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Afternoon Data Analyst R Programming Jobs in Miramar, FL

Data Science Tutor

Miramar, FL ยท Remote

$40/hr

Deep knowledge of statistical analysis, data wrangling, exploratory data analysis, machine learning, data visualization, SQL, Python or R programming, hypothesis testing, and communication of data ...

Data Science Tutor

Sunrise, FL ยท Remote

$40/hr

Deep knowledge of statistical analysis, data wrangling, exploratory data analysis, machine learning, data visualization, SQL, Python or R programming, hypothesis testing, and communication of data ...

Data Science Tutor

Miami, FL ยท Remote

$40/hr

Deep knowledge of statistical analysis, data wrangling, exploratory data analysis, machine learning, data visualization, SQL, Python or R programming, hypothesis testing, and communication of data ...

Deep knowledge of statistical analysis, data wrangling, exploratory data analysis, machine learning, data visualization, SQL, Python or R programming, hypothesis testing, and communication of data ...

Deep knowledge of statistical analysis, data wrangling, exploratory data analysis, machine learning, data visualization, SQL, Python or R programming, hypothesis testing, and communication of data ...

Data Science Tutor

Doral, FL ยท Remote

$40/hr

Deep knowledge of statistical analysis, data wrangling, exploratory data analysis, machine learning, data visualization, SQL, Python or R programming, hypothesis testing, and communication of data ...

Deep knowledge of statistical analysis, data wrangling, exploratory data analysis, machine learning, data visualization, SQL, Python or R programming, hypothesis testing, and communication of data ...

We're looking for a Data Analyst to join our Delivery Operations team with a focus on three high ... Work closely with Product, Engineering, and Customer Service to turn analytical insights into real ...

We're looking for a Data Analyst to join our Delivery Operations team with a focus on three high ... Work closely with Product, Engineering, and Customer Service to turn analytical insights into real ...

We're looking for a Data Analyst to join our Delivery Operations team with a focus on three high ... Work closely with Product, Engineering, and Customer Service to turn analytical insights into real ...

Deep knowledge of statistical analysis, data wrangling, exploratory data analysis, machine learning, data visualization, SQL, Python or R programming, hypothesis testing, and communication of data ...

Data Science Tutor

Hialeah, FL ยท Remote

$40/hr

Deep knowledge of statistical analysis, data wrangling, exploratory data analysis, machine learning, data visualization, SQL, Python or R programming, hypothesis testing, and communication of data ...

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Afternoon Data Analyst R Programming information

See Miramar, FL salary details

$31.5K

$76.6K

$126K

How much do afternoon data analyst r programming jobs pay per year?

As of Jun 10, 2026, the average yearly pay for afternoon data analyst r programming in Miramar, FL is $76,588.00, according to ZipRecruiter salary data. Most workers in this role earn between $57,900.00 and $89,900.00 per year, depending on experience, location, and employer.

What is an Afternoon Data Analyst R Programming?

An Afternoon Data Analyst specializing in R Programming is a data professional who primarily works afternoon shifts and uses the R programming language to analyze, interpret, and visualize data. Their responsibilities typically include cleaning data, performing statistical analyses, and generating reports to support business decisions. They may work across various industries, collaborating with teams to provide insights and automate data processes using R. Afternoon shifts can be ideal for organizations that operate globally or require data support outside standard business hours. Proficiency in R, statistical techniques, and data visualization tools are essential skills for this role.

What are some common challenges faced by Afternoon Data Analysts working with R Programming, and how can they be addressed?

Afternoon Data Analysts using R Programming often encounter challenges such as handling large datasets efficiently, ensuring code reproducibility, and collaborating with team members across different shifts. To address these, it's helpful to utilize R packages designed for big data (like data.table or dplyr), maintain clear and well-documented scripts, and use version control systems like Git for seamless collaboration. Regular communication with team members during shift handovers and leveraging collaborative tools can also enhance workflow and reduce misunderstandings.

What is the difference between Afternoon Data Analyst R Programming vs Morning Data Analyst R Programming?

AspectAfternoon Data Analyst R ProgrammingMorning Data Analyst R Programming
Required CredentialsBachelor's in Data Science, Statistics, or related field; R programming skillsBachelor's in Data Science, Statistics, or related field; R programming skills
Work EnvironmentTypically in office settings, working during afternoon hoursOffice environment, working during morning hours
Employer & Industry UsageUsed in industries with shift-based operations like finance, healthcareCommon in similar industries, often with flexible scheduling
Search & Comparison IntentPeople comparing different shift roles or schedules in data analysisSimilar search intent focusing on shift timing differences

The main difference between Afternoon Data Analyst R Programming and Morning Data Analyst R Programming lies in their work hours. Both roles require similar skills, credentials, and are used in comparable industries. The choice depends on personal schedule preferences and employer shift structures.

Is data science dead in 10 years?

Data science, including roles like an Afternoon Data Analyst using R programming, is expected to remain relevant as organizations continue to rely on data-driven decision making. Advances in automation and AI may change specific tasks, but skills in data analysis, statistical methods, and programming will continue to be valuable in the foreseeable future.

What are the key skills and qualifications needed to thrive as an Afternoon Data Analyst specializing in R Programming, and why are they important?

To thrive as an Afternoon Data Analyst specializing in R Programming, you need a strong background in statistics, data analysis, and proficiency with R, often supported by a degree in a quantitative field. Experience with data visualization tools, R packages (like tidyverse), and familiarity with databases or version control systems (such as Git) is typically required. Critical thinking, attention to detail, and effective communication are essential soft skills for interpreting results and presenting insights to stakeholders. These skills ensure accurate data-driven decisions, efficient workflow, and the ability to translate complex data into actionable business strategies.
What are popular job titles related to Afternoon Data Analyst R Programming jobs in Miramar, FL? For Afternoon Data Analyst R Programming jobs in Miramar, FL, the most frequently searched job titles are:
What job categories do people searching Afternoon Data Analyst R Programming jobs in Miramar, FL look for? The top searched job categories for Afternoon Data Analyst R Programming jobs in Miramar, FL are:
What cities near Miramar, FL are hiring for Afternoon Data Analyst R Programming jobs? Cities near Miramar, FL with the most Afternoon Data Analyst R Programming job openings:
Senior Data Analyst, Energy Preconstruction

Senior Data Analyst, Energy Preconstruction

Moss

Fort Lauderdale, FL โ€ข On-site

$82K - $103K/yr

Full-time

Posted 18 days ago


Job description

COMPANY OVERVIEW

Moss is a national, privately held construction firm providing innovative solutions resulting in award-winning projects. With regional offices across the United States, Moss focuses on construction management, energy EPC, and design-build. The company's diverse portfolio encompasses a wide range of sectors, including luxury high-rise residential, landmark mixed-use developments, hospitality, K-12 and higher education, justice, solar energy and battery storage, and sports. Moss is ranked by Engineering News-Record as the nation's top solar contractor and one of the top 50 general contractors. Moss prides itself on a strong entrepreneurial culture that honors safety, quality, client engagement, and employee development. Its employees consistently rank Moss as one of the best places to work.

POSITION SCOPE AND ORGANIZATIONAL IMPACT

Moss' Senior Data Analyst plays a critical role in transforming fragmented data across projects, engineering, cost, productivity, procurement, and performance into structured, actionable insights that enhance estimating accuracy, mitigate risk, and drive profitability within the Energy Preconstruction team. This role will lead to the development of a reliable historical dataset that supports benchmarking, conceptual pricing, forecasting, and strategic decision-making.

Working with limited oversight, this individual will partner across preconstruction, procurement, finance, engineering, and IT to help create a single source of truth for preconstruction data. Through data cleansing, multi-system querying, dashboard development, and business analysis, this role will strengthen bid strategy, improve estimate confidence, identify cost and risk patterns, and support the long-term growth of a dedicated data function within Energy Preconstruction.

ESSENTIAL JOB DUTIES AND RESPONSIBILITIES

  • Cleanse, normalize, validate, and consolidate historical data on estimating, engineering, cost, productivity, procurement, project parameters, and project performance from spreadsheets, takeoff files, ERP/CRM systems, and other legacy sources.

  • Build, maintain, and improve structured historical datasets and databases that support estimating benchmarks, conceptual pricing, root cause analysis, and future predictive modeling.

  • Improve data quality and usability by resolving inconsistencies in naming conventions, units of measure, metadata, assumptions, and source traceability.

  • Build and run queries against internal databases and enterprise systems; use SQL and other tools to extract, join, filter, validate, and organize data from multiple sources.

  • Develop repeatable query logic and data pipelines that improve accessibility, consistency, and auditability, while partnering with IT and data teams to align with governance standards and future data architecture.

  • Identify correlations, trends, anomalies, and performance patterns across historical and active energy projects, including relationships among design variables, cost drivers, labor productivity, procurement timing, geography, weather, and project outcomes.

  • Generate insights that improve profitability, reduce risk, strengthen conceptual estimates, and support value engineering and broader business decision-making.

  • Benchmark current bids and conceptual estimates against historical project performance, market trends, prior wins, and known cost drivers; support the Indicative Lead and PCM in pricing and repricing exercises through structured data analysis.

  • Build dashboards, reports, and KPI visibility tools using Power BI or similar platforms to track estimate accuracy, cost variance, margin trends, bid competitiveness, win rates, and project milestones.

  • Translate complex analysis into clear, decision-oriented reporting for leadership and business stakeholders.

  • Support risk analysis, forecasting, sensitivity analysis, scenario modeling, contingency planning, and feasibility analysis using internal and external data, including location, weather, irradiance, and grid proximity.

  • Support the improvement and standardization of estimating and engineering templates, define and reinforce data standards, act as a technical liaison across estimating, engineering, procurement, finance, and IT, and contribute to continuous improvement and future system integration.

  • Perform other duties as assigned.

EDUCATION AND WORK EXPERIENCE

  • Bachelor's degree in Data Analytics, Data Science, Engineering, Finance, Information Systems, or a related field is required.

  • 5+ years of experience in data analytics or a related analytical role is required.

  • Strong experience in cleansing, standardizing, and structuring complex datasets is required.

  • Strong SQL proficiency and experience querying databases are required.

  • Strong Excel proficiency is required; advanced Excel skills, including Power Query, PivotTables, and structured data manipulation, are preferred.

  • Strong experience building dashboards and reports in Power BI or a similar tool is required.

  • Experience in identifying correlations, patterns, and trends in data to support business decisions is required.

  • Experience working independently and collaborating across business and technical functions is required.

  • Experience supporting data governance, standardization, or system integration efforts is required.

  • Knowledge of data quality, database concepts, query logic, enterprise data environments, dashboarding, KPI development, benchmarking, correlation analysis, trend analysis, and forecasting is required.

  • Strong analytical, problem-solving, documentation, communication, and stakeholder collaboration skills are required.

  • Experience in energy, EPC, construction, or infrastructure environments is preferred.

  • Experience with ERP systems, such as Oracle, and CRM systems is preferred.

  • Experience with Python or R for data analysis or automation is preferred.

  • Familiarity with estimating, engineering, and procurement workflows is preferred.

JOB TITLE: SENIOR DATA ANALYST, ENERGY PRECONSTRUCTION

JOB LOCATION: FORT LAUDERDALE, FL

CLASSIFICATION: FULL TIME - EXEMPT - SALARIED

REPORTS TO: SENIOR MANAGER, SOLAR ESTIMATING

Moss is an equal opportunity employer. We celebrate diversity and are committed to creating an inclusive environment for all employees.