Full-Time

LLMOps Architect

Enterpret

Enterpret

51-200 employees

Transforms customer feedback into product insights

No salary listed

Bengaluru, Karnataka, India

In Person

Category
AI & Machine Learning (1)
Required Skills
LLM
Bash
Kubernetes
Rust
Python
Github Actions
MLflow
Docker
RAG
AWS
Go
Jenkins
Terraform
LangChain
Reinforcement Learning
Requirements
  • A minimum of 6 years' experience in MLOps and ML infrastructure, ideally with exposure to designing, deploying, and scaling machine learning systems in fast-paced, product-driven environments such as startups or high-growth companies.
  • Deep expertise with AWS (SageMaker, EC2, EKS, S3, IAM).
  • Experience with infrastructure-as-code (Terraform).
  • Experience with container orchestration (Docker, Kubernetes).
  • Strong Python skills; bonus points for Go, Bash, or Rust scripting where appropriate.
  • Hands-on experience with CI/CD systems like GitHub Actions, ArgoCD, or Jenkins—especially for ML model delivery.
  • Proven ability to monitor and maintain production ML systems, including model drift, latency, uptime, and alerting.
  • Comfort with cloud cost optimization, resource provisioning, and auto-scaling for ML-heavy environments.
  • Familiarity with model serving stacks and experimentation tools (MLflow, Langsmith, etc.).
  • Bonus: exposure to GenAI workflows (LangChain, vector databases, retrieval-augmented generation), encoder/LLM model tuning, reinforcement learning, or responsible AI practices.
  • Track record of mentoring, collaborating across functions, and taking full ownership of systems in production.
  • You dislike repetitive manual work and have a strong drive to automate everything.
  • Proficiency with AI coding agents like Claude and Cursor to work multiple times more effectively than normal.
Responsibilities
  • Design and evolve Enterpret's machine learning platform for training, serving, and retraining encoders and large language models using AWS, Terraform, OpenAI, and Anthropic.
  • Build continuous integration/continuous deployment pipelines tailored for machine learning—including model versioning, testing, canary releases, rollbacks, and gated production deployments.
  • Deploy and manage model serving systems for both real-time inference and batch pipelines.
  • Set up observability for model performance and data drift using Braintrust and custom alerts to catch issues before they affect customers.
  • Lead incident response, root cause analysis, and postmortems for ML systems to ensure uptime for insights used by product teams, along with governance and security.
  • Track and optimize cloud usage for machine learning workflows to ensure cost-aware model delivery aligned with product usage.
  • Implement governance and security across the stack—owning identity and access management, data access, auditability, and model explainability where needed.
  • Partner with ML and product teams to productionize GenAI and AI models powering our Knowledge Graph and Adaptive Taxonomy engine, addressing retrieval, encoder large language model fine-tuning, and reinforcement learning problems.
  • Evaluate tools for model registry, feature stores, and orchestration—and build where needed to maintain a fast feedback loop.
  • Champion best practices in MLOps across the organization—mentoring engineers and establishing scalable foundations for the future.
  • Act as a coach to our team of researchers transitioning into engineering, helping them self-serve their capabilities and self-service these tools.
Desired Qualifications
  • Exposure to GenAI workflows (LangChain, vector databases, retrieval-augmented generation).
  • Encoder and large language model tuning.
  • Reinforcement learning.
  • Responsible AI practices.
  • Mentoring experience and ability to collaborate across functions.

Enterpret provides a customer feedback intelligence platform that helps product teams turn feedback into actionable insights. It collects feedback from multiple sources, unifies and categorizes it using adaptive AI into a Custom Unified Feedback Taxonomy, and enables precise, granular insights to prioritize product work. How it works: users access a user-friendly interface, build dashboards, and use semantic search to interpret the meaning across feedback, with automated summaries. Differentiators: adaptive taxonomy that evolves with feedback, semantic search across all feedback, and a structure that supports non-technical operators; the service includes dedicated data auditors for weekly model refreshes and a dedicated Customer Success Manager. Goal: help product companies build products centered on customer needs by continuously refreshing models and insights.

Company Size

51-200

Company Stage

Series A

Total Funding

$25.1M

Headquarters

San Francisco, California

Founded

2020

Simplify Jobs

Simplify's Take

What believers are saying

  • $20.8M Series A from Canaan Partners scales no-code AI agents.
  • Customers like Canva, Notion, Monday.com validate product-market fit.
  • Scalable AWS architecture processes hundreds of millions of records.

What critics are saying

  • Coda erodes differentiation for Notion users in 6-12 months.
  • Insight7 undercuts taxonomy USP with lower pricing at Canva.
  • OpenAI GPT-4o API obsoletes no-code agents for Notion in 3-6 months.

What makes Enterpret unique

  • Custom Unified Feedback Taxonomy adapts to feedback changes over time.
  • Semantic search uncovers customer intent beyond exact wording.
  • User-friendly platform enables non-technical teams to build dashboards.

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Benefits

Health Insurance

Dental Insurance

Vision Insurance

401(k) Retirement Plan

401(k) Company Match

Paid Vacation

Parental Leave

Growth & Insights and Company News

Headcount

6 month growth

2%

1 year growth

-1%

2 year growth

-5%
intelligence360
Dec 19th, 2024
Enterpret Raises $20.8M in Series A

Enterpret, an AI-enabled customer feedback platform, announced a $20.8 million Series A funding round led by Canaan Partners, with participation from Kleiner Perkins, Peak XV Partners, Wing Ventures, and Recall Capital. Angel investors include Lauryn Motamedi, Elena Verna, Nan Yu, and Andrew Berman. The funding will help Enterpret scale and deploy no-code AI agents. Rayfe Gaspar-Asaoka from Canaan Partners joins the board. Enterpret's customers include Canva, Notion, and Monday.com.

Business Wire
Dec 5th, 2024
Enterpret Announces $20.8 Million Series A

Enterpret, the AI-enabled customer feedback intelligence platform for product development and CX teams, announced that it has raised $20.8 million in

Entrackr
Dec 4th, 2024
Enterpret announces $20.8 Mn in Series A round

Enterpret, an AI-enabled customer feedback intelligence platform for product development and CX teams, has raised $20.8 million in its Series A round led by Canaan Partners.

Inc42
Dec 4th, 2024
Enterpret Bags $20.8 Mn To Provide AI Driven Customer Feedback To CXOs

Enterprise tech startup Enterpret has raised $20.8 Mn (over INR 175 Cr) in its Series A funding round led by Canaan Partners.

Enterpret
Jan 31st, 2024
How product teams validate assumptions and hypotheses in Enterpret

Why Enterpret Inc. launched Creating Reasons in Enterpret.