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- Phase 9: Internal Metric Instrumentation Gap Fill (10 tasks, 12d) - MetricsRegistry class, NodeStore I/O, cache, TxQ, PerfLog, CountedObjects, load factors - Phase 10: Synthetic Workload Generation & Telemetry Validation (7 tasks, 10d) - Multi-node harness, RPC/tx generators, validation suite, benchmarks, CI - Phase 11: Third-Party Data Collection Pipelines (11 tasks, 15d) - Custom OTel Collector receiver (Go), 30 external metrics, alerting rules, 4 dashboards - Updated 06-implementation-phases.md with plan sections §6.8.2-§6.8.4, gantt, effort summary - Updated 09-data-collection-reference.md with §5b-§5d future metric definitions - Updated 08-appendix.md with Phase 9-11 glossary, task list entries, cross-reference guide, effort summary Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
330 lines
14 KiB
Markdown
330 lines
14 KiB
Markdown
# Phase 9: Internal Metric Instrumentation Gap Fill — Task List
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> **Status**: Future Enhancement
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>
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> **Goal**: Instrument rippled to emit ~50+ metrics that exist in `get_counts`/`server_info`/TxQ/PerfLog but currently lack time-series export via the OTel or beast::insight pipelines.
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>
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> **Scope**: Hybrid approach — extend `beast::insight` for metrics near existing registrations, use OTel Metrics SDK `ObservableGauge` callbacks for new categories (TxQ, PerfLog, CountedObjects).
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>
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> **Branch**: `pratik/otel-phase9-metric-gap-fill` (from `pratik/otel-phase8-log-correlation`)
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>
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> **Depends on**: Phase 7 (native OTel metrics pipeline) and Phase 8 (log-trace correlation)
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### Related Plan Documents
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| Document | Relevance |
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| -------------------------------------------------------------------- | -------------------------------------------------------------- |
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| [06-implementation-phases.md](./06-implementation-phases.md) | Phase 9 plan: motivation, architecture, exit criteria (§6.8.2) |
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| [09-data-collection-reference.md](./09-data-collection-reference.md) | Current metric inventory + future metrics section |
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| [Phase7_taskList.md](./Phase7_taskList.md) | Prerequisite — OTel Metrics SDK and `OTelCollector` class |
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| [Phase8_taskList.md](./Phase8_taskList.md) | Prerequisite — log-trace correlation |
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### Third-Party Consumer Context
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These metrics serve multiple external consumer categories identified during research:
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| Consumer Category | Key Metrics They Need |
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| ------------------------- | --------------------------------------------------------------- |
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| **Exchanges** | Fee escalation levels, TxQ depth, settlement latency |
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| **Payment Processors** | Load factors, io_latency, transaction throughput |
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| **Analytics Providers** | NodeStore I/O, cache hit rates, counted objects |
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| **Validators/Operators** | Per-job execution times, PerfLog RPC counters, consensus timing |
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| **Academic Researchers** | Consensus performance time-series, fee market dynamics |
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| **Institutional Custody** | Server health scores, reserve calculations, node availability |
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---
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## Task 9.1: NodeStore I/O Metrics
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**Objective**: Export node store read/write performance as time-series metrics.
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**What to do**:
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- In `src/libxrpl/nodestore/Database.cpp`, extend existing `beast::insight` registrations to add:
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- Gauge: `node_reads_total` (cumulative read operations)
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- Gauge: `node_reads_hit` (cache-served reads)
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- Gauge: `node_writes` (cumulative write operations)
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- Gauge: `node_written_bytes` (cumulative bytes written)
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- Gauge: `node_read_bytes` (cumulative bytes read)
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- Gauge: `node_reads_duration_us` (cumulative read time in microseconds)
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- Gauge: `write_load` (current write load score)
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- Gauge: `read_queue` (items in read queue)
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- These values are already computed in `Database::getCountsJson()` (line ~236). Wire the same counters to `beast::insight` hooks.
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**Key modified files**:
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- `src/libxrpl/nodestore/Database.cpp`
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- `src/libxrpl/nodestore/Database.h` (add insight members)
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**Derived Prometheus metrics**: `rippled_nodestore_reads_total`, `rippled_nodestore_reads_hit`, `rippled_nodestore_write_load`, etc.
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**Grafana dashboard**: Add "NodeStore I/O" panel group to _Node Health_ dashboard.
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---
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## Task 9.2: Cache Hit Rate Metrics
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**Objective**: Export SHAMap and ledger cache performance as time-series gauges.
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**What to do**:
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- Register OTel `ObservableGauge` callbacks (via Phase 7's `OTelCollector`) for:
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- `SLE_hit_rate` — SLE cache hit rate (0.0–1.0)
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- `ledger_hit_rate` — Ledger object cache hit rate
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- `AL_hit_rate` — AcceptedLedger cache hit rate
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- `treenode_cache_size` — SHAMap TreeNode cache size (entries)
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- `treenode_track_size` — Tracked tree nodes
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- `fullbelow_size` — FullBelow cache size
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- The callback should read from the same sources as `GetCounts.cpp` handler (line ~43).
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- Create a centralized `MetricsRegistry` class that holds all OTel async gauge registrations, polled at 10-second intervals by the `PeriodicMetricReader`.
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**Key modified files**:
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- New: `src/xrpld/telemetry/MetricsRegistry.h` / `.cpp`
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- `src/xrpld/rpc/handlers/GetCounts.cpp` (extract shared access methods)
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- `src/xrpld/app/main/Application.cpp` (register MetricsRegistry at startup)
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**Derived Prometheus metrics**: `rippled_cache_SLE_hit_rate`, `rippled_cache_ledger_hit_rate`, `rippled_cache_treenode_size`, etc.
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---
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## Task 9.3: Transaction Queue (TxQ) Metrics
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**Objective**: Export TxQ depth, capacity, and fee escalation levels as time-series.
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**What to do**:
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- Register OTel `ObservableGauge` callbacks for TxQ state (from `TxQ.h` line ~143):
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- `txq_count` — Current transactions in queue
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- `txq_max_size` — Maximum queue capacity
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- `txq_in_ledger` — Transactions in current open ledger
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- `txq_per_ledger` — Expected transactions per ledger
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- `txq_reference_fee_level` — Reference fee level
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- `txq_min_processing_fee_level` — Minimum fee to get processed
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- `txq_med_fee_level` — Median fee level in queue
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- `txq_open_ledger_fee_level` — Open ledger fee escalation level
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- Add to the `MetricsRegistry` (Task 9.2).
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**Key modified files**:
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- `src/xrpld/telemetry/MetricsRegistry.cpp` (add TxQ callbacks)
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- `src/xrpld/app/tx/detail/TxQ.h` (expose metrics accessor if needed)
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**Derived Prometheus metrics**: `rippled_txq_count`, `rippled_txq_max_size`, `rippled_txq_open_ledger_fee_level`, etc.
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**Grafana dashboard**: New _Fee Market & TxQ_ dashboard (`rippled-fee-market`).
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---
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## Task 9.4: PerfLog Per-RPC Method Metrics
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**Objective**: Export per-RPC-method call counts and latency as OTel metrics.
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**What to do**:
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- Register OTel instruments for PerfLog RPC counters (from `PerfLogImp.cpp` line ~63):
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- Counter: `rpc_method_started_total{method="<name>"}` — calls started
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- Counter: `rpc_method_finished_total{method="<name>"}` — calls completed
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- Counter: `rpc_method_errored_total{method="<name>"}` — calls errored
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- Histogram: `rpc_method_duration_us{method="<name>"}` — execution time distribution
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- Use OTel `Counter<int64_t>` and `Histogram<double>` instruments with `method` attribute label.
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- Hook into the existing PerfLog callback mechanism rather than adding new instrumentation points.
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**Key modified files**:
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- `src/xrpld/perflog/detail/PerfLogImp.cpp` (add OTel instrument updates alongside existing JSON counters)
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- `src/xrpld/telemetry/MetricsRegistry.cpp` (register instruments)
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**Derived Prometheus metrics**: `rippled_rpc_method_started_total{method="server_info"}`, `rippled_rpc_method_duration_us_bucket{method="ledger"}`, etc.
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**Grafana dashboard**: Add "Per-Method RPC Breakdown" panel group to _RPC Performance_ dashboard.
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---
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## Task 9.5: PerfLog Per-Job-Type Metrics
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**Objective**: Export per-job-type queue and execution metrics.
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**What to do**:
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- Register OTel instruments for PerfLog job counters:
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- Counter: `job_queued_total{job_type="<name>"}` — jobs queued
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- Counter: `job_started_total{job_type="<name>"}` — jobs started
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- Counter: `job_finished_total{job_type="<name>"}` — jobs completed
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- Histogram: `job_queued_duration_us{job_type="<name>"}` — time spent waiting in queue
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- Histogram: `job_running_duration_us{job_type="<name>"}` — execution time distribution
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- Hook into PerfLog's existing job tracking alongside Task 9.4.
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**Key modified files**:
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- `src/xrpld/perflog/detail/PerfLogImp.cpp`
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- `src/xrpld/telemetry/MetricsRegistry.cpp`
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**Derived Prometheus metrics**: `rippled_job_queued_total{job_type="ledgerData"}`, `rippled_job_running_duration_us_bucket{job_type="transaction"}`, etc.
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**Grafana dashboard**: New _Job Queue Analysis_ dashboard (`rippled-job-queue`).
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---
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## Task 9.6: Counted Object Instance Metrics
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**Objective**: Export live instance counts for key internal object types.
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**What to do**:
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- Register OTel `ObservableGauge` callbacks for `CountedObject<T>` instance counts:
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- `object_count{type="Transaction"}` — live Transaction objects
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- `object_count{type="Ledger"}` — live Ledger objects
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- `object_count{type="NodeObject"}` — live NodeObject instances
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- `object_count{type="STTx"}` — serialized transaction objects
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- `object_count{type="STLedgerEntry"}` — serialized ledger entries
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- `object_count{type="InboundLedger"}` — ledgers being fetched
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- `object_count{type="Pathfinder"}` — active pathfinding computations
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- `object_count{type="PathRequest"}` — active path requests
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- `object_count{type="HashRouterEntry"}` — hash router entries
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- The `CountedObject` template already tracks these via atomic counters. The callback just reads the current counts.
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**Key modified files**:
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- `src/xrpld/telemetry/MetricsRegistry.cpp` (add counted object callbacks)
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- `include/xrpl/basics/CountedObject.h` (may need static accessor for iteration)
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**Derived Prometheus metrics**: `rippled_object_count{type="Transaction"}`, `rippled_object_count{type="NodeObject"}`, etc.
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**Grafana dashboard**: Add "Object Instance Counts" panel to _Node Health_ dashboard.
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---
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## Task 9.7: Fee Escalation & Load Factor Metrics
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**Objective**: Export the full load factor breakdown as time-series.
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**What to do**:
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- Register OTel `ObservableGauge` callbacks for load factors (from `NetworkOPs.cpp` line ~2694):
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- `load_factor` — combined transaction cost multiplier
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- `load_factor_server` — server + cluster + network contribution
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- `load_factor_local` — local server load only
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- `load_factor_net` — network-wide load estimate
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- `load_factor_cluster` — cluster peer load
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- `load_factor_fee_escalation` — open ledger fee escalation
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- `load_factor_fee_queue` — queue entry fee level
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- These overlap with some existing StatsD metrics but provide finer granularity (individual factor breakdown vs. combined value).
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**Key modified files**:
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- `src/xrpld/telemetry/MetricsRegistry.cpp`
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- `src/xrpld/app/misc/NetworkOPs.cpp` (expose load factor accessors if needed)
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**Derived Prometheus metrics**: `rippled_load_factor`, `rippled_load_factor_fee_escalation`, etc.
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**Grafana dashboard**: Add "Load Factor Breakdown" panel to _Fee Market & TxQ_ dashboard.
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---
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## Task 9.8: New Grafana Dashboards
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**Objective**: Create Grafana dashboards for the new metric categories.
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**What to do**:
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- Create 2 new dashboards:
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1. **Fee Market & TxQ** (`rippled-fee-market`) — TxQ depth/capacity, fee levels, load factor breakdown, fee escalation timeline
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2. **Job Queue Analysis** (`rippled-job-queue`) — Per-job-type rates, queue wait times, execution times, job queue depth
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- Update 2 existing dashboards:
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1. **Node Health** (`rippled-statsd-node-health`) — Add NodeStore I/O panels, cache hit rate panels, object instance counts
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2. **RPC Performance** (`rippled-rpc-perf`) — Add per-method RPC breakdown panels
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**Key modified files**:
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- New: `docker/telemetry/grafana/dashboards/rippled-fee-market.json`
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- New: `docker/telemetry/grafana/dashboards/rippled-job-queue.json`
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- `docker/telemetry/grafana/dashboards/rippled-statsd-node-health.json`
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- `docker/telemetry/grafana/dashboards/rippled-rpc-perf.json`
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---
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## Task 9.9: Update Documentation
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**Objective**: Update telemetry reference docs with all new metrics.
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**What to do**:
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- Update `OpenTelemetryPlan/09-data-collection-reference.md`:
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- Add new section for OTel SDK-exported metrics (NodeStore, cache, TxQ, PerfLog, CountedObjects, load factors)
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- Update Grafana dashboard reference table (add 2 new dashboards)
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- Add Prometheus query examples for new metrics
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- Update `docs/telemetry-runbook.md`:
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- Add alerting rules for new metrics (NodeStore write_load, TxQ capacity, cache hit rate degradation)
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- Add troubleshooting entries for new metric categories
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**Key modified files**:
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- `OpenTelemetryPlan/09-data-collection-reference.md`
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- `docs/telemetry-runbook.md`
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---
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## Task 9.10: Integration Tests
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**Objective**: Verify all new metrics appear in Prometheus after a test workload.
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**What to do**:
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- Extend the existing telemetry integration test:
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- Start rippled with `[telemetry] enabled=1` and `[insight] server=otel`
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- Submit a batch of RPC calls and transactions
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- Query Prometheus for each new metric family
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- Assert non-zero values for: NodeStore reads, cache hit rates, TxQ count, PerfLog RPC counters, object counts, load factors
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- Add unit tests for the `MetricsRegistry` class:
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- Verify callback registration and deregistration
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- Verify metric values match `get_counts` JSON output
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- Verify graceful behavior when telemetry is disabled
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**Key modified files**:
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- `src/test/telemetry/MetricsRegistry_test.cpp` (new)
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- Existing integration test script (extend assertions)
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---
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## Effort Summary
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| Task | Description | Effort | Risk |
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| ---- | ---------------------------------------- | ------ | ------ |
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| 9.1 | NodeStore I/O metrics | 1d | Low |
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| 9.2 | Cache hit rate metrics + MetricsRegistry | 2d | Medium |
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| 9.3 | TxQ metrics | 1d | Low |
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| 9.4 | PerfLog per-RPC metrics | 1.5d | Medium |
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| 9.5 | PerfLog per-job metrics | 1d | Low |
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| 9.6 | Counted object instance metrics | 0.5d | Low |
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| 9.7 | Fee escalation & load factor metrics | 0.5d | Low |
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| 9.8 | New Grafana dashboards | 2d | Low |
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| 9.9 | Update documentation | 1d | Low |
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| 9.10 | Integration tests | 1.5d | Medium |
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**Total Effort**: 12 days
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## Exit Criteria
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- [ ] All ~50 new metrics visible in Prometheus via OTLP pipeline
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- [ ] `MetricsRegistry` class registers/deregisters cleanly with OTel SDK
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- [ ] Async gauge callbacks execute at 10s intervals without performance impact
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- [ ] 2 new Grafana dashboards operational (Fee Market, Job Queue)
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- [ ] 2 existing dashboards updated with new panel groups
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- [ ] Integration test validates all new metric families are non-zero
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- [ ] No performance regression (< 0.5% CPU overhead from new callbacks)
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- [ ] Documentation updated with full new metric inventory
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