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In Python Programming Jobs in Albuquerque, NM (NOW HIRING)

Digital Analyst Internships

Albuquerque, NM · On-site

$95K - $112K/yr

Basic programming or scripting experience in Python, SQL, or JavaScript * Experience with Sitecore or other Content Management Systems Company Description At Beckman Coulter Diagnostics, part of the ...

A course or 6+ months of experience in Python or comparable programming language * Proven data analysis capabilities Preferred Qualifications: * Strong problem-solving and teamwork skills

Experience creating LLM-backed tools involving prompt engineering and automated evals * 5+ years of experience in full-stack development with strong skills in Python, React and JavaScript * Excellent ...

Experimental Physicist

Los Lunas, NM · On-site

$125K - $175K/yr

We are bringing together the best scientists, engineers, and operators from the fusion community ... Experience writing analysis software in python Pay Range: $125,000-$175,000 USD Total Compensation ...

Practical experience in Python and one other scripting language, such as PowerShell or Bash. * Must ... engineering, intelligence, and enterprise information technology markets. SAIC is Redefining ...

... in programming language Java and understanding of the software development life cycle Knowledge of Statistics, Gen AI, LLM, Python, Computer Vision, data visualization tools Excellent written and ...

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In Python Programming information

See Albuquerque, NM salary details

$12

$56

$83

How much do in python programming jobs pay per hour?

As of Jun 24, 2026, the average hourly pay for in python programming in Albuquerque, NM is $56.82, according to ZipRecruiter salary data. Most workers in this role earn between $46.83 and $64.57 per hour, depending on experience, location, and employer.

What is Python programming?

Python programming refers to writing code using the Python language, a versatile and widely-used high-level programming language. Python is known for its simple syntax, readability, and broad applicability in fields like web development, data analysis, artificial intelligence, automation, and more. It supports multiple programming paradigms, including procedural, object-oriented, and functional programming. Python's extensive standard library and vibrant community make it an excellent choice for beginners and experienced developers alike.

Are Python still in demand in 2026?

Python programming remains highly in demand in 2026 due to its widespread use in data science, web development, automation, and artificial intelligence. Employers value Python skills, and proficiency with frameworks like Django or libraries such as Pandas can enhance job prospects for Python developers.

What are some common challenges Python programmers face when working on team-based projects?

Python programmers often encounter challenges related to code consistency, version control, and communication when collaborating in team environments. Ensuring that everyone follows established coding standards, such as PEP 8, helps maintain readability and reduces merge conflicts. Additionally, effective use of tools like Git for version control and regular code reviews are essential for smooth collaboration. Clear communication and thorough documentation also play key roles in preventing misunderstandings and ensuring project success.

Will AI replace Python coders?

AI tools can automate certain programming tasks, but Python programmers are essential for designing, developing, and maintaining complex software systems. AI can assist coders by increasing productivity and handling repetitive tasks, but human expertise remains crucial for problem-solving, creativity, and understanding project requirements.

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

To thrive as a Python Programmer, proficiency in Python syntax, algorithms, and data structures, often supported by a degree in computer science or related field, is essential. Familiarity with development tools like Git, frameworks such as Django or Flask, and experience with databases are typically required. Problem-solving abilities, strong communication, and adaptability help programmers collaborate effectively and tackle complex coding challenges. These skills ensure the delivery of efficient, reliable software solutions in diverse technical environments.

What jobs can I do with just Python?

With Python skills, you can pursue roles such as Python developer, data analyst, automation engineer, or backend programmer. These jobs often require knowledge of libraries like pandas, Django, or Flask, and may involve tasks like scripting, data processing, or web development.

What is the difference between In Python Programming vs Data Analyst?

AspectIn Python ProgrammingData Analyst
Required SkillsProficiency in Python, scripting, debuggingData interpretation, Excel, SQL, basic Python
Work EnvironmentSoftware development, coding projectsData analysis, reporting, business insights
Industry UsageTech, software, automationFinance, marketing, healthcare

While both roles involve working with data and Python, In Python Programming focuses on coding, scripting, and software development, whereas Data Analysts primarily interpret data, create reports, and support business decisions. Python skills enhance a Data Analyst's capabilities but are not the sole focus of their role.

What jobs include Python?

Python is used in a variety of roles including software developer, data analyst, data scientist, machine learning engineer, web developer, automation engineer, and cybersecurity analyst. These jobs often require knowledge of Python programming, libraries like Pandas or TensorFlow, and familiarity with development environments such as Git or Jupyter Notebook.
Machine Learning / Software Engineer with Security Clearance

Machine Learning / Software Engineer with Security Clearance

Vector Resources

Albuquerque, NM • On-site

Other

Posted 19 days ago


Job description

ummary:
The Machine Learning / Software Engineer will lead technical modernization efforts across AI/ML automation, digital engineering transformation, and software development for the NNSA weapons complex. This role combines building production ML systems and AI-powered applications with advancing the enterprise toward digital thread, digital twin, and model-based approaches. The position requires a tech-forward engineer who can develop LLM-integrated solutions for process automation, architect data integration frameworks for digital engineering initiatives, lead software development teams building predictive models with user interfaces, and establish technical strategies that position the team as leaders in enterprise digital transformation. Work spans three key domains: (1) AI/ML automation including LLM integration for enterprise taxonomy standardization, predictive modeling systems, and process automation; (2) Digital engineering leadership to advance digital thread, digital twin, and model-based systems engineering capabilities; (3) Full-stack software development leading teams building applications with modern interfaces and data integration. This position offers the opportunity to shape how a large, complex enterprise modernizes its technical capabilities across weapons acquisition, sustainment, and logistics programs. Specific duties include: AI/ML: · Build and deploy AI/ML systems using LLMs and NLP to automate enterprise processes, including developing solutions to standardize part taxonomies across hundreds of thousands of components from disparate sites by intelligently mapping unique naming conventions to common UNSPSC codes. · Develop full-stack applications integrating predictive models with user-friendly interfaces, including leading development of transportation management systems that transform complex inputs into actionable predictions and building turnkey solutions that teams can deploy across the enterprise. · Build knowledge graphs and semantic data models to enable requirements traceability, system understanding, and intelligent querying across complex weapon system documentation, leveraging graph databases and ontologies to create a queryable digital thread. Digital Engineering: · Lead digital engineering transformation initiatives to advance the enterprise toward digital thread, digital twin, and model-based systems engineering, including architecting data integration frameworks that connect design, simulation, test, and manufacturing systems across the weapons complex lifecycle. · Design and implement real-time data integration pipelines connecting sensors, IoT devices, simulation outputs, and enterprise systems to enable digital twin capabilities and predictive analytics for asset monitoring and lifecycle management. Software Development and Program Integration: · Lead and mentor software development teams, establishing technical standards, MLOps practices, and development workflows while directing the implementation of front-end interfaces, APIs, and cloud-based deployments. · Identify requirements, interfaces, conflicts, and integration issues and provide recommended resolutions based on sound engineering rationale supported by thorough and comprehensive analysis. · Assist DP to develop, implement, manage and maintain a configuration management process for logistics, including development and management of the technical tools for configuration management. · Develop and implement business processes and operations for logistics and supply chain management. · Analyze existing requirements processes and tools for effective implementation. Skills / Qualifications: · Experience building and deploying production machine learning systems and AI-powered applications, including NLP/LLM integration, predictive modeling, and full-stack development from data pipelines through user interfaces. · Enterprise systems integration experience including connecting disparate data sources, building data integration frameworks for digital thread/digital twin applications, and knowledge of semantic data modeling, ontologies, or graph databases. · Experience leading technical teams, mentoring developers, and establishing best practices for software development, including agile methodologies, CI/CD, and DevOps/MLOps workflows. · Proficiency with ML/AI frameworks (PyTorch, TensorFlow, scikit-learn), LLM deployment, cloud platforms (AWS, Azure, GCP), and modern development tools including containerization (Docker, Kubernetes) and streaming data platforms (Kafka, Spark). · Strong programming foundation in Python and experience with full-stack development (React, Vue, or similar frameworks); exposure to Model-Based Systems Engineering (MBSE) tools like Cameo Systems Modeler or digital twin platforms is highly valued along with proficiency in R, SQL, JavaScript, etc.; experience with IoT/sensor integration, real-time data streaming, or PLM system integration is a plus. Experience / Educational Requirements: · Bachelor's or Master's degree in Computer Science, Data Science, Machine Learning, Software Engineering, Electrical Engineering, or related technical field with strong computational focus. (preferred) Other Unique Requirements: · Experience building production ML/AI systems that solve real business problems; exposure to digital engineering concepts (digital thread, digital twin, MBSE) or PLM/systems integration; demonstrated ability to lead technical modernization initiatives and introduce emerging technologies into large organizations. (preferred) · Department of Energy (DOE) 6.X and/or DoD 5000-series acquisition experience. (preferred) · Knowledge of the interfaces between DOE/NNSA programs, field sites, contractors, and other government agencies involved in weapons production, handling, and transportation. (preferred) · Knowledge of DOE/NNSA weapons programs. (preferred)