{ "checkpoint_format_version": 1, "created_at": "2026-04-24T13:59:13", "model_key": "sentinel-mb-c-d11", "encoder_model": "answerdotai/ModernBERT-base", "encoder_params_millions": 149.7, "head_type": "columnar", "head_code": "c", "head_variant": "d11", "head_dropout": 0.1, "head_div": 1, "head_mul": 1, "head_skip": true, "head_architecture": "funnel", "model_family": "modernbert-base", "projection_size": 640, "trainable_head_params": 14325653, "artifact_format": "transformers_end_to_end", "end_to_end_serialized": true, "dataset_signature": { "generator_version": "2026-04-07-final-audit-clear-v1", "counts": { "train": 900, "dev": 150, "test": 150 }, "distribution": { "train": { "risky": 603, "clean": 297 }, "dev": { "risky": 142, "clean": 8 }, "test": { "risky": 142, "clean": 8 } } }, "output_signature": { "violation": { "type": "binary" }, "severity": { "type": "multiclass", "labels": [ "sev_0_compliant_or_ok", "sev_1_minor", "sev_2_moderate", "sev_3_high" ] }, "domain": { "type": "multiclass", "labels": [ "performance_claims_forecasting", "investment_advice_suitability", "conflicts_inducements", "marketing_solicitation_advertising", "selective_disclosure_fair_access", "mnpi_insider_trading", "recordkeeping_supervision", "ai_automation_capability_claims", "privacy_confidentiality", "cybersecurity_internal_controls", "employment_favoritism_role_conflict", "aml_and_suspicious_activity", "other_unknown" ] }, "subtype": { "type": "multiclass", "labels": [ "speculative_outcomes_unqualified", "implicit_or_explicit_guarantee", "risk_context_omitted_or_unbalanced", "unregistered_personalized_investment_advice", "undisclosed_economic_conflict_or_referral", "pressure_or_coercion", "selective_disclosure", "mnpi_misuse_or_encouragement", "recordkeeping_or_preapproval_evasion", "ai_autonomy_or_safety_overstatement", "credentials_validation_or_compliance_misrepresentation", "confidential_data_leakage", "internal_controls_or_exception_process_leakage", "academic_commercial_role_blurring_or_quid_pro_quo", "improper_solicitation_offering_pressure", "excessive_trading_or_account_churning", "product_switching_without_cost_benefit_analysis", "dual_registrant_capacity_or_wrap_fee_conflict_confusion", "elder_exploitation_or_vulnerable_client_signal", "suspicious_activity_indicator_or_structuring", "influencer_or_social_media_promotion_compliance_failure", "crypto_asset_misrepresentation_or_inadequate_disclosure", "other_unknown" ] }, "jurisdiction": { "type": "multiclass", "labels": [ "US", "EU", "UK", "Other", "Unknown" ] }, "why": { "type": "multilabel", "labels": [ "forward_looking_statement_unqualified", "guarantee_or_assurance_language", "omits_material_risk_or_downside", "implies_downside_protection_or_no_drawdown", "cherry_picks_performance_period", "omits_performance_methodology_or_gross_net_context", "personalized_trade_or_allocation_recommendation", "timing_or_sizing_guidance", "creates_implied_advisory_relationship", "conflict_not_disclosed", "referral_relationship_not_disclosed", "omits_fees_costs_or_reasonably_available_alternatives", "selective_private_performance_or_fundraising_update", "off_the_record_or_not_in_writing_language", "mnpi_possession_indicated", "encourages_action_before_public_release", "avoid_recordkeeping_channel_shift", "bypasses_required_preapproval", "pressure_scarcity_urgency", "unsubstantiated_social_proof_or_validation", "omits_testimonial_endorsement_or_rating_disclosure", "obscures_required_disclosure_or_form_crs", "minimizes_need_for_diligence_or_compliance", "overstates_ai_capability_or_removes_human_oversight", "claims_compliance_risk_eliminated", "shares_sensitive_personal_or_financial_data", "violates_need_to_know_data_minimization", "shares_sensitive_internal_controls_or_exceptions", "role_power_imbalance_or_favoritism", "excessive_trading_cost_to_equity", "inadequate_customer_profile_or_suitability_basis", "exploits_vulnerable_or_elderly_client", "aml_suspicious_activity_indicator", "omits_switching_costs_and_product_comparison", "conflict_language_understates_actual_relationship", "omits_influencer_compensation_or_affiliation_disclosure", "misrepresents_sipc_or_regulatory_protection_for_crypto", "data_breach_notification_obligation_triggered", "impedes_regulatory_reporting_or_whistleblower_rights" ] }, "impacted_principles": { "type": "multilabel", "labels": [ "truthful_non_misleading_communications", "balanced_risk_reward_presentation", "no_performance_guarantees_or_promissory_language", "registration_and_scope_of_advice", "duty_of_loyalty_conflict_disclosure", "fair_access_to_material_information", "insider_trading_and_mnpi_controls", "supervision_and_books_records", "privacy_confidentiality_and_secure_handling", "security_control_integrity", "role_separation_and_fair_access_in_academia", "non_coercion_and_no_undue_influence", "accurate_ai_capability_and_human_oversight", "client_vulnerability_and_exploitation_prevention", "aml_and_sanctions_compliance" ] }, "remediation_actions": { "type": "multilabel", "labels": [ "add_forward_looking_disclaimer", "reframe_as_scenarios_not_expectations", "add_balanced_risk_and_downside_section", "remove_or_soften_guarantee_language", "remove_personalized_recommendations", "add_registered_advice_boundary_language", "disclose_conflicts_and_compensation", "add_fees_costs_and_alternatives_comparison", "use_standardized_approved_performance_materials", "add_performance_methodology_and_gross_net_context", "avoid_selective_disclosure_share_broadly", "escalate_mnpi_to_compliance_and_halt", "keep_discussion_on_retained_channels", "require_formal_preapproval_before_send", "remove_pressure_scarcity_and_use_factual_timeline", "substantiation_or_remove_credibility_claims", "add_testimonial_endorsement_and_rating_disclosure", "make_required_disclosure_clear_and_prominent", "avoid_minimizing_compliance_or_diligence", "clarify_ai_is_assistive_with_human_review", "remove_claims_that_ai_eliminates_risk", "redact_and_minimize_sensitive_data", "use_secure_transfer_and_limit_access", "avoid_sharing_internal_controls_or_sanitize", "route_academic_opportunities_through_institution", "separate_recommendation_letters_from_work", "assess_cost_to_equity_against_client_profile", "flag_for_elder_exploitation_review_and_hold", "assess_sar_filing_obligation_and_escalate", "initiate_breach_notification_review_and_timeline", "remove_provisions_impeding_regulatory_communications" ] }, "content_type": { "type": "multiclass", "labels": [ "email", "message" ] }, "audience_segment": { "type": "multiclass", "labels": [ "client", "internal", "prospect_or_investor", "public", "third_party" ] }, "detection_difficulty": { "type": "multiclass", "labels": [ "obvious", "moderate", "subtle" ] }, "aggravating_factors": { "type": "multilabel", "labels": [ "intentional", "reckless", "negligent", "concealment_present", "customer_harm_potential", "financial_benefit_to_respondent", "vulnerable_client", "pattern_or_duration" ] } }, "label_groups": { "severity": [ "sev_0_compliant_or_ok", "sev_1_minor", "sev_2_moderate", "sev_3_high" ], "domain": [ "performance_claims_forecasting", "investment_advice_suitability", "conflicts_inducements", "marketing_solicitation_advertising", "selective_disclosure_fair_access", "mnpi_insider_trading", "recordkeeping_supervision", "ai_automation_capability_claims", "privacy_confidentiality", "cybersecurity_internal_controls", "employment_favoritism_role_conflict", "aml_and_suspicious_activity", "other_unknown" ], "subtype": [ "speculative_outcomes_unqualified", "implicit_or_explicit_guarantee", "risk_context_omitted_or_unbalanced", "unregistered_personalized_investment_advice", "undisclosed_economic_conflict_or_referral", "pressure_or_coercion", "selective_disclosure", "mnpi_misuse_or_encouragement", "recordkeeping_or_preapproval_evasion", "ai_autonomy_or_safety_overstatement", "credentials_validation_or_compliance_misrepresentation", "confidential_data_leakage", "internal_controls_or_exception_process_leakage", "academic_commercial_role_blurring_or_quid_pro_quo", "improper_solicitation_offering_pressure", "excessive_trading_or_account_churning", "product_switching_without_cost_benefit_analysis", "dual_registrant_capacity_or_wrap_fee_conflict_confusion", "elder_exploitation_or_vulnerable_client_signal", "suspicious_activity_indicator_or_structuring", "influencer_or_social_media_promotion_compliance_failure", "crypto_asset_misrepresentation_or_inadequate_disclosure", "other_unknown" ], "jurisdiction": [ "US", "EU", "UK", "Other", "Unknown" ], "why": [ "forward_looking_statement_unqualified", "guarantee_or_assurance_language", "omits_material_risk_or_downside", "implies_downside_protection_or_no_drawdown", "cherry_picks_performance_period", "omits_performance_methodology_or_gross_net_context", "personalized_trade_or_allocation_recommendation", "timing_or_sizing_guidance", "creates_implied_advisory_relationship", "conflict_not_disclosed", "referral_relationship_not_disclosed", "omits_fees_costs_or_reasonably_available_alternatives", "selective_private_performance_or_fundraising_update", "off_the_record_or_not_in_writing_language", "mnpi_possession_indicated", "encourages_action_before_public_release", "avoid_recordkeeping_channel_shift", "bypasses_required_preapproval", "pressure_scarcity_urgency", "unsubstantiated_social_proof_or_validation", "omits_testimonial_endorsement_or_rating_disclosure", "obscures_required_disclosure_or_form_crs", "minimizes_need_for_diligence_or_compliance", "overstates_ai_capability_or_removes_human_oversight", "claims_compliance_risk_eliminated", "shares_sensitive_personal_or_financial_data", "violates_need_to_know_data_minimization", "shares_sensitive_internal_controls_or_exceptions", "role_power_imbalance_or_favoritism", "excessive_trading_cost_to_equity", "inadequate_customer_profile_or_suitability_basis", "exploits_vulnerable_or_elderly_client", "aml_suspicious_activity_indicator", "omits_switching_costs_and_product_comparison", "conflict_language_understates_actual_relationship", "omits_influencer_compensation_or_affiliation_disclosure", "misrepresents_sipc_or_regulatory_protection_for_crypto", "data_breach_notification_obligation_triggered", "impedes_regulatory_reporting_or_whistleblower_rights" ], "impacted_principles": [ "truthful_non_misleading_communications", "balanced_risk_reward_presentation", "no_performance_guarantees_or_promissory_language", "registration_and_scope_of_advice", "duty_of_loyalty_conflict_disclosure", "fair_access_to_material_information", "insider_trading_and_mnpi_controls", "supervision_and_books_records", "privacy_confidentiality_and_secure_handling", "security_control_integrity", "role_separation_and_fair_access_in_academia", "non_coercion_and_no_undue_influence", "accurate_ai_capability_and_human_oversight", "client_vulnerability_and_exploitation_prevention", "aml_and_sanctions_compliance" ], "remediation_actions": [ "add_forward_looking_disclaimer", "reframe_as_scenarios_not_expectations", "add_balanced_risk_and_downside_section", "remove_or_soften_guarantee_language", "remove_personalized_recommendations", "add_registered_advice_boundary_language", "disclose_conflicts_and_compensation", "add_fees_costs_and_alternatives_comparison", "use_standardized_approved_performance_materials", "add_performance_methodology_and_gross_net_context", "avoid_selective_disclosure_share_broadly", "escalate_mnpi_to_compliance_and_halt", "keep_discussion_on_retained_channels", "require_formal_preapproval_before_send", "remove_pressure_scarcity_and_use_factual_timeline", "substantiation_or_remove_credibility_claims", "add_testimonial_endorsement_and_rating_disclosure", "make_required_disclosure_clear_and_prominent", "avoid_minimizing_compliance_or_diligence", "clarify_ai_is_assistive_with_human_review", "remove_claims_that_ai_eliminates_risk", "redact_and_minimize_sensitive_data", "use_secure_transfer_and_limit_access", "avoid_sharing_internal_controls_or_sanitize", "route_academic_opportunities_through_institution", "separate_recommendation_letters_from_work", "assess_cost_to_equity_against_client_profile", "flag_for_elder_exploitation_review_and_hold", "assess_sar_filing_obligation_and_escalate", "initiate_breach_notification_review_and_timeline", "remove_provisions_impeding_regulatory_communications" ] }, "metadata_groups": { "content_type": [ "email", "message" ], "audience_segment": [ "client", "internal", "prospect_or_investor", "public", "third_party" ], "detection_difficulty": [ "obvious", "moderate", "subtle" ], "aggravating_factors": [ "intentional", "reckless", "negligent", "concealment_present", "customer_harm_potential", "financial_benefit_to_respondent", "vulnerable_client", "pattern_or_duration" ] }, "thresholds": { "violation": 0.5, "why": 0.55, "impacted_principles": 0.7, "remediation_actions": 0.5, "aggravating_factors": 0.4 }, "dev": { "loss": 11.207931518554688, "violation_accuracy": 0.9933333333333333, "violation_precision": 1.0, "violation_recall": 0.9929577464788732, "violation_f1": 0.9964664310954063, "severity_accuracy": 0.7133333333333334, "severity_precision_macro": 0.5736714975845411, "severity_recall_macro": 0.5810399159663866, "severity_f1_macro": 0.577203237410072, "domain_accuracy": 0.8733333333333333, "domain_precision_macro": 0.9152304502304504, "domain_recall_macro": 0.9037037037037038, "domain_f1_macro": 0.8981829715276235, "subtype_accuracy": 0.82, "subtype_precision_macro": 0.8295979273252001, "subtype_recall_macro": 0.8100452577725306, "subtype_f1_macro": 0.8046637752590468, "jurisdiction_accuracy": 0.6933333333333334, "jurisdiction_precision_macro": 0.41350649350649354, "jurisdiction_recall_macro": 0.4179220779220779, "jurisdiction_f1_macro": 0.4076005906238464, "why_precision_micro": 0.616822429906542, "why_precision_macro": 0.6160081633765844, "why_recall_micro": 0.752851711026616, "why_recall_macro": 0.7186333609410531, "why_f1_micro": 0.678082191780822, "why_f1_macro": 0.6517414247029207, "impacted_principles_precision_micro": 0.7631578947368421, "impacted_principles_precision_macro": 0.7874420024420025, "impacted_principles_recall_micro": 0.7945205479452054, "impacted_principles_recall_macro": 0.7614157289194307, "impacted_principles_f1_micro": 0.7785234899328859, "impacted_principles_f1_macro": 0.7660467655075498, "remediation_actions_precision_micro": 0.6105263157894737, "remediation_actions_precision_macro": 0.5976390453783973, "remediation_actions_recall_micro": 0.7733333333333333, "remediation_actions_recall_macro": 0.690795299444056, "remediation_actions_f1_micro": 0.6823529411764706, "remediation_actions_f1_macro": 0.6264413385705756, "content_type_accuracy": 1.0, "content_type_precision_macro": 1.0, "content_type_recall_macro": 1.0, "content_type_f1_macro": 1.0, "audience_segment_accuracy": 1.0, "audience_segment_precision_macro": 1.0, "audience_segment_recall_macro": 1.0, "audience_segment_f1_macro": 1.0, "detection_difficulty_accuracy": 0.41333333333333333, "detection_difficulty_precision_macro": 0.4076248313090418, "detection_difficulty_recall_macro": 0.4146464646464647, "detection_difficulty_f1_macro": 0.41032213795594075, "aggravating_factors_precision_micro": 0.6404494382022472, "aggravating_factors_precision_macro": 0.6351122397339503, "aggravating_factors_recall_micro": 0.7276595744680852, "aggravating_factors_recall_macro": 0.7164210015443564, "aggravating_factors_f1_micro": 0.6812749003984064, "aggravating_factors_f1_macro": 0.6705742793431082, "stage_a_selection_score": 0.7687761716662238, "selection_score": 0.7690657581979315, "scenario_key_count": 150, "rows_per_scenario_min": 1, "rows_per_scenario_median": 1.0, "rows_per_scenario_max": 1, "violation_accuracy_scenario_macro": 0.9933333333333333, "violation_accuracy_scenario_macro_risky": 0.9929577464788732, "violation_accuracy_scenario_macro_clean": 1.0, "violation_accuracy_scenario_min": 0.0, "violation_worst_scenario_key": "train_1371", "violation_worst_scenario_label": "risky" }, "test": { "loss": 10.207207107543946, "violation_accuracy": 0.9866666666666667, "violation_precision": 1.0, "violation_recall": 0.9859154929577465, "violation_f1": 0.9929078014184397, "severity_accuracy": 0.7266666666666667, "severity_precision_macro": 0.7056742540613509, "severity_recall_macro": 0.6917853651724619, "severity_f1_macro": 0.6937461494861875, "domain_accuracy": 0.82, "domain_precision_macro": 0.8639371000239372, "domain_recall_macro": 0.7870126705653021, "domain_f1_macro": 0.8032142065328451, "subtype_accuracy": 0.7733333333333333, "subtype_precision_macro": 0.7708825265643447, "subtype_recall_macro": 0.7368260527351436, "subtype_f1_macro": 0.7383595011385061, "jurisdiction_accuracy": 0.74, "jurisdiction_precision_macro": 0.5511805026656511, "jurisdiction_recall_macro": 0.5755799755799755, "jurisdiction_f1_macro": 0.5608646466716769, "why_precision_micro": 0.6408045977011494, "why_precision_macro": 0.6228897802851919, "why_recall_micro": 0.8228782287822878, "why_recall_macro": 0.7797228098698687, "why_f1_micro": 0.7205169628432957, "why_f1_macro": 0.6837887640406874, "impacted_principles_precision_micro": 0.7368421052631579, "impacted_principles_precision_macro": 0.7691853878810401, "impacted_principles_recall_micro": 0.7636363636363637, "impacted_principles_recall_macro": 0.6710974322869485, "impacted_principles_f1_micro": 0.7499999999999999, "impacted_principles_f1_macro": 0.7030370589130892, "remediation_actions_precision_micro": 0.6188811188811189, "remediation_actions_precision_macro": 0.5923653065256482, "remediation_actions_recall_micro": 0.7695652173913043, "remediation_actions_recall_macro": 0.684497765569872, "remediation_actions_f1_micro": 0.686046511627907, "remediation_actions_f1_macro": 0.6175714466344578, "content_type_accuracy": 1.0, "content_type_precision_macro": 1.0, "content_type_recall_macro": 1.0, "content_type_f1_macro": 1.0, "audience_segment_accuracy": 1.0, "audience_segment_precision_macro": 1.0, "audience_segment_recall_macro": 1.0, "audience_segment_f1_macro": 1.0, "detection_difficulty_accuracy": 0.47333333333333333, "detection_difficulty_precision_macro": 0.46757744378508614, "detection_difficulty_recall_macro": 0.471182412358883, "detection_difficulty_f1_macro": 0.46490073858516184, "aggravating_factors_precision_micro": 0.6641509433962264, "aggravating_factors_precision_macro": 0.6283313196161129, "aggravating_factors_recall_micro": 0.7333333333333333, "aggravating_factors_recall_macro": 0.6949052211781471, "aggravating_factors_f1_micro": 0.697029702970297, "aggravating_factors_f1_macro": 0.6546016914120363, "stage_a_selection_score": 0.7506931806680867, "selection_score": 0.7565296660343293, "scenario_key_count": 150, "rows_per_scenario_min": 1, "rows_per_scenario_median": 1.0, "rows_per_scenario_max": 1, "violation_accuracy_scenario_macro": 0.9866666666666667, "violation_accuracy_scenario_macro_risky": 0.9859154929577465, "violation_accuracy_scenario_macro_clean": 1.0, "violation_accuracy_scenario_min": 0.0, "violation_worst_scenario_key": "train_1843", "violation_worst_scenario_label": "risky" }, "model_version": "sentinel-mb-c-d11-20260424", "release_repo_id": "AurelexAI/sentinel-01-pub", "release_channel": "sentinel-01-pub", "release_alias_of": null, "source_model_key": "sentinel-mb-c-d11", "encoder_revision": null, "encoder_code_revision": null, "encoder_trust_remote_code": false, "encoder_config_overrides": {}, "inference_task": "sentinel-stage-a", "inference_entrypoint": "transformers.pipeline", "source_checkpoint": { "source": "_models/stage-a-grid-v3-gpu/sentinel-mb-c-d11/260424_135913_sentinel-mb-c-d11", "checkpoint_sha256": "ba46d9609b97073802fbacbbceb076fb20e943389263af179ec4affa1ad97dd0", "metadata_sha256": "feda8e1183869806e91531bf87fdc1de09c2417e4821a4ec7fcf2b8404e89979" } }