Job Closed
This listing is no longer active.
Abnormal AI is an equal opportunity employer. Qualified applicants will receive consideration for employment without regard to race, color, religion, sex, national origin, disability, protected veteran status or other characteristics protected by law.
Machine Learning Engineer II
Location
United States
Posted
129 days ago
Salary
0
Seniority
Mid Level
Job Description
Machine Learning Engineer II
Abnormal
This description is a summary of our understanding of the job description. Click on 'Apply' button to find out more. Role Description Abnormal AI is looking for a Machine Learning Engineer to join the Message Detection - Attack Detection team. At Abnormal, we protect our customers against nefarious adversaries who are constantly evolving their techniques and tactics to outwit and undermine the traditional approaches to Security. The Attack Detection team plays the central role of building an extremely high recall Detection Engine that can operate on hundreds of millions of messages at milliseconds latency. The team’s mission statement is to provide world-class detector efficacy to tackle the changing attack landscape using a combination of generalizable and auto-trained models as well as specific detectors for high-value attack categories. - Design and implement systems that combine rules, models, feature engineering, and business and product inputs into an email detection product, with senior engineer guidance. - Understand features that distinguish safe emails from email attacks, and how our model stack enables us to catch them. - Identify and recommend new features groups or ML model approaches that can significantly improve detection efficacy for a product. - Work with infrastructure & systems engineers to productionize signals to feed into the detection system. - Write code with testability, readability, edge cases, and errors in mind. - Train models on well-defined datasets to improve model efficacy on specialized attacks. - Actively monitor and improve FN rates and efficacy rates for our message detection product attack categories, through feature engineering, rules, and ML modeling. - Analyze FN and FP datasets to categorize capability gaps and recommend short-term feature and rule ideas to improve our detection efficacy. - Contribute in other areas of the stack: building and debugging data pipelines, or presenting results back to customers in our tools when the occasion arises. Qualifications - 3+ years experience designing, building and deploying machine learning applications in one of the domains of text understanding, entity recognition, NLP experience, computer vision, recommendation systems, or search. - 1+ years of experience with writing stable and production level pipelines for model training and evaluation leading to reproducible models and metrics. - Experience with data analytics and wielding SQL+pandas+spark framework to both build data and metric generation pipelines, and answer critical questions about system efficacy or counterfactual treatments. - Ability to understand business requirements thoroughly and bias toward designing a simplest yet generalizable ML model/system that can accomplish the goal. - Uses a systematic approach to debug both data and system issues within ML/heuristics models. - Fluent with Python and machine learning toolkits like numpy, sklearn, pytorch and tensorflow. - Effective software engineering skills who can find answers quickly from code base and writes structured, readable, well tested and efficient code. - BS degree in Computer Science, Applied Sciences, Information Systems or other related engineering field. Requirements - MS degree in Computer Science, Electrical Engineering or other related engineering field (Nice to Have). - Experience with big data, statistics and Machine Learning (Nice to Have). - Experience with algorithms and optimization (Nice to Have). Benefits - This position is not focused on optimizing existing machine learning models. - This is not a research-oriented role that's two-steps removed from the product or customer. - This is not a statistics/data science meets ML role.
Job Requirements
- 3+ years experience designing, building and deploying machine learning applications in one of the domains of text understanding, entity recognition, NLP experience, computer vision, recommendation systems, or search.
- 1+ years of experience with writing stable and production level pipelines for model training and evaluation leading to reproducible models and metrics.
- Experience with data analytics and wielding SQL+pandas+spark framework to both build data and metric generation pipelines, and answer critical questions about system efficacy or counterfactual treatments.
- Ability to understand business requirements thoroughly and bias toward designing a simplest yet generalizable ML model/system that can accomplish the goal.
- Uses a systematic approach to debug both data and system issues within ML/heuristics models.
- Fluent with Python and machine learning toolkits like numpy, sklearn, pytorch and tensorflow.
- Effective software engineering skills who can find answers quickly from code base and writes structured, readable, well tested and efficient code.
- BS degree in Computer Science, Applied Sciences, Information Systems or other related engineering field.
- MS degree in Computer Science, Electrical Engineering or other related engineering field (Nice to Have).
- Experience with big data, statistics and Machine Learning (Nice to Have).
- Experience with algorithms and optimization (Nice to Have).
Benefits
- This position is not focused on optimizing existing machine learning models.
- This is not a research-oriented role that's two-steps removed from the product or customer.
- This is not a statistics/data science meets ML role.
Related Guides
Related Job Pages
More Machine Learning Engineer Jobs
Machine Learning Scientist L4/L5 – Multi-modal Algorithms for Games
NetflixDescribed as the world's top internet television network, Netflix is a publicly-traded entertainment company offering video-on-demand and streaming media. As an
• Design and own the fine-tuning and alignment of LLMs and VLMs in PyTorch • Lead efforts in model compression—specifically knowledge distillation, structural pruning, and architectural refinement • Develop and optimize Diffusion-based models for Image, Video, and 3D generation • Strategically evaluate and integrate SOTA open-source and commercial models • Optimize and integrate audio (ASR/TTS), language, and vision models for cross-modal reasoning and interaction
Machine Learning Engineer II – P2P – Personalization
SpotifyPassionate music fans. Innovative tech pros. Perfect harmony. Join our band.
• Design, build, evaluate, and ship LLM based solutions that will enable our users to have more adaptive control of their content • Collaborate with cross functional teams spanning user research, design, data science, product management, and engineering to build new product features that advance our mission to connect artists and fans in personalized and useful ways • Prototype new approaches and productionize solutions at scale for our hundreds of millions of active users • Promote and role-model best practices of ML systems development, testing, evaluation, etc., both inside the team as well as throughout the organization • Be part of an active group of machine learning practitioners
Senior Machine Learning Engineer
KnowmadicsDominate the Electronic Domain | Decision and Spectrum Dominance for the Modern Mission
• Lead the development + implementation of real-time feature detection and anomaly detection models • Generate data characteristic requirements for real-time data processing pipelines • Prepare technical documentation, reports, and specifications • Collaborate with cross-functional teams including project managers, technicians, and other engineers • Perform testing, troubleshooting, and quality assurance on systems or products • Ensure compliance with safety regulations, industry standards, and company policies
Senior Machine Learning Engineer
TebraWe empower independent practices to bring modernized care to patients everywhere.
• Build, deploy, and optimize the machine learning services that power the Tebra platform • Write high-quality, production-grade software for data ingestion, feature extraction, and model inference • Implement robust CI/CD pipelines, automated testing, and comprehensive logging for deployed models • Construct and maintain specific data pipelines for training and inference • Develop reusable software modules and utilities to streamline the development process • Translate business requirements into technical specifications • Monitor the daily performance of production models and debug incidents



