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import os
import sys
import asyncio
import re
import time
from pathlib import Path
from collections import Counter, defaultdict
from statistics import mean
import requests
from dotenv import load_dotenv
SERVER_ROOT = Path(__file__).resolve().parents[1]
if str(SERVER_ROOT) not in sys.path:
sys.path.insert(0, str(SERVER_ROOT))
load_dotenv(SERVER_ROOT / ".env")
from src.bedrock_claude import create_bedrock_runtime_client, generate_bedrock_claude_text
from src.embeddings import EmbeddingGenerator
API_URL = os.getenv("CODEBASE_RAG_API_URL", "http://localhost:8000")
REPO_ID = int(os.getenv("CODEBASE_RAG_REPO_ID", "1"))
SESSION_ID = os.getenv("CODEBASE_RAG_SESSION_ID", "eval-session")
TOP_K = int(os.getenv("CODEBASE_RAG_TOP_K", "8"))
QUERY_TIMEOUT_SECONDS = int(os.getenv("CODEBASE_RAG_QUERY_TIMEOUT_SECONDS", "180"))
QUERY_MAX_RETRIES = int(os.getenv("CODEBASE_RAG_QUERY_MAX_RETRIES", "5"))
QUERY_RETRY_BASE_SECONDS = float(os.getenv("CODEBASE_RAG_QUERY_RETRY_BASE_SECONDS", "2"))
ENABLE_RAGAS = os.getenv("CODEBASE_RAG_ENABLE_RAGAS", "1").lower() not in {"0", "false", "no"}
RAGAS_ASYNC = os.getenv("CODEBASE_RAG_RAGAS_ASYNC", "0").lower() in {"1", "true", "yes"}
RAGAS_RAISE_EXCEPTIONS = os.getenv("CODEBASE_RAG_RAGAS_RAISE_EXCEPTIONS", "0").lower() in {
"1",
"true",
"yes",
}
MIN_REFERENCE_OVERLAP = float(os.getenv("CODEBASE_RAG_MIN_REFERENCE_OVERLAP", "0.2"))
MIN_REFERENCE_TERM_MATCHES = int(os.getenv("CODEBASE_RAG_MIN_REFERENCE_TERM_MATCHES", "2"))
EVAL_SET_PATH = Path(
os.getenv(
"CODEBASE_RAG_EVAL_SET",
Path(__file__).with_name("sample_eval_set.json"),
)
)
def log(message: str):
print(f"[eval] {message}", file=sys.stderr, flush=True)
def get_app_model_config():
llm_provider = os.getenv("LLM_PROVIDER", "bedrock").lower()
if llm_provider == "groq":
llm_model = os.getenv("GROQ_MODEL", "llama-3.3-70b-versatile")
elif llm_provider == "bedrock":
llm_model = os.getenv(
"BEDROCK_LLM_MODEL",
"anthropic.claude-sonnet-4-20250514-v1:0",
)
elif llm_provider == "vertex_ai":
llm_model = os.getenv("VERTEX_LLM_MODEL", "claude-sonnet-4@20250514")
else:
llm_model = "unknown"
embedding_provider = os.getenv("EMBEDDING_PROVIDER", "auto").lower()
if embedding_provider == "bedrock":
embedding_model = os.getenv("BEDROCK_EMBEDDING_MODEL", "cohere.embed-v4:0")
elif embedding_provider == "vertex_ai":
embedding_model = os.getenv("VERTEX_EMBEDDING_MODEL", "gemini-embedding-001")
elif embedding_provider == "openai":
embedding_model = os.getenv("EMBEDDING_MODEL", "text-embedding-3-small")
elif embedding_provider == "local":
embedding_model = os.getenv("EMBEDDING_MODEL") or os.getenv(
"LOCAL_EMBEDDING_MODEL", "nomic-ai/CodeRankEmbed"
)
else:
embedding_model = os.getenv("EMBEDDING_MODEL") or "auto"
eval_model = os.getenv(
"EVAL_MODEL",
os.getenv("BEDROCK_EVAL_MODEL", "anthropic.claude-opus-4-20250514-v1:0"),
)
return {
"llm_provider": llm_provider,
"llm_model": llm_model,
"embedding_provider": embedding_provider,
"embedding_model": embedding_model,
"eval_model": eval_model,
}
def load_eval_rows():
return json.loads(EVAL_SET_PATH.read_text())
def post_query(row):
payload = {
"repo_id": REPO_ID,
"question": row["question"],
"top_k": TOP_K,
"history": row.get("turns", []),
}
case_id = row.get("id", row["question"])
for attempt in range(1, QUERY_MAX_RETRIES + 1):
response = requests.post(
f"{API_URL}/api/query",
json=payload,
headers={"X-Session-Id": SESSION_ID},
timeout=QUERY_TIMEOUT_SECONDS,
)
if response.ok:
return response.json()
detail = response.text
try:
parsed = response.json()
detail = parsed.get("detail") or parsed
except Exception:
pass
detail_text = str(detail)
is_retryable = response.status_code in {429, 500, 502, 503, 504} and any(
marker in detail_text
for marker in [
"ThrottlingException",
"throttled",
"Too many requests",
"timed out",
"timeout",
"ServiceUnavailable",
"temporarily unavailable",
]
)
if is_retryable and attempt < QUERY_MAX_RETRIES:
retry_after = response.headers.get("Retry-After")
try:
wait_seconds = (
float(retry_after)
if retry_after
else QUERY_RETRY_BASE_SECONDS * (2 ** (attempt - 1))
)
except ValueError:
wait_seconds = QUERY_RETRY_BASE_SECONDS * (2 ** (attempt - 1))
log(
f"Retrying case {case_id} after transient query failure "
f"(attempt {attempt}/{QUERY_MAX_RETRIES}, wait={wait_seconds:.1f}s): {detail_text}"
)
time.sleep(wait_seconds)
continue
raise RuntimeError(
f"Query failed for eval case {case_id!r} "
f"with status {response.status_code}: {detail}"
)
raise RuntimeError(f"Query failed for eval case {case_id!r}: exhausted retries")
def normalize_path(path: str) -> str:
return path.strip().lstrip("./").lower()
STOPWORDS = {
"a",
"an",
"and",
"are",
"as",
"at",
"be",
"by",
"for",
"from",
"how",
"in",
"into",
"is",
"it",
"its",
"of",
"on",
"or",
"that",
"the",
"their",
"this",
"to",
"what",
"when",
"where",
"which",
"with",
}
def tokenize_text(text: str):
tokens = []
for raw_token in re.findall(r"[A-Za-z0-9_./+-]+", text or ""):
token = raw_token.lower()
tokens.append(token)
camel_parts = re.sub(r"(?<=[a-z0-9])(?=[A-Z])", " ", raw_token).split()
split_parts = re.split(r"[._/+-]+", token)
for part in [*camel_parts, *split_parts]:
normalized = part.strip().lower()
if normalized and normalized != token:
tokens.append(normalized)
return tokens
def normalize_keywords(keywords):
normalized = []
seen = set()
for keyword in keywords or []:
phrase = " ".join(tokenize_text(str(keyword)))
if not phrase or phrase in seen:
continue
seen.add(phrase)
normalized.append(phrase)
return normalized
def compute_retrieval_metrics(expected_sources, actual_sources):
expected = {normalize_path(path) for path in expected_sources}
actual = [normalize_path(path) for path in actual_sources]
unique_actual = list(dict.fromkeys(actual))
def matches_expected(actual_path: str) -> bool:
for expected_path in expected:
expected_is_directory = (
expected_path.endswith("/")
or "." not in expected_path.rsplit("/", 1)[-1]
)
normalized_expected = expected_path.rstrip("/")
if actual_path == expected_path:
return True
if expected_is_directory and actual_path.startswith(normalized_expected + "/"):
return True
return False
hit = 1 if any(matches_expected(path) for path in actual) else 0
recall = 0.0
if expected:
matched_expected = set()
for expected_path in expected:
expected_is_directory = (
expected_path.endswith("/")
or "." not in expected_path.rsplit("/", 1)[-1]
)
normalized_expected = expected_path.rstrip("/")
for actual_path in actual:
if actual_path == expected_path or (
expected_is_directory and actual_path.startswith(normalized_expected + "/")
):
matched_expected.add(expected_path)
break
recall = len(matched_expected) / len(expected)
mrr = 0.0
for index, path in enumerate(actual, start=1):
if matches_expected(path):
mrr = 1.0 / index
break
return {
"retrieval_hit": hit,
"source_recall": recall,
"mrr": mrr,
"top1_hit": 1 if actual and matches_expected(actual[0]) else 0,
"unique_source_precision": (
sum(1 for path in unique_actual if matches_expected(path)) / len(unique_actual)
if unique_actual
else 0.0
),
"duplicate_source_rate": (
(len(actual) - len(unique_actual)) / len(actual)
if actual
else 0.0
),
}
def keyword_match_details(row, answer: str):
keywords = normalize_keywords(row.get("must_include_any", []))
if not keywords:
return None
answer_tokens = tokenize_text(answer)
if not answer_tokens:
return {
"coverage": 0.0,
"matched_count": 0,
"total_keywords": len(keywords),
"matched_keywords": [],
"missing_keywords": keywords,
}
matched_keywords = []
for keyword in keywords:
keyword_tokens = keyword.split()
window = len(keyword_tokens)
if window == 1:
if keyword_tokens[0] in answer_tokens:
matched_keywords.append(keyword)
continue
for index in range(0, len(answer_tokens) - window + 1):
if answer_tokens[index : index + window] == keyword_tokens:
matched_keywords.append(keyword)
break
matched_set = set(matched_keywords)
missing_keywords = [keyword for keyword in keywords if keyword not in matched_set]
matched_count = len(matched_set)
return {
"coverage": matched_count / len(keywords),
"matched_count": matched_count,
"total_keywords": len(keywords),
"matched_keywords": sorted(matched_set),
"missing_keywords": missing_keywords,
}
def keyword_pass(row, keyword_details):
if keyword_details is None:
return None
minimum = int(row.get("min_keyword_matches", 1))
return 1 if keyword_details["matched_count"] >= minimum else 0
def answer_length_metrics(answer: str):
tokens = tokenize_text(answer)
return {
"answer_word_count": len(tokens),
"has_substantive_answer": 1 if len(tokens) >= 40 else 0,
}
def reference_support_details(reference: str, candidate: str):
reference_terms = {
token for token in tokenize_text(reference)
if len(token) > 2 and token not in STOPWORDS
}
if not reference_terms:
return None
candidate_terms = set(tokenize_text(candidate))
matched_terms = sorted(token for token in reference_terms if token in candidate_terms)
matched_count = len(matched_terms)
return {
"ratio": matched_count / len(reference_terms),
"matched_count": matched_count,
"reference_term_count": len(reference_terms),
"matched_terms": matched_terms,
}
def reference_support_pass(reference_details):
if reference_details is None:
return None
return 1 if (
reference_details["ratio"] >= MIN_REFERENCE_OVERLAP
and reference_details["matched_count"] >= MIN_REFERENCE_TERM_MATCHES
) else 0
def validate_eval_rows(rows):
errors = []
warnings = []
category_counts = Counter()
id_counts = Counter()
id_prefix_counts = Counter()
expected_source_counts = []
keyword_counts = []
conversation_cases = 0
benchmark_scope = {
"type": "mixed_or_unknown",
"dominant_prefix": None,
"dominant_prefix_fraction": 0.0,
}
for index, row in enumerate(rows, start=1):
row_id = row.get("id") or f"row-{index}"
id_counts[row_id] += 1
prefix = row_id.split("-", 1)[0].lower()
if prefix:
id_prefix_counts[prefix] += 1
category_counts[row.get("category", "general")] += 1
question = str(row.get("question", "")).strip()
ground_truth = str(row.get("ground_truth", "")).strip()
expected_sources = row.get("expected_sources", [])
must_include_any = row.get("must_include_any", [])
if not question:
errors.append(f"{row_id}: missing question")
if not ground_truth:
errors.append(f"{row_id}: missing ground_truth")
if not isinstance(expected_sources, list) or not expected_sources:
errors.append(f"{row_id}: expected_sources must be a non-empty list")
if must_include_any and not isinstance(must_include_any, list):
errors.append(f"{row_id}: must_include_any must be a list when present")
if isinstance(must_include_any, list):
normalized_keywords = normalize_keywords(must_include_any)
if len(normalized_keywords) != len([keyword for keyword in must_include_any if str(keyword).strip()]):
warnings.append(
f"{row_id}: duplicate or case-variant keywords were normalized; "
"resume metrics are stricter than the raw checklist wording."
)
if row.get("turns"):
conversation_cases += 1
expected_source_counts.append(len(expected_sources) if isinstance(expected_sources, list) else 0)
keyword_counts.append(len(must_include_any) if isinstance(must_include_any, list) else 0)
duplicate_ids = sorted(row_id for row_id, count in id_counts.items() if count > 1)
if duplicate_ids:
errors.append(f"duplicate ids found: {', '.join(duplicate_ids)}")
if len(rows) < 25:
warnings.append(
"Eval set has fewer than 25 cases. Good for iteration, but light for resume-grade benchmarking."
)
if len(category_counts) < 4:
warnings.append("Eval set covers fewer than 4 categories, so breadth is limited.")
if conversation_cases < 2:
warnings.append("Eval set has very little multi-turn coverage.")
if category_counts and min(category_counts.values()) < 2:
sparse = sorted(category for category, count in category_counts.items() if count < 2)
warnings.append(f"Some categories are underrepresented: {', '.join(sparse)}.")
if id_prefix_counts:
dominant_prefix, dominant_count = id_prefix_counts.most_common(1)[0]
dominant_prefix_fraction = dominant_count / len(rows)
if dominant_prefix_fraction >= 0.8:
benchmark_scope = {
"type": "single_repository",
"dominant_prefix": dominant_prefix,
"dominant_prefix_fraction": round(dominant_prefix_fraction, 4),
}
return {
"case_count": len(rows),
"category_counts": dict(sorted(category_counts.items())),
"conversation_case_count": conversation_cases,
"average_expected_sources": round(mean(expected_source_counts), 2) if expected_source_counts else 0.0,
"average_keywords_per_case": round(mean(keyword_counts), 2) if keyword_counts else 0.0,
"benchmark_scope": benchmark_scope,
"errors": errors,
"warnings": warnings,
"is_valid": not errors,
}
def summarize_custom_metrics(details):
keyword_coverages = [item["keyword_coverage"] for item in details if item["keyword_coverage"] is not None]
keyword_passes = [item["keyword_pass"] for item in details if item["keyword_pass"] is not None]
reference_support_passes = [
item["reference_support_pass"] for item in details if item["reference_support_pass"] is not None
]
grounded_answer_passes = [
1
for item in details
if item["retrieval_hit"] == 1
and item["has_substantive_answer"] == 1
and (item["keyword_pass"] in {None, 1})
and (item["reference_support_pass"] in {None, 1})
]
exact_source_recall_cases = [1 for item in details if item["source_recall"] == 1.0]
return {
"retrieval_hit_rate": round(mean(item["retrieval_hit"] for item in details), 4),
"top1_hit_rate": round(mean(item["top1_hit"] for item in details), 4),
"source_recall": round(mean(item["source_recall"] for item in details), 4),
"mrr": round(mean(item["mrr"] for item in details), 4),
"unique_source_precision": round(mean(item["unique_source_precision"] for item in details), 4),
"duplicate_source_rate": round(mean(item["duplicate_source_rate"] for item in details), 4),
"keyword_coverage": round(mean(keyword_coverages), 4) if keyword_coverages else None,
"keyword_pass_rate": round(mean(keyword_passes), 4) if keyword_passes else None,
"reference_support_rate": round(mean(reference_support_passes), 4) if reference_support_passes else None,
"ground_truth_lexical_overlap": round(
mean(item["ground_truth_lexical_overlap"] for item in details if item["ground_truth_lexical_overlap"] is not None),
4,
)
if any(item["ground_truth_lexical_overlap"] is not None for item in details)
else None,
"substantive_answer_rate": round(mean(item["has_substantive_answer"] for item in details), 4),
"grounded_answer_rate": round(sum(grounded_answer_passes) / len(details), 4) if details else 0.0,
"exact_source_recall_rate": round(sum(exact_source_recall_cases) / len(details), 4) if details else 0.0,
}
def summarize_by_category(details):
grouped = defaultdict(list)
for item in details:
grouped[item["category"]].append(item)
summary = {}
for category, items in sorted(grouped.items()):
keyword_passes = [item["keyword_pass"] for item in items if item["keyword_pass"] is not None]
summary[category] = {
"case_count": len(items),
"retrieval_hit_rate": round(mean(item["retrieval_hit"] for item in items), 4),
"top1_hit_rate": round(mean(item["top1_hit"] for item in items), 4),
"source_recall": round(mean(item["source_recall"] for item in items), 4),
"mrr": round(mean(item["mrr"] for item in items), 4),
"keyword_pass_rate": round(mean(keyword_passes), 4) if keyword_passes else None,
"reference_support_rate": round(
mean(
item["reference_support_pass"]
for item in items
if item["reference_support_pass"] is not None
),
4,
)
if any(item["reference_support_pass"] is not None for item in items)
else None,
"grounded_answer_rate": round(
mean(
1
if item["retrieval_hit"] == 1
and item["has_substantive_answer"] == 1
and item["keyword_pass"] in {None, 1}
and item["reference_support_pass"] in {None, 1}
else 0
for item in items
),
4,
),
}
return summary
def build_headline_metrics(custom_metrics, audit):
return {
"sample_size": audit["case_count"],
"category_count": len(audit["category_counts"]),
"retrieval_hit_rate": custom_metrics["retrieval_hit_rate"],
"top1_hit_rate": custom_metrics["top1_hit_rate"],
"mrr": custom_metrics["mrr"],
"source_recall": custom_metrics["source_recall"],
"grounded_answer_rate": custom_metrics["grounded_answer_rate"],
"keyword_pass_rate": custom_metrics["keyword_pass_rate"],
"reference_support_rate": custom_metrics["reference_support_rate"],
}
def build_metric_guidance(custom_metrics, ragas_report):
retrieval_gate_thresholds = {
"retrieval_hit_rate": 0.8,
"top1_hit_rate": 0.8,
"mrr": 0.75,
}
retrieval_gate_pass = all(
custom_metrics[key] >= threshold
for key, threshold in retrieval_gate_thresholds.items()
)
next_focus = []
if custom_metrics["source_recall"] < 0.7:
next_focus.append("Improve multi-source recall for cross-file and implementation questions.")
if custom_metrics["duplicate_source_rate"] > 0.15:
next_focus.append("Reduce duplicate or near-duplicate source chunks before answer generation.")
if custom_metrics["grounded_answer_rate"] < 0.75:
next_focus.append("Tighten answer grounding and checklist coverage before presenting this as a broad benchmark.")
if ragas_report and ragas_report.get("context_precision", 1.0) < 0.7:
next_focus.append("Treat low RAGAS context precision as a context-selection signal, not as the primary pass/fail gate.")
return {
"primary_gate": "pass" if retrieval_gate_pass else "needs_work",
"primary_gate_basis": "deterministic_retrieval",
"primary_gate_thresholds": retrieval_gate_thresholds,
"ragas_role": "supporting_signal_not_primary_gate",
"next_focus": next_focus,
}
def build_resume_summary(custom_metrics, audit, ragas_report, ragas_error):
lines = [
(
f"Evaluated on {audit['case_count']} repo-QA cases across "
f"{len(audit['category_counts'])} categories."
),
(
f"Deterministic retrieval metrics: hit@{TOP_K} {custom_metrics['retrieval_hit_rate']:.1%}, "
f"top-1 hit {custom_metrics['top1_hit_rate']:.1%}, MRR {custom_metrics['mrr']:.3f}, "
f"source recall {custom_metrics['source_recall']:.1%}."
),
(
f"Strict answer quality checks: grounded answer rate {custom_metrics['grounded_answer_rate']:.1%}"
+ (
f", keyword/checklist pass rate {custom_metrics['keyword_pass_rate']:.1%}"
+ (
f", reference-support pass rate {custom_metrics['reference_support_rate']:.1%}."
if custom_metrics["reference_support_rate"] is not None
else "."
)
if custom_metrics["keyword_pass_rate"] is not None
else "."
)
),
]
if ragas_report and not ragas_error:
lines.append(
"LLM-judge metrics (supporting signal, not primary headline): "
f"faithfulness {ragas_report.get('faithfulness', 0.0):.3f}, "
f"answer relevancy {ragas_report.get('answer_relevancy', 0.0):.3f}, "
f"context precision {ragas_report.get('context_precision', 0.0):.3f}."
)
else:
lines.append("LLM-judge metrics were skipped or unstable, so headline metrics rely on deterministic checks.")
scope = audit.get("benchmark_scope", {})
if scope.get("type") == "single_repository":
lines.append(
"Benchmark scope: single-repository benchmark "
f"({scope.get('dominant_prefix')}); use it to judge this target repo, not cross-repo generalization."
)
if audit["warnings"]:
lines.append(
"Benchmark caveat: "
+ " ".join(audit["warnings"][:2])
)
return " ".join(lines)
def benchmark_readiness(audit, ragas_error, metric_guidance=None):
reasons = []
if audit["case_count"] < 25:
reasons.append("small_sample")
if len(audit["category_counts"]) < 4:
reasons.append("limited_category_coverage")
if audit["conversation_case_count"] < 2:
reasons.append("limited_multi_turn_coverage")
if audit["warnings"]:
reasons.append("eval_set_warnings")
if ragas_error not in {None, "disabled"}:
reasons.append("ragas_instability")
if metric_guidance and metric_guidance.get("primary_gate") != "pass":
reasons.append("primary_gate_failed")
if reasons:
status = "single_repo_benchmark_needs_work"
if audit.get("benchmark_scope", {}).get("type") != "single_repository":
status = "internal_or_demo_benchmark"
return {
"status": status,
"reasons": reasons,
}
if audit.get("benchmark_scope", {}).get("type") == "single_repository":
return {
"status": "single_repo_benchmark_ready",
"reasons": [],
}
return {
"status": "presentation_ready",
"reasons": [],
}
def maybe_write_report(report):
output_path = os.getenv("CODEBASE_RAG_EVAL_OUTPUT")
if not output_path:
return None
target = Path(output_path)
target.parent.mkdir(parents=True, exist_ok=True)
target.write_text(json.dumps(report, indent=2))
return str(target)
def build_bedrock_ragas_llm(run_config):
from langchain_core.outputs import Generation, LLMResult
from ragas.llms.base import BaseRagasLLM
class BedrockRagasLLM(BaseRagasLLM):
def __init__(self, model: str, run_config):
self.client = create_bedrock_runtime_client()
self.model = model
self.set_run_config(run_config)
def _prompt_to_text(self, prompt):
prefix = (
"Return only valid JSON or the exact structured output requested by the prompt. "
"Do not add markdown fences, explanations, or extra prose.\n\n"
)
if hasattr(prompt, "to_string"):
return prefix + prompt.to_string()
return prefix + str(prompt)
def _generate_once(self, prompt, n=1, temperature=1e-8, stop=None, callbacks=None):
prompt_text = self._prompt_to_text(prompt)
text, _ = generate_bedrock_claude_text(
self.client,
self.model,
"Return only valid JSON or the exact structured output requested.",
prompt_text,
max_tokens=int(os.getenv("EVAL_MAX_OUTPUT_TOKENS", "2048")),
temperature=0.0,
)
generations = [Generation(text=text)] if text else []
if not generations:
raise RuntimeError("Bedrock Claude judge returned an empty response.")
return LLMResult(generations=[generations])
def generate_text(self, prompt, n=1, temperature=1e-8, stop=None, callbacks=None):
return self._generate_once(
prompt=prompt,
n=n,
temperature=temperature,
stop=stop,
callbacks=callbacks,
)
async def agenerate_text(self, prompt, n=1, temperature=1e-8, stop=None, callbacks=None):
return await asyncio.to_thread(
self._generate_once,
prompt,
n,
temperature,
stop,
callbacks,
)
model = os.getenv(
"EVAL_MODEL",
os.getenv("BEDROCK_EVAL_MODEL", "anthropic.claude-opus-4-20250514-v1:0"),
)
return BedrockRagasLLM(model=model, run_config=run_config)
def build_ragas_embeddings(run_config):
from ragas.embeddings.base import BaseRagasEmbeddings
class AppEmbeddingWrapper(BaseRagasEmbeddings):
def __init__(self, generator, run_config):
self.generator = generator
self.set_run_config(run_config)
def embed_query(self, text):
return self.generator.embed_text(text).tolist()
def embed_documents(self, texts):
vectors = self.generator.embed_batch(list(texts))
return vectors.tolist()
async def aembed_query(self, text):
return await asyncio.to_thread(self.embed_query, text)
async def aembed_documents(self, texts):
return await asyncio.to_thread(self.embed_documents, texts)
return AppEmbeddingWrapper(EmbeddingGenerator(), run_config=run_config)
def run_ragas(rows, outputs):
if not ENABLE_RAGAS:
log("RAGAS disabled via CODEBASE_RAG_ENABLE_RAGAS=0. Reporting custom metrics only.")
return None, "disabled"
try:
from datasets import Dataset
from ragas import evaluate
from ragas.metrics import answer_relevancy, context_precision, faithfulness
from ragas.run_config import RunConfig
except Exception as exc:
log(f"Skipping RAGAS because the evaluation dependencies could not be loaded: {exc}")
return None, f"import_error: {exc}"
def build_ragas_dataset():
samples = []
for row, result in zip(rows, outputs):
samples.append(
{
"question": row["question"],
"answer": result["answer"],
"contexts": [source["snippet"] for source in result.get("sources", [])],
"ground_truth": row["ground_truth"],
}
)
return Dataset.from_list(samples)
log("Running RAGAS metrics. This can take a while.")
try:
timeout_seconds = int(os.getenv("EVAL_TIMEOUT_SECONDS", "180"))
thread_timeout_seconds = float(os.getenv("EVAL_THREAD_TIMEOUT_SECONDS", str(max(timeout_seconds, 240))))
max_workers = int(os.getenv("EVAL_MAX_WORKERS", "2"))
run_config = RunConfig(
timeout=timeout_seconds,
thread_timeout=thread_timeout_seconds,
max_workers=max_workers,
max_retries=int(os.getenv("EVAL_MAX_RETRIES", "3")),
max_wait=int(os.getenv("EVAL_MAX_WAIT_SECONDS", "60")),
)
log(
"Using Bedrock for RAGAS judge model "
f"({os.getenv('EVAL_MODEL', os.getenv('BEDROCK_EVAL_MODEL', 'anthropic.claude-opus-4-20250514-v1:0'))})"
)
log(
f"RAGAS runtime: async={RAGAS_ASYNC}, raise_exceptions={RAGAS_RAISE_EXCEPTIONS}, "
f"timeout={timeout_seconds}s, thread_timeout={thread_timeout_seconds}s, max_workers={max_workers}"
)
llm = build_bedrock_ragas_llm(run_config)
embeddings = build_ragas_embeddings(run_config)
ragas_report = evaluate(
build_ragas_dataset(),
metrics=[faithfulness, answer_relevancy, context_precision],
llm=llm,
embeddings=embeddings,
run_config=run_config,
is_async=RAGAS_ASYNC,
raise_exceptions=RAGAS_RAISE_EXCEPTIONS,
)
return {key: float(value) for key, value in ragas_report.items()}, None
except Exception as exc:
log(f"RAGAS evaluation failed: {exc}")
return None, str(exc)
def run():
log(f"Loading eval set from {EVAL_SET_PATH}")
rows = load_eval_rows()
audit = validate_eval_rows(rows)
model_config = get_app_model_config()
if audit["errors"]:
raise RuntimeError("Eval set validation failed: " + "; ".join(audit["errors"]))
for warning in audit["warnings"]:
log(f"Eval set warning: {warning}")
log(
"Eval model config: "
f"qna_provider={model_config['llm_provider']}, "
f"qna_model={model_config['llm_model']}, "
f"embedding_provider={model_config['embedding_provider']}, "
f"embedding_model={model_config['embedding_model']}, "
f"judge_model={model_config['eval_model']}"
)
log(
f"Starting eval with api_url={API_URL}, repo_id={REPO_ID}, "
f"session_id={SESSION_ID}, top_k={TOP_K}, cases={len(rows)}"
)
outputs = []
details = []
for index, row in enumerate(rows, start=1):
case_id = row.get("id", row["question"])
log(f"[{index}/{len(rows)}] Querying case {case_id}")
result = post_query(row)
outputs.append(result)
log(
f"[{index}/{len(rows)}] Received answer for {case_id} "
f"with {len(result.get('sources', []))} sources"
)
cited_paths = [source["file_path"] for source in result.get("sources", [])]
metrics = compute_retrieval_metrics(row.get("expected_sources", []), cited_paths)
keyword_details = keyword_match_details(row, result.get("answer", ""))
keyword_coverage = keyword_details["coverage"] if keyword_details else None
keyword_gate = keyword_pass(row, keyword_details)
length_metrics = answer_length_metrics(result.get("answer", ""))
reference_details = reference_support_details(row.get("ground_truth", ""), result.get("answer", ""))
overlap = reference_details["ratio"] if reference_details else None
reference_gate = reference_support_pass(reference_details)
details.append(
{
"id": row.get("id", row["question"]),
"category": row.get("category", "general"),
"question": row["question"],
"answer": result.get("answer", ""),
"expected_sources": row.get("expected_sources", []),
"retrieved_sources": cited_paths,
"retrieval_hit": metrics["retrieval_hit"],
"source_recall": metrics["source_recall"],
"mrr": metrics["mrr"],
"top1_hit": metrics["top1_hit"],
"unique_source_precision": metrics["unique_source_precision"],
"duplicate_source_rate": metrics["duplicate_source_rate"],
"keyword_coverage": keyword_coverage,
"keyword_pass": keyword_gate,
"matched_keyword_count": keyword_details["matched_count"] if keyword_details else None,
"total_keywords": keyword_details["total_keywords"] if keyword_details else None,
"matched_keywords": keyword_details["matched_keywords"] if keyword_details else [],
"missing_keywords": keyword_details["missing_keywords"] if keyword_details else [],
"ground_truth_lexical_overlap": overlap,
"reference_support_pass": reference_gate,
"reference_term_match_count": reference_details["matched_count"] if reference_details else None,
"reference_term_count": reference_details["reference_term_count"] if reference_details else None,
"matched_reference_terms": reference_details["matched_terms"] if reference_details else [],
**length_metrics,
}
)
log("Finished query loop. Computing aggregate metrics.")
custom_metrics = summarize_custom_metrics(details)
category_breakdown = summarize_by_category(details)
ragas_report, ragas_error = run_ragas(rows, outputs)
headline_metrics = build_headline_metrics(custom_metrics, audit)
metric_guidance = build_metric_guidance(custom_metrics, ragas_report)
resume_summary = build_resume_summary(custom_metrics, audit, ragas_report, ragas_error)
readiness = benchmark_readiness(audit, ragas_error, metric_guidance)
report = {
"config": {
"api_url": API_URL,
"repo_id": REPO_ID,
"session_id": SESSION_ID,
"top_k": TOP_K,
"qna_provider": model_config["llm_provider"],
"qna_model": model_config["llm_model"],
"embedding_provider": model_config["embedding_provider"],
"embedding_model": model_config["embedding_model"],
"eval_model": model_config["eval_model"],
"query_timeout_seconds": QUERY_TIMEOUT_SECONDS,
"query_max_retries": QUERY_MAX_RETRIES,
"query_retry_base_seconds": QUERY_RETRY_BASE_SECONDS,
"eval_set": str(EVAL_SET_PATH),
"min_reference_overlap": MIN_REFERENCE_OVERLAP,
"min_reference_term_matches": MIN_REFERENCE_TERM_MATCHES,
},
"eval_set_audit": audit,
"headline_metrics": headline_metrics,
"benchmark_readiness": readiness,
"metric_guidance": metric_guidance,
"ragas": ragas_report,
"ragas_error": ragas_error,
"custom_metrics": custom_metrics,
"category_breakdown": category_breakdown,
"resume_summary": resume_summary,
"cases": details,
}
output_path = maybe_write_report(report)
if output_path:
log(f"Wrote JSON report to {output_path}")
log("Eval complete. Printing JSON report.")
print(json.dumps(report, indent=2))
if __name__ == "__main__":
run()
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