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Abnormal Security

Detection Machine Learning Manager

Posted 19 Days Ago
Remote
Hiring Remotely in USA
214K-252K Annually
Senior level
Remote
Hiring Remotely in USA
214K-252K Annually
Senior level
Lead the Attack Detection team at Abnormal AI, focusing on developing high-recall machine learning detection engines and automating model retraining pipelines.
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About the Role

Abnormal AI is looking for a Machine Learning Engineering Manager to lead the 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. That’s what makes our novel behavioral-based approach so…Abnormal. Abnormal has constantly been named as one of the top cybersecurity startups and our behavioral AI system has helped us win various cybersecurity accolades resulting in being trusted to protect more than 8% of the Fortune 1000 ( and ever growing ).

In a landscape where a single successful attack can lead to financial losses of millions of dollars, 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 Attack Detection team’s mission statement is to provide world-class detector efficacy to tackle the ever changing adversarial attack landscape using a combination of generalizable and auto trained models as well as specific detectors for high value attack categories.

This team is solving a multi-layered detection problem, which involves modeling communication patterns to establish enterprise-wide baselines, incorporating these patterns as robust signals, and combining these signals with contextual information to create extremely precise systems. The team builds discriminative signals at various levels including message level (eg. presence of particular phrases), sender-level (eg.frequency of sender) and recipient level (eg.likelihood of receiving a safe message). These signals are then combined and utilized to train highly accurate model based as well as heuristic detectors. Additionally,  to continuously adapt to new unseen attacks, the team builds out different stages in our automated model retraining pipelines including data analytics and generation stages, modeling stages, production evaluation stages as well as automated deployment stages.

The EM will report to the Senior EM of the Message Detection Team, and will lead a team that is primarily composed of machine learning engineers. The EM will be responsible for managing the execution of the roadmap and deliverables while optimizing both human and system resource utilization.  The Engineering Manager’s success or failure impacts our ability to build and iterate on the detection decisioning system at an extremely high recall, enabling us to respond to current and future attacks.  Preventing such attacks which cause significant customer workflow disruption is the core of our business and that makes the success of this team, and its leader, so massively impactful.

What you will do 
  • Own the execution success of the quarterly roadmap for the Attack Detection team; engage continuously with the Tech Leads to help adjust and prioritize current roadmap items according to the team’s charter and company priorities.
  • Deliver on:
    • Extremely high recall detector engine in an adversarial environment using model based as well as heuristic detectors.
    • Automated model retraining pipelines based continuous ML deployment system to automatically ‘learn’ from new patterns.
    • Text based signal models to capture and model suspiciousness of email content in multiple languages.
  • Own both directly customer impacting metrics and system metrics and able to work with the team to proactively identify new attacks and repair degradations:
    • Recall ie False Negative metrics for our customer base across various attack types.
    • Overall attack and precision metrics for highly flagging generalized ML models.
    • Automation metrics for responses to customer specific requirements
  • Own the machine learning feature consumption layer for both message metadata/content and current/historical user behavior type of signals and and systems and processes to continuously incorporate new features types into existing and new ML models.
  • Drive processes to enable the team to deliver on projects that are set by TLs as part of the technical roadmap.
    • Manage the quarterly roadmap updates, project time estimates, weekly sprint planning, day-to-day standups
    • Identify risks on project delivery (technical, operational, dependency risks) and escalate to appropriate technical leads
    • Able to assess progress in a metrics-oriented manner
    • Provide continuous feedback
  • Responsible for mentoring and growing the engineers on the team by providing constructive feedback at regular intervals to help them successfully execute high impact projects.
  • Drive Stakeholder alignment : Collaborate with the platform and infrastructure initiatives on company wide initiatives to help increase efficiency, customer adoption and engineer effectiveness goals.
  • Drive stakeholder alignment: Proactively identify and collaborate with platform and infrastructure teams on company-wide initiatives including
 Must Haves 
  • 2+ years experience of managing data driven (ML) product teams running at large scale data ( 100M+ ) and ability to guide a team technically in this respect. 
  • 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.
  • 4+ years of hands-on experience in building and safely shipping backend heavy product  ML adjacent systems at high velocity.
  • Ability to understand business requirements thoroughly and bias toward guiding the team to build a simplest yet generalizable ML model / system that can accomplish the goal.
  • Metrics driven culture: Has led a team of engineers in building out systems and displayed the ability to define metrics of excellence and setup processes to continuously monitor and maintain high standards on metrics.
  • Be Customer obsessed: Worked with multiple stakeholders to gather requirements and then prioritize and balance against the team's roadmap.
  • Set High standards - sets high standards and expectations for project execution for themselves and the whole team.
Nice to Have 
  • Familiarity with cyber security industry
  • MS degree in Computer Science, Electrical Engineering or other related engineering field
  • Experience with hiring and retention of top talent

#LI-ML1

At Abnormal AI, certain roles are eligible for a bonus, restricted stock units (RSUs), and benefits. Individual compensation packages are based on factors unique to each candidate, including their skills, experience, qualifications and other job-related reasons. 

Base salary range:
$214,200$252,000 USD

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. For our EEO policy statement please click here. If you would like more information on your EEO rights under the law, please click here.

Top Skills

Computer Vision
Data Analytics
Machine Learning
Nlp
Recommendation Systems
Signal Processing

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