponsor
Cloud
Microservices
Python
Rust
Go
🕒 Yesterday
Architect and build core data infrastructure solutions at WEX, leading technical efforts and guiding teams in high-performance data processing.
🇺🇸 United States – Remote
💵 $220k - $255.8k / year
💰 $310M Post-IPO Debt on 2020-06
⏰ Full Time
🟠 Senior
🏗️ Platform Engineer
🦅 H1B Visa Sponsor
Apache
AWS
Azure
Distributed Systems
J2EE
Java
Microservices
Python
SDLC
Spring
Spring Boot
SpringBoot
Terraform
🕒 Yesterday
AI Governance Engineer working on Responsible AI policy implementation for aerospace and defense company RTX. Focused on configuration of AI governance platforms and automation with enterprise systems.
🕒 Yesterday
Senior Platform Engineer at EverOps designing and building self-service developer platforms. Collaborating remotely to solve complex delivery challenges in the DevOps space.
Ansible
AWS
Azure
Cloud
Docker
Flux
Grafana
Kubernetes
Packer
Prometheus
Python
Ruby
Rust
Splunk
Terraform
TypeScript
Go
🕒 Yesterday
Senior Engineer developing scalable internal technology solutions for Mosaic Pediatric Therapy. Overseeing software engineering standards and supporting AI-assisted development practices in a growing tech ecosystem.
AWS
Azure
Cloud
ETL
Google Cloud Platform
Python
SQL