Scribd, Inc.
About the Company
At Scribd (pronounced “scribbed”), our mission is to spark human curiosity. Join our team as we create a world of stories and knowledge, democratize the exchange of ideas and information, and empower collective expertise through our four products: Everand, Scribd, Slideshare, and Fable. We support a culture where employees can be real and bold; where we debate, commit, and embrace plot twists; and where every employee is empowered to take action in pursuit of our customer‑centric goals.
About the Team The Search team powers personalized discovery across Scribd’s products, delivering relevant and engaging suggestions to millions of users. We operate at the intersection of large‑scale data, cutting‑edge machine learning, and product innovation—collaborating across brands and platforms to enhance user experiences in reading, listening, and learning. Our team blends frontend, backend, and ML engineers who partner closely with product managers, data scientists, and analysts.
About the Role We’re looking for a Senior Machine Learning Engineer to lead the design, architecture, and optimization of high‑impact ML discovery features that serve millions of users in near real‑time. You’ll work across the entire lifecycle—from data ingestion to model training, deployment, and monitoring—with a focus on creating fast, reliable, and cost‑efficient pipelines.
Lead complex, cross‑team projects from conception to production deployment.
Drive technical direction for end‑to‑end, production‑grade ML systems for advanced search capabilities and document understanding.
Develop and operate services that power high‑traffic pipelines for content discovery and knowledge synthesis.
Run large‑scale A/B and multivariate experiments to validate models and feature improvements.
Mentor other engineers and establish best practices for building scalable, reliable ML systems.
Tech Stack
Languages: Python, Golang, Scala, Ruby on Rails
Orchestration & Pipelines: Airflow, Databricks, Spark
ML & AI: AWS SageMaker, embedding‑based retrieval (Weaviate), feature store, model registry, model serving platforms (Weights & Biases), LLM providers such as OpenAI, Anthropic, Gemini, etc.
APIs & Integration: HTTP APIs, gRPC
Infrastructure & Cloud: AWS (Lambda, ECS, EKS, SQS, ElastiCache, CloudWatch), Datadog, Terraform
Key Responsibilities
Train, evaluate, and deploy ML models (including generative models) to production using Scribd’s internal platform and industry‑standard frameworks.
Collaborate with engineering and analytics teams to build large‑scale ingestion, transformation, and validation pipelines on Databricks.
Optimize systems for performance, scalability, and reliability across massive datasets and high‑throughput services.
Design and run A/B and N‑way experiments to measure the impact of model and feature changes.
Partner with product managers, data scientists, and analysts to identify opportunities, define requirements, and deliver solutions that solve real user problems.
Requirements
6+ years of experience as a professional ML engineer or software engineer, with a proven track record of delivering production ML systems at scale.
Proficiency in at least one key programming language (preferably Python or Golang; Scala or Ruby also considered).
Expertise in designing and architecting large‑scale ML pipelines and distributed systems.
Deep experience with distributed data processing frameworks (Spark, Databricks, or similar).
Strong cloud expertise (preferably GCP; also AWS and/or Azure) and experience with deployment platforms (ECS, EKS, Lambda).
Experience with embedding‑based retrieval, large language models, advanced information retrieval and ranking systems.
Experience working with search systems such as query parsing, query intent classification, BM25, reranking, etc.
Proven ability to optimize system performance and make informed trade‑offs in ML model and system design.
Experience leading technical projects and mentoring engineers.
Bachelor’s or Master’s degree in Computer Science or equivalent professional experience.
Salary Range San Francisco (US): $157,500 – $230,000. Outside California (US): $129,500 – $220,000. Canada: $165,000 CAD – $218,000 CAD. The range is for the level at which this job is scoped; a higher or lower level may apply a different pay range. This position is also eligible for competitive equity ownership and a comprehensive benefits package.
Benefits, Perks, and Well‑being
Health, dental, vision coverage (100% covered for employees)
12 weeks paid parental leave
Short‑term/long‑term disability plans
401(k)/RSP matching
Onboarding stipend for home‑office peripherals and accessories
Learning & development allowance and programs
Quarterly stipend for wellness, Wi‑Fi, etc.
Mental‑health support and resources
Free subscription to Scribd’s suite of products
Referral bonuses
Book benefit
Sabbaticals
Company‑wide events
Team engagement budgets
Vacation & personal days
Paid holidays (including winter break)
Flexible sick time
Volunteer day
Employee resource groups and inclusive programs
Free access to AI tools to boost productivity and innovation
Location Eligibility Eligible employees must reside in or near one of the following cities (or surrounding metro areas):
United States: Atlanta, Austin, Boston, Dallas, Denver, Chicago, Houston, Jacksonville, Los Angeles, Miami, New York City, Phoenix, Portland, Sacramento, Salt Lake City, San Diego, San Francisco, Seattle, Washington D.C.
Canada: Ottawa, Toronto, Vancouver.
Mexico: Mexico City.
Workplace Flexibility Scribd Flex allows employees, in partnership with their manager, to choose a daily work style that best suits their individual needs. We prioritize intentional in‑person moments to build collaboration, culture, and connection, and occasional in‑person attendance is required for all employees.
Equal Employment Opportunity Scribd is committed to equal employment opportunity regardless of race, color, religion, national origin, gender, sexual orientation, age, marital status, veteran status, disability status, or any other characteristic protected by law. We encourage people of all backgrounds to apply, believing that a diversity of perspectives and experiences creates the foundation for the best ideas. Come join us in building something meaningful.
#J-18808-Ljbffr
About the Team The Search team powers personalized discovery across Scribd’s products, delivering relevant and engaging suggestions to millions of users. We operate at the intersection of large‑scale data, cutting‑edge machine learning, and product innovation—collaborating across brands and platforms to enhance user experiences in reading, listening, and learning. Our team blends frontend, backend, and ML engineers who partner closely with product managers, data scientists, and analysts.
About the Role We’re looking for a Senior Machine Learning Engineer to lead the design, architecture, and optimization of high‑impact ML discovery features that serve millions of users in near real‑time. You’ll work across the entire lifecycle—from data ingestion to model training, deployment, and monitoring—with a focus on creating fast, reliable, and cost‑efficient pipelines.
Lead complex, cross‑team projects from conception to production deployment.
Drive technical direction for end‑to‑end, production‑grade ML systems for advanced search capabilities and document understanding.
Develop and operate services that power high‑traffic pipelines for content discovery and knowledge synthesis.
Run large‑scale A/B and multivariate experiments to validate models and feature improvements.
Mentor other engineers and establish best practices for building scalable, reliable ML systems.
Tech Stack
Languages: Python, Golang, Scala, Ruby on Rails
Orchestration & Pipelines: Airflow, Databricks, Spark
ML & AI: AWS SageMaker, embedding‑based retrieval (Weaviate), feature store, model registry, model serving platforms (Weights & Biases), LLM providers such as OpenAI, Anthropic, Gemini, etc.
APIs & Integration: HTTP APIs, gRPC
Infrastructure & Cloud: AWS (Lambda, ECS, EKS, SQS, ElastiCache, CloudWatch), Datadog, Terraform
Key Responsibilities
Train, evaluate, and deploy ML models (including generative models) to production using Scribd’s internal platform and industry‑standard frameworks.
Collaborate with engineering and analytics teams to build large‑scale ingestion, transformation, and validation pipelines on Databricks.
Optimize systems for performance, scalability, and reliability across massive datasets and high‑throughput services.
Design and run A/B and N‑way experiments to measure the impact of model and feature changes.
Partner with product managers, data scientists, and analysts to identify opportunities, define requirements, and deliver solutions that solve real user problems.
Requirements
6+ years of experience as a professional ML engineer or software engineer, with a proven track record of delivering production ML systems at scale.
Proficiency in at least one key programming language (preferably Python or Golang; Scala or Ruby also considered).
Expertise in designing and architecting large‑scale ML pipelines and distributed systems.
Deep experience with distributed data processing frameworks (Spark, Databricks, or similar).
Strong cloud expertise (preferably GCP; also AWS and/or Azure) and experience with deployment platforms (ECS, EKS, Lambda).
Experience with embedding‑based retrieval, large language models, advanced information retrieval and ranking systems.
Experience working with search systems such as query parsing, query intent classification, BM25, reranking, etc.
Proven ability to optimize system performance and make informed trade‑offs in ML model and system design.
Experience leading technical projects and mentoring engineers.
Bachelor’s or Master’s degree in Computer Science or equivalent professional experience.
Salary Range San Francisco (US): $157,500 – $230,000. Outside California (US): $129,500 – $220,000. Canada: $165,000 CAD – $218,000 CAD. The range is for the level at which this job is scoped; a higher or lower level may apply a different pay range. This position is also eligible for competitive equity ownership and a comprehensive benefits package.
Benefits, Perks, and Well‑being
Health, dental, vision coverage (100% covered for employees)
12 weeks paid parental leave
Short‑term/long‑term disability plans
401(k)/RSP matching
Onboarding stipend for home‑office peripherals and accessories
Learning & development allowance and programs
Quarterly stipend for wellness, Wi‑Fi, etc.
Mental‑health support and resources
Free subscription to Scribd’s suite of products
Referral bonuses
Book benefit
Sabbaticals
Company‑wide events
Team engagement budgets
Vacation & personal days
Paid holidays (including winter break)
Flexible sick time
Volunteer day
Employee resource groups and inclusive programs
Free access to AI tools to boost productivity and innovation
Location Eligibility Eligible employees must reside in or near one of the following cities (or surrounding metro areas):
United States: Atlanta, Austin, Boston, Dallas, Denver, Chicago, Houston, Jacksonville, Los Angeles, Miami, New York City, Phoenix, Portland, Sacramento, Salt Lake City, San Diego, San Francisco, Seattle, Washington D.C.
Canada: Ottawa, Toronto, Vancouver.
Mexico: Mexico City.
Workplace Flexibility Scribd Flex allows employees, in partnership with their manager, to choose a daily work style that best suits their individual needs. We prioritize intentional in‑person moments to build collaboration, culture, and connection, and occasional in‑person attendance is required for all employees.
Equal Employment Opportunity Scribd is committed to equal employment opportunity regardless of race, color, religion, national origin, gender, sexual orientation, age, marital status, veteran status, disability status, or any other characteristic protected by law. We encourage people of all backgrounds to apply, believing that a diversity of perspectives and experiences creates the foundation for the best ideas. Come join us in building something meaningful.
#J-18808-Ljbffr