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Discover 688 open remote ai jobs positions

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D

Software Engineer, Distributed Databases

DoorDash

Full-time
$70K–$100K
Estimated
Remote
Rag
R
Scala
+3 more
B

Staff Machine Learning Engineer/Applied Scientist

BioRender

Full-time
$145K–$177K
Estimated
Remote, US +1 more
Machine Learning
Deep Learning
Natural Language Processing
+13 more
N

Founding AI engineer

nao Labs

Internship
$125K–$157K
Estimated
Remote, Paris, FR
Generative Ai
Llm
Transformers
+9 more
C

Senior Data Analyst

Community Phone Company

Contract
$118K–$160K
Estimated
Remote
Rag
Gpt
Python
+16 more
S

Senior ML/AI/CV Software Engineer

Skyways

Full-time
$145K–$177K
Estimated
Remote, Austin, TX
Machine Learning
Computer Vision
Python
+4 more
S

Senior AI/ML Engineer

StackAI

Internship
$145K–$177K
Estimated
Remote, San Francisco, US +1 more
Machine Learning
Generative Ai
Llm
+16 more
M

Applied AI Engineer

Mem0

Contract
$130K–$165K
Estimated
Remote, San Francisco Bay Area
Llm
Rag
Python
+17 more
D

AI Engineer

Datrics

Full-time
$102K–$118K
Estimated
Remote
Llm
Python
R
+2 more
R

Data Engineer

Rollstack

Contract
$102K–$118K
Estimated
Remote
Python
R
Go
+10 more
W

Software Engineer, Machine Learning

Whatnot

Internship
$125K–$157K
Estimated
Remote
Machine Learning
Rag
Python
+20 more
C

Prompt

Cyble

Full-time
$125K–$157K
Estimated
Remote, Bengaluru, IN
Machine Learning
Llm
Rag
+8 more
N

Lead Data Engineer

Notabene

Internship
$118K–$160K
Estimated
Remote
Python
R
Typescript
+12 more
S

Machine Learning Engineer, Identity

Stripe

Internship
$125K–$157K
Estimated
Remote, San Francisco
Machine Learning
Computer Vision
R
+6 more
M

Technical Customer Support Representative

MixRank

Full-time
$80K–$110K
Estimated
Remote, BR
Python
R
Java
+10 more
S

Security Engineer

StackAI

Internship
$125K–$157K
Estimated
Remote, New York, US +1 more
Machine Learning
Llm
Rag
+22 more
P

Machine Learning Engineer Intern -

Peakflo

Full-time
$72K–$125K
Estimated
Remote, IN
Machine Learning
Natural Language Processing
Llm
+17 more
H

Developer Relations Engineer

Hatchet

Full-time
$130K–$165K
Estimated
Remote, NY, US +1 more
Llm
Python
R
+4 more
C

Senior Data Engineer

Cyble

Full-time
$145K–$177K
Estimated
Remote, IN +1 more
Machine Learning
R
Git
+1 more
C

Data Engineer

Cyble

Full-time
$125K–$157K
Estimated
Remote, IN +1 more
Machine Learning
R
Aws
+2 more
L

Lead Software Engineer – AI Focused

LunaJoy Health

Full-time
$145K–$177K
Estimated
Remote, CO +8 more
Generative Ai
Llm
Rag
+22 more

Showing 1 to 20 of 688 jobs(page 1 of 35)

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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.

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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.

J

J. Rivera

Head of Engineering

The first week brought short‑listed, interview‑ready ML engineers. Best signal‑to‑noise we’ve seen from any job board.

Latest AI News

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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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The 2WHAV framework introduces a structured approach to AI-assisted development by replacing conversational prompting with executable specifications and systematic feedback loops. This methodology transforms vague requirements into robust code through iterative blueprint refinement rather than reactive patching. For startups and AI engineers, this represents a scalable solution to common LLM development pitfalls like silent regressions and lack of traceability, enabling more reliable and maintainable AI-generated codebases.

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A groundbreaking study on anti-money laundering in Mexico demonstrates that AI-powered predictive models can identify 92% of suspicious transactions with 95% precision by analyzing financial institution data. The research combined traditional machine learning with deep learning techniques to detect behavioral anomalies and money laundering patterns in real-time. For AI professionals and fintech startups, this represents a major advancement in automated compliance that reduces false positives while improving detection accuracy. The findings show how AI can transform financial security operations, creating new opportunities for developers specializing in regulatory technology and fraud detection systems.

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This technical guide introduces Condition variables as a sophisticated solution for complex task coordination in asynchronous programming, addressing limitations of basic Event patterns. The article demonstrates how Conditions prevent race conditions and spurious wakeups when managing shared resources with capacity limits, using Python asyncio examples. For AI developers building distributed systems or concurrent processing pipelines, mastering Conditions is essential for creating robust, efficient applications that handle multiple simultaneous operations. This knowledge is particularly valuable for startups scaling their infrastructure, as proper task coordination directly impacts system reliability and performance under load.

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This technical deep dive explains how BIP-39 standardizes the generation of secure seed phrases for web3 wallets using cryptographic entropy and SHA-256 hashing. The process converts 128-bit random numbers into 12 or 24-word mnemonics through sophisticated mathematical operations, creating astronomically secure private keys. For AI professionals and startups in the blockchain space, understanding these cryptographic foundations is crucial for building secure decentralized applications and wallet infrastructure. The article demonstrates how this technology enables reliable account recovery while maintaining robust security against brute force attacks.

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A 14-year-old ethical hacker shares their innovative approach to building offline cybersecurity simulation tools for educational purposes. Their projects including TickFlock (social behavior simulation), photo_trace_project (metadata awareness), and cast_alert.py (device control testing) are designed to teach digital forensics and system behavior in safe, controlled environments. For AI professionals and startups, this demonstrates how modular, offline-first simulation tools can provide valuable training platforms without cloud dependencies or security risks. The philosophy emphasizes simulation over exploitation, creating family-safe tools that empower future cybersecurity defenders through hands-on learning experiences.

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This comprehensive guide bridges theoretical understanding of stack data structures with practical LeetCode problem-solving, covering the essential LIFO (Last In, First Out) principle. The article provides real-world analogies like browser history and undo functionality, along with Python implementations and time complexity analysis for core operations. For AI job seekers and developers, mastering stack fundamentals is critical for technical interviews and solving algorithmic challenges involving balanced expressions, function call management, and recursive problems. The guide demonstrates how stack-based patterns form the foundation for more complex data structures and algorithms used in AI system design and optimization.

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OpenAI CEO Sam Altman faced intense questioning about the company's financial sustainability during a podcast interview, revealing tensions over its massive $1.4 trillion spending commitments despite reported losses of $11.5 billion last quarter. Altman's defensive response, telling an investor 'Enough' and offering to find buyers for their shares, highlights growing investor concerns about an AI bubble and OpenAI's path to profitability. For AI professionals and startups, this underscores the high-stakes pressure even top AI companies face to balance ambitious R&D with revenue generation, signaling that the industry's growth may be outpacing its economic foundations.

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Academic researchers are evaluating Elon Musk's AI-powered encyclopedia project Grok, raising questions about its reliability and trustworthiness as an information source. This scrutiny highlights ongoing challenges in ensuring AI-generated content meets accuracy and credibility standards, especially for educational or reference applications. For AI job seekers and professionals, it emphasizes the growing need for roles focused on AI ethics, validation, and content quality assurance in an era where AI tools are increasingly used for knowledge dissemination.

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AMD's new Radeon AI PRO R9700 graphics card is positioning itself as a strong contender in the workstation market, delivering competitive performance and value for AI and compute-intensive tasks. This development signals increased competition in the hardware space, which could drive down costs and expand accessibility for AI development and research. For startups and AI professionals, more affordable high-performance GPU options mean lower barriers to entry for training models and running complex simulations, potentially accelerating innovation across the industry.

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A new manifesto proposes 'document-driven development' as a methodology where humans and AI collaborate through plain language documentation to create better code and maintain project understanding. This approach aims to address the challenge of gatekeeping in software development by creating a transparent ledger of human-AI interactions. For AI professionals and developers, this represents an emerging paradigm that could redefine software engineering roles, emphasizing documentation skills and AI collaboration over traditional coding expertise alone.

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Frequently Asked Questions About Our AI Career Platform

Get answers to common questions about aicareerspace's AI-powered career and hiring platform

aicareerspace uses semantic search and skills inference to compare your resume/profile against live remote ai jobs job descriptions—finding real-fit matches across seniority, tech stack, and remote/on-site preferences.

Yes. Paste a job description and our AI highlights gaps, missing keywords, and recommended improvements so your resume ranks higher for ${categoryName.toLowerCase()} roles.

Absolutely. Add roles, track stages (Applied, Interview, Offer), store notes, and manage timelines—all in one place.

You can bookmark roles to revisit later and create targeted alerts (e.g., Remote ${categoryName}, Senior, Contract) so you never miss new postings.

Yes—use the Remote toggle to view remote roles, or turn it off to see all jobs. Popular searches include Remote Machine Learning, Data Science, MLOps, NLP, and Computer Vision positions.

New users get free trial access to explore AI matching, resume fit analysis, saved jobs, and personalized recommendations.

Companies can publish roles to reach thousands of AI professionals. We promote listings to relevant talent pools across ML Engineering, Data Engineering, NLP, CV, and Product AI.

Strong fundamentals plus in-demand tools (e.g., Python/TypeScript, SQL, TensorFlow/PyTorch, Spark, Kubernetes, AWS/GCP, ML Ops) boost match scores. Our analyzer suggests targeted keywords for each role.

Yes. Verified students get 50% off our paid services—submit a valid student ID for quick verification and discounted access.