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Remote R Shiny Developer Jobs in New Mexico (NOW HIRING)

Remote R Shiny Developer information

What are the key skills and qualifications needed to thrive as a Remote R Shiny Developer, and why are they important?

To thrive as a Remote R Shiny Developer, you need strong proficiency in R programming, data visualization, and experience building interactive web applications with Shiny, often supported by a degree in computer science, statistics, or a related field. Familiarity with version control systems like Git, deployment tools such as Shiny Server or Docker, and knowledge of SQL databases are commonly required. Excellent problem-solving, communication, and self-motivation skills help you collaborate effectively in remote teams and deliver user-focused solutions. These skills ensure robust, maintainable applications and smooth teamwork in a distributed work environment.

What are some common challenges faced by Remote R Shiny Developers when collaborating with distributed teams?

Remote R Shiny Developers often encounter challenges such as coordinating across different time zones, ensuring clear communication regarding project requirements, and maintaining code consistency within a collaborative environment. To address these, teams typically rely on regular virtual meetings, shared documentation, and version control systems like Git. Building strong communication skills and being proactive in providing updates can help streamline teamwork and reduce misunderstandings, ultimately leading to more efficient project delivery.

What is a Remote R Shiny Developer?

A Remote R Shiny Developer is a software professional who specializes in building interactive web applications using the R programming language and the Shiny package, while working from a location outside of a traditional office setting. These developers are responsible for designing, coding, and maintaining Shiny apps that allow users to visualize and analyze data interactively. They often collaborate with data scientists, analysts, and business stakeholders to deliver solutions for data-driven decision making. Remote R Shiny Developers need strong skills in R programming, web development, and communication tools to work effectively in distributed teams.

What is the difference between Remote R Shiny Developer vs Data Analyst?

AspectRemote R Shiny DeveloperData Analyst
Required SkillsProficiency in R, Shiny, data visualization, web app developmentData manipulation, statistical analysis, Excel, SQL
Work EnvironmentRemote, project-based, software development teamsRemote or on-site, business intelligence teams
Industry UsageTech, healthcare, finance, researchFinance, marketing, healthcare, consulting

Remote R Shiny Developers focus on building interactive web applications using R and Shiny, often working in software or tech environments. Data Analysts analyze data sets to generate insights, typically using statistical tools and visualization software. While both roles may work remotely and require analytical skills, R Shiny Developers specialize in app development, whereas Data Analysts focus on data interpretation and reporting.

What are the most commonly searched types of R Shiny Developer jobs in New Mexico? The most popular types of R Shiny Developer jobs in New Mexico are:
What are popular job titles related to Remote R Shiny Developer jobs in New Mexico? For Remote R Shiny Developer jobs in New Mexico, the most frequently searched job titles are:
What job categories do people searching Remote R Shiny Developer jobs in New Mexico look for? The top searched job categories for Remote R Shiny Developer jobs in New Mexico are:
Spatial Analyst Researcher in Residence

Spatial Analyst Researcher in Residence

New Mexico Highlands University

Las Vegas, NM • On-site, Remote

$65K - $75K/yr

Full-time

Medical, Retirement, PTO

Posted 24 days ago


Job description

The New Mexico Forest and Watershed Restoration Institute (NMFWRI) is seeking a full-time (100% FTE) postdoctoral scholar with expertise in fire modeling and remotely sensed data to support innovative research. This project will improve our understanding of the conditions under which fuel treatments effect wildfire behavior and to evaluate long term post fire impacts within the Hermit's Peak Calf Canyon Fire burn scar.
As NMFWRI is part of the Southwest Ecological Restoration Institutes (SWERI), The postdoctoral scholar will join a collaborative team of researchers, on the grant funded ReSHAPE project https://reshapewildfire.org/. The researcher will incorporate fuel treatment databases currently being developed as part of the national Treatment and Wildfire Interagency Geodatabase (TWIG). This researcher will leverage existing spatial data on landscapes, fire behavior, and fuel treatments to evaluate real-world wildfire-treatment encounters across diverse U.S. landscapes. The researcher will work closely with the staff of the three SWERIs to coordinate research using TWIG to ensure data quality and specificity is additive to potential uses, end users and analyses.
The incumbent will be responsible for processing and analyzing large remote sensing datasets (e.g., Landsat, Sentinel-2, MODIS) and spatial datasets (e.g., TWIG, FACTs, FTEM, field data) both locally with R/Python and via Google Earth Engine for treatment outcome research. Work will include analysis of spatial and related data (vector, raster, imagery) sufficient to support multi-scale and/or multi-resource assessments and monitoring. Knowledge of data and data management sufficient to create, transform and integrate data in a variety of resolutions and formats is necessary. Analysis will include running machine learning algorithms (e.g., Random Forest, CART) and regression models to derive ecological insights from big data sets. The project entails developing reproducible and scalable methodologies, using common software and programming languages, that can be used by land managers for decision making support.
We take care of our own!
Once hired, our Spatial Analyst Post Doc will be mentored by experienced GIS professionals and have a chance to teach us a thing or two as well! They will have many opportunities for professional development such as attending conferences and presenting their research. They will work with a passionate team engaged in and excited about education, ecological monitoring, and collaborative conservation.
As a New Mexico Highlands University employee, benefits include superb health, paid leave, and retirement benefits, an extended winter holiday break, and tuition waivers at New Mexico Highlands University.
Where you will work.
NMFWRI's Spatial Analyst Post Doc will have the option for hybrid /remote work but must be willing to travel to New Mexico on a quarterly basis and attend regular virtual (zoom) meetings. In-state and out-of-state travel will be required, including attending conferences and regional meetings. Approved travel costs will be reimbursed.
DUTIES AND RESPONSIBILITIES:
The incumbent will be responsible for processing and analyzing large remote sensing datasets (e.g., Landsat, Sentinel-2, MODIS) and spatial datasets (e.g., TWIG, FACTs, FTEM, field data) both locally with R/Python and via Google Earth Engine for treatment outcome research.
Work will include analysis of spatial and related data (vector, raster, imagery) sufficient to support multi-scale and/or multi-resource planning, assessments, and monitoring. Knowledge of data and data management sufficient to create, transform and integrate data in a variety of resolutions and formats.
Project management, leading analysis, modeling, and visualization efforts, and coordinating project communication.
Use of project management software to track project tasks (e.g. GitHub)
Prepare and submit manuscripts for publication in scholarly journals
Work successfully in a team environment and collaborate effectively with other research partners.
Prepare, deliver and contribute to the production, communication, and publication or dissemination of high-quality science-based products for use by scientist, managers and/or collaborative forestry groups
PHYSICAL DEMANDS:
Standing Frequently
Sitting Frequently
Walking (cross country) Infrequently
Bending Infrequently
Squatting Infrequently
Kneeling Infrequently
Lifting (30lbs or less) Infrequently
EDUCATION:
PhD in forestry, ecology, natural resources, wildland fire science, or geography.
EXPERIENCE:
More than 2 years programming experience using software such R, and R Studio for spatial data processing and analysis.
More than 1 years programming experience using Google Earth Engine for spatial data processing and analysis.
Experience automating spatial analysis workflows with remote sensing, multiple data types (spreadsheets, databases, raster and vector spatial data), big data, or spatial analysis across multiple software platforms.
Evidence of expertise in fire behavior and/or fire management in the western US
Evidence of expertise or experience using geospatial data analytics and products.
Evidence or experience in collaborating, motivating and encouraging staff to perform at a high level
Evidence of professional oral communication to diverse audiences.
Demonstrated research accomplishments and peer-reviewed publications.
Evidence of personal or professional commitment to diversity as demonstrated by persistent effort, active planning, allocation of resources and/or accountability.
Experience with fire behavior modeling programs (e.g., FlamMap, FSIM, etc).
Evidence of supervision of others in collaborative project settings
Knowledge of western US forest and fire ecology, wildfire management, and/or wildfire experience.
Experience with cloud/ cluster computing to fit large models.
Preferred Skills
Expertise in GIS, remote sensing, and statistics and programming proficiency in R, Python, Google Earth Engine or similar languages.
Background in natural resource management applications and wildland fire sciences.
Experience processing and analyzing large remote sensing datasets.
Expertise in fire science, fire behavior models, and fuel mapping.
Working knowledge of forest or ecosystem dynamics and disturbance ecology
Proficient with running machine learning algorithms (e.g., Random Forest, CART) and regression models to derive ecological insights from big data sets.
Strong interpersonal and communication skills.