Data annotation and quality review * Exploratory data analysis and model fail state analysis ... Master's or Doctor of Philosophy degree in Computer Science, Applied Math, Statistics, or a ...
Data annotation and quality review * Exploratory data analysis and model fail state analysis ... Master's or Doctor of Philosophy degree in Computer Science, Applied Math, Statistics, or a ...
Data annotation and quality review * Exploratory data analysis and model fail state analysis ... Master's or Doctor of Philosophy degree in Computer Science, Applied Math, Statistics, or a ...
Data annotation and quality review * Exploratory data analysis and model fail state analysis ... Master's or Doctor of Philosophy degree in Computer Science, Applied Math, Statistics, or a ...
Mathematical Fundamentals: An intuitive grasp of linear algebra, optimization, and the first ... Hands-on experience building CV/spatial tooling or apps such as dataset browsers, annotation tools ...
Mathematical Fundamentals: An intuitive grasp of linear algebra, optimization, and the first ... Hands-on experience building CV/spatial tooling or apps such as dataset browsers, annotation tools ...
Annotation Math information
See Newark, NJ salary details
$23.5K - $30.4K
2% of jobs
$30.4K - $37.2K
9% of jobs
$37.2K - $44.1K
11% of jobs
$47.1K is the 25th percentile. Wages below this are outliers.
$44.1K - $50.9K
9% of jobs
$50.9K - $57.8K
13% of jobs
The median wage is $60K / yr.
$57.8K - $64.6K
22% of jobs
$70K is the 75th percentile. Wages above this are outliers.
$64.6K - $71.4K
13% of jobs
$71.4K - $78.3K
9% of jobs
$78.3K - $85.1K
6% of jobs
$85.1K - $92K
5% of jobs
$92K - $98.8K
2% of jobs
$23.5K
$61.5K
$98.8K
How much do annotation math jobs pay per year?
Does the FBI hire mathematicians?
What is the highest paid math job?
What is the difference between Annotation Math vs Data Annotator?
| Aspect | Annotation Math | Data Annotator |
|---|---|---|
| Required Credentials | Basic education, sometimes specialized training in annotation tools | High school diploma or equivalent, on-the-job training |
| Work Environment | Data labeling teams, tech companies, remote or onsite | Data labeling teams, tech companies, remote or onsite |
| Industry Usage | AI, machine learning, data science | AI, machine learning, data science |
| Common Search Intent | Understanding roles related to data annotation and math | Comparing data annotation jobs |
Annotation Math and Data Annotator roles both involve data labeling within AI and machine learning industries. Annotation Math may focus more on mathematical annotations, while Data Annotator generally covers broader data labeling tasks. Both roles often share similar work environments and required skills, making them closely related in the data annotation field.
What are Annotation Math jobs?
What are the key skills and qualifications needed to thrive as an Annotation Math Specialist, and why are they important?
How much does data annotation pay for math?
Is data annotation a good career?
What are some common challenges faced by professionals in Annotation Math roles, and how can they be addressed?
Job description
- Collect, analyze, and interpret small/large datasets to uncover meaningful insights to support the development of statistical methods / machine learning algorithms.
- Lead the design, training, and deployment of NLP and transformer-based models for financial surveillance and supervisory use cases (e.g., misconduct detection, market abuse, trade manipulation, insider communication).
- Development of machine learning models and other analytics following established workflows, while also looking for optimization and improvement opportunities
- Data annotation and quality review
- Exploratory data analysis and model fail state analysis
- Contribute to model governance, documentation, and explainability frameworks aligned with internal and regulatory AI standards.
- Client/prospect guidance in machine learning model and analytic fine-tuning/development processes
- Provide guidance to junior team members on model development and EDA
- Work with Product Manager(s) to intake project/product requirements and translate these to technical tasks within the team's tooling, technique and procedures
- Continued self-led personal development
- Strong understanding of financial markets, compliance, surveillance, supervision, or regulatory technology
- Experience with one or more data science and machine/deep learning frameworks and tooling, including scikit-learn, H2O, keras, pytorch, tensorflow, pandas, numpy, carot, tidyverse
- Command of data science and statistics principles (regression, Bayes, time series, clustering, P/R, AUROC, exploratory data analysis etc...)
- Strong knowledge of key programming concepts (e.g. split-apply-combine, data structures, object-oriented programming)
- Solid statistics knowledge (hypothesis testing, ANOVA, chi-square tests, etc...)
- Knowledge of NLP transfer learning, including word embedding models (gloVe, fastText, word2vec) and transformer models (Bert, SBert, HuggingFace, and GPT-x etc.)
- Experience with natural language processing toolkits like NLTK, spaCy, Nvidia NeMo
- Knowledge of microservices architecture and continuous delivery concepts in machine learning and related technologies such as helm, Docker and Kubernetes
- Familiarity with Deep Learning techniques for NLP.
- Familiarity with LLMs - using ollama & Langchain
- Excellent verbal and written skills
- Proven collaborator, thriving on teamwork
- Master's or Doctor of Philosophy degree in Computer Science, Applied Math, Statistics, or a scientific field
- Familiarity with cloud computing platforms (AWS, GCS, Azure)
- Experience with automated supervision/surveillance/compliance tools
About Smarsh
Sourced by ZipRecruiter
Industry
Software development
Company size
1,001 - 5,000 Employees
Headquarters location
Portland, OR, US
Year founded
2001