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Research Semantic Analysis Jobs (NOW HIRING)

Technical Product Manager

New York, NY · On-site +1

$182K - $211K/yr

... text analysis and reporting capabilities - covering ingestion, semantic processing, and ... Experience working cross-functionally with data engineers, AI Research, and GTM teams. * Customer ...

Technical Product Manager

New York, NY

$182K - $211K/yr

... text analysis and reporting capabilities - covering ingestion, semantic processing, and ... Experience working cross-functionally with data engineers, AI Research, and GTM teams. * Customer ...

Computer Science, Mathematics, Operations Research, Data Science. * 7+ years of experience in ... and semantic analysis of OCR-extracted content. * Practical experience with OCR technologies and ...

Computer Science, Mathematics, Operations Research, Data Science. * 7+ years of experience in ... and semantic analysis of OCR-extracted content. * Practical experience with OCR technologies and ...

Computer Science, Mathematics, Operations Research, Data Science. * 7+ years of experience in ... and semantic analysis of OCR-extracted content. * Practical experience with OCR technologies and ...

Semantic Gap: Translating raw events into financial concepts like payments, trades, deposits, and ... The Role Allium is seeking a Research Analyst to transform blockchain data into actionable insights.

Implements and maintains data collection and summarization of field trials. -Performs analysis and ... JSON/semantic layers). Knowledge, Skills and Abilities: -Ability to multitask and work ...

... semantic analysis. * Optimize compiler performance and improve error reporting and diagnostics ... Collaborate with security researchers to implement static analysis and security checks. * Maintain ...

... keyword research for app metadata, creative asset coordination, and conversion rate testing. * Assist in optimizing for generative search environments (AIO/GEO) through semantic analysis and ...

... RAG), semantic retrieval, LLM integration, or related AI workflows. • Strong proficiency in ... Elder Research, Inc. is a consulting company in data science, predictive analytics, and text mining.

... keyword research for app metadata, creative asset coordination, and conversion rate testing. * Assist in optimizing for generative search environments (AIO/GEO) through semantic analysis and ...

Solidity Compiler Frontend Engineer

OR · Remote

$140K - $220K/yr

... semantic analysis. * Optimize compiler performance and improve error reporting and diagnostics ... Collaborate with security researchers to implement static analysis and security checks. * Maintain ...

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Research Semantic Analysis information

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$111.5K

$206K

How much do research semantic analysis jobs pay per year?

As of Jun 9, 2026, the average yearly pay for research semantic analysis in the United States is $200,510.00, according to ZipRecruiter salary data. Most workers in this role earn between $205,000.00 and $205,000.00 per year, depending on experience, location, and employer.

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

To thrive as a Research Semantic Analyst, you need expertise in linguistics, data analysis, and a strong understanding of semantics, typically supported by a degree in linguistics, computer science, or a related field. Familiarity with natural language processing (NLP) tools, semantic annotation platforms, and data analysis software like Python or R is commonly required. Strong analytical thinking, attention to detail, and effective communication are essential soft skills in this role. These competencies are crucial for accurately interpreting and modeling language data, ensuring high-quality research outcomes and actionable insights.

What is the difference between Research Semantic Analysis vs Data Analyst?

AspectResearch Semantic AnalysisData Analyst
Required CredentialsTypically requires a degree in linguistics, computer science, or related fields; knowledge of NLP and semantic modelsUsually requires a degree in statistics, mathematics, or related fields; proficiency in data visualization and statistical tools
Work EnvironmentResearch labs, tech companies, academic institutions focusing on language and AI projectsBusiness environments, consulting firms, or corporate data teams analyzing large datasets
Industry UsageUsed in natural language processing, AI development, and linguistic researchApplied in marketing, finance, healthcare, and other sectors for data-driven decision making

Research Semantic Analysis focuses on understanding and modeling language meaning using NLP techniques, often in research or AI development. Data Analysts interpret and visualize data to inform business decisions. While both roles involve data and analysis, their tools, goals, and industries differ significantly.

How does collaboration typically work for professionals in Research Semantic Analysis?

In Research Semantic Analysis, collaboration is essential and often involves working closely with interdisciplinary teams, including data scientists, linguists, software engineers, and subject matter experts. Professionals in this role frequently participate in brainstorming sessions, share findings, and integrate feedback to enhance semantic models or algorithms. Effective communication and the ability to translate complex concepts across different expertise areas are crucial for success. Regular meetings and collaborative platforms help ensure alignment on project goals and facilitate continuous learning.

What is research semantic analysis?

Research semantic analysis is the process of examining and interpreting the meanings of words, phrases, and concepts within research documents or datasets. It involves using computational and linguistic techniques to analyze the relationships, context, and patterns of language to extract insights or identify trends. This method is commonly used in fields like linguistics, data science, and information retrieval to improve understanding of large volumes of unstructured text.

Lead Forward Deployed Engineer, Databricks 2026- US, UK (Remote)

Aimpoint Digital

Atlanta, GA • Remote

$104K - $138K/yr

Full-time

Posted 24 days ago


Job description

Aimpoint Digital is a market-leading data, AI, and operations research advisory and solution engineering firm. We help organizations build modern data platforms, enterprise AI systems, decision intelligence solutions, optimization models, and production analytics capabilities.

We are one of the strongest technical partners in the Databricks ecosystem, with deep expertise across platform engineering, data engineering, AI engineering, MLOps, operations research, and applied analytics. Our teams help clients move beyond platform implementation into real business transformation.

As Databricks continues to become a core enterprise AI platform, we are hiring Forward Deployed Engineers who can help clients design and deploy AI-native solutions on Databricks that create measurable business impact.

About the Role

As a Lead Forward Deployed Engineer Databricks, you will work directly with clients to design, build, and operationalize AI and data solutions on the Databricks platform.

This role is for someone who can operate at the edge of the customer environment: understanding the business problem, assessing the data and platform architecture, designing the right technical path, and building production-grade solutions using Databricks capabilities.

You will work across modern data engineering, AI engineering, agentic workflows, semantic analytics, Lakehouse architecture, Databricks Apps, Lakebase, Genie, Mosaic AI, model serving, and production deployment patterns.

The role requires a builder's mindset, strong client presence, and the ability to turn ambiguous business needs into deployed technical solutions.

What You Will Do

  • Work directly with business and technical stakeholders to identify high-value data and AI use cases that can be delivered on Databricks
  • Design, build, and deploy production-grade data and AI solutions using Databricks capabilities across the Lakehouse, Mosaic AI, Unity Catalog, Databricks SQL, Workflows, Delta Lake, Databricks Apps, Genie, Agents, and Lakebase
  • Lead client discovery sessions to understand business workflows, data availability, platform maturity, integration needs, and measurable success criteria
  • Architect AI-native data platforms that support agentic workflows, semantic analytics, model deployment, retrieval systems, optimization models, and operational applications
  • Build Genie rooms, semantic layers using Metric Views, decision-support applications, data products, AI applications, and agent memory architectures that help clients operationalize insight and action
  • Partner with data engineering, AI engineering, analytics, business, security, and governance stakeholders to design secure, scalable, production-ready solutions
  • Create prototypes, demos, technical reference architectures, and reusable accelerators that showcase the value of Databricks for enterprise AI and analytics workloads
  • Help clients modernize data pipelines, improve platform architecture, implement governance patterns, and deploy AI systems into operational workflows
  • Work with Aimpoint Digital's alliance, sales, and delivery teams to shape Databricks-led opportunities and translate client needs into winning solution approaches
  • Develop thought leadership, solution accelerators, demos, and internal enablement materials that strengthen Aimpoint Digital's Databricks practice

What We Are Looking For

  • Strong experience in data engineering, AI engineering, platform engineering, solution architecture, or enterprise software development
  • Hands-on experience with Databricks, Spark, Delta Lake, Lakehouse architecture, data pipelines, model deployment, or modern data platform patterns
  • Strong Python and SQL skills. Experience with PySpark, MLflow, Databricks Workflows, Unity Catalog, Databricks SQL, or similar tooling is strongly preferred
  • Familiarity with enterprise AI patterns such as RAG, agents, model serving, vector search, semantic layers, data applications, evaluation frameworks, and governance
  • Ability to work directly with clients, understand ambiguous business needs, and translate them into technical architecture and implementation plans
  • Strong communication skills with the ability to engage executives, business leaders, architects, data engineers, ML engineers, and analytics teams
  • Comfort moving from strategy to architecture to hands-on development
  • A practical understanding of what it takes to move from demo to production in complex enterprise environments

Preferred Qualifications

  • Databricks certification or deep hands-on delivery experience in the Databricks ecosystem
  • Experience building Databricks Apps, Genie rooms, Lakebase-backed applications, Mosaic AI workflows, feature pipelines, MLflow deployments, vector search systems, or agentic solutions
  • Experience with cloud platforms such as AWS, Azure, or GCP
  • Experience in consulting, forward deployed engineering, solution architecture, field engineering, technical pre-sales, or client-facing delivery
  • Experience designing governed data products, semantic models, operational analytics applications, or AI/ML systems
  • Familiarity with industry use cases in retail and CPG, manufacturing, supply chain, energy, AI infrastructure, or private equity
  • Ability to create technical architecture diagrams, delivery roadmaps, demos, sales enablement assets, and reusable solution accelerators

Questions You Will Help Clients Answer

  • How do we turn Databricks into an enterprise AI platform rather than just a data platform?
  • Which business workflows can be improved using Genie, Agents, Lakebase, Databricks Apps, or Mosaic AI?
  • How should we structure our Lakehouse architecture to support AI-native applications?
  • How do we build reliable agent memory, governed data products, semantic analytics, and production AI applications on Databricks?
  • How do we move from migration and platform setup into measurable business outcomes?
  • How do we design data and AI systems that are secure, governed, scalable, and operationally useful?

Why This Role Matters

The future of the Databricks partner ecosystem will not be won by firms giving away generic offshore services. It will be won by partners who can help clients identify the right business problems, architect the right platform patterns, and build production AI and data systems that executives can trust. Aimpoint Digital is building that model.

As a Lead Forward Deployed Engineer focused on Databricks, you will help clients move beyond implementation and into transformation, leveraging Databricks as the foundation for building, deploying, and governing enterprise AI at scale.

We are actively seeking candidates for full-time, remote work within the US or UK.Atlanta and London based applicants will have the opportunity to work in our regional offices.