Solid grasp of experimental design -- A/B testing, randomization, power analysis, and the ... Direct exposure to TV or digital viewership data -- ACR signals, STB data, viewership panels, or ...
Quick apply
Solid grasp of experimental design -- A/B testing, randomization, power analysis, and the ... Direct exposure to TV or digital viewership data -- ACR signals, STB data, viewership panels, or ...
Quick apply
Solid grasp of experimental design -- A/B testing, randomization, power analysis, and the ... Direct exposure to TV or digital viewership data -- ACR signals, STB data, viewership panels, or ...
$42.23 - $42.68
3% of jobs
$42.68 - $43.13
7% of jobs
$43.13 - $43.59
11% of jobs
$43.76 is the 25th percentile. Wages below this are outliers.
$43.59 - $44.04
11% of jobs
$44.04 - $44.49
11% of jobs
$44.49 - $44.95
5% of jobs
The median wage is $45.06 / hr.
$44.95 - $45.40
11% of jobs
$45.40 - $45.85
11% of jobs
$46.13 is the 75th percentile. Wages above this are outliers.
$45.85 - $46.30
11% of jobs
$46.30 - $46.76
11% of jobs
$46.76 - $47.21
11% of jobs
$42
$45
$47
An STB (Set-Top Box) Testing job involves evaluating the functionality, performance, and reliability of set-top boxes used for digital TV and streaming services. Testers verify hardware and software components, ensuring seamless video playback, network connectivity, and compatibility with different broadcasting standards. They conduct functional, regression, and performance tests to identify and report defects. The role often requires knowledge of testing tools, automation, and debugging techniques to improve device quality before release.
As an STB Testing professional, your daily tasks usually involve developing and executing test cases, analyzing test results, and identifying issues in both the software and hardware components of set-top boxes. You might collaborate closely with developers, hardware engineers, and product managers to troubleshoot problems and ensure the device meets quality standards. Reporting defects, preparing test documentation, and participating in regression and acceptance testing are also common responsibilities. This work is often project-based and can involve working in both lab environments and, occasionally, on-site with service providers or clients.
To thrive as an STB (Set-Top Box) Testing professional, you need strong knowledge of digital television standards, software testing methodologies, and QA processes, often with a background in electronics or computer science. Familiarity with test automation tools, network analyzers, and defect tracking systems like JIRA is commonly required, as well as experience working with various operating systems and middleware. Excellent problem-solving skills, attention to detail, and clear communication are valuable soft skills in this role. These abilities ensure the thorough validation and reliability of set-top box products before they reach consumers, supporting a high-quality user experience.
Full-time
Posted 14 days ago
ABOUT THE ROLE
We are looking for a hands-on Data Scientist to own and deliver complex measurement science and modeling work at the core of our measurement and audience sciences products.
The role requires a deep, first-principles understanding of data science and machine learning — not just the ability to apply libraries, but the ability to reason clearly about model behavior, articulate trade-offs between approaches, and make defensible methodological decisions under ambiguity. This is emphatically a coding role — you will spend the majority of your time writing production-quality Python, building and evaluating models on large-scale viewership and web data, and delivering end-to-end ML solutions.
You will work closely with Data Engineering, Product, and go-to-market teams.
Write and own production-quality Python code end-to-end — well-structured, tested, documented, and built to last; PySpark proficiency is essential for working with Samba's billion-row viewership datasets
Design, build, and deploy measurement models and statistical frameworks that power Samba’s campaign measurement, reach/frequency estimation, and cross-platform attribution products
Apply the right statistical and ML technique to the right problem — drawing from hierarchical models, Bayesian inference, gradient boosting, regularized regression, causal ML, and probabilistic record linkage — and clearly articulate the reasoning behind your choices
Build and evaluate multi-touch and multi-channel attribution models; apply Causal ML methods — counterfactual modeling, meta-learners (S-learner, T-learner, X-learner), and heterogeneous treatment effect estimation — to advertising and viewership measurement problems
Partner with Data Engineering to define data requirements, validate pipelines, and ensure model inputs are reliable, scalable, and production-ready
Lead technical design reviews and contribute meaningfully to architecture decisions across the Data Science team
Mentor junior Data Scientists through code review, pairing, and structured technical feedback — raising the team's technical floor
Communicate measurement methodologies and findings clearly to technical and non-technical audiences, including senior leadership and external clients
5-7 years of professional data science experience — hands-on, delivery-focused, and measurable in shipped models and production systems
Expert-level Python — clean, modular, testable, production-ready code is your standard, not your aspiration
Advanced PySpark and Databricks — comfortable building and optimizing data pipelines and ML workflows on billion-row datasets
Deep, first-principles command of statistics and ML — you can explain from the ground up how these models work and you apply this understanding to make better modeling decisions
Solid grasp of experimental design — A/B testing, randomization, power analysis, and the conditions under which observational causal inference is appropriate
Fluent in the full ML lifecycle: feature engineering, model evaluation, deployment pipelines, drift monitoring, and iterative improvement in production
Hands-on experience with uplift modeling, synthetic control, difference-in-differences, or propensity-based approaches applied to advertising or media outcomes
Strong ownership mindset — you drive projects independently and are comfortable owning your models from data exploration through production delivery, with minimal hand-holding.
Clear communicator — able to translate statistical reasoning and model behavior into language that drives decisions with product, engineering, and leadership
Experience with multi-touch attribution (MTA) or multi-channel attribution modeling — understanding of the limitations of rule-based approaches and the methodological trade-offs of data-driven alternatives
Hands-on experience with Causal ML methods — counterfactual modeling, meta-learners, and heterogeneous treatment effect estimation — applied to advertising or media measurement outcomes
Direct exposure to TV or digital viewership data — ACR signals, STB data, viewership panels, or cross-platform measurement (linear + CTV/OTT)
Familiarity with the measurement
t vendor landscape (Nielsen, Comscore, VideoAmp, iSpot) and industry standards (MRC, GRP/TRP frameworks)
Advanced degree (MS or PhD) in Statistics, Mathematics, Computer Science, or a related quantitative field — or equivalent depth demonstrated through work
We may use artificial intelligence (AI) tools to support parts of the hiring process, such as reviewing applications, analyzing resumes, or assessing responses. These tools assist our recruitment team but do not replace human judgment. Final hiring decisions are ultimately made by humans. If you would like more information about how your data is processed, please contact us.
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