Rankiteo Logo
Rankiteo
Leader in Cyber Underwriting
Loading...
NEWRankiteo Cyber Underwriting Desktop - Score, price, and bind from your desktop
WindowsmacOSLinux
Download

Comparison Overview

Autonomous Reply FRAutonomous Reply FR
VS
inDriveinDrive
Autonomous Reply FR

Autonomous Reply FR

16, Rue Washington, Paris, Île-de-France, 75008, FR

Last Update: 20/12/2025

View Profile
750/1000Fair

Au sein du Groupe Reply, Autonomous Reply est le spécialiste de la conception, du développement, de l’intégration et de la validation des systèmes embarqués autonomes et connectés. Nous proposons un portefeuille de services sur l’ensemble de la chaîne de valeurs, de la...

NAICS:5415
NAICS Definition:Computer Systems Design and Related Services
Employees:12
Subsidiaries:125
12-month incidents
0
Known data breaches
0
Attack type number
0
inDrive

inDrive

Mountain View, 94040, US

Last Update: 02/04/2026

View Profile
Between 750 and 799
http://www.inDrive.com
782/1000Fair

inDrive is a global mobility and urban services platform. The inDrive app has been downloaded over 400 million times, and has been the second most downloaded mobility app for the third consecutive year. In addition to ride-hailing, inDrive provides an expanding list of ...

NAICS:5415
NAICS Definition:Computer Systems Design and Related Services
Employees:10,675
Subsidiaries:1
12-month incidents
0
Known data breaches
0
Attack type number
0

Compliance Ranges Comparison

Based On Specific Ai Models Category
Autonomous Reply FR

Autonomous Reply FR

-
ISO 27001Not verified
ISO 27001
-
SOC2 Type 1Not verified
SOC2 Type 1
-
SOC2 Type 2Not verified
SOC2 Type 2
-
GDPRNot verified
GDPR
-
PCI DSSNot verified
PCI DSS
-
HIPAANot verified
HIPAA
inDrive

inDrive

-
ISO 27001Not verified
ISO 27001
-
SOC2 Type 1Not verified
SOC2 Type 1
-
SOC2 Type 2Not verified
SOC2 Type 2
-
GDPRNot verified
GDPR
-
PCI DSSNot verified
PCI DSS
-
HIPAANot verified
HIPAA

Benchmark & Cyber Underwriting Signals

Incidents vs IT Services and IT Consulting Industry Avg (This Year)

No incidents recorded for Autonomous Reply FR in 2026.

Incidents

Incidents vs IT Services and IT Consulting Industry Avg (This Year)

No incidents recorded for inDrive in 2026.

Incidents

Incident History - Autonomous Reply FR (X = Date, Y = Severity)

Autonomous Reply FR cyber incidents detection timeline including parent company and subsidiaries.

No timeline data available
R - Ransomware
C - Cyber Attack
D - Data Breach
V - Vulnerability

Incident History - inDrive (X = Date, Y = Severity)

inDrive cyber incidents detection timeline including parent company and subsidiaries.

No timeline data available
R - Ransomware
C - Cyber Attack
D - Data Breach
V - Vulnerability

Notable Incidents

Last Cyber / HR Incidents / Global...
Autonomous Reply FR

Autonomous Reply FR

Incidents
No explicit notable incidents reported.
inDrive

inDrive

Incidents
No explicit notable incidents reported.

FAQ

Between Autonomous Reply FR company and inDrive company, which one has the best AI Cybersecurity Score ?
Between Autonomous Reply FR company and inDrive company, which one has experienced more cyber incidents in the past ?
Between Autonomous Reply FR company and inDrive company, which one has experienced more cyber incidents this year ?
Between Autonomous Reply FR company and inDrive company, which one has experienced at least one ransomware attack ?
Between Autonomous Reply FR company and inDrive company, which one has experienced at least one data breach ?
Between Autonomous Reply FR company and inDrive company, which one has experienced at least one targeted cyberattack ?
Between Autonomous Reply FR company and inDrive company, which one has experienced at least one vulnerability ?
Between Autonomous Reply FR company and inDrive company, which one holds the most compliance certifications ?
Between Autonomous Reply FR company and inDrive company, which one holds the fewest compliance certifications ?
Between Autonomous Reply FR company and inDrive company, which one has the most subsidiaries ?
Between Autonomous Reply FR company and inDrive company, which one has the largest number of employees ?
Between Autonomous Reply FR and inDrive, which company holds both SOC 2 Type 1 certifications ?
Between Autonomous Reply FR and inDrive, which company holds both SOC 2 Type 2 certifications ?
Which company is ISO 27001 certified - Autonomous Reply FR or inDrive ?
Which company is PCI DSS compliant - Autonomous Reply FR or inDrive ?
Between Autonomous Reply FR and inDrive, which company complies with HIPAA regulations for healthcare data ?
Between Autonomous Reply FR and inDrive, which company complies with GDPR requirements ?

Latest Global CVEs

CVE-2026-54236
SUMMARY

vLLM is an inference and serving engine for large language models (LLMs). Prior to 0.23.1rc0, the fix for CVE-2026-22778, which introduced a sanitize_message helper that strips object-repr memory addresses from error messages before they reach the client, is incomplete: several response paths echo str(exc) directly to clients without calling sanitize_message. The unsanitized sites include the Anthropic API router in vllm/entrypoints/anthropic/api_router.py (the POST /v1/messages and POST /v1/messages/count_tokens handlers), the Server-Sent Events streaming converter in vllm/entrypoints/anthropic/serving.py, and the realtime speech-to-text WebSocket in vllm/entrypoints/speech_to_text/realtime/connection.py. These paths catch the exception inside the route coroutine and construct the JSONResponse themselves, bypassing the sanitizing global FastAPI exception handler, and WebSocket frames do not traverse that handler chain at all. Using the same primitive as the parent issue, an unauthenticated attacker can send malformed image bytes through the Anthropic Messages API image content parts so that PIL.Image.open raises an UnidentifiedImageError whose message contains the BytesIO object repr, leaking the heap memory address verbatim in the error.message field of the response body. This vulnerability is fixed in 0.23.1rc0.

PUBLISHED
Date2026-06-22
UPDATED
Date2026-06-22
RISK INFORMATION (Score: 5.3)
CVSS3
Base Score: 5.3
Complexity: LOW
CVSS:3.1/AV:N/AC:L/PR:N/UI:N/S:U/C:L/I:N/A:N
IMPACT SCORE
1.4
EXPLOITABILITY
3.9
CVE-2026-54235
SUMMARY

vLLM is an inference and serving engine for large language models (LLMs). Prior to 0.23.1rc0, ll temperature validation gates use comparison operators (<, >), which silently evaluate to False for NaN and for positive Infinity in Python's IEEE 754 float semantics. Both values pass every guard and propagate to GPU sampling kernels, where they produce undefined behavior or CUDA errors that can crash the inference worker. This vulnerability is fixed in 0.23.1rc0.

PUBLISHED
Date2026-06-22
UPDATED
Date2026-06-22
RISK INFORMATION (Score: )
CVSS4
Base Score: 6.9
Complexity: LOW
CVSS:4.0/AV:N/AC:L/AT:N/PR:N/UI:N/VC:N/VI:N/VA:L/SC:N/SI:N/SA:N/E:X/CR:X/IR:X/AR:X/MAV:X/MAC:X/MAT:X/MPR:X/MUI:X/MVC:X/MVI:X/MVA:X/MSC:X/MSI:X/MSA:X/S:X/AU:X/R:X/V:X/RE:X/U:X
IMPACT SCORE
NA
EXPLOITABILITY
NA
CVE-2026-54233
SUMMARY

vLLM is an inference and serving engine for large language models (LLMs). Prior to 0.23.1rc0, vLLM's /v1/audio/transcriptions endpoint limits compressed upload size but not decoded PCM output. A 25MB OPUS file expands to ~14.9GB of float32 PCM at decode time. This vulnerability is fixed in 0.23.1rc0.

PUBLISHED
Date2026-06-22
UPDATED
Date2026-06-22
RISK INFORMATION (Score: 6.5)
CVSS3
Base Score: 6.5
Complexity: LOW
CVSS:3.1/AV:N/AC:L/PR:L/UI:N/S:U/C:N/I:N/A:H
IMPACT SCORE
3.6
EXPLOITABILITY
2.8
CVE-2026-54232
SUMMARY

vLLM is an inference and serving engine for large language models (LLMs). Prior to 0.22.1, the vLLM Dockerfile is vulnerable to a dependency confusion attack through the flashinfer-jit-cache package. The package is installed from a custom index (flashinfer.ai/whl/) using --extra-index-url, but the package name was not registered on PyPI, and UV_INDEX_STRATEGY="unsafe-best-match" is set globally. An attacker who registers flashinfer-jit-cache on PyPI with version 0.6.11.post2 can execute arbitrary code as root during the Docker build and backdoor every resulting container image, enabling exfiltration of all user prompts, API credentials, and model data from production vLLM deployments This vulnerability is fixed in 0.22.1.

PUBLISHED
Date2026-06-22
UPDATED
Date2026-06-22
RISK INFORMATION (Score: 8.8)
CVSS3
Base Score: 8.8
Complexity: LOW
CVSS:3.1/AV:N/AC:L/PR:N/UI:R/S:U/C:H/I:H/A:H
IMPACT SCORE
5.9
EXPLOITABILITY
2.8
CVE-2026-53923
SUMMARY

vLLM is an inference and serving engine for large language models (LLMs). From 0.5.5 until 0.23.1rc0, integer truncation of tensor dimensions in vLLM's GGUF dequantize kernels (csrc/quantization/gguf/gguf_kernel.cu) causes partial tensor processing. The output tensor is allocated at full size via torch::empty (uninitialized memory), but the dequantize CUDA kernel processes only a truncated number of elements. The unfilled portion of the output tensor retains whatever was previously in GPU memory. In multi-tenant inference deployments, this residual GPU memory may contain tensor data from other users' inference requests, constituting information disclosure. This vulnerability is fixed in 0.23.1rc0.

PUBLISHED
Date2026-06-22
UPDATED
Date2026-06-22
RISK INFORMATION (Score: )
CVSS4
Base Score: 5.3
Complexity: LOW
CVSS:4.0/AV:N/AC:L/AT:N/PR:N/UI:P/VC:L/VI:L/VA:N/SC:N/SI:N/SA:N/E:X/CR:X/IR:X/AR:X/MAV:X/MAC:X/MAT:X/MPR:X/MUI:X/MVC:X/MVI:X/MVA:X/MSC:X/MSI:X/MSA:X/S:X/AU:X/R:X/V:X/RE:X/U:X
IMPACT SCORE
NA
EXPLOITABILITY
NA