AI Agent Infrastructure Landscape

912 systems · 528 edges · 912 visible

Click a row to inspect · shift-click rows (2-4) to compare · click headers to sort
IdentityTaxonomySubstanceActivityAdoptionCommercialOperationalMemory semanticsStandardsSection-deepArchitectureResearchJudgement
System Tier Memory model Storage Retrieval Persistence Update Unit Governance Conflict res. What it does & what's distinct Claims / benefits Modalities Created Latest release License GitHub Mindshare Citations Funding Customers / scale Pricing Compliance Data handling Deployment HQ Founders / pedigree Memory volume / scale Performance Reproducibility Code/weights release API surface Latency p50/p99 Throughput Backend storage Multi-tenancy Encryption SSO / RBAC Embedding model Consistency Versioning Tombstoning Schema evolution Namespace primitives Contradiction handling Forgetting policy MCP support A2A support OTel Webhooks / events Import / export Integration count Orchestration Programmatic control Vendor benchmarks Pricing specifics Agent abstraction Memory primitives LLM lock Runtimes Session handling Validated verticals Time to running Anti-fit Optimised for Adjacent infrastructure Pros Cons Project & sources
π0.5 (Physical Intelligence) T1Multi-Scale Embodied Memory (short + long episodic) 2vectorattentionsimilaritylong-termappend-onlyconsolidationepisodetrajectoryopaqueappendExtends π0 with MEM layer giving the policy short-term (within-task) + long-term (cross-task, >10-min horizon) memory. Co-trained on robot teleoperation + human video + text. Hierarchical inference: VLA predicts subtasks as text tokens, then executes as action chunks. 2Open-world generalisation to unseen household environments. Cleans an entirely new kitchen with no environment-specific training. 2vision + sensor + text 22024 (Physical Intelligence formally founded 2024; informal work began Q3 2023; Chelsea Finn Sergey Levine Karol Ha… 2not applicable — not OSS 3not applicable — not OSS 3not applicable — no GitHub repo 3searched not found 2not applicable — not academic 3$400M total $2.0B val Series A · 2024-11 251-200 ppl 2searched not found 2searched not found 2Trained on Open X-Embodiment + proprietary in-house datasets; open-source weights available Cloud inference + on-robot deployment (websocket streaming) US (San Francisco) 2Physical Intelligence; founders Sergey Levine (UC Berkeley robotics professor) Karol Hausman Ch… 2no scale claim 2π0.5 (Physical Intelligence): open-world generalisation results — clean unseen kitchens (vendor paper) 2not applicable — not a research paper 3not applicable — not a research paper 3searched not found 2searched not found 2searched not found 2searched not found 2searched not found 2searched not found 2searched not found 2searched not found 2not applicable — embodied policy, not a database 2model-version semantics (policy checkpoints) 2not applicable — embodied policy, not a database 2not applicable — embedded policy weights, no schema 2robot-per-instance (per-robot memory) 2always append (no resolution) 2episode-based memory; long-term memory module retains landmarks; episodic memory pruned per task 2no MCP support advertised — vertical product, no MCP server / client integration documented 2no A2A protocol support advertised — vertical product, no A2A integration documented 2no OpenTelemetry integration advertised — vendor logs/observability not publicly documented 2no public webhook API advertised — vendor product, no public docs for webhook integration 2no public import/export API advertised — vendor product, data movement via enterprise integration only 2not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3robotics (humanoid, manipulation), autonomous-driving, embodied AI research 2weeks-to-months (custom robot/vehicle integration) or research-only code release 2not for non-embodied / non-physical use cases 2real-time perception + spatial reasoning + multi-modal sensor fusion 2requires robot / vehicle hardware + sensor stack 2Generalist robot policy with strong simulation-to-real transfer; memory is implicit in the policy network rather than explicit external store. 2Implicit memory is harder to inspect or edit; embodied agent only — not generalizable to LLM agents. 2π0.5 blog paper 2
01.AI Yi family stale T2Open-weights frontier-tier Chinese model family (Yi-Lightning / Yi-34B) 2parametrickv-cacheparametric-recallattentionparametric-permanentread-onlyweightkv-tokenopaquen/aKai-Fu Lee's 01.AI (founded 2023, Beijing). Yi family open-weights — Yi-34B (2023), Yi-Large (proprietary 2024), Yi-Lightning (2024-10, frontier-tier, matched GPT-4o on LMSYS chatbot arena). Apache 2.0 (Yi-34B and base sizes). Important second Chinese open-weights option alongside DeepSeek + Qwen. 2Yi-Lightning matched GPT-4o on LMSYS Arena Oct-2024 at fraction of training cost; Yi-34B Apache 2.0; trained at $3M total compute claimed; Kai-Fu Lee founder pedigree (ex-Microsoft Research Asia, Google China) 2text, code; Yi-VL (vision) variant 22023-07 (01.AI founded); 2023-11 (Yi-34B); 2024-05 (Yi-Large); 2024-10 (Yi-Lightning) 2Yi-Lightning (2024-10) 2Apache 2.0 (Yi-34B + base sizes); proprietary (Yi-Large, Yi-Lightning) 2github.com/01-ai/Yi ~7k+ stars 2Top-3 Chinese model lab; LMSYS arena visibility from Yi-Lightning launch Oct-2024; meaningful but not dominant OSS HuggingFace presence 2not applicable — not academic 3$1B+ raised; >$1B valuation 2024 (Alibaba, Lightspeed China, Tencent investors) 2Chinese enterprise via 01.AI API; some Western OSS via HuggingFace (Yi-34B) 2API: Yi-Lightning $0.14 per 1M tokens (vendor-claimed lowest among frontier-tier); Yi-34B weights free under Apache 2.0 2China-based; not US-certified 2Self-hosting recommended for Western sensitive data; Apache 2.0 weights for Yi-34B remove hosted dependency 2Self-hostable (Yi-34B Apache 2.0) + 01.AI API for Yi-Large / Yi-Lightning; Together AI hosts Yi-34B 2Beijing, China 2Kai-Fu Lee (CEO; ex-Microsoft Research Asia President, ex-Google China President, Sinovation Ventures) 2not applicable — substrate foundation model 3LMSYS Chatbot Arena: Yi-Lightning matched GPT-4o (Oct-2024); MMLU ~78% (Yi-Large); MMLU-Pro ~70%; HumanEval ~85% 2not applicable — not a research paper 3open weights for Yi-34B/9B/6B/Coder; proprietary for Yi-Large/Lightning 2REST + SDK; HuggingFace Transformers for Yi-34B 2not applicable — substrate foundation model 3not applicable — substrate foundation model 3not applicable — substrate foundation model 3not applicable — substrate foundation model 3not applicable — substrate foundation model 3not applicable — substrate foundation model 3not applicable — not a memory product 3not applicable — substrate foundation model 3not applicable — substrate foundation model 3not applicable — not a memory product 3not applicable — not a memory product 3not applicable — substrate foundation model 3not applicable — not a memory product 3not applicable — not a memory product 3not applicable — substrate foundation model 3not applicable — substrate foundation model 3not applicable — substrate foundation model 3not applicable — substrate foundation model 3not applicable — substrate foundation model 3not applicable — substrate foundation model 3not applicable — substrate foundation model 3not applicable — substrate foundation model 3not applicable — substrate foundation model 3not applicable — substrate foundation model 3not applicable — substrate foundation model 3not applicable — substrate foundation model 3open (Apache 2.0 for Yi-34B); single-vendor for Yi-Lightning 2any (HuggingFace, vLLM, llama.cpp) 2not applicable — substrate foundation model 3Chinese enterprise; cost-sensitive OSS deployers globally 2<10min via 01.AI API; <1hr self-host (Yi-34B Ollama / vLLM) 2China data-residency for regulated Western workloads; Yi-Lightning closed weights; less mindshare in West than Qwen / DeepSeek 2cost-efficient frontier inference; Chinese-language native; Apache 2.0 for Yi-34B tier 2HuggingFace; Together AI hosting; Sinovation Ventures alumni network 2Kai-Fu Lee founder pedigree; Yi-Lightning matched GPT-4o on LMSYS at fraction of cost; Apache 2.0 Yi-34B is broadly deployable. 2Less Western mindshare than DeepSeek / Qwen; Yi-Lightning closed-weights; smaller OSS ecosystem; China data-residency concerns. 2www.01.ai/ 2
11x.ai T1AI sales agents (Alice, Mike, Jordan) 2none-trivialnonesession-onlyagent-controlledturnopaqueout-of-scopeFounded 2022 by Hasan Sukkar; AI sales agents Alice (outbound SDR), Mike (voice SDR), Jordan (RevOps). $50M Series B Oct-2024 (Benchmark + Andreessen Horowitz; $350M val). Among the most-discussed AI-employee startups of 2024. 2$50M Series B Oct-2024 ($350M val; Benchmark + a16z); >$10M ARR Q3-2024; thousands of customers 2not applicable — wrong section 32022 (founded) 2not applicable — wrong section 3not applicable — not OSS 3not applicable — no GitHub repo 3not applicable — wrong section 3not applicable — wrong section 3$50M Series B Oct-2024 ($350M val; Benchmark + a16z) 2Thousands of B2B SaaS customers 2Per-seat / per-agent enterprise tiers 2not applicable — wrong section 3not applicable — wrong section 3SaaS 2San Francisco / London 2Hasan Sukkar (CEO) 2not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — not OSS 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — not a memory product 3not applicable — wrong section 3not applicable — wrong section 3not applicable — not a memory product 3not applicable — not a memory product 3not applicable — wrong section 3not applicable — not a memory product 3not applicable — not a memory product 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3autonomous outbound SDR / RevOps 2not applicable — wrong section 3Largest AI-SDR by mindshare 2024; Benchmark + a16z; 'AI employees' framing resonates. 2Ongoing controversy about ICP fit and churn (TechCrunch reporting late-2024); deliverability concerns at high outbound volumes. 2www.11x.ai/ 2
1X Technologies T2Humanoid robot maker (Neo / Eve) — OpenAI portfolio 2weightparametric-recallparametric-permanentagent-controlledtrajectoryopaquetraining-timeNorway / US humanoid robot company — Eve (wheeled bimanual) + Neo (legged humanoid, consumer-targeted, late 2025 / 2026 launch). Raised $100M Series B (Jan-2024, EQT + OpenAI Startup Fund); $40M Series A (Mar-2023, OpenAI lead). Distinguishing feature: consumer-home positioning rather than industrial. 2$100M Series B Jan-2024 (EQT + OpenAI); home-consumer humanoid (Neo) targeting 2025+ 2vision + language + bimanual action 22014 (founded as Halodi Robotics) 2Neo (consumer humanoid, 2025-2026 launch) 2not applicable — not OSS 3not applicable — no GitHub repo 3Strong viral demos; consumer-home angle differentiates from Figure/Apptronik 2not applicable — not academic 3$100M Series B Jan-2024 (EQT + OpenAI Startup Fund); $40M Series A 2023 2Eve pilot deployments; Neo pre-orders / waitlist for consumer 2not applicable — wrong section 3not applicable — wrong section 3Internal trajectory data; closed weights 2Direct customer (industrial Eve + consumer Neo) 2Norway (Moss) + US (Sunnyvale) 2Bernt Børnich (CEO; founded as Halodi Robotics 2014) 2Eve pilots (~10s of units); Neo pre-orders 2Demo videos: pour, fold, manipulate; no public benchmarks 2not applicable — not a research paper 3not applicable — not OSS 3No public API 2searched not found 2searched not found 2Internal 1X cloud 2Per-customer fleet 2Enterprise-grade 2not applicable — wrong section 3not applicable — not a memory product 3searched not found 2Eve / Neo generation versioning 2not applicable — stateless 3not applicable — not a memory product 3per-customer fleet 2not applicable — stateless 3not applicable — stateless 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — stateless 3not applicable — not OSS 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3industrial (Eve) + consumer-home (Neo) 2Months (industrial deployment); Neo home-consumer launch not GA as of 2025 — pre-order waitlist only 2Consumer-home humanoid is unproven category; closed platform 2Consumer-home humanoid (Neo) vs Figure's industrial focus 2OpenAI Startup Fund portfolio; Norwegian / US robotics ecosystem 2OpenAI-backed; consumer-home angle is differentiated; viral demos. 2Smaller funding than Figure; consumer humanoid market unproven; closed weights. 21x.tech 2
6sense T2ABM intent + AI agent platform 2none-trivialnonesession-onlyagent-controlledturnopaqueout-of-scopeFounded 2013; ABM/intent platform with Revenue AI agents. $200M Series E Jan-2022 ($5.2B val; Blue Owl). 6sense Revenue AI agents launched 2024 — autonomous account research + email drafting. 2$200M Series E Jan-2022 ($5.2B val); 1500+ enterprise customers; Revenue AI agents 2024 2not applicable — wrong section 32013 (founded) 2not applicable — wrong section 3not applicable — not OSS 3not applicable — no GitHub repo 3not applicable — wrong section 3not applicable — wrong section 3$200M Series E Jan-2022 ($5.2B val; Blue Owl + SoftBank + Insight) 21500+ enterprise (Cisco, Dell, Workday, Mastercard) 2not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3San Francisco 2Amanda Kahlow (founder); Jason Zintak (CEO) 2not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — not OSS 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — not a memory product 3not applicable — wrong section 3not applicable — wrong section 3not applicable — not a memory product 3not applicable — not a memory product 3not applicable — wrong section 3not applicable — not a memory product 3not applicable — not a memory product 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3ABM + intent data + AI revenue agents 2not applicable — wrong section 3Strongest ABM/intent dataset; $5.2B val; broad enterprise base; AI agents on top of high-quality data. 2Pricing complexity; AI agents are overlay; competition with Demandbase in same niche. 26sense.com/ 2
A-MEM T3Atomic-note / Zettelkasten-style graphgraph-traversalsimilaritylong-termappend-onlyfactinspectablen/aTreats memories as atomic linkable notes — explicit nod to Zettelkasten knowledge management. Dynamic linking; retroactive memory revision. Atomic-note (Zettelkasten-style) memory: dynamic linking and retroactive revision of memories. 871 stars; NeurIPS 2025; 443 cites. 2searched not found 22025-01 2no releases MIT 871★ +10/mo Python searched not found 443 cites 443/yr 2not applicable — not commercial 3not applicable — not commercial 3searched not found 2not applicable — not commercial 3not applicable — not commercial 3searched not found not applicable — not a company 3no founder data — research paper / preprint only (no commercial entity). searched not found 2LongMemEval: reports 60.6% overall accuracy with GPT-4o-mini (atomic-note + Zettelkasten linking); LoCoMo ablations show consistent gains. 2Too recent 2Code public + weights closed not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not specified — research paper does not address this operational dimension (this is a paper/system, not a productised offering). 2immutable append-log append-only no delete schema with migration not specified — research paper does not address this operational dimension (this is a paper/system, not a productised offering). 2always append (no resolution) none (permanent) not applicable — research paper, no deployed product 3not applicable — research paper, no deployed product 3not applicable — research paper, no deployed product 3not applicable — research paper, no deployed product 3not applicable — research paper, no deployed product 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3research only not applicable - research paper / code release 3not applicable - research paper 3research positioning (see memory_model) not applicable - research paper 3Adaptive memory with explicit policy for what to remember vs forget. Research-only; no production deployment. GitHub WujiangXu/A-mem arxiv 2502.12110 NeurIPS 2025 poster
Abridge T1Grounded-transcript provenance 2filevectorsimilarityextraction-pulllong-termappend-onlyepisodedocumentauditableeditor-in-the-loopClinician-assist ambient documentation. Source mapping: every AI-generated summary element traced back to the source utterance. Audit-and-trust layer over episodic memory. Built on proprietary 1.5M+ medical-encounter dataset. 2Deployed at major academic health systems. Inpatient + outpatient tools launched 2025. Altais physician-burnout partnership. 2voice + text 22025-02 2not applicable — not OSS 3not applicable — not OSS 3not applicable — no GitHub repo 3searched not found 2not applicable — not academic 3$616M total $5.3B val Series E Extension · 2026-04 251-200 ppl 2Enterprise only 2SOC 2 Type II, ISO 27001, HIPAA (BAA required) 2Trains on de-identified patient data only (raw PHI never used for training; BAA governs all customer PHI processing) 2Managed-only 2US 2UPMC / CMU-backed; founder Shiv Rao (UPMC practicing cardiologist; ex-UPMC corporate VC; helped… 21.5M+ medical-encounter dataset (vendor claim) 2no public benchmark scores found — vendor-claim 1.5M+ medical-encounter dataset; no published WER / SOAP-accuracy metric 2not applicable — not a research paper 3not applicable — not a research paper 3searched not found 2searched not found 2searched not found 2searched not found 2US-based HIPAA-secure data centers; tenant-per-customer logical isolation; BAA with each enterprise customer 2At-rest + in-transit (HIPAA-compliant US data centers); SOC 2 Type II 2searched not found 2searched not found 2strong consistency required for clinical record integrity 2immutable audit log (HIPAA + 21 CFR Part 11 require audit trails) 2audit-logged soft delete (regulatory retention requirement) 2FHIR/HL7-aligned schema (clinical standard); minor versioning 2tenant-per-customer (BAA-scoped); patient-scoped within tenant 2always append (no resolution) 2regulated retention (7+ years per HIPAA + state law); patient-requested deletion governed by HIPAA right-to-access 2no MCP support advertised — vertical product, no MCP server / client integration documented 2no A2A protocol support advertised — vertical product, no A2A integration documented 2no OpenTelemetry integration advertised — vendor logs/observability not publicly documented 2no public webhook API advertised — vendor product, no public docs for webhook integration 2no public import/export API advertised — vendor product, data movement via enterprise integration only 2not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3healthcare (ambient documentation, clinical decision support, primary care, oncology) 2<1week to weeks-to-months (HIPAA-regulated enterprise procurement + EHR integration) 2not for non-healthcare verticals; must operate under HIPAA / regional health regulation 2HIPAA compliance + clinical-grade provenance + EHR integration 2requires EHR integration + clinical workflows 2Strongest published evidence for clinical-encounter memory accuracy; multi-EMR integrations and large hospital deployments. 2Enterprise sales motion only; longitudinal cross-visit memory layered on top of single-encounter scribing rather than the architecture's primary unit. 2abridge.com 2
Accelerate (Hugging Face) T1Distributed training abstraction n/an/an/an/an/an/an/aHugging Face's abstraction over distributed-training backends (DDP, FSDP, DeepSpeed, Megatron). Minimal code change to scale a PyTorch script. ~7.7k★; standard distributed wrapper for HF Transformers. searched not found 2021 searched not found Apache-2.0 searched not found searched not found searched not found searched not found searched not found searched not found searched not found searched not found searched not found searched not found searched not found searched not found searched not found searched not found Active — last commit 2026-05 · 9,679★ searched not found searched not found searched not found searched not found searched not found searched not found searched not found not applicable — not a memory product 3not applicable — not a memory product 3searched not found not applicable — not a memory product 3not applicable — not a memory product 3not applicable — not a memory product 3not applicable — not a memory product 3not applicable — not a memory product 3searched not found searched not found searched not found searched not found searched not found searched not found searched not found searched not found searched not found searched not found not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3searched not found searched not found searched not found searched not found searched not found searched not found searched not found searched not found
ACON T4Context-compression optimisation 2kv-cacheattentionsessionevict-oldestkv-tokeninspectablellm-arbitrateOptimises context compression for long-horizon LLM agents. 2Reduces memory usage by 26-54% (peak tokens) while preserving task performance; preserves >95% of accuracy when distilled into smaller compressors; up to 46% gain for smaller LMs as long-horizon agents. Headline: 54.5% peak-token reduction on 8-objective QA while surpassing uncompressed EM/F1; baselines: No-Compression, FIFO, Retrieval, LLMLingua, naive Prompting; primary datasets: AppWorld, OfficeBench, 8-objective QA. 2text 22025-10 2not applicable — not OSS 3not applicable — not OSS 3not applicable — no GitHub repo 328 cites · 3.9/mo · 70* / 10 forks 227 cites 27/yr 2not applicable — not commercial 3not applicable — not commercial 3not applicable — not commercial 3not applicable — not commercial 3not applicable — not commercial 3not applicable — not a deployable product 3not applicable — not a company 3no data — searched arxiv.org/abs/2510.00615; author affiliations not found in preview 2no scale claim — research 254.5% 8-objective QA peak-token reduction 2Original team only — 10 forks of https://github.com/microsoft/acon (largely fork-only); published 2025-10-01 (7 mo ago) Code public + weights closed — https://github.com/microsoft/acon · 70* / 10 forks · last commit 2025-10 · MIT not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3strong 2none 2hard-delete supported 2schema locked 2not applicable 3LLM resolves and overwrites 2LRU eviction 2not applicable — research paper, no deployed product 3not applicable — research paper, no deployed product 3not applicable — research paper, no deployed product 3not applicable — research paper, no deployed product 3not applicable — research paper, no deployed product 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable - research paper 3not applicable - research paper 3not applicable - research paper 3not applicable - research paper 3not applicable - research paper 3Agent-context-orchestration memory. 2Preprint; orchestration overhead in agent loops. 2arxiv 2510.00615 2
Activeloop Deep Lake T2Multimodal vector + serverless Postgres 2vectorcolumnsimilaritylong-termoverwriteappend-onlychunkdocumentinspectableoverwriteDeep Memory feature optimises embedding space per use-case (+22% retrieval accuracy). Deep Lake PG unifies serverless Postgres (agent short-term state) + billion-scale vector search (long-term memory). 2+22% retrieval accuracy claim. Reports 80% cheaper than comparable vector DBs. 2text + image 22018 2not applicable — not OSS 3not applicable — not OSS 3not applicable — no GitHub repo 3n/a (no top PyPI pkg) 1 press ~30 (Activeloop jobs 2not applicable — not academic 3~$20M total (Seed + $11M Series A) 2searched not found 2Free + paid 2SOC 2 Type II; SAML/RBAC features 2searched not found 2Both 2US 2Davit Buniatyan (founder/CEO; Princeton origin) 2no scale claim 2Deep Lake reports +22% retrieval accuracy vs Pinecone/Weaviate on enterprise RAG workloads; 80% cheaper cost claim. 2not applicable — not a research paper 3not applicable — not a research paper 3REST, SDK: Python, JS/TS 2searched not found 2searched not found 2custom (Deep Lake columnar format on object storage) 2hard-isolation 2at-rest + in-transit 2SSO + RBAC 2multiple supported 2not documented in public vendor materials (operational dimension typically managed in private deployment guides). 2immutable append-log 2not documented in public vendor materials (operational dimension typically managed in private deployment guides). 2schema with migration 2per-tenant 2always overwrite (last-write-wins) 2none (permanent) 2no first-party MCP adapter published as of 2026-05; community connectors may exist. 2no Google A2A (Agent2Agent) integration documented as of 2026-05. 2no first-party OpenTelemetry exporter documented; standard logs/metrics typically available. 2no 2Deep Lake format, Parquet, NumPy, COCO 2not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3RAG developers, agent builders (broad horizontal); financial-services, healthcare, legal, e-commerce 2<10min (managed cloud) to <1hr (self-host Docker) 2not for relational / graph-heavy queries (vector-first by design) 2low-latency similarity search + scale 2BYO embedding model + LLM; this IS the vector store 2Multi-modal data lake (vectors + images + video) with version control — strong for ML data pipelines plus memory. 2Less developer-API-friendly than Pinecone / Weaviate; positioning straddles ML training and runtime memory. 2activeloop.ai 2
Acuvity (now Proofpoint) T1MCP / Shadow-AI runtime enforcement 2n/aagenticsessionread-onlypromptauditablen/aRuntime enforcement targeting memory poisoning, unauthorised execution, identity spoofing per the OWASP LLM threat list. Visibility/control over MCP servers and locally-installed AI tools — the infrastructure layer where memory is most exposed. 2Acquired by Proofpoint Feb 2026 for integration into enterprise DLP / governance. 2text 22023 (founded by cybersecurity veterans; acquired by Proofpoint Feb 12 2026) 2not applicable — not OSS 3not applicable — not OSS 3not applicable — no GitHub repo 3searched not found 2not applicable — not academic 3no public funding data found — pre-acquisition private company; acquired by Proofpoint for undisclosed amount 2searched not found 2enterprise pricing via Proofpoint (not public); contact sales 2Proofpoint enterprise compliance (SOC 2 FedRAMP ISO 27001); Acuvity's own certs not confirmed 2enterprise deployment; runtime inspection of AI/MCP traffic; data handling under Proofpoint's enterprise DLP framework 2on-prem or cloud (Proofpoint enterprise deployment); agentless approach 2Sunnyvale CA (acquired by Proofpoint Sunnyvale) 2Acuvity (acquired by Proofpoint 2025; enterprise AI security) 2internal — undisclosed (enterprise security) 2no public benchmark scores found — vendor does not publish quantitative perf metrics 2not applicable — not a research paper 3not applicable — not a research paper 3REST (typical SaaS REST + first-party SDK pattern; see vendor docs for language coverage) 2searched not found 2searched not found 2custom 2hard-isolation 2at-rest + in-transit 2SSO + RBAC 2locked 2not specified — vendor docs do not address this dimension 2none 2not applicable 3not specified — vendor docs do not address this dimension 2not specified — vendor docs do not address this dimension 2not applicable 3not applicable 3Yes — Secure MCP servers (Model Context Protocol) is a core capability; protects MCP-based agent integrations 2no data — searched proofpoint.com/us/platform/ai-security, acuvity.ai/, acuvity.ai/integrations/, acuvity.ai/blog/; A2A protocol not advertised 2no data — searched acuvity.ai, proofpoint.com/us/platform/ai-security, docs.acuvity.ai; OpenTelemetry export not advertised 2no data — searched acuvity.ai, proofpoint.com/us/platform/ai-security, docs.acuvity.ai; webhook events not advertised 2Exportable structured audit logs (event lineage, decisions, redactions) for audits and investigations 2not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3regulated enterprise: financial-services, healthcare, government, legal 2<1day to <1week (enterprise procurement + integration) 2not for hobbyist / non-production use cases 2governance + compliance + audit + adversarial hardening 2BYO agent stack; this layer guards it 2Enterprise DLP for AI products — protects against data exfiltration via memory writes/reads; backed by Proofpoint's enterprise channel. 2Enterprise-tier pricing and complexity; smaller mind-share than Lakera or Microsoft Defender for AI. 2acuvity.ai Proofpoint acquisition 2
Adaptive-RAG T3Query-complexity routing vectorsimilarityhybrid-reranklong-termread-onlychunkinspectablen/aSmaller classifier LM predicts query complexity, then routes to no-retrieval / single-step / iterative retrieval as appropriate. NAACL 2024. Improves overall efficiency and accuracy of QA systems vs adaptive baselines, across query complexity levels. searched not found 22024-04 no releases Apache-2.0 387★ Jsonnet searched not found 449 cites 224/yr 2not applicable — not commercial 3not applicable — not commercial 3searched not found 2not applicable — not commercial 3not applicable — not commercial 3searched not found not applicable — not a company 3Seoul National University; Soyeong Jeong Jinheon Baek Sukmin Cho Sung Ju Hwang Jaewoo Kang; NAA… 2searched not found 2no public benchmark scores found Independently reproduced 2Code public + weights closed not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not documented publicly none not applicable 3schema with migration not documented publicly not applicable 3not applicable 3not applicable — research paper, no deployed product 3not applicable — research paper, no deployed product 3not applicable — research paper, no deployed product 3not applicable — research paper, no deployed product 3not applicable — research paper, no deployed product 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3research, RAG developers (horizontal); some have production deployments not applicable - research paper or <1hr (OSS reference impl) 3most are research papers; production fitness varies by maintainer retrieval quality / accuracy on long-context QA BYO LLM + vector store; OSS reference implementations exist Query-adaptive routing across retrieval strategies — picks the right method per question. Routing decisions can be wrong; adds inference cost. GitHub starsuzi/Adaptive-RAG arxiv 2403.14403 ACL Anthology (NAACL)
Adept ACT T3Computer-use / workflow-automation agent (Adept now part of Amazon AGI 2024) 2none-trivialnonesession-onlyagent-controlledturnopaqueout-of-scopeFounded 2022 by ex-OpenAI / Google researchers (David Luan, Kelsey Schroeder). Built ACT-1 / ACT-2 multimodal action transformers for computer-use. **Acquired by Amazon June-2024 (acqui-hire)** — co-founders + key team joined Amazon AGI; Adept the company continues with Zach Brock as remaining executive. Important historical entry — ACT models inspired Anthropic Computer Use + OpenAI Operator. 2ACT-1 (2022) and ACT-2 (2023) multimodal action transformers; founded by ex-Google Brain + ex-OpenAI execs; **Amazon AGI acqui-hire June 2024** (David Luan + Maxwell Nye + Kelsey Schroeder joined Amazon AGI) 2not applicable — orchestration platform, not memory product 32022 (founded); 2022-09 (ACT-1 demo); 2024-06 (Amazon acqui-hire) 2not applicable — orchestration platform, not memory product 3not applicable — not OSS 3not applicable — no GitHub repo 3not applicable — orchestration platform, not memory product 3not applicable — not academic 3$415M total raised pre-acq (Series B 2023 — General Catalyst, Spark, Greylock); Amazon acqui-hire June 2024 (terms ~$300-500M reported but undisclosed) 2not applicable — orchestration platform, not memory product 3Pre-acq: enterprise pilot only 2not applicable — orchestration platform, not memory product 3not applicable — orchestration platform, not memory product 3not applicable — orchestration platform, not memory product 3San Francisco, US 2David Luan (ex-Google Brain), Maxwell Nye (ex-OpenAI), Kelsey Schroeder (CEO post-acqui-hire); ex-Google Brain Niki Parmar early team 2not applicable — orchestration platform, not memory product 3not applicable — orchestration platform, not memory product 3not applicable — not a research paper 3not applicable — not OSS 3not applicable — orchestration platform, not memory product 3not applicable — orchestration platform, not memory product 3not applicable — orchestration platform, not memory product 3not applicable — orchestration platform, not memory product 3not applicable — orchestration platform, not memory product 3not applicable — orchestration platform, not memory product 3not applicable — orchestration platform, not memory product 3not applicable — not a memory product 3not applicable — orchestration platform, not memory product 3not applicable — orchestration platform, not memory product 3not applicable — not a memory product 3not applicable — not a memory product 3not applicable — orchestration platform, not memory product 3not applicable — not a memory product 3not applicable — not a memory product 3not applicable — orchestration platform, not memory product 3not applicable — orchestration platform, not memory product 3not applicable — orchestration platform, not memory product 3not applicable — orchestration platform, not memory product 3not applicable — orchestration platform, not memory product 3not applicable — orchestration platform, not memory product 3not applicable — orchestration platform, not memory product 3not applicable — orchestration platform, not memory product 3not applicable — orchestration platform, not memory product 3not applicable — orchestration platform, not memory product 3action-transformer (vision + action prediction) 2not applicable — orchestration platform, not memory product 3single-vendor (Adept-proprietary ACT models historically) 2not applicable — orchestration platform, not memory product 3not applicable — orchestration platform, not memory product 3not applicable — orchestration platform, not memory product 3not applicable — orchestration platform, not memory product 3not applicable — orchestration platform, not memory product 3(historical) computer-use action transformers; (post-acq) Amazon AGI roadmap 2Amazon AGI (parent post-acquisition); spiritual predecessor to Anthropic Computer Use + OpenAI Operator + Project Mariner 2Pioneered computer-use action-transformer concept (ACT-1 was first widely-shown demo of LLM controlling desktop apps); strong founding-team pedigree. 2Lost commercial momentum to Amazon acqui-hire June-2024; products effectively shelved (Adept entity continues but no longer shipping new ACT models); inspired but didn't capture the computer-use market. 2www.adept.ai/ 2
Agency Swarm T3OpenAI-Assistants-based multi-agent n/an/an/an/an/an/an/aAgent framework built on OpenAI Assistants API — agencies (roles + comm flow); replaced after Assistants v2 changes. searched not found searched not found 2023 searched not found MIT searched not found searched not found searched not found searched not found searched not found searched not found searched not found searched not found searched not found searched not found Arsenii (VRSEN) Mordvinov; founded 2024; AI agency / influencer-led OSS framework. searched not found searched not found searched not found searched not found searched not found searched not found searched not found not applicable — not a memory product 3searched not found searched not found searched not found not applicable — not a memory product 3not applicable — not a memory product 3not applicable — not a memory product 3not applicable — not a memory product 3not applicable — not a memory product 3not applicable — not a memory product 3not applicable — not a memory product 3not applicable — not a memory product 3searched not found searched not found searched not found searched not found searched not found searched not found searched not found searched not found searched not found searched not found searched not found searched not found searched not found searched not found searched not found searched not found searched not found searched not found searched not found searched not found searched not found searched not found searched not found
Agent KB T4Cross-domain experience KB 2vectorsimilaritylong-termextractionepisodeinspectablellm-arbitrateLeverages cross-domain experience for agentic problem solving. 2Universal cross-framework agent knowledge base with disagreement gate ensuring retrieved knowledge enhances reasoning. Headline: smolagents +18.7pp at pass@3 (55.2%->73.9%) and OpenHands +4.0pp on SWE-bench (24.3%->28.3%); baseline: same frameworks without Agent KB retrieval; primary datasets: GAIA, Humanity's Last Exam, GPQA, SWE-bench. 2text 22025-07 2not applicable — not OSS 3not applicable — not OSS 3not applicable — no GitHub repo 343 cites · 4.3/mo 243 cites 43/yr 2not applicable — not commercial 3not applicable — not commercial 3not applicable — not commercial 3not applicable — not commercial 3not applicable — not commercial 3not applicable — not a deployable product 3not applicable — not a company 3no data — searched arxiv.org/abs/2507.06229; author affiliations not found in preview 2no scale claim — research 2+18.7pp smolagents pass@3 (GAIA/HLE/GPQA) +4.0pp OpenHands SWE-bench 2No reproductions found — published 2025-07-08 (10 mo ago); no public code 2depth-floor-reached: arXiv 2507.06229 preprint; no official code repo discovered via WebSearch + arXiv abstract scan + GitHub API 2not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not specified - paper does not address this dimension 2not specified - paper does not address this dimension 2not specified - paper does not address this dimension 2schema with migration 2not specified - paper does not address this dimension 2LLM resolves and overwrites 2not specified - paper does not address this dimension 2not applicable — research paper, no deployed product 3not applicable — research paper, no deployed product 3not applicable — research paper, no deployed product 3not applicable — research paper, no deployed product 3not applicable — research paper, no deployed product 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable - research paper 3not applicable - research paper 3not applicable - research paper 3not applicable - research paper 3not applicable - research paper 3Knowledge-base memory for agent task experience. 2Preprint; KB curation overhead. 2arxiv 2507.06229 2
AGENT-RECONFIGURE / Reconfigurable Agent T4Skill-library agent memory 2kvextraction-pulllong-termaccretionprocedureplaintextn/aAgent that maintains a skill library and reconfigures its toolset per task — procedural memory of successful sub-task solutions. 2searched not found 2searched not found 22024-10 2searched not found 2searched not found 2searched not found 2searched not found 2searched not found 2not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3searched not found 2not applicable — research paper 3searched not found 2searched not found 2searched not found 2not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3searched not found 2searched not found 2not applicable — research paper 3not applicable — research paper 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — research paper 3not applicable — research paper 3searched not found 2searched not found 2searched not found 2searched not found 2searched not found 2searched not found 2
Agent S T4Open agentic computer-use framework 2hybridsimilarityagenticlong-termextractionepisodeinspectablellm-arbitrateOpen agentic framework that uses computers like a human. 2Open agentic framework using computers like a human via experience-augmented hierarchical planning + Agent-Computer Interface (ACI). Headline: 20.58% success rate vs. 11.21% baseline on OSWorld (83.6% relative improvement, +9.37pp absolute); baseline: GPT-4o vanilla OSWorld agent; primary datasets: OSWorld (369 Ubuntu tasks) and WindowsAgentArena. 2text + image (GUI — multimodal desktop/web via screenshots) 22024-10 2v0.3.2 2025-12-16 2Apache-2.0 11.1k★ +545/mo Python 147 cites · 7.8/mo · 11142* / 1301 forks · 10 influential SS cites 2146 cites 73/yr 2not applicable — not commercial 3not applicable — not commercial 3not applicable — research paper 3not applicable — not commercial 3not applicable — not commercial 3not applicable — research paper 3not applicable — not a company 3Simular Research; no institutional affiliation confirmed 2no scale claim — research (OSWorld benchmark) 220.58% OSWorld success +9.37pp OSWorld vs GPT-4o 2Original team only — 1301 forks of https://github.com/simular-ai/Agent-S (mostly fork-only; no public re-implementations identified via WebSearch) Code public + weights closed — https://github.com/simular-ai/Agent-S · 11142* / 1301 forks · last commit 2026-02 · Apache-2.0 not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not specified - paper does not address this dimension 2not specified - paper does not address this dimension 2not specified - paper does not address this dimension 2not specified - paper does not address this dimension 2not specified - paper does not address this dimension 2LLM resolves and overwrites 2not specified - paper does not address this dimension 2not applicable — research paper, no deployed product 3not applicable — research paper, no deployed product 3not applicable — research paper, no deployed product 3not applicable — research paper, no deployed product 3not applicable — research paper, no deployed product 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable - research paper 3not applicable - research paper 3not applicable - research paper 3not applicable - research paper 3not applicable - research paper 3Computer-use agent with explicit screen-history memory. 2Preprint; screen-history scales aggressively. 2arxiv 2410.08164 2
Agent Workflow Memory T3Workflow as memory 2fileinjectioncross-sessionextractionskillinspectablellm-arbitrateWorkflow-based memory framework component. 2Induces commonly-reused workflows from past experiences and applies them in offline (training) and online (test-time) modes. Headline: +24.6% on Mind2Web and +51.1% relative success-rate on WebArena over baseline; baseline: BrowserGym autonomous agent without human-annotated workflows; primary datasets: Mind2Web and WebArena (812 tasks across 5 websites). 2text (web navigation tasks — Mind2Web + WebArena) 22024-09 2not applicable — not OSS 3not applicable — not OSS 3not applicable — no GitHub repo 3133 cites · 6.7/mo · 426* / 50 forks · 14 influential SS cites 270 cites 35/yr 2not applicable — not commercial 3not applicable — not commercial 3not applicable — not commercial 3not applicable — not commercial 3not applicable — not commercial 3not applicable — not a deployable product 3not applicable — not a company 3Georgia Tech + CMU; Zora Zheng et al.; no lead confirmed 2no scale claim — research (1000+ web tasks) 2+24.6% Mind2Web +51.1% WebArena (relative) 2Independently reproduced: 50 forks of https://github.com/zorazrw/agent-workflow-memory; downstream papers cite results Code public + weights closed — https://github.com/zorazrw/agent-workflow-memory · 426* / 50 forks · last commit 2025-12 · Apache-2.0 not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3strong 2snapshots 2not specified - paper does not address this dimension 2free-form / no schema 2hierarchical 2LLM resolves and overwrites 2not specified - paper does not address this dimension 2not applicable — research paper, no deployed product 3not applicable — research paper, no deployed product 3not applicable — research paper, no deployed product 3not applicable — research paper, no deployed product 3not applicable — research paper, no deployed product 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable - research paper 3not applicable - research paper 3not applicable - research paper 3not applicable - research paper 3not applicable - research paper 3Workflow-pattern abstraction means agents recall multi-step procedures, not just facts. 2Workflow-shaped scope; less applicable to free-form recall. 2OpenReview 2
Agent2Agent Protocol (A2A) T2Open agent-to-agent protocol 2n/an/an/an/an/an/an/aGoogle-led open protocol for agent-to-agent collaboration (April 2025) — agent cards, RPCs, server-sent events. Partner companies: Atlassian, MongoDB, Salesforce, ServiceNow, etc. 250+ partner companies at launch. 2searched not found 22025 2searched not found 2Apache-2.0 2searched not found 2searched not found 2searched not found 2searched not found 2searched not found 2searched not found 2searched not found 2searched not found 2searched not found 2searched not found 2Google + 50+ partner companies; launched 2025-04 as open agent-to-agent protocol. 2searched not found 2searched not found 2searched not found 2Active — last commit 2026-05 · 23,737★ searched not found 2searched not found 2searched not found 2not applicable — not a memory product 3searched not found 2searched not found 2searched not found 2not applicable — not a memory product 3not applicable — not a memory product 3not applicable — not a memory product 3not applicable — not a memory product 3not applicable — not a memory product 3not applicable — not a memory product 3not applicable — not a memory product 3not applicable — not a memory product 3searched not found 2searched not found 2searched not found 2searched not found 2searched not found 2searched not found 2searched not found 2searched not found 2searched not found 2searched not found 2searched not found 2searched not found 2searched not found 2searched not found 2searched not found 2searched not found 2searched not found 2searched not found 2searched not found 2searched not found 2searched not found 2searched not found 2searched not found 2
AgentEvolver T4Efficient self-evolving agent system 2vectorsimilaritylong-termagent-controlledskillinspectablellm-arbitrateTowards an efficient self-evolving agent system. 2Self-evolving agent system: self-questioning for task generation, self-navigating for experience reuse, self-attributing for sample efficiency. Headline: superior task-goal completion (avg@8/best@8) over Vanilla GRPO baseline using substantially fewer parameters; baseline: Vanilla GRPO RL without experience guidance/process rewards; primary datasets: AppWorld and BFCL-v3 (multi-turn split). 2text 22025-11 2not applicable — not OSS 3not applicable — not OSS 3not applicable — no GitHub repo 330 cites · 5.2/mo · 1427* / 163 forks · Tongyi Lab launch + Threads/X coverage 2025-11 230 cites 30/yr 2not applicable — not commercial 3not applicable — not commercial 3not applicable — not commercial 3not applicable — not commercial 3not applicable — not commercial 3not applicable — not a deployable product 3not applicable — not a company 3no data — searched arxiv.org/abs/2511.10395; author affiliations not found in preview 2no scale claim — research 2not applicable — qualitative-only paper (abstract reports "more efficient exploration, better sample utilization, faster adaptation" without specific headline numbers; preliminary experiments) 2Too recent — published 2025-11-13 (5.7 mo ago); no reproductions yet expected 2Code public + weights closed — https://github.com/modelscope/AgentEvolver · 1427* / 163 forks · last commit 2026-04 · Apache-2.0 not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not specified - paper does not address this dimension 2not specified - paper does not address this dimension 2not specified - paper does not address this dimension 2schema with migration 2not specified - paper does not address this dimension 2LLM resolves and overwrites 2not specified - paper does not address this dimension 2not applicable — research paper, no deployed product 3not applicable — research paper, no deployed product 3not applicable — research paper, no deployed product 3not applicable — research paper, no deployed product 3not applicable — research paper, no deployed product 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable - research paper 3not applicable - research paper 3not applicable - research paper 3not applicable - research paper 3not applicable - research paper 3Agent that evolves its own memory architecture. 2Preprint; evolutionary stability concerns. 2arxiv 2511.10395 2
AgentFold T4Proactive context management 2kvagenticsessionconsolidationsummaryinspectablellm-arbitrateLong-horizon web agents with proactive context management. 2Proactive context management via folding inspired by retrospective consolidation; multi-scale granular condensation to deep consolidation. Headline: AgentFold-30B-A3B reaches 36.2% on BrowseComp and 47.3% on BrowseComp-ZH, surpassing DeepSeek-V3.1-671B (30.0% on BrowseComp) and OpenAI o4-mini; baselines: DeepSeek-V3.1-671B, GLM-4.5-355B, OpenAI o4-mini; primary datasets: BrowseComp, BrowseComp-ZH, WideSearch, GAIA. 2text + image 22025-10 2not applicable — not OSS 3not applicable — not OSS 3not applicable — no GitHub repo 331 cites · 5.0/mo · 18805* / 1447 forks · Tongyi DeepResearch monorepo (#1 Github trending Oct 2025) 230 cites 30/yr 2not applicable — not commercial 3not applicable — not commercial 3not applicable — not commercial 3not applicable — not commercial 3not applicable — not commercial 3not applicable — not a deployable product 3not applicable — not a company 3no data — searched arxiv.org/abs/2510.24699; author affiliations not found in preview 2no scale claim — research 236.2% BrowseComp 47.3% BrowseComp-ZH 2Original team + downstream attention: 1447 forks of https://github.com/Alibaba-NLP/DeepResearch; published 2025-10-28 (6 mo ago); no full re-implementations identified Code public + weights closed — https://github.com/Alibaba-NLP/DeepResearch · 18805* / 1447 forks · last commit 2026-02 · Apache-2.0 not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not specified - paper does not address this dimension 2snapshots 2not specified - paper does not address this dimension 2free-form / no schema 2not specified - paper does not address this dimension 2LLM resolves and overwrites 2consolidation/summarization 2not applicable — research paper, no deployed product 3not applicable — research paper, no deployed product 3not applicable — research paper, no deployed product 3not applicable — research paper, no deployed product 3not applicable — research paper, no deployed product 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable - research paper 3not applicable - research paper 3not applicable - research paper 3not applicable - research paper 3not applicable - research paper 3Folded-context agent — compresses old context into summary memory. 2Preprint; folding-quality bounds long-horizon recall. 2arxiv 2510.24699 2
Agentic Memory T4Unified short + long-term management 2hybridsimilarityagenticlong-termconsolidationepisodeagent-controlledllm-arbitrateLearning unified long-term and short-term memory management. 2Agent-controlled memory operations as tool-based actions for long/short-term memory; trained via three-stage progressive RL with step-wise GRPO. Headline: AgeMem reaches 54.31% avg on Qwen3-4B-Instruct, +23.52% over best baseline (Mem0/A-Mem) and +49.59% over no-memory; baselines: Mem0, A-Mem, LangMem, AgeMem-noRL ablation; primary datasets: ALFWorld, SciWorld, PDDL, BabyAI, HotpotQA. 2text 22026-01 2not applicable — not OSS 3not applicable — not OSS 3not applicable — no GitHub repo 315 cites · 3.8/mo 214 cites 14/yr 2not applicable — not commercial 3not applicable — not commercial 3not applicable — not commercial 3not applicable — not commercial 3not applicable — not commercial 3not applicable — not a deployable product 3not applicable — not a company 3no data — searched arxiv.org/abs/2601.01885; author affiliations not found in preview 2no scale claim — research 254.31% ALFWorld/SciWorld/PDDL/BabyAI/HotpotQA avg (Qwen3-4B) +23.52pp vs Mem0/A-Mem 2Too recent — published 2026-01-05 (4.0 mo ago); no reproductions yet expected 2depth-floor-reached: arXiv 2601.01885 preprint; no official code repo discovered via WebSearch + arXiv abstract scan + GitHub API 2not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not specified - paper does not address this dimension 2snapshots 2not specified - paper does not address this dimension 2not specified - paper does not address this dimension 2not specified - paper does not address this dimension 2LLM resolves and overwrites 2consolidation/summarization 2not applicable — research paper, no deployed product 3not applicable — research paper, no deployed product 3not applicable — research paper, no deployed product 3not applicable — research paper, no deployed product 3not applicable — research paper, no deployed product 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable - research paper 3not applicable - research paper 3not applicable - research paper 3not applicable - research paper 3not applicable - research paper 3Agent-shaped memory with first-class read/write operations exposed to the agent loop. 2Preprint; agent-controlled memory quality bounds value. 2arxiv 2601.01885 2
Agentic Plan Caching (APC) T3Test-time plan-template memory 2kvsimilaritycross-sessionextractionskillinspectablellm-arbitrateExtracts, stores, adapts, and reuses structured plan templates from planning stages of agent applications. NeurIPS 2025 poster. 2Plan template extraction from completed agent runs with keyword retrieval and lightweight model adaptation. Headline: 50.31% serving-cost reduction and 27.28% latency reduction on average while preserving 96.61% of optimal performance; baselines: Accuracy-Optimal (large planner LM, no caching) and Semantic Caching; primary datasets: FinanceBench, TabMWP, QASPER, AIME 2024/2025, GAIA. 2text 22025-06 2not applicable — not OSS 3not applicable — not OSS 3not applicable — no GitHub repo 311 cites · 1.0/mo 2searched not found 2not applicable — not commercial 3not applicable — not commercial 3not applicable — not commercial 3not applicable — not commercial 3not applicable — not commercial 3not applicable — not a deployable product 3not applicable — not a company 3NeurIPS 2025 poster; no author affiliation found at neurips.cc/virtual/2025/poster/11… 2no scale claim — research (NeurIPS 2025) 250.31% serving-cost reduction 96.61% of optimal performance 2No reproductions found — published 2025-06-17 (11 mo ago); no public code 2depth-floor-reached: arXiv 2506.14852 preprint; no official code repo discovered via WebSearch + arXiv abstract scan + GitHub API 2not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not applicable — research paper 3not specified - paper does not address this dimension 2not specified - paper does not address this dimension 2not specified - paper does not address this dimension 2free-form / no schema 2not specified - paper does not address this dimension 2LLM resolves and overwrites 2not specified - paper does not address this dimension 2not applicable — research paper, no deployed product 3not applicable — research paper, no deployed product 3not applicable — research paper, no deployed product 3not applicable — research paper, no deployed product 3not applicable — research paper, no deployed product 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable — wrong section 3not applicable - research paper 3not applicable - research paper 3not applicable - research paper 3not applicable - research paper 3not applicable - research paper 3Cache-aware planning reduces repeated work for similar tasks. 2Niche use case; cache-invalidation issues common in evolving domains. 2NeurIPS 2025 poster 2