
11 - 50 employees
🧬 Biotechnology
₿ Crypto
🤖 Artificial Intelligence
Biotechnology • Crypto • Artificial Intelligence
Bio Protocol is a decentralized science (DeSci) financial layer and platform that tokenizes and funds early-stage biotechnology research. It enables community-governed DAOs and tokenized IP to raise capital via BIO token launches and Ignition Sales, offers staking and loyalty mechanics (BioXP), and provides infrastructure such as a Launchpad and Liquidity Engine. The protocol also supports AI-driven scientific tools (BioAgents and the BIOS AI scientist) to accelerate research, coordination, and commercialization of scientific innovations.
🕒 February 25
Improve your chances of getting an interview by checking your resume score before you apply.

11 - 50 employees
🧬 Biotechnology
₿ Crypto
🤖 Artificial Intelligence
Biotechnology • Crypto • Artificial Intelligence
Bio Protocol is a decentralized science (DeSci) financial layer and platform that tokenizes and funds early-stage biotechnology research. It enables community-governed DAOs and tokenized IP to raise capital via BIO token launches and Ignition Sales, offers staking and loyalty mechanics (BioXP), and provides infrastructure such as a Launchpad and Liquidity Engine. The protocol also supports AI-driven scientific tools (BioAgents and the BIOS AI scientist) to accelerate research, coordination, and commercialization of scientific innovations.
• Build agent capabilities for planning, tool use, memory, and context management, and ship them into production. • Integrate agents with internal and external tools and data sources (retrieval systems, structured datasets, lab/biomed APIs, spreadsheets, search), with robust schemas and safeguards. • Develop quality and evaluation systems, including unit, regression, and scenario/benchmark tests, telemetry, and automated scoring. • Collaborate with scientists to analyze failure modes and improve performance. • Partner with the knowledge and ontology team to ensure outputs are source-traceable and compliant with provenance standards. • Implement safety measures, guardrails, and sandboxed execution for risky operations. • Optimize performance and reliability through profiling, idempotency, retries, rate limiting, and uptime management. • Instrument data pipelines for supervised fine-tuning and reinforcement learning when needed. • Contribute to the agent platform, including services, APIs, orchestration, CI/CD, and observability.
• Experience building production software in Python and/or TypeScript, with strong systems and API design skills (FastAPI, gRPC, GraphQL, or similar). • Proven experience shipping LLM applications or agentic systems (tool use/function calling, retrieval/RAG, structured outputs, evaluation, or observability). • Familiarity with agent/orchestration frameworks (e.g., LangChain, LangGraph, AutoGen, CrewAI, MCP) and vector databases (FAISS, Weaviate, Pinecone). • Experience with cloud infrastructure and containers (AWS, GCP, or Azure), Docker/Kubernetes/Terraform, CI/CD, and production telemetry. • Ability to translate research prototypes into robust, scalable systems. • Nice to have: • Experience with fine-tuning and reinforcement learning (RL, RLAIF, RLHF), including reward design and offline evaluation. • Familiarity with benchmarks and evaluations such as SWE-Bench, OS-World, or tau-bench. • Knowledge of retrieval and knowledge systems, including schema and ontology design, entity modeling, and provenance tracking. • Background in agentic system safety and security (sandboxing, isolation, permissions, auditability). • Exposure to life sciences or scientific computing and collaboration with domain experts.
• Evidence-first: every output is grounded and source-verifiable. • Tight feedback loops: weekly quality reviews with scientists to ship, measure, and improve. • Platform mindset: we create safe, reusable systems that empower others to build new agent capabilities.
Apply Now🕒 February 25
Senior AI Developer at EBizCharge designing and maintaining secure MCP Servers for AI assistants. Collaborating with cross-functional teams to integrate AI capabilities within payment solutions.
AWS
Azure
Cloud
Docker
Flask
Google Cloud Platform
Keras
Kubernetes
Python
PyTorch
Scikit-Learn
SQL
Tensorflow
.NET
🕒 February 22
1001 - 5000
Senior Staff AI Engineer at Penn Mutual designing scalable AI solutions. Collaborating with teams to advance AI strategies and maintain performance standards.
AWS
Cloud
Microservices
🕒 February 21
AI Engineer working with AI initiatives and strategic clients to leverage data insights for project success. Collaborating with teams to deliver solutions and drive results in artificial intelligence.
Python
SQL
Tableau
🕒 February 20
AI Engineer developing autonomous agents for influencer marketing based on vast proprietary data. Seeking young talent ready to define the future of AI in the industry.
🇺🇸 United States – Remote
💵 $200 / year
💰 $5M Seed Round on 2022-04
⏰ Full Time
🟡 Mid-level
🟠 Senior
🤖 AI Engineer
🦅 H1B Visa Sponsor
AWS
Cloud
Docker
Google Cloud Platform
JavaScript
Kubernetes
Next.js
Node.js
Python
SQL
🕒 February 20
AI Engineer leading projects for strategic clients within data analytics and AI applications. Collaborating with various technical teams to enhance AI solutions and ensure client satisfaction.
Python
SQL
Tableau