Build and operate backend services (FastAPI/Flask) deployed on Kubernetes with CI/CD, managing the ... software engineering experience building backend services in Python * Production experience ...
Build and operate backend services (FastAPI/Flask) deployed on Kubernetes with CI/CD, managing the ... software engineering experience building backend services in Python * Production experience ...
GenAI Python Systems Engineer -Senior Manager
$124K - $280K/yr
... Data Engineer Associate] is a plus - Proficient in Python and structured/unstructured data ... maintaining FastAPI endpoints for applications - Understanding AI techniques enhancing LLMs ...
GenAI Python Systems Engineer -Senior Manager
$124K - $280K/yr
... Data Engineer Associate] is a plus - Proficient in Python and structured/unstructured data ... maintaining FastAPI endpoints for applications - Understanding AI techniques enhancing LLMs ...
Full-stack proficiency: comfortable building end-to-end applications with Python (FastAPI/Flask) on ... You understand prompt engineering, model integration, and how to ship AI features into production.
Full-stack proficiency: comfortable building end-to-end applications with Python (FastAPI/Flask) on ... You understand prompt engineering, model integration, and how to ship AI features into production.
Gen AI Engineer
Indianapolis, IN · Hybrid
Advanced Python proficiency. * 4+ years of professional hands-on experience leveraging large sets ... LLM serving platforms (vLLM, Text Generation Inference, FastAPI); Model quantization for LLMs (GPTQ ...
Gen AI Engineer
Indianapolis, IN · Hybrid
Advanced Python proficiency. * 4+ years of professional hands-on experience leveraging large sets ... LLM serving platforms (vLLM, Text Generation Inference, FastAPI); Model quantization for LLMs (GPTQ ...
Gen AI Engineer
Indianapolis, IN · Hybrid
Advanced Python proficiency. * 4+ years of professional hands-on experience leveraging large sets ... LLM serving platforms (vLLM, Text Generation Inference, FastAPI); Model quantization for LLMs (GPTQ ...
Gen AI Engineer
Indianapolis, IN · Hybrid
Advanced Python proficiency. * 4+ years of professional hands-on experience leveraging large sets ... LLM serving platforms (vLLM, Text Generation Inference, FastAPI); Model quantization for LLMs (GPTQ ...
Artificial Intelligence Specialist
Fort Wayne, IN · On-site +1
$109K - $203K/yr
This is an ideal opportunity for an engineer pursuing AI/ML application engineering, platform ... Python web/API development (FastAPI, Flask, Django) Local AI model stacks (vLLM, LiteLLM, Ollama ...
Artificial Intelligence Specialist
Fort Wayne, IN · On-site +1
$109K - $203K/yr
This is an ideal opportunity for an engineer pursuing AI/ML application engineering, platform ... Python web/API development (FastAPI, Flask, Django) Local AI model stacks (vLLM, LiteLLM, Ollama ...
You will engineer the connective tissue between Agentic AI and physical lab systems building ... python applications using tools like Redis, FastAPI, flask/streamlit, pytest, etc. (GitHub ...
You will engineer the connective tissue between Agentic AI and physical lab systems building ... python applications using tools like Redis, FastAPI, flask/streamlit, pytest, etc. (GitHub ...
Artificial Intelligence Specialist
Fort Wayne, IN · On-site
$109K - $203K/yr
This is an ideal opportunity for an engineer pursuing AI/ML application engineering, platform ... Python web/API development (FastAPI, Flask, Django) Local AI model stacks (vLLM, LiteLLM, Ollama ...
Artificial Intelligence Specialist
Fort Wayne, IN · On-site
$109K - $203K/yr
This is an ideal opportunity for an engineer pursuing AI/ML application engineering, platform ... Python web/API development (FastAPI, Flask, Django) Local AI model stacks (vLLM, LiteLLM, Ollama ...
Sr. Principal or Engineering Advisor - Agentic Lab Automation Integration
Indianapolis, IN · On-site
You will engineer the connective tissue between Agentic AI and physical lab systems building ... python applications using tools like Redis, FastAPI, flask/streamlit, pytest, etc. (GitHub ...
Sr. Principal or Engineering Advisor - Agentic Lab Automation Integration
Indianapolis, IN · On-site
You will engineer the connective tissue between Agentic AI and physical lab systems building ... python applications using tools like Redis, FastAPI, flask/streamlit, pytest, etc. (GitHub ...
Python Fastapi Developer information
What is a Python FastAPI Developer job?
A Python FastAPI Developer is responsible for designing, developing, and maintaining backend applications using FastAPI, a modern web framework for building APIs with Python. They work on creating high-performance APIs, integrating with databases, implementing authentication, and ensuring scalability. This role often involves working with asynchronous programming, cloud services, and containerization tools like Docker. Developers collaborate with teams to create efficient, secure, and well-documented API endpoints for web and mobile applications.
What are the key skills and qualifications needed to thrive in the Python Fastapi Developer position, and why are they important?
To thrive as a Python FastAPI Developer, you need strong proficiency in Python programming, experience designing RESTful APIs with FastAPI, and a background in web development concepts. Familiarity with version control systems like Git, containerization tools such as Docker, and knowledge of cloud platforms or SQL/NoSQL databases are commonly required, and certifications in cloud services or Python development can be advantageous. Excellent problem-solving skills, effective communication, and the ability to collaborate in agile teams help developers contribute efficiently to complex projects. These competencies ensure robust, scalable backend solutions and smooth coordination within development teams to meet business goals.
What are some typical daily tasks for a Python FastAPI Developer?
A Python FastAPI Developer typically spends their day designing, developing, and maintaining RESTful APIs to support web or mobile applications. This involves writing clean and efficient Python code, collaborating with frontend developers or other backend engineers to integrate new features, and ensuring the application meets performance and security standards. Developers also participate in code reviews, debugging, and continuous integration processes, while regularly communicating with product managers or stakeholders to align on project requirements. Staying up to date with FastAPI enhancements and industry best practices is also a common part of the role.

Job description
About the Team
The RevOps team owns the systems layer, operations & automation that supports Telnyx's growth engine. Historically, that meant administering GTM tools used by humans: Salesforce, marketing automation, enrichment vendors, routing, campaign workflows, reporting, and vendor integrations.
That operating model is changing. Telnyx is increasingly building AI agents and automation that interact directly with the GTM stack. The systems team now needs to support both human-facing workflows and bot-facing infrastructure: clean data, reliable integrations, durable automations, documented process, and scalable operating patterns.
About the Role
We're looking for a Software Engineer who builds and operates the AI-native backend systems powering our go-to-market motion. You'll design multi-agent architectures, build reliable integrations across complex business systems, and own services end-to-end from prototype through production.
The systems you build orchestrate LLM-powered agents that handle real business workflows - qualifying leads, generating emails, routing meetings, enriching contacts, and managing outbound campaigns. These are stateful, multi-step agent systems running on Kubernetes that make decisions, call tools, and interact with external APIs under real constraints: rate limits, token budgets, cost targets, and data quality issues.
You'll partner with Engineering Leads and Technical Product Managers to understand the problem space, then translate those problems into well-architected, observable, and maintainable software. This isn't prompt engineering and it isn't gluing together SaaS tools - it's systems engineering with AI as a core primitive.
This is a hands-on builder role with high ownership. You'll make architectural decisions, ship iteratively, debug production issues, and care deeply about what happens after code merges.
Responsibilities
- Design and build multi-agent AI systems in Python that handle complex, multi-step business workflows - qualification, email generation, routing, enrichment, and outbound orchestration
- Architect model-agnostic abstraction layers that decouple business logic from LLM providers, enabling flexibility across Claude, GPT, and open-source models
- Build and operate backend services (FastAPI/Flask) deployed on Kubernetes with CI/CD, managing the full lifecycle from deployment configuration to production reliability
- Design tool-use patterns for AI agents - structured function calling, multi-step reasoning, state management across conversation turns, and graceful handling of model failures
- Build integrations across external systems (CRM, enrichment APIs, outreach platforms, Slack) with proper error handling, retries, rate limiting, and data contracts
- Instrument and monitor AI systems in production - build observability into agent behavior, track success rates, detect regressions, and debug non-deterministic failures
- Design and run experiments (A/B tests, prompt variations, model comparisons) with proper evaluation infrastructure to measure what's actually working
Requirements
- 2+ years of software engineering experience building backend services in Python
- Production experience building multi-step AI agent systems - stateful workflows where models make decisions, call tools, and operate across multiple turns, not single-shot API wrappers
- Strong understanding of LLM internals as they affect system design: context window management, token budgets, cost/latency/capability tradeoffs across models, structured outputs, and strategies for handling hallucination and refusals
- Experience testing and evaluating non-deterministic AI systems - you understand that assert output == expected doesn't work and have built or used alternatives
- Solid software architecture fundamentals: API design, state management, fault tolerance, and graceful degradation when upstream services fail
- Production experience with containerized deployments (Docker, Kubernetes) and CI/CD pipelines
- Experience integrating with external APIs at scale - auth flows, rate limiting, retries, data normalization, and managing the operational complexity of multiple third-party dependencies
- Proficiency with SQL and data systems for building targeting, enrichment, and analytics pipelines
- Built observability into production systems - structured logging, tracing, alerting, and monitoring that you actually use to debug issues
- High ownership: you deploy your own code, investigate your own incidents, and close the loop between what you shipped and how it performs
Nice to Have
- Experience with specific GTM/RevOps systems (Salesforce, Apollo, Lusha, enrichment providers) or similar complex business platforms
- Background in growth engineering, marketing automation, or revenue operations tooling
- Experience with Slack bot development or conversational AI interfaces
- Contributions to or experience with open-source AI agent frameworks
- Familiarity with ArgoCD, StatefulSets, or Kubernetes operations beyond basic deployments
About Telnyx
Sourced by ZipRecruiter
Industry
Telecommunications
Company size
11 - 50 Employees
Headquarters location
Chicago, IL, US
Year founded
2009