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Datum Jobs (NOW HIRING)

Data Ideology At DI, we provide Data & Analytics expertise to drive measurable business outcomes, often solving complex business problems for our clients. Our data analytics advisory services enable ...

PitchBook's Data Analyst works with private markets transaction data to develop meaningful insights into a fascinating industry and power our industry leading private equity, M&A, venture capital ...

New

Data Ideology At DI, we provide Data & Analytics expertise to drive measurable business outcomes, often solving complex business problems for our clients. Our data analytics advisory services enable ...

Datum Technologies Group is seeking a Field Engineer to provide operational support and manage IT infrastructure requests. The role involves diagnosing technical problems, providing customer support ...

Data Engineer

Dallas, TX

$113.70K - $136.60K/yr

Req ID: 367206 NTT DATA strives to hire exceptional, innovative and passionate individuals who want to grow with us. If you want to be part of an inclusive, adaptable, and forward-thinking ...

Sr. Data Engineer

Seattle, WA · On-site

$130.30K - $156.50K/yr

Expert at building unified data technologies to support advanced and automated business analytics * Design, develop, document, and maintain database and reporting structures used to compile insights

About Vantage Data Centers Vantage Data Centers powers, cools, protects and connects the technology of the world's well-known hyperscalers, cloud providers and large enterprises. Developing and ...

My name is Zach and I'm a Recruiter at Pioneer Data Systems, Inc . We have an immediate requirement for a Data Analyst (Master Data / MS Excel) , PISCATAWAY, NJ. If you are interested please call me ...

Req ID: 365630 NTT DATA strives to hire exceptional, innovative and passionate individuals who want to grow with us. If you want to be part of an inclusive, adaptable, and forward-thinking ...

Sr. Data Engineer (Snowflake)

Pittsburgh, PA · Remote

$117.20K - $140.70K/yr

Data Ideology At DI, we provide Data & Analytics expertise to drive measurable business outcomes, often solving complex business problems for our clients. Our data analytics advisory services enable ...

Data Analyst/Data Modeler:

Sacramento, CA · On-site

$58.50 - $75.75/hr

Performs business and systems analysis and documentation- Develops conceptual and dimensional data models for the enterprise data warehouse- Performs data modeling in relational and dimensional ...

Job Title DATA ENGINEER/DATA ANALYST Location Huntsville, AL US (Primary) Category Engineering Job Type Full-Time Career Level Experienced (Non-Manager) Education High School / GED Security Clearance ...

Data Analyst (Data Governance)

Chicago, IL · Remote

$78.80K - $145.13K/yr

As part of the Data Enablement Team, we are seeking a skilled Data Analyst to play a critical role in ensuring the integrity, quality, and seamless migration of data throughout this transformation.

They are seeking a Data Analyst for their Data Ops team, responsible for delivering scalable data and reporting solutions to enhance decision-making across the firm. This role involves partnering ...

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Datum information

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How much do datum jobs pay per hour?

As of May 31, 2026, the average hourly pay for datum in the United States is $26.34, according to ZipRecruiter salary data. Most workers in this role earn between $15.14 and $30.77 per hour, depending on experience, location, and employer.

What are the key skills and qualifications needed to thrive as a Data Analyst, and why are they important?

To thrive as a Data Analyst, you need strong analytical skills, proficiency in statistics, and a relevant degree in fields like mathematics, computer science, or economics. Familiarity with data analysis tools such as SQL, Excel, Python, and visualization platforms like Tableau or Power BI is typically required. Critical thinking, attention to detail, and effective communication are key soft skills that help in interpreting and presenting data-driven insights. These skills are essential for transforming raw data into actionable information that supports business decision-making.

What are some common challenges faced by data analysts when working with large datasets, and how can they be addressed?

Data analysts often encounter challenges such as data quality issues, inconsistent formats, and processing delays when handling large datasets. Addressing these requires strong data cleaning skills, familiarity with data processing tools like SQL or Python, and close collaboration with data engineers to optimize data pipelines. Proactively communicating data requirements and validation steps with team members can also help ensure data integrity and streamline analysis. Continuous learning about new data management technologies can further enhance efficiency in this role.

What are datum jobs?

Datum jobs typically refer to roles related to managing, processing, and analyzing data, often within fields like data science, data entry, or database management. People in datum jobs work with large sets of information, ensuring accuracy, organization, and accessibility. These roles are essential across many industries, including technology, healthcare, finance, and research. Common positions include data analyst, data entry clerk, and data manager. Having strong analytical skills and attention to detail is crucial for success in datum jobs.

What is the difference between Datum vs Data Analyst?

AspectDatumData Analyst
Required CredentialsTypically minimal; may include basic data handling skillsOften requires a degree in data science, statistics, or related fields
Work EnvironmentData collection, entry, or basic data managementAnalyzing data sets, creating reports, and providing insights
Industry UsageUsed in contexts where individual data points are referencedCommonly employed in business, finance, healthcare for data analysis

In summary, a Datum refers to a single data point, while a Data Analyst works with multiple data points to interpret and generate insights. Understanding this difference helps clarify roles in data management and analysis.

More about Datum jobs
What cities are hiring for Datum jobs? Cities with the most Datum job openings:
Infographic showing various Datum job openings in the United States as of May 2026, with employment types broken down into 1% Internship, 2% As Needed, 87% Full Time, 3% Part Time, 2% Contract, and 5% Nights. Highlights an 100% Physical job distribution, with an average salary of $54,791 per year, or $26.3 per hour.
Manager (Data Science with AI)

Manager (Data Science with AI)

Datum Software, Inc.

Raleigh, NC

Other

Posted 15 days ago


Job description

Job Details:

Job Title: Manager (Data Science with AI)

Duration: Full Time / Permanent Role

Location: Raleigh, NC || Hybrid

 

Job Description:

Typically requires:

  • 8+ years of relevant experience in data science, machine learning, or applied AI
  • 4+ years of leadership experience (direct or indirect team management)
  • We recognize that exceptional candidates may follow non-traditional paths and value demonstrated impact, technical depth, and leadership over strict credential requirements. Success in this role requires:
  • Leading through both technical expertise and organizational influence
  • Acting as a change agent, embedding best practices into workflows and systems
  • Driving both team development and strategic outcomes across a broad scope
  • Ability to select the right tools and technologies to solve business problems

Technical Proficiency

  • Proficient with Python, ML and LLM tooling such as Google ADK, LangChain, ML Frameworks (e.g. TensorFlow, PyTorch) and prompt tuning techniques.
  • Familiarity with vector databases, knowledge graphs, and hybrid retrieval architecture.
  • Strong experience working with structured and unstructured data at scale.
  • Ability to design and implement data pipelines and preparation workflows.
  • Experience integrating ML into complex, multi-stage processing systems
  • Working knowledge of containerization, CI/CD, RESTful API Design and model serving tools.
  • Cloud infrastructure experience on AWS (preferred), Azure, or Google Cloud Platform.
  • Familiarity with AI Coding Tools (e.g. GitHub CoPilot, Claude Code, OpenAI Codex)

 

Preferred Background

  • Graduate degree in Computer Science, AI, Machine Learning, or equivalent experience.
  • 8+ years of post-degree experience, with 4+ years in a data science or applied AI leadership role, with a focus on NLP/LLM systems.
  • Prior experience in legal tech, legal AI, or document-intensive domains is highly desirable.
  • Familiarity with ethical/legal considerations in deploying generative AI in professional settings.

Key Responsibilities: Scope & Impact

  • Set the vision and strategic priorities, acting as a recognized expert for Data Science
  • Lead and develop a team of data scientists and ML engineers, setting the cultural tone for the group
  • Drive applied research with a clear path to production, explicitly balancing innovation against real-world constraints including latency, cost, and reliability
  • Build and scale evaluation science capabilities within the team, including offline evaluation frameworks, automated benchmarking pipelines, and human-in-the-loop feedback systems to rigorously measure model quality and business impact
  • Champion hands-on rapid prototyping and iteration
  • Collaborate with other Data Science teams to maximize re-use of components and patterns, eliminating waste, duplication and unnecessary customization
  • Operate with broad scope, coordinating across multiple cross-functional teams, systems, and domains

 

Technical & Product Leadership:

  • Collaborate closely with other Data Science teams, to define and execute the AI roadmap across the content lifecycle, maximizing reuse in areas including:
  • Content collection (e.g. "web scraping”) and transformation
  • Metadata extraction, enrichment, and classification
  • Agentic workflows turning real-world events and legal content into legal intelligence
  • AI-powered downstream product capabilities
  • Design and deploy scalable, production-grade AI systems, including:
  • LLM-powered document understanding and generation
  • Agentic workflows balancing agent autonomy and efficiency with required structure and accuracy
  • Retrieval-augmented generation (RAG) pipelines
  • Hybrid ML + rules-based systems for structured content

Lead through execution and by example:

  • Actively writing code, not just delegating
  • Building and demoing working prototypes (e.g. by "vibe coding”)
  • Directly contributing to experiments and production models
  • Establish and scale best practices in Data Science, including:
  • Model development, evaluation, and monitoring
  • Prompt engineering and experimentation frameworks
  • Data preparation and feature engineering standards
  • Reusable components and platform capabilities
  • Partner closely with engineering, architecture, and product leaders to:
  • Integrate AI into large-scale distributed systems
  • Ensure performance, scalability, and reliability
  • Align technical solutions with business outcomes
  • Translate complex, ambiguous problems into clear project plans and executable solutions, and lead teams through delivery
  • Present tradeoffs, alternative approaches and options when faced with delivery constraints

 

Team & Operational Excellence:

  • Mentor and grow a multidisciplinary team of LLM-focused Data Scientists and ML Engineers.
  • Drive cross-functional collaboration with Legal SMEs, Data Engineers, Product Managers, and Design.
  • Establish best practices for evaluation, observability, and responsible use of generative AI.
  • Oversee development of infrastructure to support continuous delivery and monitoring of LLM systems in production environments.

Core Qualifications: Experience & Education

  • Advanced degree (Master''s or PhD) in Data Science, Computer Science, Statistics, or a related field strongly preferred, or equivalent practical experience
  • Bachelor''s degree in a relevant field with significant applied experience in data science, machine learning, or AI