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Lazarus High Risk Bybit Hacking Investigation [CLADIOUS-[BYBIT_HACKER_LAZARUS_ITER]-2025-001] - Wallet Analysis Report - Very High Risk - 0xfa99...d9f4

Published 16 Jul 2025 7 views
Wallet Name Analysis Target Wallet (CLADIOUS-[BYBIT_HACKER_LAZARUS_ITER]-2025-001) - 0xfa99...d9f4

Overview

Project Scope

Analysis of wallet 0xfa99bc3718d4599941ee5a5a431e182e5231d9f4 - Lazarus High Risk Bybit Hacking Investigation

Suspicious Wallet Hash

0xfa99bc3718d4599941ee5a5a431e182e5231d9f4
This is the primary wallet address being investigated in this report.

Methodology

Research Methodology

Automated Analysis Methodology for Wallet 0xfa99bc3718d4599941ee5a5a431e182e5231d9f4 1. Data Collection - Automated transaction retrieval from blockchain - Historical transaction pattern analysis - Network connection mapping 2. Analysis Algorithms - Multi-algorithm approach using 4 detection methods - Statistical anomaly detection - Behavioral pattern analysis - Network-based risk assessment 3. Risk Scoring - Weighted risk factor calculation - Multi-dimensional analysis - Historical comparison baseline - Real-time pattern detection 4. Report Generation - Automated findings compilation - Risk level determination - Recommendation synthesis - Compliance-ready documentation

Data Collection

Data Collection Process for 0xfa99bc3718d4599941ee5a5a431e182e5231d9f4 1. Blockchain Data Retrieval - Retrieved 4 analysis data points - Collected complete transaction history - Gathered network connection data 2. Analysis Processing - Applied multiple detection algorithms - Performed statistical analysis - Generated risk indicators - Created behavioral profiles 3. Quality Assurance - Data validation checks - Algorithm consistency verification - Result accuracy confirmation

Data Preprocessing

Data Preprocessing Steps: 1. Data Cleaning - Removed duplicate transactions - Standardized timestamp formats - Validated transaction data integrity 2. Feature Engineering - Created time-based features - Calculated statistical metrics - Generated network features 3. Normalization - Applied consistent scaling - Handled missing values - Optimized for analysis algorithms

Design Pattern

No design pattern information is available for this report.

Analysis

General Analysis Summary for 0xfa99bc3718d4599941ee5a5a431e182e5231d9f4

Risk Level: Very High Risk Score: 100/100 Total Issues Identified: 14 Suspicious Transactions: 4

Key Findings: - Automated analysis detected 4 suspicious transactions - Risk assessment indicates very high risk level - 14 total suspicious patterns identified across all algorithms - Standardized risk score: 100/100

Analysis Confidence: High (automated multi-algorithm approach) Recommendation: Immediate investigation required

No suspicious patterns detected.
0x536112b348f47b3dba89ca9061b30586a1274f07f7d25305d290b5a9ccaa6fc4: Very short time between transactions 0x4a473d5139849ad482bae105c65571ef5ba53e715f0e3274977172ee6710e1f4: Very short time between transactions 0x854ecd84ae1f6476790122c0d26cc006a019b67276323f43e1cb29de2abff9d0: Very short time between transactions
0x536112b348f47b3dba89ca9061b30586a1274f07f7d25305d290b5a9ccaa6fc4: High frequency transactions (less than 1 minute interval) 0x854ecd84ae1f6476790122c0d26cc006a019b67276323f43e1cb29de2abff9d0: High frequency transactions (less than 1 minute interval)

Suspicious Transactions

Transaction Hash Risk Score Risk Factors
0x536112b…
100 High
Low transaction fee
Part of suspicious wallet community
Related to 220 high-risk transactions (highest score: 100)
Short time frame between transactions
Outgoing structuring detected: 4 similar amounts totaling 0.00
Anomaly detected by Isolation Forest
Transaction involves DeFi exploit address: Bybit Exploiter 22
Sends funds to exploit address: 0xfc9266...
Repetitive transaction amount
Outgoing structuring detected: 3 similar amounts totaling 0.00
0x854ecd8…
100 High
Low transaction fee
Part of suspicious wallet community
Related to 220 high-risk transactions (highest score: 100)
Short time frame between transactions
Outgoing structuring detected: 4 similar amounts totaling 0.00
Anomaly detected by Isolation Forest
Transaction involves DeFi exploit address: Bybit Exploiter 22
Sends funds to exploit address: 0xfc9266...
Repetitive transaction amount
Outgoing structuring detected: 3 similar amounts totaling 0.00
0x4a473d5…
36 Medium
Low transaction fee
Part of suspicious wallet community
Short time frame between transactions
Outgoing structuring detected: 4 similar amounts totaling 0.00
Anomaly detected by Isolation Forest
Repetitive transaction amount
Outgoing structuring detected: 3 similar amounts totaling 0.00
0x25094ab…
40 High
Low transaction fee
Part of suspicious wallet community
Outgoing structuring detected: 4 similar amounts totaling 0.00
Anomaly detected by Isolation Forest
Very short time between transactions
Related to high-risk transaction ['0xd85ed9f1af4d9369b9c09fc8a1ebf5a87256decf55134270ce52c61b72608f17'] (score: 100)
High frequency transactions (less than 1 minute interval)
Showing 1 to 10 of 0 transactions

Advanced Analysis Findings

No Local Outlier Factor analysis data is available for this report.
No wallet community detection data is available for this report.
No transaction layering pattern data is available for this report.
No address clustering data is available for this report.
No sanctioned address connection data is available for this report.

Suspicious Activities

Suspicious Activities Summary: High Risk Activities: 4 Medium Risk Activities: 0 Total Flagged Transactions: 4 Pattern Categories: - Network-based anomalies - Behavioral inconsistencies - Statistical outliers - Temporal irregularities Automated Detection Results: - Algorithm coverage: Comprehensive - Detection confidence: High - Risk classification: Validated

Conclusions & Recommendations

Conclusions

Analysis Conclusions for 0xfa99bc3718d4599941ee5a5a431e182e5231d9f4: 1. Risk Assessment - Overall Risk Level: Very High - Standardized Risk Score: 100/100 - Average Transaction Risk Score: 69.00 - Total Suspicious Patterns: 4 2. Key Findings - Automated analysis completed successfully - Multiple detection algorithms applied - Comprehensive risk evaluation performed - Standardized scoring methodology applied (score: 100/100) 3. Confidence Level - Analysis Quality: High - Data Coverage: Complete - Algorithm Performance: Validated 4. Summary The automated analysis has identified significant concerns. Immediate action recommended.

Recommendations

Immediate Action Recommendations: 1. Priority Actions - Escalate to compliance team immediately - Implement enhanced monitoring - Consider transaction restrictions - Document all findings 2. Investigation Requirements - Detailed transaction review required - Source of funds investigation - Enhanced due diligence protocols - Regular monitoring updates 3. Compliance Measures - File suspicious activity reports if required - Implement know-your-customer procedures - Apply enhanced monitoring protocols - Document risk mitigation measures

Severity Assessment

Very High

Appendices & References

Appendices

Appendix A: Automated Analysis Results Appendix B: Algorithm Details and Methodology Appendix C: Risk Assessment Matrix Appendix D: Transaction Pattern Analysis Appendix E: Network Connection Analysis Appendix F: Case Reference Documentation - CLADIOUS-[BYBIT_HACKER_LAZARUS_ITER]-2025-001 Appendix G: Investigation Team Notes - Cladious Forensics Team

References

1. Blockchain Analysis Framework - Cladious Platform 2. Risk Assessment Guidelines - Financial Action Task Force (FATF) 3. Automated Analysis Documentation - Internal Methodology

Contact Information

Primary Analyst: Cladious Auto
Email: [email protected]
Generated: 2025-07-16 02:25:02 UTC
Investigation Team: Cladious Forensics Team
Case Reference: CLADIOUS-[BYBIT_HACKER_LAZARUS_ITER]-2025-001

Platform: Cladious Security Analysis Platform
For questions or additional analysis requests, please contact the investigation team.

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