Machine Learning Engineer (Hybrid)

Overview

On Site
USD 109,700.00 - 146,200.00 per year
Full Time

Skills

Data Analysis
Taxes
Transformer
Natural language processing
Computer vision
Deep learning
Real-time
FOCUS
Leadership
Research and Development
Management
Regulatory Compliance
Metrics
Resource allocation
Scalability
Modeling
Software deployment
Research
Operations
Knowledge base
Computer science
Software engineering
Programming languages
Python
Problem solving
Analytical skill
Communication
Collaboration
Algorithms
Large Language Models (LLMs)
Amazon Web Services
Google Cloud
Google Cloud Platform
Orchestration
Docker
Kubernetes
Scripting
Adobe AIR
Terraform
Ansible
Puppet
Snow flake schema
Cloud computing
Data
Machine Learning (ML)
Amazon SageMaker
Databricks
Version control
GitLab
GitHub
Microsoft Azure
DevOps
Project management
Recruiting
Business requirements

Job Details

Who We Are

Join a team that puts its People First! As a member of First American's family of companies, DataTrace is the nation's largest provider of title and tax data, analytics and title automation for title companies nationwide. Our leading technology allows quick access to title history information, property tax assessment and payment data, document images, and property files in major metropolitan areas across the United States. Since 1889, First American (NYSE: FAF) has held an unwavering belief in its people. They are passionate about what they do, and we are equally passionate about fostering an environment where all feel welcome, supported, and empowered to be innovative and reach their full potential. Our inclusive, people-first culture has earned our company numerous accolades, including being named to the Fortune 100 Best Companies to Work For list for nine consecutive years. We have also earned awards as a best place to work for women, diversity and LGBTQ+ employees, and have been included on more than 50 regional best places to work lists. First American will always strive to be a great place to work, for all. For more information, please visit ;br>
What We Do

Responsible for building and implementing deep learning-based transformer-based machine learning models in the areas of Natural Language processing (NLP) and Computer Vision (CV). Build and manage the infrastructure on cloud to deploy Machine Learning models in production in conformance with organization's security and compliance needs. Experience in fine tuning Large Language Models (LLM's) to task specific data sets. Deploy LLM and deep learning models in production and optimize real time inference on millions of predictions daily. This role can focus on R&D and/or Engineering responsibilities. R&D Role: Responsible for ML Operations with expertise in fast serving inference, ML flow, research, and development (R&D), and a strong focus on best practices in ML development and operations. Develop and maintain robust and efficient ML infrastructure, ensuring smooth ML flow from development to production, drive innovative R&D initiatives, and implement industry-leading best practices. Monitor and address model drift to ensure model performance and accuracy over time. Drive R&D initiatives to explore and implement innovative ML operations techniques, deployment technologies, and monitoring frameworks. Ensure efficient data pipelines and data availability for ML model serving and monitoring. Engineering Role: Build and manage the infrastructure on cloud (Azure or Google Cloud Platform or Databricks) to deploy Machine Learning models in production in conformance with organization's security and compliance needs. Experience in Infrastructure as Code (IaC) automation and a strong background in software engineering and machine learning, as well as experience building and maintaining large-scale machine learning models in production. Implement and maintain model monitoring tools and processes to track key metrics, generate alerts, and facilitate proactive model maintenance. Work closely with cross-functional teams to identify and address infrastructure bottlenecks, optimize resource allocation, and improve scalability of ML systems.
HOW YOU'LL CONTRIBUTE
  • Develop and optimize ML infrastructure for fast serving of machine learning models in production environments, ensuring low-latency and high-throughput inference capabilities.
  • Implement and maintain efficient ML flow processes, including model versioning, deployment, and monitoring to enable seamless transition from development to production.
  • Collaborate with cross functional teams, data scientists, and other engineering disciplines to deploy ML models, ensure code quality, reproducibility, adherence to best practices in ML development, smooth integration with existing production systems, and create efficient data pipelines and data availability for ML modeling.
  • Monitor and analyze model performance and accuracy over time, detecting and addressing model drift to maintain reliable and up-to-date ML systems.
  • Stay up to date with the latest advancements in ML operations, deployment technologies, and monitoring frameworks through continuous learning and experimentation. Research, adopt, and promote best practices to enhance the efficiency and effectiveness of ML infrastructure.
  • Document processes, best practices, and lessons learned to facilitate efficient ML operations and contribute to department/company knowledge base.
  • Other duties as assigned.
  • Required to perform duties outside of normal work hours based on business needs.
  • Other duties as assigned

WHAT YOU'LL BRING

Required Education, Experience, Certification/Licensure
  • Bachelor's degree in computer science, software engineering, or a related field
  • Advanced degree preferred.
  • 2-5 years of related work experience in building machine learning platform solutions

KNOWLEDGE, SKILLS, AND ABILITIES (KSAs)
  • Strong knowledge of software engineering principles and experience with programming languages such as Python.
  • Strong problem-solving and analytical skills, with the ability to diagnose and address performance bottlenecks in ML systems.
  • Excellent communication and collaboration skills to work effectively on cross-functional teams, and document processes and best practices.
  • Strong understanding of ML models and algorithms in the areas of Large Language Models
  • Experience with cloud computing platforms, such as AWS, Google Cloud Platform, or Azure
  • Familiarity with containerization and orchestration tools (e.g., Docker, Kubernetes)
  • Experience with IaC automation tools and scripts (e.g.,ML Flow, Air Flow, Terraform, Ansible, Puppet, etc.)
  • Experience with Snowflake and cloud-based data pipelines.
  • Experience with MLaaS platforms such as Azure ML, AWS Sagemaker and Databricks
  • Proficient in version control and DevOps tools such as GitLab/GitHub/Azure DevOps
  • Strong organizational or project management skills

Pay Range: $ $109,700 - $146,200 Annually

This hiring range is a reasonable estimate of the base pay range for this position at the time of posting. Pay is based on a number of factors which may include job-related knowledge, skills, experience, business requirements and geographic location.

What We Offer

By choice, we don't simply accept individuality - we embrace it, we support it, and we thrive on it! Our People First Culture celebrates diversity, equity and inclusion not simply because it's the right thing to do, but also because it's the key to our success. We are proud to foster an authentic and inclusive workplace For All. You are free and encouraged to bring your entire, unique self to work. First American is an equal opportunity employer in every sense of the term.

Based on eligibility, First American offers a comprehensive benefits package including medical, dental, vision, 401k, PTO/paid sick leave and other great benefits like an employee stock purchase plan.
Employers have access to artificial intelligence language tools (“AI”) that help generate and enhance job descriptions and AI may have been used to create this description. The position description has been reviewed for accuracy and Dice believes it to correctly reflect the job opportunity.