Full-Time

ML Solutions Engineer

Updated on 12/16/2024

Arize AI

Arize AI

51-200 employees

AI observability and model evaluation platform

Data & Analytics
AI & Machine Learning

Compensation Overview

$125k - $175kAnnually

+ Equity Package

Mid, Senior

Remote in USA

Remote-first company with offices in New York City and San Francisco Bay Area; WFH monthly stipend available.

Category
Solution Engineering
Sales & Solution Engineering
Required Skills
Kubernetes
Microsoft Azure
Python
Data Science
Tensorflow
R
Pytorch
Java
AWS
Go
REST APIs
Google Cloud Platform
Requirements
  • Previous experience working as a Data Scientist, Machine Learning Engineer, or as an Engineer working with ML models in production.
  • Comfortable with Kubernetes and public Cloud environments (AWS, Azure, GCP)
  • Knowledge of machine learning frameworks such as TensorFlow, PyTorch or Scikit-learn
  • Understanding of ML/DS concepts, model evaluation strategies and lifecycle (feature generation, model training, model deployment, batch and real time scoring via REST APIs) and engineering considerations
  • Proficiency in a programming language (Python, R, Java, Go, etc)
  • Strong Communication Skills - Ability to simplify complex, technical concepts.
  • A quick and self learner - undaunted by technical complexity of production ML deployments and welcome the challenge to learn about them and develop your own POV.
Responsibilities
  • You will act as a trusted advisor to our customers, while also building relationships with technical stakeholders
  • You will act as the “Voice of the Customer” - Regularly engaging them on status calls, educating on product roadmap and QBRs, managing escalations, while influencing our roadmap in partnership with our Product team.
  • Interface with our pre-sales engineering team to gather client goals and KPI’s.
  • Spearhead new opportunities in which Arize can provide the most value that will drive renewals and new accounts.

Arize AI provides a platform focused on AI observability and evaluating language models. The platform allows companies to monitor and troubleshoot their machine learning models, including those used for natural language processing, computer vision, and recommendations. Users can access analytics and workflows to identify and fix issues in their AI systems, ensuring optimal performance. Key features include task-based evaluations for aspects like hallucination and relevance, as well as tools for visualizing query and knowledge base embeddings to enhance retrieval accuracy. Unlike competitors, Arize emphasizes a comprehensive approach to model evaluation and troubleshooting, catering specifically to the needs of leading AI companies. The goal of Arize AI is to help these companies continuously improve their AI models and maintain high performance.

Company Stage

Series B

Total Funding

$59.3M

Headquarters

Berkeley, California

Founded

2020

Growth & Insights
Headcount

6 month growth

6%

1 year growth

23%

2 year growth

31%
Simplify Jobs

Simplify's Take

What believers are saying

  • Integration with Microsoft Azure could expand enterprise adoption and customer base.
  • AI Copilot reduces development time and improves model performance for AI engineers.
  • Prompt variable monitoring enhances LLM evaluation, offering a competitive market edge.

What critics are saying

  • Rapid technological advancements could increase competition, eroding market share.
  • Microsoft collaboration may risk competition if Microsoft develops similar solutions.
  • EU data residency may not fully address evolving EU data protection laws.

What makes Arize AI unique

  • Arize AI offers industry-first AI Copilot for troubleshooting complex AI systems.
  • The platform provides unique prompt engineering and retrieval tracing workflows for LLMs.
  • Arize AI supports EU data residency, catering to European clients' regulatory needs.

Help us improve and share your feedback! Did you find this helpful?