AI Applied Research Scientist Jobs

Discover the latest remote and onsite AI Applied Research Scientist roles across top active AI companies. Updated hourly.

Check out 45 new AI Applied Research Scientist opportunities posted on The Homebase

Researcher, Frontier Cybersecurity Risks

New
Top rated
OpenAI
Full-time
Full-time
Posted

As a Researcher for cybersecurity risks, you will design and implement mitigation components for model-enabled cybersecurity misuse that span prevention, monitoring, detection, and enforcement, under the guidance of senior technical and risk leadership. You will integrate safeguards across product surfaces in partnership with product and engineering teams to ensure protections are consistent, low-latency, and scalable with usage and new model capabilities. Additionally, you will evaluate technical trade-offs within the cybersecurity risk domain, propose pragmatic and testable solutions, and collaborate with risk and threat modeling partners to align mitigation design with anticipated attacker behaviors and misuse scenarios. You are expected to execute rigorous testing and red-teaming workflows to stress-test the mitigation stack against evolving threats across different product surfaces and iterate based on the findings.

$295,000 – $445,000
Undisclosed
YEAR

(USD)

San Francisco, United States
Maybe global
Onsite

Computational Protein Design

New
Top rated
Talent Labs
Full-time
Full-time
Posted

Leverage proprietary generative AI models to design proteins for experimental validation by analyzing protein design problems based on functional requirements, biochemistry, structural biology, and sequence homology; generate and optimize designs for experimental validation; coordinate with lab-based protein engineers to plan and optimize the design process and validation strategy. Analyze and leverage experimental results to improve designs and increase success rates over validation rounds; collaborate with machine learning scientists to fine-tune and prompt models. Act as an effective interface between machine learning model development and experimental validation; capture bioengineering learnings and feedback to the machine learning unit and vice versa; foster a collaborative and innovative environment by proactively finding opportunities to innovate and create clarity and alignment between different units. Contribute to computational tools by helping improve the use, service, and integration of AI models through feedback to software engineers and the foundational machine learning unit; assist in improving data management systems and workflows. Maintain the highest scientific standards with publication-grade work; stay current on developments in synthetic biology; continue building understanding of generative AI and expanded areas of protein and cell biology; participate in knowledge sharing through organizing and presenting at internal reading groups; attend and present at conferences when relevant.

Undisclosed

()

San Francisco, United States
Maybe global
Remote

Machine Learning Researcher, Audio

New
Top rated
Bland
Full-time
Full-time
Posted

As a Machine Learning Researcher at Bland, your responsibilities include building and scaling next-generation text-to-speech (TTS) systems by designing and training large scale models capable of expressive, controllable, and human-sounding output, developing neural audio codec-based TTS architectures for efficient and high-fidelity generation, improving prosody modeling, question inflection, emotional expression, and multi-speaker robustness, and optimizing for real-time, low-latency inference in production. You will advance speech-to-text modeling by building and fine-tuning large scale ASR systems robust to accents, noise, telephony artifacts, and code switching, leveraging self-supervised pretraining and large-scale weak supervision, and improving transcription accuracy for real-world enterprise scenarios including structured extraction and conversational nuance. You will pioneer neural audio codecs by researching and implementing neural audio codecs that achieve extreme compression with minimal perceptual loss, exploring discrete and continuous latent representations for scalable speech modeling, and designing codec architectures that enable downstream generative modeling and controllable synthesis. Additionally, you will develop scalable training pipelines by curating and processing massive audio datasets across languages, speakers, and environments, designing staged training curricula and data filtering strategies, and scaling training across distributed GPU clusters focusing on cost, throughput, and reliability. You will run rigorous experiments by designing ablation studies to isolate the impact of architectural changes, measuring improvements using both objective metrics and perceptual evaluations, and validating ideas quickly through focused experiments that confirm or eliminate hypotheses.

$160,000 – $250,000
Undisclosed
YEAR

(USD)

San Francisco, United States
Maybe global
Hybrid

Scientist I, Platform Development and Antibody Screening

New
Top rated
Xaira
Full-time
Full-time
Posted

The job requires industry experience as a research engineer in an AI-related company and involves working, learning, and teaching within a collaborative team focused on solving challenging problems.

Undisclosed

()

London, United Kingdom
Maybe global
Hybrid

Model Policy Manager, Chemical & Biological Risk

New
Top rated
OpenAI
Full-time
Full-time
Posted

Design model policies that govern safe model behavior in an objective and defensible way, including determining how models should respond in risky or unsafe scenarios and defining what constitutes unsafe behavior while balancing safety and beneficial model capabilities. Develop taxonomies to inform data collection campaigns, model behavior, and monitoring strategies, balancing utility maximization with catastrophic risk prevention. Lead prioritization of safety efforts across the company for new model launches, addressing technical and business trade-offs. Develop a broad range of subject matter expertise while maintaining agility across various topics. Collaborate with many internal teams requiring high organizational acumen and confident decision making.

$207,000 – $295,000
Undisclosed
YEAR

(USD)

San Francisco, United States
Maybe global
Hybrid

Applied Research - Team Lead

New
Top rated
Firsthand
Full-time
Full-time
Posted

Lead the research, development, and deployment of AI agents for production systems. Collaborate closely with engineering and product teams to integrate AI capabilities into the product experience. Drive the full life-cycle of AI systems from conception through deployment, including building robust evaluation frameworks to measure and improve agent performance. Stay at the forefront of AI by exploring the latest advancements in agents, evals, and applied AI research. Provide strategic direction and mentorship while contributing directly to prototyping, building, and iterating on AI systems.

$200,000 – $260,000
Undisclosed
YEAR

(USD)

New York, United States
Maybe global
Hybrid

AI Research Engineer

New
Top rated
Normal Computing
Full-time
Full-time
Posted

Design and implement multi-agent and reinforcement learning (RL) approaches for agentic code generation and tool-use. Build research prototypes that integrate with nectar and collaborate to productionize successful results. Create evaluation suites including task specifications, pass/fail checkers, coverage, and cost/latency dashboards. Acquire and curate datasets from PDFs, logs, tables, and generate synthetic data when appropriate, while maintaining data cards and licensing. Analyze experiments using disciplined ablations, document results and decisions. Stay current on developments in LLM agents, RL (offline/online, RLHF/RLAIF), constrained decoding, and program synthesis.

$300,000 – $400,000
Undisclosed
YEAR

(USD)

New York City, United States
Maybe global
Onsite

Applied Legal Researcher

New
Top rated
Harvey
Full-time
Full-time
Posted

Develop and deliver subject-matter expertise to support AI research; work closely with engineering, product, and design teams to define and develop AI systems; build and improve AI systems through prompt engineering, fine tuning, and other techniques; build proprietary benchmarks and datasets to evaluate models and model systems; partner directly with clients to understand their workflows, identify pain points, and translate complex business and legal requirements into technical solutions.

$180,000 – $220,000
Undisclosed
YEAR

(USD)

New York, United States
Maybe global
Onsite

Applied Legal Researcher

New
Top rated
Harvey
Full-time
Full-time
Posted

Develop and deliver subject-matter expertise to support AI research; work closely with engineering, product, and design teams to define and develop AI systems; build and improve AI systems through prompt engineering, fine tuning, and other techniques; build proprietary benchmarks and datasets to evaluate models and model systems; partner directly with clients to understand their workflows, identify pain points, and translate complex business and legal requirements into technical solutions.

$180,000 – $220,000
Undisclosed
YEAR

(USD)

San Francisco, United States
Maybe global
Onsite

Research Scientist, Human AI Interaction

New
Top rated
Handshake
Full-time
Full-time
Posted

As a Research Scientist, Human–AI Interaction, you will lead research at the intersection of Human–Computer Interaction, Large Language Models, and task-level benchmarking to define how AI systems support real human work. Responsibilities include leading research on jobs-to-be-done benchmarks for AI systems by defining task taxonomies grounded in real professional and economic activities, identifying meaningful task completion criteria, and translating qualitative work understanding into measurable benchmarks. Develop methods to measure human activity in AI-mediated workflows and design benchmarks to assess AI-as-a-collaborator/copilot. You will design and run empirical studies involving controlled experiments and field studies to measure task performance and capture fine-grained interaction traces, drive strategy for professional-domain AI benchmarks based on understanding domain-specific workflows, and build and prototype AI systems and evaluation infrastructure including LLM-powered copilots, benchmark harnesses, data pipelines, and human-in-the-loop evaluation interfaces. Collaborate closely with User Experience Research to leverage qualitative insights and translate ethnographic findings into formal research constructs. Publish and present your research regularly to advance the field of human-centered AI benchmarking at top-tier conferences.

$350,000 – $420,000
Undisclosed
YEAR

(USD)

San Francisco, United States
Maybe global
Onsite

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[{"question":"What does a AI Applied Research Scientist do?","answer":"AI Applied Research Scientists lead research initiatives to develop new AI methodologies and algorithms. They design experiments, build prototypes, and create proof-of-concepts to test innovative AI systems. Their work involves implementing cutting-edge techniques in areas like computer vision or NLP, collaborating with engineers to transition research into production, and publishing findings in academic journals. These researchers bridge the gap between theoretical AI advancements and practical applications for specific domains."},{"question":"What skills are required for AI Applied Research Scientist?","answer":"Essential skills for this role include expertise in machine learning frameworks, proficiency in Python with libraries like PyTorch, LangChain, and Streamlit, and the ability to implement algorithms from scratch. Strong research design capabilities and problem-solving skills are crucial. Experience with deep learning, computer vision, or NLP is highly valued. Additionally, excellent communication abilities for interdisciplinary collaboration and technical documentation are necessary in AI research positions."},{"question":"What qualifications are needed for AI Applied Research Scientist role?","answer":"Most employers require a Master's degree at minimum, with a PhD preferred, in Computer Science, Electrical Engineering, or related technical fields. Candidates typically need at least 3 years of hands-on experience in AI/ML research and deep learning algorithms. Demonstrated expertise in specific domains like computer vision is often expected. The ability to handle ambiguous research areas and collaborate effectively across teams is essential beyond academic credentials."},{"question":"What is the salary range for AI Applied Research Scientist job?","answer":"While specific salary figures aren't available in the research provided, AI Applied Research Scientist positions generally command premium compensation due to their specialized expertise and advanced education requirements. Salaries typically vary based on factors including location (with tech hubs paying more), years of research experience, publication history, domain specialization (like computer vision or NLP), and whether the role is in industry or academia."},{"question":"How long does it take to get hired as a AI Applied Research Scientist?","answer":"The hiring process for AI Applied Research Scientist positions typically takes 1-3 months. It often involves multiple interview rounds including technical assessments, research presentations, and discussions with cross-functional teams. The timeline may extend if the role requires specialized domain expertise or if candidates need to demonstrate their research capabilities through sample projects. Educational requirements (PhD preferred) also lengthen the career preparation timeline considerably."},{"question":"Are AI Applied Research Scientist job in demand?","answer":"Yes, AI Applied Research Scientist jobs are in high demand across industries as organizations seek experts who can translate theoretical AI advancements into practical applications. The specialized skill set combining deep technical expertise with implementation capabilities makes qualified candidates particularly valuable. While exact numbers aren't provided in the research, the position's critical role in developing new AI methodologies and bridging research-to-production gaps drives consistent hiring needs."}]