At
Nurix AI
, we are pioneering the
Autopilot Enterprise
. Our conversational AI agents handle workflows, drive outcomes, and deliver measurable impact for businesses. Born from the belief that enterprises need a new playbook, we build autonomous, multilingual agents capable of complex reasoning, contextual understanding, and end-to-end workflow ownership. Backed by
$27.5M in funding
from
Accel, General Catalyst, and Meraki Labs
, and led by
Mukesh Bansal
, we are India’s first scaled enterprise AI company, delivering cutting-edge AI solutions that integrate seamlessly into workflows across industries like
Retail, Insurance, Education & Home Services
. Join us in shaping the future of enterprise AI - where every interaction is smarter, faster, and human-like.
As
Enterprise Architect at Nurix AI
, you will be the cornerstone of our technical infrastructure, enabling our AI agents to scale reliably and securely in production. You will design and oversee distributed systems that deliver
low-latency, high-availability voice and chat AI
, while meeting enterprise-grade security and compliance requirements. This is a hands-on leadership role focused on
architecture, systems design, and performance engineering
- ensuring that Nurix’s groundbreaking AI research translates into robust, real-world deployments.
Key Responsibilities
Systems Architecture & Scalability
Design and evolve the
end-to-end infrastructure
supporting ASR/TTS, LLM orchestration, Agentic RAG, and self-learning workflows.
Architect
low-latency pipelines
for real-time conversational AI, ensuring sub-second response times across voice and chat.
Build
multi-cloud, distributed systems
(AWS, GCP, Azure) with elastic scaling to handle spiky workloads.
Reliability & Performance Engineering
Define and enforce SLAs around
latency, uptime, and throughput
for AI services.
Drive observability, monitoring, and resilience strategies to handle failures gracefully.
Optimize GPU/TPU utilization for cost-effective training and inference.
Security & Compliance
Partner with InfoSec to embed
security-by-design
across all AI/ML workloads.
Implement controls to protect sensitive enterprise data while meeting
global compliance standards
(SOC2, ISO 27001, GDPR, DPDP).
Collaboration & Leadership
Work closely with the Head of AI to translate cutting-edge research into
production-grade platforms
.
Provide technical mentorship to engineering teams, ensuring best practices in distributed systems and infra design.
Evaluate and adopt emerging technologies (e.g.,
SSMs, inference optimizers like Triton, Riva, vLLM
) to stay ahead of the curve.
Required Qualifications & Skills
10 - 15 years of experience
in large-scale systems architecture, with at least 5 years in principal architect-level roles.
Proven expertise in
distributed systems, cloud-native architectures, and real-time pipelines
.
Hands-on experience with
containerization, orchestration (Kubernetes), and microservices
.
Strong background in
scalable ML infrastructure
, including model serving, GPU/accelerator utilization, and CI/CD for ML.
Demonstrated ability to architect systems with
low latency (<300ms), high throughput, and enterprise reliability
.
Experience in
conversational AI, speech systems, or real-time inference workloads
.
Deep knowledge of
MLOps platforms
(Kubeflow, MLflow, VertexAI, SageMaker).
Familiarity with
state-of-the-art inference optimization
frameworks (e.g., Triton, Nvidia Riva, vLLM, SGLang).
Open-source contributions or patents in distributed systems, infra, or ML tooling.