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Assistant Data Curation Jobs (NOW HIRING)

Support data curation and storage, including cloud-based data repositories * Assist with preparation and archiving of datasets in accordance with government data standards * Develop, test, and ...

AI Engineering Lead

Fort Lee, NJ · On-site

$104K - $137K/yr

... Assist, QA & Monitoring, and Conversational Analytics; drive adoption via docs and enablement. • Build fine-tuning pipelines (data curation, SFT, preference/reward optimization, safety tuning) and ...

Developing agentic AI workflows to support data curation, quality control, documentation, and ... Developing systems that assist with literature mining, data annotation, hypothesis generation, and ...

Data Scientist - Mapping

Foster City, CA · On-site

$176K - $240K/yr

Collaborate closely with machine learning engineers to define and refine data curation and model ... These tools assist our recruitment team but do not replace human judgment. Final hiring decisions ...

Collaborate closely with machine learning engineers to define and refine data curation and model ... These tools assist our recruitment team but do not replace human judgment. Final hiring decisions ...

Collaborate closely with machine learning engineers to define and refine data curation and model ... These tools assist our recruitment team but do not replace human judgment. Final hiring decisions ...

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Assistant Data Curation information

What is the difference between Assistant Data Curation vs Data Analyst?

AspectAssistant Data CurationData Analyst
Primary FocusOrganizing, cleaning, and maintaining data setsAnalyzing data to extract insights and support decision-making
Skills & CertificationsData management, basic SQL, attention to detailStatistical analysis, data visualization, SQL, Excel
Work EnvironmentData repositories, database systems, data teamsBusiness units, analytics teams, reporting platforms
Typical EmployerTech companies, research institutions, data-driven organizationsFinance, marketing, consulting firms, tech companies

Assistant Data Curation primarily involves preparing and maintaining data for analysis, focusing on data quality and organization. Data Analysts, on the other hand, interpret data to generate insights and support strategic decisions. While both roles require data management skills, Data Analysts typically have stronger analytical and statistical expertise. Understanding these differences helps job seekers identify the right role based on their skills and career goals.

More about Assistant Data Curation jobs
What cities are hiring for Assistant Data Curation jobs? Cities with the most Assistant Data Curation job openings:
What are the most commonly searched types of Data Curation jobs? The most popular types of Data Curation jobs are:
What states have the most Assistant Data Curation jobs? States with the most job openings for Assistant Data Curation jobs include:
Infographic showing various Assistant Data Curation job openings in the United States as of June 2026, with employment types broken down into 100% Full Time. Highlights an 67% In-person, and 33% Remote job distribution.

Data & AI Engineer - Microsoft Fabric, Experimentation Data & Agent Development

Tata Consultancy Service Limited

Bellevue, WA • On-site

$64K - $100K/yr

Full-time

Medical, Dental, Vision, Retirement, PTO

Posted 7 days ago


Job description

Must Have Technical/Functional Skills:
Core Data Engineering Competencies; Data Concepts & Data Modelling; Digital : Big Data Platforms; data pipelines design; Microsoft fabric data agents; Azure AI Services; AI and ML Integration; Analytical and problem solving skills; Performance tuning and monitoring; Digital : PySpark; ecommerce domain knowledge; Digital : Adobe Analytics; Digital : Customer Analytics; Adobe customer journey analytics; clickstream data
Roles & Responsibilities:
1. Experimentation data enablement (Silver layer ownership)
Own the design, build, and maintenance of curated Silver-layer datasets in Microsoft Fabric to support experimentation reporting and analysis.
Partner with the Data Reporting/BI team to identify required dimensions, metrics, and joins (visitor/session, variant, campaign/flight, geo, device, channel, funnel steps, conversion events) and ensure these are available in Silver.
Translate experimentation team needs into standardized, reusable data products (tables/views) that can be consumed consistently for scorecards, dashboards, and ad hoc analysis.
Ensure Silver-layer outputs are analysis-ready (cleaned, conformed, deduplicated, and aligned to agreed definitions).
2. Data gap analysis and assessment
Conduct regular gap assessments between:
experimentation requirements (scorecards/KPIs),
existing Silver layer availability, and
upstream telemetry/source systems.
Identify missing/incorrect fields, inconsistent definitions, data latency issues, or join-key problems; document:
business impact,
severity/priority,
remediation approach,
timelines and dependencies.
Provide recommendations on data model improvements (facts/dimensions, grain, surrogate keys, conformance rules) to reduce recurring data quality issues.
3. Gold layer requirements and stakeholder requirement gathering
Lead requirement workshops with stakeholders (experimentation, measurement, BI/reporting, engineering) to define Gold layer outputs:
KPI definitions and calculation logic,
experiment attribution rules,
scorecard structure,
segmentation needs and slicing dimensions,
governance and refresh SLAs.
Produce clear functional + technical specifications: source-to-target mappings, data dictionary, metric definitions, validation rules, and acceptance criteria.
Drive alignment on single source of truth definitions to avoid mismatch across CJA/Power BI/scorecards.
4. Data pipeline engineering (1DS + Fabric pipelines / ADF)
Build and operate robust pipelines using Microsoft Fabric Pipelines and/or ADF to ingest and transform data into Silver and Gold layers.
Understand and work with 1DS (telemetry) pipelines (or equivalent) to ensure required events and attributes flow correctly into Fabric.
Implement reliable orchestration, incremental loads, error handling, and monitoring to meet experimentation reporting timelines.
5. Data validation and reconciliation (CJA included)
Perform data validation and reconciliation between Silver/Gold datasets and Customer Journey Analytics (CJA):
event counts, session/user logic, conversions,
experiment/variant attribution consistency,
time window alignment and filtering rules.
Create validation checks and automated routines for:
missing data detection,
duplicate events,
schema drift,
metric anomalies (sudden drops/spikes),
SRM-supporting signals (where applicable from data).
Document issues and coordinate fixes with upstream owners (telemetry, tagging, product engineering, reporting teams).
6. Experimentation lifecycle and scorecard readiness
Support the experimentation lifecycle by ensuring datasets are ready for:
pre-launch readiness checks,
launch measurement,
scorecard generation,
ongoing health checks,
post-test learnings/archives.
Enable consistent scorecard outputs by curating:
experiment metadata (test IDs, start/end dates, allocations),
KPI metrics (primary/secondary), and
slicing dimensions required by experimentation stakeholders.
7. AI agent design & build for experimentation team
Design and build AI-powered agents (Fabric Data Agents / Copilot / Azure OpenAI) to accelerate experimentation workflows, such as:
automated scorecard creation and narrative summaries,
self-serve Q&A over experimentation datasets,
anomaly explanations and investigation guidance,
metric definition assistant / data dictionary lookup,
pipeline health and data quality assistant.
Define the agents:
scope, personas, and usage scenarios,
grounding data sources (Silver/Gold tables, metadata, documentation),
security model (RBAC, data access boundaries),
evaluation metrics (accuracy, timeliness, adoption).
Partner with experimentation and reporting teams to iterate through pilot feedback rollout.
8. Documentation, governance, and operational excellence
Maintain documentation for:
dataset definitions (Silver/Gold),
transformation logic,
metric calculation rules,
pipeline design and dependencies,
validation checklists and runbooks.
Establish best practices for:
naming conventions,
semantic consistency,
versioning and backward compatibility,
cost/performance optimization in Fabric.
Provide operational support: monitoring, troubleshooting, incident triage, and continuous improvement.
TCS Employee Benefits Summary:
Discretionary Annual Incentive.
Comprehensive Medical Coverage: Medical & Health, Dental & Vision, Disability Planning & Insurance, Pet Insurance Plans.
Family Support: Maternal & Parental Leaves.
Insurance Options: Auto & Home Insurance, Identity Theft Protection.
Convenience & Professional Growth: Commuter Benefits & Certification & Training Reimbursement.
Time Off: Vacation, Time Off, Sick Leave & Holidays.
Legal & Financial Assistance: Legal Assistance, 401K Plan, Performance Bonus, College Fund, Student Loan Refinancing.
Salary Range: $64,000 - $100,000 a year
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