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A

Security Engineering Manager, Threat Detections

Amazon

Full-time
$125K–$157K
Estimated
USA, Arlington
Systems, Quality, & Security Engineering
Machine Learning
R
+5 more
A

Specialist Solutions Architect GenAI and AIML for ISV, AGS France Specialists

AWS EMEA SARL (France Branch)

Full-time
$125K–$157K
Estimated
FRA, Lille, FRA, Toulouse +3 more
Solutions Architect
Machine Learning
Deep Learning
+12 more
A

SDE II, Same Day Delivery

Amazon

Internship
$125K–$157K
Estimated
USA, Bellevue
Software Development
Machine Learning
R
+3 more
A

System Engineer, AI Research, Prime Video

Amazon

Internship
$125K–$157K
Estimated
USA, Seattle
Systems, Quality, & Security Engineering
Machine Learning
Deep Learning
+13 more
A

Software Development Engineer II, Amazon

Amazon

Internship
$125K–$157K
Estimated
USA, Seattle
Software Development
Machine Learning
Generative Ai
+11 more
A

Sr. Power Engineer, Annapurna Labs

Annapurna Labs (U.S.) Inc.

Internship
$125K–$157K
Estimated
USA, Austin
Hardware Development
Machine Learning
Rag
+6 more
G

Customer Engineer III, AI/ML, HCLS, Google Cloud

Google

Full-time
$125K–$157K
Estimated
Remote
Advanced
Machine Learning
Deep Learning
+14 more
A

Amazon Q Builder, Amazon Q Customer Success Team

Amazon

Internship
$125K–$157K
Estimated
USA, Boston, USA, Austin +8 more
Machine Learning Science
Generative Ai
Rag
+12 more
A

Software Development Engineer II, Discovery Experiences, Amazon Devices

Amazon

Internship
$125K–$157K
Estimated
USA, Seattle
Software Development
Machine Learning
Llm
+7 more
A

Associate, ML Data Operations, GO-AI Operations

Amazon

Contract
$125K–$157K
Estimated
IND, Hyderabad - Virtual, IND, Pune +4 more
Machine Learning Science
Llm
R
+1 more
A

Sr. BD Manager, ME_AD, Industry Cluster 1

Amazon

Contract
$125K–$157K
Estimated
CHN, Beijing
Sales, Advertising, & Account Management
Machine Learning
Rag
+8 more
A

Research Scientist, Global Hiring Science

Amazon

Internship
$125K–$157K
Estimated
USA, Seattle
Research Science
Machine Learning
Llm
+10 more
A

Principal Applied Scientist, Traffic Quality

Amazon

Full-time
$125K–$157K
Estimated
GBR, London
Machine Learning Science
Machine Learning
Deep Learning
+5 more
A

System Development Engineer, AI Annotation, Prime Video

Amazon

Internship
$125K–$157K
Estimated
USA, Seattle
Systems, Quality, & Security Engineering
Machine Learning
Computer Vision
+10 more
A

Sr. Applied Scientist, Pricing and Promotions Science

Amazon

Internship
$125K–$157K
Estimated
USA, Seattle
Research Science
Machine Learning
Deep Learning
+14 more
A

Software Development Engineer, Amazon Catalog services team

Amazon

Internship
$125K–$157K
Estimated
USA, Seattle
Software Development
Machine Learning
R
+8 more
A

Senior Applied Scientist, Artificial General Intelligence

Amazon

Internship
$145K–$177K
Estimated
USA, Sunnyvale, USA, Bellevue +2 more
Machine Learning Science
Machine Learning
Deep Learning
+14 more
A

Data Scientist I, Data Scientist I

ATSPL - Haryana

Internship
$125K–$157K
Estimated
IND, Gurugram
Business Intelligence
Machine Learning
Llm
+11 more
A

Sr Product Manager, Analytics, DST DSP DA Experience

Amazon

Internship
$125K–$157K
Estimated
USA, Nashville, USA, Bellevue
Project/Program/Product Management--Non-Tech
Machine Learning
Rag
+11 more
A

Sr Amazon Q Builder, Amazon Q Customer Success Team

Amazon

Internship
$125K–$157K
Estimated
USA, Boston, USA, Austin +7 more
Machine Learning Science
Generative Ai
Rag
+11 more

Showing 2701 to 2720 of 2875 jobs(page 136 of 144)

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Alex Baker

Data Engineer Intern

As a recent graduate, aicareerspace.com's AI matching surfaced internships I would have missed. I started getting interviews within a few weeks and accepted an offer shortly after.

E

Elena Markov

Senior Data Scientist

The AI Job Match fit my profile perfectly—relevant roles only, no noise. I moved straight to final rounds for two top positions.

D

David Chen

AI Engineer

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P

Priya Narayanan

Machine Learning Intern

Saved jobs + tracker kept my search organized. aicareerspace.com matched me to an ML internship that aligned with my skills and goals.

S

S. Patel

Senior Technical Recruiter

After posting on aicareerspace.com we received fewer but far stronger applications. Candidate quality and skill alignment were excellent.

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J. Rivera

Head of Engineering

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Databricks has integrated Google's Axion-based C4A virtual machines into its platform, delivering significant performance and efficiency gains for data and AI workloads. These Arm-based processors offer up to 65% better price-performance and 60% better energy efficiency compared to x86 instances, accelerating SQL analytics, AI/ML training, and ETL pipelines. For AI professionals and startups, this collaboration represents a major infrastructure optimization that can reduce runtime by 20-25% while cutting costs by 10-15%, making large-scale AI deployments more sustainable and cost-effective on Google Cloud.

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Selenium has emerged as a powerful open-source framework that revolutionizes web application testing by enabling automated browser interactions across multiple platforms. This testing approach delivers significant advantages including faster execution, higher accuracy, and better scalability compared to manual methods, making it essential for modern development workflows. For AI professionals and startups, Selenium's integration with CI/CD pipelines and support for multiple programming languages makes it a cost-effective solution for ensuring software quality while accelerating release cycles. The framework's widespread adoption by tech giants like Google and Netflix underscores its reliability for building robust, enterprise-grade applications.

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Credible storytelling has become essential for builders and startups seeking to cut through the noise and build lasting trust with users and investors. This practical framework emphasizes verifiable evidence over hype, focusing on measurable outcomes, clear mechanisms, and honest limitations that practitioners can actually verify. For AI professionals and founders, adopting this approach means communicating like engineers - with specific metrics, reproducible results, and transparent constraints that withstand scrutiny. The playbook provides a structured narrative architecture that helps technical teams communicate their value proposition while maintaining integrity and building sustainable credibility.

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A developer is seeking AI-powered solutions to detect unreliable scoring patterns in performance evaluation questionnaires, moving beyond basic rule-based systems that flag obvious patterns like all-identical scores or perfect zigzag sequences. Current approaches are too rigid and fail when assessors slightly modify their gaming behavior, highlighting the need for more sophisticated anomaly detection and unsupervised learning methods. This represents a growing market opportunity for AI startups developing survey reliability tools that can generalize across different questionnaire types and leverage assessor behavioral data. For AI professionals, this showcases practical applications of sequence analysis and behavioral pattern recognition in enterprise assessment systems.

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This discussion focuses on advancing computer vision capabilities for detecting and recognizing small objects within complex real-world environments, addressing a fundamental challenge in the field. Small object detection remains difficult due to limited pixel information and background clutter, making this an active area of research for AI developers and computer vision engineers. For startups, solving this problem opens opportunities in surveillance, autonomous vehicles, medical imaging, and industrial quality control where precise small object identification is critical. The continued innovation in this space demonstrates the ongoing need for improved architectures and training techniques to handle scale variations in practical applications.

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Tantor Postgres 17.5.0 introduces OAuth 2.0 Device Authorization Flow support, providing a modern security framework that centralizes authentication through external providers like Keycloak. This represents a significant advancement for database security in cloud and microservices environments, allowing applications to request database access on behalf of users without storing passwords locally. For AI startups and developers, this enhanced security model enables more robust data protection in distributed systems while maintaining developer-friendly authentication workflows. The implementation demonstrates how traditional databases are evolving to meet modern security requirements, offering valuable insights for teams building secure AI applications with database backends.

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Productivity expert Jeff Su reveals four powerful ChatGPT techniques that dramatically reduce AI-related workload, including reverse-engineering effective prompts and generating multiple content formats in minutes. These practical strategies help users avoid endless prompt tweaking while enabling ChatGPT to self-critique its outputs and provide outlines before writing. For AI professionals and job seekers, these actionable methods can reclaim hours of daily work, making AI tools more efficient and accessible for real-world productivity gains across various professional contexts.

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Java's Integer Caching is a clever JVM optimization that automatically reuses Integer objects for values between -128 and 127, reducing memory allocation and improving performance for commonly used numbers. This hidden feature explains why identical Integer objects sometimes share memory references while others don't, with developers able to customize the cache range using JVM parameters. For AI developers and startup engineers working with Java-based systems, understanding this optimization can lead to significant performance improvements in data-intensive applications and help avoid common pitfalls when comparing object references versus values.

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A Y Combinator-backed startup called VectorSchool is building a completely free, project-based coding education platform designed for the AI era, emphasizing practical skills like system design. Founded by experienced engineers from UC Berkeley with backgrounds at AWS SageMaker and early-stage startups, the program aims to combine the rigor of university education with the affordability of self-study and practicality of coding bootcamps. For AI job seekers and aspiring developers, this represents an accessible pathway to gain industry-relevant skills without traditional education costs, with the founders providing active support through Discord community engagement.

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Palantir CEO Alex Karp has publicly challenged Wall Street analysts who he believes consistently undervalue the AI and data analytics company, defending its unique position in the technology landscape. Karp's bold statements highlight the ongoing tension between innovative AI companies and traditional financial valuation methods that may not fully capture their long-term potential. For AI startups and investors, this underscores the challenge of communicating transformative technology value to conventional markets while maintaining confidence in disruptive business models that redefine industry standards.

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This article challenges the common obsession with collecting prompt templates and tricks, arguing that mediocre AI results stem from the user's thinking process rather than the prompts themselves. The author emphasizes that true AI mastery requires developing internal clarity and cognitive skills before even writing prompts. For AI professionals and startups, this represents a fundamental shift from treating AI as a shortcut to approaching it as a thinking discipline that amplifies human intelligence.

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This insightful piece reveals that most AI users plateau because they focus on external prompt techniques while ignoring the crucial internal 'Self Layer' of thinking. The author argues that prompting is fundamentally about translating clear thought into structured intelligence, not just typing commands. For job seekers and AI professionals, mastering this cognitive approach represents the difference between average results and exceptional AI performance, positioning thinking skills as the new competitive advantage in the AI era.

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