2

Entry Level Gene Editing Jobs (NOW HIRING)

Post Doc Res Assoc

Salt Lake City, UT · On-site

$65K - $73K/yr

... P1 - Entry Level Pro FLSA Code Administrative Patient Sensitive Job Code? No Standard Hours per ... High-throughput functional genomics: pooled CRISPR and base-editing screens, barcoded ...

Entry Level Gene Editing information

See salary details

$29.5K

$49.6K

$60K

How much do entry level gene editing jobs pay per year?

As of Jul 19, 2026, the average yearly pay for entry level gene editing in the United States is $49,574.00, according to ZipRecruiter salary data. Most workers in this role earn between $44,000.00 and $54,500.00 per year, depending on experience, location, and employer.

What is the difference between Entry Level Gene Editing vs Entry Level Molecular Biology Technician?

AspectEntry Level Gene EditingEntry Level Molecular Biology Technician
Required CredentialsBachelor's in Genetics, Molecular Biology, or related field; familiarity with gene editing tools like CRISPRBachelor's in Biology, Biotechnology, or related; basic lab skills in molecular techniques
Work EnvironmentResearch labs focusing on gene editing projects, biotech companiesLaboratories performing various molecular biology assays, research institutions
Employer & Industry UsageBiotech firms, research institutions specializing in gene editingUniversities, biotech companies, research labs

Entry Level Gene Editing roles typically require knowledge of gene editing technologies like CRISPR and focus on editing specific genes, while Entry Level Molecular Biology Technicians perform broader lab tasks involving DNA/RNA analysis. Both roles are foundational in biotech and research settings, but gene editing positions are more specialized in genetic modification techniques.

What biology jobs pay over $100k?

Entry-level gene editing roles typically do not start at over $100,000; higher salaries are usually found in senior or specialized positions such as research scientists, biotech project managers, or roles requiring advanced skills in CRISPR and molecular biology. These positions often require advanced degrees and experience, with salaries increasing with expertise and responsibility.

What jobs work with gene editing?

Jobs that involve gene editing include research scientist, molecular biologist, genetic engineer, and bioinformatics specialist. These roles typically require skills in laboratory techniques, CRISPR technology, and data analysis, often within biotech, pharmaceutical, or academic research environments.

What are the key skills and qualifications needed to thrive as an Entry Level Gene Editing professional, and why are they important?

To thrive as an Entry Level Gene Editing professional, you need a solid understanding of molecular biology, genetics, and biotechnology, usually supported by a bachelor's degree in a relevant field. Familiarity with CRISPR systems, PCR, gel electrophoresis, and laboratory information management systems (LIMS) is typically required. Attention to detail, problem-solving abilities, and effective teamwork are essential soft skills in this role. These skills ensure precise gene editing, reliable experimental results, and collaboration within multidisciplinary research teams.

What are entry level gene editing jobs?

Entry level gene editing jobs are positions for individuals who are new to the field of genetic engineering and biotechnology. These roles often involve assisting in laboratory experiments, preparing samples, running basic gene editing techniques like CRISPR, and supporting senior researchers with data collection and analysis. Candidates typically have a bachelor's degree in biology, genetics, or a related field, and receive on-the-job training in specific gene editing protocols. These positions can be found in research institutions, biotech companies, and academic labs.

How much do gene editors make?

Entry-level gene editing positions typically offer salaries ranging from $50,000 to $70,000 annually, depending on education, skills, and location. As professionals gain experience and develop expertise in tools like CRISPR, their earnings can increase significantly, with experienced gene editors earning over $100,000 per year.

What degree do I need to work with CRISPR?

Entry level gene editing positions involving CRISPR typically require at least a bachelor's degree in biology, genetics, molecular biology, or a related field. Advanced roles may require a master's or Ph.D., along with laboratory skills and experience with gene editing tools and techniques.

What are some typical responsibilities and learning opportunities for someone in an entry-level gene editing position?

In an entry-level gene editing role, you can expect to support senior scientists by preparing samples, conducting basic laboratory procedures, and assisting with gene editing experiments using techniques like CRISPR. You’ll gain hands-on experience with lab equipment, maintain accurate records, and help analyze genetic data. This role offers valuable learning opportunities through mentorship, exposure to the latest technologies, and participation in collaborative research projects, which can pave the way for advancement into more specialized scientific or technical positions.
More about Entry Level Gene Editing jobs
What cities are hiring for Entry Level Gene Editing jobs? Cities with the most Entry Level Gene Editing job openings:
What are the most commonly searched types of Gene Editing jobs? The most popular types of Gene Editing jobs are:
What states have the most Entry Level Gene Editing jobs? States with the most job openings for Entry Level Gene Editing jobs include:
Infographic showing various Entry Level Gene Editing job openings in the United States as of July 2026, with employment types broken down into 100% Full Time. Highlights an 100% In-person job distribution, with an average salary of $49,574 per year, or $23.8 per hour.
Machine Learning Researcher, Genomic AI

Machine Learning Researcher, Genomic AI

Bayer

Creve Coeur, MO

Other

Medical, Dental, Vision, Retirement, PTO

Posted 9 days ago


Bayer rating

8.2

Company rating: 8.2 out of 10

Based on 69 frontline employees who took The Breakroom Quiz

29th of 74 rated pharmaceutical


Job description

At Bayer we're visionaries, driven to solve the world's toughest challenges and striving for a world where 'Health for all Hunger for none' is no longer a dream, but a real possibility. We're doing it with energy, curiosity and sheer dedication, always learning from unique perspectives of those around us, expanding our thinking, growing our capabilities and redefining 'impossible'. There are so many reasons to join us.

If you're hungry to build a varied and meaningful career in a community of brilliant and diverse minds to make a real difference, there's only one choice. Machine Learning Researcher, Genomic AI We are seeking a Machine Learning Researcher with expertise in machine learning for biological systems, with a particular focus on genomic and multi-omic data modeling. This role is centered on building and deploying state-of-the-art AI models- including large-scale genomic language models and deep representation learning architectures - that extract actionable biological insight from complex molecular datasets.

You will develop models that learn the grammar of genomes, predict functional consequences of genetic variation, and connect molecular signatures to whole-organism phenotypes across diverse crop species. Your work will directly enable transformative applications in genomic selection and genome editing target identification, translating sequence-level intelligence into breeding and discovery decisions at global scale. This position is being hired at the entry level.

Depending on the candidate's depth of experience and demonstrated research impact, the role may be filled at the Senior Machine Learning Researcher level. YOUR TASKS AND RESPONSIBILITIES The primary responsibilities of this role are: Genomic & Omic Model Development: Design, train, and evaluate deep learning models (including large language models, transformers, and representation learning architectures) on diverse omic datasets - whole-genome sequences, gene expression profiles (RNA-seq), epigenomic marks, k-mer spectra, skim-seq, pangenome graphs, and multi-omic integrations. Genomic Language Models: Develop and fine-tune foundation models for DNA/RNA sequences that capture long-range dependencies, regulatory grammar, and evolutionary conservation to predict variant effects, gene function, and trait associations in crop genomes.

Genomic Selection & Editing Enablement: Build predictive models that connect genotype to phenotype across environments, identify high-value editing targets, and rank candidate genetic interventions with biological interpretability and statistical rigor. Functional Data Integration: Integrate heterogeneous biological data types-including high-resolution genome assemblies, structural variants, gene regulatory networks, protein structure predictions, and phenomic measurements-into unified predictive frameworks. Interdisciplinary Collaboration: Work closely with molecular biologists, geneticists, breeders, bioinformaticians, and computational scientists to ground models in biological reality, design informative training data strategies, and validate predictions experimentally.

Scalable Deployment: Partner with engineering and IT teams to operationalize models within genomic selection pipelines, editing nomination workflows, and decision-support platforms used by breeding programs globally. Research Contribution: Advance the state of the art through publications, internal seminars, and engagement with the broader computational biology and AI research community. Documentation & Communication: Communicate complex modeling results to diverse audiences, prepare technical reports, and build organizational confidence in AI-driven biological discovery.

WHO YOU ARE Bayer seeks an incumbent who possesses the following: Required: PhD in one of the following or closely related fields: Computational Biology / Bioinformatics Machine Learning / Deep Learning Genomics / Statistical Genetics Computer Science (with focus on biological or sequential data) Biostatistics / Quantitative Genetics Systems Biology Or another related quantitative discipline with demonstrated application to biological data Demonstrated research experience building and training deep learning models on biological sequence data or high-dimensional omic datasets. Proficiency in modern deep learning frameworks (PyTorch, JAX, or TensorFlow) and familiarity with large-scale model training (distributed training, GPU clusters). Working knowledge of molecular biology fundamentals sufficient to interpret model outputs in biological context (e.g., gene regulation, variant consequence, population genetics)

Strong communication skills and ability to collaborate effectively across disciplines. Preferred: Hands-on experience developing or fine-tuning genomic language models or biological foundation models (e.g., GPN, PlantCaduceus, Nucleotide Transformer, Evo, Enformer, AlphaGenome or similar large-scale sequence architectures for genomic prediction and functional track prediction). Experience with transformer architectures, long-context sequence modeling, or attention mechanisms applied to biological sequences

Familiarity with multi-omic data integration methods (e.g., multi-modal autoencoders, contrastive learning across modalities, graph neural networks on biological networks). Background in quantitative genetics or genomic prediction (e.g., GBLUP, Bayesian alphabet models, marker-effect estimation) and understanding of breeding program workflows. Experience with functional genomics data: ATAC-seq, ChIP-seq, Hi-C, single-cell transcriptomics, or CRISPR screen data

Knowledge of pangenomics, structural variant calling, or comparative genomics across crop species. Experience with self-supervised, semi-supervised, or transfer learning strategies for data-efficient modeling in biology. Familiarity with interpretability/explainability methods (attention visualization, in-silico mutagenesis, feature attribution) to derive biological hypotheses from model internals.

Exposure to classical ML approaches (gradient-boosted methods, kernel methods, Gaussian processes) as complementary or baseline tools. Experience with model deployment in production (MLOps pipelines, containerization, API development, cloud/HPC infrastructure). Track record of interdisciplinary collaboration with experimental biologists, resulting in validated biological predictions.

For Senior-Level Consideration: Candidates with 5+ years of post-PhD experience (or equivalent depth of impact), a strong publication record, demonstrated ability to independently drive complex research programs, and experience mentoring researchers or leading technical initiatives may be considered for the Senior Machine Learning Researcher level. Senior-level hires are expected to set research agenda, influence cross-functional strategy, and serve as thought leaders within the AI and data science community. Employees can expect to be paid a salary of approximately $110k-150k.

Additional compensation may include a bonus or incentive program (if relevant). Additional benefits include health care, vision, dental, retirement, PTO, sick leave, etc.. This salary (or salary range) is merely an estimate and may vary based on an applicant's location, market data/ranges, an applicant's skills and prior relevant experience, certain degrees and certifications, and other relevant factors

This posting will be available for application until at least 7/23/26. YOUR APPLICATION Bayer offers a wide variety of competitive compensation and benefits programs. If you meet the requirements of this unique opportunity, and want to impact our mission Health for all, Hunger for none, we encourage you to apply now.

Be part of something bigger. Be you. Be Bayer.

To all recruitment agencies: Bayer does not accept unsolicited third party resumes. Bayer is an Equal Opportunity Employer/Disabled/Veterans Bayer is committed to providing access and reasonable accommodations in its application process for individuals with disabilities and encourages applicants with disabilities to request any needed accommodation(s) using the contact information below. Equal Opportunity Employer Statement: Notice for U.S

Visitors: All information on this site is subject to compliance with local rule and regulations as they may vary from time to time and across different geographies, including, without limitation, U.S. Executive Orders. Bayer is an E-Verify Employer

Location: United States : Residence Based : Residence Based || United States : Missouri : Creve Coeur Division: Crop Science Reference Code: 872400 Contact Us Email: hrop_usa@bayer.com


What Bayer employees say

Pay

Benefits

Hours and flexibility

Workplace

Get the full story on Breakroom


Bayer logo

About Bayer

Sourced by ZipRecruiter

Bayer is a global enterprise with core competencies in the life science fields of healthcare and nutrition. We design our products and services to help people and planet thrive by supporting efforts to address the unprecedented global challenges presented by a growing and aging global population. At Bayer, we’re committed to drive sustainable development and generate a positive impact with our businesses. Through bold ideas and unprecedented insights, we’re pioneering new possibilities that advance life for all of us. That means reimagining how we care for ourselves and one another by empowering everyday health, improving approaches to patient care, and finding better ways to nourish our communities around the world.

Industry

Agriculture

Company size

10,000+ Employees

Headquarters location

Whippany, NJ, US