CrawlJobs Logo

Filters

Location
Salary
Clear all filters

AI Solutions Engineer United States, Austin Jobs

4 Job Offers

Ai Solutions Architect / Field Application Engineer
Save Icon
Join AMD as an Entry-Level AI Solutions Architect in Austin. Apply your AI/ML knowledge and Python/C++ skills to deploy and optimize workloads on AMD CPU/GPU platforms. This customer-facing role blends technical enablement, systems work, and program management for AI solutions.
Location Icon
Location
United States , Austin
Salary Icon
Salary
102320.00 - 153480.00 USD / Year
amd.com Logo
AMD
Expiration Date
Until further notice
Senior AI Solutions Engineer
Save Icon
Join Goodleap as a Senior AI Solutions Engineer. Design and build intelligent automations using platforms like Zapier, n8n, and AWS, integrating AI features to streamline operations. Leverage 6+ years of experience in scripting and automation to reduce manual effort. This remote US role offers ca...
Location Icon
Location
United States , Roseville; Austin; Irvine; Lehi; Plano; San Francisco
Salary Icon
Salary
146000.00 - 170000.00 USD / Year
goodleap.com Logo
GoodLeap
Expiration Date
Until further notice
Senior Software Engineer, AI Solutions
Save Icon
Join GoodLeap as a Senior Software Engineer, AI Solutions. Build scalable AI-powered applications using AWS and agentic tools like Claude Code. Collaborate with cross-functional teams in San Francisco, Austin, or other US hubs to drive innovation in sustainable home solutions. Bring 5+ years of f...
Location Icon
Location
United States , San Francisco; Roseville; Austin; Irvine
Salary Icon
Salary
146000.00 - 170000.00 USD / Year
goodleap.com Logo
GoodLeap
Expiration Date
Until further notice
Ai Solutions Architect / Field Application Engineer
Save Icon
Location Icon
Location
United States , Austin
Salary Icon
Salary
128400.00 - 192600.00 USD / Year
amd.com Logo
AMD
Expiration Date
Until further notice

About the AI Solutions Engineer role

Explore the dynamic world of AI Solutions Engineer jobs and discover a career at the intersection of cutting-edge technology and real-world business applications. An AI Solutions Engineer is a highly technical and client-facing professional responsible for bridging the gap between complex artificial intelligence capabilities and tangible business outcomes. They are the key architects who translate a client's strategic needs into functional, scalable, and effective AI-powered solutions. This role is pivotal in the modern tech landscape, acting as both a technical expert and a strategic advisor to demonstrate how AI can solve critical challenges and drive innovation.

Professionals in these jobs typically engage in a multifaceted workflow. A core responsibility is collaborating with stakeholders, including sales teams, product managers, and potential clients, to understand their unique business problems and identify opportunities where AI can deliver significant value. They then architect and design tailored solutions, which often involves selecting the appropriate models, frameworks, and infrastructure. A significant part of the role is building compelling proof-of-concepts (POCs) and prototypes to demonstrate the feasibility and potential of the proposed AI solution. This hands-on development is crucial for securing buy-in and moving projects forward. Furthermore, AI Solutions Engineers are often tasked with presenting and demoing these solutions to technical and non-technical audiences, effectively communicating complex concepts in an accessible manner. They also provide critical technical guidance throughout the pre-sales and sometimes post-sales process, ensuring a smooth transition from concept to implementation. In leadership-oriented roles, they may mentor junior engineers and help shape the overall AI strategy for an organization.

To succeed in AI Solutions Engineer jobs, a specific and robust skill set is required. A strong foundation in computer science, often backed by a Bachelor's or Master's degree in a quantitative field like Engineering or Computer Science, is typical. Hands-on programming proficiency in Python is almost universal, coupled with deep experience using machine learning and deep learning frameworks such as TensorFlow, PyTorch, and Scikit-learn. In today's landscape, competency with Large Language Models (LLMs) and Generative AI (GenAI) tools and APIs is increasingly essential. Practical knowledge of the MLOps lifecycle, including model deployment, containerization with Docker and Kubernetes, and working within cloud environments like AWS or Azure, is highly valued. Beyond technical acumen, exceptional soft skills are paramount. This includes stellar communication and presentation abilities to articulate technical value propositions, strong problem-solving skills to navigate unstructured challenges, and proven project management and stakeholder management capabilities. For those seeking leadership positions within these jobs, experience in team management and aligning AI initiatives with executive-level business goals is a key differentiator. If you are passionate about leveraging AI to build the future and possess a blend of deep technical expertise and business savvy, exploring AI Solutions Engineer jobs could be your ideal career path.