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Computer Assistant Jobs in Baltimore, MD (NOW HIRING)

Computer Science Intern Location: College Park, Maryland (across the street from campus) Who We Are ... support project development. * Assist in troubleshooting and debugging software issues.

Computer Science Internship

College Park, MD · On-site

$19 - $25/hr

Computer Science Intern Location: College Park, Maryland (across the street from campus) Who We Are ... support project development. * Assist in troubleshooting and debugging software issues.

Computer Science Intern Location: College Park, Maryland (across the street from campus) Who We Are ... support project development. * Assist in troubleshooting and debugging software issues.

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Computer Assistant information

See Baltimore, MD salary details

$33.3K

$48K

$63.1K

How much do computer assistant jobs pay per year?

As of Jun 30, 2026, the average yearly pay for computer assistant in Baltimore, MD is $47,991.00, according to ZipRecruiter salary data. Most workers in this role earn between $37,800.00 and $55,100.00 per year, depending on experience, location, and employer.

What is the difference between Computer Assistant vs Data Entry Clerk?

AspectComputer AssistantData Entry Clerk
Required CredentialsHigh school diploma; some roles may require basic IT certificationsHigh school diploma; familiarity with data management software
Work EnvironmentOffices, schools, or organizations supporting IT tasksOffices, data centers, or administrative settings
Employer & Industry UsageEducational institutions, small businesses, tech supportCorporate, healthcare, government, and administrative sectors
Common Search & ComparisonOften compared for entry-level IT support rolesCompared for administrative data handling tasks

Computer Assistants and Data Entry Clerks often share similar work environments and entry-level credentials. However, Computer Assistants typically support IT functions and troubleshooting, while Data Entry Clerks focus on inputting and managing data. Both roles are essential in administrative and organizational settings, but they serve different primary functions within organizations.

What is the easiest computer job that pays well?

A computer assistant role is generally considered an accessible entry-level position that can pay well, especially with basic skills in software troubleshooting, data entry, and customer support. These jobs often require minimal certifications and may offer flexible schedules, making them suitable for beginners seeking decent pay.

How to become a computer assistant?

To become a computer assistant, typically you need a high school diploma or equivalent and basic knowledge of computer hardware and software. Relevant skills include troubleshooting, customer service, and familiarity with common office applications; some positions may require certifications like CompTIA A+ or similar. Gaining experience through internships or entry-level roles can also improve job prospects.

What does a computer assistant do?

A computer assistant provides technical support by troubleshooting hardware and software issues, setting up and maintaining computer systems, and assisting users with technology-related questions. They often work in office environments, using tools like diagnostic software and may require basic certifications or knowledge of operating systems and network fundamentals.

What are Computer Assistants?

Computer Assistants are professionals who provide technical support and assistance to users in using computer systems, software, and hardware. They may help with troubleshooting issues, installing and configuring programs, maintaining equipment, and ensuring that technology runs smoothly in an organization. Their role can also include answering user queries, training staff on software applications, and performing routine system maintenance. Computer Assistants are essential in keeping workplaces efficient and resolving technical problems quickly.

What Is a Computer Assistant?

A computer assistant uses their technical and communication skills to help people troubleshoot problems with their computers. Sometimes referred to as technical support or customer support staff, computer assistants know about computers and the software they run. Their primary job duties include listening to customers describe the problems they are having and then walking them through a series of steps to get any issues resolved. Depending on the company you work for, you may also assist employees with their computer setups and help develop training guides. Some computer assistants work in call centers while others communicate exclusively through online chat or email. The minimum educational qualifications for this career include a high school diploma or G.E.D. certificate, although some employers may prefer you to have an associate degree in computer science and previous experience in a similar role.

What job makes $10,000 a month without a degree?

A computer assistant typically does not earn $10,000 a month without specialized skills or certifications. High-paying roles in technology, such as software developers, cybersecurity specialists, or IT managers, often require relevant training or experience. Some freelance or entrepreneurial tech roles can reach this income level, but they usually involve significant expertise and effort.

What are some common challenges faced by Computer Assistants in supporting end-users, and how can they effectively address them?

Computer Assistants often encounter challenges such as troubleshooting diverse hardware and software issues, managing multiple support requests simultaneously, and explaining technical concepts to users with varying levels of computer literacy. To address these challenges effectively, strong organizational and communication skills are essential. Building a knowledge base of common solutions, prioritizing tickets based on urgency, and maintaining patience and empathy with users can greatly enhance the support experience and lead to improved outcomes.

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

To thrive as a Computer Assistant, you need strong knowledge of computer hardware, software applications, troubleshooting techniques, and typically at least an associate degree in a related field. Familiarity with operating systems, office productivity software, basic networking, and help desk ticketing systems is commonly required. Excellent communication, problem-solving abilities, and patience are valuable soft skills for this position. These skills ensure efficient technical support, minimize downtime, and foster a productive work environment.
What are the most commonly searched types of Computer jobs in Baltimore, MD? The most popular types of Computer jobs in Baltimore, MD are:
What are popular job titles related to Computer Assistant jobs in Baltimore, MD? For Computer Assistant jobs in Baltimore, MD, the most frequently searched job titles are:
What job categories do people searching Computer Assistant jobs in Baltimore, MD look for? The top searched job categories for Computer Assistant jobs in Baltimore, MD are:
What cities near Baltimore, MD are hiring for Computer Assistant jobs? Cities near Baltimore, MD with the most Computer Assistant job openings:
Assistant Research Engineer - Computer Vision The VectorCam Project

Assistant Research Engineer - Computer Vision The VectorCam Project

Johns Hopkins University

Baltimore, MD • On-site

Full-time

Posted 15 days ago


Johns Hopkins Medicine rating

7.5

Company rating: 7.5 out of 10

Based on 202 frontline employees who took The Breakroom Quiz

227th of 877 rated healthcare providers


Job description

Description
The Johns Hopkins Center for Bioengineering Innovation & Design (CBID) in the Department of Biomedical Engineering is seeking an Assistant Research Engineer to lead computer vision and AI development for the VectorCam platform. VectorCam is an AI-enabled mobile imaging system designed to allow community health workers to identify mosquito species in real time, enabling faster vector surveillance and improved malaria control strategies. This role will serve as the technical lead for computer vision and image analysis within the project, responsible for designing and iterating on machine learning architectures, managing training pipelines and datasets, and optimizing models for deployment across edge and cloud environments. The successful candidate will work at the intersection of computer vision, edge AI deployment, mobile imaging systems, and global health field implementation. The role requires someone who is highly experimental and curious, constantly exploring new model architectures and approaches while pushing the performance and reliability of the AI system. The ideal candidate will also demonstrate strong attention to detail in data management and data science practices, and be able to clearly articulate the probability, statistics, and evaluation methods used when defending model design choices and performance claims.
Department: Johns Hopkins Center for Bioengineering Innovation & Design (CBID), Department of Biomedical Engineering, Whiting School of Engineering
Location & Duration: Baltimore, MD, USA (in-person job)
Reports to: Dr. Soumyadipta Acharya (Principal Investigator)
Key Responsibilities
Lead the design, training, and evaluation of computer vision models for mosquito identification and other relevant projects in vector-borne diseases. Develop and maintain a scalable training and evaluation pipeline for image classification and detection models. Continuously explore and evaluate new architectures, training approaches, and optimization strategies to improve model accuracy and robustness. Design and maintain systems for dataset management, ensuring training, validation, and test datasets remain clean, versioned, and traceable. Maintain high standards of data organization and reproducibility across experiments and training pipelines. Develop strategies for deploying models across mobile edge devices and cloud infrastructure. Optimize models for inference on smartphones and other resource-constrained platforms. Work closely with software engineers to integrate models into the Android application and imaging pipeline. Investigate and troubleshoot performance issues related to camera systems, imaging conditions, and device variability. Develop benchmarking and evaluation methods to continuously monitor model performance across deployments. Apply statistical reasoning when evaluating model performance and clearly communicate the statistical basis for model improvements and algorithmic decisions. Collaborate with entomologists and field teams to improve data collection, labeling, and training dataset quality. Contribute to publications and presentations describing algorithm development and system performance.
Technical Focus Areas
Computer Vision and Model Development: Design and train deep learning models for insect classification and morphological recognition. Experiment with architectures such as EfficientNet, YOLO, Vision Transformers, and other modern computer vision models to determine optimal approaches for the application. Develop strategies for handling limited datasets, noisy data, and challenging real-world image conditions.
Model Optimization for Edge Deployment: Optimize models for deployment on smartphones using frameworks such as TensorFlow Lite, PyTorch Mobile, or ONNX. Investigate quantization, pruning, and other model optimization techniques to ensure efficient inference on resource-constrained devices. Ensure models perform consistently across different smartphone cameras and hardware configurations.
AI Data Pipeline and Dataset Management: Develop systems for dataset versioning, experiment tracking, and model reproducibility. Ensure that training, validation, and testing datasets are well organized, auditable, and traceable. Maintain clear documentation of dataset lineage and experiment configurations. Build workflows that support continuous model retraining as new field data becomes available.
System Architecture for AI Deployment: Design the architecture for managing model updates, versioning, and deployment across edge devices and cloud platforms. Develop strategies for monitoring model performance and maintaining reliability across large-scale field deployments.
Project Impact
VectorCam aims to transform how mosquito surveillance is conducted in malaria-endemic regions by enabling rapid and accurate species identification directly in the field. By improving the speed and accessibility of entomological surveillance, this technology has the potential to strengthen malaria control programs and support more targeted vector control interventions. This role offers the opportunity to work on a globally impactful technology while solving challenging problems at the intersection of computer vision, edge AI, and public health innovation.
Qualifications
Qualifications
Master's degree in Computer Science, Machine Learning, Computer Vision, Software Engineering, or a related field. Strong background in computer vision and deep learning. Experience training and evaluating computer vision models using frameworks such as PyTorch or TensorFlow. Strong understanding of probability, statistics, and model evaluation methods, with the ability to clearly explain the reasoning behind model choices and performance metrics. Experience working with image datasets, data pipelines, and model evaluation methodologies. Experience deploying machine learning models to edge devices or mobile platforms. Strong programming skills in Python and experience with machine learning development environments. Strong attention to detail in data management, experiment tracking, and dataset organization. Ability to independently explore technical approaches and rapidly prototype solutions. Interest in applying AI systems to real-world global health challenges.
Preferred Experience
Experience with model deployment on Android devices or mobile platforms. Experience with experiment tracking tools such as Weights & Biases, OpenCV, HuggingFace, Google's ML Kit or similar systems. Experience working with image datasets collected in real-world environments. Experience with edge AI optimization techniques such as quantization or pruning. Experience contributing to applied machine learning research or technical publications.
Application Instructions
Click on the link and apply today!

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