Machine Learning Engineer - Sr. Software Engineer I

Job not on LinkedIn

August 12

Apply Now
Logo of Chartbeat

Chartbeat

Media • Analytics • SaaS

Chartbeat is a company that provides powerful software solutions for media companies, enabling them to optimize content, grow loyal audiences, and enhance strategies through insightful analytics. The company's tools, such as Chartbeat for Publishing and Datastream, offer real-time data and insights, allowing editorial and marketing teams to make informed decisions rapidly. Chartbeat is trusted by thousands of content teams globally, providing real-time monitoring and analytics to improve engagement and usability. The platform is especially beneficial for newsrooms, editorial brands, and marketing needs, helping to consistently optimize content strategy and execution.

51 - 200 employees

Founded 2009

📱 Media

☁️ SaaS

💰 $7M Venture Round on 2018-07

📋 Description

• Tubular and Lineup have partnered with Chartbeat to help you grow reach and revenue for your content. • Chartbeat’s (www.chartbeat.com) mission is to help content creators around the world better connect with their audiences. • In 2023, Chartbeat joined forces with Tubular, the leader in global social video intelligence and measurement, and Lineup Systems, the leading global provider of media sales technology. Together, we’re expanding the ecosystem of insights we provide to enterprise content creators who are developing audiences and revenue streams across channels. We now serve more than 1,000 brands globally, including The New York Times, the BBC, ESPN, Gannett, Vox, BuzzFeed, Paramount, WB, Mediahuis, Hearst, McClatchy, and GQ. • You’ll be joining a diverse group of focused, hard-working people who are passionate about doing work that’s challenging and fun—and who strive to maintain a healthy work/life balance. • The Team: We are passionate about large-scale data systems, leveraging best-in-class technologies such as Snowflake, Kubernetes, Kafka, and Python. Machine Learning is a vital part of Chartbeat’s Data Engineering organization, focused on curating, enriching, and modeling data to power intelligent features, drive product discovery, and apply Large Language Models (LLMs) to real-world applications and strategic business decisions. • Responsibilities: As a Machine Learning Engineer at Chartbeat, you will: • Contribute to the design, development, and deployment of machine learning systems at scale • Collaborate with product managers and cross-functional engineering teams to deliver ML and generative AI powered features • Explore, Experiment and Prototype upcoming generative AI technologies to solve complex business challenges • Help define and drive the technical roadmap for ML and AI initiatives • Ensure models are explainable, maintainable, and effectively monitored in production • Contribute to architectural decisions and long-term planning for ML infrastructure • Participate in the engineering on-call rotation to maintain the reliability and performance of production systems • About You: 5+ years working as a machine learning engineer, ideally within a B2B SaaS environment • Strong Python proficiency • Proficiency with advanced SQL querying and knowledge of common data warehouse environments, such as Snowflake, or similar • Experience working with modern ML and data tooling (Such as PyTorch, TensorFlow, Spark and MLFlow) • Experience implementing and scaling LLMs or foundation models in production environments is a plus • Experience working with data pipelines that support multi tenant usages with different databases (such as Snowflake/BigQuery etc) for large, high-scale applications • Theoretical knowledge of statistical and machine learning algorithms, as evidenced by an undergraduate or graduate degree in a mathematics, computer science, or engineering-related discipline • Compensation and Benefits: We are proud to offer our team members a competitive compensation plan that includes: • The compensation range for this position is $170,000 - $185,000 • Diversity, Equity, and Inclusion Statement • Equal Opportunity Employment Statement • Chartbeat's CCPA disclosure notice can be found here.

🎯 Requirements

• 5+ years working as a machine learning engineer, ideally within a B2B SaaS environment • Strong Python proficiency • Proficiency with advanced SQL querying and knowledge of common data warehouse environments, such as Snowflake, or similar • Experience working with modern ML and data tooling (Such as PyTorch, TensorFlow, Spark and MLFlow) • Experience implementing and scaling LLMs or foundation models in production environments is a plus • Experience working with data pipelines that support multi tenant usages with different databases (such as Snowflake/BigQuery etc) for large, high-scale applications • Theoretical knowledge of statistical and machine learning algorithms, as evidenced by an undergraduate or graduate degree in a mathematics, computer science, or engineering-related discipline

🏖️ Benefits

• Comprehensive Health, Dental, and Vision Insurance • 401K with company match (100% of the first 3% and 50% of the next 2%) • Fully Paid Parental Leave - 18 weeks for birthing parents, 12 weeks for non-birthing parents • Phone and internet stipend • Wellness, learning, and coworking reimbursements • Flexible work hours • Unlimited PTO • 11 paid holidays and December holiday closure • Company-wide outings • The compensation range for this position is $170,000 - $185,000

Apply Now

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