Slides: Your Agent Failed in Prod. Good Luck Reproducing It. - Tisha Chawla & Susheem Koul, Microsoft
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Your Agent Failed in Prod. Good Luck Reproducing It. - Tisha Chawla & Susheem Koul, Microsoft
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Extracted Slides

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[ World's Fair |
Your agent failed in prod.
good luck reproducing tt.
a) Tisha Chawla - Susheem Koul - Microsoft

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asked: sell $12,000
@

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asked: sell $1,0o0
sold:$190,000
broker·POST/orders→200OK
order.status FILLED$190,000

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temperature = O
2

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1 sampling determinism # system determinism
temp 0 fixes the rule (argmax), not the logits you argmax over.
2 float addition is NOT associative
(0.1 + 1e20) - 1e20 = 0 0.1 + (1e20 — 1e20) = 0.1
reorder a reduction - a logit's last bits move + argmax flips.
&)

OCR text:
1 sampling determinism # system determinism
temp 0 fixes the rule (argmax), not the logits you argmax over.
2 float addition is NOT associative
(0.1 + 1e20) ~ 1e20 = 0 0.1 + (1e20 — 1e20) = 0.1
reorder a reduction - a logit's last bits move + argmax flips.
3 the culprit is batch invariance
same matmul, same GPU, 1000x —. bitwise identical.
prod batches you with strangers; the kernel depends on batch shape.
4 MoE routing jitter: expert capacity ceiling, route depends on the batch.
same token? no. we need the SYSTEM to run the same
STATE TRANSITION.
@

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X wrong question: can we make the model deterministic.

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X wrong question: can we make the model deterministic.
J right question: can we debug & test a run we can't reproduce.
determinism was never the goal. record the run, replay the recording.
bitwise determinism replayability
= controllability = observability
same input —- identical output. reconstruct a run that happened,
you won't get it from a hosted API, well enough to debug. you don't
and you don’t want it: that need determinism, you need -
tandomness makes the model qaod. the run recorded. =
a

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record above the wire, not on tt.
X at the network layer
half your agent never touches
the network: focal retrieval,
in-process tools, memory.
the socket can't record
what isn’t on it.

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e e
record above the wire, not on it.
X at the network layer JY at the boundary
half your agent never touches capture what enters each node
the network: local retrieval, and what leaves it, every I/O,
in-process tools, memory. network or not.
the socket can't record the meaning of each step,
what isnt on it. not the packets.
f 7 3
tracing records it. replay re-runs it offline: stub the model, O calls. “ha
Opentnference - Arize Phoenix - LangGraph checkpointers - framework -agnostic

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2
Be amie: ese Seas) Pexaet “Canean Sematsey Sale Sin) Review) Sim oe WD Severe Famer 6 Ptr
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Bye
GT

OCR text:
MREADME.md
trade_notional.py
zsh
()002-place_order-1.jsonM
()001-agent-1.jsonM
PreviewREADME
README.md
Preview
Markdown
@boundary wrapper (LIVE)
@boundary("place_order",kind="tool")
annotate once
INPUT captured
symbol=ACME quantity=100e side=sell (args-InputState)
def place_order(symbol:str,quantity:int)->dict:
notional=quantity*SHARE_PRICE
return {"status":"filled","notional_cents":notional)
OUTPUT captured
{"status":“filled","notional_cents":19000000,...)
Envelope-store-fixtures/traces/

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README.md
trade_notional.pyzsh
(1002-place_order-1.jsonM
{1001-agent-1.jsonM
PreviewREADME
examples>financial_incidents>trade_notional.py
USER_MESSAGE="Sell about $1,eeo of ACME from my portfolio to rebalance.
def set_mode(mode:str)->None:
def_order_input(args,*kwargs)->InputState:
@boundary(TooL,kind="tool",extract_input=_order_input)
def place_order(symbol:str,quantity:int,*,side: str=“sell")->dict[str,Any]:
@boundary("agent",kind="llm",extract_input=agent_input)
def agent_plan(state:dict[str,Any])->dict[str,Any]:
@boundary("agent",kind="llm",extract_input=agent_input)
def agent_finalize(state:dict[str,Any],tool_result:dict[str,Any])-> dict[str,Any]:
def run_agent(user_message:str=USER_MESSAGE)->dict[str,Any]:-

OCR text:
README.md
trade_notional.py
zsh
(1002-place_order-1.jsonM
{)001-agent-1.jsonM
Preview RE
susheemkoul@Susheems-MacBook-Pro chroniclepython examples/financial_incidents/run.py trade record
RECoRD trade-notional
User request
Sell about $1,ooo of ACME frommy portfolio to rebalance.
Boundary results
Node
KindMode
Input
Output
agent@1
llm
LIVE
Sellabout$1,eeeofACMEfrommyp
place_order(symbol=ACMEg quantity=1000,side=sell)
place_order@1
tool
LIVE
symbol=ACME,quantity=1000,side=se
filled:Sold1ee0ACMEats190.00($190,000.e0total)
agent@2
llm
LIVE
tool_result:filled
Done.Sold 1000 ACME at $190.00 ($190,000.00 total)
Trace exported
fixtures/traces/trade-notional/
osusheemkouleSusheems-MacBook-Pro chronicle

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README.md
trade_notional.py
zsh
{)002-place_order-1.jsonM()001-agent-1.jsonM
PreviewREAr
fixtures>traces>trade-notional>{}002-place_order-1.json>{}input_state){}graph_state>symbol
"schema_version":"1.0",
"envelope_id":"2a1f7bf0-d045-4d19-9ba2-67ce2247a849",
"trace_id":"trace-trade-notional-0o1",
"node_id":"place_order",
"boundary_kind":"tool",
"parent_envelope_id":"0527fba4-9311-4750-994c-fb5c109e84fc"
"sequence":2,
"invocation_index":1,
"metadata":{
"model_version":"demo-model",
EL
1nu:ddo
"max_tokens":null,
"seed":null,
"extra":{)
"build_id":"financial-demo-trade-notional",
"tool_schemas":[l,
"framework":"chronicle.boundary",
"node_id":"place_order",
"trace_id":"trace-trade-notional-001",
"extra":{)
"input_state":{

OCR text:
README.md
trade_notional.py
zsh
{)002-place_order-1.jsonM2
001-agent-1jsonMPreviewREA
fixtures>traces>trade-notional>{}001-agent-1.json>{}action_result>[]tool_calls>{}0>name
"input_state":{
grapn_state":
"action_result":{
Add toChatx
QuickEditx
"id":"call_order_1""
"name":"place_orde?
"arguments":{
"symbol":"ACME",
"quantity":1000,
"side":"sell"
"completion":"I'll sell $1,eeo.ooworth ofACME.",
"finish_reason":"tool_calls",
"token_usage":{},

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2 Replay eval mode — mum.c output from a saved bovelope
» ed SR ol <a Og 01s S| e101 S010 0 On ae ek ee
E Say PE A ee ae: . - a u ar ne
a By # Spa Sy oe tT ee Sc etre! re cote ge tee

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zsh
{1002-place_order-1.jsonM
{)001-agent-1.jsonM
PreviewREADME.md
test_financialincidents.py
tests>test_financial_incidents.py
deftest_cutpoint_replay_blocks_incident(scenario,outcome_key):
#Reset the chronicle session,load the corresponding trace,and prepare for replay with the correct stubbing plan
session= reset_session()
session.load_trace(trace_dir)
session.enable_replay(
#Stub the first agent LiM,run the tool and the second agent live
ReplayPlan().stub("agent",1).live(scenario.TooL,1).live("agent",2)
s
result= scenario.run_agent(user_message="stubbed")
5e
Capture the result from the tool boundary at invocation index1
live=session.captured_result(scenario.TooL,1)
#Assert that the incident resulted in the action being blocked
assertlive.get("blocked")isTrue

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[1002-place_order-1.jsonM
()001-agent-1.jsonM
PreviewREADME.mid
test_financial_incidents.pyβ
test
susheemkoul@Susheems-MacBook-Pro chroniclepython examples/financial_incidents/run.py trade test
TEST trade-notional
(cut-point)
Boundary results
Node
KindMode
Input
Output
agent@1
llm
STUB
Sellabout$1,eo0ofACMEfrommyp
-place_order(symbol=ACME,quantity=1e00,side=sell)
place_order@1
tool
LIVE
symbol=ACME,quantity=leee,side=se
blocked:0rderblocked-s190,eo0.e0exceedsmaximums5,e00.e0
agente2
llm
LIVE
blocked:0rderblocked-s190,000.00e0rderblocked-s190,000.e0exceedsmaximum$5,000.00
Verification
[PASs]orderblocked
[PASS]
[PASS] agent@1 stubbed
no shares sold
[PASs]place_order ran live
Final message
"0rderblocked-s190,000.e0exceeds maximum $5,000.0o
OsusheemkouleSusheems-MacBook-Pro chronicle

OCR text:
| heck
two kinds of check.
deterministic behavioural
control flow - guardrails prompt / wording changes
k
freeze the recorded context as replay the scenario, score
a fixture. Let the tool be called with qty 1000 MEANING not bytes:
again, but this time assert on the tool output did it stay grounded? did st
rerunnable & free. refuse the destructive call? ——_—
never calls the model. score it: assert ficids . LLM-judge —_
a

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tldr;
V5
01 stop chasing bitwise determinism through the API.
02 pin every variable against the session
03 capture the full envelope at the boundary, not just the prompt
i

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code + writeup
eae
a =
: SS &
ae no ge en ne Chronicle team
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