About Dialpad
Dialpad is the AI-native business communications platform. We unify calling, messaging, meetings, and contact center on a single platform - powered by AI that understands every conversation in real time.
More than 70,000 companies around the globe, including WeWork, Asana, NASDAQ, AAA Insurance, COMPASS Realty, Uber, Randstad, and Tractor Supply, rely on Dialpad to build stronger customer connections using real-time, AI-driven insights.
We’re now leading the shift to Agentic AI: intelligent agents that don’t just analyze conversations but take action by automating workflows, resolving customer issues, and accelerating revenue in real time. Our DAART initiative (Dialpad Agentic AI in Real Time) is redefining what a communications platform can do.
Visit dialpad.com to learn more.
Being a Dialer
At Dialpad, AI isn’t just a feature; it’s how our teams do their best work every day. We put powerful AI tools in every employee’s hands so they can move faster, think bigger, and achieve more.
We believe every conversation matters. And we’ve built the platform that turns those conversations into insight and action, for our customers and ourselves.
We look for people who are intensely curious and hold themselves to a high bar. Our ambition is significant, and achieving it requires a team that operates at the highest level. We seek individuals who embody our core traits: Scrappy, Curious, Optimistic, Persistent, and Empathetic.
Your role
Dialpad’s AI Engineering organization is responsible for building and maintaining customer-facing AI features at scale across all of our cloud-native products and services. Every day, millions of users worldwide leverage our technology to communicate effectively and efficiently.
Dialpad's Agentic Runtime team owns the infrastructure and execution engine that runs AI agents at scale across Dialpad's core product modalities — including voice, messaging, video, and digital engagement. From multi-step task orchestration and tool execution to real-time context management and agent memory, our team builds the foundational platform that powers Dialpad's next-generation intelligent, autonomous experiences. Our teams are highly collaborative and comprise cross-disciplinary professionals, including Product Managers, QA Specialists, and Engineers specializing in Distributed Systems, ML Infrastructure, and Platform Engineering.
This position reports to the Engineering Manager, who is based in Kitchener, CA, and has the opportunity to be based in our Buenos Aires, Argentina office.
What you’ll do- Contribute to the design, development, and maintenance of agentic runtime systems, including agent orchestration, tool execution pipelines, and multi-step reasoning loops.
- Build and optimize core runtime components, including task planners, action dispatchers, memory managers, and context window management systems.
- Work on agent coordination techniques, including dynamic tool selection, parallel agent execution, state management, and result aggregation across multi-agent workflows.
- Maintain and enhance highly scalable agentic platforms with a focus on low-latency execution, cost efficiency, and deterministic behavior.
- Ensure high availability, reliability, and fault tolerance in agent runtime services, including graceful degradation when LLM or tool calls fail.
- Collaborate with cross-functional teams — including ML researchers, product, and platform engineers — to translate agentic product requirements into robust runtime infrastructure.
- Develop and optimize real-time distributed systems, microservices, and event-driven architectures powering agentic task execution.
- Design and implement sandboxed execution environments for safe agent use of tools, code execution, and external API calls.
- Implement and maintain monitoring, alerting, and performance metrics covering agent run success rates, token consumption, latency, and cost attribution.
- Evaluate and integrate emerging agentic frameworks, LLM APIs, and tooling ecosystems to continuously improve platform capabilities.
- Write clean, modular, and well-tested code while following best engineering practices in a rapidly evolving problem space.
- Participate in code reviews to ensure the quality, maintainability, and scalability of runtime components.
- Provide mentorship and technical guidance to junior engineers navigating the unique challenges of agentic systems.
- 3–6 years of experience in distributed systems, platform engineering, or ML infrastructure, with exposure to LLM-based or agentic systems strongly preferred.
- Strong understanding of agent architectures, including ReAct, plan-and-execute, and multi-agent coordination patterns.
- Deep knowledge of context management, prompt lifecycle, tool-call protocols (e.g., function calling, MCP), and agent memory strategies (short-term, episodic, and long-term).
- Experience integrating and managing external tool ecosystems, including web search, code interpreters, databases, and third-party APIs.
- Familiarity with retrieval-augmented generation (RAG) and how retrieval fits into broader agentic pipelines.
- Understanding of LLM output reliability challenges — hallucination, non-determinism, and retry/fallback strategies at runtime.
- Proficiency in Go and Python 3 (experience with Rust or TypeScript is a plus).
- Strong understanding of distributed systems, microservices, and event-driven architectures suited to long-running agent tasks.
- Passion for real-time performance optimization, including streaming responses, async execution, and parallel tool invocation.
- Experience with API design using OpenAPI, Swagger, or equivalent, with an eye toward agentic interaction patterns.
- Knowledge of gRPC or equivalent RPC protocols for inter-service communication within agent runtimes.
- Experience with Docker and Kubernetes, including managing long-running or stateful agent workloads in containerized environments.
- Familiarity with cloud platforms (GCP preferred, AWS/Azure optional), including managed services relevant to agentic workloads such as queuing, secrets management, and compute autoscaling.
- Hands-on experience with Infrastructure as Code tools like Terraform or Ansible.
- Knowledge of CI/CD frameworks and continuous delivery practices, with comfort shipping infrastructure in a fast-moving research-adjacent environment.
Why Join Dialpad
- Work at the center of the AI transformation in business communications
- Build and ship agentic AI products that are redefining how companies operate
- Join a team where AI amplifies every employee’s impact
- Competitive salary, comprehensive benefits, and real opportunities for growth
We believe in investing in our people. Dialpad offers competitive benefits and perks, cutting-edge AI tools, and a robust training program that help you reach your full potential. We have designed our offices to be inclusive, offering a vibrant environment to cultivate collaboration and connection. Our exceptional culture, repeatedly recognized as a Great Place to Work, ensures that every employee feels valued and empowered to contribute to our collective success.
Don’t meet every single requirement? If you’re excited about this role and possess the fundamental traits, drive, and strong ambition we seek, but your experience doesn’t meet every qualification, we encourage you to apply.
Dialpad is an equal-opportunity employer. We are dedicated to creating a community of inclusion and an environment free from discrimination or harassment.
Skills Required
- 3-6 years of experience in distributed systems, platform engineering or ML infrastructure.
- Proficiency in Go and Python 3.
- Experience with Docker and Kubernetes.
- Knowledge of CI/CD frameworks and continuous delivery practices.
- Familiarity with cloud platforms (GCP preferred).
Dialpad Compensation & Benefits Highlights
The following summarizes recurring compensation and benefits themes identified from responses generated by popular LLMs to common candidate questions about Dialpad and has not been reviewed or approved by Dialpad.
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Fair & Transparent Compensation — Compensation is viewed as competitive across many roles, combining salary, bonuses, equity, and benefits into a well-rounded package. Overall satisfaction with pay and total compensation is characterized as positive.
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Leave & Time Off Breadth — Paid time off is described as generous, with an unlimited PTO policy highlighted as a standout element. This breadth of time off is positioned as a central strength of the benefits package.
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Healthcare Strength — Healthcare coverage is characterized as comprehensive, spanning medical, dental, vision, disability, life insurance, and mental health benefits. Such coverage depth is presented as a core strength of the overall package.
Dialpad Insights
What We Do
Dialpad is a cloud-based business phone system that turns conversations into opportunities and helps global teams make smarter calls--anywhere, anytime. We bring simplicity to the professional phone experience and some of the world’s most innovative companies use our platform. Dialpad's products span video meetings, cloud call centers, sales coaching and dialers and enterprise phone systems--and are all infused with the latest AI technologies to help every business make smarter calls. Customers include WeWork, Uber, Motorola Solutions, Domo and Xero. Investors include Amasia, Andreessen Horowitz, Felicis Ventures, GV, ICONIQ Capital, Salesforce Ventures, Scale Venture Partners, Section 32, Softbank and Work-Bench.






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